首页> 美国卫生研究院文献>Frontiers in Neuroscience >Computational deconvolution of genome wide expression data from Parkinsons and Huntingtons disease brain tissues using population-specific expression analysis
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Computational deconvolution of genome wide expression data from Parkinsons and Huntingtons disease brain tissues using population-specific expression analysis

机译:使用人群特异性表达分析对帕金森氏病和亨廷顿氏病脑组织的全基因组表达数据进行计算反卷积

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摘要

The characterization of molecular changes in diseased tissues gives insight into pathophysiological mechanisms and is important for therapeutic development. Genome-wide gene expression analysis has proven valuable for identifying biological processes in neurodegenerative diseases using post mortem human brain tissue and numerous datasets are publically available. However, many studies utilize heterogeneous tissue samples consisting of multiple cell types, all of which contribute to global gene expression values, confounding biological interpretation of the data. In particular, changes in numbers of neuronal and glial cells occurring in neurodegeneration confound transcriptomic analyses, particularly in human brain tissues where sample availability and controls are limited. To identify cell specific gene expression changes in neurodegenerative disease, we have applied our recently published computational deconvolution method, population specific expression analysis (PSEA). PSEA estimates cell-type-specific expression values using reference expression measures, which in the case of brain tissue comprises mRNAs with cell-type-specific expression in neurons, astrocytes, oligodendrocytes and microglia. As an exercise in PSEA implementation and hypothesis development regarding neurodegenerative diseases, we applied PSEA to Parkinson's and Huntington's disease (PD, HD) datasets. Genes identified as differentially expressed in substantia nigra pars compacta neurons by PSEA were validated using external laser capture microdissection data. Network analysis and Annotation Clustering (DAVID) identified molecular processes implicated by differential gene expression in specific cell types. The results of these analyses provided new insights into the implementation of PSEA in brain tissues and additional refinement of molecular signatures in human HD and PD.
机译:患病组织中分子变化的特征可以洞悉病理生理机制,对于治疗的发展很重要。事实证明,全基因组基因表达分析对于使用死后人脑组织识别神经退行性疾病的生物过程具有重要价值,并且有大量数据集可公开获得。然而,许多研究利用由多种细胞类型组成的异质组织样本,所有这些样本都有助于整体基因表达值,从而混淆了数据的生物学解释。特别地,在神经变性中发生的神经元和神经胶质细胞数量的变化混淆了转录组学分析,尤其是在样本可得性和对照受到限制的人脑组织中。为了确定神经退行性疾病中细胞特异性基因表达的变化,我们应用了我们最近发表的计算反卷积方法,即群体特异性表达分析(PSEA)。 PSEA使用参考表达量度估计细胞类型特异性表达值,在脑组织的情况下,PSEA包含在神经元,星形胶质细胞,少突胶质细胞和小胶质细胞中具有细胞类型特异性表达的mRNA。作为PSEA实施和关于神经退行性疾病的假设发展的一项练习,我们将PSEA应用于帕金森氏症和亨廷顿氏病(PD,HD)数据集。使用外部激光捕获显微切割数据验证了通过PSEA在黑质致密部致密部神经元中差异表达的基因。网络分析和注释聚类(DAVID)识别了特定细胞类型中差异基因表达所牵涉的分子过程。这些分析的结果为PSEA在脑组织中的实施以及人类HD和PD中分子标记的进一步完善提供了新见解。

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