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首页> 外文期刊>Food and Chemical Toxicology: An International Journal Published for the British Industrial Biological Research >Applications of in silico methods to analyze the toxicity and estrogen receptor-mediated properties of plant-derived phytochemicals
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Applications of in silico methods to analyze the toxicity and estrogen receptor-mediated properties of plant-derived phytochemicals

机译:在硅化方法中的应用分析植物衍生植物化学的毒性和雌激素受体介导性能

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摘要

A myriad of phytochemicals may have potential to lead toxicity and endocrine disruption effects by interfering with nuclear hormone receptors. In this examination, the toxicity and estrogen receptor - binding abilities of a set of 2826 phytochemicals were evaluated. The endpoints mutagenicity, carcinogenicity (both CAESAR and ISS models), developmental toxicity, skin sensitization and estrogen receptor relative binding affinity (ER_RBA) were studied using the VEGA QSAR modeling package. Alongside the predictions, models were providing possible information for applicability domains and most similar compounds as similarity sets from their training sets. This information was subjected to perform the clustering and classification of chemicals using Self - Organizing Maps. The identified clusters and their respective indicators were considered as potential hotspot structures for the specified data set analysis. Molecular screening interpretations of models were exhibited accurate predictions. Moreover, the indication sets were defined significant clusters and cluster indicators with probable prediction labels (precision). Accordingly, developed QSAR models showed good predictive abilities and robustness, which observed from applicability domains, representation spaces, clustering and classification schemes. Furthermore, the designed new path could be useful as a valuable approach to determine toxicity levels of phytochemicals and other environmental pollutants and protect the human health.
机译:通过干扰核激素受体,无数的植物化学物质可能具有潜在的患有毒性和内分泌破坏效应。在该检查中,评估了一组2826植物化学物质的毒性和雌激素受体结合能力。使用VEGA QSAR建模包来研究终点致突变性,致癌性(凯撒和ISS模型),发育毒性,皮肤致敏和雌激素受体相对结合亲和力(ER_RBA)。除了预测方案,模型正在为来自其训练集的相似性集合提供适用性域和最相似的化合物的可能信息。这些信息遭到使用自组织地图进行化学品的聚类和分类。所识别的群集及其各自的指标被认为是指定数据集分析的潜在热点结构。模型的分子筛选解释表现出准确的预测。此外,指示集是具有可能预测标签(精度)的显着簇和集群指示器。因此,开发的QSAR模型显示出良好的预测能力和鲁棒性,从适用性域,表示空间,聚类和分类方案观察。此外,设计的新路径可用作测定植物化学和其他环境污染物和保护人体健康的毒性水平的有价值的方法。

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