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ProSpero: Active Learning for Robust Protein Design Beyond Wild-Type Neighborhoods

MCML Authors

Link to Profile Vincent Fortuin

Vincent Fortuin

Dr.

Associate

Abstract

Designing protein sequences of both high fitness and novelty is a challenging task in data-efficient protein engineering. Exploration beyond wild-type neighborhoods often leads to biologically implausible sequences or relies on surrogate models that lose fidelity in novel regions. Here, we propose ProSpero, an active learning framework in which a frozen pre-trained generative model is guided by a surrogate updated from oracle feedback. By integrating fitness-relevant residue selection with biologically-constrained Sequential Monte Carlo sampling, our approach enables exploration beyond wild-type neighborhoods while preserving biological plausibility. We show that our framework remains effective even when the surrogate is misspecified. ProSpero consistently outperforms or matches existing methods across diverse protein engineering tasks, retrieving sequences of both high fitness and novelty.

inproceedings KFS25


NeurIPS 2025

39th Conference on Neural Information Processing Systems. San Diego, CA, USA, Nov 30-Dec 07, 2025. To be published. Preprint available.
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A* Conference

Authors

M. Kmicikiewicz • V. Fortuin • E. Szczurek

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Research Area

 A1 | Statistical Foundations & Explainability

BibTeXKey: KFS25

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