MNet-SAt: A Multiscale Network with Spatial-enhanced Attention for Segmentation of Polyps in Colonoscopy
Biomedical Signal Processing and Control Biomedical Signal Processing and Control, Volume 102, April 2025, 107363 Objective: To develop a novel deep learning framework for the automated segmentation of colonic polyps in colonoscopy images, overcoming the limitations of current approaches in preservi...
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Zusammenfassung: | Biomedical Signal Processing and Control Biomedical Signal
Processing and Control, Volume 102, April 2025, 107363 Objective: To develop a novel deep learning framework for the automated
segmentation of colonic polyps in colonoscopy images, overcoming the
limitations of current approaches in preserving precise polyp boundaries,
incorporating multi-scale features, and modeling spatial dependencies that
accurately reflect the intricate and diverse morphology of polyps. Methods: To
address these limitations, we propose a novel Multiscale Network with
Spatial-enhanced Attention (MNet-SAt) for polyp segmentation in colonoscopy
images. This framework incorporates four key modules: Edge-Guided Feature
Enrichment (EGFE) preserves edge information for improved boundary quality;
Multi-Scale Feature Aggregator (MSFA) extracts and aggregates multi-scale
features across channel spatial dimensions, focusing on salient regions;
Spatial-Enhanced Attention (SEAt) captures spatial-aware global dependencies
within the multi-scale aggregated features, emphasizing the region of interest;
and Channel-Enhanced Atrous Spatial Pyramid Pooling (CE-ASPP) resamples and
recalibrates attentive features across scales. Results: We evaluated MNet-SAt
on the Kvasir-SEG and CVC-ClinicDB datasets, achieving Dice Similarity
Coefficients of 96.61% and 98.60%, respectively. Conclusion: Both quantitative
(DSC) and qualitative assessments highlight MNet-SAt's superior performance and
generalization capabilities compared to existing methods. Significance:
MNet-SAt's high accuracy in polyp segmentation holds promise for improving
clinical workflows in early polyp detection and more effective treatment,
contributing to reduced colorectal cancer mortality rates. |
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DOI: | 10.48550/arxiv.2412.19464 |