构建预测肝毒性的解释性模型:栀子中潜在肝毒性成分的案例研究。

IF 2.1 4区 医学 Q3 CHEMISTRY, MULTIDISCIPLINARY Drug and Chemical Toxicology Pub Date : 2025-01-01 Epub Date: 2024-06-28 DOI:10.1080/01480545.2024.2364905
Qi Yang, Lili Fan, Erwei Hao, Xiaotao Hou, Jiagang Deng, Zhengcai Du, Zhongshang Xia
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引用次数: 0

摘要

众所周知,药物的肝毒性会严重影响其临床应用。许多药物尽管疗效显著,但由于存在严重的肝毒性,临床应用受到严重限制。为此,研究人员创建了多个基于机器学习的肝毒性预测模型,用于药物发现和开发。研究人员旨在预测药物的潜在肝毒性,以提高药物的实用性。然而,目前的肝毒性预测模型往往存在未经验证的问题,而且无法捕捉到预测的肝毒性化合物的详细毒理学结构。我们以栀子的 56 种化学成分为例,通过文献回顾、主成分分析(PCA)和结构比较等方法验证了训练有素的肝毒性预测模型。最终,我们成功建立了一个具有强大预测性能的模型,并进行了直观验证。有趣的是,我们发现所预测的栀子花肝毒性化学成分同时具有毒性和治疗作用,而这些作用可能与剂量有关。这一发现大大有助于我们了解药物诱导肝毒性的双重性质。
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Construction of an explanatory model for predicting hepatotoxicity: a case study of the potentially hepatotoxic components of Gardenia jasminoides.

It is well-known that the hepatotoxicity of drugs can significantly influence their clinical use. Despite their effective therapeutic efficacy, many drugs are severely limited in clinical applications due to significant hepatotoxicity. In response, researchers have created several machine learning-based hepatotoxicity prediction models for use in drug discovery and development. Researchers aim to predict the potential hepatotoxicity of drugs to enhance their utility. However, current hepatotoxicity prediction models often suffer from being unverified, and they fail to capture the detailed toxicological structures of predicted hepatotoxic compounds. Using the 56 chemical constituents of Gardenia jasminoides as examples, we validated the trained hepatotoxicity prediction model through literature reviews, principal component analysis (PCA), and structural comparison methods. Ultimately, we successfully developed a model with strong predictive performance and conducted visual validation. Interestingly, we discovered that the predicted hepatotoxic chemical constituents of Gardenia possess both toxic and therapeutic effects, which are likely dose-dependent. This discovery greatly contributes to our understanding of the dual nature of drug-induced hepatotoxicity.

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来源期刊
Drug and Chemical Toxicology
Drug and Chemical Toxicology 医学-毒理学
CiteScore
6.00
自引率
3.80%
发文量
99
审稿时长
3 months
期刊介绍: Drug and Chemical Toxicology publishes full-length research papers, review articles and short communications that encompass a broad spectrum of toxicological data surrounding risk assessment and harmful exposure. Manuscripts are considered according to their relevance to the journal. Topics include both descriptive and mechanics research that illustrates the risk assessment implications of exposure to toxic agents. Examples of suitable topics include toxicological studies, which are structural examinations on the effects of dose, metabolism, and statistical or mechanism-based approaches to risk assessment. New findings and methods, along with safety evaluations, are also acceptable. Special issues may be reserved to publish symposium summaries, reviews in toxicology, and overviews of the practical interpretation and application of toxicological data.
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