Abstract

Population scale sequencing of whole human genomes is becoming economically feasible; however, data management and analysis remains a formidable challenge for many research groups. Large sequencing studies, like the 1000 Genomes Project, have improved our understanding of human demography and the effect of rare genetic variation in disease. Variant calling on datasets of hundreds or thousands of genomes is time-consuming, expensive, and not easily reproducible given the myriad components of a variant calling pipeline. Here, we describe a cloud-based pipeline for joint variant calling in large samples using the Real Time Genomics population caller. We deployed the population caller on the Amazon cloud with the DNAnexus platform in order to achieve low-cost variant calling. Using our pipeline, we were able to identify 68.3 million variants in 2,535 samples from Phase 3 of the 1000 Genomes Project. By performing the variant calling in a parallel manner, the data was processed within 5 days at a compute cost of $7.33 per sample (a total cost of $18,590 for completed jobs and $21,805 for all jobs). Analysis of cost dependence and running time on the data size suggests that, given near linear scalability, cloud computing can be a cheap and efficient platform for analyzing even larger sequencing studies in the future.

Highlights

  • Whole-genome sequencing of population cohorts will be critical for understanding the contribution of rare genetic variation to health and disease and the demographic history of our species

  • We have developed a scalable cloud-based pipeline for joint variant calling in large samples

  • We found that the transition-transversion ratio for the SNPs we discovered was 2.09, as expected from whole-genome sequencing

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Summary

Introduction

Whole-genome sequencing of population cohorts will be critical for understanding the contribution of rare genetic variation to health and disease and the demographic history of our species. It is possible to sequence genomes of many individuals for association studies and other genomic analyses. Using low-coverage whole-genome sequencing of many individuals from diverse human populations, the 1000 Genomes Project has characterized common variation and a considerable proportion of the rare variation present in human genomes [1, 2]. Variant calling on large genomic datasets is expensive in terms of PLOS ONE | DOI:10.1371/journal.pone.0129277. Variant calling on large genomic datasets is expensive in terms of PLOS ONE | DOI:10.1371/journal.pone.0129277 June 25, 2015

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