一种改进的原始g带染色体图像分割

I. Yilmaz, Jie Yang, Emrecan Altinsoy, Lei Zhou
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引用次数: 18

摘要

核型是细胞遗传学中最常用的方法之一,用于鉴定和评估遗传缺陷或疾病的存在。为这一过程开发一种自动分析算法之前已经有许多其他研究人员进行了研究。这个过程的一个基本部分是染色体的分割,然后是分类。尽管最近在深度神经网络和图像分类方面有所改进,但高质量的分割对于获得准确的分类结果至关重要。然而,自动分割和提取接触和重叠染色体是目前的问题。有鉴于此,本文拟提出一种自动分割和分离人类g带染色体的方法。我们试图提出一种算法来克服所有的困难,如准确的阈值,分离触摸和重叠染色体。与以往的研究不同,我们还将重点放在可能提高重叠染色体分离之外的分割质量的问题上。在这项工作中,我们提出了染色体图像的端到端分割。该过程包括去除噪声和拒绝不需要的对象,分离前和背景,二元分水岭方法来直观地划分和容易检测的簇,在剩余的簇中找到染色体之间的测地线路径,最后解开重叠和复杂的簇。我们还构建了一个用户界面,让一些人为干预来检测未被注意的集群。我们对145张包含6678条染色体的图像进行了测试,正确提取了6532条(97.8%)染色体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Segmentation for Raw G-Band Chromosome Images
Karyotyping is one of the most common procedure in cytogenetics to identify and evaluate the presence of genetic defects or disorders. Developing an automatic analysis algorithm for this procedure was studied by numerous other researchers before. One of the fundamental parts of this process is the segmentation of chromosomes, which is followed by classification. Despite recent improvements in deep neural networks and image classification, high-quality segmentation is essential to achieve accurate classification results. Still, automatic segmentation and extrication of touching and overlapping chromosomes are current problems. In the light of the above, this paper is intended to present an automatic segmentation and separation of G-band human chromosomes. we have tried to present an algorithm to overcome all the difficulties such as accurate thresholding, separation of touching and overlapping chromosomes. Unlike previous studies, we are also focusing on issues that may increase the segmentation quality beyond the separation of overlapping chromosomes. In this work, we present an end-to-end segmentation of chromosome images. This process includes noise removal and rejection of unwanted objects, separating fore and background, a binary watershed approach to divide intuitively and easily detectable clusters, finding a geodesic path between chromosomes in remaining clusters and finally disentangling of overlapped and complex clusters. We also built a user interface and let a little human intervention to detect unnoticed clusters. We have tested the proposed method on 145 chromosome images that contain 6678 chromosomes and 6532 (97.8%) of them have been correctly extracted.
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