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Cancer In Silico Drug Discovery: A Systems Biology Tool for Identifying Candidate Drugs to Target Specific Molecular Tumor Subtypes

机译:癌症在计算机医学中的药物发现:一种系统生物学工具,用于识别针对特定分子肿瘤亚型的候选药物

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Large-scale cancer datasets such as The Cancer Genome Atlas (TCGA) allow researchers to profile tumors based on a wide range of clinical and molecular characteristics. Subsequently, TCGA-derived gene expression profiles can be analyzed with the Connectivity Map (CMap) to find candidate drugs to target tumors with specific clinical phenotypes or molecular characteristics. This represents a powerful computational approach for candidate drug identification, but due to the complexity of TCGA and technology differences between CMap and TCGA experiments, such analyses are challenging to conduct and reproduce. We present Cancer in silico Drug Discovery (CiDD; scheet. org/software), a computational drug discovery platform that addresses these challenges. CiDD integrates data from TCGA, CMap, and Cancer Cell Line Encyclopedia (CCLE) to perform computational drug discovery experiments, generating hypotheses for the following three general problems: (i) determining whether specific clinical phenotypes or molecular characteristics are associated with unique gene expression signatures; (ii) finding candidate drugs to repress these expression signatures; and (iii) identifying cell lines that resemble the tumors being studied for subsequent in vitro experiments. The primary input to CiDD is a clinical or molecular characteristic. The output is a biologically annotated list of candidate drugs and a list of cell lines for in vitro experimentation. We applied CiDD to identify candidate drugs to treat colorectal cancers harboring mutations in BRAF. CiDD identified EGFR and proteasome inhibitors, while proposing five cell lines for in vitro testing. CiDD facilitates phenotype-driven, systematic drug discovery based on clinical and molecular data from TCGA. (C) 2014 AACR.
机译:癌症基因组图谱(TCGA)等大规模癌症数据集可让研究人员根据广泛的临床和分子特征对肿瘤进行分析。随后,可以使用连通性图(CMap)分析TCGA衍生的基因表达谱,以找到靶向具有特定临床表型或分子特征的肿瘤的候选药物。这代表了候选药物鉴定的强大计算方法,但是由于TCGA的复杂性以及CMap和TCGA实验之间的技术差异,此类分析难以进行和复制。我们介绍了硅癌药物发现(CiDD; scheet.org/software),这是一个可解决这些挑战的计算药物发现平台。 CiDD整合了来自TCGA,CMap和癌细胞系百科全书(CCLE)的数据,以进行计算性药物发现实验,针对以下三个普遍问题生成了假设:(i)确定特定的临床表型或分子特征是否与独特的基因表达特征相关联; (ii)寻找抑制这些表达特征的候选药物; (iii)鉴定类似于正在研究的肿瘤的细胞系,用于随后的体外实验。 CiDD的主要输入是临床或分子特征。输出是候选药物的生物学注释列表和用于体外实验的细胞系列表。我们应用CiDD来识别治疗BRAF突变的结直肠癌的候选药物。 CiDD鉴定了EGFR和蛋白酶体抑制剂,同时提出了五种细胞系进行体外测试。 CiDD基于TCGA的临床和分子数据,促进了表型驱动的系统药物发现。 (C)2014 AACR。

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