Cargando…
A Statistical Model for Assessing Genetic Susceptibility as a Risk Factor in Multifactorial Diseases: Lessons from Occupational Asthma
BACKGROUND: Incorporating the influence of genetic variation in the risk assessment process is often considered, but no generalized approach exists. Many common human diseases such as asthma, cancer, and cardiovascular disease are complex in nature, as they are influenced variably by environmental,...
Autores principales: | , , , , , , , |
---|---|
Formato: | Texto |
Lenguaje: | English |
Publicado: |
National Institute of Environmental Health Sciences
2007
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1817705/ https://www.ncbi.nlm.nih.gov/pubmed/17384770 http://dx.doi.org/10.1289/ehp.8870 |
_version_ | 1782132619439243264 |
---|---|
author | Demchuk, Eugene Yucesoy, Berran Johnson, Victor J. Andrew, Michael Weston, Ainsley Germolec, Dori R. De Rosa, Christopher T. Luster, Michael I. |
author_facet | Demchuk, Eugene Yucesoy, Berran Johnson, Victor J. Andrew, Michael Weston, Ainsley Germolec, Dori R. De Rosa, Christopher T. Luster, Michael I. |
author_sort | Demchuk, Eugene |
collection | PubMed |
description | BACKGROUND: Incorporating the influence of genetic variation in the risk assessment process is often considered, but no generalized approach exists. Many common human diseases such as asthma, cancer, and cardiovascular disease are complex in nature, as they are influenced variably by environmental, physiologic, and genetic factors. The genetic components most responsible for differences in individual disease risk are thought to be DNA variants (polymorphisms) that influence the expression or function of mediators involved in the pathological processes. OBJECTIVE: The purpose of this study was to estimate the combinatorial contribution of multiple genetic variants to disease risk. METHODS: We used a logistic regression model to help estimate the joint contribution that multiple genetic variants would have on disease risk. This model was developed using data collected from molecular epidemiology studies of allergic asthma that examined variants in 16 susceptibility genes. RESULTS: Based on the product of single gene variant odds ratios, the risk of developing asthma was assigned to genotype profiles, and the frequency of each profile was estimated for the general population. Our model predicts that multiple disease variants broaden the risk distribution, facilitating the identification of susceptible populations. This model also allows for incorporation of exposure information as an independent variable, which will be important for risk variants associated with specific exposures. CONCLUSION: The present model provided an opportunity to estimate the relative change in risk associated with multiple genetic variants. This will facilitate identification of susceptible populations and help provide a framework to model the genetic contribution in probabilistic risk assessment. |
format | Text |
id | pubmed-1817705 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2007 |
publisher | National Institute of Environmental Health Sciences |
record_format | MEDLINE/PubMed |
spelling | pubmed-18177052007-03-23 A Statistical Model for Assessing Genetic Susceptibility as a Risk Factor in Multifactorial Diseases: Lessons from Occupational Asthma Demchuk, Eugene Yucesoy, Berran Johnson, Victor J. Andrew, Michael Weston, Ainsley Germolec, Dori R. De Rosa, Christopher T. Luster, Michael I. Environ Health Perspect Research BACKGROUND: Incorporating the influence of genetic variation in the risk assessment process is often considered, but no generalized approach exists. Many common human diseases such as asthma, cancer, and cardiovascular disease are complex in nature, as they are influenced variably by environmental, physiologic, and genetic factors. The genetic components most responsible for differences in individual disease risk are thought to be DNA variants (polymorphisms) that influence the expression or function of mediators involved in the pathological processes. OBJECTIVE: The purpose of this study was to estimate the combinatorial contribution of multiple genetic variants to disease risk. METHODS: We used a logistic regression model to help estimate the joint contribution that multiple genetic variants would have on disease risk. This model was developed using data collected from molecular epidemiology studies of allergic asthma that examined variants in 16 susceptibility genes. RESULTS: Based on the product of single gene variant odds ratios, the risk of developing asthma was assigned to genotype profiles, and the frequency of each profile was estimated for the general population. Our model predicts that multiple disease variants broaden the risk distribution, facilitating the identification of susceptible populations. This model also allows for incorporation of exposure information as an independent variable, which will be important for risk variants associated with specific exposures. CONCLUSION: The present model provided an opportunity to estimate the relative change in risk associated with multiple genetic variants. This will facilitate identification of susceptible populations and help provide a framework to model the genetic contribution in probabilistic risk assessment. National Institute of Environmental Health Sciences 2007-02 2006-11-13 /pmc/articles/PMC1817705/ /pubmed/17384770 http://dx.doi.org/10.1289/ehp.8870 Text en http://creativecommons.org/publicdomain/mark/1.0/ Publication of EHP lies in the public domain and is therefore without copyright. All text from EHP may be reprinted freely. Use of materials published in EHP should be acknowledged (for example, ?Reproduced with permission from Environmental Health Perspectives?); pertinent reference information should be provided for the article from which the material was reproduced. Articles from EHP, especially the News section, may contain photographs or illustrations copyrighted by other commercial organizations or individuals that may not be used without obtaining prior approval from the holder of the copyright. |
spellingShingle | Research Demchuk, Eugene Yucesoy, Berran Johnson, Victor J. Andrew, Michael Weston, Ainsley Germolec, Dori R. De Rosa, Christopher T. Luster, Michael I. A Statistical Model for Assessing Genetic Susceptibility as a Risk Factor in Multifactorial Diseases: Lessons from Occupational Asthma |
title | A Statistical Model for Assessing Genetic Susceptibility as a Risk Factor in Multifactorial Diseases: Lessons from Occupational Asthma |
title_full | A Statistical Model for Assessing Genetic Susceptibility as a Risk Factor in Multifactorial Diseases: Lessons from Occupational Asthma |
title_fullStr | A Statistical Model for Assessing Genetic Susceptibility as a Risk Factor in Multifactorial Diseases: Lessons from Occupational Asthma |
title_full_unstemmed | A Statistical Model for Assessing Genetic Susceptibility as a Risk Factor in Multifactorial Diseases: Lessons from Occupational Asthma |
title_short | A Statistical Model for Assessing Genetic Susceptibility as a Risk Factor in Multifactorial Diseases: Lessons from Occupational Asthma |
title_sort | statistical model for assessing genetic susceptibility as a risk factor in multifactorial diseases: lessons from occupational asthma |
topic | Research |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1817705/ https://www.ncbi.nlm.nih.gov/pubmed/17384770 http://dx.doi.org/10.1289/ehp.8870 |
work_keys_str_mv | AT demchukeugene astatisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT yucesoyberran astatisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT johnsonvictorj astatisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT andrewmichael astatisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT westonainsley astatisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT germolecdorir astatisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT derosachristophert astatisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT lustermichaeli astatisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT demchukeugene statisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT yucesoyberran statisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT johnsonvictorj statisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT andrewmichael statisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT westonainsley statisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT germolecdorir statisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT derosachristophert statisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma AT lustermichaeli statisticalmodelforassessinggeneticsusceptibilityasariskfactorinmultifactorialdiseaseslessonsfromoccupationalasthma |