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Ambiguous D-means fusion clustering algorithm based on ambiguous set theory: Special application in clustering of CT scan images of COVID-19

机译:基于模糊集合理论的模糊D型融合聚类算法:Covid-19 CT扫描图像集群特殊应用

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Coronavirus Disease 2019 (COVID-19) has been considered one of the most critical diseases of the 21st century. Only early detection can aid in the prevention of personal transmission of the disease. Recent scientific research reports indicate that computed tomography (CT) images of COVID-19 patients exhibit acute infections and lung abnormalities. However, analyzing these CT scan images is very difficult because of the presence of noise and low-resolution. Therefore, this study suggests the development of a new early detection method to detect abnormalities in chest CT scan images of COVID-19 patients. By this motivation, a novel image clustering algorithm, called ambiguous D-means fusion clustering algorithm (ADMFCA), is introduced in this study. This algorithm is based on the newly proposed ambiguous set theory and associated concepts. The ambiguous set is used in the proposed technique to characterize the ambiguity associated with grayscale values of pixels as true, false, true-ambiguous and false-ambiguous. The proposed algorithm performs the clustering operation on the CT scan images based on the entropies of different grayscale values. Finally, a final outcome image is obtained from the clustered images by image fusion operation. The experiment is carried out on 40 different CT scan images of COVID-19 patients. The clustered images obtained by the proposed algorithm are compared to five well-known clustering methods. The comparative study based on statistical metrics shows that the proposed ADMFCA is more efficient than the five existing clustering methods. (C) 2021 Elsevier B.V. All rights reserved.
机译:冠状病毒疾病2019(Covid-19)被认为是21世纪最关键的疾病之一。只有早期检测可以帮助预防疾病的个人传播。最近的科学研究报告表明,Covid-19患者的计算机断层扫描(CT)图像表现出急性感染和肺异常。然而,由于存在噪声和低分辨率,分析这些CT扫描图像非常困难。因此,本研究表明,开发新的早期检测方法,以检测Covid-19患者胸部CT扫描图像异常。通过这种动机,在本研究中介绍了一种名为模糊的D-Meascual聚类算法(ADMFCA)的新型图像聚类算法。该算法基于新提出的模糊集合理论和相关概念。模糊的集合用于所提出的技术,以表征与像素的灰度值相关联的模糊性,如True,False,True-Mathiguity和False-inmiual。该算法基于不同灰度值的熵对CT扫描图像进行聚类操作。最后,通过图像融合操作从聚类图像获得最终结果图像。该实验在Covid-19患者的40种不同CT扫描图像上进行。通过所提出的算法获得的聚类图像与五种众所周知的聚类方法进行比较。基于统计指标的比较研究表明,提议的ADMFCA比五个现有聚类方法更有效。 (c)2021 elestvier b.v.保留所有权利。

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