开发基于 GNN 的人工智能模型,用袋装法预测线粒体毒性。

IF 1.8 4区 医学 Q4 TOXICOLOGY
Yoshinobu Igarashi, Ryosuke Kojima, Shigeyuki Matsumoto, Hiroaki Iwata, Yasushi Okuno, Hiroshi Yamada
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引用次数: 0

摘要

线粒体毒性与包括肝毒性在内的各种毒性的发生有关。因此,线粒体毒性已成为药物开发早期发现阶段的一个主要筛选因素。目前已开发出几种基于化学结构预测线粒体毒性的模型。然而,这些模型只提供了阳性或阴性的二元分类结果,并没有提供有助于做出阳性决定的子结构。因此,我们开发了一种人工智能(AI)模型来预测线粒体毒性并可视化结构警报。为了构建该模型,我们使用了开源软件库 kMoL,它采用了图神经网络方法,可以从化学结构数据中学习。我们还使用了集成梯度法,该方法可实现有助于产生积极结果的子结构的可视化。用于构建人工智能模型的数据集表现出明显的不平衡,负面数据明显多于正面数据。为解决这一问题,我们采用了袋集方法,从而建立了一个具有较高预测性能的模型,F1 分数为 0.839。该模型还可用于使用综合梯度法直观显示导致线粒体毒性的亚结构。我们的人工智能模型可根据化学结构预测线粒体毒性,有助于在药物发现的早期阶段筛选线粒体毒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a GNN-based AI model to predict mitochondrial toxicity using the bagging method.

Mitochondrial toxicity has been implicated in the development of various toxicities, including hepatotoxicity. Therefore, mitochondrial toxicity has become a major screening factor in the early discovery phase of drug development. Several models have been developed to predict mitochondrial toxicity based on chemical structures. However, they only provide a binary classification of positive or negative results and do not provide the substructures that contribute to a positive decision. Therefore, we developed an artificial intelligence (AI) model to predict mitochondrial toxicity and visualize structural alerts. To construct the model, we used the open-source software library kMoL, which employs a graph neural network approach that allows learning from chemical structure data. We also utilized the integrated gradient method, which enables the visualization of substructures that contribute to positive results. The dataset used to construct the AI model exhibited a significant imbalance, with significantly more negative than positive data. To address this, we employed the bagging method, which resulted in a model with high predictive performance, as evidenced by an F1 score of 0.839. This model can also be used to visualize substructures that contribute to mitochondrial toxicity using the integrated gradient method. Our AI model predicts mitochondrial toxicity based on chemical structures and may contribute to screening mitochondrial toxicity in the early stages of drug discovery.

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来源期刊
CiteScore
3.20
自引率
5.00%
发文量
53
审稿时长
4-8 weeks
期刊介绍: The Journal of Toxicological Sciences (J. Toxicol. Sci.) is a scientific journal that publishes research about the mechanisms and significance of the toxicity of substances, such as drugs, food additives, food contaminants and environmental pollutants. Papers on the toxicities and effects of extracts and mixtures containing unidentified compounds cannot be accepted as a general rule.
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