共表达网络揭示了疾病剪接和转录标记的调控。

Pan Zhang, Bruce R Southey, Sandra L Rodriguez-Zas
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引用次数: 4

摘要

基于基因表达数据的基因共表达网络通常用于捕获具有生物学意义的模式,从而能够发现生物标志物并解释调控关系。然而,基因内部和基因间大量剪接变化的协调可以对这些基因的功能产生实质性的影响。这在神经系统特性的研究中尤其有影响力,因为神经系统特性可能被只评估基因表达水平之间相关性的网络所掩盖。开发了一种生物信息学方法来揭示使用RNA-seq谱的选择性剪接和相关转录网络的作用。来自40个样本的数据,包括对照和两种处理,与两个中枢神经系统区域的刺激敏感性相关,可以呈现不同的剪接,进行了探索。将基因表达和相对异构体水平整合到转录组范围的矩阵中,然后使用图形Lasso捕捉基因与异构体之间的相互作用。接下来,功能富集分析能够发现在异构体或基因水平上失调的通路,并解释中枢神经区域内这些相互作用。此外,贝叶斯双聚类策略被用于从基因表达谱中重建治疗特异性网络,允许在特定条件下识别中心分子和可视化高度连接的异构体和基因模块。我们的生物信息学方法可以为广泛疾病和病症的生物标志物和治疗靶点的发现提供类似的见解。
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Co-expression networks uncover regulation of splicing and transcription markers of disease.

Gene co-expression networks based on gene expression data are usually used to capture biologically significant patterns, enabling the discovery of biomarkers and interpretation of regulatory relationships. However, the coordination of numerous splicing changes within and across genes can exert a substantial impact on the function of these genes. This is particularly impactful in studies of the properties of the nervous system, which can be masked in the networks that only assess the correlation between gene expression levels. A bioinformatics approach was developed to uncover the role of alternative splicing and associated transcriptional networks using RNA-seq profiles. Data from 40 samples, including control and two treatments associated with sensitivity to stimuli across two central nervous system regions that can present differential splicing, were explored. The gene expression and relative isoform levels were integrated into a transcriptome-wide matrix, and then Graphical Lasso was applied to capture the interactions between genes and isoforms. Next, functional enrichment analysis enabled the discovery of pathways dysregulated at the isoform or gene levels and the interpretation of these interactions within a central nervous region. In addition, a Bayesian biclustering strategy was used to reconstruct treatment-specific networks from gene expression profile, allowing the identification of hub molecules and visualization of highly connected modules of isoforms and genes in specific conditions. Our bioinformatics approach can offer comparable insights into the discovery of biomarkers and therapeutic targets for a wide range of diseases and conditions.

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Co-expression networks uncover regulation of splicing and transcription markers of disease. Radial Basis Function Collocation for the Chemical Master Equation Gene Regulatory Network Reconstruction Based on Gene Expression and Transcription Factor Activities Network Inference by Considering Multiple Objectives: Insights from In Vivo Transcriptomic Data Generated by a Synthetic Network Error Correction and Clustering Gene Expression Data Using Majority Logic Decoding
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