血涂片Giesma染色中红细胞和白细胞的自动检测和定量

Basit Ismail, Momina Moetesum
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引用次数: 1

摘要

自动鉴别血液定量是显微镜血液学计算机辅助诊断系统发展的基本前提。Giesma染色血涂片的数字化图像由于细胞着色使分析变得容易。然而,细胞聚集对检测产生不利影响,使定量成为一项具有挑战性的任务。在本文中,我们提出了一个简单而有效的技术检测和定量红细胞和白细胞从Giesma染色图像的血液涂片。与基于颜色的分割相反,我们将RGB图像分割成它们的组成通道。然后使用直方图均衡化增强绿色通道。我们提出的技术的一个关键步骤是使用不同的二值化方案的红细胞和白细胞检测。然后使用形态学操作去除细胞聚类。然后采用基于轮廓的检测进行细胞定位,采用基于尺寸的分割进行定量。通过加强预处理,我们提出的方案分别为红细胞和白细胞定量提供了70%和99%的准确度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Detection and Quantification of Erythrocytes and Leukocytes from Giesma Stains of Blood Smear
Automated differential blood quantification is a fundamental prerequisite for the development of a computer-assisted diagnostic system for microscopic hematology. Digitized images of Giesma stained blood smears enable ease of analysis due to cell coloration. Nevertheless cell clustering adversely affects detection making quantification a challenging task. In this paper, we present a simple yet effective technique for detection and quantification of erythrocytes and leukocytes from Giesma stained images of blood smears. Contrary to colour based segmentation, we split the RGB images into their constituent channels. Green channel is then enhanced using histogram equalization. A key step of our proposed technique is the use of different binarization schemes for erythrocyte and leukocyte detection. Cell clustering is then removed using morphological operations. Later contour based detection is used for cell localization and size based segmentation is employed for quantification. With enhanced preprocessing, our proposed scheme yielded 70% and 99% accuracies for erythrocyte and leukocyte quantification respectively.
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