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A new measure for comparing biomedical regions of interest in segmentation of digital images

机译:在数字图像分割中比较感兴趣的生物医学区域的新方法

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The segmentation of the region of interest (ROI) of digital images is generally the first step in the pattern recognition (PR) procedure. Automatic segmentation of biomedical images is desirable and comparisons among new approaches, by using available databases, are important. We present a new approach to compute the Hausdorff distance (HD) between digital images. Although HD is the most used distance estimator among sets, we show why it is not suitable for biomedical applications. In this paper, a new technique to define the degree of correction of the ROI is developed to serve as a basis for the comparisons used to validate works on segmentation of biomedical images. As for online diagnosis, the comparison among possible techniques must be efficient enough to: (1) be done in real time (i.e. during the examination), (2) allow the inclusion of priority aspects, and (3) be intuitive and simple enough to be easily followed by people with no computational or mathematical background. We develop a new index by considering the expectations of the medical doctors who are using computer systems for diagnostic aids, and take into consideration how these systems use ROIs to extract feature properties from the examinations. We discuss conditions for empirically defining a measure for calculating similarities and differences between ROIs. The proposed method is applied to both real and simulated data examples. (C) 2015 Elsevier B.V. All rights reserved.
机译:数字图像的感兴趣区域(ROI)的分割通常是模式识别(PR)过程中的第一步。生物医学图像的自动分割是理想的,并且通过使用可用的数据库进行新方法之间的比较非常重要。我们提出了一种新的方法来计算数字图像之间的Hausdorff距离(HD)。尽管高清是集合中最常用的距离估计器,但我们展示了为什么它不适合生物医学应用。在本文中,开发了一种定义ROI校正程度的新技术,以作为用于验证生物医学图像分割工作的比较的基础。对于在线诊断,可能的技术之间的比较必须足够有效以:(1)实时(即在检查过程中)进行;(2)允许包含优先方面;以及(3)足够直观和简单容易被没有计算或数学背景的人关注。通过考虑将计算机系统用作诊断辅助工具的医生的期望,并考虑这些系统如何使用ROI从检查中提取特征属性,我们可以开发出新的指数。我们讨论了根据经验定义用于计算ROI之间的异同的度量的条件。所提出的方法适用于真实和模拟数据示例。 (C)2015 Elsevier B.V.保留所有权利。

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