FINEMAP: efficient variable selection using summary data from genome-wide association studies

Christian Benner(University of Helsinki), Chris C. A. Spencer(Centre for Human Genetics), Aki S. Havulinna(Finnish Institute for Health and Welfare), Veikko Salomaa(Finnish Institute for Health and Welfare), Samuli Ripatti(University of Helsinki), Matti Pirinen(University of Helsinki)
Bioinformatics
January 14, 2016
Cited by 907Open Access
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Abstract

MOTIVATION: The goal of fine-mapping in genomic regions associated with complex diseases and traits is to identify causal variants that point to molecular mechanisms behind the associations. Recent fine-mapping methods using summary data from genome-wide association studies rely on exhaustive search through all possible causal configurations, which is computationally expensive. RESULTS: We introduce FINEMAP, a software package to efficiently explore a set of the most important causal configurations of the region via a shotgun stochastic search algorithm. We show that FINEMAP produces accurate results in a fraction of processing time of existing approaches and is therefore a promising tool for analyzing growing amounts of data produced in genome-wide association studies and emerging sequencing projects. AVAILABILITY AND IMPLEMENTATION: FINEMAP v1.0 is freely available for Mac OS X and Linux at http://www.christianbenner.com CONTACT: : christian.benner@helsinki.fi or matti.pirinen@helsinki.fi.


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