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Scoreformer: A Surrogate Model For Large-Scale Prediction of Docking Scores

Authors :
Ciudad, Álvaro
Morales-Pastor, Adrián
Malo, Laura
Filella-Mercè, Isaac
Guallar, Victor
Molina, Alexis
Publication Year :
2024

Abstract

In this study, we present ScoreFormer, a novel graph transformer model designed to accurately predict molecular docking scores, thereby optimizing high-throughput virtual screening (HTVS) in drug discovery. The architecture integrates Principal Neighborhood Aggregation (PNA) and Learnable Random Walk Positional Encodings (LRWPE), enhancing the model's ability to understand complex molecular structures and their relationship with their respective docking scores. This approach significantly surpasses traditional HTVS methods and recent Graph Neural Network (GNN) models in both recovery and efficiency due to a wider coverage of the chemical space and enhanced performance. Our results demonstrate that ScoreFormer achieves competitive performance in docking score prediction and offers a substantial 1.65-fold reduction in inference time compared to existing models. We evaluated ScoreFormer across multiple datasets under various conditions, confirming its robustness and reliability in identifying potential drug candidates rapidly.<br />Comment: Accepted at the 1st Machine Learning for Life and Material Sciences Workshop at ICML 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.09346
Document Type :
Working Paper