可解释性
药品
药物反应
抗癌药物
机器学习
蓝图
深度学习
医学
计算生物学
临床试验
癌症
生物
生物信息学
计算机科学
药理学
人工智能
内科学
工程类
机械工程
作者
Brent M. Kuenzi,Jisoo Park,Samson Fong,Kyle S. Sanchez,John J. Y. Lee,Jason F. Kreisberg,Jianzhu Ma,Trey Ideker
出处
期刊:Cancer Cell
[Elsevier]
日期:2020-10-22
卷期号:38 (5): 672-684.e6
被引量:341
标识
DOI:10.1016/j.ccell.2020.09.014
摘要
Most drugs entering clinical trials fail, often related to an incomplete understanding of the mechanisms governing drug response. Machine learning techniques hold immense promise for better drug response predictions, but most have not reached clinical practice due to their lack of interpretability and their focus on monotherapies. We address these challenges by developing DrugCell, an interpretable deep learning model of human cancer cells trained on the responses of 1,235 tumor cell lines to 684 drugs. Tumor genotypes induce states in cellular subsystems that are integrated with drug structure to predict response to therapy and, simultaneously, learn biological mechanisms underlying the drug response. DrugCell predictions are accurate in cell lines and also stratify clinical outcomes. Analysis of DrugCell mechanisms leads directly to the design of synergistic drug combinations, which we validate systematically by combinatorial CRISPR, drug-drug screening in vitro, and patient-derived xenografts. DrugCell provides a blueprint for constructing interpretable models for predictive medicine.
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