Department of Chemistry, University of Illinois at Urbana-Champaign, Urbana, IL, USA.
Molecule Maker Lab, Beckman Institute for Advanced Science and Technology, University of Illinois at Urbana-Champaign, Urbana, IL, USA.
Nature. 2024 Sep;633(8029):351-358. doi: 10.1038/s41586-024-07892-1. Epub 2024 Aug 28.
Artificial intelligence-guided closed-loop experimentation has emerged as a promising method for optimization of objective functions, but the substantial potential of this traditionally black-box approach to uncovering new chemical knowledge has remained largely untapped. Here we report the integration of closed-loop experiments with physics-based feature selection and supervised learning, denoted as closed-loop transfer (CLT), to yield chemical insights in parallel with optimization of objective functions. CLT was used to examine the factors dictating the photostability in solution of light-harvesting donor-acceptor molecules used in a variety of organic electronics applications, and showed fundamental insights including the importance of high-energy regions of the triplet state manifold. This was possible following automated modular synthesis and experimental characterization of only around 1.5% of the theoretical chemical space. This physics-informed model for photostability was strengthened using multiple experimental test sets and validated by tuning the triplet excited-state energy of the solvent to break out of the observed plateau in the closed-loop photostability optimization process. Further applications of CLT to additional materials systems support the generalizability of this strategy for augmenting closed-loop strategies. Broadly, these findings show that combining interpretable supervised learning models and physics-based features with closed-loop discovery processes can rapidly provide fundamental chemical insights.
人工智能引导的闭环实验已经成为优化目标函数的一种很有前途的方法,但这种传统的黑盒方法在揭示新的化学知识方面的巨大潜力在很大程度上尚未得到开发。在这里,我们报告了将闭环实验与基于物理的特征选择和监督学习相结合,即闭环传递(CLT),以在优化目标函数的同时产生化学见解。CLT 用于研究决定用于各种有机电子应用的光捕获给体-受体分子在溶液中光稳定性的因素,并显示了包括三重态能级中高能区域的重要性等基本见解。这是在仅对大约 1.5%的理论化学空间进行自动模块化合成和实验表征后实现的。使用多个实验测试集对该光稳定性的物理信息模型进行了强化,并通过调整溶剂的三重态激发态能量来打破闭环光稳定性优化过程中观察到的平台,对该模型进行了验证。CLT 对其他材料系统的进一步应用支持了将可解释的监督学习模型和基于物理的特征与闭环发现过程相结合以增强闭环策略的通用性。总的来说,这些发现表明,将可解释的监督学习模型和基于物理的特征与闭环发现过程相结合,可以快速提供基本的化学见解。