Faculty of Medicine, University of Niš, Niš, Serbia.
Clinic for Gynecology and Obstetrics, University Clinical Centre of Niš, Niš, Serbia.
Pharm Res. 2024 Mar;41(3):493-500. doi: 10.1007/s11095-024-03675-5. Epub 2024 Feb 9.
In order to ensure that drug administration is safe during pregnancy, it is crucial to have the possibility to predict the placental permeability of drugs in humans. The experimental method which is most widely used for the said purpose is in vitro human placental perfusion, though the approach is highly expensive and time consuming. Quantitative structure-activity relationship (QSAR) modeling represents a powerful tool for the assessment of the drug placental transfer, and can be successfully employed to be an alternative in in vitro experiments.
The conformation-independent QSAR models covered in the present study were developed through the use of the SMILES notation descriptors and local molecular graph invariants. What is more, the Monte Carlo optimization method, was used in the test sets and the training sets as the model developer with three independent molecular splits.
A range of different statistical parameters was used to validate the developed QSAR model, including the standard error of estimation, mean absolute error, root-mean-square error (RMSE), correlation coefficient, cross-validated correlation coefficient, Fisher ratio, MAE-based metrics and the correlation ideality index. Once the mentioned statistical methods were employed, an excellent predictive potential and robustness of the developed QSAR model was demonstrated. In addition, the molecular fragments, which are derived from the SMILES notation descriptors accounting for the decrease or increase in the investigated activity, were revealed.
The presented QSAR modeling can be an invaluable tool for the high-throughput screening of the placental permeability of drugs.
为了确保孕妇用药安全,有必要预测药物在人体胎盘内的通透性。为此目的,最广泛使用的实验方法是体外人胎盘灌注,但该方法非常昂贵且耗时。定量构效关系(QSAR)建模是评估药物胎盘转运的有力工具,可成功用作体外实验的替代方法。
本研究涵盖的构象独立 QSAR 模型是通过使用 SMILES 符号描述符和局部分子图不变量开发的。此外,蒙特卡罗优化方法被用作模型开发人员,在测试集和训练集中使用了三种独立的分子拆分。
使用了一系列不同的统计参数来验证所开发的 QSAR 模型,包括估计标准误差、平均绝对误差、均方根误差(RMSE)、相关系数、交叉验证相关系数、Fisher 比、基于 MAE 的指标和相关理想指数。一旦使用了所述统计方法,就证明了所开发的 QSAR 模型具有出色的预测潜力和稳健性。此外,揭示了源于 SMILES 符号描述符的分子片段,这些片段表示研究活性的降低或增加。
所提出的 QSAR 建模可以成为高通量筛选药物胎盘通透性的宝贵工具。