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首页> 外文期刊>Green chemistry >Predictive deep learning models for environmental properties: the direct calculation of octanol-water partition coefficients from molecular graphs
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Predictive deep learning models for environmental properties: the direct calculation of octanol-water partition coefficients from molecular graphs

机译:用于环境特性的预测深度学习模型:分子图中辛醇 - 水分配系数的直接计算

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摘要

As an essential environmental property, the octanol-water partition coefficient (K-OW) quantifies the lipophilicity of a compound and it could be further employed to predict toxicity. Thus, it is an indispensable factor that should be considered for screening and development of green solvents with respect to unconventional and novel compounds. Herein, a deep-learning-assisted predictive model has been developed to accurately and reliably calculate log K-OW values for organic compounds. An embedding algorithm was specifically established for generating signatures automatically for molecular structures to express structural information and connectivity. Afterwards, the Tree-structured long short-term memory (Tree-LSTM) network was used in conjunction with signature descriptors for automatic feature selection, and it was then coupled with the back-propagation neural network to develop a deep neural network (DNN), which is used for modeling quantity structure-property relationship (QSPR) to predict log K-OW. Compared with an authoritative estimation method, the proposed DNN-based QSPR model exhibited better predictive accuracy and greater discriminative power in terms of the structural isomers and stereoisomers. As such, the proposed deep learning approach can act as a promising and intelligent tool for developing environmental property prediction methods for guiding development or screening of green solvents.
机译:作为一种必要的环境性质,辛醇 - 水分配系数(K-OW)量化了化合物的亲脂性,并且可以进一步用于预测毒性。因此,这是一种不可或缺的因素,应该被认为是关于非传统和新化合物的绿色溶剂的筛选和发展。这里,已经开发了深度学习辅助的预测模型,以准确可靠地计算有机化合物的对数k值。专门建立嵌入算法,用于自动为分子结构产生签名以表达结构信息和连接。之后,树结构的长短期内存(树-LSTM)网络与用于自动特征选择的特征描述符结合使用,然后与后传播神经网络耦合以开发深度神经网络(DNN) ,用于建模数量结构 - 属性关系(QSPR)来预测日志k-oW。与权威估计方法相比,所提出的基于DNN的QSPR模型在结构异构体和立体异构体方面表现出更好的预测精度和更大的鉴别力。因此,拟议的深度学习方法可以作为开发环境性预测方法的承诺和智能工具,以指导绿色溶剂的开发或筛选。

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