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骨髓细胞检测:一种用于显微镜图像分析的技术。

Bone Marrow Cells Detection: A Technique for the Microscopic Image Analysis.

机构信息

School of Computer Science & Technology, Huazhong University of Science and Technology, Wuhan Shi, China.

出版信息

J Med Syst. 2019 Feb 23;43(4):82. doi: 10.1007/s10916-019-1185-9.

Abstract

In the detection of myeloproliferative, the number of cells in each type of bone marrow cells (BMC) is an important parameter for the evaluation. In this study, we propose a new counting method, which consists of three modules including localization, segmentation and classification. The localization of BMC is achieved from a color transformation enhanced BMC sample image and stepwise averaging method. In the nucleus segmentation, both stepwise averaging method and Otsu's method are applied to obtain a weighted threshold for segmenting the patch into nucleus and non-nucleus. In the cytoplasm segmentation, a color weakening transformation, an improved region growing method and the K-Means algorithm are employed. The connected cells with BMC will be separated by the marker-controlled watershed algorithm. The features will be extracted for the classification after the segmentation. In this study, the BMC are classified using the support vector machine into five classes; namely, neutrophilic split granulocyte, neutrophilic stab granulocyte, metarubricyte, mature lymphocytes and the outlier (all other cells not listed). Experimental results show that the proposed method achieves superior segmentation and classification performance with an average segmentation accuracy of 91.76% and an average recall rate of 87.49%. The comparison shows that the proposed segmentation and classification methods outperform the existing methods.

摘要

在骨髓增生性疾病的检测中,每种类型的骨髓细胞(BMC)的数量是评估的一个重要参数。在这项研究中,我们提出了一种新的计数方法,该方法由三个模块组成,包括定位、分割和分类。BMC 的定位是通过对增强 BMC 样本图像的颜色变换和逐步平均法来实现的。在核分割中,同时应用逐步平均法和 Otsu 法,以获得分割斑块为核和非核的加权阈值。在细胞质分割中,采用颜色弱化变换、改进的区域生长法和 K-Means 算法。利用标记控制分水岭算法可以分离与 BMC 相连的细胞。分割后将提取特征进行分类。在这项研究中,使用支持向量机将 BMC 分为五类,即中性粒细胞分裂粒细胞、中性粒细胞杆状粒细胞、中幼红细胞、成熟淋巴细胞和异常细胞(未列出的所有其他细胞)。实验结果表明,该方法在分割和分类性能上均具有优势,平均分割准确率为 91.76%,平均召回率为 87.49%。比较表明,所提出的分割和分类方法优于现有的方法。

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