Identification of signaling pathways related to drug efficacy in hepatocellular carcinoma via integration of phosphoproteomic, genomic and clinical data.

Ioannis N Melas, Douglas A Lauffenburger, Leonidas G Alexopoulos
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引用次数: 5

Abstract

Hepatocellular Carcinoma (HCC) is one of the leading causes of death worldwide, with only a handful of treatments effective in unresectable HCC. Most of the clinical trials for HCC using new generation interventions (drug-targeted therapies) have poor efficacy whereas just a few of them show some promising clinical outcomes [1]. This is amongst the first studies where the mode of action of some of the compounds extensively used in clinical trials is interrogated on the phosphoproteomic level, in an attempt to build predictive models for clinical efficacy. Signaling data are combined with previously published gene expression and clinical data within a consistent framework that identifies drug effects on the phosphoproteomic level and translates them to the gene expression level. The interrogated drugs are then correlated with genes differentially expressed in normal versus tumor tissue, and genes predictive of patient survival. Although the number of clinical trial results considered is small, our approach shows potential for discerning signaling activities that may help predict drug efficacy for HCC.

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通过整合磷蛋白组学、基因组学和临床数据,鉴定与肝细胞癌药物疗效相关的信号通路。
肝细胞癌(HCC)是世界范围内死亡的主要原因之一,只有少数治疗方法对不可切除的HCC有效。大多数采用新一代干预措施(药物靶向治疗)治疗HCC的临床试验疗效不佳,只有少数临床试验显示出一些有希望的结果[1]。这是第一批在磷蛋白组学水平上对临床试验中广泛使用的一些化合物的作用模式进行研究的研究之一,试图建立临床疗效的预测模型。信号数据与先前发表的基因表达和临床数据相结合,在一致的框架内确定药物对磷蛋白组水平的影响,并将其转化为基因表达水平。然后,被询问的药物与正常组织与肿瘤组织中差异表达的基因以及预测患者生存的基因相关。尽管考虑的临床试验结果数量很少,但我们的方法显示了识别信号活动的潜力,可能有助于预测HCC的药物疗效。
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