基于ai的微流体- COVID-19血液学显微血液分析

Tiancheng Xia, Yong Qing Fu, Nanlin Jin, P. Chazot, P. Angelov, Richard Jiang
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引用次数: 1

摘要

显微血细胞分析是医学诊断的重要方法,全血细胞计数是医院常规检查之一。血细胞计数的结果包括单位血液样本中红细胞、白细胞和血小板的数量。当红细胞的数量或形状出现异常时,就有可能诊断出贫血等疾病。白细胞的百分比是许多严重疾病,如感染和癌症的重要指标之一。患者患血友病时血小板数量减少。医生经常用这些作为标准来监测医院病人的一般健康状况和康复阶段。然而,许多医院依靠昂贵的血液学分析仪来进行这些测试,而且这些过程通常很耗时。人们对自动化、快速和易于使用的CBCs方法有着巨大的需求,以避免重复的程序并最大限度地减少患者的医疗保健费用负担。在本研究中,我们研究了一种新的基于深度神经网络的CBC检测方法,并讨论了目前最先进的机器学习方法,以满足医疗使用需求。我们在这项工作中应用的方法是基于YOLOv3算法的,我们的实验结果表明,应用的深度学习算法在CBCs测试中具有很大的潜力,有望将深度学习方法部署到微流体护理点医疗设备中。作为研究案例,我们将血细胞检测器应用于COVID-19患者的血液样本,其中血细胞凝块是COVID-19的典型症状。
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AI-enabled Microscopic Blood Analysis for Microfluidic COVID-19 Hematology
Microscopic blood cell analysis is an important methodology for medical diagnosis, and complete blood cell counts (CBCs) are one of the routine tests operated in hospitals. Results of the CBCs include amounts of red blood cells, white blood cells and platelets in a unit blood sample. It is possible to diagnose diseases such as anemia when the numbers or shapes of red blood cells become abnormal. The percentage of white blood cells is one of the important indicators of many severe illnesses such as infection and cancer. The amounts of platelets are decreased when the patient suffers hemophilia. Doctors often use these as criteria to monitor the general health conditions and recovery stages of the patients in the hospital. However, many hospitals are relying on expensive hematology analyzers to perform these tests, and these procedures are often time consuming. There is a huge demand for an automated, fast and easily used CBCs method in order to avoid redundant procedures and minimize patients’ burden on costs of healthcare. In this research, we investigate a new CBC detection method by using deep neural networks, and discuss state of the art machine learning methods in order to meet the medical usage requirements. The approach we applied in this work is based on YOLOv3 algorithm, and our experimental results show the applied deep learning algorithms have a great potential for CBCs tests, promising for deployment of deep learning methods into microfluidic point-of-care medical devices. As a case of study, we applied our blood cell detector to the blood samples of COVID-19 patients, where blood cell clots are a typical symptom of COVID-19.
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