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首页> 外文期刊>Nucleic Acids Research >SpliceNet: recovering splicing isoform-specific differential gene networks from RNA-Seq data of normal and diseased samples
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SpliceNet: recovering splicing isoform-specific differential gene networks from RNA-Seq data of normal and diseased samples

机译:SpliceNet:从正常和患病样品的RNA-Seq数据中恢复剪接异构体特异性差异基因网络

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摘要

Conventionally, overall gene expressions from microarrays are used to infer gene networks, but it is challenging to account splicing isoforms. High-throughput RNA Sequencing has made splice variant profiling practical. However, its true merit in quantifying splicing isoforms and isoform-specific exon expressions is not well explored in inferring gene networks. This study demonstrates SpliceNet, a method to infer isoform-specific co-expression networks from exon-level RNA-Seq data, using large dimensional trace. It goes beyond differentially expressed genes and infers splicing isoform network changes between normal and diseased samples. It eases the sample size bottleneck; evaluations on simulated data and lung cancer-specific ERBB2 and MAPK signaling pathways, with varying number of samples, evince the merit in handling high exon to sample size ratio datasets. Inferred network rewiring of well established Bcl-x and EGFR centered networks from lung adenocarcinoma expression data is in good agreement with literature. Gene level evaluations demonstrate a substantial performance of SpliceNet over canonical correlation analysis, a method that is currently applied to exon level RNA-Seq data. SpliceNet can also be applied to exon array data. SpliceNet is distributed as an R package available at http://www.jjwanglab.org/SpliceNet.
机译:常规上,来自微阵列的整体基因表达被用于推断基因网络,但是考虑剪接同工型具有挑战性。高通量RNA测序已使剪接变体分析成为现实。但是,在推断基因网络中尚未很好地探索其在定量剪接同工型和同工型特异性外显子表达中的真正价值。这项研究演示了SpliceNet,这是一种使用大尺寸踪迹从外显子级RNA-Seq数据推断异构体特异性共表达网络的方法。它超越了差异表达的基因,并推断正常和患病样品之间的剪接异构体网络变化。它减轻了样本量的瓶颈;对模拟数据以及肺癌特异性的ERBB2和MAPK信号通路进行评估,具有不同数量的样本,这显示了处理高外显子与样本量之比数据集的优点。从肺腺癌表达数据推断建立良好的Bcl-x和EGFR中心网络的网络重排与文献非常吻合。基因水平评估证明了SpliceNet在规范相关分析方面的显着性能,该方法目前应用于外显子水平RNA-Seq数据。 SpliceNet也可以应用于外显子阵列数据。 SpliceNet作为R包分发,可从http://www.jjwanglab.org/SpliceNet获得。

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