Automated identification of centromere position and centromere index(CI) of human chromosome images

Nirmala Madian
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引用次数: 3

Abstract

Automated chromosome classification is an essential task in cytogenetics. The genetic disorders and abnormalities that occur to the future generation can be predicted through analysing the various characteristics of the chromosomes. The chromosome classification is mainly based on geometric and morphological features. An effective algorithm for chromosome geometric feature extraction is presented. The geometric features of the chromosome are length and centromere. The morphological features are banding pattern. The paper deals with chromosome length and centromere position. The centromere plays an important role to determine the position of P Arm and Q Arm. The P Arm and Q Arm are calculated. The total length is calculated by the sum of P Arm and Q Arm. The proposed algorithm helps in calculating length by curve fitting method which is based on the skeletonization algorithm. The centromere position is identified by finding the concave and convex points on chromosome images.
人类染色体图像着丝粒位置和着丝粒指数(CI)的自动识别
染色体自动分类是细胞遗传学的一项重要工作。通过分析染色体的各种特征,可以预测下一代发生的遗传疾病和异常。染色体分类主要基于几何和形态特征。提出了一种有效的染色体几何特征提取算法。染色体的几何特征是长度和着丝粒。形态特征为带状。本文讨论了染色体长度和着丝粒位置。着丝粒对P臂和Q臂的位置起着重要的决定作用。计算了P臂和Q臂。总长度由P臂和Q臂之和计算。该算法采用基于骨架化算法的曲线拟合方法计算长度。着丝粒的位置是通过寻找染色体图像上的凹点和凸点来确定的。
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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