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Automated detection and classification of liver fibrosis stages using contourlet transform and nonlinear features

机译:使用Contourlet变换和非线性特征自动检测和分类肝纤维化阶段

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摘要

Background and objective: Liver fibrosis is a type of chronic liver injury that is characterized by an excessive deposition of extracellular matrix protein. Early detection of liver fibrosis may prevent further growth toward liver cirrhosis and hepatocellular carcinoma. In the past, the only method to assess liver fibrosis was through biopsy, but this examination is invasive, expensive, prone to sampling errors, and may cause complications such as bleeding. Ultrasound-based elastography is a promising tool to measure tissue elasticity in real time; however, this technology requires an upgrade of the ultrasound system and software. In this study, a novel computer-aided diagnosis tool is proposed to automatically detect and classify the various stages of liver fibrosis based upon conventional B-mode ultrasound images.
机译:背景和目的:肝纤维化是一种慢性肝损伤,其特征在于细胞外基质蛋白的过度沉积。 早期检测肝纤维化可能会导致肝硬化和肝细胞癌的进一步增长。 过去,评估肝纤维化的唯一方法是通过活组织检查,但这种检查是侵入性的,昂贵的,容易对取样误差,并且可能导致出血等并发症。 基于超声的弹性造影是一种有希望的工具,可以实时测量组织弹性; 但是,该技术需要升级超声系统和软件。 在本研究中,提出了一种新颖的计算机辅助诊断工具,以基于传统的B模式超声图像自动检测和分类肝纤维化的各个阶段。

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