Combining Multiple Hypothesis Testing with Machine Learning Increases the Statistical Power of Genome-wide Association Studies.

Bibliographic Collection: 
CARTA-Inspired Publication
Publication Type: Journal Article
Authors: Mieth, B; Kloft, M; Rodríguez, JA; Sonnenburg, S; Vobruba, R; Morcillo-Suárez, C; Farré, X; Marigorta, UM; Fehr, E; Dickhaus, T; Blanchard, G; Schunk, D; Navarro, A; Müller, KR
Year of Publication: 2016
Journal: Sci Rep
Volume: 6
Pagination: 36671
Date Published: Nov 28
Publication Language: eng
ISBN Number: 2045-2322
Accession Number: 27892471
Abstract:

The standard approach to the analysis of genome-wide association studies (GWAS) is based on testing each position in the genome individually for statistical significance of its association with the phenotype under investigation. To improve the analysis of GWAS, we propose a combination of machine learning and statistical testing that takes correlation structures within the set of SNPs under investigation in a mathematically well-controlled manner into account. The novel two-step algorithm, COMBI, first trains a support vector machine to determine a subset of candidate SNPs and then performs hypothesis tests for these SNPs together with an adequate threshold correction. Applying COMBI to data from a WTCCC study (2007) and measuring performance as replication by independent GWAS published within the 2008-2015 period, we show that our method outperforms ordinary raw p-value thresholding as well as other state-of-the-art methods. COMBI presents higher power and precision than the examined alternatives while yielding fewer false (i.e. non-replicated) and more true (i.e. replicated) discoveries when its results are validated on later GWAS studies. More than 80% of the discoveries made by COMBI upon WTCCC data have been validated by independent studies. Implementations of the COMBI method are available as a part of the GWASpi toolbox 2.0.

Author Address:

Machine Learning Group, Technische Universität Berlin, Berlin, 10587, Germany. Department of Computer Science, Humboldt University of Berlin, Berlin, 10099, Germany. Institut de Biología Evolutiva (CSIC-UPF). Departament de Ciències Experimentals i de la Salut. Universitat Pompeu Fabra, Barcelona, 08003, Spain. TomTom Research, Berlin, 12555, Germany. Machine Learning Group, Technische Universität Berlin, Berlin, 10587, Germany. Institut de Biología Evolutiva (CSIC-UPF). Departament de Ciències Experimentals i de la Salut. Universitat Pompeu Fabra, Barcelona, 08003, Spain. Institut de Biología Evolutiva (CSIC-UPF). Departament de Ciències Experimentals i de la Salut. Universitat Pompeu Fabra, Barcelona, 08003, Spain. School of Biology, Georgia Institute of Technology, Atlanta, 30332, GA, USA. Department of Economics, Laboratory for Social and Neural Systems Research, University of Zurich, Zurich, 8006, Switzerland. Institute for Statistics (FB 3), University of Bremen, Bremen, 28359, Germany. Department of Mathematics, University of Potsdam, Potsdam, 14476, Germany. Department of Economics, University of Mainz, Mainz, 55099, Germany. Institut de Biología Evolutiva (CSIC-UPF). Departament de Ciències Experimentals i de la Salut. Universitat Pompeu Fabra, Barcelona, 08003, Spain. Institució Catalana de Recerca i Estudis Avançats (ICREA), Barcelona, 08010, Spain. Center for Genomic Regulation (CRG), Barcelona Institute of Science and Technology (BIST), Barcelona, 08003, Spain. Machine Learning Group, Technische Universität Berlin, Berlin, 10587, Germany. Department of Brain and Cognitive Engineering, Korea University, Seoul, Republic of Korea.

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