HLN-DDI:基于共注意机制的分层分子表示学习用于药物-药物相互作用预测。

IF 3.3 3区 生物学 Q2 BIOCHEMICAL RESEARCH METHODS
Yue Luo, Lei Deng, Zhijian Huang
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引用次数: 0

摘要

背景:准确识别药物-药物相互作用(ddi)在药理学中至关重要,因为ddi可以增强治疗效果,也可以在多种药物同时使用时引发不良反应。识别ddi的传统方法是劳动密集型和耗时的,这促使了计算替代方法的发展。然而,现有的计算方法经常遇到与可解释性相关的挑战,并且难以有效地捕获药物分子中固有的复杂、多层次结构。具体来说,它们往往不能充分分析子结构成分,忽略了分层结构水平之间的相互作用,导致分子表征不完整。结果:在本研究中,我们提出了一个基于分子结构表征的共注意机制的分层学习网络,用于预测ddi,命名为HLN-DDI。提出的方法通过明确编码基序水平结构和在原子水平、基序水平和整个分子尺度上捕获分层分子表示来改进现有的方法。这些分层表示使用共同关注机制集成,并与交互类型信息相结合,以提高预测性能。综合评估表明,HLN-DDI在多个基准数据集上的表现明显优于最先进的方法,在转换场景下的准确率超过98%,在各种评估指标上的准确率超过99%。此外,HLN-DDI预测未见药物ddi的准确率提高了2.75%。对真实世界DDI场景的实际评估进一步验证了我们提出的模型的有效性和实用性。结论:HLN-DDI利用分子分层结构,采用共注意机制有效整合多层次表征,生成全面、精确的药物表征,大大提高了对潜在药物-药物相互作用的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

HLN-DDI: hierarchical molecular representation learning with co-attention mechanism for drug-drug interaction prediction.

HLN-DDI: hierarchical molecular representation learning with co-attention mechanism for drug-drug interaction prediction.

HLN-DDI: hierarchical molecular representation learning with co-attention mechanism for drug-drug interaction prediction.

HLN-DDI: hierarchical molecular representation learning with co-attention mechanism for drug-drug interaction prediction.

Background: Accurate identification of drug-drug interactions (DDIs) is critical in pharmacology, as DDIs can either enhance therapeutic efficacy or trigger adverse reactions when multiple medications are administered concurrently. Traditional methods for identifying DDIs are labor-intensive and time-consuming, prompting the development of computational alternatives. However, existing computational approaches frequently encounter challenges related to interpretability and struggle to effectively capture the complex, multi-level structures inherent in drug molecules. Specifically, they often fail to adequately analyze substructural components and neglect interactions across hierarchical structural levels, resulting in incomplete molecular representations.

Results: In this study, we propose a Hierarchical Learning Network with a co-attention mechanism tailored to molecular structure representation for predicting DDIs, named HLN-DDI. The proposed method advances existing approaches by explicitly encoding motif-level structures and capturing hierarchical molecular representations at atom-level, motif-level, and whole-molecule scales. These hierarchical representations are integrated using a co-attention mechanism and combined with interaction-type information to enhance predictive performance. Comprehensive evaluations demonstrate that HLN-DDI significantly outperforms state-of-the-art methods across multiple benchmark datasets, achieving over 98% accuracy under transductive scenarios and surpassing 99% on various evaluation metrics. Moreover, HLN-DDI achieves a notable accuracy improvement of 2.75% in predicting DDIs involving unseen drugs. Practical assessments with real-world DDI scenarios further validate the efficacy and utility of our proposed model.

Conclusion: By leveraging hierarchical molecular structures and employing a co-attention mechanism to effectively integrate multi-level representations, HLN-DDI generates comprehensive and precise drug representations, leading to substantially improved predictions of potential drug-drug interactions.

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来源期刊
BMC Bioinformatics
BMC Bioinformatics 生物-生化研究方法
CiteScore
5.70
自引率
3.30%
发文量
506
审稿时长
4.3 months
期刊介绍: BMC Bioinformatics is an open access, peer-reviewed journal that considers articles on all aspects of the development, testing and novel application of computational and statistical methods for the modeling and analysis of all kinds of biological data, as well as other areas of computational biology. BMC Bioinformatics is part of the BMC series which publishes subject-specific journals focused on the needs of individual research communities across all areas of biology and medicine. We offer an efficient, fair and friendly peer review service, and are committed to publishing all sound science, provided that there is some advance in knowledge presented by the work.
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