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1. Field of the Invention
The present invention relates to methods and determination of treatment of a mammal or group of mammals having an infectious disease capable of inducing inflammation such as the inflammatory infection of the mammary gland (“mastitis”). Specifically, the present invention relates to dividing a population of mammals into non-infected and multiple infected subsets for the determination which if any subsets should be treated or allowed to run its course untreated.
2. Description of Related Art
Historically, the concept of the process of infectious disease has been associated with the process of inflammation. Both processes have been regarded to be mirror images of each other so measuring the presence of inflammation has been assumed to indicate the presence of infection. By default, absence of inflammation has been taken as evidence of absence of infection. These concepts have had another expression in epidemiology: prevalence (percentage of infected individuals within the total population). The concept of (infectious disease) prevalence is associated with, at least, 2 problems or weaknesses that create errors in treatment choices: (a) it implicitly assumes that all disease-positive cases are identical (each case is assumed to carry the same weight in the calculation of prevalence), and (b) it cannot tell which case is more likely to recover (or, alternatively, to evolve into chronicity, if not death). Accordingly, when prevalence is used, all subjects diagnosed as “disease-positive” are treated and only disease negative subjects are left untreated. However, while treatment decisions become simple using this paradigm, such treatment regime is not consistent with the empirical evidence: two or more “disease-positive” types of infection may occur. Some disease positive cases recover while other disease positive cases result in death. (e.g., the mortality rate is usually much lower than the morbidity rate).
Infectious bovine mastitis is a major health problem of dairy cattle, a herd animal, which results in decreased milk production and decreased milk quality. Staphylococcus aureus is one of the major bacterial pathogens associated with this disease. Identification of bovine mastitis has historically been based on counting all cells present in milk (leukocytes and epithelial cells), also known as somatic cell counts (SCC). Counts greater than 500,000/ml are usually associated with bovine mastitis, which results in reduced milk production and reduced shelf-life of dairy products. The reduction of bovine mastitis prevalence is a major goal of the dairy industry throughout the world. To achieve this goal, most countries ban from the market milk with SCC>500,000 cells/ml, or charge fees for milk deliveries that approach that figure.
In spite of these policies, it is questionable whether measures based on SCC will ever achieve success in decreasing prevalence of bovine mastitis. While high SCC (>1.times.10.sup.6 SSC/ml) is regarded in the industry to be an accurate indicator of bovine mastitis, both mastitic positive and healthy cows can yield an SCC below that figure. The SCC is a generic number that does not take into account the contribution of different inflammatory cell types or leukocytes (i.e., lymphocytes, macrophages and polymorphonuclear cells [or PMN]), nor does it measure cell functions. As a result, neither the number nor the function of each of these three cell types is assessed by the SCC, which prevents accurate diagnosis (determination of present health status) and determination of susceptibility (determination of future health status), as well as evaluation of therapies against mastitis (due to lack of knowledge about their functioning). Furthermore, the SCC does not provide information on the immune status of the individual (i.e., susceptible versus resistant to mastitis). Therefore, there is a need in the dairy industry to develop accurate methods for detection and treatment of mastitis that go beyond the SCC paradigm.
The use of differential cell counts in the diagnosis of mastitis has been proposed for over two decades. Manual milk cytology is the standard technique used to determine leukocyte differential counts. However, the time-consuming nature of, and expertise required by cytologic evaluations of milk leukocytes may be an impediment for current efforts toward improved diagnosis of bovine mastitis. Cytology only allows a relatively low number of cells to be counted per sample. This feature results in inaccurate counts when specimens with low cell concentrations are assessed.-Methods have been developed for the diagnosis and susceptibility to bovine mastitis. In U.S. Pat. No. 6,979,550 to Rivas et. al. issued Dec. 27, 2005, there are disclosed methods for separating and determining subsets of herds of cows into no mastitis, early mastitis and late mastitis. These methods however do not go forward to determine when there should or should not be treatment of an infected animal and further do not separate the inflammation/infection paradigm disclosed above. In addition, these methods do not identify disease stages with an objective (statistically defined) procedure.
Accordingly, it would be useful to have a method to determine if an infectious disease is present as well as where it is in the progress of the disease (what specific disease stage it is at) and to determine if treatment of an infection is necessary or not.
The present invention provides a method for not only determining the stage of infectious disease in more detail than previously known, it also helps a health care practitioner determine if an infected mammal should or should not be treated for the disease and, in addition, it assesses the likelihood of erroneous results of any indicator. By determining the likelihood of a subject to either recover or not recover, treatment plans can be adopted which only treat those subjects unlikely to recover.
In one embodiment the present invention relates to a method for identifying which mammals in an identified group of mammals has one or more diseases selected from the group consisting of infectious and inflammatory diseases and should also receive treatment for the one or more diseases comprising:
In yet another embodiment the invention relates to a method of determining the disease state of an individual mammal in a group of mammals comprising:
Yet another embodiment relates to a method of differentiating the health of a mammal in a group of mammals by evaluating at least two indicators selected from the group comprising the macrophage percentage, the ratio of PMN/lymphocyte percentages, the mononuclear percentage and the PMN/macrophage ratio.
Another embodiment is a method of identifying the progress of an inflammatory infection and the prognosis of the infection in a mammal which is a member of a group of mammals comprising the steps of:
A method for identifying mammals from a group of infected mammals that do not require treatment comprising evaluating leukocyte data and based on those data not treating mammals which fall into no infection, late transition and late inactive infection groups.
Another embodiment of the invention is a method for identifying which mammals in an identified group of mammals have an infectious disease and should also receive treatment for the disease comprising:
Another embodiment is a method for identifying sources of diagnostic errors in the process of testing a group of mammals for an infective disease comprising:
a) producing a leukocyte profile which identifies at least 4 potential diagnostic errors in the testing;
b) producing a microbial profile from the leukocyte profile data of each individual mammal.
c) determining the most likely diagnosis for one or more mammals in the group of mammals based on the microbial profile and the leukocyte profile of the disease stage.
The patent or application file contains at least one drawing executed in color. Copies of this patent or patent application publication with color drawings will be provided by the Office upon request and payment of the necessary fee.
While this invention is susceptible to embodiment in many different forms, there is shown in the drawings and will herein be described in detail specific embodiments, with the understanding that the present disclosure of such embodiments is to be considered as an example of the principles and not intended to limit the invention to the specific embodiments shown and described. In the description below, like reference numerals are used to describe the same, similar or corresponding parts in the several views of the drawings. This detailed description defines the meaning of the terms used herein and specifically describes embodiments in order for those skilled in the art to practice the invention.
The terms “a” or “an”, as used herein, are defined as one or as more than one. The term “plurality”, as used herein, is defined as two or as more than two. The term “another”, as used herein, is defined as at least a second or more. The terms “including” and/or “having”, as used herein, are defined as comprising (i.e., open language). The term “coupled”, as used herein, is defined as connected, although not necessarily directly, and not necessarily mechanically.
Reference throughout this document to “one embodiment”, “certain embodiments”, “and an embodiment” or similar terms means that a particular feature, structure, or characteristic described in connection with the embodiment is included in at least one embodiment of the present invention. Thus, the appearances of such phrases or in various places throughout this specification are not necessarily all referring to the same embodiment. Furthermore, the particular features, structures, or characteristics may be combined in any suitable manner in one or more embodiments without limitation.
The term “or” as used herein is to be interpreted as an inclusive or meaning any one or any combination. Therefore, “A, B or C” means “any of the following: A; B; C; A and B; A and C; B and C; A, B and C”. An exception to this definition will occur only when a combination of elements, functions, steps or acts are in some way inherently mutually exclusive.
The drawings featured in the figures are for the purpose of illustrating certain convenient embodiments of the present invention, and are not to be considered as limitation thereto. Term “means” preceding a present participle of an operation indicates a desired function for which there is one or more embodiments, i.e., one or more methods, devices, or apparatuses for achieving the desired function and that one skilled in the art could select from these or their equivalent in view of the disclosure herein and use of the term “means” is not intended to be limiting.
By “group of mammals” as used herein is meant a selected limited number of mammals of which information about at least one member of the group is desired. The group could be for example a herd of cows or a group of mammals that shares a measurable condition (e.g., the same spatial location of residence, a given genetic marker). Other non-herd animals such as humans, pets, and the like could be a group under the invention. In one embodiment the group of mammals is a herd of cows.
As used herein an “infectious disease” refers to a microbial infection. Bacteria found in the mammal can be divided into major pathogens and minor pathogens for a given disease. A “major pathogen” is that pathogen(s) which are predominantly associated by one skilled in the art with a particular selected disease. A “minor pathogen” is that pathogen(s) which is a/are minor player(s) in the appearance of a particular disease. Such distinction is well known in the art. For example, in the disease of mastitis in cows, mastitis pathogens are routinely characterized as major and minor. A major pathogen-positive sample for mastitis is designated when Staphylococcus aureus, streptococci, coliforms, Prototheca spp, Arcanobacterium pyogenes, yeast and/or Nocardia spp are isolated at any concentration. Any other organism, chiefly coagulase-negative staphylococci, is considered a minor pathogen in the etiology of bovine mastitis. Major pathogens are the bacteria of concern for causing an infectious disease while minor pathogens are present bacteria but of a lesser or no importance in the mammal overall health.
A “microbial profile” as used herein is the quantitative determination, using continuous data, of the major and minor pathogens that characterize a disease subset and the determination of either the ratio of the percentage of major pathogens to the percentage of the minor pathogens of a given disease stage, or in the alternative, determining the percentage of major pathogens found in a group of samples (e.g., in a disease stage).
As used herein “leukocyte data” refers to the immunological data of each of the mammals in the group. Leukocyte data is the quantification of each leukocyte type (lymphocyte, macrophage, polymorphonuclear cell, i.e. PMN) as either total cell count per milliliter of sample, or relative percentage; as well as the relative ratios involving two or more cell types (e.g., the phagocyte ratio or ratio between the percentage of phagocytes [PMN and macrophages]/percentage of lymphocytes). The term “differential leukocyte count” as used herein means the percentage of lymphocytes, macrophages and polymorphonuclear cells (PMN) among all leukocytes.
The present invention provides methods for the diagnosis of a disease such as mastitis, for identifying multiple subsets representing different stages of infection and, in addition, the ability to evaluate the subsets in such a manner that only those infected subsets that will benefit from treatment are treated and the remaining infected subsets allowed to recover untreated. The method comprises taking a group of mammals such as a herd of cows, and collecting leukocyte data and microbial data on members of the group. The members of the group can be divided then into subsets which not only relate to the stage of disease but also relate to the vector or the progress of the disease and to the need of treatment or the benefit to treatment, if at all.
The algorithms generated by this present invention become a means for therapeutic treatment and evaluation of mammals within the group population in deciding a course or no course of treatment. The following examples and discussion (which are not intended to be restrictive limitations in any way) demonstrate the present invention with a group of cows being evaluated for infectious mastitis.
Microbiology is likely to generate false negatives due to microbial intracellular parasitism. Immunology may generate false negative results due to microbial intracellular parasitism, immune depletion, and/or microbial modulation of the immune response. By integrating microbiological with immunological data, analyzing the data on the basis of partitioned testing (an approach that does not assume health/disease is composed of only two [dichotomous] outcomes), and applying well-established statistical procedures (which address microbial profiles and inflammatory stages), cases are differentiated and analyzed with emphasis on estimating the evolution over time of these leukocyte-microbial profiles.
While leukocyte profiles indicative of inflammation are associated with microbial profiles that, first, indicate infection and later, recovery (findings that may be applied as a new prognostic system), lack of inflammation does not always indicate absence of infection: a leukocyte subset may indicate infection but not inflammation (i.e., “I w/o I”). If so, the classical paradigm is not accurate in its dichotomic assumption: absence of inflammation does not necessarily indicate absence of infection.
Data available in the public domain are used to demonstrate this method. A dataset (data collected from a group) is the first unit of analysis. Such dataset contains, if available, the date the samples were collected, the spatial location (e.g., the latitude and longitude of a farm), the mammal identifier, and the identifier of the organ where the sample is collected (e.g., the mammary gland quarter of a cow).
In addition, the counts/ml and percentage of lymphocytes, macrophages, and PMN of the tested organ are recorded, as well as the microbiologic results (e.g., microbial isolation or lack of isolation [of a specific microbial species and/or microbial subspecies or strain, if indicated]). Other indicators may be included, although they are not required, such as the total cell count (not discriminating for each leukocyte type).
Then, the data distribution is determined (
Subsequently, an open-ended procedure is conducted with the purpose of dividing the dataset in as many subsets as produced by the process such that, each one is linearly distributed (
This procedure can be implemented by any means (e.g., a computer software, a manual process). However, the end goal is the same: the 3 criteria indicated above.
Once at least 5 subsets displaying linearity have been identified, a bi-dimensional plot of 2 leukocyte indicators (e.g., the distribution of the lymphocyte percentage data vs. the distribution of the [log-transformed] phagocyte/lymphocyte ratio) is produced with the purpose of identifying at least one major inflexion point (
Then, the microbial profiles corresponding to each disease subset (disease stage) are determined. Both the percentage of major pathogens and the major/minor pathogen ratio are calculated (
After confirming that at least 2 disease stages can be differentiated statistically by, at least, 2 leukocyte indicators (
By using any set of at least 4 non-overlapping rules, questions are attached to the report of each individual sample to prompt diagnosticians for the likelihood of erroneous results. For instance, if the total cell count [“SCC”] is higher than a certain value [a pre-determined threshold, e.g. 200,000 cells/ml] and no bacterium was isolated in culture, a “true culture, false SCC, or other?” question is created (
This analysis used the time unit of each disease stage as the predictor (horizontal axis) and several leukocyte indicators as the response indicator (vertical axis in the plots). Two indicators, shown in
This method also assesses its own chances for erroneous results. For instance, if a sample shows SCC above a certain threshold (e.g. 200,000 cells/ml) but no major pathogen is isolated, a question is asked: “is it a true culture result, a false SCC result, or other explanation is plausible?” Here, 4 such questions were asked to each of 484 observations. By plotting the questions generated by each result and producing a table where that question is shown as an additional column (see table below), diagnosticians are alerted about a possible cause of concern. By showing the microbial profile associated with the observed leukocyte profile, diagnosticians are provided with the data that can respond to the question of interest. The most defensible diagnosis is also provided.
Example #1 in
Example #2 in
Example #3 in
Example #4 in
aEx = example, L = lymphocyte, M = macrophage, Mono = mononuclear cell, PMN = polymorphonuclear cell, Phago = phagocyte (PMN and macrophage), Dx = diagnosis, 99.9 = infinity. Leukocytes do not always add up to a 100% since they were identified by flow cytometry.
b“True positive, double false positive, or other?”
c“False culture, true SCC, or other?”
d“True culture, false SCC, or other?”
e“True negative, double false negative, or other?”
The claims which follow are not intended to be limited by the preceding examples. Variations in methods, diseases, or mammalian species are possible and considered within the scope of the claims of the present invention.
This is a divisional patent application of co-pending application Ser. No. 12/145,032, filed Jun. 24, 2008, entitled “METHOD FOR DIAGNOSIS OF AN INFECTIOUS DISEASE STAGE AND DETERMINATION OF TREATMENT”. The aforementioned application is hereby incorporated herein by reference.
Number | Date | Country | |
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Parent | 12145032 | Jun 2008 | US |
Child | 13739150 | US |