Feature-enhanced Adversarial Semi-supervised Semantic Segmentation Network for Pulmonary Embolism Annotation
Ting-Wei Cheng, Jerry Chang, Ching-Chun Huang, Chin Kuo, Yun-Chien, Cheng

TL;DR
This paper introduces a feature-enhanced adversarial semi-supervised segmentation model for pulmonary embolism detection in CT images, reducing labeling costs and improving accuracy across datasets from different hospitals.
Contribution
The study proposes a novel semi-supervised segmentation network with feature-enhanced adversarial training and HRNet architecture for better small lesion detection in pulmonary embolism.
Findings
Achieved higher mIOU, dice score, and sensitivity on NCKUH dataset.
Improved performance over supervised models when tested on new datasets.
Reduced need for extensive labeled data in pulmonary embolism segmentation.
Abstract
This study established a feature-enhanced adversarial semi-supervised semantic segmentation model to automatically annotate pulmonary embolism lesion areas in computed tomography pulmonary angiogram (CTPA) images. In current studies, all of the PE CTPA image segmentation methods are trained by supervised learning. However, the supervised learning models need to be retrained and the images need to be relabeled when the CTPA images come from different hospitals. This study proposed a semi-supervised learning method to make the model applicable to different datasets by adding a small amount of unlabeled images. By training the model with both labeled and unlabeled images, the accuracy of unlabeled images can be improved and the labeling cost can be reduced. Our semi-supervised segmentation model includes a segmentation network and a discriminator network. We added feature information…
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Taxonomy
TopicsVenous Thromboembolism Diagnosis and Management · Acute Ischemic Stroke Management · Radiomics and Machine Learning in Medical Imaging
