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Genome-wide efficient attribute selection for purely epistatic models via Shannon entropy

Manzourolajdad, A; Saraee, MH; Mirlohi, A; Javan, A

Authors

A Manzourolajdad

A Mirlohi

A Javan



Abstract

Epistasis plays an important role in the genetic architecture of common human diseases. Most complex diseases are believed to have multiple contributing loci that often have subtle patterns which make them fairly difficult to find in large data sets. Disorders that follow purely epistatic models cannot be detected by cases/control studies based on individual analysis of susceptible loci. The computational complexity of performing exhaustive searches for detecting such models in genome-wide applications is practically unfeasible. Furthermore, with ever-increasing number of both genotypes and individuals on one side, and little knowledge of complex traits on the other, it is becoming fairly difficult and time consuming to perform systematic genome-wide studies on such traits. We present and discuss a convenient framework for modelling epistasis using information theoretic concepts and algorithms inspired by such an approach. These generalised algorithms, which are especially in favour of purely epistatic models, are applied to both simulated and real data. The real data represents the genotype-phenotype values for Age-Related Macular Degeneration (AMD) disease. Many two-locus purely epistatic patterns were found for AMD. A new visualisation approach is also presented for the purpose of better illustrating epistasy for cases where the number of loci is more than two or three.

Citation

Manzourolajdad, A., Saraee, M., Mirlohi, A., & Javan, A. (2008). Genome-wide efficient attribute selection for purely epistatic models via Shannon entropy. International Journal of Business Intelligence and Data Mining, 3(4), 390. https://doi.org/10.1504/IJBIDM.2008.022736

Journal Article Type Article
Publication Date Jan 1, 2008
Deposit Date Oct 19, 2011
Journal International Journal of Business Intelligence and Data Mining
Print ISSN 1743-8187
Publisher Inderscience
Peer Reviewed Peer Reviewed
Volume 3
Issue 4
Pages 390
DOI https://doi.org/10.1504/IJBIDM.2008.022736
Publisher URL http://dx.doi.org/10.1504/IJBIDM.2008.022736
Related Public URLs http://www.inderscience.com/info/index.php