MedAI - Training Medical Image Segmentation Models with Less Labeled Data - Sarah Hooper

MedAI - Training Medical Image Segmentation Models with Less Labeled Data - Sarah Hooper

Stanford MedAI via YouTube Direct link

Intro

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1 of 16

Intro

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MedAI - Training Medical Image Segmentation Models with Less Labeled Data - Sarah Hooper

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  1. 1 Intro
  2. 2 Many use cases for deep-learning based medical image segmentation
  3. 3 Goal: develop and validate methods to use mostly unlabeled data to train segmentation networks.
  4. 4 Overview Inputs: labeled data. S, and labeled data, Our approach two-step process using data augmentation with traditional supervision, self supervised learning and
  5. 5 Supervised loss: learn from the labeled data
  6. 6 Self-supervised loss: learn from the unlabeled data
  7. 7 Step 1: train initial segmentation network
  8. 8 Main evaluation questions
  9. 9 Tasks and evaluation metrics
  10. 10 Labeling reduction
  11. 11 Step 2: pseudo-label and retrain
  12. 12 Visualizations
  13. 13 Error modes
  14. 14 Biomarker evaluation
  15. 15 Generalization
  16. 16 Strengths

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