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Prediction of chemical toxicity to Tetrahymena pyriformis with four-descriptor models

机译:用四个描述仪模型预测化学毒性对四晶患者的化学毒性

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A quantitative structure-toxicity relationship (QSTR) model based on four descriptors was successfully developed for 1163 chemical toxicants against Tetrahymena pyriformis by applying general regression neural network (GRNN). The training set consisting of 600 organic compounds was used to train GRNN models that were evaluated with the test set of 563 compounds. For the optimal GRNN model, the training set possesses the coefficient of determination R-2 of 0.86 and root mean square (rms) error of 0.41, and the test set has R-2 of 0.80 and rms of 0.41. Investigated results indicate that the optimal GRNN model is accurate, although the GRNN model has only four descriptor and more samples in the test set.
机译:通过应用一般回归神经网络(GRNN)成功开发了基于四个描述符的基于四个描述符的定量结构毒性关系(QSTR)模型,对抗Tetrahymena Pyriformis。由600种有机化合物组成的训练集用于培训用563个化合物的试验组评价的GRNN模型。对于最佳GRNN模型,训练集具有0.86的判定系数R-2和0.41的根均线(RMS)误差,并且测试组的R-2为0.80和RM为0.41。研究结果表明,最佳GRNN模型是准确的,尽管GRNN模型仅具有四个描述符和测试集中的更多样本。

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