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Modeling quantitative structure-property relationships (QSPR) for a set of pesticides or toxicants

Mehdi Alizadeh


In this paper, a quantitative structure–property relationships (QSPR) study based on feed-forward artificial neural network (ANN) with back-propagation learning rule and multiple linear regression (MLR) methods has been carried out to predict the Solubility behavior of pesticides. Accurate description of thewater Solubility of 38 compounds including commonly used insecticides, herbicides and fungicides and some metabolites is successfully achieved. The Stepwise SPSS was used for the selection of the variables that resulted in the best-fitted models.The regression coefficients of prediction for training and test sets for ANN model were 0.997 and 0.992 respectively. The proposed nonlinear QSPR model (ANN) exhibits a high degree of correlation between observed and computed water Solubility and a good predictive performance that supports its application for the prediction of the Solubility behavior of unknown pesticides. A multiple linear regression (MLR) based on the same selected descriptors shows a significantly worse predictive capability.


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索引于

  • 中国社会科学院
  • 谷歌学术
  • 打开 J 门
  • 中国知网(CNKI)
  • 引用因子
  • 宇宙IF
  • 研究期刊索引目录 (DRJI)
  • 秘密搜索引擎实验室
  • ICMJE

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