Advancing UWF-SLO Vessel Segmentation with Source-Free Active Domain Adaptation and a Novel Multi-Center Dataset
Hongqiu Wang, Xiangde Luo, Wu Chen, Qingqing Tang, Mei Xin, Qiong, Wang, Lei Zhu

TL;DR
This paper presents a novel source-free active domain adaptation framework for vessel segmentation in UWF-SLO images, utilizing a new multi-center dataset to improve cross-center accuracy with minimal annotations.
Contribution
Introduces a patch-based active domain adaptation method with a new multi-center dataset for robust vessel segmentation across diverse medical centers.
Findings
Outperforms existing domain adaptation methods.
Reduces annotation effort significantly.
Enhances segmentation accuracy across multiple centers.
Abstract
Accurate vessel segmentation in Ultra-Wide-Field Scanning Laser Ophthalmoscopy (UWF-SLO) images is crucial for diagnosing retinal diseases. Although recent techniques have shown encouraging outcomes in vessel segmentation, models trained on one medical dataset often underperform on others due to domain shifts. Meanwhile, manually labeling high-resolution UWF-SLO images is an extremely challenging, time-consuming and expensive task. In response, this study introduces a pioneering framework that leverages a patch-based active domain adaptation approach. By actively recommending a few valuable image patches by the devised Cascade Uncertainty-Predominance (CUP) selection strategy for labeling and model-finetuning, our method significantly improves the accuracy of UWF-SLO vessel segmentation across diverse medical centers. In addition, we annotate and construct the first Multi-center UWF-SLO…
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Taxonomy
TopicsDental Radiography and Imaging · Multimodal Machine Learning Applications · Drilling and Well Engineering
