English

Active Learning-Guided Seq2Seq Variational Autoencoder for Multi-target Inhibitor Generation

Machine Learning 2025-06-24 v1 Artificial Intelligence Biomolecules

Abstract

Simultaneously optimizing molecules against multiple therapeutic targets remains a profound challenge in drug discovery, particularly due to sparse rewards and conflicting design constraints. We propose a structured active learning (AL) paradigm integrating a sequence-to-sequence (Seq2Seq) variational autoencoder (VAE) into iterative loops designed to balance chemical diversity, molecular quality, and multi-target affinity. Our method alternates between expanding chemically feasible regions of latent space and progressively constraining molecules based on increasingly stringent multi-target docking thresholds. In a proof-of-concept study targeting three related coronavirus main proteases (SARS-CoV-2, SARS-CoV, MERS-CoV), our approach efficiently generated a structurally diverse set of pan-inhibitor candidates. We demonstrate that careful timing and strategic placement of chemical filters within this active learning pipeline markedly enhance exploration of beneficial chemical space, transforming the sparse-reward, multi-objective drug design problem into an accessible computational task. Our framework thus provides a generalizable roadmap for efficiently navigating complex polypharmacological landscapes.

Keywords

Cite

@article{arxiv.2506.15309,
  title  = {Active Learning-Guided Seq2Seq Variational Autoencoder for Multi-target Inhibitor Generation},
  author = {Júlia Vilalta-Mor and Alexis Molina and Laura Ortega Varga and Isaac Filella-Merce and Victor Guallar},
  journal= {arXiv preprint arXiv:2506.15309},
  year   = {2025}
}

Comments

16 pages, 7 figures

R2 v1 2026-07-01T03:23:22.180Z