Gheorghita Flaviu-Ioan, Bocanet Vlad-Ioan, Iantovics Laszlo Barna
Doctoral School of Letters, Humanities and Applied Sciences, George Emil Palade University of Medicine, Pharmacy, Science, and Technology of Târgu Mureş, Târgu Mureş, Romania.
Department of Manufacturing Engineering, Technical University of Cluj-Napoca, Cluj-Napoca, Romania.
Front Pharmacol. 2025 Jul 30;16:1632775. doi: 10.3389/fphar.2025.1632775. eCollection 2025.
BACKGROUND/OBJECTIVES: New computational methods, based on statistical, machine learning, and deep learning techniques using drug-related entities (e.g., genes, protein bindings, etc.), help reduce the costs of experiments through drug-drug interaction prediction (DDIp). This review examines recent advances in DDIp. It presents an in-depth review of the state-of-the-art studies relating to semi-supervised, supervised, self-supervised learning, and other techniques such as graph-based learning and matrix factorization methods for predicting DDIs. All possible interactions between drugs are not known, and accurately predicting interactions is even more difficult due to the complex nature of drug-drug interactions (DDI).
Of the 49 papers published in Web of Science in the last 6 years, 24 papers were considered relevant based on information presented in their titles and abstracts. The included articles focus specifically on predicting DDIs using a type of machine learning algorithm. Excluded articles focused on drug discovery, drug repurposing, molecular representation, or the extraction of biomedical interactions. The methodology, results limitations, and future research directions were studied for each paper. Common challenges, limitations, and future research directions were analyzed.
The main limitations are class imbalance, poor performance on new drugs, limited explainability, and the need for additional data sources.
背景/目的:基于统计、机器学习和深度学习技术并使用与药物相关实体(如基因、蛋白质结合等)的新计算方法,有助于通过药物相互作用预测(DDIp)降低实验成本。本综述考察了DDIp方面的最新进展。它深入回顾了与半监督、监督、自监督学习以及其他诸如基于图的学习和矩阵分解方法等用于预测药物相互作用的技术相关的前沿研究。药物之间的所有可能相互作用并不为人所知,而且由于药物相互作用(DDI)的复杂性,准确预测相互作用更加困难。
在过去6年发表于《科学引文索引》的49篇论文中,根据标题和摘要中呈现的信息,24篇论文被认为具有相关性。纳入的文章专门聚焦于使用一种机器学习算法预测药物相互作用。排除的文章聚焦于药物发现、药物再利用、分子表征或生物医学相互作用的提取。对每篇论文的方法、结果局限性和未来研究方向进行了研究。分析了常见的挑战、局限性和未来研究方向。
主要局限性包括类别不平衡、对新药表现不佳、可解释性有限以及需要额外的数据源。