Popliteal vessel wall features hidden in the Osteoarthritis Initiative (OAI) dataset warrant further investigation. However, if the number of annotations is insufficient, deep learning-based feature map analysis from MRI images may overfit and fail to generate a meaningful feature space. We designed a metric learning network combined with an episodic training method to overcome the problem of limited annotations, and demonstrated its ability to learn a meaningful feature embedding. Based on our feature map, we proposed an iterative workflow and identified vessel wall images with high probability of diseases from 1974 cases.
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