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Development of a Computer-Guided Workflow for Catalyst Optimization. Descriptor Validation, Subset Selection, and Training Set Analysis

机译:开发催化剂优化的计算机导向工作流程。描述符验证,子集选择和培训集分析

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摘要

Modern, enantioselective catalyst development is driven largely by empiricism. Although this approach has fostered the introduction of most of the existing synthetic methods, it is inherently limited by the skill, creativity, and chemical intuition of the practitioner. Herein, we present a complementary approach to catalyst optimization in which statistical methods are used at each stage to streamline development. To construct the optimization informatics workflow, a number of critical components had to be subjected to rigorous validation. First, the critically important molecular descriptors were validated in two case studies to establish the importance of conformation-dependent molecular representations. Next, with a large data set available, it was possible to investigate the amount of data necessary to make predictive models with different modeling methods. Given the commercial availability of many catalyst structures, it was possible to compare models generated with algorithmically selected training sets and commercially available training sets. Finally, the augmentation of limited data sets is demonstrated in a method informed by unsupervised learning to restore the accuracy of the generated models.
机译:现代,对映选择性催化剂发育主要是经验主义的主要原因。虽然这种方法促进了大多数现有的合成方法的引入,但它本质上受到了从业者的技能,创造力和化学直觉的限制。在此,我们提出了催化剂优化的互补方法,其中在每个阶段使用统计方法以简化开发。为了构建优化信息学工作流程,必须经过一些关键组件进行严格的验证。首先,在两个案例研究中验证了批判性重要的分子描述符,以确定构象依赖性分子表示的重要性。接下来,通过可用的大数据集,可以调查用不同的建模方法制作预测模型所需的数据量。鉴于许多催化剂结构的商业可用性,可以比较用算法选择的训练集和市售训练集生成的模型。最后,通过无监督学习通知的方法中对有限数据集的增强进行了演示,以恢复生成模型的准确性。

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  • 来源
    《Journal of the American Chemical Society》 |2020年第26期|11578-11592|共15页
  • 作者单位

    Roger Adams Laboratory Department of Chemistry University of Illinois Urbana Illinois 61801 United States;

    Roger Adams Laboratory Department of Chemistry University of Illinois Urbana Illinois 61801 United States;

    Roger Adams Laboratory Department of Chemistry University of Illinois Urbana Illinois 61801 United States;

    Roger Adams Laboratory Department of Chemistry University of Illinois Urbana Illinois 61801 United States;

    Roger Adams Laboratory Department of Chemistry University of Illinois Urbana Illinois 61801 United States;

    Roger Adams Laboratory Department of Chemistry University of Illinois Urbana Illinois 61801 United States;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
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