选择(遗传算法)
联轴节(管道)
选型
小学(天文学)
计算机科学
生化工程
数据科学
工程类
人工智能
物理
机械工程
天文
作者
Shivaani Gandhi,Gregory Brown,Santeri Aikonen,Jordan S. Compton,Paulo Neves,Jesus Martinez Alvarado,Iulia I. Strambeanu,Kristi Leonard,Abigail G. Doyle
标识
DOI:10.26434/chemrxiv-2024-22jrq
摘要
Secondary N-arylsulfonamides are common in pharmaceutical compounds owing to their valuable physicochemical properties. Direct N-arylation of primary sulfonamides presents a modular approach to this scaffold but remains a challenging disconnection for transition metal-catalyzed cross coupling broadly, including the Chan-Lam (CL) coupling of nucleophiles with (hetero)aryl boronic acids. Although the CL coupling reaction typically operates under mild conditions, it is also highly substrate-dependent and prone to over-arylation, limiting its generality and predictivity. To address these gaps, we employed data science tools in tandem with high-throughput experimentation to study and model the CL N-arylation of primary sulfonamides. To minimize bias in training set design, we applied un-supervised learning to systematically select a diverse set of primary sulfonamides for high-throughput data collection and modeling, resulting in a novel dataset of 3,904 reactions. This workflow enabled us to identify broadly applicable, highly selective conditions for the CL coupling of aliphatic and (hetero)aromatic primary sulfonamides with complex organoboron coupling partners. We also generated a regression model that not only successfully identifies high-yielding conditions for the CL coupling of various sulfonamides, but also sulfonamide features that dictate reaction outcome.
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