Cell Type Specific Analysis of Human Brain Transcriptome Data to Predict Alterations in Cellular Composition.

Xiaoxiao Xu, Arye Nehorai, Joseph Dougherty
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引用次数: 21

Abstract

The central nervous system (CNS) is composed of hundreds of distinct cell types, each expressing different subsets of genes from the genome. High throughput gene expression analysis of the CNS from patients and controls is a common method to screen for potentially pathological molecular mechanisms of psychiatric disease. One mechanism by which gene expression might be seen to vary across samples would be alterations in the cellular composition of the tissue. While the expressions of gene 'markers' for each cell type can provide certain information of cellularity, for many rare cell types markers are not well characterized. Moreover, if only small sets of markers are known, any substantial variation of a marker's expression pattern due to experiment conditions would result in poor sensitivity and specificity. Here, our proposed method combines prior information from mice cell-specific transcriptome profiling experiments with co-expression network analysis, to select large sets of potential cell type-specific gene markers in a systematic and unbiased manner. The method is efficient and robust, and identifies sufficient markers for further cellularity analysis. We then employ the markers to analytically detect changing cellular composition in human brain. Application of our method to temporal human brain microarray data successfully detects changes in cellularity over time that roughly correspond to known epochs of human brain development. Furthermore, application of our method to human brain samples with the neurodevelopmental disorder of autism supports the interpretation that the changes in astrocytes and neurons might contribute to the disorder.

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人脑转录组数据预测细胞组成变化的细胞类型特异性分析。
中枢神经系统(CNS)由数百种不同类型的细胞组成,每种细胞都表达来自基因组的不同基因亚群。对患者和对照组的中枢神经系统进行高通量基因表达分析是筛选精神疾病潜在病理分子机制的常用方法。基因表达可能在不同样本中发生变化的一种机制是组织细胞组成的改变。虽然每种细胞类型的基因“标记”的表达可以提供一定的细胞结构信息,但对于许多罕见的细胞类型标记并没有很好地表征。此外,如果只知道一小组标记,则由于实验条件导致标记表达模式的任何实质性变化都会导致灵敏度和特异性较差。在这里,我们提出的方法将来自小鼠细胞特异性转录组分析实验的先验信息与共表达网络分析相结合,以系统和公正的方式选择大量潜在的细胞类型特异性基因标记。该方法高效、可靠,可识别足够的标记,为进一步的细胞分析提供依据。然后,我们使用这些标记物来分析检测人脑中不断变化的细胞组成。将我们的方法应用于人脑微阵列数据,成功地检测到细胞数量随时间的变化,这些变化大致对应于人脑发育的已知时期。此外,将我们的方法应用于患有自闭症神经发育障碍的人脑样本,支持了星形胶质细胞和神经元的变化可能导致该障碍的解释。
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