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arXiv 提交日期: 2025-12-11
📄 Abstract - CheXmask-U: Quantifying uncertainty in landmark-based anatomical segmentation for X-ray images

Uncertainty estimation is essential for the safe clinical deployment of medical image segmentation systems, enabling the identification of unreliable predictions and supporting human oversight. While prior work has largely focused on pixel-level uncertainty, landmark-based segmentation offers inherent topological guarantees yet remains underexplored from an uncertainty perspective. In this work, we study uncertainty estimation for anatomical landmark-based segmentation on chest X-rays. Inspired by hybrid neural network architectures that combine standard image convolutional encoders with graph-based generative decoders, and leveraging their variational latent space, we derive two complementary measures: (i) latent uncertainty, captured directly from the learned distribution parameters, and (ii) predictive uncertainty, obtained by generating multiple stochastic output predictions from latent samples. Through controlled corruption experiments we show that both uncertainty measures increase with perturbation severity, reflecting both global and local degradation. We demonstrate that these uncertainty signals can identify unreliable predictions by comparing with manual ground-truth, and support out-of-distribution detection on the CheXmask dataset. More importantly, we release CheXmask-U (this http URL), a large scale dataset of 657,566 chest X-ray landmark segmentations with per-node uncertainty estimates, enabling researchers to account for spatial variations in segmentation quality when using these anatomical masks. Our findings establish uncertainty estimation as a promising direction to enhance robustness and safe deployment of landmark-based anatomical segmentation methods in chest X-ray. A fully working interactive demo of the method is available at this http URL and the source code at this http URL.

顶级标签: medical computer vision model evaluation
详细标签: uncertainty estimation medical image segmentation chest x-ray landmark detection dataset 或 搜索:

CheXmask-U:针对X光图像的基于解剖标志点分割的不确定性量化 / CheXmask-U: Quantifying uncertainty in landmark-based anatomical segmentation for X-ray images


1️⃣ 一句话总结

这篇论文提出了一种量化X光图像中基于解剖标志点分割结果不确定性的新方法,并发布了一个包含大量不确定性标注的数据集,旨在提高医疗影像分析系统的可靠性和临床部署安全性。


源自 arXiv: 2512.10715