Processed data for this project
收藏Figshare2024-05-31 更新2026-04-08 收录
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https://figshare.com/articles/dataset/Processed_data_for_this_project/25943893/1
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资源简介:
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 drug response by leveraging the information of the cellular state of the cancer cells derived by the first component. Our cell-state-oriented framework significantly improves drug response prediction accuracy compared to models using SGAs directly in cell lines. Moreover, our model performs well with real patient data. Importantly, our framework enables the prediction of response to chemotherapy agents based on SGAs, thus expanding genome-informed precision oncology beyond molecularly targeted drugs.
提供机构:
Ren, Shuangxia
创建时间:
2024-05-31



