Litcius/Paper detail

Extended Connectivity Fingerprints as a Chemical Reaction Representation for Enantioselective Organophosphorus-Catalyzed Asymmetric Reaction Prediction

Ryosuke Asahara, Tomoyuki Miyao

2022ACS Omega26 citationsDOIOpen Access PDF

Abstract

Predicting the outcomes of organic reactions using data-driven approaches aids in the acceleration of research. In laboratory-scale experiments, only a small number of reaction data can be accessed for machine learning model construction, where reaction representations play a pivotal role in the success of model construction. Nevertheless, representation comparison for a small data set is not adequate. Herein, focusing on the enantioselectivity of phosphoric-acid-catalyzed reactions, various two-dimensional and three-dimensional reaction representations (descriptors) were compared. Overall, the concatenated form of the extended connectivity fingerprints showed the best predictive capability for the two types of data sets: high-throughput experimental data and manually collected literature data sets. Furthermore, highlighting the substructure contribution to the prediction outcome was shown to be informative for guiding catalyst development.

Topics & Concepts

Representation (politics)Computer scienceData setScale (ratio)Set (abstract data type)CatalysisSubstructureThroughputEnantioselective synthesisOutcome (game theory)Training setArtificial intelligenceChemistryMathematicsOrganic chemistryEngineeringPhysicsWirelessQuantum mechanicsPoliticsStructural engineeringProgramming languageTelecommunicationsPolitical scienceMathematical economicsLawMachine Learning in Materials ScienceComputational Drug Discovery MethodsAsymmetric Hydrogenation and Catalysis