Literature DB >> 30110511

In Silico Prediction of Blood-Brain Barrier Permeability of Compounds by Machine Learning and Resampling Methods.

Zhuang Wang1, Hongbin Yang1, Zengrui Wu1, Tianduanyi Wang1, Weihua Li1, Yun Tang1, Guixia Liu1.   

Abstract

The blood-brain barrier (BBB) as a part of absorption protects the central nervous system by separating the brain tissue from the bloodstream. In recent years, BBB permeability has become a critical issue in chemical ADMET prediction, but almost all models were built using imbalanced data sets, which caused a high false-positive rate. Therefore, we tried to solve the problem of biased data sets and built a reliable classification model with 2358 compounds. Machine learning and resampling methods were used simultaneously for the refinement of models with both 2 D molecular descriptors and molecular fingerprints to represent the chemicals. Through a series of evaluation, we realized that resampling methods such as Synthetic Minority Oversampling Technique (SMOTE) and SMOTE+edited nearest neighbor could effectively solve the problem of imbalanced data sets and that MACCS fingerprint combined with support vector machine performed the best. After the final construction of a consensus model, the overall accuracy rate was increased to 0.966 for the final external data set. Also, the accuracy rate of the model for the test set was 0.919, with an excellent balanced capacity of 0.925 (sensitivity) to predict BBB-positive compounds and of 0.899 (specificity) to predict BBB-negative compounds. Compared with other BBB classification models, our models reduced the rate of false positives and were more robust in prediction of BBB-positive as well as BBB-negative compounds, which would be quite helpful in early drug discovery.
© 2018 Wiley-VCH Verlag GmbH & Co. KGaA, Weinheim.

Keywords:  QSAR models; blood-brain barrier; imbalanced data; machine learning; resampling methods

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Year:  2018        PMID: 30110511     DOI: 10.1002/cmdc.201800533

Source DB:  PubMed          Journal:  ChemMedChem        ISSN: 1860-7179            Impact factor:   3.466


  28 in total

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5.  Relational graph convolutional networks for predicting blood-brain barrier penetration of drug molecules.

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6.  DeePred-BBB: A Blood Brain Barrier Permeability Prediction Model With Improved Accuracy.

Authors:  Rajnish Kumar; Anju Sharma; Athanasios Alexiou; Anwar L Bilgrami; Mohammad Amjad Kamal; Ghulam Md Ashraf
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Review 7.  Development of Polymeric Nanoparticles for Blood-Brain Barrier Transfer-Strategies and Challenges.

Authors:  Weisen Zhang; Ami Mehta; Ziqiu Tong; Lars Esser; Nicolas H Voelcker
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8.  Comparing the Pfizer Central Nervous System Multiparameter Optimization Calculator and a BBB Machine Learning Model.

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Journal:  ACS Chem Neurosci       Date:  2021-05-24       Impact factor: 5.780

9.  Improved Classification of Blood-Brain-Barrier Drugs Using Deep Learning.

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10.  A deep learning approach to predict blood-brain barrier permeability.

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