Vall Andreu, Sabnis Yogesh, Shi Jiye, Class Reiner, Hochreiter Sepp, Klambauer Günter
LIT AI Lab, Johannes Kepler University Linz, Linz, Austria.
Institute for Machine Learning, Johannes Kepler University Linz, Linz, Austria.
Front Artif Intell. 2021 Apr 14;4:638410. doi: 10.3389/frai.2021.638410. eCollection 2021.
Drug-induced liver injury (DILI) is a common reason for the withdrawal of a drug from the market. Early assessment of DILI risk is an essential part of drug development, but it is rendered challenging prior to clinical trials by the complex factors that give rise to liver damage. Artificial intelligence (AI) approaches, particularly those building on machine learning, range from random forests to more recent techniques such as deep learning, and provide tools that can analyze chemical compounds and accurately predict some of their properties based purely on their structure. This article reviews existing AI approaches to predicting DILI and elaborates on the challenges that arise from the as yet limited availability of data. Future directions are discussed focusing on rich data modalities, such as 3D spheroids, and the slow but steady increase in drugs annotated with DILI risk labels.
药物性肝损伤(DILI)是药物退市的常见原因。DILI风险的早期评估是药物研发的重要组成部分,但在临床试验之前,由于导致肝损伤的复杂因素,使得这一评估具有挑战性。人工智能(AI)方法,特别是基于机器学习的方法,从随机森林到深度学习等最新技术,提供了能够分析化合物并仅根据其结构准确预测其某些特性的工具。本文综述了现有的预测DILI的AI方法,并阐述了由于数据可用性仍然有限而产生的挑战。讨论了未来的方向,重点是丰富的数据模式,如3D球体,以及带有DILI风险标签的药物缓慢但稳步的增加。