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AN AUTOMATED DETECTION AND MORPHOLOGICAL CLASSIFICATION OF NUMERICAL ABNORMALITIES IN HUMAN CHROMOSOMES

机译:人体染色体数值异常的自动检测和形态分类

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Cytogenetic is a branch of genetics that is concerned with the study of the structure and function of the cell, especially the chromosomes. The chromosomal identification is of prime importance to geneticist for diagnosing various abnormalities. The existing system is developed to classify the chromosomes based on pixel distribution, centromere index and band patterns using artificial neural network techniques. The accuracy of classification is lowered particularly in sub group 'C'. In this paper we propose a technique where the input images of the unpaired well spread chromosomes are obtained from the electron microscope. Initially noise is removed and edges are detected. Then, each object is extracted from the input image, rotated to align vertically and cropped. Then, the features of each chromosome like major axis length, Area and histogram are analysed and sorted in descending order to perform classification. Then based on the number of objects, the numerical abnormality like monosomy and trisomy are detected. Thus the system is fully automated for well-spread images and semi-automated for images with overlapped chromosomes.
机译:细胞遗传学是遗传学的分支,涉及研究细胞的结构和功能,尤其是染色体的研究。染色体鉴定对遗传学家来说是诊断各种异常的重要性。开发现有系统以基于使用人工神经网络技术基于像素分布,Centromere指数和带状图案来分类染色体。分类的准确性尤其在子组'C'中降低。在本文中,我们提出了一种技术,其中未配对孔散射染色体的输入图像是从电子显微镜获得的。最初噪声被移除并检测边缘。然后,从输入图像中提取每个对象,旋转以垂直和裁剪对齐。然后,分析每个染色体的特征,如主轴长度,区域和直方图,以降序排序以执行分类。然后基于对象的数量,检测单体和三元素等数值异常。因此,该系统完全自动用于良好的图像和具有重叠染色体的图像的半自动化。

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