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Valmet: A New Validation Tool for Assessing and Improving 3D Object Segmentation

机译:维美德:一种用于评估和改善3D对象分割的新型验证工具

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摘要

Extracting 3D structures from volumetric images like MRI or CT is becoming a routine process for diagnosis based on quantitation, for radiotherapy planning, for surgical planning and image-guided intervention, for studying neurodevelopmental and neurodegenerative aspects of brain diseases, and for clinical drug trials. Key issues for segmenting anatomical objects from 3D medical images are validity and reliability. We have developed VALMET, a new tool for validation and comparison of object segmentation. New features not available in commercial and public-domain image processing packages are the choice between different metrics to describe differences between segmentations and the use of graphical overlay and 3D display for visual assessment of the locality and magnitude of segmentation variability. Input to the tool are an original 3D image (MRI, CT, ultrasound), and a series of segmentations either generated by several human raters and/or by automatic methods (machine). Quantitative evaluation includes intra-class correlation of resulting volumes and four different shape distance metrics, a) percentage overlap of segmented structures (R intersect S)/(R union S), b) probabilistic overlap measure for non-binary segmentations, c) mean/median absolute distances between object surfaces, and maximum (Hausdorff) distance. All these measures are calculated for arbitrarily selected 2D cross-sections and full 3D segmentations. Segmentation results are overlaid onto the original image data for visual comparison. A 3D graphical display of the segmented organ is color-coded depending on the selected metric for measuring segmentation difference. The new tool is in routine use for intra- and inter-rater reliability studies and for testing novel automatic machine-segmentation versus a gold standard established by human experts. Preliminary studies showed that the new tool could significantly improve intra- and inter-rater reliability of hippocampus segmentation to achieve intra-class correlation coefficients significantly higher than published elsewhere.
机译:从MRI或CT等体积图像中提取3D结构正成为基于定量的诊断,放射治疗计划,外科手术计划和图像指导的干预,研究脑疾病的神经发育和神经退行性方面以及临床药物试验的常规过程。从3D医学图像分割解剖对象的关键问题是有效性和可靠性。我们已经开发了VALMET,这是一种用于验证和比较对象分割的新工具。商业和公共领域图像处理程序包中没有的新功能包括:在用于描述分割之间差异的不同度量之间进行选择,以及使用图形叠加和3D显示进行可视化评估分割变异的位置和大小。该工具的输入是原始3D图像(MRI,CT,超声)以及由多个人工评估者和/或通过自动方法(机器)生成的一系列分割。定量评估包括结果量和四个不同形状距离度量的类内相关性,a)分段结构的重叠百分比(R相交S)/(R并集S),b)非二进制分割的概率重叠度量,c)均值/物体表面之间的绝对距离和最大(Hausdorff)距离。所有这些度量都是针对任意选择的2D横截面和完整的3D分割计算的。分割结果叠加在原始图像数据上以进行视觉比较。取决于选择的用于测量分割差异的度量,对分割的器官的3D图形显示进行了颜色编码。该新工具通常用于评估者内部和评估者之间的可靠性研究,以及与人类专家建立的黄金标准进行对比的新型自动机器细分测试。初步研究表明,该新工具可以显着提高海马分割的评分者内部和评分者之间的可靠性,以实现类别内相关系数明显高于其他地方公布的类别。

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