Paper List
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Macroscopic Dominance from Microscopic Extremes: Symmetry Breaking in Spatial Competition
This paper addresses the fundamental question of how microscopic stochastic advantages in spatial exploration translate into macroscopic resource domi...
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Linear Readout of Neural Manifolds with Continuous Variables
This paper addresses the core challenge of quantifying how the geometric structure of high-dimensional neural population activity (neural manifolds) d...
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Theory of Cell Body Lensing and Phototaxis Sign Reversal in “Eyeless” Mutants of Chlamydomonas
This paper solves the core puzzle of how eyeless mutants of Chlamydomonas exhibit reversed phototaxis by quantitatively modeling the competition betwe...
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Cross-Species Transfer Learning for Electrophysiology-to-Transcriptomics Mapping in Cortical GABAergic Interneurons
This paper addresses the challenge of predicting transcriptomic identity from electrophysiological recordings in human cortical interneurons, where li...
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Uncovering statistical structure in large-scale neural activity with Restricted Boltzmann Machines
This paper addresses the core challenge of modeling large-scale neural population activity (1500-2000 neurons) with interpretable higher-order interac...
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Realizing Common Random Numbers: Event-Keyed Hashing for Causally Valid Stochastic Models
This paper addresses the critical problem that standard stateful PRNG implementations in agent-based models violate causal validity by making random d...
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A Standardized Framework for Evaluating Gene Expression Generative Models
This paper addresses the critical lack of standardized evaluation protocols for single-cell gene expression generative models, where inconsistent metr...
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Single Molecule Localization Microscopy Challenge: A Biologically Inspired Benchmark for Long-Sequence Modeling
This paper addresses the core challenge of evaluating state-space models on biologically realistic, sparse, and stochastic temporal processes, which a...
How to make the most of your masked language model for protein engineering
BigHat Biosciences
30秒速读
IN SHORT: This paper addresses the critical bottleneck of efficiently sampling high-quality, diverse protein sequences from Masked Language Models (MLMs) for practical antibody engineering, where traditional mutation-centric methods are computationally expensive and often produce dysfunctional variants.
核心创新
- Methodology Proposes a novel sequence-centric stochastic beam search (SBS) method that reframes generation as a search problem, leveraging MLMs' efficiency in evaluating the pseudo-log-likelihood (PLL) of all 1-edit neighbors of a sequence, achieving a 20EL× speedup over mutation-centric methods.
- Methodology Introduces a flexible, gradient-free multi-objective optimization (MOO) framework compatible with the SBS sampler, enabling guidance by arbitrary black-box scoring functions (e.g., binding affinity, humanness, stability) without requiring differentiability or partially-masked sequence inputs.
- Biology Provides the first extensive head-to-head in vitro evaluation of MLM sampling algorithms and models in real antibody therapeutic campaigns, revealing that the choice of sampling algorithm is at least as impactful as the choice of model itself.
主要结论
- The proposed stochastic beam search sampler significantly outperformed traditional Gibbs sampling in vitro, with AbLang2+SBS achieving higher success rates (e.g., perfect 100% success rate when combined with Smooth Tchebycheff Scalarization guidance).
- Model choice matters: ESM2-650M (trained on generic proteins) and AbLang2 (antibody-specific) performed best in silico and in vitro, while the sampling algorithm choice (SBS vs. Gibbs) had an equal or greater impact on outcome quality.
- Supervision is highly effective: Using a trained classifier for post-MLM ranking improved the success rate of AbLang2 outputs considerably, and MOO guidance (NDS/STS) during generation further enhanced performance and eliminated generation of very weak binders.
摘要: 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.