Optimizing blood–brain barrier permeation through deep reinforcement learning for de novo drug design
出版年份 2021 全文链接
标题
Optimizing blood–brain barrier permeation through deep reinforcement learning for de novo drug design
作者
关键词
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出版物
BIOINFORMATICS
Volume 37, Issue Supplement_1, Pages i84-i92
出版商
Oxford University Press (OUP)
发表日期
2021-06-08
DOI
10.1093/bioinformatics/btab301
参考文献
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