MMODELYST
Papers/SPADE: Faster Drug Discovery by Learning from Sparse Data
PAP

SPADE: Faster Drug Discovery by Learning from Sparse Data

May 6, 2026

arXiv
Abstract

Drug discovery seeks molecules (ligands) that bind strongly and selectively to a target protein. However, fewer than 5% of candidate ligands pass the bar for even the early stages of drug discovery. Furthermore, we want methods that work for novel proteins for which we have no prior data. Starting from scratch, we have to iteratively select and test candidate ligands such that we find enough ligands of the desired quality in as few tests as possible. Our proposed algorithm, named SPADE, introduces a novel approach to ligand selection that requires only 40 tests on average to find 10 high-quality ligands. In one-vs-one comparisons, SPADE outperforms deep learning and Bayesian optimization methods on more proteins, achieving median improvements of 7%-32% in sample efficiency. SPADE is also 10x faster than its closest competitor at scoring candidate drugs. Dataset and code is available at https://anonymous.4open.science/r/SPADE_Fast_Drug_Discovery_by_Learning_from_Sparse_Data-F028/README.md

Select text to highlight · click a highlight to remove · saved in this browser only
Authors
Rahul Nandakumar, Ben Fauber, Deepayan Chakrabarti
Your notes (browser-local)
saved
arXiv:2605.05370