Agatonovic-Kustrin S, Beresford R, Yusof A P
School of Pharmaceutical Sciences, Universiti Sains Malaysia, Penang, 11800, Malaysia.
J Pharm Biomed Anal. 2001 May;25(2):227-37. doi: 10.1016/s0731-7085(00)00492-1.
A quantitative structure-human intestinal absorption relationship was developed using artificial neural network (ANN) modeling. A set of 86 drug compounds and their experimentally-derived intestinal absorption values used in this study was gathered from the literature and a total of 57 global molecular descriptors, including constitutional, topological, chemical, geometrical and quantum chemical descriptors, calculated for each compound. A supervised network with radial basis transfer function was used to correlate calculated molecular descriptors with experimentally-derived measures of human intestinal absorption. A genetic algorithm was then used to select important molecular descriptors. Intestinal absorption values (IA%) were used as the ANN's output and calculated molecular descriptors as the inputs. The best genetic neural network (GNN) model with 15 input descriptors was chosen, and the significance of the selected descriptors for intestinal absorption examined. Results obtained with the model that was developed indicate that lipophilicity, conformational stability and inter-molecular interactions (polarity, and hydrogen bonding) have the largest impact on intestinal absorption.
利用人工神经网络(ANN)建模建立了定量结构-人体肠道吸收关系。本研究中使用的一组86种药物化合物及其通过实验得出的肠道吸收值取自文献,并为每种化合物计算了总共57个全局分子描述符,包括组成、拓扑、化学、几何和量子化学描述符。使用具有径向基传递函数的监督网络将计算出的分子描述符与通过实验得出的人体肠道吸收指标相关联。然后使用遗传算法选择重要的分子描述符。肠道吸收值(IA%)用作人工神经网络的输出,计算出的分子描述符用作输入。选择了具有15个输入描述符的最佳遗传神经网络(GNN)模型,并检验了所选描述符对肠道吸收的重要性。所开发模型得到的结果表明,亲脂性、构象稳定性和分子间相互作用(极性和氢键)对肠道吸收的影响最大。