Title :
Prediction of the penetration of drugs by Artificial Neural Networks
Author :
Gonzalez-Temes, M. ; Astray, G. ; Morales, Javier ; Mejuto, J.C. ; Astray, G.
Author_Institution :
Phys. Chem. Dept., Univ. of Vigo, Ourense, Spain
Abstract :
In this study an Artificial Neural Network was developed to predict the penetration of drugs through a polydimethylsiloxane membrane by molecular descriptors. A total of 245 drugs and their absorption experimentally determined values were arranged into various data sets to perform training and validation of the different implemented neural networks. Logarithms of the maximum steady-state flux (log J) values were correlated with four input variables; i) Count fo H-Acceptor Sites (CHA), ii) H-Donors Charged Surface Area (HDCA), iii) Gravitational index (Gb) and iv) Weighted Positive Charged Partial Surface Area (WPSA-2). Besides these, other neural networks were implemented with an extra input variable, which measuring the similarity of the different drugs (Distance). All developed neural networks present a high squared correlation coefficient with a low root-mean-square error, and they improve the MLR prediction model in 24%.
Keywords :
drugs; mean square error methods; medical computing; neural nets; CHA; HDCA; MLR prediction model; WPSA-2; artificial neural networks; count fo h-acceptor sites; drug penetration prediction; gravitational index; h-donors charged surface area; maximum steady-state flux values; molecular descriptors; polydimethylsiloxane membrane; root-mean-square error; squared correlation coefficient; weighted positive charged partial surface area; Artificial neural networks; Biological neural networks; Biomembranes; Correlation coefficient; Drugs; Neurons; Training; Molecular descriptor; Neural networks; Permeability; Polydimethylsiloxane;
Conference_Titel :
Information Systems and Technologies (CISTI), 2013 8th Iberian Conference on
Conference_Location :
Lisboa