计算机视觉检测急性淋巴细胞白血病的研究

M. Ashok, K. Tharani, S. VenkataSriram, K. Ramasamy
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引用次数: 0

摘要

血液学家预测,在所有的恶性肿瘤中,白血病多发生在儿童、青少年和年轻人身上。此外,85%的癌症病例是在15岁以下发现的。由于骨髓中的遗传异常,急性淋巴细胞白血病(ALL)特别容易受到危及生命的感染。实验室法检测ALL是一个漫长而缓慢的过程。本研究的目的是回顾以往对ALL检测方法的研究。本综述包括(a) ALL检测所需的参数(b)检测过程中涉及的方法(c)给出准确预测的算法以及(d)检测ALL受影响细胞的所有必要背景。该系统具有自动机器学习(Chabot)方法,用于对血液涂片(显微镜图像)中的感染细胞和健康细胞进行分类,以检测ALL。将血液涂片转换成CMYK颜色空间,并使用K-means算法进行聚类。采用SVM、XGBoost Classifier等监督学习算法,从每个聚类中选取一个细胞,利用细胞核检测细胞是否受到ALL的影响,该系统有助于增强急性淋巴细胞白血病检测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Investigational Study of Detecting Acute Lymphoblastic Leukemia using Computer Vision
Among all divesting cancers, Hematologists predict that the Leukemia is mostly occur on the children, teenagers, and young adults. Moreover 85% of cancer cases are detected younger than the age of 15. Due to a Genetic abnormality in the bone marrow, Acute lymphoblastic leukemia (ALL) is particularly susceptible to life-threatening infections. The laboratory method to detect the ALL is prolonged and slow process. Reviewing prior research on detection methods in ALL is the goal of this study. This review includes (a) the parameters necessary for the ALL detection (b) methods involved in the detection process (c) which algorithms gives the accurate prediction and (d) finally all the necessary context for the detection of the ALL-affected cells. The proposed system possesses the automated machine learning (Chabot) approach used to categorize the infected and healthy cells in the blood smears (microscopic images) in order to detect ALL. The Blood smears are converted into the CMYK color space and separated into clusters using K-means Algorithm. A cell from each cluster is picked and detected whether the cell is affected with ALL or not using the nuclei of the cell using supervised learning algorithm like SVM, XGBoost Classifier, Etc., The proposed system aids in enhancing the acute lymphoblastic leukemia detection system.
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