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In-silico drug screening and potential target identification for hepatocellular carcinoma using Support Vector Machines based on drug screening result

机译:基于药物筛选结果的支持向量机对肝细胞癌的计算机内药物筛选和潜在靶标识别

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Hepatocellular carcinoma (HCC) is a severe liver malignancy with few drug treatment options. In finding an effective treatment for HCC, screening drugs that are already FDA-approved will fast track the clinical trial and drug approval process. Connectivity Map (CMap), a large repository of chemical-induced gene expression profiles, provides the opportunity to analyze drug properties on the basis of gene expression. Support Vector Machines (SVM) were utilized to classify the effectiveness of drugs against HCC using gene expression profiles in CMap. The results of this classification will help us (1) identify genes that are chemically sensitive, and (2) predict the effectiveness of remaining chemicals in CMap in the treatment of HCC and provide a prioritized list of possible HCC drugs for biological verification. Four HCC cell lines were treated with 146 distinct chemicals, and cell viability was examined. SVM successfully classified the effectiveness of the chemicals with an average Area Under ROC Curve (AUROC) of 0.9. Using reported HCC patient samples, we identified chemically sensitive genes that may be possible HCC therapeutic targets, including MT1E, MYC, and GADD45B. Using SVM, several known HCC inhibitors, such as geldanamycin, alvespimycin (HSP90 inhibitors), and doxorubicin (chemotherapy drug), were predicted. Seven out of the 23 predicted drugs were cardiac glycosides, suggesting a link between this drug category and HCC inhibition. The study demonstrates a strategy of in silico drug screening with SVM using a large repository of microarrays based on initial in vitro drug screening. Verifying these results biologically would help develop a more accurate chemical sensitivity model. ? 2012 Elsevier B.V.
机译:肝细胞癌(HCC)是一种严重的肝恶性肿瘤,几乎没有药物治疗选择。为了找到有效的HCC治疗方法,对已经获得FDA批准的药物进行筛查将快速跟踪临床试验和药物批准过程。连接图(CMap)是化学诱导的基因表达谱的大型存储库,可提供基于基因表达分析药物特性的机会。支持向量机(SVM)被用于使用CMap中的基因表达谱对药物对抗HCC的有效性进行分类。这种分类的结果将有助于我们(1)识别化学敏感的基因,以及(2)预测CMap中剩余化学物质在治疗HCC中的有效性,并提供可能的HCC药物优先列表以进行生物学验证。四种HCC细胞系用146种不同的化学物质处理,并检查了细胞活力。 SVM成功地将化学品的有效性分类为ROC曲线下平均面积(AUROC)为0.9。使用已报告的HCC患者样本,我们确定了可能是HCC治疗靶点的化学敏感基因,包括MT1E,MYC和GADD45B。使用SVM,可以预测几种已知的HCC抑制剂,例如格尔德霉素,阿维斯霉素(HSP90抑制剂)和阿霉素(化疗药物)。 23种预测药物中有7种是强心苷,表明该药物类别与HCC抑制之间存在联系。该研究表明了一种基于初始体外药物筛选的,使用大型微阵列存储库的SVM进行计算机药物筛选的策略。从生物学角度验证这些结果将有助于建立更准确的化学敏感性模型。 ? 2012年Elsevier B.V.

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