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Identifying module biomarkers of hepatocellular carcinoma from gene expression data

机译:从基因表达数据鉴定肝细胞癌模块生物标志物

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Identifying effective cancer biomarkers is crucial in precision medicine. Based on the high-throughput available omics data such as microarray, this paper aims to identify potential biomarker genes for hepatocellular carcinoma by bioinformatics and machine learning. We describe the gene coexpressions with network model and detect out the genes that are closely related to liver cancer infected by hepatitis virus. We cluster these genes by the network topology and then evaluate their classification performance of distinguishing controls from disease samples by support vector machine classification. The functional enrichments of the gene group are also implemented and analyzed. These genes with good classification power and dysfunctional implications are identified as candidate biomarkers for hepatocellular carcinoma.
机译:在精密医学中,鉴定有效的癌症生物标志物至关重要。基于微芯片等高通量的组学数据,本文旨在通过生物信息学和机器学习来鉴定肝细胞癌的潜在生物标记基因。我们用网络模型描述基因的共表达,并检测出与肝炎病毒感染的肝癌密切相关的基因。我们通过网络拓扑对这些基因进行聚类,然后通过支持向量机分类来评估将其与疾病样品区分开来的对照的分类性能。基因组的功能富集也得以实施和分析。这些具有良好分类能力和功能障碍意义的基因被鉴定为肝细胞癌的候选生物标志物。

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