BindEnergyCraft: Casting Protein Structure Predictors as Energy-Based Models for Binder Design
BindEnergyCraft: Casting Protein Structure Predictors as Energy-Based Models for Binder Design
Protein binder design has been transformed by hallucination-based methods that optimize structure prediction confidence metrics, such as the interface predicted TM-score (ipTM), via backpropagation. However, these metrics do not reflect the statistical likelihood of a binder-target complex under the learned distribution and yield sparse gradients for optimization. In this work, we propose a method to extract such likelihoods from structure predictors by reinterpreting their confidence outputs as an energy-based model (EBM). By leveraging the Joint Energy-based Modeling (JEM) framework, we introduce pTMEnergy, a statistical energy function derived from predicted inter-residue error distributions. We incorporate pTMEnergy into BindEnergyCraft (BECraft), a design pipeline that maintains the same optimization framework as BindCraft but replaces ipTM with our energy-based objective. BECraft outperforms BindCraft, RFDiffusion, and ESM3 across multiple challenging targets, achieving higher in silico binder success rates while reducing structural clashes. Furthermore, pTMEnergy establishes a new state-of-the-art in structure-based virtual screening tasks for miniprotein and RNA aptamer binders.
Divya Nori、Anisha Parsan、Caroline Uhler、Wengong Jin
生物科学研究方法、生物科学研究技术生物化学分子生物学生物工程学
Divya Nori,Anisha Parsan,Caroline Uhler,Wengong Jin.BindEnergyCraft: Casting Protein Structure Predictors as Energy-Based Models for Binder Design[EB/OL].(2025-05-27)[2025-06-25].https://arxiv.org/abs/2505.21241.点此复制
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