利用机器学习检测人类血液样本中的癌症

Chereddy Spandana, R. P. Kumar
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引用次数: 0

摘要

识别血液问题的过程包括一个人在显微镜下用肉眼观察血液样本。在这项研究中,创建了一种计算机化的方法来帮助医生识别各种形式的白血病。一旦RGB图像转换为L*a*b颜色空间,使用K-Mean聚类执行初始分割。提取聚类图像的属性并将其划分为各种形式的白血病。这种方法用于识别疾病并提供早期诊断。由于图像价格低廉,不需要任何昂贵的测试或实验室设备,因此它们被用作输入。为了研究图像在颜色、纹理、几何和统计分析方面的任何变化,本研究将利用显微照片中的特征。提出的方法将在这些特征中发现的变化输入到我们的分类器中。由于图像价格低廉,不需要昂贵的测试或实验室设备,因此它们被使用。白血病,一种白血球疾病,将是该系统的主要焦点。该系统将利用微观图像属性来分析纹理、几何和颜色的统计变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Cancer in Human Blood Sample using Machine Learning
The process of identifying blood problems involves a human being looking at a blood sample under a microscope with their unaided eyes. In this study, a computerized method was created to aid doctors in recognizing various forms of leukaemia. Initial segmentation is performed using K-Mean clustering once the RGB image has been transformed to L*a*b color space. The properties of this clustered image are extracted and divided into various forms of leukaemia. This method is used to recognize the illnesses and provide an early diagnosis. Since images are inexpensive and don't require any expensive testing or lab equipment, they are used as inputs. In order to investigate any changes in colour, texture, geometry, and statistical analysis of the images, this research will make use of features in microscopic photographs. Proposed method will feed the changes discovered in these features into our classifier. Since images are inexpensive and don't require expensive testing or lab equipment, they are used. Leukemia, a disease of white blood cells, will be the system's main focus. The system will make advantage of microscopic picture attributes to analyses statistical changes in texture, geometry, and color.
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