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从癌症基因组特征和化合物化学及治疗特性推断癌细胞对药物的反应。

Inferences of drug responses in cancer cells from cancer genomic features and compound chemical and therapeutic properties.

机构信息

Key Laboratory of Adaptation and Evolution of Plateau Biota, Northwest Institute of Plateau Biology, Chinese Academy of Sciences, Xining, 810001 China.

Biometric Research Branch, Division of Cancer Treatment and Diagnosis, National Cancer Institute, Rockville, MD 20850, USA.

出版信息

Sci Rep. 2016 Sep 20;6:32679. doi: 10.1038/srep32679.

Abstract

Accurately predicting the response of a cancer patient to a therapeutic agent is a core goal of precision medicine. Existing approaches were mainly relied primarily on genomic alterations in cancer cells that have been treated with different drugs. Here we focus on predicting drug response based on integration of the heterogeneously pharmacogenomics data from both cell and drug sides. Through a systematical approach, named as PDRCC (Predict Drug Response in Cancer Cells), the cancer genomic alterations and compound chemical and therapeutic properties were incorporated to determine the chemotherapeutic response in cancer patients. Using the Cancer Cell Line Encyclopedia (CCLE) study as the benchmark dataset, all pharmacogenomics data exhibited their roles in inferring the relationships between cancer cells and drugs. When integrating both genomic resources and compound information, the prediction coverage was significantly increased. The validity of PDRCC was also supported by its effective in uncovering the unknown cell-drug associations with database and literature evidences. It set the stage for clinical testing of novel therapeutic strategies, such as the sensitive association between cancer cell 'A549_LUNG' and compound 'Topotecan'. In conclusion, PDRCC offers the possibility for faster, safer, and cheaper the development of novel anti-cancer therapeutics in the early-stage clinical trails.

摘要

准确预测癌症患者对治疗药物的反应是精准医学的核心目标。现有的方法主要依赖于已用不同药物治疗的癌细胞中的基因组改变。在这里,我们专注于基于从细胞和药物两方面整合异质药物基因组学数据来预测药物反应。通过一种名为 PDRCC(Predict Drug Response in Cancer Cells)的系统方法,将癌症基因组改变和化合物的化学和治疗特性纳入其中,以确定癌症患者的化疗反应。使用癌症细胞系百科全书(CCLE)研究作为基准数据集,所有药物基因组学数据都展示了它们在推断癌细胞和药物之间关系中的作用。当整合基因组资源和化合物信息时,预测覆盖范围显著增加。PDRCC 的有效性还得到了其有效揭示未知细胞-药物关联的数据库和文献证据的支持。它为临床测试新型治疗策略奠定了基础,例如癌症细胞“A549_LUNG”和化合物“拓扑替康”之间的敏感关联。总之,PDRCC 为在早期临床试验中更快、更安全、更经济地开发新型抗癌疗法提供了可能性。

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