LGQMMar 11

How to make the most of your masked language model for protein engineering

arXiv:2603.10302v111.01 citationsh-index: 11
Predicted impact top 46% in LG · last 90 daysOriginality Incremental advance
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This work addresses a practical bottleneck in protein engineering for researchers and practitioners, offering an incremental improvement in sampling techniques.

The authors tackled the problem of optimizing sampling from masked language models for protein engineering, proposing stochastic beam search and demonstrating that sampling method choice significantly impacts performance in antibody engineering campaigns.

A plethora of protein language models have been released in recent years. Yet comparatively little work has addressed how to best sample from them to optimize desired biological properties. We fill this gap by proposing a flexible, effective sampling method for masked language models (MLMs), and by systematically evaluating models and methods both in silico and in vitro on actual antibody therapeutics campaigns. Firstly, we propose sampling with stochastic beam search, exploiting the fact that MLMs are remarkably efficient at evaluating the pseudo-perplexity of the entire 1-edit neighborhood of a sequence. Reframing generation in terms of entire-sequence evaluation enables flexible guidance with multiple optimization objectives. Secondly, we report results from our extensive in vitro head-to-head evaluation for the antibody engineering setting. This reveals that choice of sampling method is at least as impactful as the model used, motivating future research into this under-explored area.

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