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化学生物信息学和机器学习方法评估富勒烯衍生物的水生毒性特征。

Cheminformatics and Machine Learning Approaches to Assess Aquatic Toxicity Profiles of Fullerene Derivatives.

机构信息

Laboratory for Chemoinformatics, Theory Department, National Institute of Chemistry, Hajdrihova 19, 1001 Ljubljana, Slovenia.

Department of Coatings and Polymeric Materials, North Dakota State University, NDSU Dept 2510, P.O. Box 6050, Fargo, ND 58108, USA.

出版信息

Int J Mol Sci. 2023 Sep 15;24(18):14160. doi: 10.3390/ijms241814160.

Abstract

Fullerene derivatives (FDs) are widely used in nanomaterials production, the pharmaceutical industry and biomedicine. In the present study, we focused on the potential toxic effects of FDs on the aquatic environment. First, we analyzed the binding affinity of 169 FDs to 10 human proteins (1D6U, 1E3K, 1GOS, 1GS4, 1H82, 1OG5, 1UOM, 2F9Q, 2J0D, 3ERT) obtained from the Protein Data Bank (PDB) and showing high similarity to proteins from aquatic species. Then, the binding activity of 169 FDs to the enzyme acetylcholinesterase (AChE)-as a known target of toxins in fathead minnows and , causing the inhibition of AChE-was analyzed. Finally, the structural aquatic toxicity alerts obtained from ToxAlert were used to confirm the possible mechanism of action. Machine learning and cheminformatics tools were used to analyze the data. Counter-propagation artificial neural network (CPANN) models were used to determine key binding properties of FDs to proteins associated with aquatic toxicity. Predicting the binding affinity of unknown FDs using quantitative structure-activity relationship (QSAR) models eliminates the need for complex and time-consuming calculations. The results of the study show which structural features of FDs have the greatest impact on aquatic organisms and help prioritize FDs and make manufacturing decisions.

摘要

富勒烯衍生物 (FDs) 在纳米材料生产、制药工业和生物医学中得到了广泛的应用。在本研究中,我们专注于 FDs 对水生环境的潜在毒性影响。首先,我们分析了 169 种 FDs 与人的 10 种蛋白质(1D6U、1E3K、1GOS、1GS4、1H82、1OG5、1UOM、2F9Q、2J0D、3ERT)的结合亲和力,这些蛋白质来自蛋白质数据库 (PDB),与水生物种的蛋白质具有高度相似性。然后,分析了 169 种 FDs 对酶乙酰胆碱酯酶 (AChE)的结合活性-作为食蚊鱼和斑马鱼等鱼类中毒素的已知靶标,导致 AChE 抑制。最后,使用 ToxAlert 获得的结构水生毒性警报来确认可能的作用机制。机器学习和化学信息学工具用于分析数据。使用对抗传播人工神经网络 (CPANN) 模型来确定与水生毒性相关的蛋白质与 FDs 的关键结合特性。使用定量构效关系 (QSAR) 模型预测未知 FDs 的结合亲和力消除了复杂且耗时的计算的需要。研究结果表明,FDs 的哪些结构特征对水生生物有最大的影响,并有助于确定 FDs 的优先级并做出制造决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/06d2/10531479/946315776842/ijms-24-14160-g001.jpg

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