Predicting functional alternative splicing by measuring RNA selection pressure from multigenome alignments.

High-throughput methods such as EST sequencing, microarrays and deep sequencing have identified large numbers of alternative splicing (AS) events, but studies have shown that only a subset of these may be functional. Here we report a sensitive bioinformatics approach that identifies exons with evide...

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Main Authors: Hongchao Lu, Lan Lin, Seiko Sato, Yi Xing, Christopher J Lee
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2009-12-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC2784930?pdf=render
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spelling doaj-e727d573ec25497c9bc81c1ca87187542020-11-25T01:44:26ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582009-12-01512e100060810.1371/journal.pcbi.1000608Predicting functional alternative splicing by measuring RNA selection pressure from multigenome alignments.Hongchao LuLan LinSeiko SatoYi XingChristopher J LeeHigh-throughput methods such as EST sequencing, microarrays and deep sequencing have identified large numbers of alternative splicing (AS) events, but studies have shown that only a subset of these may be functional. Here we report a sensitive bioinformatics approach that identifies exons with evidence of a strong RNA selection pressure ratio (RSPR)--i.e., evolutionary selection against mutations that change only the mRNA sequence while leaving the protein sequence unchanged--measured across an entire evolutionary family, which greatly amplifies its predictive power. Using the UCSC 28 vertebrate genome alignment, this approach correctly predicted half to three-quarters of AS exons that are known binding targets of the NOVA splicing regulatory factor, and predicted 345 strongly selected alternative splicing events in human, and 262 in mouse. These predictions were strongly validated by several experimental criteria of functional AS such as independent detection of the same AS event in other species, reading frame-preservation, and experimental evidence of tissue-specific regulation: 75% (15/20) of a sample of high-RSPR exons displayed tissue specific regulation in a panel of ten tissues, vs. only 20% (4/20) among a sample of low-RSPR exons. These data suggest that RSPR can identify exons with functionally important splicing regulation, and provides biologists with a dataset of over 600 such exons. We present several case studies, including both well-studied examples (GRIN1) and novel examples (EXOC7). These data also show that RSPR strongly outperforms other approaches such as standard sequence conservation (which fails to distinguish amino acid selection pressure from RNA selection pressure), or pairwise genome comparison (which lacks adequate statistical power for predicting individual exons).http://europepmc.org/articles/PMC2784930?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Hongchao Lu
Lan Lin
Seiko Sato
Yi Xing
Christopher J Lee
spellingShingle Hongchao Lu
Lan Lin
Seiko Sato
Yi Xing
Christopher J Lee
Predicting functional alternative splicing by measuring RNA selection pressure from multigenome alignments.
PLoS Computational Biology
author_facet Hongchao Lu
Lan Lin
Seiko Sato
Yi Xing
Christopher J Lee
author_sort Hongchao Lu
title Predicting functional alternative splicing by measuring RNA selection pressure from multigenome alignments.
title_short Predicting functional alternative splicing by measuring RNA selection pressure from multigenome alignments.
title_full Predicting functional alternative splicing by measuring RNA selection pressure from multigenome alignments.
title_fullStr Predicting functional alternative splicing by measuring RNA selection pressure from multigenome alignments.
title_full_unstemmed Predicting functional alternative splicing by measuring RNA selection pressure from multigenome alignments.
title_sort predicting functional alternative splicing by measuring rna selection pressure from multigenome alignments.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2009-12-01
description High-throughput methods such as EST sequencing, microarrays and deep sequencing have identified large numbers of alternative splicing (AS) events, but studies have shown that only a subset of these may be functional. Here we report a sensitive bioinformatics approach that identifies exons with evidence of a strong RNA selection pressure ratio (RSPR)--i.e., evolutionary selection against mutations that change only the mRNA sequence while leaving the protein sequence unchanged--measured across an entire evolutionary family, which greatly amplifies its predictive power. Using the UCSC 28 vertebrate genome alignment, this approach correctly predicted half to three-quarters of AS exons that are known binding targets of the NOVA splicing regulatory factor, and predicted 345 strongly selected alternative splicing events in human, and 262 in mouse. These predictions were strongly validated by several experimental criteria of functional AS such as independent detection of the same AS event in other species, reading frame-preservation, and experimental evidence of tissue-specific regulation: 75% (15/20) of a sample of high-RSPR exons displayed tissue specific regulation in a panel of ten tissues, vs. only 20% (4/20) among a sample of low-RSPR exons. These data suggest that RSPR can identify exons with functionally important splicing regulation, and provides biologists with a dataset of over 600 such exons. We present several case studies, including both well-studied examples (GRIN1) and novel examples (EXOC7). These data also show that RSPR strongly outperforms other approaches such as standard sequence conservation (which fails to distinguish amino acid selection pressure from RNA selection pressure), or pairwise genome comparison (which lacks adequate statistical power for predicting individual exons).
url http://europepmc.org/articles/PMC2784930?pdf=render
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