微阵列基因表达分析中组织异质性校正的部分独立成分分析

Y. Wang, Junying Zhang, Javed I. Khan, R. Clarke, Zhiping Gu
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引用次数: 9

摘要

基因微阵列技术为癌症研究中基因表达的大规模分析提供了强有力的工具。临床应用通常旨在促进基于与不同临床阶段或结果相关的歧视性基因的癌症分子分类。然而,由于组织异质性,基因表达谱通常代表多个不同来源的组合,并且可能导致提取反映样品中基质污染比例的特征,而不是潜在的肿瘤生物学。因此,我们希望引入一种计算方法,它允许从混合细胞群体中盲分解基因表达谱。该算法基于线性潜变量模型,其参数使用部分独立成分分析进行估计,并由一组差异表达基因支持。我们在小圆形蓝细胞肿瘤混合细胞系的数据集上展示了该方法的原理。由于精确的源分离可以盲目地和数字地实现,我们预计组织异质性的计算校正将在各种基因微阵列研究中有用。
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Partially-independent component analysis for tissue heterogeneity correction in microarray gene expression analysis
Gene microarray technologies provide powerful tools for the large scale analysis of gene expression in cancer research. Clinical applications often aim to facilitate a molecular classification of cancers based on discriminatory genes associated with different clinical stages or outcomes. However, gene expression profiles often represent a composite of more than one distinct source due to tissue heterogeneity, and could result in extracting signatures reflecting the proportion of stromal contamination in the sample, rather than underlying tumor biology. We therefore wish to introduce a computational approach, which allows for a blind decomposition of gene expression profiles from mixed cell populations. The algorithm is based on a linear latent variable model, whose parameters are estimated using partially-independent component analysis, supported by a subset of differentially-expressed genes. We demonstrate the principle of the approach on the data sets derived from mixed cell lines of small round blue cell tumors. Because accurate source separation can be achieved blindly and numerically, we anticipate that computational correction of tissue heterogeneity would be useful in a wide variety of gene microarray studies.
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