超空间
可扩展性
吞吐量
计算机科学
产量(工程)
生化工程
生物系统
人工智能
材料科学
生物
工程类
电信
数据库
冶金
无线
作者
Yankai Jia,Rafał Frydrych,Yaroslav I. Sobolev,Wai‐Shing Wong,Bibek Prajapati,Daniel Matuszczyk,Yasemin Bilgi,Louis Gadina,Juán Carlos Ahumada,Galymzhan Moldagulov,Namhun Kim,Eric S. Larsen,Maxence Deschamps,Yinghan Jiang,Bartosz A. Grzybowski
出处
期刊:Nature
[Nature Portfolio]
日期:2025-09-24
卷期号:645 (8082): 922-931
被引量:2
标识
DOI:10.1038/s41586-025-09490-1
摘要
Despite decades of investigation, it remains unclear (and hard to predict1-4) how the outcomes of chemical reactions change over multidimensional 'hyperspaces' defined by reaction conditions5. Whereas human chemists can explore only a limited subset of these manifolds, automated platforms6-12 can generate thousands of reactions in parallel. Yet, purification and yield quantification remain bottlenecks, constrained by time-consuming and resource-intensive analytical techniques. As a result, our understanding of reaction hyperspaces remains fragmentary7,9,13-16. Are yield distributions smooth or corrugated? Do they conceal mechanistically new reactions? Can major products vary across different regions? Here, to address these questions, we developed a low-cost robotic platform using primarily optical detection to quantify yields of products and by-products at unprecedented throughput and minimal cost per condition. Scanning hyperspaces across thousands of conditions, we find and prove mathematically that, for continuous variables (concentrations, temperatures), individual yield distributions are generally slow-varying. At the same time, we uncover hyperspace regions of unexpected reactivity as well as switchovers between major products. Moreover, by systematically surveying substrate proportions, we reconstruct underlying reaction networks and expose hidden intermediates and products-even in reactions studied for well over a century. This hyperspace-scanning approach provides a versatile and scalable framework for reaction optimization and discovery. Crucially, it can help identify conditions under which complex mixtures can be driven cleanly towards different major products, thereby expanding synthetic diversity while reducing chemical input requirements.
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