The present invention pertains to the diagnosis of a high risk of mortality or other adverse events in a patient suffering from anemia, for example anemia caused by chemotherapy, cancer or chronic inflammation such as chronic kidney disease (CKD). The invention provides means to diagnose a patient who receives Erythropoiesis Stimulating Agents (ESA) and suffer from an adverse event if the treatment with the ESA is continued. Based on the herein disclosed methods, the clinician will be able to diagnose the prevalence of a fatal event and adjust the treatment of the anemia in the patient accordingly.
Many cytokines act systemically, bind to cell surface receptors on specific target cells and trigger their survival, proliferation and differentiation. Thereby highly-specialized cells are produced that fulfil essential functions in an organism. Hence, alterations in cellular responses may have major consequences at the body scale. Conversely, multiple cytokines or their derivatives are exploited as therapeutic agents and are systemically applied to elicit cellular responses and alleviate pathological conditions. Several non-linear reactions contribute to this intricate circuit and determine the outcome. Therefore, a rational approach for optimized treatment design is required, which necessitates detailed insights into molecular mechanisms and the development of a mathematical modelling concept that spans from the cellular to the body scale.
A therapeutically relevant cytokine is the hormone erythropoietin (Epo). The dynamic interactions of Epo with its cognate receptor, the erythropoietin receptor (EpoR), determine proliferation of erythroid progenitor cells at the colony forming unit erythroid (CFU-E) stage and their differentiation to short-lived mature erythrocytes that contain haemoglobin (Hb) and secure oxygen supply in the body. Low-levels of erythrocytes which correspond to reduced Hb values are characteristic for anaemia at all ages. Anemia is for example frequently observed in lung cancer and CKD patients, reaching up to 90% at the advanced stages of the disease. Anaemia reduces the quality of life, increases mortality risk and diminishes for example the chemotherapeutic effects. For anaemia treatment, erythropoiesis stimulating agents (ESAs) such as recombinantly produced Epo or Epo-derivatives are widely used.
However, in the context of cancer-associated anaemia, ESA treatment is controversially discussed because clinical trials were terminated due to adverse effects and the EpoR was reported to be present on tumour cells. Apparently, EpoR levels on carcinoma cell lines are much lower compared to the expression on hCFU-E and their accurate detection remains challenging.
Due to decreasing functionality of the kidney that produces Epo, ESA treatment becomes unavoidable in patients with CKD. However the progression of the disease is highly dynamic and therefore major fluctuations on the Hb levels can occur that severely affect the well being of the patients and highly correlate with higher risk of adverse events and mortality (Regidor 2006, Yang 2007, Singh 2006).
30-50% of lung cancer patients do not respond to ESA treatment. Linear or logistic regression models were developed to predict patient responses from clinical markers. However, none of the tested baseline parameters or their combination showed sufficient sensitivity for individualized prediction of the response. Similar attempts were performed to identify parameters with predictive values for risk assessment of thromboembolic events and mortality. Studies conducted in cancer and CKD described a general correlation of hyporesponsiveness to ESA treatment with high ESA doses and mortality. However, due to the lack of patient-specific parameters that facilitate the individualized prediction of responses to ESAs, it was so far not possible to perform risk stratification of patients.
Based on data from clinical trials, mathematical models were developed that described the averaged pharmacokinetic (PK) and pharmacodynamic (PD) responses to ESA treatment at the body scale. However, none of these mathematical models contained biochemical reactions at the cellular scale. The inventorsrecently reported a quantitative dynamic pathway model, that describes the dynamic interaction of Epo with the murine EpoR (mEpoR), and thereby uncovered that rapid receptor turnover enables the system to respond to a broad range of ligand doses. Ligand binding to the receptor elicits the activation of signalling pathways including the JAK2-STAT5 signalling cascade. By dynamic pathway modelling the inventors showed that the extent of Epo-induced phosphorylation of STAT5 relates linearly to cell survival of CFU-E cells and that Epo stimulation enhances survival of the non-small cell lung cancer (NSCLC) cell line H838 upon treatment with the chemotherapeutic agent cisplatin. The cellular scale mathematical models provide mechanistic insights and facilitate quantitative predictions and therefore might provide essential modules for the development of predictive multiscale models for patient stratification, risk prediction and therapy optimization.
Lung carcinoma is the most frequent cause of death in cancer with 1.59 million of deaths in 2012, of which 80% were diagnosed as Non-Small Cell Lung Carcinoma (NSCLC). Most of the patients are diagnosed in a stage IIIB or IV and treated with a combination of platinum compounds and taxanes, gemcitabine or vinorelbine as a first line of treatment. In lung carcinoma there is a high prevalence of anemia ([Hb]≤11 g/dL), ranging from 50% to 70%, although in advanced stages it could reach up to 90%. The anemic grade depends on the therapy, tumor stage and duration of the disease. Cancer related anemia reduces the quality of life (Cella et al, 2004) and it is considered a risk factor for mortality in cancer patients (Caro 2001). Furthermore, it has been reported that anemia affects the outcome of the anticancer therapy, diminishing the chemotherapy response in NSCLC patients (Albain 1991, MacRae 2002 and Robnett 2002).
The etiology of anemia in cancer is complex due to the multifactorial causes such as deficiencies in vitamin B12 and folic acid, bleeding, haemolysis, inflammatory cytokines secreted in the tumor context and reduction in the iron uptake (Weiss and Goodnough N. Engl. J Med 2005) are some of the causal origins of cancer related anemia. In addition, platinum-based chemotherapy inhibits the renal production of Epo and exerts myelosuppression what increases the anemia (Groopman 1999, Kosmidis 2005, Ludwig 2004).
It is estimated that worldwide 8-16% of the population suffer to some degree from CKD (Jha 2013). Anemia is highly prevalent in advance stages of CKD patients. Blood transfusion are not an option for long term treatments as required in the context of CKD, since it would sensitize the immune system and reduce the chances of patients to receive a kidney transplant. Rather CKD patients have to be treated with ESAs. To ensure well-being of these patients it is important to maintain constant Hb levels. Unfortunately the dynamic of multiple factors in the disease such as changes in the status of the inflammation or iron availability increase the heterogeneity of the response to ESAs among CKD patients.
WO 2015/193462 describes mathematical models for the prediction of ESA concentrations for use in the treatment of anemia. The present invention is an additional development based on the technical teaching of WO 2015/193462. Therefore, WO 2015/193462 is incorporated herein by reference in its entirety.
In view of the existing problems of ESA treatment of anemia caused by cancer, chemotherapy, CKD, chronic inflammation or other primary disorders, it was an object of the present invention to provide a diagnostic approach to identify patients having an increased risk of mortality or other adverse events (such as cardiovascular events) upon ESA treatment.
In one aspect the above problem is solved by a method for stratifying an anemia patient who receives treatment with an erythropoiesis Stimulating Agents (ESA), wherein the patient is stratified into a high risk or low risk group of experiencing a fatal and/or adverse outcome upon continued treatment with the ESA, the method comprising the steps of:
In one additional aspect the above problem is solved by a method for stratifying an anemia patient who receives treatment with an erythropoiesis Stimulating Agents (ESA), wherein the patient is stratified into a high risk or low risk group of experiencing a fatal and/or adverse outcome upon continued treatment with the ESA, the method comprising the steps of:
In preferred embodiments the adverse event is selected from a fatal outcome such as the death of the patient, preferably death of the patient caused by ESA treatment. In other embodiments the adverse event is selected from thrombovascular events.
The method is preferably performed in-vitro.
The [aRF] is determined by a linear combination of (i) the individual Hb degradation rate, (ii) the number of ESA binding sites, and (iii) the last ESA dose administered, or ESA dose planned/calculated to be administered. Preferably, according to the following equation A:
[aRF]=B0+B1*[EpoR]+B2*[Hb degr]+B3*[ESA]. Equation A:
In preferred aspects the factors of the above equation A are B0=2.3518, B1=−2.5840, B2=−0.3957, and B3=−0.1374. Preferably, the factors may vary upon situation, but not more than +/−20%, 1%, 10%, and preferably not more than 5% from the above indicated value. These are particularly useful in the event the patient is treated with CERA, or other ESAs, and suffers from NSCLC.
In some embodiments the factors of the above equation A are B0=−2.1927, B1=0.5392, B2=−0.82877, B3=0.0046426. Preferably, the factors may vary upon situation, but not more than +/−20%, 1%, 10%, and preferably not more than 5% from the above indicated value. These are particularly useful in the event the patient is treated with ESAs and suffers from CKD.
In preferred embodiments of the invention, a patient is at a high risk to experience an adverse event if [aRF] is 0.1 or higher, preferably 0.15 or higher, or 0.17 or higher, and most preferably wherein [aRF] is >about 0.18.
In other preferred embodiments of the invention, a patient is at a high risk to experience an adverse event if [aRF] is 0.1 or higher, preferably 0.2 or higher, or 0.3 or higher, and most preferably wherein [aRF] is >about 0.37. This is the case for CKD patients.
In context of the present invention the number of ESA binding sites [EpoR] for the patient is determined by assessing the clearance of the administered ESA in the serum of said patient over time, and calculating from the clearance of said ESA using a non-linear dynamic pharmacokinetic (PK) ESA-EPO-R pathway model the amount of ESA binding sites in said patient [EpoR]. The models are described herein below.
Preferred are methods wherein the individual hemoglobin (Hb) degradation rate [Hb degr] is determined by calculating from the hemoglobin concentration of the patient from at least two separate time points the patient's individual hemoglobin degradation rate (degradation of hemoglobin per time).
In preferred embodiments said non-linear dynamic pharmacokinetic (PK) ESA-EPO-R pathway model is based on a system of the ordinary differential equations (ODE) as described herein below
In context of the herein described invention the hemoglobin concentration of the patient (or subject, terms which are used herein as synonyms) is preferably determined through blood samples taken from the patient. Methods for calculating the haemoglobin concentrations are well known in the art. Alternatively, since most anemia patients have a treatment history where haemoglobin concentrations were determined at multiple time points, the patients hemoglobin degradation rate may be calculated from these values taken from the individual patient's medical file.
The hemoglobin degradation rate may either be determined by measuring hemoglobin concentrations in the patient at several time points, for example in an ESA naïve or ESA receiving patient, or using the patient's previous treatment history. In accordance with the herein described mathematical model the specific characteristics of the ESA to be used in therapy, for example CERA, Epo alfa, Epo beta, NESP, but biosimilars are also included in the invention, are used for determining the ESA dosage.
Based in the initial experiments in vitro (ESA depletion experiments) as described in the example section, the mathematical model as disclosed describes the binding properties of each ESA: the association rate “kon” and the dissociation rate “koff” (the dissociation constant “KD” is defined as koff/kon). Based in the binding properties of each ESA, the herein disclosed model can calculate the integral occupancy of the EpoR on human CFU-E for 60 minutes. The EC50 (ESA concentration required to obtain half-maximum EpoR occupancy) is calculated for each ESA and this correlates with the ESA activity in hCFU-E. In the integrative non-linear dynamic pharmacokinetic (PK) hemoglobin (Hb) ESA-EPO-R pathway model, the integral occupancy of the ESA-EpoR is linked to Hb production. The amount of ESA-EpoR is, among all the other parameters, depending on the kon and the koff rate of the specific ESA. Based on the ESA depletion experiments, the mathematical model calculates kon and koff for each ESA. This data can be used (i) to calculate EC50 values for each ESA and (ii) calculate Hb values based on ESA injections. Thereby, the using the non-linear dynamic pharmacokinetic (PK) hemoglobin (Hb) ESA-EPO-R pathway model of the invention, the ESA dosage for achieving a production of hemoglobin in the anemia patient that is sufficient to alleviate the anemia can be calculated.
The term “anemia” in context of the herein described invention shall refer to a condition wherein the red blood cells are reduced. Anemia is typically diagnosed on a complete blood count. Apart from reporting the number of red blood cells and the hemoglobin level, the automatic counters also measure the size of the red blood cells by flow cytometry, which is an important tool in distinguishing between the causes of anemia. Examination of a stained blood smear using a microscope can also be helpful, and it is sometimes a necessity in regions of the world where automated analysis is less accessible. In modern counters, four parameters (RBC count, hemoglobin concentration, MCV and RDW) are measured, allowing others (hematocrit, MCH and MCHC) to be calculated, and compared to values adjusted for age and sex. Some counters estimate hematocrit from direct measurements. In the context of the present invention anemia is present if an individual has a hemoglobin (Hb) concentration of less than 14 g/dL, more preferably of less than 12 g/dL, most preferably of less than 11 g/dL.
In certain embodiments of the invention the anemia to be treated in accordance with the described methods is an anemia that has developed according to any possible cause or disease. This includes all types of cancer, all inflammation-associated anemia (chronic infection disease, autoimmune or rheumatologic disorders and any other illnesses or treatments that results in anemia based on reduced endogenous Epo production, inefficient eryhtropoiesis or increased destruction of red blood cells). Furthermore and particularly preferred, is that the anemia is caused by chemotherapy, chronic kidney disease (CKD), myelodysplastic syndrome (MDS), or is anemia associated to myelofibrosis, anemia in context of HW, aplastic anemias, anemia in premature infants, non-severe aplastic anemia, anemia in beta thalassemia, anemia in sickle cell disease and ESA erythropoiesis stimulation after allogeneic hematopoietic stem cell transplantation.
The inventors of the present invention previously discovered that a mathematical model describing the EPO-EPO-R signaling pathway in a cell can be adapted to predict the behavior of not only ESAs in a cell, but also of the dynamics of ESAs administered to a patient, preferably a patient with anemia associated with chronic disease. Initially the model is able to describe at cellular level the activity of the different ESAs based in the affinity of each ESA (time of EpoR occupancy). This activity corresponds to the EPO-R activation by ESA binding to the EPO receptor. This activation of the EPO-R will induce the proliferation and maturation of the erythropogenitors, the main cellular population on the body that express EpoR into erythrocytes. For the present invention the initial core model that describes the EpoR activation at cellular level by ESA was extended in order to be used in a physiological situation in an organism, in particular a human patient. Clearance of an administered ESA in the blood compartment, transport of an subcutaneous administered ESA into the blood compartment and saturable clearance of the ESA in the interstitial compartment were added to the initial model. This extended version of the initial ESA-EPO-R model was surprisingly able to describe the published pharmacokinetic (PK) and pharmacodynamics (PD) experimental data of each ESA as shown in the examples. The inventors could characterize induced anemia by cancer, and chemotherapy, as well as CKD, in individual patients at colony forming unit of erythroids (CFU-E), the progenitors of the erythroids. It was observed that patients in the same cancer type and disease stage (
In the context of the invention which is described in the following, the mathematical models are all based on the basic findings as published and publically accessible in the publication Becker V et al., Science. 2010 Jun. 11; 328(5984):1404-8 and the publication WO 2015/193462. These references are incorporated in their entirety, for the purpose of understanding the application of the methods of the present invention. The models used in context of the present invention were adjusted to answer the respective questions of the herein disclosed invention. In this respect the term “non-linear dynamic EPO-EPO-R pathway model” shall refer to the model as published by the above Becker V et al. 2010 reference. The term “non-linear dynamic ESA-EPO-R pathway model” shall refer to the version of the non-linear dynamic EPO-EPO-R pathway model in WO 2015/193462, which describes the binding/dissociation dynamics of ESAs to the EPO-R on a cellular level. The term “non-linear dynamic pharmacokinetic ESA-EPO-R pathway model” shall refer to the non-linear dynamic ESA-EPO-R pathway model in WO 2015/193462 which is adjusted to the situation in an organism, in particular a human patient. The basic rationales for the models disclosed herein are provided in the Materials and Methods section of the present application.
Thus it is a preferred embodiment that the non-linear dynamic pharmacokinetic (PK) ESA-EPO-R pathway model considers clearance of the administered ESA in the blood compartment, transport of the administered ESA from the interstitial compartment into the blood compartment, and clearance of the ESA in the interstitial compartment.
The basic application of the mathematical methods as required by the herein described inventive methods is standard to the person of skill in the field of systems biology. Using the information as provided by the present patent application, the person of skill in view also of the Becker V et al. 2010 publication can perform the necessary steps to work the invention.
For the present disclosure the following variables, constants and acronyms are used:
The models disclosed in the present application are based on the following ordinary differential equations with reference to
For the model simulating the in-vivo patient situation this model is extended resulting in system of seven coupled ordinary differential equations (ODE). The expanded model in FIG. (6b) describes the situation including the blood and interstitium compartments. Intravenous ESA is either cleared in the blood compartment (kclear) or binds to the EPO-R (kon, koff). Subcutaneous applied ESA (ESASC) is transported to the blood compartment (ksc_out) or saturable cleared in the interstitial compartment (ksc_clear_sat). The non-linear dynamic pharmacokinetic ESA-EPO-R pathway model:
Since the amount of hemoglobin (Hb) in a patients serum is directly correlated to the activity of ESA-EPO-R system, the invention may instead of determining the concentration of the ESA after initial administration of the ESA as a function of time, determine the Hb concentration, which is a standard parameter observed during anemia treatment. In this embodiment, the above model comprises the additional reactions of the production of Hb by the activated ESA-EPO-R (kHb_pro) and the patient specific degradation of Hb (kHb_deg).
In this case the model includes the additional ODE:
For both models the dissociation constant of KD is defined as
K
D
=k
off
/k
on (3.1.)
In these models Bmax is the initial number of binding sites for ESA.
Further explanation of the equations is provided in the example section and
The values for the respective concentrations of elements and the all constants used in the above equations can be determined experimentally using, for example, a method known to the skilled person or the methods provided herein below in the example section.
In accordance with the present invention, a clinically safe dose of an ESA is a dose approved by the authorities for the treatment of anemia.
In the herein described methods clearance rate of an ESA in the serum of a patient is determined. Preferably, and this holds true for all aspects and embodiments as described herein, the clearance rate (or change of concentration) of said ESA is determined based on the initial dose of ESA administered to a patient. Subsequent to the initial ESA administration, samples obtained from a patient can be analyzed for the remaining ESA concentration for at least one time point subsequent to the initial ESA treatment. Ideally, the ESA concentration is observed over several time points, for example 1 to 6 weeks, preferably 1 to 3 weeks, and includes at least 2, preferably 5, more preferably 7 to 10 independent measurements of ESA concentration at different time points. An example for an observation plan would be the administration of the ESA at day 0, and the subsequent measuring of the ESA concentration in the patient at days 1, 2, 3, 5, 7, 10 and 14. This may be adjusted depending on the clinical scenario. For the alternative embodiment of the invention regarding the calculation of initial ESA binding sites based on the observation of the change of Hb concentration in a patient, the same principle is applied.
In a certain embodiment of the invention the ESA is any ESA known to the skilled person, which includes in particular EPO biosimilars, but is preferably selected from the group of Epoetin alfa, Epoetin beta, Novel erythropoiesis stimulating protein (NESP) and Continuous erythropoietin receptor activator (CERA). CERA is preferred for the herein described invention.
Preferable the calculation is further based on the initial ESA dose, and the initial Hb concentration in the patient at the time the ESA was administered.
In context of the here described invention a patient is preferably a patient that is suffering from anemia in the context of CKD, cancer disease or chemotherapy, the cancer disease preferably being a lung cancer such as non-small cell lung cancer (NSCLC).
In preferred embodiments the non-linear dynamic pharmacokinetic (PK) ESA-EPO-R pathway model is based on a system of the ordinary differential equations (ODE) as described above. In this context the invention seeks to obtain the initial number of ESA binding sites, which is Bmax. Bmax is therefore predictive for or an approximation of the colony forming units erythroid (CFU-E).
The problem of the invention is additionally solved by a computer implemented method, preferably performed in silico, for stratifying an anemia patient who receives treatment with an erythropoiesis Stimulating Agents (ESA), wherein the patient is stratified into a high risk or low risk group of experiencing an adverse event upon continued treatment with the ESA, the method comprising the steps of:
The [aRF] is determined by a linear combination of (i) the individual Hb degradation rate, (ii) the number of ESA binding sites, and (iii) the last ESA dose administered, or ESA dose planned/calculated to be administered. Preferably, according to the equation A as described herein:
In preferred aspects, for example preferably for cancer, the factors of the above equation A are B0=2.3518, B1=−2.5840, B2=0.3957, and B3=−0.1374. Preferably, the factors may vary upon situation, but not more than +/−20%, 1%, 10%, and preferably not more than 5% from the above indicated value. These are particularly useful in the event the patient is treated with CERA, or also in some other embodiments with Epo alfa, Epo beta, NESP, and suffers from NSCLC.
In preferred embodiments of the invention, a patient is at a high risk to experience an adverse event if [aRF] is 0.1 or higher, preferably 0.15 or higher, or 0.17 or higher, and most preferably wherein [aRF] is >about 0.18. This is in particular the case in a cancer patient.
In the case of CKD, the factors of the above equation A are B0=−2.1927, B1=0.5392, B2=−0.82877, and B3=−0.0046426. These are particularly useful in the event the patient is treated with CERA, Epo alfa, Epo beta, NESP and suffers from CKD.
In preferred embodiments of the invention, a CKD patient is at a high risk to experience an adverse event if [aRF] is >about 0.37.
Yet another aspect of the invention provides a computer-readable storage medium having computer-executable instructions stored, that, when executed, cause a computer to perform a computer implemented method according to the present invention.
However, preferred is the above method wherein said organism is a patient, preferably a human patient, or wherein said cell is a cell endogenously expressing the EPO-R receptor, such as a red blood cell precursor cell, or a tumor cell.
Yet another aspect of the invention provides a computer-readable storage medium having computer-executable instructions stored, that, when executed, cause a computer to perform a computer implemented method according to the present invention.
In preferred embodiments of all aspects of the invention the KD of the ESA is about 16 pM for Epoetin alfa, about 17 pM for Epoetin beta, about 789 pM for NESP and about 982 pM for CERA.
The term “about” in relation to a numerical value x is optional and means, for example, x±20%, x±15%, x±10%, x±5%, or most preferably x±2%. Preferably, all numerical values in the present disclosure allow for a variation of x±5%, where x is the numerical value.
In a further aspect of the present invention there is provided an Erythropoiesis Stimulating Agent (ESA) for use in the treatment of anemia, the treatment comprising the steps of
In a preferred embodiment, the adverse event is a fatal outcome such as death of the patient. In other embodiments an adverse event is selected from any undesired event during the treatment that reduces the quality of life or even constitutes a life-threatening event such as pulmonary edema, hypertension, myocardial infarction, cardiac failure, arrhythmia, hypotension and pulmonary embolism that could lead to a fatal outcome such as death of the patient.
The non-linear dynamic Hb ESA-EPO-R pathway model used in this aspect takes into account the additional reactions of the production of Hb based on the active ESA-EPO-R complex and a patients individual Hb degradation.
Also provided in context of the invention is an ESA for use in the treatment of anemia in a patient, wherein the patient has a low risk of an adverse event upon continued treatment with the ESA. The risk is determined according to a diagnostic method for stratification as described herein elsewhere. The treatment of anemia according to the invention in some embodiments comprises the obtaining blood samples of said patient in the first 1 to 5 weeks of the ESA treatment, and calculating therefrom the patient's individual risk of an adverse event upon continued treatment with the ESA, as disclosed herein elsewhere.
In some other embodiments the invention can be applied without a previous ESA treatment by calculating the number of ESA binding sites with the hemoglobin degradation rate.
In another aspect there is also provided a method for treating a patient suffering from anemia associated with a cancer disease, chemotherapy induced anemia, or anemia associated with chronic inflammation, the method comprising the steps of
In other aspects of the invention the method is also able to combine blood transfusions with a low risk ESA regimen. With this approach, blood transfusions are kept to the minimum, saving blood units and reducing the adverse events induced by high number of blood units transfused in a patient.
In preferred embodiments, in step (c), the patient's risk of an adverse event upon continued treatment with the ESA is determined by a method for stratification as described herein before.
The term “treatment” as used herein covers any treatment of a disease or condition (e. g., anemia) in a mammal, particularly a human, and includes: (i) preventing the disease or condition from occurring in a subject which may be predisposed to the disease but has not yet been diagnosed as having it; (ii) inhibiting the disease or condition, i. e. arresting its development; or (iii) relieving the disease or condition, i. e. causing its regression or the amelioration of its symptoms.
As used herein, the term “therapeutically effective amount” refers to that amount of a polymer-modified synthetic erythropoiesis stimulating protein which, when administered to a mammal in need thereof, is sufficient to effect treatment (as defined above), for example, as inducer of red cell production, an anti-anemia agent, etc. The amount that constitutes a “therapeutically effective amount” will vary depending on the ESA, the condition or disease and its severity, and the patient to be treated, its weight, age, gender, etc., but may be determined routinely by one of ordinary skill in the art with regard to contemporary knowledge and to this disclosure.
Administration of the ESA of the invention may be performed via any accepted systemic or local route known for the respective ESA, for example, via parenteral, oral (particularly for infant formulations), intravenous, nasal, bronchial inhalation (i. e., aerosol formulation), transdermal or topical routes, in the form of solid, semi-solid or liquid or. aerosol dosage forms, such as, for example, tablets, pills, capsules, powders, liquids, solutions, emulsion, injectables, suspensions, suppositories, aerosols or the like. The erythropoiesis stimulating agents of the invention can also be administered in sustained or controlled release dosage forms, including depot injections, osmotic pumps, pills, transdermal (including electrotransport) patches, and the like, for the prolonged administration of the polypeptide at a predetermined rate, preferably in unit dosage forms suitable for single administration of precise dosages. The compositions will include a conventional pharmaceutical carrier or excipient and a protein antagonist or agonist of the invention and, in addition, may include other medicinal agents, pharmaceutical agents, carriers, adjuvants, etc. Carriers can be selected from the various oils, including those of petroleum, animal, vegetable or synthetic origin, for example, peanut oil, soybean oil, mineral oil, sesame oil, and the like. Water, saline, aqueous dextrose, and glycols are preferred liquid carriers, particularly for injectable solutions. Suitable pharmaceutical carriers include starch, cellulose, talc, glucose, lactose, sucrose, gelatin, malt, rice, flour, chalk, silica gel, magnesium stearate, sodium stearate, glycerol monostearate, sodium chloride, dried skim milk, glycerol, propylene glycol, water, ethanol, and the like. Other suitable pharmaceutical carriers and their formulations are described in“Remington's Pharmaceutical Sciences” by E. W. Martin.
Another aspect of the invention further is an Erythropoiesis Stimulating Agent (ESA) for use in the treatment of anemia in a subject, the treatment comprising the steps of
In some embodiments the above method comprises the alternative steps:
With the approach of (d′) blood transfusions are kept to the minimum, saving blood units and reducing the adverse events induced by high number of blood units transfused in a patient.
The present invention further pertains to the following preferred items:
Item 1: A method for stratifying an anemia patient who receives treatment with an erythropoiesis Stimulating Agents (ESA), wherein the patient is stratified into a high risk or low risk group of experiencing an adverse event upon continued treatment with the ESA, the method comprising the steps of:
(a) Providing patient samples of the patient from at least two time points during the initial treatment of anemia with the ESA in said patient,
(b) Determining from said samples the individual hemoglobin (Hb) degradation rate [Hb degr] and number of ESA binding sites [EpoR] for said patient,
(c) Determining from (i) the individual Hb degradation rate, (ii) the number of ESA binding sites, and (iii) the last ESA dose administered, or ESA dose planned to be administered, to said patient [ESA], an accumulated risk factor [aRF], and
(d) Stratifying the patient into a high risk or low risk group of experiencing an adverse event upon continued treatment with the ESA according to the [aRF].
Item 2: The method according to item 1, wherein the [aRF] is determined according to the following equation (1):
[aRF]=B0+B1*[EpoR]+B2*[Hb degr]+B3*[ESA]. (1)
Item 3: The method according to item 1 or 2, wherein the ESA is selected from Continuous erythropoietin receptor activator (CERA), EPO alfa, EPO beta, and novel erythropoiesis-stimulating protein (NESP), and preferably is CERA.
Item 4: The method according to item 2, wherein B0=2.3518, B1=−2.5840, B2=−0.3957, and B3=−0.1374, and preferably wherein the patient is stratified into a high group of experiencing an adverse event upon continued treatment with the ESA if the [aRF] is larger than about 0.18.
Item 5: The method according to any one of items 1 to 4, wherein the number of ESA binding sites [EpoR] for said patient is determined by
(a) assessing the clearance of the administered ESA in the serum of said patient over time, and
(b) Calculating from the clearance of said ESA using a non-linear dynamic pharmacokinetic (PK) ESA-EPO-R pathway model the amount of ESA binding sites in said patient [EpoR].
Item 6: The method according to any one of items 1 to 5, wherein the individual hemoglobin (Hb) degradation rate [Hb degr] is determined by calculating from the hemoglobin concentration of the patient from at least two separate time points the patient's individual hemoglobin degradation rate (degradation of hemoglobin per time).
Item 7: The method according to any one of items 1 to 6, wherein the patient samples are blood samples.
Item 8: The method according to item 5, wherein said non-linear dynamic pharmacokinetic (PK) ESA-EPO-R pathway model is based on a system of the ordinary differential equations (ODE):
and
wherein Bmax is the number of ESA binding sites.
Item 9: The method according to any one of items 1 to 8, wherein the anemia is an anemia associated with a cancer disease, chemotherapy induced anemia, or anemia associated with chronic inflammation.
Item 10: An ESA for use in the treatment of anemia in a patient, wherein the patient has a low risk of an adverse event upon continued treatment with the ESA as determined with a method according to any one of items 1 to 9.
Item 11: The ESA for use according to item 10, wherein the ESA is selected from Continuous erythropoietin receptor activator (CERA), EPO alfa, EPO beta, and novel erythropoiesis-stimulating protein (NESP), and preferably is CERA.
Item 12: The ESA for use according to item 10 or 11, wherein the patient is suffering from anemia associated with a cancer disease, chemotherapy induced anemia, or anemia associated with chronic inflammation.
Item 13: The ESA for use according to any one of items 10 to 12, wherein the treatment comprises the obtaining blood samples of said patient in the first 1 to 5 weeks of the ESA treatment, and calculating therefrom the patient's individual risk of an adverse event upon continued treatment with the ESA by a method according to any one of items 1 to 9.
Item 14: The ESA for use according to any one of items 10 to 13, wherein the patient is suffering from anemia as a secondary pathology induced by another disorder such as chronic inflammation, myelodysplastic syndrome or cancer, preferably lung cancer.
Item 15: The ESA for use according to any of items 10 to 13, wherein the treatment comprising the steps of
The present invention will now be further described in the following examples with reference to the accompanying figures and sequences, nevertheless, without being limited thereto. For the purposes of the present invention, all references as cited herein are incorporated by reference in their entireties. In the Figures:
Retroviral expression vectors were pMOWS-puro (Ketteler et al., 2002). The generation of hemagglutinin (HA)-tagged murine Epo receptor (pMOWS-HA-mEpoR) and of HA-tagged human EpoR (pMOWS-HA-hEpoR) was performed as described previously (Becker et al., 2010). Cells were either treated with Epo alfa (Cilag-Jansen), Epo beta (Roche), NESP (Amgen), or CERA (Roche) at indicated concentrations.
Human lung adenocarcenoma cell lines A549, H838, H1299, H1944, H1650, H1975 and H2030 were purchased by ATCC and cultivated in Dulbecco's modified Eagle's Medium (DMEM, Lonza) supplemented with 10% fetal calf serum (FCS, Gibco) and 1% penicillin/streptomycin (Invitrogen). The Phoenix eco and Phoenix ampho packaging cell lines (Kinsella & Nolan, 1996) were cultured in DMEM (Gibco) supplemented with 10% FCS and 1% penicillin/streptomycin. BaF3 cells (Palacios & Steinmetz, 1985) were cultured in RPMI-1640 (Invitrogen) including 10% FCS and supplemented with 10% WEHI conditioned medium as a source of IL-3. For the EpoR overexpressing cell lines H838 (H838-hEpoR) and BaF3 (BaF3-mEpoR and BaF3-hEpoR) 1.5 μg/ml puromycin (Sigma) was added to the respective medium.
To obtain hCFU-E cells, CD34+ cells were sorted by MACS (CD34-Multisort Kit, Miltenyi) from umbilical cord blood of healthy donors after written consent. CD34+ cells were expanded using Stem Span SFEM II supplemented with Stem Span CC110 (both StemCell Technology). After seven days of expansion cells were either washed extensively using IDMEM (Gibco) to remove cytokines and to initiate differentiation or cells were used for depletion experiments. For differentiation cells were cultivated in Stem Span SFEM II supplemented with 10 ng/ml IL-3 (R&D Systems), 50 ng/ml SCF (R&D Systems) and 6 U/ml Epo alpha (Cilag-Jansen) as published by Miharada 2006. After 4 days of cultivation in this media hCFU-E were harvested to perform depletion experiments. All cells were cultured at 37° C. with 5% CO2 incubation.
Transfection of Phoenix eco and Phoenix ampho cells was performed by calcium phosphate precipitation. Transducing supernatants were generated 24 h after transfection by passing through a 0.45 μm filter and supplemented with 8 μg/ml polybrene (Sigma). Stably transduced BaF3 cells expressing HA-tagged murine EpoR (BaF3-mEpoR cells) or HA-tagged human EpoR (BaF3-hEpoR cells) or H838 cells expressing HA-tagged human EpoR (H838-hEpoR cells) were selected in the presence of 1.5 μg/ml puromycin (Sigma) 48 h after transduction. Surface expression of EpoR in BaF3 and H838-hEpoR cells was verified by Flow cytometry analysis.
EpoR surface expression was verified by flow cytometry. Therefore H838-hEpoR cells were gently detached with Cell Dissociation Solution (Sigma) according to the manufacturer's instructions. BaF3-EpoR and H838-hEpoR cells were stained with anti-HA antibody (Roche) diluted 1:40 in 0.3% PBS/BSA for 20 min at 4° C. Followed by washing of cells with 0.3% PBS/BSA and incubation of secondary Cy5-labeled antibody against rat (Jackson Immuno Research), diluted moo in 0.3% PBS/BSA, for 20 min at 4° C. in the dark. After washing samples with 0.3% PBS/BSA, propidium iodide (BD Biosciences) was added to exclude dead cells. Canto II (BD Bioscience) was used for sample analysis.
ESA depletion experiments were conducted in NSCLC tumor cell lines, BaF3, BaF3-mEpoR, BaF3-hEpoR, hCFU-E, hHSC cells. Tumor cells were seeded in 6 well-plates (TPP 92006) at a cellular concentration of 4×105 cells in 3 ml of proliferating media (DMEM supplemented with 10% FCS and 1%). Cells were kept at 37° C., 95% H2O and 5% CO2 during three days. On the third day cells were washed with DMEM (1% penicillin/streptomycin and 1 mg/ml BSA) and left them starving in 1 ml of washing media during 12 hours. Cells were stimulated with Epo alfa/beta within the indicated times and concentrations of the depletion plots. After the incubation time, media was recovered and kept at −80° C. till the conclusion of the experiment, cells were trypsinized and counted by hemoytometer chamber. Once the experiment was concluded ESAs concentration was measured by ELISA (Quantikine IVD ELISA Kit, R&D DEP00).
The experimental setting for the depletion measurements was different in the suspension cells; BaF3-hEpoR, BaF3-mEpoR, BaF3, hCFU-E and hHSC. In the transduced BaF3 cells, the experiments were conducted in between 9-14 days of selection with puromicin (1.5 μg/ml). Cells were washed three times in RPMI by centrifugation 5 minutes at 212×g, and starved 3 hours in RPMI (1% penicillin/streptomycin and BSA 1 mg/ml) at a concentration of 1×106 cells/ml. After the starvation period cells were adjusted to a final concentration of 40×106 cells/ml in 350 μl at 37° C. and 900 rpm in a Thermomixer compact of Eppendorf. Cells were stimulated by ESA during the indicated times in the plot and centrifuged during 5 minutes, at 4° C. and 2500 rpm. Supernatant was removed and kept at −80° C. ESAs measurements were performed by ELISA (Quantikine WD ELISA Kit, R&D DEP00). ESAs depletion measurements were conducted in the same way in hCFU-E and hHSC with the only difference of the cell concentration 30×106 cells/ml, and the used media (Stem Span SFEM II).
For analysis of phosphorylated and total proteins human lung adenocarcenoma cell lines as well as H838-hEpoR cell line were seeded, cultivated for 72 h, starved for 3 h in DMEM with 1% penicillin/streptomycin, 2 mM L-glutamine (Gibco) and 1 mg/ml BSA and then stimulated with Epo beta or CERA at indicated concentrations for 10 min. Prior to experiments BaF3 cells were washed and resuspended in serum-depleted RPMI-1640 supplemented with 1% penicillin/streptomycin and 1 mg/ml BSA and starved for 3 h. Afterwards the cells were harvested and aliquoted in a density of 20×106/ml and stimulated with Epo beta at indicated concentrations for 10 min.
The cells were lysed with 1.25× NP-40 lysis buffer (1.25% NP-40, 187.5 mM NaCl, 25 mM Tris pH 7.4, 12.5 mM NaF, 1.25 mM EDTA pH 8.0, 1.25 mM ZnCl2 pH 4.0, 1.25 mM MgCl2, 1.25 mM Na3VO4, 12.5% glycerol supplemented with aprotinin and AEBSF). The protein concentrations in lysates were measured using the colorimetric BCA protein assay kit (Pierce Protein Research Products). For Immunoprecipitation analysis the lysates (1500-2000 μg protein for lung adenocarcenoma cell lines, 400 μg protein for BaF3 cells) were supplemented with antibodies to EpoR (R&D, MAB 307), JAK2 (Upstate) or STAT5A/B (Santa Cruz, C17) and Protein A sepharose (GE Healthcare) and rotated over night by 4° C. Immunoprecipitated proteins were separated by 10% SDS-PAGE and transferred to nitrocellulose membrane (0.2 μm pore, Schleicher & Schuell). For quantification purposes randomized non-chronological gel loading was performed (Schilling et al., 2005). For the detection of the phosphorylated proteins the blots were probed with mAbs specific for phosphotyrosine (pTyr) (Upstate, clone 4G10) and then with secondary horseradish peroxidase-coupled anti-mouse antibodies (Dianova). To remove antibodies, membranes were treated as described previously (Klingmüller et al., 1995) and subsequently incubated with pAbs for EpoR (Santa Cruz, C-20) and horseradish peroxidase-coupled anti-rabbit antibodies (Dianova). Detection was performed using ECL substrate (GE Healthcare). Immunoblot data were acquired with the CCD camera-based ImageQuant LAS 4000 (GE Healthcare) and quantification was performed with the ImageQuant TL version 7.0 software (GE Healthcare).
mRNA Isolation, cDNA Preparation and qPCR
For analysis of EpoR expression the cells were lysed and RNA extraction was performed using RNeasy Mini kit (Qiagen) according to the supplier's protocol. To obtain cDNA from RNA, the high-capacity cDNA reverse transcription kit (Applied Biosystems) was used according to manufacturer's instructions. Quantitative real-time PCR (qRT-PCR) analysis was performed using LightCycler 480 (Roche applied-Science). Samples were prepared with reagents of the LightCycler 480 Probes Master Kit from Roche applied-Science. Specific primers were obtained from Eurofins MWG and universal probes (UPL) for TaqMan quantification of DNA from Roche applied-Science. Concentrations were normalized using the geometric mean of β-glucuronidase (GUSB) and esterase D (ESD). Primers targeting human EpoR: forward—ttggaggacttggtgtgtttc; reverse—agcttccatggctcatcct; ESD: forward—ttagatggacagttactccctgataa; reverse—ggttgcaatgaagtagtagctatgat; GUSB: forward—cgccctgcctatctgtattc; reverse—tccccacagggagtgtgtag.
Cellular lysate were subjected to IP with a combination of two STAT5 antibodies, sc-1081 and sc-836 from Santa Cruz Biotechnology. Two IPs were pooled per lane. Proteins were separated by a 10% SDS-PAGE (GE Healthcare) in 1× Laemmli buffer (Laemmli 1970). Following coomassie staining with SimplyBlue™ SafeStain (Invitrogen) STAT5 gel bands were excised at approximately 90 kDa and cut into small pieces (1 mm3). Gel pieces were destained, reduced with DTT (dithiothreitol, SIGMA), alkylated with IAA (iodoacetamide, SIGMA) and digested with 0.3 μg trypsin in 100 mM NH4HCO3/5% acetonitrile buffer overnight. In-house produced one-source peptide/phosphopeptide ratio standards for STAT5A and STAT5B were added to the digests (Boehm 2014). Following a four-step peptide extraction performed sequentially with 100 mM NH4HCO3/5% acetonitrile, acetonitrile, 5% formic acid, and acetonitrile, the samples were concentrated in a speedvac (Eppendorf) and desalted with C18 Ziptips (Millipore) using solutions based on water, acetonitrile and formic acid. Samples were analyzed by EASY-nLC 1000 (Thermo Scientific) coupled to a Q Exactive™ Hybrid Quadrupole-Orbitrap Mass Spectrometer (Thermo Scientific). As precolumn the inventorsused Acclaim PepMap 100, 75 μm×2 cm, as analytical column the inventorsused Acclaim PepMap RSLC C18, 2 μm, 100 Å, 75 μm×25 cm. Survey full scan MS spectra were acquired at resolution R=70,000 and analyzed for the native and labelled STAT5 peptide and phosphopeptide pairs with Xcalibur 3.0.63 (Thermo).
The in vitro trafficking model (
The reaction rate equations are given by:
The affinity parameters (kon, koff or kon and kD) and the number of binding sites (Bmax) were estimated individually for each experimental condition, i.e. combination of ESA and cell type, as they depend on the biochemical properties of the ESA and on the EpoR expression level of the respective cell type.
The structural and practical identifiability of the parameters was analyzed using the profile likelihood approach as described by Raue et al. (Bioinformatics 2011). Furthermore, this method enabled the inventors to determine the parameter's confidence intervals and the uncertainties of the model predictions.
For risk prediction based on patient-specific parameters of the multi-scale mixed-effects ESA-EpoR-PK/PD model and the administered C.E.R.A. doses, logistic regression was used. Discrimination between low and high risk groups was based on Youden's index, maximizing specificity and sensitivity (Youden, W. J. Index for rating diagnostic tests. Cancer 3, 32-35 (1950)).
To assess the role of Epo and Epo derivatives in the context of lung cancer, it was essential to develop a reliable, quantitative assay that enables to determine the number of binding sides per cell and the specific binding properties of different human ESA (Epo alpha, Epo beta, NESP and CERA). The inventors utilized the inventor's knowledge that rapid ligand depletion is characteristic for the Epo-EpoR system (Becker et al 2010) and established a robust ELISA assay to monitor Epo removal from cellular supernatants.
As shown in
The estimated Bmax was in good agreement with the results obtained by traditional saturation binding assays using radioactively labelled ligand, further validating the assay. To comparatively examine the binding properties of different ESAs for the human EpoR, the inventors measured ESA depletion by BaF3 cells stably expressing the human EpoR (BaF3-hEpoR) or parental BaF3 cells (
Relating the KD of the different ESA to the respective association and dissociation rates as shown in
To determine the presence of a functional EpoR in lung cancer cells, the inventors first screened a panel of NSCLC cell lines for the presence of EpoR mRNA. Among these the inventor identified three adenocarcinoma NSCLC cell lines that showed significant levels of EpoR mRNA transcripts. As depicted in
Upon stimulation with Epo as expected the tyrosine phosphorylated form of the receptor was absent in parental BaF3 cells and H1944, but evident in H838, H1299 and A549 indicating the presence of a signaling competent, functional EpoR in these three NSCLC cell lines. To determine the binding properties of the EpoR expressed in the NSCLC cell lines, the inventors applied the depletion assay and showed (
EpoR Depletion Kinetics in Cells with High Numbers of EpoR
The main target of Epo treatment during anemia are erythroid progenitor cells at the colony forming units-erythroid (CFU-E) stage that express high levels of the EpoR. To quantify the cell surface expression of the EpoR on human CFU-E and characterize the binding properties, human CD34+ hematopoietic stem cells (hHSC) were prepared from human umbilical cord blood and differentiated to human CFU-E (hCFU-E). Time-resolved analysis of Epo beta depletion revealed rapid reduction of Epo beta from the supernatants of hCFU-E but not of hHSC that lack the EpoR (
To examine whether some of the available ESA could have advantages in the tumor context due to the distinct binding properties, the inventors aimed at establishing a cell model system with elevated hEpoR expression levels mimicking the situation in hCFU-E as hCFU-E are only available at extremely limiting amounts. The inventors stably expressed the hEpoR in H838 (H838-hEpoR) and showed by enrichment using immunoprecipitation and immunoblotting that the expression of the EpoR was highly increased and the phosphorylated EpoR was substantially elevated (
Identification of CERA as an ESA Preferentially Activating Cells with High EpoR Expression
To compare the impact of ESA on tumor cells that express low levels of EpoR versus cells that display elevated EpoR levels such as H838-EpoR, model simulations were performed. As readout for EpoR signaling, the inventors calculated the integral of ESA bound to the EpoR (ESA_EpoR) for the first 60 minutes after stimulation. First these stimulations were performed for different ESA concentrations and predicted the EC50 for both Epo beta and CERA in cells with high EpoR levels (
Interestingly, the model predicted that the ESA concentrations that induce the same activation in cells with high EpoR levels act differently in cells with low levels of EpoR such as H838. As these cells deplete less Epo beta, Epo beta results in stronger activation than CERA in cells with low levels of EpoR (
Having identified CERA as an ESA preferentially acting on cells with high EpoR levels, the inventors integrated the inventor's model with pharmacokinetic (PK) data to describe CERA dynamics in patients (the integrative (PK/PD) ESA-EpoR mathematical model; see above). In a first step, the inventors analyzed mean PK values of CERA in the serum of healthy subjects (Locatelli et al.) as well as of NSCLC stage IIIB-W patients (Hirsh et al). As CERA, which is pegylated, is not cleared by the kidney, it was hypothesized that the clearance of CERA in the blood stream is only accomplished by binding to EpoR and internalization, as seen in the in vitro experiments. Furthermore, it was assumed that the main difference between healthy subjects and NSCLC patients in Epo dynamics is the number of CFU-E cells, which may be reduced by the tumor load and by the chemotherapy. Indeed, these assumptions were sufficient to describe the experimental PK data for both healthy subjects and cancer patients (
Then, the inventors applied the same approach to PK data of individual NSCLC patients. While the data appears very heterogeneous, the model could again describe all data sets based only on different numbers of ESA binding sites, i.e. CFU-E cells. While ESA binding sites may also be present on other cells, such as the NSCLC cells, they will not contribute significantly to clearance of CERA due to their low expression levels. Importantly, it was possible to determine the number of CFU-E cells for each cancer patient, showing a high patient-to-patient variability (
The above model was also able to correlate the hemoglobin (Hb) increments with the PK/PD data in individualized patient data sets. The PK profiles correlates with the number of CFU-E and this number with the recovery of the anemia, indicated by Hb levels. The inventors established the correlation between the individual patient histories with the PK profiles and these ones with the number of CFU-E per patients, and these ones with the outcome of the ESA treatment (increment of Hb levels). The Hb model includes therefore the additional reactions (
An increase in risk of mortality has been associated with ESA treatment in cancer-associated anaemia. The inventors used logistic regression to correlate the two inferred patient-specific parameters (number of ESA binding sites and Hb degradation rate) and the given ESA treatment with fatal outcome (
Previous attempts to statistically identify risk factors for mortality and thrombovascular events upon ESA treatment pointed to high ESA doses, hyporesponsiveness to treatment or Hb levels >13 g/dl. However, these risk factors can only be obtained retrospectively. With the inventor's multiscale model it is possible to estimate the two patient-specific parameters for each individual patient already after a few measurements of Hb. Based on these parameters the multiscale model is capable to predict the minimal effective dose and to stratify patients to low or high risk of mortality. The inventor's approach also provides a pharmacovigilance tool to retrospectively asses the risk/benefit in ESA safety studies. The threshold for being at high risk for an adverse event is provided in
Furthermore, the inventors used the model not only for the risk stratification of cancer patients but also in a cancer unrelated situation, such as CKD. The results in
It has been widely reported that the following risk factors correlate with adverse events and an increased risk of mortality in CKD patients: high doses of ESAs (Regidor, D. L. et al. J Am Soc Nephrol 17, 1181-1191, (2006)), non-stable Hb values (Yang, W. et al. J Am Soc Nephrol 18, 3164-3170, (2007)) and high levels of Hb (Singh, A. K. et al. N Engl J Med 355, 2085-2098, (2006)). The disclosed mathematical model is able to describe the pharmacokinetics and pharmacodynamics of ESAs in CKD patient (
Number | Date | Country | Kind |
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17153796.2 | Jan 2017 | EP | regional |