Loop-Diffusion: an equivariant diffusion model for designing and scoring protein loops
Predicting protein functional characteristics from structure remains a central problem in protein science, with broad implications from understanding the mechanisms of disease to designing novel therapeutics. Unfortunately, current machine learning methods are limited by scarce and biased experiment...
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Zusammenfassung: | Predicting protein functional characteristics from structure remains a
central problem in protein science, with broad implications from understanding
the mechanisms of disease to designing novel therapeutics. Unfortunately,
current machine learning methods are limited by scarce and biased experimental
data, and physics-based methods are either too slow to be useful, or too
simplified to be accurate. In this work, we present Loop-Diffusion, an energy
based diffusion model which leverages a dataset of general protein loops from
the entire protein universe to learn an energy function that generalizes to
functional prediction tasks. We evaluate Loop-Diffusion's performance on
scoring TCR-pMHC interfaces and demonstrate state-of-the-art results in
recognizing binding-enhancing mutations. |
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DOI: | 10.48550/arxiv.2409.18201 |