2023
DOI: 10.1101/2023.12.15.571942
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DeepPBS: Geometric deep learning for interpretable prediction of protein–DNA binding specificity

Raktim Mitra,
Jinsen Li,
Jared M. Sagendorf
et al.

Abstract: Predicting specificity in protein-DNA interactions is a challenging yet essential task for understanding gene regulation. Here, we present Deep Predictor of Binding Specificity (DeepPBS), a geometric deep-learning model designed to predict binding specificity across protein families based on protein-DNA structures. The DeepPBS architecture allows investigation of different family-specific recognition patterns. DeepPBS can be applied to predicted structures, and can aid in the modeling of protein-DNA complexes.… Show more

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