Pre-processing pipeline for multi-contrast spinal MS lesion segmentation.
The goals of this project are to:
- Provide a single multi-contrast model that generalizes well across different sites/vendors/sequence parameters;
- Establish an analysis framework that accommodates multiple sessions (over time) to estimate lesion growth/reduction;
The segmentation algorithm uses the deep learning framework SoftSeg, providing outputs that encode partial volume effect and provide uncertainty measures.
The data come from the following sites:
- Brigham and Women's Hospital ๐บ๐ธ
- Massachusetts General Hospital ๐บ๐ธ
- New York University ๐บ๐ธ
- Vanderbilt University ๐บ๐ธ
- Zuckerberg San Francisco General Hospital ๐บ๐ธ
- National Institute of Health ๐บ๐ธ
- U. Mass (in data.neuro) ๐บ๐ธ
- CanProCo (in process) ๐จ๐ฆ
- University College London ๐ฌ๐ง
- Inserm ๐ซ๐ท
- Aix Marseille Universitรฉ ๐ซ๐ท
- OFSEP ๐ซ๐ท
- Ospedale San Raffaele ๐ฎ๐น
- Karolinska Insitutet ๐ธ๐ช