通过深度学习识别药物-药物相互作用:一项真实世界的研究。

Journal of pharmaceutical analysis Pub Date : 2025-06-01 Epub Date: 2025-01-08 DOI:10.1016/j.jpha.2025.101194
Jingyang Li, Yanpeng Zhao, Zhenting Wang, Chunyue Lei, Lianlian Wu, Yixin Zhang, Song He, Xiaochen Bo, Jian Xiao
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引用次数: 0

摘要

识别药物-药物相互作用(ddi)对于预防多种药物的不良反应至关重要。尽管深度学习促进了DDI识别,但强大的模型与缺乏临床应用和评估之间的差距阻碍了临床效益。在此,我们开发了一种名为MDFF的多维特征融合模型,该模型集成了一维简化分子输入线输入系统序列特征、二维分子图特征和三维几何特征,以增强药物表征,用于预测ddi。MDFF在两个DDI数据集上进行了训练和验证,在三种不同的情况下进行了评估,并与先进的DDI预测模型进行了比较,包括准确性、精密度、召回率、曲线下面积和F1评分指标。MDFF在所有指标上实现了最先进的性能。消融实验表明,整合多维药物特征可获得最佳效果。更重要的是,我们获得了中南大学湘雅医院在2021 - 2023年上传的药物不良反应报告,并使用MDFF识别潜在的不良ddi。在12份真实世界的药物不良反应报告中,9份报告的预测得到了相关证据的支持。此外,MDFF证明了解释不良DDI机制的能力,提供了对一份具体报告背后机制的见解,并强调了其帮助从业人员改进医疗实践的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identify drug-drug interactions via deep learning: A real world study.

Identifying drug-drug interactions (DDIs) is essential to prevent adverse effects from polypharmacy. Although deep learning has advanced DDI identification, the gap between powerful models and their lack of clinical application and evaluation has hindered clinical benefits. Here, we developed a Multi-Dimensional Feature Fusion model named MDFF, which integrates one-dimensional simplified molecular input line entry system sequence features, two-dimensional molecular graph features, and three-dimensional geometric features to enhance drug representations for predicting DDIs. MDFF was trained and validated on two DDI datasets, evaluated across three distinct scenarios, and compared with advanced DDI prediction models using accuracy, precision, recall, area under the curve, and F1 score metrics. MDFF achieved state-of-the-art performance across all metrics. Ablation experiments showed that integrating multi-dimensional drug features yielded the best results. More importantly, we obtained adverse drug reaction reports uploaded by Xiangya Hospital of Central South University from 2021 to 2023 and used MDFF to identify potential adverse DDIs. Among 12 real-world adverse drug reaction reports, the predictions of 9 reports were supported by relevant evidence. Additionally, MDFF demonstrated the ability to explain adverse DDI mechanisms, providing insights into the mechanisms behind one specific report and highlighting its potential to assist practitioners in improving medical practice.

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