Basford Annabel R, Bennett Steven K, Xiao Muye, Turcani Lukas, Allen Jasmine, Jelfs Kim E, Greenaway Rebecca L
Department of Chemistry, Molecular Sciences Research Hub, Imperial College London White City Campus, 82 Wood Lane W12 0BZ UK
Chem Sci. 2024 Mar 13;15(17):6331-6348. doi: 10.1039/d3sc06133g. eCollection 2024 May 1.
Self-assembly through dynamic covalent chemistry (DCC) can yield a range of multi-component organic assemblies. The reversibility and dynamic nature of DCC has made prediction of reaction outcome particularly difficult and thus slows the discovery rate of new organic materials. In addition, traditional experimental processes are time-consuming and often rely on serendipity. Here, we present a streamlined hybrid workflow that combines automated high-throughput experimentation, automated data analysis, and computational modelling, to accelerate the discovery process of one particular subclass of molecular organic materials, porous organic cages. We demonstrate how the design and implementation of this workflow aids in the identification of organic cages with desirable properties. The curation of a precursor library of 55 tri- and di-topic aldehyde and amine precursors enabled the experimental screening of 366 imine condensation reactions experimentally, and 1464 hypothetical organic cage outcomes to be computationally modelled. From the screen, 225 cages were identified experimentally using mass spectrometry, 54 of which were cleanly formed as a single topology as determined by both turbidity measurements and H NMR spectroscopy. Integration of these characterisation methods into a fully automated Python pipeline, named , led to over a 350-fold decrease in the time required for data analysis. This work highlights the advantages of combining automated synthesis, characterisation, and analysis, for large-scale data curation towards an accessible data-driven materials discovery approach.
通过动态共价化学(DCC)进行的自组装能够产生一系列多组分有机组装体。DCC的可逆性和动态性质使得预测反应结果变得格外困难,从而减缓了新型有机材料的发现速度。此外,传统的实验过程耗时且往往依赖于偶然性。在此,我们提出了一种简化的混合工作流程,该流程结合了自动化高通量实验、自动化数据分析和计算建模,以加速一种特定子类的分子有机材料——多孔有机笼的发现过程。我们展示了此工作流程的设计与实施如何有助于识别具有理想性质的有机笼。精心构建的包含55种三齿和双齿醛与胺前体的前体库,使得能够通过实验筛选366个亚胺缩合反应,并对1464个假设的有机笼产物进行计算建模。通过筛选,使用质谱法从实验中鉴定出225个笼,其中54个通过浊度测量和核磁共振氢谱确定为以单一拓扑结构清晰形成。将这些表征方法集成到一个名为的全自动Python管道中,使得数据分析所需时间减少了350多倍。这项工作突出了将自动化合成、表征和分析相结合,用于大规模数据整理以实现一种易于获取的数据驱动材料发现方法的优势。