Abstract
The Ames mutagenicity test is a gold standard assay for the safety assessment of new chemicals.
However, many in silico models rely on challenging-to-interpret ensemble strategies and molecular
fingerprint data which neglects gestalt molecular structure. To improve upon these models, we
propose AmesFormer, a graph transformer neural network which shows state-of-the-art performance
when paired with our new Ames dataset. We briefly review the current state of Ames modelling with
a focus on graph neural networks. We then benchmark AmesFormer on a standardised test dataset
against 22 other Ames models, achieving state of the art (SOTA) performance. We then uniquely
report the calibration performance of our model and attempts to improve it using temperature scaling.
We support our findings with reference to other models from the literature and with developments in
machine learning (ML) and graph theory. Overall, we present a high-performance, accessible, and
open-source computational model for Ames mutagenicity, with significant potential for regulatory
and drug development applications
Supplementary weblinks
Title
AmesFormer
Description
Our model can be tested by cloning the code from this Github repository.
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