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构建用于分析和预测有机金属催化中配体和催化剂效应的工具箱。

Building a Toolbox for the Analysis and Prediction of Ligand and Catalyst Effects in Organometallic Catalysis.

机构信息

School of Chemistry, University of Bristol, Cantock's Close, Bristol BS8 1TS, U.K.

出版信息

Acc Chem Res. 2021 Feb 16;54(4):837-848. doi: 10.1021/acs.accounts.0c00807. Epub 2021 Feb 3.

Abstract

Computers have become closely involved with most aspects of modern life, and these developments are tracked in the chemical sciences. Recent years have seen the integration of computing across chemical research, made possible by investment in equipment, software development, improved networking between researchers, and rapid growth in the application of predictive approaches to chemistry, but also a change of attitude rooted in the successes of computational chemistry-it is now entirely possible to complete research projects where computation and synthesis are cooperative and integrated, and work in synergy to achieve better insights and improved results. It remains our ambition to put computational prediction before experiment, and we have been working toward developing the key ingredients and workflows to achieve this.The ability to precisely tune selectivity along with high catalyst activity make organometallic catalysts using transition metal (TM) centers ideal for high-value-added transformations, and this can make them appealing for industrial applications. However, mechanistic variations of TM-catalyzed reactions across the vast chemical space of different catalysts and substrates are not fully explored, and such an exploration is not feasible with current resources. This can lead to complete synthetic failures when new substrates are used, but more commonly we see outcomes that require further optimization, such as incomplete conversion, insufficient selectivity, or the appearance of unwanted side products. These processes consume time and resources, but the insights and data generated are usually not tied to a broader predictive workflow where experiments test hypotheses quantitatively, reducing their impact.These failures suggest at least a partial deviation of the reaction pathway from that hypothesized, hinting at quite complex mechanistic manifolds for organometallic catalysts that are affected by the combination of input variables. Mechanistic deviation is most likely when challenging multifunctional substrates are being used, and the quest for so-called privileged catalysts is quickly replaced by a need to screen catalyst libraries until a new "best" match between the catalyst and substrate can be identified and the reaction conditions can be optimized. As a community we remain confined to broad interpretations of the substrate scope of new catalysts and focus on small changes based on idealized catalytic cycles rather than working toward a "big data" view of organometallic homogeneous catalysis with routine use of predictive models and transparent data sharing.Databases of DFT-calculated steric and electronic descriptors can be built for such catalysts, and we summarize here how these can be used in the mapping, interpretation, and prediction of catalyst properties and reactivities. Our motivation is to make these databases useful as tools for synthetic chemists so that they challenge and validate quantitative computational approaches. In this Account, we demonstrate their application to different aspects of catalyst design and discovery and their integration with computational mechanistic studies and thus describe the progress of our journey toward truly predictive models in homogeneous organometallic catalysis.

摘要

计算机已经与现代生活的各个方面紧密相关,这些发展在化学科学中都有追踪。近年来,通过投资于设备、软件开发、研究人员之间的网络连接的改善以及对化学的预测方法的快速应用,已经实现了计算在化学研究中的整合,这也导致了态度的转变——这是基于计算化学的成功——现在完全有可能完成计算和合成相互协作和集成的研究项目,并协同工作以获得更好的见解和改进的结果。我们的目标仍然是将计算预测置于实验之前,我们一直在努力开发关键成分和工作流程以实现这一目标。具有高度催化剂活性和选择性的精准调节的能力使得使用过渡金属 (TM) 中心的有机金属催化剂成为高附加值转化的理想选择,这也使它们对工业应用具有吸引力。然而,在不同催化剂和底物的广阔化学空间中,TM 催化反应的机制变化并没有得到充分的探索,而且在现有资源的情况下,这种探索是不可行的。当使用新的底物时,这可能导致完全的合成失败,但更常见的是,我们看到需要进一步优化的结果,例如不完全转化、选择性不足或出现不需要的副产物。这些过程消耗时间和资源,但生成的见解和数据通常不会与实验定量测试假设的更广泛的预测工作流程相关联,从而降低了它们的影响。这些失败至少表明反应途径存在部分偏离假设,暗示有机金属催化剂的机制非常复杂,受到输入变量组合的影响。当使用具有挑战性的多功能底物时,机制偏离最有可能发生,而寻找所谓的特权催化剂很快就会被筛选催化剂库所取代,直到可以识别催化剂和底物之间的新“最佳”匹配,并优化反应条件。作为一个社区,我们仍然局限于对新催化剂的底物范围进行广泛的解释,并侧重于基于理想化催化循环的微小变化,而不是朝着具有常规使用预测模型和透明数据共享的有机金属均相催化的“大数据”视图努力。可以为这些催化剂构建基于密度泛函理论 (DFT) 计算的空间和电子描述符的数据库,我们在这里总结了如何在催化剂性质和反应性的映射、解释和预测中使用这些数据库。我们的动机是使这些数据库成为合成化学家有用的工具,以便他们挑战和验证定量计算方法。在本报告中,我们展示了它们在催化剂设计和发现的不同方面的应用,以及它们与计算机制研究的集成,从而描述了我们在均相有机金属催化中迈向真正预测模型的旅程的进展。

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