Power of multifactor dimensionality reduction and penalized logistic regression for detecting gene-gene Interaction in a case-control study

<p>Abstract</p> <p>Background</p> <p>There is a growing awareness that interaction between multiple genes play an important role in the risk of common, complex multi-factorial diseases. Many common diseases are affected by certain genotype combinations (associated with...

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Main Authors: Brott Marcia J, Oetting William S, He Hua, Basu Saonli
Format: Article
Language:English
Published: BMC 2009-12-01
Series:BMC Medical Genetics
Online Access:http://www.biomedcentral.com/1471-2350/10/127
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spelling doaj-67de218d9b9c4fae85632419c4afdae12021-04-02T01:30:45ZengBMCBMC Medical Genetics1471-23502009-12-0110112710.1186/1471-2350-10-127Power of multifactor dimensionality reduction and penalized logistic regression for detecting gene-gene Interaction in a case-control studyBrott Marcia JOetting William SHe HuaBasu Saonli<p>Abstract</p> <p>Background</p> <p>There is a growing awareness that interaction between multiple genes play an important role in the risk of common, complex multi-factorial diseases. Many common diseases are affected by certain genotype combinations (associated with some genes and their interactions). The identification and characterization of these susceptibility genes and gene-gene interaction have been limited by small sample size and large number of potential interactions between genes. Several methods have been proposed to detect gene-gene interaction in a case control study. The penalized logistic regression (PLR), a variant of logistic regression with <it>L</it><sub>2 </sub>regularization, is a parametric approach to detect gene-gene interaction. On the other hand, the Multifactor Dimensionality Reduction (MDR) is a nonparametric and genetic model-free approach to detect genotype combinations associated with disease risk.</p> <p>Methods</p> <p>We compared the power of MDR and PLR for detecting two-way and three-way interactions in a case-control study through extensive simulations. We generated several interaction models with different magnitudes of interaction effect. For each model, we simulated 100 datasets, each with 200 cases and 200 controls and 20 SNPs. We considered a wide variety of models such as models with just main effects, models with only interaction effects or models with both main and interaction effects. We also compared the performance of MDR and PLR to detect gene-gene interaction associated with acute rejection(AR) in kidney transplant patients.</p> <p>Results</p> <p>In this paper, we have studied the power of MDR and PLR for detecting gene-gene interaction in a case-control study through extensive simulation. We have compared their performances for different two-way and three-way interaction models. We have studied the effect of different allele frequencies on these methods. We have also implemented their performance on a real dataset. As expected, none of these methods were consistently better for all data scenarios, but, generally MDR outperformed PLR for more complex models. The ROC analysis on the real dataset suggests that MDR outperforms PLR in detecting gene-gene interaction on the real dataset.</p> <p>Conclusion</p> <p>As one might expect, the relative success of each method is context dependent. This study demonstrates the strengths and weaknesses of the methods to detect gene-gene interaction.</p> http://www.biomedcentral.com/1471-2350/10/127
collection DOAJ
language English
format Article
sources DOAJ
author Brott Marcia J
Oetting William S
He Hua
Basu Saonli
spellingShingle Brott Marcia J
Oetting William S
He Hua
Basu Saonli
Power of multifactor dimensionality reduction and penalized logistic regression for detecting gene-gene Interaction in a case-control study
BMC Medical Genetics
author_facet Brott Marcia J
Oetting William S
He Hua
Basu Saonli
author_sort Brott Marcia J
title Power of multifactor dimensionality reduction and penalized logistic regression for detecting gene-gene Interaction in a case-control study
title_short Power of multifactor dimensionality reduction and penalized logistic regression for detecting gene-gene Interaction in a case-control study
title_full Power of multifactor dimensionality reduction and penalized logistic regression for detecting gene-gene Interaction in a case-control study
title_fullStr Power of multifactor dimensionality reduction and penalized logistic regression for detecting gene-gene Interaction in a case-control study
title_full_unstemmed Power of multifactor dimensionality reduction and penalized logistic regression for detecting gene-gene Interaction in a case-control study
title_sort power of multifactor dimensionality reduction and penalized logistic regression for detecting gene-gene interaction in a case-control study
publisher BMC
series BMC Medical Genetics
issn 1471-2350
publishDate 2009-12-01
description <p>Abstract</p> <p>Background</p> <p>There is a growing awareness that interaction between multiple genes play an important role in the risk of common, complex multi-factorial diseases. Many common diseases are affected by certain genotype combinations (associated with some genes and their interactions). The identification and characterization of these susceptibility genes and gene-gene interaction have been limited by small sample size and large number of potential interactions between genes. Several methods have been proposed to detect gene-gene interaction in a case control study. The penalized logistic regression (PLR), a variant of logistic regression with <it>L</it><sub>2 </sub>regularization, is a parametric approach to detect gene-gene interaction. On the other hand, the Multifactor Dimensionality Reduction (MDR) is a nonparametric and genetic model-free approach to detect genotype combinations associated with disease risk.</p> <p>Methods</p> <p>We compared the power of MDR and PLR for detecting two-way and three-way interactions in a case-control study through extensive simulations. We generated several interaction models with different magnitudes of interaction effect. For each model, we simulated 100 datasets, each with 200 cases and 200 controls and 20 SNPs. We considered a wide variety of models such as models with just main effects, models with only interaction effects or models with both main and interaction effects. We also compared the performance of MDR and PLR to detect gene-gene interaction associated with acute rejection(AR) in kidney transplant patients.</p> <p>Results</p> <p>In this paper, we have studied the power of MDR and PLR for detecting gene-gene interaction in a case-control study through extensive simulation. We have compared their performances for different two-way and three-way interaction models. We have studied the effect of different allele frequencies on these methods. We have also implemented their performance on a real dataset. As expected, none of these methods were consistently better for all data scenarios, but, generally MDR outperformed PLR for more complex models. The ROC analysis on the real dataset suggests that MDR outperforms PLR in detecting gene-gene interaction on the real dataset.</p> <p>Conclusion</p> <p>As one might expect, the relative success of each method is context dependent. This study demonstrates the strengths and weaknesses of the methods to detect gene-gene interaction.</p>
url http://www.biomedcentral.com/1471-2350/10/127
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