Aim: This study aims to investigate the passive diffusion of protein kinase inhibitors through the blood-brain barrier (BBB) and to develop a model for their permeability prediction. Materials & methods: We used the parallel artificial membrane permeability assay to obtain logPe values of each of 34 compounds and calculated descriptors for these structures to perform quantitative structure-property relationship modeling, creating different regression models. Results: The logPe values have been calculated for all 34 compounds. Support vector machine regression was considered the most reliable, and CATS2D_09_DA, CATS2D_04_AA, B04[N-S]Â and F07[C-N] descriptors were identified as the most influential to passive BBB permeability. Conclusion: The quantitative structure-property relationship-support vector machine regression model that has been generated can serve as an efficient method for preliminary screening of BBB permeability of new analogs.
Application of parallel artificial membrane permeability assay technique and chemometric modeling for blood-brain barrier permeability prediction of protein kinase inhibitors.
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作者:JovanoviÄ Milan, Radan Milica, ÄarapiÄ Marija, FilipoviÄ Nenad, Nikolic Katarina, Crevar Milkica
| 期刊: | Future Medicinal Chemistry | 影响因子: | 3.400 |
| 时间: | 2024 | 起止号: | 2024;16(9):873-885 |
| doi: | 10.4155/fmc-2023-0390 | ||
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