Towards Generalist Imaging Using Multimodal Self-Supervised Learning - Mars Huang

Towards Generalist Imaging Using Multimodal Self-Supervised Learning - Mars Huang

Stanford MedAI via YouTube Direct link

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18 of 20

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Towards Generalist Imaging Using Multimodal Self-Supervised Learning - Mars Huang

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  1. 1 Intro
  2. 2 Increase of Medical Imaging Utilization Can Hurt Patient
  3. 3 Limitation 1: Supervised learning requires large sc labeled datasets
  4. 4 Limitation 2: Few Medical Imaging Models Consider Clinical Context
  5. 5 Prototyping Methods Using Cohort of Pulmonary Embolism Patients
  6. 6 Specific Aims
  7. 7 Challenges For Pulmonary Embolism Detection
  8. 8 PENet
  9. 9 Fusion Types
  10. 10 Major types of self-supervised method for images
  11. 11 Learning global representations can be limiting
  12. 12 Global & Local Representations for Images using Attention G
  13. 13 Representation Learning Objective
  14. 14 Retrieval Results
  15. 15 Fine-tune Classification
  16. 16 Strategies for Generating Class Prompts
  17. 17 Zero-shot Classification Results
  18. 18 Next Steps
  19. 19 Generalizability to Other Downstream Tasks
  20. 20 Demonstrate feasibility of applying the propose to other imaging modalities and patient cohort

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