The identification of genes that influence the risk of
common, complex disease primarily through interactions
with other genes and environmental factors remains a
statistical and computational challenge in genetic
epidemiology. This challenge is partly due to the
limitations of parametric statistical methods for
detecting genetic effects that are dependent solely or
partially on interactions. We have previously
introduced a genetic programming neural network (GPNN)
as a method for optimising the architecture of a neural
network to improve the identification of genetic and
gene environment combinations associated with disease
risk. Previous empirical studies suggest GPNN has
excellent power for identifying gene-gene and
gene-environment interactions. The goal of this study
was to compare the power of GPNN to stepwise logistic
regression (SLR) and classification and regression
trees (CART) for identifying gene-gene and gene
environment interactions. SLR and CART are standard
methods of analysis for genetic association studies.
Using simulated data, we show that GPNN has higher
power to identify gene-gene and gene-environment
interactions than SLR and CART. These results indicate
that GPNN may be a useful pattern recognition approach
for detecting gene gene and gene environment
interactions in studies of human disease.
%0 Journal Article
%1 Ritchie:2007:ASC
%A Ritchie, Marylyn D.
%A Motsinger, Alison A.
%A Bush, William S.
%A Coffey, Christopher S.
%A Moore, Jason H.
%D 2007
%J Applied Soft Computing
%K ANN, Bioinformatics, Epistasis, Gene-gene Neural algorithms, genetic interactions networks, programming,
%N 1
%P 471--479
%R doi:10.1016/j.asoc.2006.01.013
%T Genetic programming neural networks: A powerful
bioinformatics tool for human genetics
%V 7
%X The identification of genes that influence the risk of
common, complex disease primarily through interactions
with other genes and environmental factors remains a
statistical and computational challenge in genetic
epidemiology. This challenge is partly due to the
limitations of parametric statistical methods for
detecting genetic effects that are dependent solely or
partially on interactions. We have previously
introduced a genetic programming neural network (GPNN)
as a method for optimising the architecture of a neural
network to improve the identification of genetic and
gene environment combinations associated with disease
risk. Previous empirical studies suggest GPNN has
excellent power for identifying gene-gene and
gene-environment interactions. The goal of this study
was to compare the power of GPNN to stepwise logistic
regression (SLR) and classification and regression
trees (CART) for identifying gene-gene and gene
environment interactions. SLR and CART are standard
methods of analysis for genetic association studies.
Using simulated data, we show that GPNN has higher
power to identify gene-gene and gene-environment
interactions than SLR and CART. These results indicate
that GPNN may be a useful pattern recognition approach
for detecting gene gene and gene environment
interactions in studies of human disease.
@article{Ritchie:2007:ASC,
abstract = {The identification of genes that influence the risk of
common, complex disease primarily through interactions
with other genes and environmental factors remains a
statistical and computational challenge in genetic
epidemiology. This challenge is partly due to the
limitations of parametric statistical methods for
detecting genetic effects that are dependent solely or
partially on interactions. We have previously
introduced a genetic programming neural network (GPNN)
as a method for optimising the architecture of a neural
network to improve the identification of genetic and
gene environment combinations associated with disease
risk. Previous empirical studies suggest GPNN has
excellent power for identifying gene-gene and
gene-environment interactions. The goal of this study
was to compare the power of GPNN to stepwise logistic
regression (SLR) and classification and regression
trees (CART) for identifying gene-gene and gene
environment interactions. SLR and CART are standard
methods of analysis for genetic association studies.
Using simulated data, we show that GPNN has higher
power to identify gene-gene and gene-environment
interactions than SLR and CART. These results indicate
that GPNN may be a useful pattern recognition approach
for detecting gene gene and gene environment
interactions in studies of human disease.},
added-at = {2008-06-19T17:46:40.000+0200},
author = {Ritchie, Marylyn D. and Motsinger, Alison A. and Bush, William S. and Coffey, Christopher S. and Moore, Jason H.},
biburl = {https://www.bibsonomy.org/bibtex/23cc76d7f411cb2ece1ba9da1ca4bcf5f/brazovayeye},
doi = {doi:10.1016/j.asoc.2006.01.013},
interhash = {6f8a75320a5dc0a25e988e8849b9d9ea},
intrahash = {3cc76d7f411cb2ece1ba9da1ca4bcf5f},
journal = {Applied Soft Computing},
keywords = {ANN, Bioinformatics, Epistasis, Gene-gene Neural algorithms, genetic interactions networks, programming,},
month = {January},
number = 1,
pages = {471--479},
size = {9 pages},
timestamp = {2008-06-19T17:50:16.000+0200},
title = {Genetic programming neural networks: {A} powerful
bioinformatics tool for human genetics},
volume = 7,
year = 2007
}