Abstract

BackgroundThe decreasing costs of sequencing are driving the need for cost effective and real time variant calling of whole genome sequencing data. The scale of these projects are far beyond the capacity of typical computing resources available with most research labs. Other infrastructures like the cloud AWS environment and supercomputers also have limitations due to which large scale joint variant calling becomes infeasible, and infrastructure specific variant calling strategies either fail to scale up to large datasets or abandon joint calling strategies.ResultsWe present a high throughput framework including multiple variant callers for single nucleotide variant (SNV) calling, which leverages hybrid computing infrastructure consisting of cloud AWS, supercomputers and local high performance computing infrastructures. We present a novel binning approach for large scale joint variant calling and imputation which can scale up to over 10,000 samples while producing SNV callsets with high sensitivity and specificity. As a proof of principle, we present results of analysis on Cohorts for Heart And Aging Research in Genomic Epidemiology (CHARGE) WGS freeze 3 dataset in which joint calling, imputation and phasing of over 5300 whole genome samples was produced in under 6 weeks using four state-of-the-art callers. The callers used were SNPTools, GATK-HaplotypeCaller, GATK-UnifiedGenotyper and GotCloud. We used Amazon AWS, a 4000-core in-house cluster at Baylor College of Medicine, IBM power PC Blue BioU at Rice and Rhea at Oak Ridge National Laboratory (ORNL) for the computation. AWS was used for joint calling of 180 TB of BAM files, and ORNL and Rice supercomputers were used for the imputation and phasing step. All other steps were carried out on the local compute cluster. The entire operation used 5.2 million core hours and only transferred a total of 6 TB of data across the platforms.ConclusionsEven with increasing sizes of whole genome datasets, ensemble joint calling of SNVs for low coverage data can be accomplished in a scalable, cost effective and fast manner by using heterogeneous computing platforms without compromising on the quality of variants.Electronic supplementary materialThe online version of this article (doi:10.1186/s12859-016-1211-6) contains supplementary material, which is available to authorized users.

Highlights

  • The decreasing costs of sequencing are driving the need for cost effective and real time variant calling of whole genome sequencing data

  • As a proof of principle, we present performance metrics of single nucleotide variant (SNV) calling on the Cohorts for Heart and Aging Research in Genomic Epidemiology whole genome sequenced (WGS) freeze 3 dataset (CHARGES-F3) [4] using three different computational environments

  • We demonstrated the feasibility of using a hybrid computational paradigm in processing large-scale genomic datasets by applying this to the CHARGE WGS data consisting of 5297 samples (Methods and Additional file 1)

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Summary

Introduction

The decreasing costs of sequencing are driving the need for cost effective and real time variant calling of whole genome sequencing data. The scale of these projects are far beyond the capacity of typical computing resources available with most research labs. Consensus strategies on ensemble calling of low coverage sequencing data in the 1000Genomes project [1] has produced variants with high sensitivity and low false discovery rate (FDR). Imputation strategies have been shown to improve the variant discovery power of variant calling pipelines analyzing low coverage data [11, 13].

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