计算机科学
膨胀的
药物反应
吞吐量
人工智能
卷积神经网络
一次性
机器学习
药品
计算生物学
生物
药理学
工程类
电信
机械工程
复合材料
材料科学
无线
抗压强度
作者
Jianzhu Ma,Samson Fong,Yunan Luo,Christopher J. Bakkenist,John Paul Shen,Soufiane Mourragui,Lodewyk F.A. Wessels,Marc Hafner,Roded Sharan,Jian Peng,Trey Ideker
出处
期刊:Nature cancer
[Springer Nature]
日期:2021-01-25
卷期号:2 (2): 233-244
被引量:121
标识
DOI:10.1038/s43018-020-00169-2
摘要
Cell-line screens create expansive datasets for learning predictive markers of drug response, but these models do not readily translate to the clinic with its diverse contexts and limited data. In the present study, we apply a recently developed technique, few-shot machine learning, to train a versatile neural network model in cell lines that can be tuned to new contexts using few additional samples. The model quickly adapts when switching among different tissue types and in moving from cell-line models to clinical contexts, including patient-derived tumor cells and patient-derived xenografts. It can also be interpreted to identify the molecular features most important to a drug response, highlighting critical roles for RB1 and SMAD4 in the response to CDK inhibition and RNF8 and CHD4 in the response to ATM inhibition. The few-shot learning framework provides a bridge from the many samples surveyed in high-throughput screens (n-of-many) to the distinctive contexts of individual patients (n-of-one). Ma et al. apply few-shot learning to train a neural network model on cell-line drug-response data, and they subsequently transfer it to distinct biological contexts including different tissues and patient-derived tumor cells and xenografts.
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