Comparison of information-theoretic to statistical methods for gene-environment interactions in the presence of genetic heterogeneity


Multifactorial diseases such as cancer and cardiovascular diseases are caused by the complex interplay between genes and environment. The detection of these interactions remains challenging due to computational limitations.

Information theoretic approaches use computationally efficient directed search strategies and thus provide a feasible solution to this problem. However, the power of information theoretic methods for interaction analysis has not been systematically evaluated.

In this work, we compare power and Type I error of an information-theoretic approach to existing interaction analysis methods.

Methods: The k-way interaction information (KWII) metric for identifying variable combinations involved in gene-gene interactions (GGI) was assessed using several simulated data sets under models of genetic heterogeneity driven by susceptibility increasing loci with varying allele frequency, penetrance values and heritability. The power and proportion of false positives of the KWII was compared to multifactor dimensionality reduction (MDR), restricted partitioning method (RPM) and logistic regression.

Results: The power of the KWII was considerably greater than MDR on all six simulation models examined.

For a given disease prevalence at high values of heritability, the power of both RPM and KWII was greater than 95%. For models with low heritability and/or genetic heterogeneity, the power of the KWII was consistently greater than RPM; the improvements in power for the KWII over RPM ranged from 4.7% to 14.2% at for alpha = 0.001 in the three models at the lowest heritability values examined.

KWII performed similar to logistic regression.

Conclusions: Information theoretic models are flexible and have excellent power to detect GGI under a variety of conditions that characterize complex diseases.

Author: Lara SuchestonPritam ChandaAidong ZhangDavid TritchlerMurali Ramanathan
Credits/Source: BMC Genomics 2010, 11:487



Published on: 2010-09-03



Copyright by the authors listed above - made available via BioMedCentral (Open Access). Please make sure to read our disclaimer prior to contacting 7thSpace Interactive. To contact our editors, visit our online helpdesk. If you wish submit your own press release, click here.

Social Bookmarking
RETWEET This! | Digg this! | Post to del.icio.us | Post to Furl | Add to Netscape | Add to Yahoo! | Rojo



Comments Page 0 of 0
There are currently 0 comments to display.

 


+ Add New Comment


Custom Search

Username
Password










© 2012 7thSpace Interactive
All Rights Reserved - About | Disclaimer | Helpdesk
There are currently 45047 people browsing 7thSpace