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Mutual consistency learning for semi-supervised medical image segmentation
Affiliation:1. Department of Data Science & AI, Faculty of Information Technology, Monash University, Melbourne, VIC 3800, Australia;2. Monash-Airdoc Research, Monash University, Melbourne, VIC 3800, Australia;3. Monash Medical AI, Monash eResearch Centre, Melbourne, VIC 3800, Australia;4. DAMO Academy, Alibaba Group, Hangzhou 311121, China;5. National Engineering Laboratory for Integrated Aero-Space-Ground-Ocean Big Data Application Technology, School of Computer Science and Engineering, Northwestern Polytechnical University, Xi’an 710072, China;1. Computer Vision Laboratory, ETH Zurich, Sternwartstrasse 7, Zurich- 8092, Switzerland;2. University Hospital of Zurich, Ramistrasse 100, Zurich- 8091, Switzerland;1. Department of Electrical Engineering, ESAT/PSI, KU Leuven, Leuven, Belgium;2. Department of Imaging and Pathology, Radiology, KU Leuven, Leuven, Belgium;3. Medical Imaging Research Center, UZ Leuven, Herestraat 49 - 7003, Leuven 3000, Belgium
Abstract:In this paper, we propose a novel mutual consistency network (MC-Net+) to effectively exploit the unlabeled data for semi-supervised medical image segmentation. The MC-Net+ model is motivated by the observation that deep models trained with limited annotations are prone to output highly uncertain and easily mis-classified predictions in the ambiguous regions (e.g., adhesive edges or thin branches) for medical image segmentation. Leveraging these challenging samples can make the semi-supervised segmentation model training more effective. Therefore, our proposed MC-Net+ model consists of two new designs. First, the model contains one shared encoder and multiple slightly different decoders (i.e., using different up-sampling strategies). The statistical discrepancy of multiple decoders’ outputs is computed to denote the model’s uncertainty, which indicates the unlabeled hard regions. Second, we apply a novel mutual consistency constraint between one decoder’s probability output and other decoders’ soft pseudo labels. In this way, we minimize the discrepancy of multiple outputs (i.e., the model uncertainty) during training and force the model to generate invariant results in such challenging regions, aiming at regularizing the model training. We compared the segmentation results of our MC-Net+ model with five state-of-the-art semi-supervised approaches on three public medical datasets. Extension experiments with two standard semi-supervised settings demonstrate the superior performance of our model over other methods, which sets a new state of the art for semi-supervised medical image segmentation. Our code is released publicly at https://github.com/ycwu1997/MC-Net.
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