Benchmarking Active Learning Protocols for Ligand-Binding Affinity Prediction.

Journal: Journal of chemical information and modeling
Published Date:

Abstract

Active learning (AL) has become a powerful tool in computational drug discovery, enabling the identification of top binders from vast molecular libraries. To design a robust AL protocol, it is important to understand the influence of AL parameters, as well as the features of the data sets on the outcomes. We use four affinity data sets for different targets (TYK2, USP7, D2R, Mpro) to systematically evaluate the performance of machine learning models [Gaussian process (GP) model and Chemprop model], sample selection protocols, and the batch size based on metrics describing the overall predictive power of the model (R2, Spearman rank, root-mean-square error) as well as the accurate identification of top 2%/5% binders (Recall, F1 score). Both models have a comparable Recall of top binders on large data sets, but the GP model surpasses the Chemprop model when training data are sparse. A larger initial batch size, especially on diverse data sets, increased the Recall of both models as well as overall correlation metrics. However, for subsequent cycles, smaller batch sizes of 20 or 30 compounds proved to be desirable. Furthermore, adding artificial Gaussian noise to the data up to a certain threshold still allowed the model to identify clusters with top-scoring compounds. However, excessive noise (<1σ) did impact the model's predictive and exploitative capabilities.

Authors

  • Rohan Gorantla
    Department of Computer Science, Shiv Nadar University, Noida, UP, India.
  • Alžbeta Kubincová
    Exscientia, Schrödinger Building, Oxford, OX4 4GE, U.K.
  • Benjamin Suutari
    Exscientia, Schrödinger Building, Oxford OX4 4GE, U.K.
  • Benjamin P Cossins
    UCB Pharma, Slough SL1 3WE, United Kingdom.
  • Antonia S J S Mey
    EaStCHEM School of Chemistry, University of Edinburgh, David Brewster Road, Edinburgh EH9 3FJ, United Kingdom.