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  4. Leveraging structure-informed machine learning for fast steric zipper propensity prediction across whole proteomes

Leveraging structure-informed machine learning for fast steric zipper propensity prediction across whole proteomes

2025-08-25 | Leveraging structure-informed machine learning for fast steric zipper propensity prediction across whole proteomes – Plos Comput. Biol. Zink, S.; Qu, S.; Holton, T.; Shankar, E.; Stanley, P.; Eisenberg,* D. S.; Sawaya, M. R.; Rodriguez, J. A.

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