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Automated identification of abnormal metaphase chromosome cells for the detection of chronic myeloid leukemia using microscopic images

机译:使用显微镜图像自动识别异常中期染色体细胞,以检测慢性粒细胞白血病

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摘要

Karyotyping is an important process to classify chromosomes into standard classes and the results are routinely used by the clinicians to diagnose cancers and genetic diseases. However, visual karyotyping using microscopic images is time-consuming and tedious, which reduces the diagnostic efficiency and accuracy. Although many efforts have been made to develop computerized schemes for automated karyotyping, no schemes can get be performed without substantial human intervention. Instead of developing a method to classify all chromosome classes, we develop an automatic scheme to detect abnormal metaphase cells by identifying a specific class of chromosomes (class 22) and prescreen for suspicious chronic myeloid leukemia (CML). The scheme includes three steps: (1) iteratively segment randomly distributed individual chromosomes, (2) process segmented chromosomes and compute image features to identify the candidates, and (3) apply an adaptive matching template to identify chromosomes of class 22. An image data set of 451 metaphase cells extracted from bone marrow specimens of 30 positive and 30 negative cases for CML is selected to test the scheme’s performance. The overall case-based classification accuracy is 93.3% (100% sensitivity and 86.7% specificity). The results demonstrate the feasibility of applying an automated scheme to detect or prescreen the suspicious cancer cases.
机译:核型分析是将染色体分类为标准类的重要过程,临床医生通常将结果常规用于诊断癌症和遗传疾病。但是,使用显微图像进行视觉核型分析既费时又繁琐,从而降低了诊断效率和准确性。尽管已经为开发用于自动核型分析的计算机化方案做出了许多努力,但是如果没有大量人工干预,就无法执行任何方案。我们没有开发一种对所有染色体类别进行分类的方法,而是通过识别特定类别的染色体(22类)并预先筛选可疑的慢性髓细胞性白血病(CML),开发了一种检测异常中期细胞的自动方案。该方案包括三个步骤:(1)迭代地分割随机分布的单个染色体;(2)处理分割的染色体并计算图像特征以识别候选对象;(3)应用自适应匹配模板来识别22类染色体。图像数据从30例CML阳性和30例阴性病例的骨髓标本中提取的451个中期细胞用于测试该方案的性能。基于案例的总体分类准确性为93.3%(灵敏度为100%,特异性为86.7%)。结果证明了应用自动化方案检测或预筛查可疑癌症病例的可行性。

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