--- title: SHIA - Brain MRI Segmentation emoji: 🧠 colorFrom: blue colorTo: purple sdk: docker app_port: 7860 pinned: false license: mit --- # SHIA - Structured Health Intelligence for Alzheimer's Fast GPU-accelerated brain MRI segmentation API. ## Setup Instructions ### 1. Convert the model (run locally first) ```bash # Install conversion dependencies pip install tensorflowjs tensorflow # Convert tfjs model to H5 format cd huggingface python convert_model.py ../public/models/model18cls ./model18cls ``` ### 2. Upload to Hugging Face Space The `model18cls/` folder should now contain `model.h5` and `saved_model/`. ## API Endpoints ### POST /segment/tensor (Recommended) Upload pre-processed tensor data (256³ uint8, gzipped) for GPU inference. This is the recommended endpoint as it ensures identical preprocessing to local inference. ```bash # Frontend sends the conformed tensor from NiiVue directly # See atrophy/main.js for implementation ``` ### POST /segment Upload a NIfTI file (.nii or .nii.gz) for segmentation. Note: Server-side preprocessing may differ slightly from local NiiVue preprocessing. ```bash curl -X POST -F "file=@brain.nii.gz" https://YOUR-SPACE.hf.space/segment ``` ### POST /segment/compact Same as /segment but returns base64-gzipped results. ### GET /health Check API status and GPU availability. ## Credits Based on [BrainChop](https://github.com/neuroneural/brainchop) by the Neuroneural Lab.