基于k -均值聚类和形态学算子的荧光图像白细胞检测与分割

B. J. Ferdosi, Sharmilee Nowshin, Farzana Ahmed Sabera, Habiba
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引用次数: 15

摘要

细胞检测是细胞分析最基本、最重要的步骤。有很多类型的血液疾病可以通过分析血细胞来识别。有几种方法可用于此目的。然而,每种方法都有其优点和缺点,改进细胞分割可以提高后期细胞分类和细胞计数的性能。本文主要关注的是使用k均值聚类和形态学算子从荧光图像中分割白细胞。我们用白细胞检测集群,并根据分裂细胞中细胞核的存在来改进结果。非白细胞是指没有细胞核、体积较小的细胞。细胞核的存在可以作为白细胞的一个指标。我们对细胞核进行分割,计算细胞核的平均面积。然后,我们根据核的存在和大小来改进分割结果。我们对wbc的分析显示了与基础真值的比较。结果灵敏度为96.4932%,精密度为95.3584%。我们的算法和结果分析在几个方面优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
White Blood Cell Detection and Segmentation from Fluorescent Images with an Improved Algorithm using K-means Clustering and Morphological Operators
Cell detection is the most basic and essential step for the analysis of cells. There are enormous types of blood disorders that can be identified by analyzing blood cells. There are several approaches used for this purpose. However, every method has their pros and cons. Improvement of segmentation of cells can increase the performance of cell classification and cell counting in later stages. The main concern of our paper is to segment the white blood cells from fluorescent images using K-means Clustering and Morphological Operators. We detect the cluster with WBC and refine the result depending on the presence of nucleus in the segmented cells. Non-WBCs are the cells without a nucleus and smaller in size. Presence of nucleus in a cell can be an indicator of WBC. We segment nucleus in cells and calculate the average area of the nucleus. We then refine the segmentation result based on the presence and size of the nucleus. Our analysis on WBCs demonstrates a comparison with ground truth values. We achieved our result with sensitivity of 96.4932% and precision of 9S.3584%. Our algorithm and analysis of results outperform state of the art method in several aspects.
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