The role of the cooccurrence matrix based on complex extended microstructures in discovering the cirrhosis severity grades within US images

D. Mitrea, S. Nedevschi, P. Mitrea, M. Platon-Lupsor, R. Badea
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引用次数: 1

Abstract

Cirrhosis is an important disease, as it can precede liver cancer, and also can lead to death by itself. Detecting the severity grades of cirrhosis is a major issue in this context. The best nowadays standard for this purpose is the biopsy, however this procedure is invasive, dangerous for the patient. Also, there is no objective study in order to establish which the cirrhosis grades are. Our research purpose is to discover the cirrhosis grades using computerized methods and to perform non-invasive, computer assisted and automatic diagnosis of the disease evolution phases. Concerning the employed features, we adopted the texture-based methods, able to emphasize those characteristics of the tissue that cannot be detected by the eye of the medical expert. In this paper, we emphasized the role of the CETMCM Matrix concerning the detection of the cirrhosis severity grades. The method was validated by supervised classification, providing a recognition rate above 95%.
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基于复杂扩展显微结构的并发矩阵在超声图像中肝硬化严重程度分级中的作用
肝硬化是一种重要的疾病,因为它可能先于肝癌,也可能导致死亡。在这种情况下,检测肝硬化的严重程度是一个主要问题。目前最好的标准方法是活检,然而这个过程是侵入性的,对病人来说很危险。此外,没有客观的研究来确定肝硬化的等级。我们的研究目的是利用计算机方法发现肝硬化分级,并对疾病发展阶段进行无创、计算机辅助和自动诊断。对于所使用的特征,我们采用了基于纹理的方法,能够强调那些医学专家的眼睛无法检测到的组织特征。在本文中,我们强调了CETMCM矩阵在肝硬化严重程度分级检测中的作用。通过监督分类对该方法进行了验证,识别率在95%以上。
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