✅ Develop a Three-Stage AI Pipeline for Spine MRI

Three-stage AI pipeline for spine MRI with segmentation, classification, and severity modules; aligned with radiologist workflow and contextual intelligence.

Use when: Implementing AI solutions for diagnostic imaging in healthcare

How it works:

Identify 17+ anatomical structures (e.g., dural sac, vertebrae) using U-Net, establishing geometric and semantic baselines.

Detect stenosis in key regions — central canal, lateral recess, foraminal openings.

Grade severity using composite input (segmentation masks + axial slices) to improve contextual accuracy.

Tip: Use multi-vendor DICOM datasets to ensure robustness across different scanners.

Tool: U-Net, RegNetY32GF

Outcome: Context-aware AI pipeline aligned with radiologist workflow.


✅ Build Explainability into AI Models

Use when: Increasing trust and transparency in AI diagnostic tools

How it works: