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Resampling combined with stacking learning for prediction of blood-brain barrier permeability of compounds / 生物医学工程学杂志
Article ي Zh | WPRIM | ID: wpr-1008896
المكتبة المسؤولة: WPRO
ABSTRACT
It is a significant challenge to improve the blood-brain barrier (BBB) permeability of central nervous system (CNS) drugs in their development. Compared with traditional pharmacokinetic property tests, machine learning techniques have been proven to effectively and cost-effectively predict the BBB permeability of CNS drugs. In this study, we introduce a high-performance BBB permeability prediction model named balanced-stacking-learning based BBB permeability predictor(BSL-B3PP). Firstly, we screen out the feature set that has a strong influence on BBB permeability from the perspective of medicinal chemistry background and machine learning respectively, and summarize the BBB positive(BBB+) quantification intervals. Then, a combination of resampling algorithms and stacking learning(SL) algorithm is used for predicting the BBB permeability of CNS drugs. The BSL-B3PP model is constructed based on a large-scale BBB database (B3DB). Experimental validation shows an area under curve (AUC) of 97.8% and a Matthews correlation coefficient (MCC) of 85.5%. This model demonstrates promising BBB permeability prediction capability, particularly for drugs that cannot penetrate the BBB, which helps reduce CNS drug development costs and accelerate the CNS drug development process.
الموضوعات
Key words
النص الكامل: 1 الفهرس: WPRIM الموضوع الرئيسي: Permeability / Algorithms / Blood-Brain Barrier / Databases, Factual / Area Under Curve اللغة: Zh مجلة: Journal of Biomedical Engineering السنة: 2023 نوع: Article
النص الكامل: 1 الفهرس: WPRIM الموضوع الرئيسي: Permeability / Algorithms / Blood-Brain Barrier / Databases, Factual / Area Under Curve اللغة: Zh مجلة: Journal of Biomedical Engineering السنة: 2023 نوع: Article