Litcius/Paper detail

OSCAR: an extensive repository of chemically and functionally diverse organocatalysts

Simone Gallarati, Puck van Gerwen, Rubén Laplaza, Sergi Vela, Alberto Fabrizio, Clémence Corminbœuf

2022Chemical Science39 citationsDOIOpen Access PDF

Abstract

The automated construction of datasets has become increasingly relevant in computational chemistry. While transition-metal catalysis has greatly benefitted from bottom-up or top-down strategies for the curation of organometallic complexes libraries, the field of organocatalysis is mostly dominated by case-by-case studies, with a lack of transferable data-driven tools that facilitate both the exploration of a wider range of catalyst space and the optimization of reaction properties. For these reasons, we introduce OSCAR, a repository of 4000 experimentally derived organocatalysts along with their corresponding building blocks and combinatorially enriched structures. We outline the fragment-based approach used for database generation and showcase the chemical diversity, in terms of functions and molecular properties, covered in OSCAR. The structures and corresponding stereoelectronic properties are publicly available (https://archive.materialscloud.org/record/2022.106) and constitute the starting point to build generative and predictive models for organocatalyst performance.

Topics & Concepts

Combinatorial chemistryChemistryComputational biologyNanotechnologyComputer scienceMaterials scienceBiologyAsymmetric Synthesis and CatalysisAsymmetric Hydrogenation and CatalysisChemical Synthesis and Reactions