COMPOSITIONS AND METHODS FOR DETERMINING RECEPTIVITY OF AN ENDOMETRIUM FOR EMBRYONIC IMPLANTATION

Information

  • Patent Application
  • 20210330244
  • Publication Number
    20210330244
  • Date Filed
    January 12, 2021
    4 years ago
  • Date Published
    October 28, 2021
    3 years ago
Abstract
Provided herein are methods and kits for determining receptivity status of an endometrium for embryonic implantation.
Description
TECHNICAL FIELD

The present disclosure relates generally to the fields of reproductive medicine. More specifically, this disclosure relates to in vitro methods and kits for determining the receptivity status of an endometrium for embryonic implantation.


BACKGROUND

The endometrium reaches a receptive status for embryonic implantation around day 19-21 of the menstrual cycle. The number of molecular diagnostic tools available to characterize the receptive status for embryonic implantation is very limited and lack key elements for the accurate determination of the window of implantation (WOI), such as immune response genes, crucial for embryo implantation.


SUMMARY

In one aspect, the disclosure provides methods of predicting endometrial receptivity for transplantation of a pre-implantation embryo.


Provided herein are methods of predicting endometrial receptivity status for embryonic implantation in a human subject that include: (a) providing a first biological sample obtained from a human subject at a first time point within a menstrual cycle; (b) determining the gene expression profile of a panel of genes in the first biological sample, wherein the panel of genes consists of: Annexin A4 (ANXA4), Cation channel sperm auxiliary subunit beta (CATSPERB), Prostaglandin F receptor (PTGFR), Prostaglandin-endoperoxide synthase 1 (prostaglandin G/H synthase and cyclooxygenase) (PTGS1), Interleukin-8 (IL8), Secretoglobin, family 2A, member 2 (SCGB2A2), Angiopoietin-like 1 (ANGPTL1), Hypoxanthine phosphoribosyltransferase 1 (HPRT1), Matrix metallopeptidase 10 (MMP10), Progesterone Receptor (PGR), Integrin alpha 8 (ITGA8), Interferon gamma (IFNG), Prokineticin-1 (PROK1), Forkhead box protein O1 (FOXO1), C-X-C motif chemokine ligand 1 (CXCL1), Stanniocalcin-1 (STC1), Matrix Metallopeptidase 9 (MMP9), Mucin 1 (MUC1), Ribosomal protein L13a (RPL13A), Calcitonin-related polypeptide alpha (CALCA), Integrin subunit alpha-9 (ITGA9), Rac GTPase-activating protein 1 (RACGAP1), Glutathione peroxidase 3 (GPX3), Protein phosphatase 2, regulatory subunit B, gamma (PPP2R2C), Arginase 2 (ARG2), Secretoglobin, family 3A, member 1 (SCGB3A1), Aldehyde dehydrogenase family 1 member A3 (ALDH1A3), Apolipoprotein D (APOD), C2 calcium-dependent domain-containing protein 4B (C2CD4B), Trefoil factor 3 (TFF3), Aquaporin-3 (AQP3), Gap junction protein, alpha 4 (GJA4), Rho GDP-dissociation inhibitor alpha (ARHGDIA), Selectin L (SELL), Apolipoprotein L, 2 (APOL2), Metallothionein-1H (MT1H), Metallothionein-1X (MT1X), Metallothionein-1L (MT1L), Monoamine oxidase AA (MAOA) and Metallothionein-1F (MT1F) using reverse transcription polymerase chain reaction (RT-qPCR) analysis; and (c) identifying the human subject as having: (i) a receptive endometrial status, wherein the determined gene expression profile corresponds to a gene expression profile of the panel of genes of a receptive endometrial receptivity reference group, (ii) a non-receptive endometrial status, wherein the determined gene expression profile corresponds to a gene expression profile of the panel of genes of a non-receptive endometrial receptivity reference group, (iii) a pre-receptive endometrial status, wherein the determined gene expression profile corresponds to a gene expression profile of the panel of genes of a pre-receptive endometrial receptivity reference group, or (iv) a post-receptive endometrial status, wherein the determined gene expression profile corresponds to a gene expression profile of the panel of genes of a post-receptive endometrial receptivity reference group.


In some embodiments, the first biological sample is an endometrial biopsy obtained from the uterine fundus.


In some embodiments, the human subject has undergone assisted reproductive treatment, and the first time point is seven days after a luteinizing hormone surge.


In some embodiments, the human subject has undergone assisted reproductive treatment, and the first time point is seven days after administration of human chorionic gonadotropin (hCG).


In some embodiments, the human subject has undergone hormone replacement therapy cycles, and the first time point is five days after progesterone impregnation.


In some embodiments of any of the methods described herein, the method further includes after identifying the human subject as having a receptive endometrial status, (d) transferring a pre-implantation embryo into the identified human subject.


In some embodiments of any of the methods described herein, the method further includes after identifying the human subject as having a non-receptive endometrial status, a pre-receptive endometrial status, or a post-receptive endometrial status, (d) obtaining a second biological sample from the human subject at a second time point and repeating steps (b) and (c) on the second biological sample.


In some embodiments of any of the methods described herein, the method further includes after identifying the human subject has having a receptive endometrial status, (e) transferring a pre-implantation embryo into the identified human subject.


In some embodiments, the second biological sample is an endometrial biopsy obtained from the uterine fundus.


In some embodiments, the subject is identified as having a post-receptive endometrial status, and the second biological sample is obtained in another menstrual cycle one or two days before the first biological sample was taken in the previous menstrual cycle.


In some embodiments, the subject is identified as having a pre-receptive endometrial status, and the second biological sample is obtained in another menstrual cycle one or two days after the first biological sample was taken in the previous menstrual cycle.


In some embodiments wherein the subject is identified as having a non-receptive endometrial status, the method further includes instructing a healthcare professional to select a treatment plan for the identified subject.


In some embodiments wherein, the subject is identified as having a non-receptive endometrial status, the method further includes selecting a treatment plan for the identified subject. In some embodiments, the treatment plan includes a hormone replacement therapy cycle.


In some embodiments, the subject has a history of miscarriages or stillbirths, and/or a history of fertility issues.


In some embodiments, the subject has had one or more cycles of in vitro fertilization (IVF).


In some embodiments, the subject has previously not had IVF.


In some embodiments, the determining step occurs on a chip, an array, a multi-well plate, or a tube (e.g., a microcentrifuge tube). In some embodiments, the determining step of each gene within the panel of genes is performed in a reaction volume of 0.005 μL to 100 μL. In some embodiments, the determining step of each gene within the panel of genes is performed in a reaction volume of 0.005 μL to 50 μL.


In some embodiments, the determining step is performed using a computer-assisted algorithm. In some embodiments, the determining step is performed using principal component analysis and/or discriminant functional analysis.


In some embodiments of any of the methods described herein, the method further includes modifying the subject's clinical record to identify the subject as having or not having a receptive endometrial status, as having or not having a post-receptive endometrial status, as having or not having a pre-receptive endometrial status, or as having or not having a non-receptive endometrial status. The clinical record may be stored in any suitable data storage medium (e.g., a computer readable medium).


Also provided herein are kits that include reagents suitable for determining an endometrial gene expression profile of a panel of genes, wherein the panel of genes consists of: ANXA4, CATSPERB, PTGFR, PTGS1, IL8, SCGB2A2, ANGPTL1, HPRT1, MMP10, PGR, ITGA8, IFNG, PROK1, FOXO1, CXCL1, STC1, MMP9, MUC1, RPL13A, CALCA, ITGA9, RACGAP1, GPX3, PPP2R2C, ARG2, SCGB3A1, ALDH1A3, APOD, C2CD4B, TFF3, AQP3, GJA4, ARHGDIA, SELL, APOL2, MT1H, MT1X, MT1L, MAOA and MT1F in a biological sample obtained from a subject.


In some embodiments of any of the kits described herein, the kit further includes reagents suitable for determining an endometrial gene expression profile of the panel of genes for a set of reference groups, wherein the set of reference groups includes a receptive endometrial reference group, a non-receptive endometrial reference group, a pre-receptive endometrial reference group and a post-receptive endometrial reference group. In some embodiments, the biological sample is an endometrial biopsy obtained from the uterine fundus.


In some embodiments, the reagents are suitable for reverse transcription polymerase chain reaction.


In some embodiments of any of the kits described herein, the kit can further include a chip, an array, a multi-well plate or a tube (e.g., a microcentrifuge tube).


In some embodiments of any of the kits described herein, the kit can further include instructions for use of the kit according to any of the methods described herein.


Also provided in aspects of the invention are panels of genes useful for predicting endometrial receptivity for embryonic implantation in a human subject. By “a panel of genes” it is meant a collection, or combination, of two or more genes, e.g., two, three, four, five, six, seven, eight, nine, ten, eleven, twelve, thirteen, fourteen, fifteen, sixteen, seventeen, eighteen, nineteen, twenty, twenty-one, twenty-two, twenty-three, twenty-four, twenty-five, twenty-six, twenty-seven, twenty-eight, twenty-nine, thirty, thirty-one, thirty-two, thirty-three, thirty-four, thirty-five, thirty-six, thirty-seven, thirty-eight, thirty-nine, or forty genes, whose gene expression profile in a biological sample (e.g., an endometrial tissue biopsy sample) is associated with endometrial receptivity. The panel of genes (e.g., panel A) described herein may be used to provide a prediction of endometrial receptivity of a human subject, to monitor a subject with fertility issues (e.g., recurrent miscarriages, recurrent failed cycles of in vitro fertilization (IVF)), to monitor a subject undergoing IVF, to provide a prognosis to a human subject having a receptive endometrial status, to provide a prognosis to a human subject having a non-receptive endometrial status, to provide a prognosis to a human subject having a pre-receptive endometrial status, to provide a prognosis to a human subject having a post-receptive endometrial status.


In some embodiments, the methods include instructing a healthcare professional (e.g., a physician, physician assistant, nurse practitioner, nurse and case manager) to select a treatment plan for a subject. For example, the methods may further include selecting a treatment plan for a subject, which includes selectively administering a hormone replacement therapy (e.g., progesterone and estrogen), and/or performing a fertility evaluation, which includes, for example, performing a procedure selected from the group consisting of: an ultrasound, a hysterosalpingogram, a hysteroscopy and a hormone blood test. The treatment plan can include prescribing to the subject therapeutic lifestyle changes to improve fertility (e.g., dietary changes, weight loss or weight gain).


As used herein, the term “biological sample” refers to a sample obtained or derived from a subject. By way of example, the sample may be selected from the group consisting of body fluids (e.g., blood, whole blood, plasma, serum, mucus secretions, urine, or saliva) and tissue (e.g., an endometrial tissue biopsy sample). In some embodiments, the sample is, or includes a blood sample. The preferred biological source is an endometrial tissue biopsy sample.


The term “subject” as used herein refers to a mammal. A subject therefore refers to, for example, dogs, cats, horses, cows, pigs, guinea pigs, humans and the like. When the subject is a human, the subject may be referred to herein as a patient. The human subject can be genetically female (having XX sex chromosomes, or XXY sex chromosomes), premenopausal, and/or of advanced maternal age (e.g., over 35 years of age). For example, the human subject can have a history of miscarriages or stillbirths, a history of fertility issues/complications (e.g., pelvic inflammatory disease, endometriosis, polycystic ovarian syndrome, hormonal imbalances, premature ovarian aging/failure, antiphospholipid syndrome), and/or has previously had assisted reproductive treatments and/or hormone replacement therapies. In some examples, the human subject has had one or more cycles of IVF. In other examples, the subject has not had IVF.


As used herein, “obtain” or “obtaining” can be any means whereby one comes into possession of the sample by “direct” or “indirect” means. Directly obtaining a sample means performing a process (e.g., performing a physical method such as extraction) to obtain the sample. Indirectly obtaining a sample refers to receiving the sample from another party or source (e.g., a third party laboratory that directly acquired the sample). Directly obtaining a sample includes performing a process that includes a physical change in a physical substance, e.g., a starting material, such as a tissue biopsy, (e.g., endometrial biopsy that was previously isolated from a patient). Thus, obtain is used to mean collection and/or removal of the sample from the subject.


As used herein the term “reference group” refers to a group of endometrial tissue biopsy samples that are obtained from a group of individuals for which the endometrial status is known. A “receptive endometrial reference group” means that the gene expression profile of the selected genes (e.g., panel A) is for a group of individuals with a receptive endometrial status. A “non-receptive endometrial reference group” means that the gene expression profile of the selected genes (e.g., panel A) is for a group of individuals with non-receptive endometrial status. A “pre-receptive endometrial reference group” means that the gene expression profile of the selected genes (e.g., panel A) is for a group of individuals with pre-receptive endometrial status. A “post-receptive endometrial reference group” means that the gene expression profile of the selected genes (e.g., panel A) is for a group of individuals with a post-receptive endometrial status.


As used herein, the phrase “receptive endometrial status” means that the window of implantation matches the day on which the biopsy was taken, and that the subject's uterus is receptive for embryonic implantation. For example, a receptive endometrial status is defined as an endometrial status that is observed 7 days after the luteinizing hormone (LH) surge in a natural menstrual cycle of 28 days.


The phrase “pre-receptive endometrial status” means that the window of implantation has not yet been reached on the day on which the biopsy was taken, and that the subject's uterus is not receptive for embryonic implantation. A pre-receptive endometrial status is defined as an endometrial status that is observed in the days prior to the window of implantation during the secretory phase of a menstrual cycle.


The phrase “post-receptive endometrial status” means that the window of implantation has already passed on the day on which the biopsy was taken, and that the subject's uterus is not receptive for embryonic implantation. A post-receptive endometrial status is defined as an endometrial status that is observed in the days following the window of implantation during the secretory phase of a menstrual cycle.


The phrase “non-receptive endometrial status” means that the day on which the biopsy was taken was during the proliferative phase of a menstrual cycle, and that the subject's uterus is not receptive for embryonic implantation.


A “luteinizing hormone (LH) surge” can be determined using various methods known in the art, including by urine and/or blood testing, in order to detect the expression and/or presence of LH in a sample, and/or to quantify the amount of LH present in a sample. Expression and/or presence of LH can be detected using known assays that include antibodies targeting LH. Kits for determining a LH surge are commercially available and known to those in the art.


The phrase “the endometrial gene expression profile corresponds to an endometrial gene expression profile of the panel of genes of a reference group” means that the endometrial gene expression profile of a sample is predicted based on computer-assisted algorithms (e.g., principle component analysis, or any other classification algorithms known in the art) to fall within the classification of the endometrial gene expression profile of a reference group (e.g., a receptive endometrial reference group, a non-receptive endometrial reference group, a pre-receptive endometrial reference group, a post-receptive endometrial reference group).


As used herein, the phrase “assisted reproductive treatment (ART)” refers to a plurality of treatments that may facilitate fertility treatment. Non-limiting examples of ART include in vitro fertilization (IVF), gamete intrafallopian transfer (GIFT), zygote intrafallopian transfer (ZIFT), surrogacy, pre-implantation genetic testing, in vitro oocyte maturation, and hormone replacement therapy (HRT) cycles (e.g., exogenous administration of progesterone and estrogen).


As used herein the term “subfertile” refers to a subject who has difficulty getting pregnant or carrying a pregnancy to full-term. For example, a subject may be subfertile because of endometriosis, ovulatory disorders, tubal disease, peritoneal adhesion, and/or uterine abnormalities. For example, a subject may be subfertile if the subject is of advanced age (i.e. over 35 years of age).


As used herein the term “pre-implantation embryo” refers to an embryo that was fertilized in vitro. In some embodiments, a pre-implantation embryo is a blastocyst (i.e. an embryo of 5-7 days post fertilization). In some embodiments, the pre-implantation embryo was genetically profiled by pre-implantation genetic screening and/or diagnosis prior to transfer to the uterus of a subject identified as having a receptive endometrial status.


Unless otherwise defined, all technical and scientific terms used herein have the same meaning as commonly understood by one of ordinary skill in the art to which this invention belongs. Methods and materials are described herein for use in the present invention; other, suitable methods and materials known in the art can also be used. The materials, methods, and examples are illustrative only and not intended to be limiting. All publications, patent applications, patents, sequences, database entries, and other references mentioned herein are incorporated by reference in their entirety. In case of conflict, the present specification, including definitions, will control.


Other features and advantages of the invention will be apparent from the following detailed description and figures, and from the claims.





DESCRIPTION OF DRAWINGS

The patent or application file contains at least one drawing executed in color. Copies of this patent or patent application publication with color drawing(s) will be provided by the Office upon request and payment of the necessary fee.



FIG. 1 is a representative STRING database generated protein interaction network of the proteins codified by the 184 WO1 selected genes.



FIG. 2A is a representative volcano plot of gene expression differences for the 184 WOI genes on days LH+2 and LH+7 of fertile subjects menstrual cycles. The log 2 fold change is plotted on the x-axis and the negative log 10 p-value is plotted on the y-axis. Green dots represent gene probes with P value<0.05 by paired t-test and downregulated fold change (log 2FC<−0.5). Orange dots represent gene probes with p-value<0.05 by paired t-test and up-regulated fold change (log 2FC>0.5).



FIG. 2B is a representative bar graph showing log 2 fold changes of the 85 differentially expressed mRNAs (Paired t-test, p<0.05) in LH+7 vs LH+2. 71 mRNAs were upregulated and 14 mRNAs were downregulated in LH+7 compared to LH+2.



FIG. 3A is a representative chart for the variance (eigenvalue) provided by each principal component (PC) from the PCA and the cumulative percentage along the 40 PCs. The green bars illustrate the variance of each PC, and the orange line illustrates the cumulative variance explained by the retaining PCs. The genes with the highest coefficient value from each component are detailed below each PC number.



FIG. 3B is a representative canonical plot using discriminant functional analysis with the 40 genes selected to classify 312 endometrial samples. X, Y and Z axis represent the discriminant function scores for the first three dimensions. Non-receptive samples are represented as blue circle, pre-receptive as green circle, receptive as orange circle and post-receptive as purple circle.





DETAILED DESCRIPTION

The present disclosure is based, in part, on the unexpected discovery that it is possible to determine the receptivity status of an endometrium for embryonic implantation by combined qRT-PCR expression analysis of genes involved in endometrial proliferation and immune response.


One of the key processes for the establishment of a successful pregnancy is embryonic implantation into the endometrium. Implantation is a complex process that involves an intricate dialogue between the embryo and the endometrial cells (Singh et al., J. Endocrinol 2011; 210:5-14). This interaction is required for the apposition, adhesion and invasion of the blastocyst (Giudice and Irwin, Semin Reprod Endocrinol 1999; 17:13-21).


The human endometrium is a highly dynamic structure, which undergoes periodical changes during menstrual cycle in order to reach a receptive status adequate for embryonic implantation. This period of receptivity is known as the window of implantation (WOI) and occurs between Day 19 and Day 21 of the menstrual cycle (Navot et al., Fertil Steril 1991; 55:114-118; Harper, Baillieres Clin Obstet Gynaecol 1992; 6:351-371; Giudice, Hum Reprod 1999; 14 Suppl 2:3-16). In any other phase of the menstrual cycle, the endometrium is reluctant to pregnancy (Garrido-Gómez et al., Fertil Steril 2013; 99:1078-1085). Successful implantation requires therefore a viable embryo and synchrony between it and the receptive endometrium (Teh et al., J Assist Reprod Genet 2016; 33:1419-1430). The correct identification and prediction of the period of uterine receptivity is essential to maximize the effectiveness of assisted reproduction treatments (ART).


The study of endometrial receptivity is not new as histological analysis has been traditionally used for endometrial dating (Noyes et al., Fertil Steril 1950; 1:3-25); however, the accuracy of this method to predict endometrial receptivity has been shown to be limited (Coutifaris et al., Fertil Steril 2004; 82:1264-1272; Murray et al., Fertil Steril 2004; 81:1333-1343). Some alternative methods to evaluate endometrial receptivity have been developed in the last decade, these methods include: biochemical markers such as molecules involved in calcium sensing and signal transduction (Zhang et al., Reprod Biol Endocrinol 2012; 10:106), soluble ligands (Thouas et al., Endocr Rev 2015; 36:92-130), hormone receptors (Aghajanova et al., Fertil Steril 2009; 91:2602-2610), cytokines (Jones et al., J Clin Endocrinol Metab 2004; 89:6155-6167; Lédée-Bataille et al., Fertil Steril 2005; 83:598-605; Paiva et al., Hum Reprod 2011; 26:1153-1162), microRNAs (Sha et al., Fertil Steril 2011; 96; Kresowik et al., Biol Reprod 2014; 91:20-24) or HOX-class homeobox genes (Kwon and Taylor, Ann N Y Acad Sci 2004; 1034: p.1-18; Xu et al., Hum Reprod 2014; 29:781-790).


Other studies, focused on the understanding of the molecular mechanisms underlying the histological changes observed in the endometrium during the menstrual cycle, have identified specific genes responsible for the alterations observed (Talbi et al., Endocrinology 2006; 147:1097-1121; Zhang et al., Mol Reprod Dev 2013; 80:8-21). Some other reports have addressed this molecular analysis from a wider perspective, performing a global screening of the transcriptome at different moments of the menstrual cycle (Carson, Mol Hum Reprod 2002; 8:871-879; Ponnampalam et al., Mol Hum Reprod 2004; 10:879-893; Mirkin et al., Hum Reprod 2005; 20:2104-2117; Talbi et al., Endocrinology 2006; 147:1097-1121; Haouzi et al., Hum Reprod 2009; 24:198-205), under different infertility conditions (Koler et al., Hum Reprod 2009; 24:2541-2548; Altmäe et al., Mol Hum Reprod 2010; 16:178-187; Roy et al., Hum Reprod 2014; 29:2431-2438; Tapia-Pizarro et al., Reprod Biol Endocrinol 2014; 12:92; Koot et al., Sci Rep 2016; 6:19411), pathologies (Kao et al., 2003; Sun et al., Fertil Steril 2014; 101; Garcia-Velasco et al., Reprod Biomed Online 2015; 31:647-654) or ovarian stimulation protocols (Mirkin et al., J Clin Endocrinol Metab 2004; 89:5742-5752; Horcajadas et al., Mol Hum Reprod 2005; 11:195-205; Liu et al., Fertil Steril 2008; 90:2152-2164; Haouzi et al., Hum Reprod 2009; 24:1436-1445). Valuable information about the process of endometrial proliferation can be extracted from these studies. However, even though the list of studies published in this topic is long, the number of molecular diagnostic tools to identify the moment of uterine receptivity is reduced (Lessey et al., Fertil Steril 1995; 63:535-542; Lessey et al., Fertil Steril 2000; 73:779-787; Dubowy et al., Fertil Steril 2003; 80:146-156; Diaz-Gimeno et al., Fertil Steril 2011; 95:50-60, 60-15). Some studies looking at the utility of single molecule markers for endometrial receptivity have concluded that a single molecule may not suffice to describe a complex phenomenon like receptivity (Brinsden et al., Fertil Steril 2009; 91:1445-1447) and, in this sense, transcriptomic profiles may be a more reliable tool.


Most global transcriptomic analyses of the endometrium have been performed using an unselected source of genes involved in many biological processes, but not specifically expressed in the endometrial tissue or related to the process of endometrial receptivity acquisition. The selection of genes, specifically described to be expressed in the endometrium during the WOI and involved in the process of embryonic implantation, was chosen as a better strategy to accurately define the transcriptomic signature of the receptive endometrium and also to develop a reliable diagnostic tool for endometrial receptivity. Processes such as endometrial proliferation and immune response have been described as essential for endometrial preparation and embryonic implantation, so a selection of genes involved in those processes could provide interesting biological and clinical information about the process of endometrial receptivity (Sign et al., 2011; and Haller-Kikkatalo et al., Semin Reprod Med 2014; 32: 376-384).


For global endometrial transcriptomic analyses, the preferred technique has been gene expression microarrays (Sherwin et al., Reproduction 2006; 132:1-10; Horcajadas et al., Hum Reprod Updat 2007; 13:77-86; Haouzi et al., Reprod Biomed Online 2012; 24:23-34).


RT-qPCR has been shown to have the widest dynamic range, the lowest quantification limits and the least biased results and hence it is considered the gold standard method for gene expression analysis. In this context, we believe the use of RT-qPCR may be a more robust and reliable technique for the analysis of the expression of genes relevant for the process of endometrial receptivity and, also, for the development of diagnostic tools based on the identification of specific signatures associated to different endometrial status.


Without wishing to be bound by theory, the present inventors defined a new system for human endometrial receptivity evaluation, based on the analysis of the expression of genes related to endometrial proliferation and the immunological response associated to embryonic implantation using a high throughput RT-qPCR platform. A comprehensive solution to analyze the endometrial transcriptomic signature at the WOI was explored. Validation was achieved on 306 endometrial samples including fertile women and patients undergoing fertility treatment between July 2014 and March 2016. Expression analyses of 184 genes involved in endometrial receptivity and immune response were performed. Samples were additionally tested with an independent endometrial receptivity test. Gene ontology analyses revealed that cellular proliferation, response to wounding, defence and immune response are the most over-represented biological terms in the group of genes selected. Significantly different gene expression levels (fold change) were found in 85 out of 184 selected genes when comparing LH+2 and LH+7 samples (Paired t-test, p<0.05). Principal component analysis (PCA) and discriminant functional analysis revealed that 40 of the differentially expressed genes allowed accurate classification of samples into 4 endometrial status: proliferative, pre-receptive, receptive and post-receptive in both groups, fertile women and infertile patients.


The identification of the optimal time for embryo transfer is essential to maximize the effectiveness of assisted reproductive technologies. For successful embryo implantation, a healthy embryo at blastocyst state and a functional endometrium ready to receive it, are required. There is growing evidence that shows the importance of embryonic-endometrial synchrony for the achievement of a successful pregnancy (Navot et al., Fertil Steril 1991; 55:114-118; Prapas et al., Hum Reprod 1998; 13:720-723; Wilcox et al., N Engl J Med 1999; 340:1796-1799; Shapiro et al., Fertil Steril 2008; 89:20-26; Shapiro et al., Reprod Biomed Online 2014; 29:286-290; Reprod Biomed Online 2016; 33:50-55; Franasiak et al., Fertil Steril 2013; 100:597; Healy et al., Hum Reprod 2017; 32:362-367). This concept, however, has yet to be taken into the IVF clinical practice. Much effort is put in the production and selection of the most competent embryo to be transferred (Chen et al., Fragouli and Wells, Semin Reprod Med 2012; 30:289-301; Cruz et al., J Assist Reprod Genet 2011; 28:569-573; and Forman et al., Fertil Steril 2013; 100:100-107), but little attention is paid to the other essential part of the pregnancy; no detailed analysis of the functionality of the endometrium or the period of uterine receptivity is routinely performed in IVF centers. The identification of the optimal time for embryo transfer is essential to maximize the effectiveness of ART.


The present disclosure relates to methods useful for the characterization of (e.g., clinical evaluation, diagnosis, classification, prediction, or profiling) of endometrial receptivity based on the gene expression profile of a panel of genes (e.g., panel A). The panel of genes described herein are particularly useful for characterizing (e.g., assessing or predicting) a subject for having a receptive status for embryonic implantation. Thus, in some aspects, the disclosure provides methods that include determining the gene expression profile of a selected panel of genes in a biological sample obtained from a subject, wherein a panel comprises a plurality of genes associated with endometrial receptivity. The number of genes in the plurality of genes (e.g., at least two) of panel A may be two or more, three or more, four or more, five or more, six or more, seven or more, eight or more, nine or more, ten or more, eleven or more, twelve or more, thirteen or more, fourteen or more, fifteen or more, sixteen or more, seventeen or more, eighteen or more, nineteen or more, twenty or more, twenty-one or more, twenty-two or more, twenty-three or more, twenty-four or more, twenty-five or more, twenty-six or more, twenty-seven or more, twenty-eight or more, twenty-nine or more, thirty or more, thirty-one or more, thirty-two or more, thirty-three or more, thirty-four or more, thirty-five or more, thirty-six or more, thirty-seven or more, thirty-eight or more, or thirty-nine or more.


Moreover, the methods described herein are useful for diagnosing whether a subject has a receptive endometrial status, a non-receptive endometrial status, a pre-receptive endometrial status, or a post-receptive endometrial status. As used herein, diagnosing includes both diagnosing and aiding in diagnosing. Thus, other diagnostic criteria may be evaluated in conjunction with the results of the methods described herein in order to make a diagnosis.


The disclosure further provides for the communication of the results of the methods described herein to, e.g., technicians, physicians, nurse practitioner or patients. In some embodiments of any of the methods described herein, the method further includes communicating the endometrial status (i.e. as having a receptive endometrial status, as having a non-receptive endometrial status, as having a pre-receptive endometrial status, as having a post-receptive endometrial status) as a report. Any of the methods described herein can include a step of generating or outputting a report providing the results of any of the methods described herein. This report can be provided in the form of a tangible medium (e.g., a report printed on a paper or other tangible medium), in the form of an electronic medium (e.g., an electronic display on a computer monitor), or communicated by phone. In some embodiments, computers are used to communicate results of the methods described herein or predictions, or both, to interested parties, e.g., physicians and their patients.


The methods described herein can be used alone or in combination with other clinical methods for endometrial receptivity stratification known in the art to provide a diagnosis, a prognosis, or a prediction of endometrial receptivity. For example, clinical parameters that are known in the art for predicting endometrial receptivity may be incorporated into the analysis of one of ordinary skill in the art to arrive at an endometrial receptivity assessment with any of the methods described herein.


Methods of Predicting

Also provided herein are methods of predicting endometrial receptivity for embryonic implantation in a human subject that include: (a) providing a first biological sample obtained from a human subject at a first time point within a menstrual cycle; (b) determining the gene expression profile of a panel of genes in the first biological sample, wherein the panel of genes consists of: ANXA4, CATSPERB, PTGFR, PTGS1, IL8, SCGB2A2, ANGPTL1, HPRT1, MMP10, PGR, ITGA8, IFNG, PROK1, FOXO1, CXCL1, STC1, MMP9, MUC1, RPL13A, CALCA, ITGA9, RACGAP1, GPX3, PPP2R2C, ARG2, SCGB3A1, ALDH1A3, APOD, C2CD4B, TFF3, AQP3, GJA4, ARHGDIA, SELL, APOL2, MT1H, MT1X, MT1L, MAOA and MT1F using reverse transcription polymerase chain reaction analysis; and (c) identifying the human subject as having: (i) a receptive endometrial status, wherein the determined gene expression profile corresponds to a gene expression profile of the panel of genes of a receptive endometrial receptivity reference group (ii) a non-receptive endometrial status, wherein the determined gene expression profile corresponds to a gene expression profile of the panel of genes of a non-receptive endometrial reference group, (iii) a pre-receptive endometrial status, wherein the determined gene expression profile corresponds to a gene expression profile of the panel of genes of a pre-receptive endometrial reference group, or (iv) a post-receptive endometrial status, wherein the determined gene expression profile corresponds to a gene expression profile of the panel of genes of a post-receptive endometrial receptivity reference group.


In some aspects, the methods can include transferring pre-implantation embryo into the identified human subject. In other aspects, the methods can include obtaining a second biological sample from the human subject at a second time point and repeating steps (b) and (c) on the second biological sample.


Methods of Determining

As used herein, an endometrial gene expression profile using the selected 40 genes (i.e. panel A) can be determined using any quantitative real-time PCR machine (e.g., a Biomark HD™ System (Fluidigm®)). In some aspects, determining an endometrial gene expression profile of a biological sample (e.g., an endometrial biopsy sample) can include: extracting RNA from the biological sample, performing reverse transcription to generate cDNA, contacting the generated cDNA with pairs of primers targeting the genes of panel A and the control genes, collecting gene expression data using real-time PCR analysis software, performing principal component analysis (PCA) and/or discriminant functional analysis (DA) to determine the endometrial receptivity status of the biological sample as compared to the gene expression profile of panel A of a reference group (e.g., the receptive endometrial reference group, the non-receptive endometrial reference group, the pre-receptive endometrial reference group, the post-receptive endometrial reference group).


Each reverse transcription PCR reaction occurs in a reaction volume that includes all of the components required to carry out a reaction, e.g., primers, buffer, DNA polymerase, reverse transcriptase, sample. The determining step of each gene within the panel of genes is performed in a reaction volume of 0.005 μL to 100 μL (e.g., 0.005 μL to 100 μL, 0.005 μL to 90 μL, 0.005 μL to 80 μL, 0.005 μL to 70 μL, 0.005 μL to 60 μL, 0.005 μL to 50 μL, 0.005 μL to 40 μL, 0.005 μL to 30 82 L, 0.005 μL to 20 μL, 0.005 μL to 10 μL, 0.01 μL to 100 μL, 0.01 μL to 90 μL, 0.01 μL to 80 μL, 0.01 μL to 70 μL, 0.01 μL to 60 μL, 0.01 μL to 50 μL, 0.01 μL to 40 μL, 0.01 μL to 30 μL, 0.01 μL to 20 μL, 0.01 μL to 10 μL, 0.02 μL to 100 μL, 0.02 μL to 90 μL, 0.02 μL to 80 μL, 0.02 μL to 70 μL, 0.02 μL to 60 μL, 0.02 μL to 50 μL, 0.02 μL to 40 μL, 0.02 μL to 30 μL,0.02 μL to 20 μL,0.02 μL to 10 μL, 0.05 μL to 100 μL, 0.05 μL to 90 μL, 0.05 μL to 80 μL, 0.05 μL to 70 μL, 0.05 μL to 60 μL, 0.05 μL to 50 μL, 0.05 μL to 40 μL, 0.05 μL to 30 μL, 0.05 μL to 20 μL, 0.05 μL to 10 μL, 1 μL to 100 μL, 1 μL to 90 μL, 1 μto 80 μL, 1 μL to 70 μL, 1 μL to 60 μL, 1 μL to 50 μL, 1 μL to 40 μL, 1 μL to 30 μL, 1 μL to 20 μL, 1 μL to 10 μL, 5 μL to 100 μL, 5 μL to 90 μL, 5 μL to 80 μL, 5 μL to 70 μL, 5 μL to 60 μL, 5 μL to 50 μL, 5 μL to 40 μL, 5 μL to 30 μL, 5 μL to 20 μL, 5 μL to 10 μL, 10 μL to 100 μL, 10 μL to 90 μL, 10 μL to 80 μL, 10 μL to 70 μL, 10 μL to 60 μL, 10 μL to 50 μL, 10 μL to 40 μL, 10 μL to 30 μL, 10 μL to 20 μL, 15 μL to 100 μL, 15 μL to 90 μL, 15 μL to 80 μL, 15 μL to 70 μL, 15 μL to 60 μL, 15 μL to 50 μL, 15 to 40 μL, 15 μL to 30 μL, 15 μL to 20 μL, 20 μL to 100 μL, 20 μL to 90 μL, 20 μL to 80 μL, 20 μL to 70 μL, 20 μL to 60 μL, 20 μL to 50 μL, 20 μL to 40 μL, 20 μL to 30 μL, 50 μL to 100 μL, 50 μL to 90 μL, 50 μL to 80 μL, 50 μL to 70 μL, 50 μL to 60 μL, 25 μL to 100 μL, 30 μL to 100 μL, 40 μL to 100 μL, 50 μL to 100 μL, 60 μL to 100 μL, 70 μL to 100 μL, 80 μL to 100 μL, 90 μL to 100 μL).


Methods of digesting a tissue sample (e.g., an endometrial biopsy sample) and extracting RNA from a tissue sample are well-known in the art and are described herein.


As used herein, the term “principal component analysis” or “principal component algorithm” refers to a statistical method that uses an orthogonal transformation to convert a set of observations of possibly correlated variables into a set of values of linearly uncorrelated variables called principal components. It finds the principal components of the dataset and transforms the data into a new, lower-dimensional subspace. The principle component, which can be represented by an eigenvector, mathematically corresponds to a direction in the original n-dimensional space, so that the first principal component accounts for as much of the variance in the data as possible, and each succeeding component accounts for as much of the remaining variance as possible.


Principal component analysis (PCA) is a statistical method that uses an orthogonal transformation to convert a set of observations of possibly correlated variables into a set of values of linearly uncorrelated variables called principal components. It finds the principal components of the dataset and transforms the data into a new, lower-dimensional subspace. The transformation is defined in such a way that the first principal component has the largest possible variance (that is, accounts for as much of the variability in the data as possible), and each succeeding component in turn has the highest variance possible under the constraint that it is orthogonal to the preceding components. The resulting vectors are an uncorrelated orthogonal basis set. PCA is sensitive to the relative scaling of the original variables.


Mathematically, the principal components are the eigenvectors of the covariance or correlation matrix of the original dataset. As the covariance matrix or correlation matrix is symmetric, the eigenvectors are orthogonal. The principal components (eigenvectors) correspond to the direction (in the original n-dimensional space) with the greatest variance in the data. Each eigenvector has a corresponding eigenvalue. An eigenvalue is a scalar. The corresponding eigenvalue is a number that indicates how much variance there is in the data along that eigenvector (or principal component). A large eigenvalue means that that principal component explains a large amount of the variance in the data. Similarly, a principal component with a very small eigenvalue explains a small amount variance in the data.


Detailed descriptions regarding how to perform PCA are described in numerous references, e.g., Smith, Lindsay I. “A tutorial on principal components analysis.” Cornell University, USA 51 (2002): 52; Shlens, Jonathon. “A tutorial on principal component analysis.” arXiv preprint arXiv:1404.1100 (2014), each of which is incorporated by reference in its entirety.


To apply principle component analysis for the disclosed methods, a set of data comprising expression profile of a panel of genes is created for each sample. The set of data for a sample can be represented by a vector. The dataset can include the expression profile for all subjects in reference group of interest (e.g., a receptive endometrial reference group, a non-receptive endometrial reference group, a pre-receptive endometrial reference group, a post-receptive endometrial reference group) and/or the expression profile of the panel of the genes for tested subjects. The principal component analysis (PCA) converts the dataset into a dataset with lower dimensions. The positions of the each subject (including subjects in the reference group and the tested subject) are determined in this lower dimensional space. In this lower dimension space, if the tested subject is closer to, or is clustered with a particular reference group, then it can be determined that this tested subject corresponds to this particular reference group.


The methods to determine whether a test subject is closer to, or is clustered with, a particular reference group are known in the art, and can be determined by algorithms known in the art, e.g., hierarchical clustering algorithm, k-means clustering algorithm, a statistical distribution model, etc. Various computer algorithms for data analysis and classification are known in the art to compare gene expression profiles. See, e.g., Diaz-Gimeno et al., Fertil Steril 2011 95(1): 50-60; Diaz-Gimeno et al., Fertil Steril 2013; 99: 508-517.


Kits

Also provided herein are kits that include any of the reagents suitable for predicting endometrial receptivity for transplantation of a pre-implantation embryo. The kits include reagents suitable for determining an endometrial gene expression profile of a panel of genes (e.g., panel A). In some embodiments, the kits can include instructions for performing use of the kit in the methods described herein. In some embodiments, the reagents suitable for determining the endometrial gene expression profile of the biological sample are disposed in an array, a chip, a multi-well plate (e.g., a 96-well plate or a 384-well plate), or a tube (e.g., a 0.2 mL microcentrifuge tube). In some embodiments of any of the kits described herein, the kit includes an array, a chip, a multi-well plate (e.g., a 96-well plate or a 384-well plate), or a tube (e.g., a 0.2 mL microcentrifuge tube). In some embodiments of any of the kits described herein, the kit includes one or more reference groups (e.g., the receptive endometrial reference group, the non-receptive endometrial reference group, the pre-receptive endometrial reference group, the post-receptive endometrial reference group) for determining endometrial gene expression profile of a sample based on computer-assisted algorithms (e.g., principle component analysis, or any other classification algorithms known in the art). In some cases, the kits include software useful for comparing the endometrial gene expression profile of a sample with a reference group (e.g., a prediction model). The software may be provided in a computer readable format (e.g., a compact disc, DVD, flash drive, zip drive etc.), or the software may be available for downloading via the intemet. The kits described herein are not so limited; other variations will be apparent to one of ordinary skill in the art.


EXAMPLES

The invention is further described in the following examples, which do not limit the scope of the invention described in the claims.


Example 1
Endometrial Receptivity Testing on Biomark HD™ System (Fluidigm®)
Study Design

In order to define the method for endometrial receptivity evaluation, gene expression data from endometrial biopsies obtained at different moments of the menstrual cycle from healthy fertile donors (group A) and subfertile women (group B) were analyzed. Endometrial biopsies from group A were used to define endometrial receptivity transcriptomic signature. Endometrial samples from group B were tested and diagnosed for receptivity according to the methods described herein and the endometrial receptivity array ERA® (Igenomix, Spain). Receptivity status concordance between the present method and ERA classification was evaluated in this group of samples.


Patient Selection and Sample Collection

Group A consisted of 96 healthy fertile donors (aged between 18 and 34 years), with regular menstrual cycles and normal body mass indicator (BMI) (25-30). Endometrial biopsies from this group were obtained on two different days of the same natural menstrual cycle: LH+2, i.e. two days after the luteinizing hormone (LH) surge and LH+7, i.e. 7 days after the LH surge. Group B consisted of 120 subfertile patients (aged 30-42 years) seeking ART treatment and undergoing hormone replacement (HRT) cycles. Endometrial biopsies from this group of patients were obtained after 5 full days of progesterone impregnation (P4+5).


Endometrial biopsies were obtained from the uterine fundus using a Pipelle catheter (Gynetics, Namont-Achel, Belgium) under sterile conditions. A piece of endometrial tissue of approximately 30 mg was obtained per donor or subfertile patient. The day of the biopsy was calculated in natural cycles as the number of days after the LH surge. The day of the LH surge was considered LH+0. LH urine levels were measured daily using a commercially available detection kit (Clearblue, SPD Swiss Precision Diagnostics; Geneva, Switzerland). In HRT cycles, the day of the biopsy was calculated as the number of days after the first progesterone intake. The day of the first progesterone intake is considered P4+0. After endometrial biopsy collection, tissue was placed in a CryoTube® (Nunc, Roskilde, Denmark) containing 1 ml RNAlater® (Sigma-Aldrich, St Louis, Mo., USA) and stored at −20° C. until further processing. Ethical approval for the study was obtained from Centro Hospital Universitario Virgen del Rocío (Sevilla, Spain, CEI #2014PI/025). All fertile donors and subfertile patients signed an informed consent document.


Reference Genes Selection

Eight candidate reference genes were selected: actin (ACTN), beta-2 microglobulin (B2M), cytochrome C1 (CYC1), EMG1 N1-specific pseudouridine methyltransferase (EMG1), glyceraldehyde-3-phosphate dehydrogenase (GAPDH), TATA-box binding protein (TBP), topoisomerase (DNA) I (TOPI) and tyrosine 3-monooxygenase/tryptophan 5-monooxygenase activation protein zeta (YWHAZ). The expression stability of these reference genes was calculated using the two freeware Microsoft Excel-based applications GeNorm (Vandesompele et al., Genome Biol 2002; 3:34-1) and NormFinder (Andersen et al., Cancer Res 2004; 64:5245-5250) by following the software developer's manual.


RNA Extraction and cDNA Preparation


Total RNA was extracted using RNeasy mini kit (Qiagen, London, UK) following manufacturer's instructions. RNA purity and concentration was confirmed by NanoDrop 2000 Spectrophotometer (Thermo Scientific, Waltham, Mass., USA) and RNA integrity was assessed using Agilent Bioanalyzer 2100 (Agilent Technologies, Santa Clara, Calif., USA) according to standard protocol provided by the manufacturer. Each total RNA sample was diluted into 250 ng/μl and reverse transcribed into cDNA using Fluidigm® Reverse Transcription Master Mix (Fluidigm®, San Francisco, Calif., USA) following the instructions of the supplier. The cDNA samples were immediately used or stored at −20° C. until further downstream processing for analysis on the BioMark HD™ platform.


Gene Expression Analysis

Pairs of primers targeting the selected and reference genes were designed using the software platform D3 Assay Design (Fluidigm®, San Francisco, Calif.) and obtained from DELTAGene™ Fluidigm®, San Francisco, Calif.). Specific target amplification (STA) was carried out on cDNA samples using Fluidigm® PreAmp Master Mix and DELTAgene assays (Fluidigm®, San Francisco, Calif.) following the manufacturer's instructions. RT-qPCR reactions were performed following the Fast Gene Expression Analysis Using Evagreen on the Biomark HD™ System, Advanced Development Protocol (PN 100-3488, Rev.C1) (Fluidigm®, San Francisco, Calif.) and 96.96 Dynamic Array™ IFC. The BioMark™ HD System uses microfluidic distribution of samples and requires approximately 7 nL per reaction. Data was collected with Fluidigm® Real-Time PCR analysis software using linear baseline correction method and global auto Cq threshold method. Data were then exported to Excel as .csv files and Cq values normalized using the 3 reference genes included in the analysis.


Principal Component Analysis (PCA) and Discriminant Functional Analysis

Differential expression of genes in the proliferative and secretory phases was assessed by comparing ΔCq values from LH+2 and LH+7 groups. In order to define the genes that had altered mRNA abundance among the groups, a paired t-test (p<0.05) was performed. Fold change (−ΔΔCq) was calculated to determine up-regulated and down regulated genes in the WOI. In order to assess if receptivity status could be established with a reduced number of genes, a principal component analysis (PCA) of the genes showing significant fold change between LH+2 and LH+7 was performed. Discriminant functional analysis (DA) was then used to evaluate the ability of the genes with the highest absolute coefficient value from each of the leading principal components to accurate discriminate samples into the following states: proliferative, receptive, pre-receptive and post-receptive. A Split-Sample validation of the DA was performed to assess the reliability and robustness of discriminant findings. Both fertile and infertile patient samples were split into two subsets. One data set (70% of the samples) was used as a training set and the other one as testing set (remaining 30% of the samples). The percentage of correct classifications was calculated to determine the reliability of the DA model. Data analyses were performed by using IBM SPSS Statistics software version 19.0.


Gene Function Analysis

To study the biological functions and pathways of the genes selected, DAVID v.6.7 bioinformatics resources were used (Huang et al., Nucleic Acids Res 2009; 37:1-13). Assessment and integration of protein-protein interactions was performed by the Search Tool for the Retrieval of Interacting Genes/Proteins (STRING v.10.0 database, (http://string-db.org) (Szklarczyk et al., Nucleic Acids Res 2015; 43:D447-D452).


Results: Gene Expression, Principal Component Analysis (PCA) and Discriminant Functional Analysis

A total of 184 genes related to endometrial receptivity and embryonic implantation were carefully chosen after extensive literature review (Table 1).









TABLE 1







Panel of Selected Genes










Gene


NCBI Accession


Symbol
Gene Name
Reference
No.





ABCC3
ATP-binding cassette,
Díaz-Gimeno
NM_003786.3



sub-family C
et al. 2011




(CFTR/MRP), member 3




ACTA1
Actin, alpha skeletal
Altmäe et al.
NM_001100.3



muscle
2010



ALDH1A3
Aldehyde dehydrogenase
Dominguez et
NM_000693.3



family 1 member A3
al. 2009;





Haouzi et al





2009, 2013



AMIGO2
Adhesion molecule with
Díaz-Gimeno
NM_001143668.1



Ig-like domain 2
et al. 2011



ANGPTL1
Angiopoietin-like 1
Haouzi et al
NM_004673.3




2009, 2012



ANXA2
Annexin A2
Dominguez et
NM_001002857.1




al. 2009;





Haouzi et al.





2012; Tracey





et al. 2013



ANXA4
Annexin A4
Li et al. 2006;
NM_001153.4




Chen et al





2009; Díaz-





Gimeno et al.





2011; Ruíz-





Alonso et al.





2012; Haouzi





et al. 2012;





Tracey et al.





2013



APOD
Apolipoprotein D
Ruíz-Alonso
NM_001647.3




et al. 2012



APOE
Apolipoprotein E
Ruíz-Alonso
NM_001302688.1




et al. 2012



APOL2
Apolipoprotein L, 2
Dominguez et
NM_030882.3




al. 2009;





Haouzi et al





2009, 2013



AQP3
Aquaporin-3
Díaz-Gimeno
NM_004925.4




et al. 2011;





Ruíz-Alonso





et al. 2012



AREG
Amphiregulin
Aghajanova
NM_001657.3




et al. 2008;





Bamea et al.





2012



ARG2
Arginase 2
Díaz-Gimeno
NM_001172.3




et al. 2011



ARHGDIA
Rho GDP-dissociation
Chen et al.
NM_001185077.2



inhibitor (GDI) alpha
2009; Tracey





et al. 2013



ATP5B
ATP synthase, H+
Sadek et al.
NM_001686.3



transporting,
2012




mitochondrial F1





complex, beta





polypeptide




BTC
Probetacellulin
Barnea et al.
NM_001729.3




2012



C2CD4B
C2 calcium-dependent
Haouzi et al.
NM_001007595.2



domain-containing
2009, 2012




protein 4B




C4BPA
Complement component
Díaz-Gimeno
NM_000715.3



4 binding protein, alpha
et al. 2011



CALCA
Calcitonin-related
Otsuka et al.,
NM_001033953.2



polypeptide alpha
2007



CALR
Calreticulin
Parmar et al.
NM_004343.3




2009; Tracey





et al. 2013



CAPN6
Calpain-6
Altmäe et al.
NM_014289.3




2010; Díaz-





Gimeno et al.





2011



CATSPERB
Cation channel sperm
Díaz-Gimeno
NM_024764.3



auxiliary subunit beta
et al. 2011



CCL2
Chemokine (C-C motif)
Barnea et al.
NM_002982.3



ligand 2
2012



CCR7
Chemokine (C-C motif)
Altmäe et al.
NM_001838.3



receptor 7
2010



CD55
CD55 molecule, decay
Ruíz-Alonso
NM_000574.4



accelerating factor for
et al. 2012




complement (Cromer





blood group)




CDA
Cytidine deaminase
Díaz-Gimeno
NM_001785.2




et al. 2011



CDH1
Cadherin-1, type
Banerjee et al.
NM_004360.4



1, Epitelial- Cadherin
2013



CIR1
Corepressor interacting
Ruíz-Alonso
NM_004882.3



with RBPJ 1
et al. 2012



CLDN4
Claudin-4
Ruíz-Alonso
NM_001305.4




et al. 2012



CLIC1
Chloride intracellular
Chen et al.
NM_001287593.1



channel protein 1
2009; Tracey





et al. 2013



CLU
Clusterin
Díaz-Gimeno
NM_001831.3




et al. 2011



CMTM5
CKLF-like MARVEL
Altmäe et al.
NM_138460.2



transmembrane domain-
2010




containing protein 5




COL16A1
Collagen, type XVI,
Altmäe et al.
NM_001856.3



alpha 1
2010; Díaz-





Gimeno et al.





2011



CRHR2
Corticotropin-releasing
Makrigianakis
NM_001883.4



factor receptor 2
et al. 2004



CRISP3
Cysteine-rich secretory
Díaz-Gimeno
NM_006061.3



protein 3
et al. 2011;





Ruíz-Alonso





et al. 2012



CSF1
Colony stimulating factor
Gargiulo et al.
NM_000757.5



1 (macrophage)
2004;





Aghajanova





et al. 2008;





Tawfeek et al.





2012



CSF3
Colony stimulating factor
Lédée et al.
NM_000759.3



3 (granulocyte)
2011



CSRP2
Cysteine and glycine-rich
Díaz-Gimeno
NM_001321.2



protein 2
et al. 2011



CTNNA2
Catenin alpha-2
Altmäe et al.
NM_ 001282597.2




2010; Díaz-





Gimeno et al.





2011



CXCL1
Growth-regulated alpha
Barnea et al.
NM_001511.3



protein
2012



CXCL14
C-X-C motif chemokine
Díaz-Gimeno
NM_004887.4



14
et al. 2011;





Ruíz-Alonso





et al. 2012



CXCL6
C-X-C motif chemokine
Altmäe et al.
NM_002993.3



6 (Chemokine alpha 3)
2010



DEFB1
Beta-defensin 1
Díaz-Gimeno
NM_005218.3




et al. 2011



DKK1
Dickkopf WNT signaling
Díaz-Gimeno
NM_012242.3



pathway inhinitor 1 1
et al. 2011;





Ruíz-Alonso





et al. 2012



EGF
Epidermal Growth Factor
Gargiulo et al.
NM_001963.5




2004;





Aghajanova





et al. 2008;





Sing et al.





2011; Barnea





et al. 2012



EPHB3
EPH receptor B3
Díaz-Gimeno
NM_004443.3




et al. 2011



EREG
Proepiregulin
Barnea et al.
NM_001432.2




2012



ESR1
Estrogen receptor 1
Gao et al.
NM_000125.3




2012



ESR2
Estrogen Receptor 2 (ER
Altmäe et al.
NM_001437.2



Beta)
2010



EZR
Ezrin
Chen et al.
NM_003379.4




2009; Tracey





et al. 2013



FAM3B
Family with sequence
Altmäe et al.
NM_058186.3



similarity 3, member B
2010



FAM3D
Family with sequence
Altmäe et al.
NM_138805.2



similarity 3, member D
2010



FASLG
Fas ligand (TNF
Makrigianakis
NM_000639.2



superfamily, member 6)
et al. 2004



FGF7
Fibroblast growth factor 7
Cavagna et al.
NM_002009.3




2003



FOXO1
Forkhead box protein O1
Ruíz-Alonso
NM_002015.3




et al. 2012



FOXP3
Forkhead box protein P3
Chen et al.
NM_014009.3




2012



FUT4
Fucosyltransferase 4
Liu et al.
NM_002033.3



(alpha (1, 3)
2012




fucosyltransferase,





myeloid-specific




FZD5
Frizzled-5
Liu et al.
NM_003468.3




2010



GABARAPL1
Gamma-aminobutyric
Díaz-Gimeno
NM_031412.2



acid (GABA(A) receptor-
et al. 2011




associated protein-like 1




GADD45A
Growth arrest and DNA
Díaz-Gimeno
NM_001924.3



damage-inducible protein
et al. 2011;




GADD45 alpha
Ruíz-Alonso





et al. 2012



GAST
Gastrin
Díaz-Gimeno
NM_000805.4




et al. 2011



GDF15
Growth differentiation
Díaz-Gimeno
NM_004864.3



factor 15
et al. 2011



GJA4
Gap junction protein,
Ruíz-Alonso
NM_002060.2



alpha 4, 37 kDa
et al. 2012



GNLY
Granulysin
Díaz-Gimeno
NM_001302758.1




et al. 2011;





Ruíz-Alonso





et al. 2012



GPX3
Glutathione peroxidase 3
Díaz-Gimeno
NM_002084.4




et al. 2011;





Ruíz-Alonso





et al. 2012



HBA1
Hemoglobin, alpha 1
Altmäe et al.
NM_000558.4




2010



HBEGF
Heparin Binding-EGF-
Stavreus-
NM_001945.2



like growth factor
Evers et al.





2002;





Aghajanova





et al. 2008;





Altmäe et al.





2010; Sing et





al. 2011;





Barnea et al.





2012



HBG1
Hemoglobin, gamma A
Altmäe et al.
NM_000559.2




2010



HMBS
Hydroxymethylbilane
Vestergaard
NM_000190.3



synthase
et al. 2011



HOXA10
Homeobox A10
Aghajanova
NM_018951.3




et al. 2008;





Wei et al.





2009;





Kakmak et al.





2011; Ruíz-





Alonso et al.





2012;





Garrido-





Gomez et al.





2013; Jana et





al. 2013



HOXA11
Homeobox A11
Lynch et al.,
NM_005523.5




2009



HOXB7
Homeobox B7
Ruíz-Alonso
NM_004502.3




et al. 2012



HPRT1
Hypoxanthine
Vestergaard
NM_000194.2



phosphoribosyltransferase
et al. 2011




1




HPSE
Heparanase
Díaz-Gimeno
NM_006665.5




et al. 2011



ICAM1
Intercellular adhesion
Zhao et al.,
NM_000201.2



molecule 1
2010



ID4
DNA-binding protein
Díaz-Gimeno
NM_001546.3



inhibitor ID-4
et al. 2011;





Ruíz-Alonso





et al. 2012



IDH1
Isocitrate dehydrogenase
Díaz-Gimeno
NM_005896.3



1 (NADP+), soluble
et al. 2011



IER3
Immediate early response
Díaz-Gimeno
NM_003897.3



3
et al. 2011



IFNG
Interferon gamma
Banerjee et al.
NM_000619.2




2013



IGFBP1
Insulin-like growth
Altmäe et al.
NM_000596.3



factor-binding protein 1
2010; Díaz-





Gimeno et al.





2011



IGFBP3
Insulin-like growth
Ruíz-Alonso
NM_001013398.1



factor-binding protein 3
et al. 2012



IL10
Interleukin 10
Banerjee et al.
NM_000572.2




2013



IL11
Interleukin 11
Altmäe et al.
NM_000641.3




2010; Sing et





al. 2011;





Tawfeek et al.





2012



IL15
Interleukin-15
Lédée et al.
NM_000585.4




2011; Díaz-





Gimeno et al.





2011; Ruíz-





Alonso et al.





2012



IL18
Interleukin-18
Lédée et al.
NM_001562.3




2011



IL1B
Interleukin 1 Beta
Gargiulo et al.
NM_000576.2




2004;





Aghajanoya





et al. 2008;





Altmäe et al.





2010; Cheong





et al. 2012;





Koot et al.





2012;





Banerjee et al.





2013



IL1R1
Interleukin-1 Receptor
Garrido-
NM_001288706.1



type
Gómez et al.





2013



IL2
Interleukin 2
Banerjee et al.
NM_000586.3




2013



IL21
Interleukin-21
Altmäe et al.
NM_021803.3




2010



IL4
Interleukin 4
Banerjee et al.
NM_000589.3




2013



IL5
Interleukin 5 (colony-
Teklenburg et
NM 000879.2



stimulating factor,
al., 2010




eosinophil)




IL6
Interleukin 6
Sing et al.
NM_000600.4




2011; Cheong





et al. 2012;





Koot et al.





2012; Barnea





et al. 2012;





Tawfeek et al.





2012



IL8
Interleukin 8
Banerjee et al.
NM_000584.3




2013



ITGAV
Integrin, alpha V
Lessey et al.,
NM_002210.4




2000; Nardo





et al. 2003;





Aghajanova





et al. 2008;





Barnea et al.





2012; Ruíz-





Alonso et al.





2012; Koot et





al. 2012; Jana





et al. 2013;





Tracey et al.





2013



ITGA2
Integrin, alpha 2 (CD49B,
Barnea et al.
NM_002203.3



alpha 2 subunit of VLA-2
2012




receptor)




ITGA8
Integrin, alpha 8
Altmäe et al.
NM_003638.2




2010



ITGA9
Integrin, alpha 9
Barnea et al.
NM_002207.2




2012



ITGB1
Integrin, beta 1
Barnea et al.
NM_002211.3




2012



ITGB3
Integrin, beta 3
Barnea et al.
NM_000212.2




2012



KCNG1
Potassium voltage-gated
Díaz-Gimeno
NM_002237.3



channel subfamily G
et al. 2011




member 1




LCP1
Lymphocyte cytosolic
Dominguez et
NM_002298.4



protein (L-plastin)
al. 2009;





Haouzi et al.





2009, 2013



LEP
Leptin
Labarta et al.,
NM_000230.2




2011



LIF
Leukaemia Inhibitor
Aghajanova
NM_002309.4



Factor
et al. 2003;





Gargiulo et al.





2004;





Aghajanova





et al. 2008;





Altmäe et al.





2010; Sing et





al. 2011;





Díaz-Gimeno





et al. 2011;





Tawfeek et al.





2012; Ruíz-





Alonso et al.





2012;





Tawfeek et al.





2012; Jana et





al. 2013;





Garrido-





Gómez et al.





2013



LIFR
Leukemia inhibitory
Aghajanova
NM_001127671.1



factor Receptor alpha
et al. 2003;





Aghajanova





et al. 2008;





Tawfeek et al.





2012



LPAR3
Lysophosphatidic acid
Wei et al.
NM_012152.2



receptor 3
2009



LRPPRC
Leucine-rich PPR motif-
Tawfeek et
NM_133259.3



containing protein
al., 2012;





Tracey et al.





2013



LRRC17
Leucine-rich repeat-
Díaz-Gimeno
NM_001031692.2



containing protein 17
et al. 2011



LYPD3
Ly6/PLAUR domain-
Díaz-Gimeno
NM_014400.2



containing protein 3
et al. 2011



MAOA
Monoamine oxidase A
Dominguez et
NM_000240.3




al. 2009;





Díaz-Gimeno





et al. 2011;





Ruíz-Alonso





et al. 2012;





Haouzi et al.





2012



MAP2K1
Mitogen-activated protein
Barnea et al.
NM_002755.3



kinase 1
2012



MAP3K5
Mitogen-activated protein
Ruíz-Alonso
NM_005923.3



kinase 5
et al. 2012



MAPK1
Mitogen-activated protein
Barnea et al.
NM_002745.4



kinase 1
2012



MAPK3
Mitogen-activated protein
Barnea et al.
NM_002746.2



kinase 3
2012



MAPK8
Mitogen-activated protein
Barnea et al.
NM_001278547.1



kinase 8
2012



MFAP5
Microfibrillar-associated
Haouzi et al.
NM_003480.3



protein 5
2009, 2012;





Díaz-Gimeno





et al. 2011



MMP10
Matrix metallopeptidase
Altmäe et al.
NM_002425.2



10 (Stromelysin-2)
2010



MMP2
Matrix Metalloproteinase
Banerjee et al.
NM_004530.5



2 (gelatinase A, 72 kDA
2013




gelatinase, 72 kDA type





IV collagenase)




MMP26
Matrix metallopeptidase
Altmäe et al.
NM_021801.4



26
2010; Ruíz-





Alonso et al.





2012



MMP8
Matrix metallopeptidase 8
Altmäe et al.
NM_002424.2



(Neutrophil collagenase)
2010



MMP9
Matrix Metallopeptidase9
Banerjee et al.
NM_004994.2



(gelatinase B, 92 kDa
2013




gelatinase, 92 kDa type





IV collagenase)




MT1E
Metallothionein 1E
Ruíz-Alonso
NM_175617.3




et al. 2012



MT1F
Metallothionein 1F
Ruíz-Alonso
NM_005949.3




et al. 2012



MT1G
Metallothionein 1G
Díaz-Gimeno
NM_001301267.1




et al. 2011;





Ruíz-Alonso





et al. 2012



MT1H
Metallothionein 1H
Ruíz-Alonso
NM_005951.2




et al. 2012



MT1L
Metallothionein 1L
Ruíz-Alonso
NR_001447.2




et al. 2012



MT1X
Metallothionein 1X
Ruíz-Alonso
NM_005952.3




et al. 2012



MT2A
Metallothionein 2
Díaz-Gimeno
NM_005953.4




et al. 2011;





Ruíz-Alonso





et al. 2012



MUC1
Mucin 1, cell surface
Altmäe et al.
NM_002456.5



associated
2010; Koot et





al. 2012;





Garrido-





Gómez et al.





2013



MUC16
Mucin-16, cell surface
Altmäe et al.
NM_024690.2



associated
2010; Díaz-





Gimeno et al.





2011



MUC4
Mucin-4, cell surface
Aghajanova
NM_018406.6



associated
et al. 2008;





Altmäe et al.





2010



MUC5B
Mucin-5B, oligomeric
Aghajanova
NM_002458.2



mucus/gel-forming
et al. 2008;





Altmäe et al.





2010



NFKB1
Nuclear factor of kappa
Barnea et al.
NM_003998.3



light polypeptide
2012




enhancer in B cells 1




NFKBIA
Nuclear factor of kappa
Barnea et al.
NM_020529.2



light polypeptide
2012




enhancer in B cells





inhibitor, alpha




NFKBIE
Nuclear factor of kappa
Barnea et al.
NM_004556.2



light polypeptide
2012




enhancer in B cells





inhibitor, epsilon




NNMT
Nicotinamide N-
Díaz-Gimeno
NM_006169.2



methyltransferase
et al. 2011



OPRK1
Opiod receptor, kappa 1
Díaz-Gimeno
NM_000912.4




et al. 2011



PAEP
Progestagen-associated
Stavreus-
NM_001018049.2



endometrial protein
Evers et al.





2006;





Aghajanova





et al. 2008;





Wei et al.





2009; Díaz-





Gimeno et al.





2011, Ruíz-





Alonso et al.





2012; Ming-





Qing et al.





2013



PGR
Progesterone Receptor
Stavreus-
NM_000926.4




Evers et al.





2001;





Aghajanova





et al. 2008;





Gao et al.





2012



PGRMC1
Progesterone receptor
Chen et al.
NM_006667.4



membrane component 1
2009; Tracey





et al. 2013



PLA2G16
Phospholipase A2, group
Díaz-Gimeno
NM_007069.3



XVI
et al. 2011



PLA2G4A
Phospholipase A2, group
Berlanga et
NM_024420.2



IVA (cytosolic, calcium-
al. 2011




dependent)




PPP2R2C
Protein phosphatase 2,
Barnea et al.
NM_020416.3



regulatory subunit B,
2012




gamma




PRDX1
Peroxiredoxin 1
Stavreus-
NM_002574.3




Evers et al.





2002;





Aghajanova





et al. 2008



PRDX2
(Peroxiredoxin 2
Stavreus-
NM_005809.5




Evers et al.





2002;





Aghajanova





et al. 2008



PRKCG
Protein kinase C, gamma
Altmäe et al.
NM_001316329.1




2010



PROK1
Prokineticin-1
Haouzi et al
NM_032414.2




2009, 2012



PTGER3
Prostaglandin E receptor
Banerjee et al.
NM_001126044.1



3 (subtype EP3)
2013; Vilella





et al. 2013



PTGFR
Prostaglandin F receptor
Berlanga et
NM_000959.3



(FP)
al. 2011



PTGS1
Prostaglandin-
Aghajanova
NM_000962.3



endoperoxide synthase 1
et al. 2008;




(prostaglandin G/H
Sing et al.




synthase and
2011; Koot et




cyclooxygenase)
al. 2012



PTGS2
Prostaglandin-
Aghajanova
NM_000963.3



endoperoxide synthase 2
et al. 2008;




(prostaglandin G/H
Sing et al.




synthase and
2011; Koot et




cyclooxygenase)
al. 2012;





Banerjee et al.





2013



PTPRZ1
Protein-tyrosine
Barnea et al.
NM_002851.2



phosphatase, receptor
2012




type, Z polypeptide 1




RAC1
Ras-related C3 botulinum
Grewal et al.,
NM_018890.3



toxin substrate 1 (rho
2008




family, small GTP





binding protein Rac1




RACGAP1
Rac GTPase-activating
Grewal el al.
NM_013277.4



protein 1
2008



RHOA
Ras homolog family
Heneweer
NM_001664.3



member A
et al., 2008



RPL13A
Ribosomal protein L13a
Vestergaard
NM_012423.3




et al. 2011



S100A1
S100 calcium binding
Díaz-Gimeno
NM_006271.1



protein A1
et al. 2011



S100A10
S100 calcium binding
Dominguez et
NM_002966.2



protein A10
al. 2009;





Haouzi et al





2009, 2013;





Ruíz-Alonso





et al. 2013



S100A2
S100 calcium binding
Altmäe et al.
NM_005978.3



protein A2
2010



S100P
S100 calcium binding
Díaz-Gimeno
NM_005980.2



protein P
et al. 2011;





Zhang et al.





2012



SCGB2A2
Secretoglobin, family 2A,
Díaz-Gimeno
NM_002411.3



member 2
et al. 2011



SCGB3A1
Secretoglobin, family 3A,
Altmäe et al.
NM_052863.2



member 1
2010



SDHA
Succinate dehydrogenase
Vestergaard
NM_004168.3



complex, subunit A,
et al. 2011;




flavoprotein (Fp)
Sadek et al.





2012



SELL
Selectin L
Genbaced et
NM_000655.4




al. 2003;





Aghajanova





et al. 2008;





Ruíz-Alonso





et al. 2012;





Banerjee et al.





2013



SERPINA1
Serpin peptidase
Parmar et al.
NM_000295.4



inhibitor, clade A (alpha-
2009; Tracey




1 antiproteinase,
et al. 2013




antitrypsin), member 1




SERPING1
Serpin peptidase
Díaz-Gimeno
NM_000062.2



inhibitor, clade G (C1
et al. 2011;




inhibitor), member 1
Ruíz-Alonso





et al. 2012



SGK1
Serine/glucocorticoid
Altmäe et al.
NM_005627.3



regulated kinase 1
2010



SLPI
Secretory leukocyte
Díaz-Gimeno
NM_003064.3



peptidase inhibitor
et al. 2011



SOD2
Superoxide dismutase 2,
Díaz-Gimeno
NM_000636.3



mitochondrial
et al. 2011



SPDEF
SAM pointed domain
Díaz-Gimeno
NM_012391.2



containing ETS
et al. 2011




transcription factor




SPP1
Secreted phosphoprotein
Lessey et al.
NM_001251830.1



1 (Osteopontin)
2003;





Aghajanova





et al. 2008;





Wei et al.





2009; Díaz-





Gimeno et al.





2011; Barnea





et al. 2012;





Ruíz-Alonso





et al. 2012,





Garrido-





Gómez et al.





2013



STAT3
Signal transducer and
Catalano et al.
NM_139276.2



activator of transcription
2005




3 (Acute-phase response





factor)




STC1
Stanniocalcin-1
Ruíz-Alonso
NM_003155.2




et al. 2012



STMN1
Stathmin
Chen et al.
NM_001145454.2




2009;





Dominguez et





al. 2009;





Haouzi et al.





2012; Tracey





et al. 2013



TAGLN2
Transgelin 2
Dominguez et
NM_001277224.1




al. 2009;





Haouzi et al





2009, 2013;





Díaz-Gimeno





et al. 2011



TFF3
Trefoil factor 3
Altmäe et al.
NM_003226.3



(intestinal)
2010; Ruíz-





Alonso et al.





2012



TGFB1
Transforming growth
Gargiulo et al.
NM_000660.6



factor, beta 1
2004;





Aghajanova





et al. 2008;





Sing et al.





2011; Barnea





et al. 2012;





Banerjee et al.





2013



TNC
Tenascin
Barnea et al.
NM_002160.3




2012



TNF
Tumor Necrosis Factor
Banerjee et al.
NM_000594.3



alpha
2013



TNFRSF11B
Tumor necrosis factor
Barnea et al.
NM_002546.3



receptor superfamily,
2012




member 11B




TSPAN8
Tetraspanin 8
Díaz-Gimeno
NM_004616.2




et al. 2011



VCAM1
Vascular cell adhesion
Díaz-Gimeno
NM_001078.3



protein 1
et al. 2011;





Barnea et al.





2012



VEGFA
Vascular Endothelial
Banerjee et al.
NM_001025366.2



Growth Factor A
2013



WISP2
WNT1-inducible-
Altmäe et al.
NM_001323370.1



signaling pathway protein
2010




2









Several biological processes mainly related to cellular proliferation, response to wounding, defense and immune response were found to be statistically over-represented as analyzed by DAVID bioinformatics tool (Table 2).









TABLE 2







GO functional enrichment of the 192 WO1 genes











Category
Term
Genes
%
p-value














BP
Regulation of cell proliferation
47
24.6
9.0 E−19


BP
Positive regulation of cell
33
17.3
1.6 E−16



proliferation





BP
Response to wounding
35
18.3
5.1 E−15


BP
Defense response
36
18.8
6.8 E−14


BP
Positive regulation of immune
23
12.0
3.9 E−13



system process





BP
Negative regulation of transport
18
9.4
1.4 E−12


MF
Cytokine activity
30
15.7
3.7 E−23


MF
Growth factor activity
23
12.0
6.0 E−17


MF
Cadmium ion binding
5
2.6
4.9 E−6


MF
Antioxidant activity
7
3.7
2.6 E−5


CC
Extracellular region part
65
34
6.3 E−30


CC
Extracellular space
55
28.8
2.0 E−28





BP = biological process,


MF = molecular function;


CC = cellular component






Exploration of the interactions of proteins codified by the selected genes rendered the following results: a total of 1,334 protein-protein interactions when the expected was 425 in the network analysis (clustering coefficient=0.616) (FIG. 1). The set of proteins codified by the selected genes have more interactions among themselves than what would be expected for a random set of proteins of similar size, drawn from the genome. Such enrichment indicated that these proteins were biologically connected as a group.


Expression stability analysis of the eight selected reference genes showed that Cytochrome C1 (CYC1), glyceraldehyde-3-phosphate dehydrogenase (GAPDH), TATA-box binding protein (TBP) and tyrosine 3-monooxygenase/tryptophan 5-monooxygenase activation protein zeta (YWHAZ) were the most stable genes. These genes, previously found to be useful for normalizing endometrial gene expression data (Vestergaard et al., Mol Hum Reprod 2011; 17:243-254; Sadek et al., Hum Reprod 2012; 27:251-256), and were selected and used for normalization of gene expression values.


Comparison of gene expression data of the selected WOI genes in fertile subjects on days LH+2 and LH+7 of their cycles showed a total of 85 genes presenting significant differences in the fold change (p<0.05; paired t-test) between the proliferative (LH+2) and the secretory phase (LH+7). Most genes were up regulated (n=71) rather than downregulated (n=14) (FIGS. 2A and 2B). Gene ontology (GO) analysis revealed that these 85 genes were related to cell division and proliferation, cell signaling and response, extracellular organization and communication, immunological activity, vascular proliferation, blood pressure regulation and embryo implantation. Additionally, comprehensive analysis of protein-protein interactions showed a total of 23 interactions when the expected number was 10 (clustering coefficient=0.218, P=0.000344).


Principal component analysis (PCA) of the 85 genes showing significant fold change between LH+2 and LH+7 revealed that 40 components explained more than 99.5% of total sample variance. The variance provided by each component and the cumulative percentage along the 40 components together with the genes with the highest absolute coefficient value from each of the leading principal components are represented in FIG. 3A. These genes were selected for further discriminant function analysis (DA) (Jolliffe Appl Stat 1972; 21:160-173; Jolliffe Applied Stat 1973; 22:21-31). DA assessed the effectiveness of the selected genes to accurately classify the receptivity status of endometrial biopsies from both fertile donors and subfertile patients (FIG. 3B).


Within the group of donors, the selected 40 genes disclosed in FIG. 3A (endometrial receptivity panel A genes) allowed accurate classification of samples into two endometrial receptivity statuses: proliferative (non-receptive) and receptive. Using a DA model based on the 40 genes selected, 100% of LH+2 samples were categorised as non-receptive, and all LH+7 samples were classified as receptive in both the training and test sets (Table 3).









TABLE 3







Discriminant Functional Analysis Classification Results











ORIGINAL

PREDICTED GROUP MEMBERSHIP (%)a,b,c,d














GROUP

Non-
Pre-

Post-



MEMBERSHIP
N
receptive
receptive
Receptive
receptive










DONORS













Training Set
LH + 2
67
100.0

0.0




LH + 7
67
0.0

100.0



Test Set
LH + 2
29
100.0

0.0




LH + 7
29
0.0

100.0








PATIENTS













Training Set
Pre-receptive
29

100.0
0.0
0.0



Receptive
41

2.4
95.1
2.4



Post-receptive
13

0.0
0.0
100.0


Test Set
Pre-receptive
13

92.3
7.7
0.0



Receptive
18

5.6
94.4
0.0



Post-receptive
6

0.0
16.7
83.3






aDonors training set: 100% of original grouped cases correctly classified




bDonors testing set: 100% of original grouped cases correctly classified




cPatients training set: 97.59% of original grouped cases correctly classified




dPatients testing set: 91.67% of original grouped cases correctly classified







Within the patient group, the endometrial receptivity panel A genes classification matched the endometrial biopsy status prediction provided by an independent endometrial receptivity test (ERA) in 97.59% samples in the training set and 91.67% in the testing set. In the training set, two samples were classified differently by the two tests and, in the testing set, there were three.


The accurate identification of the period of endometrial receptivity could be key for the achievement of a successful pregnancy in many couples. The importance of embryonic-endometrial synchrony for successful implantation have been reported in several studies. Shapiro et al. (2008) showed that the lower implantation rates observed in Day 6 embryos transferred fresh compared to Day 5 embryos were not due to an embryonic factor but rather to the endometrial moment where embryos were transferred. No differences in implantation rates were detected in cryotransfers of either day 5 or day 6 blastocysts. Similar results were reported by Franasiak et al. (2013) that showed that the diminished ART outcomes from embryos with delayed blastulation, traditionally attributed to reduced embryo quality, result from an embryonic-endometrial dissynchrony. These studies highlight the importance of embryo-endometrial synchrony to increase implantation rates.


Reports exploring the concept of the WOI, show that the timing of implantation can also influence pregnancy loss. Wilcox et al. (1999) showed a strong increase in the risk of early pregnancy loss with late implantation. Further studies looking at the impact of endometrial-embryo asynchrony on ART outcomes have found that the combination of elevated progesterone on the day of trigger (advanced endometrium) and slow growing embryos results in low live birth rates (Healy et al., Hum Reprod 2017; 32:362-367). This problem seems to be influenced by maternal age. Shapiro et al. in a recent study (2016) reported elevated incidence of factors associated with embryo-endometrium asynchrony in women over 35 years, high pre-ovulatory serum progesterone levels and increased numbers of delayed-growth embryos. This, together with the already well known decrease in gamete quality of women of advanced reproductive age (Fragouli et al., Hum Genet 2013; 132:1001-1013), underlines the importance of women's age for reproductive success and the need for the development of diagnostic and therapeutic tools to increase the chances of these women becoming a mother.


In contrast to previous studies aimed at developing tools for endometrial receptivity evaluation (Horcajadas et al., Fertil Steril 2008; 88:S43-S44; Diaz-Gimeno et al., Fertil Steril 2011; 95: 50-60,60-15), a selection of genes was chosen which are involved in biological processes taking place on the endometrium during the WOI and which are related to endometrial preparation for embryonic implantation. Upon the selection performed based on the literature, an over-representation of processes very relevant to the phenomenon of endometrial receptivity acquisition such as cellular proliferation, response to wounding, defense and immune response, were found. Within this group of genes, a subset of 85 especially were found to be interesting as they showed significant differences in expression between the proliferative and secretory phases. These genes GO analyses revealed cellular components, biological processes and molecular functions related to cell signaling and response, extracellular organization, cell division and proliferation, immunological activity, vascular proliferation and embryo implantation. Interestingly an over-representation of processes involving vesicles and exosomes was also found. These terms match with previously described processes known to occur at the time of implantation. Cellular matrix remodeling and an increase in vascular proliferation permeability and angiogenesis at the implantation site are one of the earliest prerequisites for embryo implantation (Zhang et al., Mol Reprod Dev 2013; 80:8-21). Also intense communication through cell signaling between the embryo and the endometrial cells has been described as part of the embryo-endometrial crosstalk essential for adequate embryonic implantation involving, in some cases, extracellular vesicles/exosomes (Ng et al., PLoS One 2013; 8:58502). Also, immune responses have been proven to play important roles in early pregnancy (Altmae et al., 2010; and Haller-Kikkatalo et al., Semin Reprod Med 2014; 32: 376-384).


PCA analysis, a dimension-reduction tool that can be used to reduce a large set of variables to a small set that still contains most of the information in the large set, revealed that a subset of 40 of the 85 genes differentially expressed genes, called endometrial receptivity panel A genes could accurately differentiate between LH+2 and LH+7. These genes, listed in FIG. 3A, allow 100% correct classification of endometrial samples from donors into these two status groups. This panel of genes is also able to assess the receptivity status of samples from infertile patients obtained at the secretory phase, classifying samples into: “receptive’, this means the WHO matches the day on which the biopsy was taken; “pre-receptive”, meaning that the endometrium has not reached its WOI yet or “post-receptive”, i.e., this endometrium has already passed its WOI.


Focusing on the technical aspects of the development, high-throughput RT-qPCR was chosen for the analysis of such a panel of endometrial biopsies. RT-qPCR is the most robust and reliable technique currently available for gene expression analysis. Alternative methodologies output such as microarray results and RNA-seq expression data need to be validated using RT-qPCR methods (Mortazavi et al., Nat Methods 2008; 5:621-628; and Costa et al., Transl lung cancer Res 2013; 2:87-91).


The implementation of endometrial receptivity tests such as the one developed in the present study into the clinical practice routine may help guide embryo transfers to be performed in the best endometrial moment, guaranteeing embryo-endometrial synchrony and thus, allowing for the achievement of better ART results. Couples with repeated implantation failure, previously failed IVF cycles and also couples with recurrent miscarriage would benefit from the detailed analysis of endometrial receptivity and embryo-endometrial synchronization. This study is a new step in the field of personalized medicine in human reproduction in the management of the endometrium in preparation for embryo transfer, with the final goal of achieving better ART results increasing embryo implantation rate and the likelihood of successful pregnancies.


OTHER EMBODIMENTS

It is to be understood that while the invention has been described in conjunction with the detailed description thereof, the foregoing description is intended to illustrate and not limit the scope of the invention, which is defined by the scope of the appended claims. Other aspects, advantages, and modifications are within the scope of the following claims.

Claims
  • 1-24 (canceled)
  • 25. A kit comprising: reagents suitable for determining an endometrial gene expression profile of a panel of genes, wherein the panel of genes consists of: ANXA4, CATSPERB, PTGFR, PTGS1, IL8, SCGB2A2, ANGPTL1, HPRT1, MMP10, PGR, ITGA8, IFNG, PROK1, FOXO1, CXCL1, STC1, MMP9, MUC1, RPL13A, CALCA, ITGA9, RACGAP1, GPX3, PPP2R2C, ARG2, SCGB3A1, ALDH1A3, APOD, C2CD4B, TFF3, AQP3, GJA4, ARHGDIA, SELL, APOL2, MT1H, MT1X, MT1L, MAOA and MT1F in a biological sample obtained from a subject.
  • 26. The kit of claim 25, wherein the biological sample is an endometrial biopsy obtained from the uterine fundus.
  • 27. The kit of claim 25, wherein the reagents are suitable for reverse transcription polymerase chain reaction.
  • 28. The kit of claim 25, further comprising a chip, an array, a multi-well plate or a tube.
  • 29. The kit of claim 25, further comprising instructions for use of the kit according to claim 1.
CLAIM OF PRIORITY

This application is a division of and claims priority under 35 U.S.C. § 120 from U.S. application Ser. No. 15/887,087, filed on Feb. 2, 2018, which claims the benefit of U.S. Provisional Patent Application Ser. No. 62/453,631, filed on Feb. 2, 2017. The entire contents of the foregoing priority applications are hereby incorporated by reference.

Provisional Applications (1)
Number Date Country
62453631 Feb 2017 US
Divisions (1)
Number Date Country
Parent 15887087 Feb 2018 US
Child 17146619 US