六种典型的全氟烷基和多氟烷基物质(PFAS)神经毒性机制的新视角:整合网络毒理学和随机森林算法的见解。

IF 1.9 4区 医学 Q3 CHEMISTRY, MULTIDISCIPLINARY
Wei Cheng, Peng Lin, Zhina Yang, Yulu Xie, Di Gao, Min Chen
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引用次数: 0

摘要

全氟烷基和多氟烷基物质(PFAS)广泛应用于各种工业,但对生态和人类健康构成重大风险,特别是对神经系统。然而,潜在的神经毒性机制仍然知之甚少。本研究结合网络毒理学和机器学习来探索这些机制。使用ADMETLAB 3.0,我们评估了六种常见PFAS的环境毒性,并使用在线工具确定了它们的潜在靶点。构建化合物-靶点相互作用网络,通过蛋白-蛋白相互作用(PPI)和KEGG通路分析研究毒理学途径。通过机器学习选择核心靶点,并使用转录组学数据分析差异基因表达。分子对接模拟预测了PFAS与核心靶点之间的结合亲和力,同时使用Gromacs 2023.2和Charmm36力场对关键配合物进行了分子动力学模拟。PFDS的生物浓度因子(BCF)最高,PFOA的毒性最大。我们确定了62个交叉靶点,其中PTGS2、MMP9和ESR1在PPI网络中处于中心位置。转录组学分析揭示了1,077个差异表达基因(DEGs),突出了相关的生物学过程和途径。随机森林模型鉴定出20个核心基因,其中9个在pfas处理组中有显著差异表达。分子对接表明化合物与核心靶点之间存在潜在的相互作用,分子动力学模拟进一步支持了复合物在生理条件下的稳定性。本研究为PFAS的神经毒性机制提供了有价值的见解,增强了我们对其对神经系统影响的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new perspective on the neurotoxic mechanisms of six typical per- and polyfluoroalkyl substances (PFAS): insights from integrating network toxicology and random forest algorithm.

Per- and polyfluoroalkyl substances (PFAS) are widely used in various industries but pose significant ecological and human health risks, particularly to the nervous system. However, the underlying neurotoxic mechanisms remain poorly understood. This study combines network toxicology and machine learning to explore these mechanisms. Using ADMETLAB 3.0, we assessed the environmental toxicity of six common PFAS and identified their potential targets using online tools. A compound-target interaction network was built, followed by protein-protein interaction (PPI) and KEGG pathway analyses to investigate toxicological pathways. Core targets were selected through machine learning, and differential gene expression was analyzed using transcriptomic data. Molecular docking simulations predicted binding affinities between PFAS and their core targets, while molecular dynamics simulations on key complexes were performed using Gromacs 2023.2 and the Charmm36 force field. PFDS showed the highest bioconcentration factors (BCF), while PFOA demonstrated the greatest toxicity. We identified 62 intersecting targets, with PTGS2, MMP9, and ESR1 being central in the PPI network. Transcriptomic analysis revealed 1,077 differentially expressed genes (DEGs), highlighting associated biological processes and pathways. The random forest model identified 20 core genes, with 9 significantly differentially expressed in the PFAS-treated group. Molecular docking suggested potential interactions between the compounds and core targets, and molecular dynamics simulations further supported the stability of the complexes under physiological conditions. This study provides valuable insights into the neurotoxic mechanisms of PFAS, enhancing our understanding of their impact on the nervous system.

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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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