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Enterprise AI Analysis: SwinCup-DiscNet: A fusion transformer framework for glaucoma diagnosis using optic disc and cup features

Healthcare AI

SwinCup-DiscNet: A fusion transformer framework for glaucoma diagnosis using optic disc and cup features

Glaucoma is a leading cause of permanent visual disability. Early detection is crucial. This paper introduces SwinCup-DiscNet, a novel fusion transformer framework that integrates optic disc/cup and feature-based segmentation with global feature learning for effective glaucoma screening. It combines an Attention U-Net for precise OD/OC boundary extraction with a Swin Transformer encoder for global feature analysis. The framework uses a probabilistic fusion of the vertical Cup-to-Disc Ratio (vCDR) and deep learning features for final classification. Evaluated on LAG, ACRIMA, and DRISTHI-GS datasets, SwinCup-DiscNet consistently outperforms traditional CNN-based and segmentation-only models, showing robustness, reliability, and clinical interpretability.

Executive Impact: Key Performance Indicators

SwinCup-DiscNet delivers robust improvements in diagnostic accuracy and efficiency, critical for large-scale healthcare deployments.

0 Diagnostic Accuracy (ACRIMA)
0 F1-score (ACRIMA)
0 CDR MAE (LAG)
0 OD Dice (LAG)

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Explore the innovative architecture and operational flow of the SwinCup-DiscNet framework, detailing how it leverages fusion transformers and attention-based U-Nets for precise glaucoma diagnosis.

SwinCup-DiscNet Novel diagnostic framework for glaucoma

The framework integrates segmentation-based cup-to-disc ratio (CDR) computation with attention-based classification, creating a robust, interpretable, and high-performing glaucoma detection system. This addresses limitations of traditional classification networks that often fail to identify clinically significant structural biomarkers.

Enterprise Process Flow

Fundus Image Input
Preprocessing (Resize, Normalize, CLAHE, Noise Removal)
Segmentation Branch (Attention U-Net OD/OC Masks)
Swin Transformer Encoder (Classification Branch)
Postprocessing (Fourier Smoothing, Ellipse Fitting, Vertical CDR)
Fusion Strategy (Combine Swin Probability + CDR Score)
Final Glaucoma Output (Binary Decision + ROI Visualization)

Review the rigorous evaluation of SwinCup-DiscNet across multiple benchmark datasets, highlighting its superior accuracy, F1-score, and reduced error rates compared to existing models.

Metric U-Net (Segmentation) Swin Transformer (Classification) SwinCup-DiscNet (Proposed)
Accuracy (LAG) 90.10% 95.50% 99.02%
F1-score (LAG) 89.20% 94.90% 97.20%
CDR MAE (LAG) 0.09 N/A 0.03
OD Dice (LAG) 0.92 0.94 0.96
OC Dice (LAG) 0.88 0.90 0.93

Understand the real-world implications of SwinCup-DiscNet, including its ability to minimize false positives and provide clinically interpretable results, enhancing early glaucoma detection.

Enhanced Glaucoma Detection in Real-World Settings

SwinCup-DiscNet's fusion approach significantly reduces false positives by leveraging both global retinal context and structural biomarkers. This robust performance, especially in borderline cases, makes it a highly effective clinical tool for early glaucoma detection, weighing sensitivity over specificity in screening scenarios.

  • Reduced false positives in cases with large optic cups or ambiguous disc morphology.
  • Improved segmentation accuracy despite imaging artifacts like non-uniform light or vessel overlap.
  • Balances global retinal context with structural biomarkers for robust decision-making.
  • Clinically interpretable outcomes, aligning with real-world screening practices.

Quantifying the Impact of AI-Driven Glaucoma Diagnosis

Estimate the potential time savings and cost efficiencies for your healthcare organization by adopting an AI-powered diagnostic framework like SwinCup-DiscNet.

Estimated Annual Savings $0
Annual Hours Reclaimed 0

Your AI Implementation Roadmap

A structured approach to integrating SwinCup-DiscNet into your clinical workflows for seamless adoption and maximum impact.

Phase 1: Initial Consultation & Needs Assessment (2-4 Weeks)

Understand current diagnostic workflows, infrastructure, and specific challenges. Identify key integration points for SwinCup-DiscNet within existing EHR/PACS systems.

Phase 2: Data Preparation & Model Customization (4-8 Weeks)

Securely prepare and anonymize historical fundus image data. Fine-tune SwinCup-DiscNet model using organization-specific data to optimize performance for local patient demographics and imaging equipment.

Phase 3: Integration & Pilot Deployment (6-10 Weeks)

Integrate the AI framework into the clinical workflow. Conduct a pilot study with a subset of clinicians to gather feedback and validate performance in a live environment.

Phase 4: Full-Scale Deployment & Monitoring (3-5 Weeks)

Roll out SwinCup-DiscNet across the department/organization. Establish continuous monitoring for performance, accuracy, and user experience.

Phase 5: Training & Ongoing Support (Ongoing)

Provide comprehensive training for medical staff. Offer continuous support, updates, and performance optimizations.

Ready to Transform Glaucoma Diagnosis?

Discover how SwinCup-DiscNet can transform your glaucoma diagnostic process.

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