Literature DB >> 19924717

Machine learning in genome-wide association studies.

Silke Szymczak1, Joanna M Biernacka, Heather J Cordell, Oscar González-Recio, Inke R König, Heping Zhang, Yan V Sun.   

Abstract

Recently, genome-wide association studies have substantially expanded our knowledge about genetic variants that influence the susceptibility to complex diseases. Although standard statistical tests for each single-nucleotide polymorphism (SNP) separately are able to capture main genetic effects, different approaches are necessary to identify SNPs that influence disease risk jointly or in complex interactions. Experimental and simulated genome-wide SNP data provided by the Genetic Analysis Workshop 16 afforded an opportunity to analyze the applicability and benefit of several machine learning methods. Penalized regression, ensemble methods, and network analyses resulted in several new findings while known and simulated genetic risk variants were also identified. In conclusion, machine learning approaches are promising complements to standard single-and multi-SNP analysis methods for understanding the overall genetic architecture of complex human diseases. However, because they are not optimized for genome-wide SNP data, improved implementations and new variable selection procedures are required. (c) 2009 Wiley-Liss, Inc.

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Year:  2009        PMID: 19924717     DOI: 10.1002/gepi.20473

Source DB:  PubMed          Journal:  Genet Epidemiol        ISSN: 0741-0395            Impact factor:   2.135


  47 in total

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5.  High-dimensional pharmacogenetic prediction of a continuous trait using machine learning techniques with application to warfarin dose prediction in African Americans.

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6.  An integrated approach to reduce the impact of minor allele frequency and linkage disequilibrium on variable importance measures for genome-wide data.

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7.  Germline genetic variation and treatment response on CCG-1891.

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8.  Susceptibility of brain atrophy to TRIB3 in Alzheimer's disease, evidence from functional prioritization in imaging genetics.

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9.  Rosetta Machine Learning Models Accurately Classify Positional Effects of Thioamides on Proteolysis.

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10.  Network-guided sparse regression modeling for detection of gene-by-gene interactions.

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