Liu Xingrong, Tu Meihua, Kelly Rebecca S, Chen Cuiping, Smith Bill J
Department of Pharmacokinetics, Dynamics and Metabolism, Groton Laboratories, Pfizer Global Research and Development, MS 8220-4167, Eastern Point Road, Groton, CT 06340, USA.
Drug Metab Dispos. 2004 Jan;32(1):132-9. doi: 10.1124/dmd.32.1.132.
The objectives of this study were to generate a data set of blood-brain barrier (BBB) permeability values for drug-like compounds and to develop a computational model to predict BBB permeability from structure. The BBB permeability, expressed as permeability-surface area product (PS, quantified as logPS), was determined for 28 structurally diverse drug-like compounds using the in situ rat brain perfusion technique. A linear model containing three descriptors, logD, van der Waals surface area of basic atoms, and polar surface area, was developed based on 23 compounds in our data set, where the penetration across the BBB was assumed to occur primarily by passive diffusion. The correlation coefficient (R(2)) and standard deviation (S.D.) of the model-predicted logPS against the observed are 0.74 and 0.50, respectively. If an outlier was removed from the training data set, the R(2) and S.D. were 0.80 and 0.44, respectively. This new model was tested in two literature data sets, resulting in an R(2) of 0.77 to 0.94 and a S.D. of 0.38 to 0.51. For comparison, four literature models, logP, logD, log(D. MW(-0.5)), and linear free energy relationship, were tested using the set of 23 compounds primarily crossing the BBB by passive diffusion, resulting in an R(2) of 0.33 to 0.61 and a S.D. of 0.59 to 0.76. In summary, we have generated the largest PS data set and developed a robust three-descriptor model that can quantitatively predict BBB permeability. This model may be used in a drug discovery setting to predict the BBB permeability of new chemical entities.
本研究的目的是生成一组类药物化合物的血脑屏障(BBB)通透性值数据集,并开发一种计算模型,从结构预测BBB通透性。使用原位大鼠脑灌注技术,对28种结构各异的类药物化合物测定了BBB通透性,以通透表面积乘积(PS,以logPS量化)表示。基于我们数据集中的23种化合物,开发了一个包含三个描述符的线性模型,即logD、碱性原子的范德华表面积和极性表面积,其中假定穿过BBB的渗透主要通过被动扩散发生。模型预测的logPS与观测值的相关系数(R(2))和标准差(S.D.)分别为0.74和0.50。如果从训练数据集中去除一个异常值,则R(2)和S.D.分别为0.80和0.44。该新模型在两个文献数据集上进行了测试,R(2)为0.77至0.94,S.D.为0.38至0.51。作为比较,使用主要通过被动扩散穿过BBB的23种化合物集,对四个文献模型logP、logD、log(D.MW(-0.5))和线性自由能关系进行了测试,R(2)为0.33至0.61,S.D.为0.59至0.76。总之,我们生成了最大的PS数据集,并开发了一个强大的三描述符模型,该模型可以定量预测BBB通透性。该模型可用于药物发现环境中预测新化学实体的BBB通透性。