SPA: Efficient User-Preference Alignment against Uncertainty in Medical Image Segmentation
Jiayuan Zhu, Junde Wu, Cheng Ouyang, Konstantinos Kamnitsas, J. Alison Noble

TL;DR
SPA offers an efficient, user-preference aligned segmentation method that adapts to diverse clinical needs with minimal interaction, outperforming existing approaches in medical image segmentation tasks.
Contribution
It introduces a novel framework that efficiently aligns segmentation outputs with user preferences using a probabilistic feedback mechanism, reducing user effort and improving adaptability.
Findings
Reduces user time and effort compared to existing methods
Achieves strong adaptability based on human feedback
Provides state-of-the-art segmentation performance across modalities
Abstract
Medical image segmentation data inherently contain uncertainty. This can stem from both imperfect image quality and variability in labeling preferences on ambiguous pixels, which depend on annotator expertise and the clinical context of the annotations. For instance, a boundary pixel might be labeled as tumor in diagnosis to avoid under-estimation of severity, but as normal tissue in radiotherapy to prevent damage to sensitive structures. As segmentation preferences vary across downstream applications, it is often desirable for an image segmentation model to offer user-adaptable predictions rather than a fixed output. While prior uncertainty-aware and interactive methods offer adaptability, they are inefficient at test time: uncertainty-aware models require users to choose from numerous similar outputs, while interactive models demand significant user input through click or box prompts…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Advanced Neural Network Applications · Advanced Image and Video Retrieval Techniques
