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Efficient Prototype Consistency Learning in Semi-Supervised Medical Image Segmentation via Joint Uncertainty and Data Augmentation | IEEE Conference Publication | IEEE Xplore

Efficient Prototype Consistency Learning in Semi-Supervised Medical Image Segmentation via Joint Uncertainty and Data Augmentation


Abstract:

Recently, prototype learning has emerged in semi-supervised medical image segmentation and achieved remarkable performance. However, the scarcity of labeled data limits t...Show More

Abstract:

Recently, prototype learning has emerged in semi-supervised medical image segmentation and achieved remarkable performance. However, the scarcity of labeled data limits the expressiveness of prototypes in previous methods, potentially hindering the complete representation of prototypes for class embedding. To overcome this issue, we propose an efficient prototype consistency learning via joint uncertainty quantification and data augmentation (EPCL-JUDA) to enhance the semantic expression of prototypes based on the framework of Mean-Teacher. The concatenation of original and augmented labeled data is fed into student network to generate expressive prototypes. Then, a joint uncertainty quantification method is devised to optimize pseudo-labels and generate reliable prototypes for original and augmented unlabeled data separately. High-quality global prototypes for each class are formed by fusing labeled and unlabeled prototypes, which are utilized to generate prototype-to-features to conduct consistency learning. Notably, a prototype network is proposed to reduce high memory requirements brought by the introduction of augmented data. Extensive experiments on Left Atrium, Pancreas-NIH, Type B Aortic Dissection datasets demonstrate EPCL-JUDA’s superiority over previous state-of-the-art approaches, confirming the effectiveness of our framework. The code will be released soon.
Date of Conference: 03-06 December 2024
Date Added to IEEE Xplore: 10 January 2025
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Conference Location: Lisbon, Portugal

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I. Introduction

Recently, supervised medical image segmentation has achieved remarkable improvements by introducing deep learning methods. However, the widespread application of such techniques in real medical diagnosis is continually hindered by the scarcity of labeled data. Thus, researchers have proposed the concept of semi-supervised medical image segmentation (SS-MIS) to reduce the dependence of models on abundant manual annotations, which require a significant amount of time and labor. SS-MIS methods are capable of achieving relatively great performance by extracting precious information from unlabeled data to assist model in training with a small amount of annotated data.

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