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用于雄激素受体配体分类的决策树与支持向量机

Decision trees versus support vector machine for classification of androgen receptor ligands.

作者信息

Panaye A, Doucet J P, Devillers J, Marchand-Geneste N, Porcher J M

机构信息

ITODYS, Université Paris 7 Denis Diderot, UMR7086 CNRS, Paris, France.

出版信息

SAR QSAR Environ Res. 2008 Jan-Mar;19(1-2):129-51. doi: 10.1080/10629360701843441.

DOI:10.1080/10629360701843441
PMID:18311640
Abstract

With the current concern of limiting experimental assays, increased interest now focuses on in silico models able to predict toxicity of chemicals. Endocrine disruptors cover a large number of environmental and industrial chemicals which may affect the functions of natural hormones in humans and wildlife. Structure-activity models are now increasingly used for predicting the endocrine disruption potential of chemicals. In this study, a large set of about 200 chemicals covering a broad range of structural classes was considered in order to categorize their relative binding affinity (RBA) to the androgen receptor. Classification of chemicals into four activity groups, with respect to their log RBA value, was carried out in a cascade of recursive partitioning trees, with descriptors calculated from CODESSA software and encoding topological, geometrical and quantum chemical properties. The hydrophobicity parameter (log P), Balaban index, and descriptors relying on charge distribution (maximum partial charge, nucleophilic index on oxygen atoms, charged surface area, etc.) appear to play a major role in the chemical partitioning. Separation of strongly active compounds was rather straightforward. Similarly, about 90% of the inactive compounds were identified. More intricate was the separation of active compounds into subsets of moderate and weak binders, the task requiring a more complex tree. A comparison was made with support vector machine yielding similar results.

摘要

鉴于目前对限制实验分析的关注,现在人们越来越关注能够预测化学物质毒性的计算机模型。内分泌干扰物涵盖大量环境和工业化学物质,可能影响人类和野生动物体内天然激素的功能。结构-活性模型现在越来越多地用于预测化学物质的内分泌干扰潜力。在本研究中,考虑了一大组约200种涵盖广泛结构类别的化学物质,以对它们与雄激素受体的相对结合亲和力(RBA)进行分类。根据它们的log RBA值,将化学物质分为四个活性组,这是在一系列递归划分树中进行的,描述符由CODESSA软件计算得出,并编码拓扑、几何和量子化学性质。疏水性参数(log P)、巴拉班指数以及依赖电荷分布的描述符(最大部分电荷、氧原子上的亲核指数、带电表面积等)似乎在化学划分中起主要作用。强活性化合物的分离相当直接。同样,约90%的无活性化合物被识别出来。将活性化合物分为中度和弱结合剂子集的分离更为复杂,这项任务需要更复杂的树。与支持向量机进行了比较,结果相似。

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