Prior Guided Deep Difference Meta-Learner for Fast Adaptation to Stylized Segmentation
Anjali Balagopal, Dan Nguyen, Ti Bai, Michael Dohopolski, Mu-Han Lin,, Steve Jiang

TL;DR
This paper introduces a prior-guided deep difference meta-learner that enables rapid adaptation of pre-trained segmentation models to new clinical styles and anatomical structures without additional training, demonstrated across multiple datasets.
Contribution
The proposed Prior-guided DDL network is novel in its ability to learn style differences from simulated data and adapt to new styles and structures without real data exposure.
Findings
Significant improvement in Dice scores after adaptation.
Effective across multiple anatomical structures and practice styles.
Fast adaptation with only three initial patient examples.
Abstract
When a pre-trained general auto-segmentation model is deployed at a new institution, a support framework in the proposed Prior-guided DDL network will learn the systematic difference between the model predictions and the final contours revised and approved by clinicians for an initial group of patients. The learned style feature differences are concatenated with the new patients (query) features and then decoded to get the style-adapted segmentations. The model is independent of practice styles and anatomical structures. It meta-learns with simulated style differences and does not need to be exposed to any real clinical stylized structures during training. Once trained on the simulated data, it can be deployed for clinical use to adapt to new practice styles and new anatomical structures without further training. To show the proof of concept, we tested the Prior-guided DDL network on…
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Taxonomy
TopicsMedical Imaging and Analysis · AI in cancer detection · Dental Radiography and Imaging
