Department of Analytical Chemistry, Faculty of Pharmacy, Medical University of Lodz, 90-419 Lodz, Poland.
Cells. 2023 Jan 27;12(3):421. doi: 10.3390/cells12030421.
Drug penetration through biological barriers is an important aspect of pharmacokinetics. Although the structure of the blood-brain and blood-milk barriers is different, a connection can be found in the literature between drugs entering the central nervous system (CNS) and breast milk. This study was created to reveal such a relationship with the use of statistical modelling. The basic physicochemical properties of 37 active pharmaceutical compounds (APIs) and their chromatographic retention data (TLC and HPLC) were incorporated into calculations as molecular descriptors (MDs). Chromatography was performed in a thin layer format (TLC), where the plates were impregnated with bovine serum albumin to mimic plasma protein binding. Two columns were used in high performance liquid chromatography (HPLC): one with immobilized human serum albumin (HSA), and the other containing an immobilized artificial membrane (IAM). Statistical methods including multiple linear regression (MLR), cluster analysis (CA) and random forest regression (RF) were performed with satisfactory results: the MLR model explains 83% of the independent variable variability related to CNS bioavailability; while the RF model explains up to 87%. In both cases, the parameter related to breast milk penetration was included in the created models. A significant share of reversed-phase TLC retention values was also noticed in the RF model.
药物穿过生物屏障的能力是药代动力学的一个重要方面。尽管血脑和血乳屏障的结构不同,但文献中已经发现进入中枢神经系统 (CNS) 和母乳的药物之间存在联系。本研究旨在通过统计建模来揭示这种关系。37 种活性药物成分 (API) 的基本物理化学性质及其色谱保留数据(TLC 和 HPLC)被纳入计算作为分子描述符 (MD)。采用薄层色谱法 (TLC) 进行色谱分析,其中将牛血清白蛋白浸渍到板上以模拟血浆蛋白结合。高效液相色谱法 (HPLC) 使用了两个柱子:一个固定有人血清白蛋白 (HSA),另一个包含固定人工膜 (IAM)。使用多元线性回归 (MLR)、聚类分析 (CA) 和随机森林回归 (RF) 等统计方法进行了分析,结果令人满意:MLR 模型解释了与 CNS 生物利用度相关的 83%的自变量变异性;而 RF 模型则高达 87%。在这两种情况下,创建的模型中都包含了与母乳渗透相关的参数。RF 模型中还注意到了反相 TLC 保留值的显著份额。