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首页> 外文期刊>Russian Chemical Bulletin >Prediction of solubility of some statin drugs in supercritical carbon dioxide using classification and regression tree analysis and adaptive neuro-fuzzy inference systems
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Prediction of solubility of some statin drugs in supercritical carbon dioxide using classification and regression tree analysis and adaptive neuro-fuzzy inference systems

机译:使用分类和回归树分析及自适应神经模糊推理系统预测一些他汀类药物在超临界二氧化碳中的溶解性

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摘要

A quantitative structure-solubility relationship was developed to predict the solubility of some statin drugs in supercritical carbon dioxide (SC-CO2). The solubility of lovastatin, simvastatin, atorvastatin, rosuvastatin, and flovastatin in SC-CO2 at 225 different states of temperature and pressure were predicted. Classification and regression tree (CART) was successfully used as a descriptor selection method. Three descriptors (pressure, temperature, and molecular weight) were selected and used as inputs for adaptive neuro-fuzzy inference system (ANFIS). The root mean square errors for the calibration, prediction, and validation sets were 0.09, 0.14, and 0.11, respectively. In comparison with other methods, CART-ANFIS is a powerful model for prediction of solubilities of these statins in SC-CO2.
机译:开发了定量结构 - 溶解度关系以预测一些他汀类药物在超临界二氧化碳(SC-CO2)中的溶解度。 预测了洛伐他汀,辛伐他汀,阿托伐他汀,罗苏伐他汀和血红素抑素在SC-CO2中的溶解度,在225个不同的温度和压力状态下进行SC-CO2。 分类和回归树(推车)被成功用作描述符选择方法。 选择三个描述夹(压力,温度和分子量)并用作适应性神经模糊推理系统(ANFIS)的输入。 校准,预测和验证集的根均方误差分别为0.09,0.14和0.11。 与其他方法相比,Cart-Anfis是一种强大的模型,用于预测这些他汀类药物在SC-CO2中的溶解度。

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