化学
化学空间
基质(水族馆)
虚拟筛选
催化作用
学习迁移
比例(比率)
生化工程
任务(项目管理)
纳米技术
药物发现
组合化学
机器学习
计算机科学
系统工程
海洋学
材料科学
地质学
生物化学
物理
量子力学
工程类
作者
Leon Schlosser,Debanjan Rana,Philipp M. Pflüger,Felix Katzenburg,Frank Glorius
摘要
Due to the magnitude of chemical space, the discovery of novel substrates in energy transfer (EnT) catalysis remains a daunting task. Experimental and computational strategies to identify compounds that successfully undergo EnT-mediated reactions are limited by their time and cost efficiency. To accelerate the discovery process in EnT catalysis, we herein present the EnTdecker platform, which facilitates the large-scale virtual screening of potential substrates using machine-learning (ML) based predictions of their excited state properties. To achieve this, a data set is created containing more than 34,000 molecules aiming to cover a vast fraction of synthetically relevant compound space for EnT catalysis. Using this data predictive models are trained, and their aptitude for an in-lab application is demonstrated by rediscovering successful substrates from literature as well as experimental validation through luminescence-based screening. By reducing the computational effort needed to obtain excited state properties, the EnTdecker platform represents a tool to efficiently guide substrate selection and increase the experimental success rate for EnT catalysis. Moreover, through an easy-to-use web application, EnTdecker is made publicly accessible under entdecker.uni-muenster.de.
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