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首页> 外文期刊>Journal of clinical laboratory analysis. >Feature Analysis and Automatic Identification of Leukemic Lineage Blast Cells and Reactive Lymphoid Cells from Peripheral Blood Cell Images
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Feature Analysis and Automatic Identification of Leukemic Lineage Blast Cells and Reactive Lymphoid Cells from Peripheral Blood Cell Images

机译:外周血细胞图像中白血病谱系爆炸细胞和反应性淋巴细胞的特征分析及自动鉴定

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Background Automated peripheral blood (PB) image analyzers usually underestimate the total number of blast cells, mixing them up with reactive or normal lymphocytes. Therefore, they are not able to discriminate between myeloid or lymphoid blast cell lineages. The objective of the proposed work is to achieve automatic discrimination of reactive lymphoid cells (RLC), lymphoid and myeloid blast cells and to obtain their morphologic patterns through feature analysis. Methods In the training stage, a set of 696 blood cell images was selected in 32 patients (myeloid acute leukemia, lymphoid precursor neoplasms and viral or other infections). For classification, we used support vector machines, testing different combinations of feature categories and feature selection techniques. Further, a validation was implemented using the selected features over 220 images from 15 new patients (five corresponding to each category). Results Best discrimination accuracy in the training was obtained with feature selection from the whole feature set (90.1%). We selected 60 features, showing significant differences (P < 0.001) in the mean values of the different cell groups. Nucleus‐cytoplasm ratio was the most important feature for the cell classification, and color‐texture features from the cytoplasm were also important. In the validation stage, the overall classification accuracy and the true‐positive rates for RLC, myeloid and lymphoid blast cells were 80%, 85%, 82% and 74%, respectively. Conclusion The methodology appears to be able to recognize reactive lymphocytes well, especially between reactive lymphocytes and lymphoblasts.
机译:背景技术自动外周血(PB)图像分析仪通常低估爆炸细胞的总数,将它们与反应性或正常淋巴细胞混合。因此,它们无法区分骨髓或淋巴爆炸细胞谱系。该工作的目的是通过特征分析实现反应性淋巴细胞(RLC),淋巴醇和骨髓泡泡细胞的自动辨别,并通过特征分析获得其形态学模式。方法在训练阶段,32例患者中选择了一组696血细胞图像(骨髓急性白血病,淋巴前体肿瘤和病毒或其他感染)。对于分类,我们使用支持向量机,测试特征类别的不同组合和特征选择技术。此外,使用来自15名新患者的220个图像(对应于每个类别的五个)来实现验证。结果培训中的最佳歧视精度是从整个功能集的特征选择(90.1%)获得的。我们选择了60个特征,在不同细胞组的平均值中显示出显着的差异(p <0.001)。核 - 细胞质比是细胞分类最重要的特征,细胞质的颜色纹理特征也很重要。在验证阶段,总分类准确性和RLC,髓样和淋巴爆炸细胞的真正阳性率分别为80%,85%,82%和74%。结论该方法似乎能够识别反应性淋巴细胞,特别是在反应性淋巴细胞和淋巴细胞之间。

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