Abstract

BackgroundThe detection of rare single nucleotide variants (SNVs) is important for understanding genetic heterogeneity using next-generation sequencing (NGS) data. Various computational algorithms have been proposed to detect variants at the single nucleotide level in mixed samples. Yet, the noise inherent in the biological processes involved in NGS technology necessitates the development of statistically accurate methods to identify true rare variants.ResultsWe propose a Bayesian statistical model and a variational expectation maximization (EM) algorithm to estimate non-reference allele frequency (NRAF) and identify SNVs in heterogeneous cell populations. We demonstrate that our variational EM algorithm has comparable sensitivity and specificity compared with a Markov Chain Monte Carlo (MCMC) sampling inference algorithm, and is more computationally efficient on tests of relatively low coverage (27× and 298×) data. Furthermore, we show that our model with a variational EM inference algorithm has higher specificity than many state-of-the-art algorithms. In an analysis of a directed evolution longitudinal yeast data set, we are able to identify a time-series trend in non-reference allele frequency and detect novel variants that have not yet been reported. Our model also detects the emergence of a beneficial variant earlier than was previously shown, and a pair of concomitant variants.ConclusionsWe developed a variational EM algorithm for a hierarchical Bayesian model to identify rare variants in heterogeneous next-generation sequencing data. Our algorithm is able to identify variants in a broad range of read depths and non-reference allele frequencies with high sensitivity and specificity.

Highlights

  • The detection of rare single nucleotide variants (SNVs) is important for understanding genetic heterogeneity using next-generation sequencing (NGS) data

  • Massively parallel sequencing data generated by nextgeneration sequencing technologies is routinely used to interrogate single nucleotide variants (SNVs) in research samples [1]

  • We show that variational expectation maximization (EM) algorithm has comparable accuracy and efficiency compared with Markov Chain Monte Carlo (MCMC) in a synthetic data set

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Summary

Introduction

The detection of rare single nucleotide variants (SNVs) is important for understanding genetic heterogeneity using next-generation sequencing (NGS) data. Various computational algorithms have been proposed to detect variants at the single nucleotide level in mixed samples. The noise inherent in the biological processes involved in NGS technology necessitates the development of statistically accurate methods to identify true rare variants. Parallel sequencing data generated by nextgeneration sequencing technologies is routinely used to interrogate single nucleotide variants (SNVs) in research samples [1]. Intra-tumor heterogeneity has been revealed by next-generation sequencing [4]. Rare SNV identification in heterogeneous cell populations is challenging, because of the intrinsic error rate of generation sequencing [6]. There is a need for accurate and scalable statistical methods to uncover SNVs in heterogeneous samples

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