Automated cell nucleus segmentation and acute leukemia detection in blood microscopic images

Subrajeet Mohapatra, D. Patra
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引用次数: 122

Abstract

Acute lymphoblastic leukemia (ALL) is the most common hematological neoplasia of childhood and is characterized by uncontrolled growth of leukemic cells in bone marrow, lymphoid organs etc. The nonspecific nature of the signs and symptoms of ALL often leads to wrong diagnosis. Diagnostic confusion is also posed due to imitation of similar signs by other disorders. Careful microscopic examination of stained blood smear or bone marrow aspirate is the only way to effective diagnosis of leukemia. Techniques such as fluorescence in situ hybridization (FISH), immunophenotyping, cytogenetic analysis and cytochemistry are also employed for specific leukemia detection. The need for automation of leukemia detection arises since the above specific tests are time consuming and costly. Morphological analysis of blood slides are influenced by factors such as hematologists experience and tiredness, resulting in non standardized reports. A low cost and efficient solution is to use image analysis for quantitative examination of stained blood microscopic images for leukemia detection. A two stage color segmentation strategy is employed for segregating leukocytes or white blood cells (WBC) from other blood components. Discriminative features i.e. nucleus shape, texture are used for final detection of leukemia. In the present paper two novel shape features i.e., hausdorff dimension and contour signature is implemented for classifying a lymphocytic cell nucleus. Support Vector Machine (SVM) is employed for classification. A total of 108 blood smear images were considered for feature extraction and final performance evaluation is validated with the results of a hematologist.
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血液显微图像中自动细胞核分割和急性白血病检测
急性淋巴细胞白血病(Acute lymphoblastic leukemia, ALL)是儿童最常见的血液学肿瘤,其特点是白血病细胞在骨髓、淋巴器官等不受控制地生长。ALL的体征和症状的非特异性常常导致错误的诊断。由于其他疾病模仿类似的症状,也会造成诊断混乱。仔细的显微镜检查染色的血涂片或骨髓抽吸是唯一有效诊断白血病的方法。荧光原位杂交(FISH)、免疫分型、细胞遗传学分析和细胞化学等技术也被用于特异性白血病检测。由于上述特定的测试既耗时又昂贵,因此需要自动化白血病检测。血玻片的形态学分析受血液学家经验、疲劳等因素影响,报告不规范。一种低成本和高效的解决方案是使用图像分析对染色的血液显微图像进行定量检查,以检测白血病。采用两阶段颜色分割策略从其他血液成分中分离白细胞或白细胞(WBC)。鉴别特征,如细胞核形状,纹理用于白血病的最终检测。本文采用豪斯多夫维数和轮廓特征两种新的形状特征对淋巴细胞细胞核进行分类。采用支持向量机(SVM)进行分类。总共考虑了108张血液涂片图像进行特征提取,并通过血液学家的结果验证了最终的性能评估。
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