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Group-based variant calling leveraging next-generation supercomputing for large-scale whole-genome sequencing studies
Authors:Kristopher A Standish  Tristan M Carland  Glenn K Lockwood  Wayne Pfeiffer  Mahidhar Tatineni  C Chris Huang  Sarah Lamberth  Yauheniya Cherkas  Carrie Brodmerkel  Ed Jaeger  Lance Smith  Gunaretnam Rajagopal  Mark E Curran  Nicholas J Schork
Institution:.Biomedical Sciences Graduate Program, University of California, San Diego, Gilman Drive, La Jolla, 92092 CA USA ;.Human Biology, J. Craig Venter Institute, 4120 Capricorn Lane, La Jolla, 92092 CA USA ;.San Diego Supercomputer Center, University of California, San Diego, Gilman Drive, La Jolla, 92092 CA USA ;.Systems Pharmacology & Biomarkers (Immunology), Janssen R&D LLC, Springhouse, PA USA ;.R&D IT, Janssen R&D LLC, Springhouse, PA USA
Abstract:

Motivation

Next-generation sequencing (NGS) technologies have become much more efficient, allowing whole human genomes to be sequenced faster and cheaper than ever before. However, processing the raw sequence reads associated with NGS technologies requires care and sophistication in order to draw compelling inferences about phenotypic consequences of variation in human genomes. It has been shown that different approaches to variant calling from NGS data can lead to different conclusions. Ensuring appropriate accuracy and quality in variant calling can come at a computational cost.

Results

We describe our experience implementing and evaluating a group-based approach to calling variants on large numbers of whole human genomes. We explore the influence of many factors that may impact the accuracy and efficiency of group-based variant calling, including group size, the biogeographical backgrounds of the individuals who have been sequenced, and the computing environment used. We make efficient use of the Gordon supercomputer cluster at the San Diego Supercomputer Center by incorporating job-packing and parallelization considerations into our workflow while calling variants on 437 whole human genomes generated as part of large association study.

Conclusions

We ultimately find that our workflow resulted in high-quality variant calls in a computationally efficient manner. We argue that studies like ours should motivate further investigations combining hardware-oriented advances in computing systems with algorithmic developments to tackle emerging ‘big data’ problems in biomedical research brought on by the expansion of NGS technologies.

Electronic supplementary material

The online version of this article (doi:10.1186/s12859-015-0736-4) contains supplementary material, which is available to authorized users.
Keywords:Variant calling  Supercomputing  Whole-genome sequencing
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