Değim Zelihagül
Department of Pharmaceutical Technology, Faculty of Pharmacy, Gazi University, 06330-Etiler, Ankara, Turkey.
Drug Dev Ind Pharm. 2005 Oct;31(9):935-42. doi: 10.1080/03639040500274336.
Artificial neural network (ANN) analysis was used to predict the permeability of selected compounds through Caco-2 cell monolayers. Previously reported models, which were shown to be useful in the prediction of permeability values, use many structural parameters. More complex equations have also been proposed using both linear and non-linear relationships, including ANN analysis and various structural parameters. But proposed models still need to be developed using different neuron patterns for more precise predictions and a better understanding of which factors affect the permeation. To develop a simple and useful model or method for easy prediction is also a general need. Permeability coefficients (log kp) were obtained from various literature sources. Some structural parameters were calculated using computer programs. Multiple linear regression analysis (MLRA) was used to predict Caco-2 cell permeability for the set of 50 compounds (r2=0.403). A successful ANN model was developed, and the ANN produced log kp values that correlated well with the experimental ones (r2=0.952). The permeability of a compound, famotidine, which has not previously been studied, through the Caco-2 cell monolayer was investigated, and its permeability coefficient determined. It was then possible to compare the experimental data with that predicted using the trained ANN with previously determined Caco-2 cell permeability values and structural parameters of compounds. The model was also tested using literature values. The developed and described ANN model in this publication does not require any experimental parameters; it could potentially provide useful and precise prediction of permeability for new drugs or other penetrants.
人工神经网络(ANN)分析被用于预测所选化合物通过Caco-2细胞单层的渗透性。先前报道的模型在预测渗透值方面很有用,但使用了许多结构参数。还提出了更复杂的方程,使用线性和非线性关系,包括人工神经网络分析和各种结构参数。但仍需开发使用不同神经元模式的模型,以进行更精确的预测,并更好地理解哪些因素影响渗透。开发一种简单有用的模型或方法以方便预测也是普遍需求。渗透性系数(log kp)从各种文献来源获得。一些结构参数使用计算机程序计算。多元线性回归分析(MLRA)用于预测50种化合物的Caco-2细胞渗透性(r2 = 0.403)。开发了一个成功的人工神经网络模型,该模型产生的log kp值与实验值相关性良好(r2 = 0.952)。研究了一种先前未研究过的化合物法莫替丁通过Caco-2细胞单层的渗透性,并测定了其渗透系数。然后可以将实验数据与使用训练好的人工神经网络结合先前测定的Caco-2细胞渗透性值和化合物结构参数预测的数据进行比较。该模型也使用文献值进行了测试。本出版物中开发和描述的人工神经网络模型不需要任何实验参数;它有可能为新药或其他渗透剂的渗透性提供有用且精确的预测。