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首页> 外文期刊>Journal of medical systems >Development of a Robust Algorithm for Detection of Nuclei and Classification of White Blood Cells in Peripheral Blood Smear Images
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Development of a Robust Algorithm for Detection of Nuclei and Classification of White Blood Cells in Peripheral Blood Smear Images

机译:外周血涂片图像中核核核和白细胞分类的鲁棒算法的发展

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Peripheral Blood Smear analysis plays a vital role in diagnosis of many diseases such as leukemia, anemia, malaria, lymphoma and infections. Unusual variations in color, shape and size of blood cells indicate abnormal condition. We used a total of 117 images from Leishman stained peripheral blood smears acquired at a magnification of 100X. In this paper we present a robust image processing algorithm for detection of nuclei and classification of white blood cells based on features of the nuclei. We used novel image enhancement method to manage illumination variations and TissueQuant method to manage color variations for the detection of nuclei. Dice similarity coefficient of 0.95 was obtained for nucleus detection. We also compared the proposed method with a state-of-the-art method and the proposed method was found to be better. Shape and texture features of the detected nuclei were used for classifying white blood cells. We considered classification of WBCs using two approaches such as 5-class and cell-by-cell approaches using neural network and hybrid-classifier respectively. We compared the results of both the approaches for classification of white blood cells. Cell-by-cell approach offered 1.4% higher sensitivity in comparison with the 5-class approach. We obtained an accuracy of 100% for lymphocyte and basophil detection. Hence, we conclude that lymphocytes and basophils can be accurately detected even when the analysis is limited to the features of nuclei whereas, accurate detection of other types of WBCs will require analysis of the cytoplasm too.
机译:外周血涂片分析在白血病,贫血,疟疾,淋巴瘤和感染等许多疾病的诊断中起着至关重要的作用。血细胞的颜色,形状和大小的异常变化表示异常情况。我们共使用117张来自Leishman染色的外周血涂片的图像,以100倍获得。本文介绍了一种鲁棒图像处理算法,用于检测核的核细胞核和白细胞分类。我们使用了新颖的图像增强方法来管理照明变化和组织定型方法来管理核检测的颜色变化。为核检测获得0.95的骰子相似系数。我们还将所提出的方法与最先进的方法进行比较,并且发现该方法更好。检测到的细胞核的形状和纹理特征用于分类白细胞。我们考虑了使用两类和逐个细胞方法的两种方法分别考虑了WBC的分类,分别使用神经网络和混合分类器等方法。我们比较了白细胞分类方法的结果。与5级方法相比,电池逐细胞方法提供了1.4%的灵敏度。我们获得了100%的淋巴细胞和嗜碱性检测的准确性。因此,我们得出结论,即使分析限于核的特征,淋巴细胞和淋巴细胞也可以精确地检测到核的特征,而准确地检测其他类型的WBCs也需要分析细胞质。

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