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首页> 外文期刊>The Journal of toxicological sciences >Artificial neural network analysis for predicting human percutaneous absorption taking account of vehicle properties
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Artificial neural network analysis for predicting human percutaneous absorption taking account of vehicle properties

机译:考虑车辆性能的人工神经网络分析预测人的经皮吸收

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摘要

An in silico method for predicting percutaneous absorption of cosmetic ingredients was developed by using artificial neural network (ANN) analysis to predict the human skin permeability coefficient (log K-p), taking account of the physicochemical properties of the vehicle, and the apparent diffusion coefficient (log D). Molecular weight and octanol-water partition coefficient (log P) of chemicals, and log P of the vehicles, were used as molecular descriptors for predicting log K-p and log D of 359 samples, for which literature values of either or both of log K-p and log D were available. Adaptivity of the ANN model was evaluated in comparison with a multiple linear regression model (MLR) by calculating the root-mean-square (RMS) errors. Accuracy and robustness were confirmed by 10-fold cross-validation. The predictive RMS errors of the ANN model were smaller than those of the MLR model (log K-p; 0.675 vs 0.887, log D; 0.553 vs 0.658), indicating superior performance. The predictive RMS errors for log K-p and log D with the ANN model after 10-fold cross-validation analysis were 0.723 and 0.606, respectively. Moreover, we estimated the cumulative amounts of chemicals permeated into the skin during 24 hr (Q24hr) from the values of log K-p and log D by applying Fick's law of diffusion. Our results suggest that this newly established ANN analysis method, taking account of the property of the vehicle, could contribute to non-animal risk assessment of cosmetic ingredients by providing a tool for calculating Q24hr, which is required for evaluating the margin of safety.
机译:考虑到媒介物的理化性质和表观扩散系数,通过使用人工神经网络(ANN)分析来预测人体皮肤的渗透系数(log Kp),从而开发了一种预测化妆品成分经皮吸收的计算机模拟方法。日志D)。化学品的分子量和辛醇-水分配系数(log P)以及媒介物的log P用作预测359个样品的log Kp和log D的分子描述符,其log Kp和日志D可用。通过计算均方根(RMS)误差,与多元线性回归模型(MLR)进行了比较,评估了ANN模型的适应性。通过10倍交叉验证确认了准确性和鲁棒性。 ANN模型的预测RMS误差小于MLR模型的预测RMS误差(log K-p; 0.675 vs 0.887,log D; 0.553 vs 0.658),表明性能优越。经过10倍交叉验证分析后,ANN模型的log K-p和log D的预测RMS误差分别为0.723和0.606。此外,我们通过应用菲克扩散定律,根据log K-p和log D的值,估算了24小时(Q24hr)内渗透到皮肤中的化学物质的累积量。我们的结果表明,这种新近建立的ANN分析方法,考虑到车辆的特性,可以通过提供一种计算Q24hr的工具来有助于化妆品成分的非动物风险评估,这是评估安全系数所必需的。

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