Automatic landmark detection on chromosomes' images for feature extraction purposes

Mehdi Moradi, S. Setarehdan, S. Ghaffari
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引用次数: 20

Abstract

Valuable medical information can be achieved by analysing shape and appearance of human chromosomes. Karyotype, an image of collection of all 23 pairs of human chromosomes, is usually used for this purpose. Making a Karyotype is hard and time consuming, encouraging experts in the image processing and machine vision field to work towards an automatic Karyotyping method. The first step in automation of this process is to define the geometric (morphologic) and intensity based features of the chromosome originating mostly from its banding pattern. As part of a complete project, which is defined to develop a new knowledge based classification technique for chromosomes, a number of new features in addition to the commonly used geometric and intensity based features, are introduced in this paper. Some of the features are computed using the so-called medial axis transform (MAT). For an accurate determination of most of these features it is necessary, however, to identify some key points or landmarks in the image (mostly over the MAT). This paper describes novel algorithms developed to locate such landmarks as centromere, end points of chromosome and two points defined as branching points on the chromosome axis. The algorithms have been tested on the real images supplied by the cytogenetic laboratory of Cancer Institute, University of Tehran. The automatically defined positions of the landmarks have been compared to those manually identified by an expert. In most of the cases the results were in complete agreement.
基于特征提取的染色体图像自动地标检测
通过分析人类染色体的形状和外观可以获得有价值的医学信息。核型,所有23对人类染色体集合的图像,通常用于此目的。制造核型是困难和耗时的,鼓励专家在图像处理和机器视觉领域的工作朝着自动核型方法。该过程自动化的第一步是定义主要源自其带型的染色体的几何(形态)和基于强度的特征。作为一个完整项目的一部分,该项目被定义为开发一种新的基于知识的染色体分类技术,除了常用的几何特征和基于强度的特征外,本文还引入了一些新的特征。一些特征是使用所谓的中轴变换(MAT)计算的。然而,为了准确地确定大多数这些特征,有必要识别图像中的一些关键点或地标(主要是在MAT上)。本文描述了一种新的算法,用于定位着丝点、染色体终点和染色体轴上的两个分支点等标记。这些算法已经在德黑兰大学癌症研究所细胞遗传学实验室提供的真实图像上进行了测试。自动定义的地标位置已经与专家手动识别的位置进行了比较。在大多数情况下,结果是完全一致的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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