Deep learning for predicting synergistic drug combinations: State-of-the-arts and future directions

Yu Wang, Junjie Wang, Yun Liu
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Abstract

Combination therapy has emerged as an efficacy strategy for treating complex diseases. Its potential to overcome drug resistance and minimize toxicity makes it highly desirable. However, the vast number of potential drug pairs presents a significant challenge, rendering exhaustive clinical testing impractical. In recent years, deep learning-based methods have emerged as promising tools for predicting synergistic drug combinations. This review aims to provide a comprehensive overview of applying diverse deep-learning architectures for drug combination prediction. This review commences by elucidating the quantitative measures employed to assess drug combination synergy. Subsequently, we delve into the various deep-learning methods currently employed for drug combination prediction. Finally, the review concludes by outlining the key challenges facing deep learning approaches and proposes potential challenges for future research.

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用于预测协同药物组合的深度学习:技术现状与未来方向
联合疗法已成为治疗复杂疾病的有效策略。联合疗法具有克服耐药性和减少毒性的潜力,因此备受青睐。然而,大量潜在的药物配对带来了巨大的挑战,使得详尽的临床测试变得不切实际。近年来,基于深度学习的方法已成为预测协同药物组合的有前途的工具。本综述旨在全面概述将各种深度学习架构应用于药物组合预测的情况。本综述首先阐明了用于评估药物组合协同作用的定量指标。随后,我们深入探讨了目前用于药物组合预测的各种深度学习方法。最后,综述概述了深度学习方法面临的主要挑战,并提出了未来研究的潜在挑战。
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