RNA-Seq Alignment to Individualized Genomes Improves Transcript Abundance Estimates in Multiparent Populations
Author(s) -
Steven C. Munger,
Narayanan Raghupathy,
Kwangbom Choi,
Allen K. Simons,
Daniel M. Gatti,
Douglas Hinerfeld,
Karen L. Svenson,
Mark P. Keller,
Alan Attie,
Matthew Hibbs,
Joel H. Graber,
Elissa J. Chesler,
Gary A. Churchill
Publication year - 2014
Publication title -
genetics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.792
H-Index - 246
eISSN - 1943-2631
pISSN - 0016-6731
DOI - 10.1534/genetics.114.165886
Subject(s) - biology , genome , computational biology , reference genome , genetics , rna seq , transcriptome , alignment free sequence analysis , de novo transcriptome assembly , sequence alignment , gene , gene expression , peptide sequence
Massively parallel RNA sequencing (RNA-seq) has yielded a wealth of new insights into transcriptional regulation. A first step in the analysis of RNA-seq data is the alignment of short sequence reads to a common reference genome or transcriptome. Genetic variants that distinguish individual genomes from the reference sequence can cause reads to be misaligned, resulting in biased estimates of transcript abundance. Fine-tuning of read alignment algorithms does not correct this problem. We have developed Seqnature software to construct individualized diploid genomes and transcriptomes for multiparent populations and have implemented a complete analysis pipeline that incorporates other existing software tools. We demonstrate in simulated and real data sets that alignment to individualized transcriptomes increases read mapping accuracy, improves estimation of transcript abundance, and enables the direct estimation of allele-specific expression. Moreover, when applied to expression QTL mapping we find that our individualized alignment strategy corrects false-positive linkage signals and unmasks hidden associations. We recommend the use of individualized diploid genomes over reference sequence alignment for all applications of high-throughput sequencing technology in genetically diverse populations.
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