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[ARTICLE · art-33558] src=arxiv.org ↗ pub= topic=machine-learning verified=true sentiment=↑ positive

Protein Representation Learning with Secondary-Structure and Energy-Filtered Hydrogen-Bond Graphs

Researchers introduced SSProNet, a secondary-structure-aware graph neural network for protein representation learning that uses energy-filtered hydrogen-bond graphs. The model outperforms existing graph-based methods on protein benchmarks and offers enhanced biological interpretability by aligning learned connectivity with established structural motifs. Code is available on GitHub.

read1 min views1 publishedJun 19, 2026

arXiv:2606.19374v1 Announce Type: new Abstract: Graph-based representations are widely used in protein modeling, yet many existing approaches rely primarily on sequence adjacency or geometric proximity, which only partially reflect the principles governing protein folding. Proteins instead adopt complex three-dimensional conformations organized around secondary structure elements, such as $\alpha$-helices and $\beta$-sheets, which encode recurring local motifs and stabilizing hydrogen-bond interactions. In this work, we introduce a secondary-structure-aware graph neural network for protein representation learning. Residue-level node representations are augmented with secondary structure assignments, and graph edges are constructed from hydrogen-bond interactions filtered by their energetic strength. This design enables the model to capture both local structural context and long-range couplings that are central to protein stability and function. We evaluate the proposed approach on commonly used protein benchmarks and observe consistent improvements over existing graph-based methods. In addition, the resulting graph representations offer enhanced biological interpretability, as the learned connectivity aligns with established structural motifs. These findings suggest that incorporating secondary structure and energy-filtered hydrogen-bond topology provides an effective inductive bias for protein representation learning. The code is released at https://github.com/mohamedmohamed2021/SSProNet

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