TL;DR本文提出了一种Prompt learning based SFDA(ProSFDA)的方法用于医疗图像分割,该方法旨在通过显式地将领域差异最小化来改善领域适应的质量,实验结果表明,所提出的方法比其他SFDA方法表现更好,甚至与UDA方法可比。
Abstract
The domain discrepancy existed between medical images acquired in different situations renders a major hurdle in deploying pre-trained medical image segmentation models for clinical use. Since it is less possible