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Posts by Yehlin Cho

Exciting applications are coming soon, with experimental validation in the next version!

📄paper: www.biorxiv.org/content/10.1...
💻code: github.com/yehlincho/Pr...

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Protein Hunter enables multimer binder design, multi-motif scaffolding, partial redesign, and nucleic acid binder design — offering a general pipeline for protein design that can be applied to any AF3-style models, existing or in development.

6 months ago 2 0 1 0
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Additionally, Protein Hunter supports all-atom molecular binder design. We show in silico success rates for four small molecules, where iterative cycles of Boltz2 and LigandMPNN achieve the highest AF3 success rates.

6 months ago 0 0 1 0
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We also demonstrate the success of the pipeline on cyclic peptides, exemplified with the MDM2 target.
Macrocyclic peptide design can be achieved through cyclic positional encodings.

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However, diffusion-based models favor α-helical topologies (reflecting training bias), reducing structural diversity. To enhance β-sheet content, we applied a negative helix bias to Pairformer pair features before diffusion, increasing sheet-rich samples.

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Repeating this process significantly improves the in silico success rates of AlphaFold3 and the designability of both unconditional and conditional (binder) design tasks.

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Protein Hunter: Starting from an all "X" sequence, we find that diffusion-based structure prediction models can hallucinate reasonable looking structures, which can be further improved through iterative sequence design and structure prediction, similar to AF2Cycler and LASErMPNN.

6 months ago 1 0 1 0
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And they do it remarkably well with an all-“X” sequence. ❌😮
AF3-style models treat unknown PDB residues as X tokens and explicitly handle non-canonical amino acids and ligands, enabling folding of undefined sequences while minimizing bias from amino acid specific features.

6 months ago 0 0 1 0
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It actually folds into a structure and binds near the target!

We found that AF3-like structure prediction models (Boltz, Chai, AF3) can hallucinate proteins within their diffusion modules.

6 months ago 1 0 1 0
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Have you ever wondered what AF3-like structure prediction models would produce when given a random protein sequence and a target of your choice?

Would it form a completely disordered structure that wraps around the target, or would it still fold and bind to it?

6 months ago 2 0 1 0
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Thrilled to announce our new preprint, “Protein Hunter: Exploiting Structure Hallucination within Diffusion for Protein Design,” in collaboration with @Griffin, @GBhardwaj8 and @sokrypton.org

🧬Code and notebooks will be released by the end of this week.
🎧Golden- Kpop Demon Hunters

6 months ago 52 16 3 2
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🚀 Excited to release BoltzDesign1!

✨ Now with LogMD-based trajectory visualization.
🔗 Demo: rcsb.ai/ff9c2b1ee8
Feedback & collabs welcome! 🙌

🔗: GitHub: github.com/yehlincho/Bo...
🔗: Colab: colab.research.google.com/github/yehli...
@sokrypton.org @martinpacesa.bsky.social

10 months ago 54 17 1 0
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5. BoltzDesign1 can be used to design sequences and structures that AlphaFold3 predicts to bind to metal ions, nucleic acids, and other biomolecules

1 year ago 2 0 1 0

4. We achieved the best results by setting the Pairformer recycling step to 0 and fixing the initial BoltzDesign1 sequence at the interface while redesigning the remaining surface regions using LigandMPNN.

1 year ago 0 0 1 0
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3. By utilizing only the Pairformer and Confidence module, our method generates highly diverse binders, with high AlphaFold3 success rates, strong cross-model and self-consistency, as demonstrated by benchmarks on four small-molecule targets from the RFDiffusionAA benchmark set.

1 year ago 0 0 1 0
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2. Instead of optimizing single structures, we optimize directly on the distogram, shaping the probability distributions of atomic distances. We show that the distogram effectively captures interactions between proteins and their targets, serving as a proxy for confidence scores

1 year ago 0 0 1 0
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1. We introduce BoltzDesign1, which inverts the Boltz-1 model—an open-source reproduction of AlphaFold3—to enable the design of protein binders for diverse molecular targets without requiring model fine-tuning.

1 year ago 0 0 1 0
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BoltzDesign1: Inverting All-Atom Structure Prediction Model for Generalized Biomolecular Binder Design Deep learning in structure prediction has revolutionized protein research, enabling large-scale screening, novel hypothesis generation, and accelerated experimental design across biological domains. R...

www.biorxiv.org/content/10.1...

1 year ago 2 0 1 0
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Excited to share our preprint “BoltzDesign1: Inverting All-Atom Structure Prediction Model for Generalized Biomolecular Binder Design” — a collaboration with
@martinpacesa.bsky.social, @Zhidian Zhang, @Bruno E. Correia, and @sokrypton.org

🧬 Code will be released in a couple weeks

1 year ago 62 17 5 1