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Main Authors: Liu, Ke, Gao, Shangde, Fu, Yichao, Shen, Shuaike, Gao, Shangqi, Shen, Chunhua
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.00748
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author Liu, Ke
Gao, Shangde
Fu, Yichao
Shen, Shuaike
Gao, Shangqi
Shen, Chunhua
author_facet Liu, Ke
Gao, Shangde
Fu, Yichao
Shen, Shuaike
Gao, Shangqi
Shen, Chunhua
contents Lesion segmentation is inherently influenced by imaging uncertainty, arising from ill-defined lesion boundaries and inter-observer variability in diagnosis. To address this challenge, previous works formulated the multi-rater medical image segmentation task, where multiple experts provide separate annotations for each image. However, existing models are typically constrained to either generate diverse segmentation that lacks expert specificity or to produce personalized outputs that merely replicate individual annotators. We propose \textbf{Pro}babilistic modeling of multi-rater lesion \textbf{Seg}mentation (\textbf{ProSeg}) that simultaneously enables both diversification and personalization. Specifically, we introduce two latent variables to model expert annotation preferences and lesion boundary ambiguity. Their conditional probabilistic distributions are then obtained through variational inference, allowing segmentation outputs to be generated by sampling from these distributions. Extensive experiments on both the nasopharyngeal carcinoma dataset (NPC) and the lung nodule dataset (LIDC-IDRI) demonstrate that our ProSeg achieves a new state-of-the-art performance, providing segmentation results that are both diverse and expert-personalized.
format Preprint
id arxiv_https___arxiv_org_abs_2512_00748
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publishDate 2025
record_format arxiv
spellingShingle Probabilistic Modeling of Multi-rater Medical Image Segmentation for Diversity and Personalization
Liu, Ke
Gao, Shangde
Fu, Yichao
Shen, Shuaike
Gao, Shangqi
Shen, Chunhua
Computer Vision and Pattern Recognition
Artificial Intelligence
Lesion segmentation is inherently influenced by imaging uncertainty, arising from ill-defined lesion boundaries and inter-observer variability in diagnosis. To address this challenge, previous works formulated the multi-rater medical image segmentation task, where multiple experts provide separate annotations for each image. However, existing models are typically constrained to either generate diverse segmentation that lacks expert specificity or to produce personalized outputs that merely replicate individual annotators. We propose \textbf{Pro}babilistic modeling of multi-rater lesion \textbf{Seg}mentation (\textbf{ProSeg}) that simultaneously enables both diversification and personalization. Specifically, we introduce two latent variables to model expert annotation preferences and lesion boundary ambiguity. Their conditional probabilistic distributions are then obtained through variational inference, allowing segmentation outputs to be generated by sampling from these distributions. Extensive experiments on both the nasopharyngeal carcinoma dataset (NPC) and the lung nodule dataset (LIDC-IDRI) demonstrate that our ProSeg achieves a new state-of-the-art performance, providing segmentation results that are both diverse and expert-personalized.
title Probabilistic Modeling of Multi-rater Medical Image Segmentation for Diversity and Personalization
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2512.00748