...
首页> 外文期刊>Journal of Scientific Research and Reports >Determination of Dermal PermeabilityCoefficient (Kp) by Utilizing MultipleDescriptors in Artificial Neural NetworkAnalysis and Multiple Regression Analysis
【24h】

Determination of Dermal PermeabilityCoefficient (Kp) by Utilizing MultipleDescriptors in Artificial Neural NetworkAnalysis and Multiple Regression Analysis

机译:利用人工神经网络分析和多元回归分析中的多个描述符确定皮肤渗透系数(Kp)

获取原文
           

摘要

Aims: The permeability coefficient, or Kp, is an important descriptor for assessing dermal absorption of medicaments utilized for clinical treatment of various dermal accessible diseases. Determination of Kp by multiple descriptors by artificial neural network (ANN) and multiple regression is compared. Study Design: The calculation of Kp utilizing multiple descriptors, and comparison of ANN and multiple regression is achieved.Place and Duration of Study: Durham Science Center, Chemistry Department of the University of Nebraska, between April 2014 and July 2014.Methodology: The calculation of Kp by previous methodologies is accomplished for a broad spectrum of medicinal and chemical compounds. The values Kp thus acquired are then compared to those obtained by ANN training and multiple regression analysis. Various other pharmaceutical based descriptors are then applied to ascertain the benefit of Kp determination by those properties. Results: Training and determination of Kp by ANN showed that Log Ko/w and molecular weight (MW) utilized by conventional means is effective. However, ANN demonstrated the Kp determination by applying properties of Log Ko/w, MW, polar surface area, number of atoms, rotatable bonds, molecular volume, and atoms responsible for hydrogen bond donor and acceptors, are also effective and offer significant advantages. These advantages include the potential of encompassing many more molecular constitutional descriptors and molecular properties. Multiple regression showed clearly that the application of more descriptors for Kp determination increases the coefficient of determination (R2). Increased R2 shows an improved fit of the raw data to the model improved prediction. Conclusion: Determination of Kp by applying various descriptors in addition to Log Ko/w and MW increases the model fit to the raw data. ANN prediction of Kp was more effective when using additional descriptors. Prediction of Kp by multiple regression was useful, and utilizing descriptors with Log Ko/w and MW improved the model fit to the raw data.
机译:目的:渗透系数(Kp)是评估用于各种皮肤可及疾病的临床治疗的药物对皮肤吸收的重要指标。比较了人工神经网络(ANN)通过多个描述符对Kp的确定和多元回归。研究设计:利用多个描述符计算Kp,并进行ANN和多元回归的比较。研究地点和期限:内布拉斯加大学化学系达勒姆科学中心,2014年4月至2014年7月。方法:计算通过先前的方法对Kp的分析可用于多种药物和化合物。然后将由此获得的值Kp与通过ANN训练和多元回归分析获得的值进行比较。然后应用各种其他基于药物的描述符,以通过这些特性确定Kp测定的好处。结果:ANN训练和测定Kp表明,Log Ko / w和常规方法利用的分子量(MW)是有效的。但是,ANN通过应用Log Ko / w,MW,极性表面积,原子数,可旋转键,分子体积以及负责氢键供体和受体的原子的性质证明了Kp的测定也是有效的,并具有明显的优势。这些优点包括可能包含更多的分子组成描述符和分子特性。多元回归清楚地表明,更多的描述符用于确定Kp会增加确定系数(R2)。 R2的增加表明原始数据对模型改进的预测的拟合度更高。结论:除了Log Ko / w和MW外,通过应用各种描述符来确定Kp可以使模型与原始数据拟合。使用附加描述符时,Kp的ANN预测更为有效。通过多重回归预测Kp是有用的,并且使用Log Ko / w和MW的描述符可以改善模型对原始数据的拟合度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号