MTGGF:一种代谢类型感知的分子代谢物预测图生成模型。

IF 3.9 2区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY Interdisciplinary Sciences: Computational Life Sciences Pub Date : 2025-01-06 DOI:10.1007/s12539-024-00681-4
Peng-Cheng Zhao, Xue-Xin Wei, Qiong Wang, Hao-Yang Wang, Bing-Xue Du, Jia-Ning Li, Bei Zhu, Hui Yu, Jian-Yu Shi
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引用次数: 0

摘要

体内代谢将小分子(如药物)转化为代谢物(新分子),这给药物开发带来了意想不到的安全性问题。然而,通过生物分析来确定代谢物是昂贵的。最近的计算方法通过预测可能的代谢物提供了新的有前途的方法。基于规则的方法利用预定义的反应衍生规则来推断代谢物。然而,他们对新的代谢反应模式无能为力。相反,无规则方法利用序列到序列的机器翻译来生成代谢物。然而,它们不足以表征分子结构,并且具有较弱的解释性。为了在无规则方法中解决这些问题,本文提出了一种用于分子代谢物预测的新型代谢类型感知图生成框架(MTGGF)。它包含一个两阶段的学习过程,包括对大型一般化学反应数据集的预训练,以及对三个较小类型特定代谢反应数据集的微调。它的核心是一个精细的图对图生成模型,将原子和键都视为二部顶点,将分子视为二部图,从而可以嵌入丰富的分子结构信息,保证生成的代谢物结构的完整性。与最先进的方法比较表明了它的优越性。此外,消融研究验证了其两个图编码组件及其特定反应类型微调模型的贡献。更重要的是,基于分子与其代谢物之间的相互作用关注,对五种获批药物的案例研究表明,存在针对代谢类型的关键亚结构。预计该框架可以促进药物代谢物的风险评估。代码可在https://github.com/zpczaizheli/Metabolite上获得。
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MTGGF: A Metabolism Type-Aware Graph Generative Model for Molecular Metabolite Prediction.

Metabolism in vivo turns small molecules (e.g., drugs) into metabolites (new molecules), which brings unexpected safety issues in drug development. However, it is costly to determine metabolites by biological assays. Recent computational methods provide new promising approaches by predicting possible metabolites. Rule-based methods utilize predefined reaction-derived rules to infer metabolites. However, they are powerless to new metabolic reaction patterns. In contrast, rule-free methods leverage sequence-to-sequence machine translation to generate metabolites. Nevertheless, they are insufficient to characterize molecule structures, and bear weak interpretability. To address these issues in rule-free methods, this manuscript proposes a novel metabolism type-aware graph generative framework (MTGGF) for molecular metabolite prediction. It contains a two-stage learning process, including a pre-training on a large general chemical reaction dataset, and a fine-tuning on three smaller type-specific metabolic reaction datasets. Its core, an elaborate graph-to-graph generative model, treats both atoms and bonds as bipartite vertices, and molecules as bipartite graphs, such that it can embed rich information of molecule structures and ensure the integrity of generated metabolite structures. The comparison with state-of-the-art methods demonstrates its superiority. Furthermore, the ablation study validates the contributions of its two graph encoding components and its reaction-type-specific fine-tuning models. More importantly, based on interactive attention between a molecule and its metabolites, the case studies on five approved drugs reveal that there exist crucial substructures specific to metabolism types. It is anticipated that this framework can boost the risk evaluation of drug metabolites. The codes are available at https://github.com/zpczaizheli/Metabolite .

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来源期刊
Interdisciplinary Sciences: Computational Life Sciences
Interdisciplinary Sciences: Computational Life Sciences MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
8.60
自引率
4.20%
发文量
55
期刊介绍: Interdisciplinary Sciences--Computational Life Sciences aims to cover the most recent and outstanding developments in interdisciplinary areas of sciences, especially focusing on computational life sciences, an area that is enjoying rapid development at the forefront of scientific research and technology. The journal publishes original papers of significant general interest covering recent research and developments. Articles will be published rapidly by taking full advantage of internet technology for online submission and peer-reviewing of manuscripts, and then by publishing OnlineFirstTM through SpringerLink even before the issue is built or sent to the printer. The editorial board consists of many leading scientists with international reputation, among others, Luc Montagnier (UNESCO, France), Dennis Salahub (University of Calgary, Canada), Weitao Yang (Duke University, USA). Prof. Dongqing Wei at the Shanghai Jiatong University is appointed as the editor-in-chief; he made important contributions in bioinformatics and computational physics and is best known for his ground-breaking works on the theory of ferroelectric liquids. With the help from a team of associate editors and the editorial board, an international journal with sound reputation shall be created.
期刊最新文献
Reinforced Collaborative-Competitive Representation for Biomedical Image Recognition. A Domain Adaptive Interpretable Substructure-Aware Graph Attention Network for Drug-Drug Interaction Prediction. NRGCNMDA: Microbe-Drug Association Prediction Based on Residual Graph Convolutional Networks and Conditional Random Fields. Reconstructing Waddington Landscape from Cell Migration and Proliferation. MTGGF: A Metabolism Type-Aware Graph Generative Model for Molecular Metabolite Prediction.
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