A Computer-Aided System for Differential Count from Peripheral Blood Cell Images

A. Loddo, Lorenzo Putzu, C. D. Ruberto, G. Fenu
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引用次数: 16

Abstract

The differential count and analysis of blood cells in microscope images can provide useful information concerning the health of patients. There are three major blood cell types, namely, erythrocytes (RBCs), leukocytes (WBCs), and platelets. Automated blood cell analysers can provide RBCs, WBCs and platelets count but the presence of abnormal cells could affect the cells counting, that should be checked manually. This is why today the conventional practice for such procedure is executed manually by pathologists under light microscope. However, the manual visual inspection is tedious, time consuming, repetitive and it is strongly influenced by the operator's capabilities and tiredness. Therefore, a good clinical decision support system for cells counting and classification has always become a necessity. Few examples of automated systems that can analyse and classify blood cells have been reported in the literature. This research proposes a computer-aided systems that simulates a human visual inspection to automate the process of detection and identification of WBCs and RBCs from blood smear images. The proposed method has been tested on public datasets of blood cell images and demonstrates a reliable and effective system for differential counting, obtaining an average accuracy value of 99.2% for WBCs and 98% for RBCs, outperforming the state-of-the-art.
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计算机辅助外周血细胞图像鉴别计数系统
显微镜图像中血细胞的差异计数和分析可以提供有关患者健康的有用信息。有三种主要的血细胞类型,即红细胞(rbc)、白细胞(wbc)和血小板。自动血细胞分析仪可以提供红细胞、白细胞和血小板计数,但异常细胞的存在可能会影响细胞计数,这应该手工检查。这就是为什么今天这种程序的传统做法是由病理学家在光学显微镜下手动执行。但人工目视检查繁琐、耗时、重复性强,且受操作者能力和疲劳程度的影响较大。因此,一个良好的临床细胞计数和分类决策支持系统一直是必要的。在文献中很少有能够分析和分类血细胞的自动化系统的例子被报道。本研究提出了一种计算机辅助系统,模拟人类视觉检查,自动检测和识别血液涂片图像中的白细胞和红细胞。所提出的方法已经在血细胞图像的公共数据集上进行了测试,并证明了一种可靠有效的差分计数系统,白细胞和红细胞的平均准确率分别为99.2%和98%,优于目前最先进的技术。
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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