PGL: Prior-Guided Local Self-supervised Learning for 3D Medical Image Segmentation
Yutong Xie, Jianpeng Zhang, Zehui Liao, Yong Xia, and Chunhua Shen

TL;DR
This paper introduces PGL, a self-supervised learning approach that emphasizes local region consistency in 3D medical images, significantly improving segmentation performance by leveraging prior spatial transformations.
Contribution
The novel PGL model learns local structural consistency using prior spatial transformations, enhancing 3D medical image segmentation beyond global SSL methods.
Findings
Outperforms global SSL models in segmentation tasks
Effective across multiple CT datasets and organs
Improves downstream segmentation accuracy
Abstract
It has been widely recognized that the success of deep learning in image segmentation relies overwhelmingly on a myriad amount of densely annotated training data, which, however, are difficult to obtain due to the tremendous labor and expertise required, particularly for annotating 3D medical images. Although self-supervised learning (SSL) has shown great potential to address this issue, most SSL approaches focus only on image-level global consistency, but ignore the local consistency which plays a pivotal role in capturing structural information for dense prediction tasks such as segmentation. In this paper, we propose a PriorGuided Local (PGL) self-supervised model that learns the region-wise local consistency in the latent feature space. Specifically, we use the spatial transformations, which produce different augmented views of the same image, as a prior to deduce the location…
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Taxonomy
TopicsAdvanced Neural Network Applications · Radiomics and Machine Learning in Medical Imaging · Domain Adaptation and Few-Shot Learning
