精确肿瘤学
药物反应
组分(热力学)
精密医学
计算生物学
基因组
计算机科学
机器学习
人工智能
代表(政治)
药品
医学
生物
基因
药理学
遗传学
病理
物理
政治
政治学
法学
热力学
作者
Shuangxia Ren,Gregory Cooper,Lujia Chen,Xinghua Lu
标识
DOI:10.1101/2023.07.11.548534
摘要
Cancers result from aberrations in cellular signaling systems, typically resulting from driver somatic genome alterations (SGAs) in individual tumors. Precision oncology requires understanding the cellular state and selecting medications that induce vulnerability in cancer cells under such conditions. To this end, we developed a computational framework consisting of two components: 1) A representation-learning component, which learns a representation of the cellular signaling systems when perturbed by SGAs, using a biologically-motivated and interpretable deep learning model. 2) A drug-response-prediction component, which predicts the response to drugs by leveraging the information of the cellular state of the cancer cells derived by the first component. Our cell-state-oriented framework significantly enhances the accuracy of genome-informed prediction of drug responses in comparison to models that directly use SGAs as inputs. Importantly, our framework enables the prediction of response to chemotherapy agents based on SGAs, thus expanding genome-informed precision oncology beyond molecularly targeted drugs.
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