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Evaluating Segmentation Error without Ground Truth

机译:在没有地面真理的情况下评估细分误差

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摘要

The automatic delineation of the boundaries of organs and other anatomical structures is a key component of many medical image processing systems. In this paper we present a generic learning approach based on a novel space of segmentation features, which can be trained to predict the overlap error and Dice coefficient of an arbitrary organ segmentation without knowing the ground truth delineation. We show the regressor to be much stronger a predictor of these error metrics than the responses of Probabilistic Boosting Classifiers trained on the segmentation boundary. The presented approach not only allows us to build reliable confidence measures and fidelity checks, but also to rank several segmentation hypotheses against each other during online usage of the segmentation algorithm in clinical practice.
机译:器官和其他解剖结构的边界的自动描绘是许多医学图像处理系统的关键组成部分。在本文中,我们提出了一种基于新颖的分割特征空间的通用学习方法,该方法可以训练以预测任意器官分割的重叠误差和Dice系数,而无需了解地面真实情况的描绘。我们显示,与在细分边界上训练的概率提升分类器的响应相比,回归器对这些误差度量的预测器要强得多。提出的方法不仅使我们能够建立可靠的置信度度量和保真度检查,而且在临床实践中在线使用分割算法期间,可以将多个分割假设相互排名。

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