采用基于模糊C均值的JSEG算法对白细胞和细胞核图像进行分割和计数

Khamael Al-Dulaimi, Aiman Al-Sabaawi, Rajaa Daami Resen, Jane J. Stephan, Amani Zwayen
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引用次数: 5

摘要

本文提出了一种自适应的无监督分割方法,使白细胞及其细胞核的分割完全自动化。从显微镜图像中分割和计数白细胞是一项具有挑战性的任务,特别是从细胞壁和细胞质中分割白细胞细胞核,因为需要考虑由不均匀光照、成熟阶段、颜色分布、规模和与血液其他成分重叠的细胞引起的类内变化。我们提出使用基于颜色-纹理分布的JSEG算法,并使用模糊C均值适应区域增长来分割和计数wbc及其核。首先,对图像中的颜色进行量化以表示图像中的不同区域。然后将图像像素颜色替换为相应的颜色类标签,从而形成图像的类映射。使用该空间类图的“良好”分割标准应用于局部图像窗口,得到j图像,这些图像可以使用基于模糊C均值算法的自适应区域增长进行分割。模糊C均值也用于计数图像中的每个白细胞。在3个数据集收集的200张数字图像的10种白细胞组合数据集上评估了该方法的性能。对WBC的jaccard距离、rand指数、边界检测误差、f值指数4个指标的分割精度平均分别为0.002、0.93、10.11、0.93,对WBC核的分割精度平均分别为0.015、0.88、14.11、0.90。在相同的数据集上,将该方法的分割精度与其他现有的白细胞分割技术进行了比较和基准测试,结果表明该方法优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Adapted JSEG Algorithm with Fuzzy C Mean for Segmentation and Counting of White Blood Cell and Nucleus Images
In this paper, an adapted unsupervised segmentation approach is proposed to fully automate the segmentation of white blood cells and their nuclei. Segmentation and counting of white blood cells from microscope images are challenging tasks, especially the segmentation of white blood cell nuclei from the cell wall and cytoplasm because of the need to consider intra-class variations arising from non-uniform illumination, stage of maturity, colour distribution, scale, and overlapped cells with other components of the blood. We propose the use of the JSEG algorithm based on colour-texture distribution, and adapted region growing using the Fuzzy C Mean to segment and count WBCs and their nuclei. First, colours in the image are quantized to represent differentiated regions in the image. Image pixel colours are then replaced by their corresponding colour class labels, thus forming a class-map of the image. A criterion for “good” segmentation using this spatial class-map is applied to local image windows resulting in J-images, which can be segmented using adapted region growing based on the Fuzzy C Mean algorithm. The Fuzzy C Mean is also employed for counting each white blood cell in images. Performance of the proposed method is evaluated on a combined dataset of 10 types of white blood cell with 200 digital images collected from 3 datasets. It achieves an average segmentation accuracy using four indices for WBC segmentation: jaccard distance, rand index, boundary detection error and F-value indices, 0.002, 0.93, 10.11, 0.93, respectively, while for WBC nuclei segmentation, it achieves indices values, 0.015, 0.88, 14.11, 0.90, respectively. The segmentation accuracy of the proposed method is also compared and benchmarked with the other existing techniques for segmentation of white blood cells over the same datasets and the results show that the proposed method is superior to other approaches.
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