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A machine learning-based quantitative model (LogBB_Pred) to predict the blood–brain barrier permeability (logBB value) of drug compounds

MOTIVATION: Efficient assessment of the blood–brain barrier (BBB) penetration ability of a drug compound is one of the major hurdles in central nervous system drug discovery since experimental methods are costly and time-consuming. To advance and elevate the success rate of neurotherapeutic drug dis...

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Autores principales: Shaker, Bilal, Lee, Jingyu, Lee, Yunhyeok, Yu, Myeong-Sang, Lee, Hyang-Mi, Lee, Eunee, Kang, Hoon-Chul, Oh, Kwang-Seok, Kim, Hyung Wook, Na, Dokyun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10560102/
https://www.ncbi.nlm.nih.gov/pubmed/37713469
http://dx.doi.org/10.1093/bioinformatics/btad577
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author Shaker, Bilal
Lee, Jingyu
Lee, Yunhyeok
Yu, Myeong-Sang
Lee, Hyang-Mi
Lee, Eunee
Kang, Hoon-Chul
Oh, Kwang-Seok
Kim, Hyung Wook
Na, Dokyun
author_facet Shaker, Bilal
Lee, Jingyu
Lee, Yunhyeok
Yu, Myeong-Sang
Lee, Hyang-Mi
Lee, Eunee
Kang, Hoon-Chul
Oh, Kwang-Seok
Kim, Hyung Wook
Na, Dokyun
author_sort Shaker, Bilal
collection PubMed
description MOTIVATION: Efficient assessment of the blood–brain barrier (BBB) penetration ability of a drug compound is one of the major hurdles in central nervous system drug discovery since experimental methods are costly and time-consuming. To advance and elevate the success rate of neurotherapeutic drug discovery, it is essential to develop an accurate computational quantitative model to determine the absolute logBB value (a logarithmic ratio of the concentration of a drug in the brain to its concentration in the blood) of a drug candidate. RESULTS: Here, we developed a quantitative model (LogBB_Pred) capable of predicting a logBB value of a query compound. The model achieved an R(2) of 0.61 on an independent test dataset and outperformed other publicly available quantitative models. When compared with the available qualitative (classification) models that only classified whether a compound is BBB-permeable or not, our model achieved the same accuracy (0.85) with the best qualitative model and far-outperformed other qualitative models (accuracies between 0.64 and 0.70). For further evaluation, our model, quantitative models, and the qualitative models were evaluated on a real-world central nervous system drug screening library. Our model showed an accuracy of 0.97 while the other models showed an accuracy in the range of 0.29–0.83. Consequently, our model can accurately classify BBB-permeable compounds as well as predict the absolute logBB values of drug candidates. AVAILABILITY AND IMPLEMENTATION: Web server is freely available on the web at http://ssbio.cau.ac.kr/software/logbb_pred/. The data used in this study are available to download at http://ssbio.cau.ac.kr/software/logbb_pred/dataset.zip.
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spelling pubmed-105601022023-10-08 A machine learning-based quantitative model (LogBB_Pred) to predict the blood–brain barrier permeability (logBB value) of drug compounds Shaker, Bilal Lee, Jingyu Lee, Yunhyeok Yu, Myeong-Sang Lee, Hyang-Mi Lee, Eunee Kang, Hoon-Chul Oh, Kwang-Seok Kim, Hyung Wook Na, Dokyun Bioinformatics Original Paper MOTIVATION: Efficient assessment of the blood–brain barrier (BBB) penetration ability of a drug compound is one of the major hurdles in central nervous system drug discovery since experimental methods are costly and time-consuming. To advance and elevate the success rate of neurotherapeutic drug discovery, it is essential to develop an accurate computational quantitative model to determine the absolute logBB value (a logarithmic ratio of the concentration of a drug in the brain to its concentration in the blood) of a drug candidate. RESULTS: Here, we developed a quantitative model (LogBB_Pred) capable of predicting a logBB value of a query compound. The model achieved an R(2) of 0.61 on an independent test dataset and outperformed other publicly available quantitative models. When compared with the available qualitative (classification) models that only classified whether a compound is BBB-permeable or not, our model achieved the same accuracy (0.85) with the best qualitative model and far-outperformed other qualitative models (accuracies between 0.64 and 0.70). For further evaluation, our model, quantitative models, and the qualitative models were evaluated on a real-world central nervous system drug screening library. Our model showed an accuracy of 0.97 while the other models showed an accuracy in the range of 0.29–0.83. Consequently, our model can accurately classify BBB-permeable compounds as well as predict the absolute logBB values of drug candidates. AVAILABILITY AND IMPLEMENTATION: Web server is freely available on the web at http://ssbio.cau.ac.kr/software/logbb_pred/. The data used in this study are available to download at http://ssbio.cau.ac.kr/software/logbb_pred/dataset.zip. Oxford University Press 2023-09-15 /pmc/articles/PMC10560102/ /pubmed/37713469 http://dx.doi.org/10.1093/bioinformatics/btad577 Text en © The Author(s) 2023. Published by Oxford University Press. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Paper
Shaker, Bilal
Lee, Jingyu
Lee, Yunhyeok
Yu, Myeong-Sang
Lee, Hyang-Mi
Lee, Eunee
Kang, Hoon-Chul
Oh, Kwang-Seok
Kim, Hyung Wook
Na, Dokyun
A machine learning-based quantitative model (LogBB_Pred) to predict the blood–brain barrier permeability (logBB value) of drug compounds
title A machine learning-based quantitative model (LogBB_Pred) to predict the blood–brain barrier permeability (logBB value) of drug compounds
title_full A machine learning-based quantitative model (LogBB_Pred) to predict the blood–brain barrier permeability (logBB value) of drug compounds
title_fullStr A machine learning-based quantitative model (LogBB_Pred) to predict the blood–brain barrier permeability (logBB value) of drug compounds
title_full_unstemmed A machine learning-based quantitative model (LogBB_Pred) to predict the blood–brain barrier permeability (logBB value) of drug compounds
title_short A machine learning-based quantitative model (LogBB_Pred) to predict the blood–brain barrier permeability (logBB value) of drug compounds
title_sort machine learning-based quantitative model (logbb_pred) to predict the blood–brain barrier permeability (logbb value) of drug compounds
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10560102/
https://www.ncbi.nlm.nih.gov/pubmed/37713469
http://dx.doi.org/10.1093/bioinformatics/btad577
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