| Literature DB >> 28512778 |
Lipika R Pal1, Kunal Kundu1,2, Yizhou Yin1,2, John Moult1,3.
Abstract
Understanding the basis of complex trait disease is a fundamental problem in human genetics. The CAGI Crohn's Exome challenges are providing insight into the adequacy of current disease models by requiring participants to identify which of a set of individuals has been diagnosed with the disease, given exome data. For the CAGI4 round, we developed a method that used the genotypes from exome sequencing data only to impute the status of genome wide association studies marker SNPs. We then used the imputed genotypes as input to several machine learning methods that had been trained to predict disease status from marker SNP information. We achieved the best performance using Naïve Bayes and with a consensus machine learning method, obtaining an area under the curve of 0.72, larger than other methods used in CAGI4. We also developed a model that incorporated the contribution from rare missense variants in the exome data, but this performed less well. Future progress is expected to come from the use of whole genome data rather than exomes.Entities:
Keywords: CAGI; Crohn disease; GWAS data; Naïve Bayes; complex disease risk model; exome sequencing; machine learning model
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Year: 2017 PMID: 28512778 PMCID: PMC5576730 DOI: 10.1002/humu.23256
Source DB: PubMed Journal: Hum Mutat ISSN: 1059-7794 Impact factor: 4.878