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Metrics for evaluating 3D medical image segmentation: analysis, selection, and tool

机译:评估3D医学图像分割的指标:分析,选择和工具

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Background Medical Image segmentation is an important image processing step. Comparing images to evaluate the quality of segmentation is an essential part of measuring progress in this research area. Some of the challenges in evaluating medical segmentation are: metric selection, the use in the literature of multiple definitions for certain metrics, inefficiency of the metric calculation implementations leading to difficulties with large volumes, and lack of support for fuzzy segmentation by existing metrics. Result First we present an overview of 20 evaluation metrics selected based on a comprehensive literature review. For fuzzy segmentation, which shows the level of membership of each voxel to multiple classes, fuzzy definitions of all metrics are provided. We present a discussion about metric properties to provide a guide for selecting evaluation metrics. Finally, we propose an efficient evaluation tool implementing the 20 selected metrics. The tool is optimized to perform efficiently in terms of speed and required memory, also if the image size is extremely large as in the case of whole body MRI or CT volume segmentation. An implementation of this tool is available as an open source project. Conclusion We propose an efficient evaluation tool for 3D medical image segmentation using 20 evaluation metrics and provide guidelines for selecting a subset of these metrics that is suitable for the data and the segmentation task.
机译:背景技术医学图像分割是重要的图像处理步骤。比较图像以评估分割质量是衡量该研究领域进展的重要部分。评估医学细分的挑战包括:指标选择,文献中对某些指标使用多种定义,指标计算实施效率低下导致大量问题,以及现有指标对模糊细分的支持不足。结果首先,我们基于全面的文献综述概述了选择的20种评估指标。对于模糊分割(显示每个体素到多个类别的隶属度),提供了所有度量的模糊定义。我们提供有关度量标准属性的讨论,以提供选择评估度量标准的指南。最后,我们提出了一种有效的评估工具,该工具可实施20个选定指标。该工具经过优化,可以在速度和所需的内存方面高效执行,并且在图像大小非常大的情况下(如全身MRI或CT体积分割的情况)也是如此。此工具的实现可作为一个开源项目获得。结论我们建议使用20个评估指标对3D医学图像进行分割的有效评估工具,并为选择适合数据和分割任务的这些度量的子集提供指导。

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