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基于机器学习的血液涂片图像白血病准确分类。

Accurate Machine-Learning-Based classification of Leukemia from Blood Smear Images.

机构信息

School of Biomedical Engineering, Jimma Institute of Technology, Jimma University, Jimma, Ethiopia-378.

Department of Medical IT Convergence Engineering, Kumoh Institute of Technology, Gumi, Republic of Korea.

出版信息

Clin Lymphoma Myeloma Leuk. 2021 Nov;21(11):e903-e914. doi: 10.1016/j.clml.2021.06.025. Epub 2021 Jul 20.

Abstract

BACKGROUND

Conventional identification of blood disorders based on visual inspection of blood smears through microscope is time consuming, error-prone and is limited by hematologist's physical acuity. Therefore, an automated optical image processing system is required to support the clinical decision-making.

MATERIALS AND METHODS

Blood smear slides (n = 250) were prepared from clinical samples, imaged and analyzed in Jimma Medical Center, Hematology department. Samples were collected, analyzed and preserved from out and in-patients. The system was able to categorize four common types of leukemia's such as acute and chronic myeloid leukemia; and acute and chronic lymphoblastic leukemia, through a robust image segmentation protocol, followed by classification using the support vector machine.

RESULTS

The system was able to classify leukemia types with an accuracy, sensitivity, specificity of 97.69%, 97.86% and 100%, respectively for the test datasets, and 97.5%, 98.55% and 100%, respectively, for the validation datasets. In addition, the system also showed an accuracy of 94.75% for the WBC counts that include both lymphocytes and monocytes. The computer-assisted diagnosis system took less than one minute for processing and assigning the leukemia types, compared to an average period of 30 minutes by unassisted manual approaches. Moreover, the automated system complements the healthcare workers' in their efforts, by improving the accuracy rates in diagnosis from ∼70% to over 97%.

CONCLUSION

Importantly, our module is designed to assist the healthcare facilities in the rural areas of sub-Saharan Africa, equipped with fewer experienced medical experts, especially in screening patients for blood associated diseases including leukemia.

摘要

背景

传统的血液病识别方法是通过显微镜对血涂片进行目视检查,这种方法既费时又容易出错,而且还受到血液学家视力的限制。因此,需要一种自动化的光学图像处理系统来支持临床决策。

材料与方法

吉姆马医疗中心血液科从临床样本中制备血涂片载玻片(n=250),对其进行成像和分析。这些样本来自门诊和住院患者。该系统能够通过强大的图像分割协议,将四种常见类型的白血病(急性和慢性髓细胞白血病;急性和慢性淋巴细胞白血病)进行分类,然后使用支持向量机进行分类。

结果

该系统能够对测试数据集进行分类,白血病类型的准确率、灵敏度和特异性分别为 97.69%、97.86%和 100%,验证数据集的准确率、灵敏度和特异性分别为 97.5%、98.55%和 100%。此外,该系统还能对白细胞计数(包括淋巴细胞和单核细胞)进行分类,准确率为 94.75%。与未经辅助的手动方法平均需要 30 分钟相比,计算机辅助诊断系统处理和分配白血病类型的时间不到一分钟。此外,该自动化系统通过将诊断准确率从约 70%提高到 97%以上,为医疗工作者提供了帮助。

结论

重要的是,我们的模块旨在帮助撒哈拉以南非洲地区医疗设施有限、经验丰富的医学专家较少的地区,特别是在为血液相关疾病(包括白血病)患者进行筛查方面。

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