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基于深度学习的图正则化矩阵分解的细胞药物敏感性从头预测。

De novo Prediction of Cell-Drug Sensitivities Using Deep Learning-based Graph Regularized Matrix Factorization.

机构信息

Intelligent Systems Program, Pittsburgh, PA, USA.

出版信息

Pac Symp Biocomput. 2022;27:278-289.

Abstract

Application of artificial intelligence (AI) in precision oncology typically involves predicting whether the cancer cells of a patient (previously unseen by AI models) will respond to any of a set of existing anticancer drugs, based on responses of previous training cell samples to those drugs. To expand the repertoire of anticancer drugs, AI has also been used to repurpose drugs that have not been tested in an anticancer setting, i.e., predicting the anticancer effects of a new drug on previously unseen cancer cells de novo. Here, we report a computational model that addresses both of the above tasks in a unified AI framework. Our model, referred to as deep learning-based graph regularized matrix factorization (DeepGRMF), integrates neural networks, graph models, and matrix-factorization techniques to utilize diverse information from drug chemical structures, their impact on cellular signaling systems, and cancer cell cellular states to predict cell response to drugs. DeepGRMF learns embeddings of drugs so that drugs sharing similar structures and mechanisms of action (MOAs) are closely related in the embedding space. Similarly, DeepGRMF also learns representation embeddings of cells such that cells sharing similar cellular states and drug responses are closely related. Evaluation of DeepGRMF and competing models on Genomics of Drug Sensitivity in Cancer (GDSC) and Cancer Cell Line Encyclopedia (CCLE) datasets show its superiority in prediction performance. Finally, we show that the model is capable of predicting effectiveness of a chemotherapy regimen on patient outcomes for the lung cancer patients in The Cancer Genome Atlas (TCGA) dataset*.

摘要

人工智能(AI)在精准肿瘤学中的应用通常涉及根据先前未见过的患者癌细胞对一组现有抗癌药物的反应,预测这些细胞对这些药物的反应。为了扩大抗癌药物的种类,人工智能还被用于重新利用尚未在抗癌环境中测试过的药物,即预测新药对以前未见的癌细胞的抗癌效果。在这里,我们报告了一个在统一的人工智能框架中解决上述两个任务的计算模型。我们的模型称为基于深度学习的图正则化矩阵分解(DeepGRMF),它集成了神经网络、图模型和矩阵分解技术,以利用药物化学结构、对细胞信号系统的影响以及癌细胞状态的多样性信息,来预测细胞对药物的反应。DeepGRMF 学习药物的嵌入,使得具有相似结构和作用机制(MOA)的药物在嵌入空间中紧密相关。同样,DeepGRMF 还学习细胞的表示嵌入,使得具有相似细胞状态和药物反应的细胞紧密相关。在基因组药物敏感性癌症(GDSC)和癌症细胞系百科全书(CCLE)数据集上对 DeepGRMF 和竞争模型的评估表明,它在预测性能方面具有优越性。最后,我们表明该模型能够预测化疗方案对癌症基因组图谱(TCGA)数据集*中肺癌患者的疗效。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4fd8/8691529/08f9a93f9cda/nihms-1760617-f0001.jpg

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