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"A machine learning-based quantitative model (LogBB_Pred) to predict the ..."
Bilal Shaker et al. (2023)
- Bilal Shaker, Jingyu Lee, Yunhyeok Lee, Myeong-Sang Yu, Hyang-Mi Lee, Eunee Lee, Hoon-Chul Kang
, Kwang-Seok Oh
, Hyung Wook Kim, Dokyun Na:
A machine learning-based quantitative model (LogBB_Pred) to predict the blood-brain barrier permeability (logBB value) of drug compounds. Bioinform. 39(10) (2023)
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