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Author Notes:

Address for Correspondence: Yi-Juan Hu, Ph.D., Department of Biostatistics and Bioinformatics, Emory University, 1518 Clifton Rd NE, Atlanta, Georgia 30322, Phone: (404) 712-4466, Fax: (404) 727-1370, yijuan.hu@emory.edu

This study makes use of data generated by the UK10K Consortium, derived from samples from the Severe Childhood Onset Obesity Project (SCOOP).

A full list of the investigators who contributed to the generation of the data is available from www.UK10K.org.

The findings and conclusions in this report are those of the authors and do not necessarily represent the official position of the Centers for Disease Control and Prevention.

Subjects:

Research Funding:

Funding for UK10K was provided by the Wellcome Trust under award WT091310.

This research was supported in part by the University Research Committee (URC) Award at Emory and the National Institute of General Medical Sciences of the National Institutes of Health under Award Number R01GM116065-01A1.

Keywords:

  • Science & Technology
  • Life Sciences & Biomedicine
  • Genetics & Heredity
  • Mathematical & Computational Biology
  • common variant
  • EM algorithm
  • rare variant
  • read data
  • MAXIMUM-LIKELIHOOD
  • QUALITY SCORES
  • ASSOCIATION
  • ACCURACY
  • FRAMEWORK
  • DISCOVERY

PhredEM: a phred-score-informed genotype-calling approach for next-generation sequencing studies

Tools:

Journal Title:

Genetic Epidemiology

Volume:

Volume 41, Number 5

Publisher:

, Pages 375-387

Type of Work:

Article | Post-print: After Peer Review

Abstract:

A fundamental challenge in analyzing next-generation sequencing (NGS) data is to determine an individual's genotype accurately, as the accuracy of the inferred genotype is essential to downstream analyses. Correctly estimating the base-calling error rate is critical to accurate genotype calls. Phred scores that accompany each call can be used to decide which calls are reliable. Some genotype callers, such as GATK and SAMtools, directly calculate the base-calling error rates from phred scores or recalibrated base quality scores. Others, such as SeqEM, estimate error rates from the read data without using any quality scores. It is also a common quality control procedure to filter out reads with low phred scores. However, choosing an appropriate phred score threshold is problematic as a too high threshold may lose data, while a too low threshold may introduce errors. We propose a new likelihood-based genotype-calling approach that exploits all reads and estimates the per-base error rates by incorporating phred scores through a logistic regression model. The approach, which we call PhredEM, uses the expectation–maximization (EM) algorithm to obtain consistent estimates of genotype frequencies and logistic regression parameters. It also includes a simple, computationally efficient screening algorithm to identify loci that are estimated to be monomorphic, so that only loci estimated to be nonmonomorphic require application of the EM algorithm. Like GATK, PhredEM can be used together with a linkage-disequilibrium-based method such as Beagle, which can further improve genotype calling as a refinement step. We evaluate the performance of PhredEM using both simulated data and real sequencing data from the UK10K project and the 1000 Genomes project. The results demonstrate that PhredEM performs better than either GATK or SeqEM, and that PhredEM is an improved, robust, and widely applicable genotype-calling approach for NGS studies. The relevant software is freely available.

Copyright information:

© 2017 WILEY PERIODICALS, INC

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