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Design of Peptide-Guided Protein Degraders with Structure-Agnostic Language Models

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SaLT&PepPr

Design of Peptide-Guided Protein Degraders with Structure-Agnostic Language Models

saltnpeppr_inference

Targeted protein degradation of pathogenic proteins represents a powerful new treatment strategy for multiple disease indications. Unfortunately, a sizable portion of these proteins are considered “undruggable” by standard small molecule-based approaches, including PROTACs and molecular glues, largely due to their disordered nature, instability, and lack of binding site accessibility. As a more modular, genetically-encoded strategy, designing functional protein-based degraders to undruggable targets presents a unique opportunity for therapeutic intervention. In this work, we integrate pre-trained protein language models with recently-described joint encoder architectures to devise a unified, sequence-based framework to design target-selective peptide degraders without structural information. By leveraging known experimental binding protein sequences as scaffolds, we create a Structure-agnostic Language Transformer & Peptide Prioritization (SaLT&PepPr) module that efficiently selects peptides for downstream screening.

We have developed a user-friendly Colab notebook for peptide generation with SaLT&PepPr!

Authors: Garyk Brixi, Sophie Vincoff, and Pranam Chatterjee

Contact: pranam.chatterjee@duke.edu

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Design of Peptide-Guided Protein Degraders with Structure-Agnostic Language Models

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