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Predictive Multivariate Linear Regression Analysis Guides Successful Catalytic Enantioselective Minisci Reactions of Diazines

机译:预测性多元线性回归分析指导了二嗪类成功的催化对映选择性小反应

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The Minisci reaction is one of the most direct and versatile methods for forging new carbon–carbon bonds onto basic heteroarenes: a broad subset of compounds ubiquitous in medicinal chemistry. While many Minisci-type reactions result in new stereocenters, control of the absolute stereochemistry has proved challenging. An asymmetric variant was recently realized using chiral phosphoric acid catalysis, although in that study the substrates were limited to quinolines and pyridines. Mechanistic uncertainties and nonobvious enantioselectivity trends made the task of extending the reaction to important new substrate classes challenging and time-intensive. Herein, we describe an approach to address this problem through rigorous analysis of the reaction landscape guided by a carefully designed reaction data set and facilitated through multivariate linear regression (MLR) analysis. These techniques permitted the development of mechanistically informative correlations providing the basis to transfer enantioselectivity outcomes to new reaction components, ultimately predicting pyrimidines to be particularly amenable to the protocol. The predictions of enantioselectivity outcomes for these valuable, pharmaceutically relevant motifs were remarkably accurate in most cases and resulted in a comprehensive exploration of scope, significantly expanding the utility and versatility of this methodology. This successful outcome is a powerful demonstration of the benefits of utilizing MLR analysis as a predictive platform for effective and efficient reaction scope exploration across substrate classes.
机译:Minisci反应是在基本杂芳烃上锻造新的碳-碳键的最直接和最灵活的方法之一:在药物化学中无处不在的大量化合物。尽管许多Minisci型反应产生了新的立体中心,但控制绝对立体化学已证明具有挑战性。尽管在该研究中底物仅限于喹啉和吡啶,但最近使用手性磷酸催化实现了不对称变体。机械不确定性和非显而易见的对映选择性趋势使得将反应扩展到重要的新底物类别成为一项艰巨且耗时的任务。在这里,我们描述了一种通过精心设计的反应数据集指导并通过多元线性回归(MLR)分析促进对反应态势的严格分析来解决此问题的方法。这些技术允许开发机械信息性的相关性,为将对映选择性结果转移到新的反应组分上提供基础,最终预测嘧啶特别适合该方案。在大多数情况下,这些有价值的,与药物相关的主题的对映体选择性结果的预测非常准确,并导致对范围的全面探索,从而大大扩展了该方法的实用性和多功能性。这一成功的结果有力地证明了利用MLR分析作为跨各种基质类别进行有效和高效反应范围探索的预测平台的好处。

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