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首页> 外文期刊>Angewandte Chemie >Scaffold-Directed Face Selectivity Machine-Learned from Vectors of Non-covalent Interactions
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Scaffold-Directed Face Selectivity Machine-Learned from Vectors of Non-covalent Interactions

机译:脚手架导向的面部选择性机器 - 从非共价相互作用的载体中学到

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摘要

This work describes a method to vectorize and Machine-Learn, ML, non-covalent interactions responsible for scaffold-directed reactions important in synthetic chemistry. Models trained on this representation predict correct face of approach in ca. 90 % of Michael additions or Diels-Alder cycloadditions. These accuracies are significantly higher than those based on traditional ML descriptors, energetic calculations, or intuition of experienced synthetic chemists. Our results also emphasize the importance of ML models being provided with relevant mechanistic knowledge; without such knowledge, these models cannot easily "transfer-learn" and extrapolate to previously unseen reaction mechanisms.
机译:这项工作描述了一种矢量化和机器学习的方法,ML,非共价相互作用负责合成化学中重要的支架导向反应。在这种表征上训练的模型预测了大约90%的迈克尔加法或迪尔斯-阿尔德加法的正确性。这些精确度明显高于基于传统ML描述符、能量计算或经验丰富的合成化学家直觉的精确度。我们的结果还强调了ML模型具有相关机械知识的重要性;如果没有这些知识,这些模型就无法轻松地“转移学习”并推断出以前看不见的反应机制。

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