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Computational Analysis of Transcriptomic and Proteomic Data for Deciphering Molecular Heterogeneity and Drug Responsiveness in Model Human Hepatocellular Carcinoma Cell Lines

机译:转录组和蛋白质组学数据的计算分析用于判别模型人肝癌细胞系中的分子异质性和药物反应性

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摘要

Hepatocellular carcinoma (HCC) is associated with high mortality due to its inherent heterogeneity, aggressiveness, and limited therapeutic regimes. Herein, we analyzed 21 human HCC cell lines (HCC lines) to explore intertumor molecular diversity and pertinent drug sensitivity. We used an integrative computational approach based on exploratory and single-sample gene-set enrichment analysis of transcriptome and proteome data from the Cancer Cell Line Encyclopedia, followed by correlation analysis of drug-screening data from the Cancer Therapeutics Response Portal with curated gene-set enrichment scores. Acquired results classified HCC lines into two groups, a poorly and a well-differentiated group, displaying lower/higher enrichment scores in a “Specifically Upregulated in Liver” gene-set, respectively. Hierarchical clustering based on a published epithelial–mesenchymal transition gene expression signature further supported this stratification. Between-group comparisons of gene and protein expression unveiled distinctive patterns, whereas downstream functional analysis significantly associated differentially expressed genes with crucial cancer-related biological processes/pathways and revealed concrete driver-gene signatures. Finally, correlation analysis highlighted a diverse effectiveness of specific drugs against poorly compared to well-differentiated HCC lines, possibly applicable in clinical research with patients with analogous characteristics. Overall, this study expanded the knowledge on the molecular profiles, differentiation status, and drug responsiveness of HCC lines, and proposes a cost-effective computational approach to precision anti-HCC therapies.
机译:肝细胞癌(HCC)由于其固有的异质性,侵略性和有限的治疗方案而与高死亡率相关。本文中,我们分析了21种人类HCC细胞系(HCC系)以探索肿瘤间分子多样性和相关药物敏感性。我们使用了一种综合计算方法,该方法基于对癌细胞系百科全书的转录组和蛋白质组数据进行探索性和单样本基因组富集分析,然后对来自癌症治疗反应门户网站的药物筛选数据与经过整理的基因组进行相关性分析丰富分数。获得的结果将HCC品系分为两组,即差分化和高分化组,分别在“肝脏中特异性上调”基因组中显示出较低/较高的富集得分。基于已发表的上皮-间质转化基因表达特征的分层聚类进一步支持了这种分层。基因和蛋白质表达的组间比较揭示了独特的模式,而下游功能分析则将差异表达的基因与癌症相关的关键生物学过程/途径显着相关,并揭示了具体的驱动基因特征。最后,相关性分析强调了与高度分化的HCC品系相比,特定药物对较差的HCC品系具有多种功效,可能适用于具有类似特征的患者的临床研究。总体而言,这项研究扩展了有关肝癌细胞株的分子谱,分化状态和药物反应性的知识,并提出了一种经济高效的精确抗HCC治疗方法。

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