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Prediction of Skin Penetration Using Machine Learning Methods

机译:采用机器学习方法预测皮肤渗透

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Improving predictions of the skin permeability coefficient is a difficult problem. It is also an important issue with the increasing use of skin patches as a means of drug delivery. In this work, we apply K-nearest-neighbour regression, single layer networks, mixture of experts and Gaussian processes to predict the permeability coefficient. We obtain a considerable improvement over the quantitative structure-activity relationship (QSARs) predictors. We show that using five features, which are molecular weight, solubility parameter, lipophilicity, the number of hydrogen bonding acceptor and donor groups, can produce better predictions than the one using only lipophilicity and the molecular weight. The Gaussian process regression with five compound features gives the best performance in this work.
机译:改善皮肤渗透性系数的预测是一个难题。对于越来越多的皮肤贴片作为药物递送手段,这也是一个重要问题。在这项工作中,我们应用K-Interfight-Neard回归,单层网络,专家混合和高斯过程,以预测渗透系数。我们通过定量结构 - 活动关系(QSAR)预测因子获得了相当大的改进。我们表明,使用分子量,溶解度参数,亲脂性,氢键受体和供体组的数量的五个特征可以产生比仅使用亲脂性和分子量的更好的预测。具有五种复合功能的高斯过程回归在这项工作中提供了最佳性能。

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