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A QSAR Study of Environmental Estrogens Based on a Novel Variable Selection Method

机译:基于新型变量选择方法的环境雌激素的QSAR研究

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摘要

A large number of descriptors were employed to characterize the molecular structure of 53 natural, synthetic, and environmental chemicals which are suspected of disrupting endocrine functions by mimicking or antagonizing natural hormones and may thus pose a serious threat to the health of humans and wildlife. In this work, a robust quantitative structure-activity relationship (QSAR) model with a novel variable selection method has been proposed for the effective estrogens. The variable selection method is based on variable interaction (VSMVI) with leave-multiple-out cross validation (LMOCV) to select the best subset. During variable selection, model construction and assessment, the Organization for Economic Co-operation and Development (OECD) principles for regulation of QSAR acceptability were fully considered, such as using an unambiguous multiple-linear regression (MLR) algorithm to build the model, using several validation methods to assessment the performance of the model, giving the define of applicability domain and analyzing the outliers with the results of molecular docking. The performance of the QSAR model indicates that the VSMVI is an effective, feasible and practical tool for rapid screening of the best subset from large molecular descriptors.
机译:大量描述符用于表征53种天然,合成和环境化学物质的分子结构,这些化学物质被怀疑通过模仿或拮抗天然激素来破坏内分泌功能,因此可能对人类和野生动植物的健康构成严重威胁。在这项工作中,针对有效雌激素,提出了一种具有新颖变量选择方法的鲁棒定量结构-活性关系(QSAR)模型。变量选择方法基于变量交互(VSMVI)和多选多出交叉验证(LMOCV)以选择最佳子集。在变量选择,模型构建和评估过程中,充分考虑了经济合作与发展组织(OECD)调节QSAR可接受性的原则,例如使用明确的多元线性回归(MLR)算法构建模型,评估模型性能的几种验证方法,给出适用性域的定义,并通过分子对接的结果分析异常值。 QSAR模型的性能表明,VSMVI是一种有效,可行和实用的工具,用于从大分子描述符中快速筛选最佳子集。

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    《Molecules》 |2012年第5期|共20页
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  • 中图分类 有机化学;
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