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首页> 外文期刊>Journal of Chemical Information and Computer Sciences >A Study of Structure-Carcinogenic Potency Relationship with Artificial Neural Networks. The Using of Descriptors Related to Geometrical and Electronic Structures
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A Study of Structure-Carcinogenic Potency Relationship with Artificial Neural Networks. The Using of Descriptors Related to Geometrical and Electronic Structures

机译:与人工神经网络的结构致癌潜能关系研究。与几何和电子结构有关的描述符的使用

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This contribution is an attempt to estimate carcinogenic potency (measured in TD_50 dose) of molecules using artificial neural networks (ANN) with counterpropagation learning strategy. Three kinds of descriptors have been tested: geometrical structures of molecules, which have been described with 3D coordinates of all atoms, geometrical structures in combination with atomic charges, and energy spectra of occupied orbitals, i.e., the electronic structures. Structures or structures plus atomic charges have been represented with "spectrum-like" representation, which is suitable as input for ANN modelling. A set of 45 benzene derivatives was considered in this study. The models were able to recognize structures of training set, and a weak correlation between descriptors and carcinogenic potency was found.
机译:这种贡献是尝试使用具有反向传播学习策略的人工神经网络(ANN)估算分子的致癌能力(以TD_50剂量测量)。已经测试了三种描述符:分子的几何结构(已用所有原子的3D坐标描述),几何结构与原子电荷的组合以及所占据的轨道的能谱,即电子结构。结构或结构加上原子电荷已用“类光谱”表示法表示,适合作为ANN建模的输入。在这项研究中考虑了一组45种苯衍生物。这些模型能够识别训练集的结构,并且发现描述符与致癌力之间的相关性较弱。

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