A Semi-Supervised Approach with Error Reflection for Echocardiography Segmentation
Xiaoxiang Han, Yiman Liu, Jiang Shang, Qingli Li, Jiangang Chen,, Menghan Hu, Qi Zhang, Yuqi Zhang, and Yan Wang

TL;DR
This paper introduces a semi-supervised segmentation method for echocardiography that incorporates an error reflection strategy inspired by human error correction, improving pseudo-label quality amidst challenging image conditions.
Contribution
It proposes a novel error reflection approach with reconstruction reflection and guidance correction, specifically designed to handle echocardiography's poor contrast and noise.
Findings
Enhanced segmentation accuracy on echocardiography datasets
Robust pseudo-label generation despite image noise and poor contrast
Outperforms existing semi-supervised methods in this domain
Abstract
Segmenting internal structure from echocardiography is essential for the diagnosis and treatment of various heart diseases. Semi-supervised learning shows its ability in alleviating annotations scarcity. While existing semi-supervised methods have been successful in image segmentation across various medical imaging modalities, few have attempted to design methods specifically addressing the challenges posed by the poor contrast, blurred edge details and noise of echocardiography. These characteristics pose challenges to the generation of high-quality pseudo-labels in semi-supervised segmentation based on Mean Teacher. Inspired by human reflection on erroneous practices, we devise an error reflection strategy for echocardiography semi-supervised segmentation architecture. The process triggers the model to reflect on inaccuracies in unlabeled image segmentation, thereby enhancing the…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Medical Imaging Techniques and Applications · Radiomics and Machine Learning in Medical Imaging
