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Discriminative Segmentation-based Evaluation through Shape Dissimilarity

机译:判别细分为基础的评估通过形状不相似度

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摘要

Segmentation-based scores play an important role in the evaluation of computational tools in medical image analysis. These scores evaluate the quality of various tasks, such as image registration and segmentation, by measuring the similarity between two binary label maps. Commonly these measurements blend two aspects of the similarity: pose misalignments and shape discrepancies. Not being able to distinguish between these two aspects, these scores often yield similar results to a widely varying range of different segmentation pairs. Consequently, the comparisons and analysis achieved by interpreting these scores become questionable. In this paper we address this problem by exploring a new segmentation-based score, called normalized Weighted Spectral Distance (nWSD), that measures only shape discrepancies using the spectrum of the Laplace operator. Through experiments on synthetic and real data we demonstrate that nWSD provides additional information for evaluating differences between segmentations, which is not captured by other commonly used scores. Our results demonstrate that when jointly used with other scores, such as Dice’s similarity coefficient, the additional information provided by nWSD allows richer, more discriminative evaluations. We show for the task of registration that through this addition we can distinguish different types of registration errors. This allows us to identify the source of errors and discriminate registration results which so far had to be treated as being of similar quality in previous evaluation studies.
机译:基于分段的分数在医学图像分析中计算工具的评估中起着重要作用。这些分数通过测量两个二进制标签图之间的相似性来评估各种任务的质量,例如图像配准和分割。通常,这些测量会融合相似性的两个方面:姿势未对准和形状差异。由于无法区分这两个方面,因此这些分数通常会针对范围广泛的不同细分对产生相似的结果。因此,通过解释这些分数获得的比较和分析变得令人怀疑。在本文中,我们通过探索一个新的基于分段的分数(归一化加权频谱距离(nWSD))来解决此问题,该分数仅使用Laplace算子的频谱来测量形状差异。通过对合成数据和真实数据的实验,我们证明nWSD为评估细分之间的差异提供了其他信息,而其他常用分数无法捕获这些信息。我们的结果表明,与Dice相似系数之类的其他评分一起使用时,nWSD提供的其他信息可以进行更丰富,更具区分性的评估。对于注册任务,我们表明通过这种添加,我们可以区分不同类型的注册错误。这使我们能够识别错误的来源并区分注册结果,到目前为止,在以前的评估研究中,这些结果必须被视为具有类似的质量。

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