Detecting and Segmenting White Blood Cells in Microscopy Images of Thin Blood Smears

Golnaz Moallem, M. Poostchi, Hang Yu, K. Silamut, N. Palaniappan, Sameer Kiran Antani, M. A. Hossain, R. Maude, Stefan Jaeger, G. Thoma
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引用次数: 10

Abstract

A malarial infection is diagnosed and monitored by screening microscope images of blood smears for parasite-infected red blood cells. Millions of blood slides are manually screened for parasites every year, which is a tedious and error-prone process, and which largely depends on the expertise of the microscopists. We have developed a software to perform this task on a smartphone, using machine learning and image analysis methods for counting infected red blood cells automatically. The method we implemented first needs to detect and segment red blood cells. However, the presence of white blood cells (WBCs) contaminates the red blood cell detection and segmentation process because WBCs can be miscounted as red blood cells by automatic cell detection methods. As a result, a preprocessing step for WBC elimination is essential. Our paper proposes a novel method for white blood cell segmentation in microscopic images of blood smears. First, a range filtering algorithm is used to specify the location of white blood cells in the image following a Chan- Vese level-set algorithm to estimate the boundaries of each white blood cell present in the image. The proposed segmentation algorithm is systematically tested on a database of more than 1300 thin blood smear images exhibiting approximately 1350 WBCs. We evaluate the performance of the proposed method for the two WBC detection and WBC segmentation steps by comparing the annotations provided by a human expert with the results produced by the proposed algorithm. Our detection technique achieves a 96.37 % overall precision, 98.37 % recall, and 97.36 % Fl-score. The proposed segmentation method grants an overall 82.28 % Jaccard Similarity Index. These results demonstrate that our approach allows us to filter out WBCs, which significantly improves the precision of the cell counts for malaria diagnosis.
薄血涂片显微图像中白细胞的检测与分割
疟疾感染的诊断和监测是通过筛选血液涂片的显微镜图像来检测被寄生虫感染的红细胞。每年都有数百万张血玻片被人工筛选是否有寄生虫,这是一个繁琐且容易出错的过程,很大程度上取决于显微镜专家的专业知识。我们已经开发了一款软件,可以在智能手机上执行这项任务,使用机器学习和图像分析方法自动计数受感染的红细胞。我们实施的方法首先需要检测和分割红细胞。然而,白细胞(wbc)的存在污染了红细胞的检测和分割过程,因为白细胞在自动细胞检测方法中可能被错误地算作红细胞。因此,消除白细胞的预处理步骤是必不可少的。本文提出了一种血液涂片显微图像中白细胞分割的新方法。首先,使用范围滤波算法指定图像中白细胞的位置,然后使用Chan- Vese水平集算法估计图像中存在的每个白细胞的边界。所提出的分割算法在1300多个薄血涂片图像的数据库上进行了系统的测试,这些图像显示了大约1350个白细胞。我们通过将人类专家提供的注释与本文算法产生的结果进行比较,评估了所提出方法在两个WBC检测和WBC分割步骤中的性能。该检测技术的总体准确率为96.37%,召回率为98.37%,Fl-score为97.36%。所提出的分割方法总体上具有82.28%的Jaccard相似性指数。这些结果表明,我们的方法可以过滤出白细胞,这大大提高了疟疾诊断的细胞计数精度。
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