置信度轮廓:医学语义分割的不确定性感知标注

Andre Ye, Quan Ze Chen, Amy Zhang
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引用次数: 0

摘要

医学图像分割建模是一项高风险的任务,其中对不确定性的理解对于解决视觉模糊性至关重要。先前的工作已经开发了分割模型,利用概率或生成机制来推断标注者绘制单一边界的标签的不确定性。然而,由于这些注释不能表示单个注释者的不确定性,在它们上训练的模型产生难以解释的不确定性映射。我们提出了一种新的分割表示方法——置信度轮廓(Confidence Contours),它使用高置信度和低置信度的“轮廓”来直接捕获不确定性,并开发了一种新的轮廓收集标注系统。我们对肺图像数据集联盟(LIDC)和一个合成数据集进行了评估。从一个有30个参与者的注释研究中,结果表明置信度轮廓提供了高代表性的能力,而没有相当高的注释者的努力。我们还发现,通用分割模型可以在与标准奇异注释相同的性能水平上学习置信轮廓。最后,通过对5位医学专家的访谈,我们发现由于结构不确定性的表征,置信度等高线图比贝叶斯图更具可解释性。
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Confidence Contours: Uncertainty-Aware Annotation for Medical Semantic Segmentation
Medical image segmentation modeling is a high-stakes task where understanding of uncertainty is crucial for addressing visual ambiguity. Prior work has developed segmentation models utilizing probabilistic or generative mechanisms to infer uncertainty from labels where annotators draw a singular boundary. However, as these annotations cannot represent an individual annotator's uncertainty, models trained on them produce uncertainty maps that are difficult to interpret. We propose a novel segmentation representation, Confidence Contours, which uses high- and low-confidence ``contours’’ to capture uncertainty directly, and develop a novel annotation system for collecting contours. We conduct an evaluation on the Lung Image Dataset Consortium (LIDC) and a synthetic dataset. From an annotation study with 30 participants, results show that Confidence Contours provide high representative capacity without considerably higher annotator effort. We also find that general-purpose segmentation models can learn Confidence Contours at the same performance level as standard singular annotations. Finally, from interviews with 5 medical experts, we find that Confidence Contour maps are more interpretable than Bayesian maps due to representation of structural uncertainty.
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