Integrative genomic analyses for identification and prioritization of long non-coding RNAs associated with autism.

Genetic studies have identified many risk loci for autism spectrum disorder (ASD) although causal factors in the majority of cases are still unknown. Currently, known ASD risk genes are all protein-coding genes; however, the vast majority of transcripts in humans are non-coding RNAs (ncRNAs) which d...

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Main Authors: Brian L Gudenas, Anand K Srivastava, Liangjiang Wang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0178532
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author Brian L Gudenas
Anand K Srivastava
Liangjiang Wang
author_facet Brian L Gudenas
Anand K Srivastava
Liangjiang Wang
author_sort Brian L Gudenas
collection DOAJ
description Genetic studies have identified many risk loci for autism spectrum disorder (ASD) although causal factors in the majority of cases are still unknown. Currently, known ASD risk genes are all protein-coding genes; however, the vast majority of transcripts in humans are non-coding RNAs (ncRNAs) which do not encode proteins. Recently, long non-coding RNAs (lncRNAs) were shown to be highly expressed in the human brain and crucial for normal brain development. We have constructed a computational pipeline for the integration of various genomic datasets to identify lncRNAs associated with ASD. This pipeline utilizes differential gene expression patterns in affected tissues in conjunction with gene co-expression networks in tissue-matched non-affected samples. We analyzed RNA-seq data from the cortical brain tissues from ASD cases and controls to identify lncRNAs differentially expressed in ASD. We derived a gene co-expression network from an independent human brain developmental transcriptome and detected a convergence of the differentially expressed lncRNAs and known ASD risk genes into specific co-expression modules. Co-expression network analysis facilitates the discovery of associations between previously uncharacterized lncRNAs with known ASD risk genes, affected molecular pathways and at-risk developmental time points. In addition, we show that some of these lncRNAs have a high degree of overlap with major CNVs detected in ASD genetic studies. By utilizing this integrative approach comprised of differential expression analysis in affected tissues and connectivity metrics from a developmental co-expression network, we have prioritized a set of candidate ASD-associated lncRNAs. The identification of lncRNAs as novel ASD susceptibility genes could help explain the genetic pathogenesis of ASD.
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spelling doaj.art-83ce51f21bc445b2b7095add7e2552412022-12-21T19:54:08ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01125e017853210.1371/journal.pone.0178532Integrative genomic analyses for identification and prioritization of long non-coding RNAs associated with autism.Brian L GudenasAnand K SrivastavaLiangjiang WangGenetic studies have identified many risk loci for autism spectrum disorder (ASD) although causal factors in the majority of cases are still unknown. Currently, known ASD risk genes are all protein-coding genes; however, the vast majority of transcripts in humans are non-coding RNAs (ncRNAs) which do not encode proteins. Recently, long non-coding RNAs (lncRNAs) were shown to be highly expressed in the human brain and crucial for normal brain development. We have constructed a computational pipeline for the integration of various genomic datasets to identify lncRNAs associated with ASD. This pipeline utilizes differential gene expression patterns in affected tissues in conjunction with gene co-expression networks in tissue-matched non-affected samples. We analyzed RNA-seq data from the cortical brain tissues from ASD cases and controls to identify lncRNAs differentially expressed in ASD. We derived a gene co-expression network from an independent human brain developmental transcriptome and detected a convergence of the differentially expressed lncRNAs and known ASD risk genes into specific co-expression modules. Co-expression network analysis facilitates the discovery of associations between previously uncharacterized lncRNAs with known ASD risk genes, affected molecular pathways and at-risk developmental time points. In addition, we show that some of these lncRNAs have a high degree of overlap with major CNVs detected in ASD genetic studies. By utilizing this integrative approach comprised of differential expression analysis in affected tissues and connectivity metrics from a developmental co-expression network, we have prioritized a set of candidate ASD-associated lncRNAs. The identification of lncRNAs as novel ASD susceptibility genes could help explain the genetic pathogenesis of ASD.https://doi.org/10.1371/journal.pone.0178532
spellingShingle Brian L Gudenas
Anand K Srivastava
Liangjiang Wang
Integrative genomic analyses for identification and prioritization of long non-coding RNAs associated with autism.
PLoS ONE
title Integrative genomic analyses for identification and prioritization of long non-coding RNAs associated with autism.
title_full Integrative genomic analyses for identification and prioritization of long non-coding RNAs associated with autism.
title_fullStr Integrative genomic analyses for identification and prioritization of long non-coding RNAs associated with autism.
title_full_unstemmed Integrative genomic analyses for identification and prioritization of long non-coding RNAs associated with autism.
title_short Integrative genomic analyses for identification and prioritization of long non-coding RNAs associated with autism.
title_sort integrative genomic analyses for identification and prioritization of long non coding rnas associated with autism
url https://doi.org/10.1371/journal.pone.0178532
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