Reducing annotation burden in MR: A novel MR-contrast guided contrastive learning approach for image segmentation.
Lavanya UmapathyTaylor BrownRaza MushtaqMark GreenhillJ'rick LuDiego MartinMaria AltbachAli BilginPublished in: Medical physics (2023)
Learning to embed tissue-specific information that controls MR image contrast with the proposed constrained contrastive learning improved the performance of DL models on subsequent segmentation tasks compared to conventional self-supervised contrastive learning techniques. The use of such domain-specific local representations could help understand, improve performance, and mitigate the scarcity of labeled data in MR image segmentation tasks.