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在药物相互作用预测中通向可解释人工智能的道路:一项系统综述

On the road to explainable AI in drug-drug interactions prediction: A systematic review.

作者信息

Vo Thanh Hoa, Nguyen Ngan Thi Kim, Kha Quang Hien, Le Nguyen Quoc Khanh

机构信息

Master Program in Clinical Genomics and Proteomics, College of Pharmacy, Taipei Medical University, Taipei 110, Taiwan.

School of Nutrition and Health Sciences, College of Nutrition, Taipei Medical University, Taipei 11031, Taiwan.

出版信息

Comput Struct Biotechnol J. 2022 Apr 19;20:2112-2123. doi: 10.1016/j.csbj.2022.04.021. eCollection 2022.

Abstract

Over the past decade, polypharmacy instances have been common in multi-diseases treatment. However, unwanted drug-drug interactions (DDIs) that might cause unexpected adverse drug events (ADEs) in multiple regimens therapy remain a significant issue. Since artificial intelligence (AI) is ubiquitous today, many AI prediction models have been developed to predict DDIs to support clinicians in pharmacotherapy-related decisions. However, even though DDI prediction models have great potential for assisting physicians in polypharmacy decisions, there are still concerns regarding the reliability of AI models due to their black-box nature. Building AI models with explainable mechanisms can augment their transparency to address the above issue. Explainable AI (XAI) promotes safety and clarity by showing how decisions are made in AI models, especially in critical tasks like DDI predictions. In this review, a comprehensive overview of AI-based DDI prediction, including the publicly available source for AI-DDIs studies, the methods used in data manipulation and feature preprocessing, the XAI mechanisms to promote trust of AI, especially for critical tasks as DDIs prediction, the modeling methods, is provided. Limitations and the future directions of XAI in DDIs are also discussed.

摘要

在过去十年中,联合用药情况在多种疾病治疗中很常见。然而,在多种治疗方案中可能导致意外不良药物事件(ADEs)的不良药物相互作用(DDIs)仍然是一个重大问题。由于如今人工智能(AI)无处不在,已经开发了许多AI预测模型来预测药物相互作用,以支持临床医生进行药物治疗相关决策。然而,尽管药物相互作用预测模型在协助医生进行联合用药决策方面具有巨大潜力,但由于其黑箱性质,人们对AI模型的可靠性仍存在担忧。构建具有可解释机制的AI模型可以提高其透明度,以解决上述问题。可解释人工智能(XAI)通过展示AI模型如何做出决策来提高安全性和清晰度,特别是在药物相互作用预测等关键任务中。在本综述中,全面概述了基于AI的药物相互作用预测,包括AI药物相互作用研究的公开可用资源、数据处理和特征预处理中使用的方法、促进对AI信任的XAI机制,特别是对于药物相互作用预测等关键任务的建模方法。还讨论了XAI在药物相互作用方面的局限性和未来方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a192/9092071/3877b3b30ea5/ga1.jpg

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