Expectation Maximization Segmentation Algorithm for Classification of Human Genome Image

D. Menaka, S. Vaidyanathan
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引用次数: 2

Abstract

Chromosomes are cellular structures which carry the genetic material. A chromosome is composed of a single circular or linear DNA molecule. The cell details of every individual is found in genome which contains the DNA genetic blueprint. The partitioning and categorization of chromosome has to be automated by standard algorithms for easy diagnosis of certain diseases. The structural and numerical anomalies in the genes that occur to the future generation can be predicted through the analysis of the various characteristics of the chromosomes. Karyotyping indicates the display of the chromosomes of a cell by arranging them in a specific and distinct fashion which will simplify the chromosome analysis. The multispectral staining techniques adopted in MFISH offers classification of human genome by assigning different colors to different chromosomes that ease the determination of structural and numerical aberrations. The important step in multispectral MFISH image karyotyping is segmentation of DAPI images. In this paper, Expectation maximization algorithm for M-FISH segmentation is presented. The Expectation Maximization segmentation algorithm reveals improved performance in segmentation when an analogy is made with watershed segmentation method for 30 sets of images taken from ADIR dataset of MFISH images. After segmentation, chromosomes ar classified using K means algorithm and an overall quality of 91.68% is reported.
人类基因组图像分类的期望最大化分割算法
染色体是携带遗传物质的细胞结构。染色体由单个环状或线状DNA分子组成。每个个体的细胞细节都存在于包含DNA遗传蓝图的基因组中。为了方便诊断某些疾病,染色体的划分和分类必须通过标准算法实现自动化。通过分析染色体的各种特征,可以预测下一代基因中的结构和数值异常。染色体组型是指通过将染色体以一种特定的、独特的方式排列来显示细胞的染色体,这将简化染色体分析。MFISH采用的多光谱染色技术通过给不同的染色体分配不同的颜色来对人类基因组进行分类,从而简化了结构和数值畸变的确定。多光谱MFISH图像核型的重要步骤是DAPI图像的分割。本文提出了一种用于M-FISH分割的期望最大化算法。期望最大化分割算法对MFISH图像ADIR数据集的30组图像进行了分水岭分割方法的类比,结果表明期望最大化分割算法的分割性能有所提高。分割后,采用K均值算法对染色体进行分类,总体质量为91.68%。
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