동향
동향 내용
Recent progresses in the exploration of machine learning methods as in-silico ADME prediction tools.
분류 ADME 조회 1508
발행년도 2015 등록일 2015-10-11
출처 Adv Drug Deliv Rev (바로가기)
In-silico methods have been explored as potential tools for assessing ADME and ADME regulatory properties particularly in early drug discovery stages. Machine learning methods, with their ability in classifying diverse structures and complex mechanisms, are well suited for predicting ADME and ADME regulatory properties. Recent efforts have been directed at the broadening of application scopes and the improvement of predictive performance with particular focuses on the coverage of ADME properties, and exploration of more diversified training data, appropriate molecular features, and consensus modeling.
 
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리스트 이전글과 다음글
이전글이전글 Optimization of ADME Properties for Sulfonamides Leading to the Discovery of a T-Type Calcium Channel Blocker, ABT-639.
다음글다음글 High levels of cyclic-di-GMP in plant-associated Pseudomonas correlate with evasion of plant immunity.