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Comparative Local Quality Assessment of 3D Medical Image Segmentations with Focus on Statistical Shape Model-Based Algorithms

机译:基于统计形状模型的算法对3D医学图像分割的局部质量比较评估

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The quality of automatic 3D medical segmentation algorithms needs to be assessed on test datasets comprising several 3D images (i.e., instances of an organ). The experts need to compare the segmentation quality across the dataset in order to detect systematic segmentation problems. However, such comparative evaluation is not supported well by current methods. We present a novel system for assessing and comparing segmentation quality in a dataset with multiple 3D images. The data is analyzed and visualized in several views. We detect and show regions with systematic segmentation quality characteristics. For this purpose, we extended a hierarchical clustering algorithm with a connectivity criterion. We combine quality values across the dataset for determining regions with characteristic segmentation quality across instances. Using our system, the experts can also identify 3D segmentations with extraordinary quality characteristics. While we focus on algorithms based on statistical shape models, our approach can also be applied to cases, where landmark correspondences among instances can be established. We applied our approach to three real datasets: liver, cochlea and facial nerve. The segmentation experts were able to identify organ regions with systematic segmentation characteristics as well as to detect outlier instances.
机译:需要在包含多个3D图像(即器官的实例)的测试数据集上评估自动3D医学分割算法的质量。专家需要比较整个数据集的分割质量,以便检测系统的分割问题。但是,目前的方法不能很好地支持这种比较评估。我们提出了一种新颖的系统,用于评估和比较具有多个3D图像的数据集中的分割质量。可以在多个视图中对数据进行分析和可视化。我们检测并显示具有系统分割质量特征的区域。为此,我们扩展了具有连通性标准的分层聚类算法。我们结合整个数据集的质量值来确定区域,并具有跨实例的特征分割质量。使用我们的系统,专家还可以识别具有非凡质量特征的3D分割。尽管我们专注于基于统计形状模型的算法,但我们的方法也可以应用于可以在实例之间建立界标对应关系的情况。我们将我们的方法应用于三个真实的数据集:肝脏,耳蜗和面神经。分割专家能够识别具有系统分割特征的器官区域,并检测异常点。

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