Roughness Index and Roughness Distance for Benchmarking Medical Segmentation

V. Rathour, Kashu Yamakazi, T. Hoàng, Ngan T. H. Le
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Abstract

Medical image segmentation is one of the most challenging tasks in medical image analysis and has been widely developed for many clinical applications. Most of the existing metrics have been first designed for natural images and then extended to medical images. While object surface plays an important role in medical segmentation and quantitative analysis i.e. analyze brain tumor surface, measure gray matter volume, most of the existing metrics are limited when it comes to analyzing the object surface, especially to tell about surface smoothness or roughness of a given volumetric object or to analyze the topological errors. In this paper, we first analysis both pros and cons of all existing medical image segmentation metrics, specially on volumetric data. We then propose an appropriate roughness index and roughness distance for medical image segmentation analysis and evaluation. Our proposed method addresses two kinds of segmentation errors, i.e. (i)topological errors on boundary/surface and (ii)irregularities on the boundary/surface. The contribution of this work is four-fold: (i) detect irregular spikes/holes on a surface, (ii) propose roughness index to measure surface roughness of a given object, (iii) propose a roughness distance to measure the distance of two boundaries/surfaces by utilizing the proposed roughness index and (iv) suggest an algorithm which helps to remove the irregular spikes/holes to smooth the surface. Our proposed roughness index and roughness distance are built upon the solid surface roughness parameter which has been successfully developed in the civil engineering.
基准医学分割的粗糙度指数和粗糙度距离
医学图像分割是医学图像分析中最具挑战性的任务之一,已在许多临床应用中得到广泛发展。大多数现有的度量都是首先为自然图像设计的,然后扩展到医学图像。虽然物体表面在医学分割和定量分析中发挥着重要作用,如分析脑肿瘤表面、测量灰质体积,但现有的大多数指标在分析物体表面时都是有限的,特别是在判断给定体积物体的表面光滑度或粗糙度或分析拓扑误差时。在本文中,我们首先分析了所有现有的医学图像分割指标的优缺点,特别是在体积数据上。然后提出了适合医学图像分割分析和评价的粗糙度指数和粗糙度距离。我们提出的方法解决了两种分割错误,即(i)边界/表面的拓扑错误和(ii)边界/表面的不规则性。这项工作的贡献有四个方面:(i)检测表面上的不规则尖峰/孔,(ii)提出粗糙度指数来测量给定物体的表面粗糙度,(iii)提出粗糙度距离,利用所提出的粗糙度指数来测量两个边界/表面的距离,(iv)提出一种有助于去除不规则尖峰/孔以使表面光滑的算法。我们提出的粗糙度指数和粗糙度距离是建立在固体表面粗糙度参数的基础上的,该参数已经在土木工程中得到了成功的应用。
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