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Medical Image Clasification

Faster diagnosis and Smarter imaging.

BY USE CASES

Medical image classification is essential for early diagnosis of diseases like cancer, neurological disorders, and infections. Traditional AI models require vast datasets and long training times — and they still struggle with image noise, low-contrast scans, or subtle patterns.

The Challenge:

  • Medical images (e.g. MRIs, CT scans, X-rays) are high-dimensional and complex

  • Subtle anomalies are often missed or misclassified

  • Traditional models need large labeled datasets to learn effectively

  • Diagnosis delays cost time, money, and lives

Quantum-Inspired Solution

What HessQ Does – 3 Key Benefits

Quantum-Like Feature Extraction

Uses quantum-inspired kernels to map image data into higher-dimensional spaces, improving pattern recognition.

Reduces training time with QUBO-based optimization — ideal for real-time analysis or resource-limited settings.

Detects anomalies even in noisy, low-resolution images — minimizing diagnostic errors.

Faster, Smaller Models
Improved Classification Accuracy

The Result:

  • Higher precision: Improved sensitivity and specificity in detecting disease

  • Lower training cost: Achieves high performance with smaller datasets

  • Faster inference time: Suitable for real-time clinical support systems