Machine Learning and Molecular Modelling: A Synergistic Approach to Rapid Reactivity Design

Jun25Tue

Machine Learning and Molecular Modelling: A Synergistic Approach to Rapid Reactivity Design

Tue, 25/06/2024 - 14:00

Location:

Speaker: 
Dr Matthew Grayson
Affiliation: 
University of Bath
Synopsis: 

The computational design of new reactions is one of the “Holy Grails” of computational organic
chemistry and biochemistry. Accurate and fast computational approaches to predicting
chemical reactivity would provide cost-effective alternatives to experimental screening, and in
some cases animal testing, in drug discovery, toxicology, and synthetic route design.
However, current modelling (e.g., DFT) and machine learning (ML) methods all fail to
simultaneously offer fast, accurate predictions with precise mechanistic insight derived from
transition state (TS) geometries. This talk will discuss our recent work towards the
development of new methods that combine the best elements of molecular modelling and ML
to deliver rapid, accurate, and mechanism-based reactivity prediction.
In our initial proof-of-concept study,1 we trained ML models that corrected rapidly obtained but
approximate semi-empirical quantum mechanical (SQM) reaction barriers to DFTquality
barriers for a dataset of 1000 nitro-Michael reactions. After training, this approach
enabled barrier predictions to be made in seconds, instead of hours or days with DFT,
with errors below the widely accepted chemical accuracy threshold of 1 kcal mol-1. Rapid
mechanistic insight was also available from the SQM TSs which were found to be very good
approximations for the DFT-level geometries.
We have since shown that through the use of transfer2 and active learning3, models can be
built that offer the same speed, accuracy, and mechanistic insight with much lower amounts
of training data (tens of data points). We then applied this methodology to the optimization of
a transition metal-catalyzed dihydrogen activation reaction, which required just 12 rapidly
computed new data points, to demonstrate our progress towards the “Holy Grail”.
References
[1] Chem. Sci. 2022, 13, 7594.
[2] Digital Discovery 2023, 2, 941.
[3] ACS Catal. 2023, 13, 13506.

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