对映选择合成
化学空间
催化作用
工作流程
化学
生化工程
计算机科学
化学反应
亲核细胞
组合化学
计算化学
有机化学
数据库
药物发现
生物化学
工程类
作者
Jolene P. Reid,Matthew S. Sigman
出处
期刊:Nature
[Springer Nature]
日期:2019-07-17
卷期号:571 (7765): 343-348
被引量:260
标识
DOI:10.1038/s41586-019-1384-z
摘要
When faced with unfamiliar reaction space, synthetic chemists typically apply the reported conditions (reagents, catalyst, solvent and additives) of a successful reaction to a desired, closely related reaction using a new substrate type. Unfortunately, this approach often fails owing to subtle differences in reaction requirements. Consequently, an important goal in synthetic chemistry is the ability to transfer chemical observations quantitatively from one reaction to another. Here we present a holistic, data-driven workflow for deriving statistical models of one set of reactions that can be used to predict out-of-sample reactions. As a validating case study, we combined published enantioselectivity datasets that employ 1,1′-bi-2-naphthol (BINOL)-derived chiral phosphoric acids for a range of nucleophilic addition reactions to imines and developed statistical models. These models reveal the general interactions that impart asymmetric induction and allow the quantitative transfer of this information to new reaction components. This technique creates opportunities for translating comprehensive reaction analysis to diverse chemical space, streamlining both catalyst and reaction development. A workflow for deriving statistical models of one set of reactions that can be used to predict related reactions is presented, facilitating catalyst and enantioselective reaction development.
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