MARSY: a multitask deep-learning framework for prediction of drug combination synergy scores

Python(编程语言) 机器学习 计算机科学 人工智能 多任务学习 深度学习 药品 编码器 药物重新定位 任务(项目管理) 医学 药理学 操作系统 经济 管理
作者
Mohamed Reda El Khili,Safyan Aman Memon,Amin Emad
出处
期刊:Bioinformatics [Oxford University Press]
卷期号:39 (4) 被引量:15
标识
DOI:10.1093/bioinformatics/btad177
摘要

Abstract Motivation Combination therapies have emerged as a treatment strategy for cancers to reduce the probability of drug resistance and to improve outcomes. Large databases curating the results of many drug screening studies on preclinical cancer cell lines have been developed, capturing the synergistic and antagonistic effects of combination of drugs in different cell lines. However, due to the high cost of drug screening experiments and the sheer size of possible drug combinations, these databases are quite sparse. This necessitates the development of transductive computational models to accurately impute these missing values. Results Here, we developed MARSY, a deep-learning multitask model that incorporates information on the gene expression profile of cancer cell lines, as well as the differential expression signature induced by each drug to predict drug-pair synergy scores. By utilizing two encoders to capture the interplay between the drug pairs, as well as the drug pairs and cell lines, and by adding auxiliary tasks in the predictor, MARSY learns latent embeddings that improve the prediction performance compared to state-of-the-art and traditional machine-learning models. Using MARSY, we then predicted the synergy scores of 133 722 new drug-pair cell line combinations, which we have made available to the community as part of this study. Moreover, we validated various insights obtained from these novel predictions using independent studies, confirming the ability of MARSY in making accurate novel predictions. Availability and implementation An implementation of the algorithms in Python and cleaned input datasets are provided in https://github.com/Emad-COMBINE-lab/MARSY.

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