...
首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part H. Journal of Engineering in Medicine >Characterization of chronic liver disease based on ultrasound images using the variants of grey-level difference matrix
【24h】

Characterization of chronic liver disease based on ultrasound images using the variants of grey-level difference matrix

机译:基于灰度差矩阵变体的超声图像表征慢性肝病

获取原文
获取原文并翻译 | 示例
           

摘要

Chronic liver diseases are fifth leading cause of fatality in developing countries. Early diagnosis is important for timely treatment and to salvage life. Ultrasound imaging is frequently used to examine abnormalities of liver. However, ambiguity lies in visual interpretation of liver stages on ultrasound images. This difficult visualization problem can be solved by analysing extracted textural features from images. Grey-level difference matrix, a texture feature extraction method, can provide information about roughness of liver surface, sharpness of liver borders and echotexture of liver parenchyma. In this article, the behaviour of variants of grey-level difference matrix in characterizing liver stages is investigated. The texture feature sets are extracted by using variants of grey-level difference matrix based on two, three, five and seven neighbouring pixels. Thereafter, to take the advantage of complementary information from extracted feature sets, feature fusion schemes are implemented. In addition, hybrid feature selection (combination of ReliefF filter method and sequential forward selection wrapper method) is used to obtain optimal feature set in characterizing liver stages. Finally, a computer-aided system is designed with the optimal feature set to classify liver health in terms of normal, chronic liver, cirrhosis and hepatocellular carcinoma evolved over cirrhosis. In the proposed work, experiments are performed to (1) identify the best approximation of derivative (forward, central or backward); (2) analyse the performance of individual feature sets of variants of grey-level difference matrix; (3) obtain optimal feature set by exploiting the complementary information from variants of grey-level difference matrix and (4) analyse the performance of proposed method in comparison with existing feature extraction methods. These experiments are carried out on database of 754 segmented regions of interest formed by clinically acquired ultrasound images. The r
机译:慢性肝病是发展中国家的第五个主要原因。早期诊断对于及时治疗和挽救生活是重要的。超声成像经常用于检查肝脏异常。然而,歧义在于超声图像对肝脏阶段的视觉解释。通过分析来自图像的提取的纹理特征,可以解决这种困难的可视化问题。灰度差矩阵,纹理特征提取方法,可以提供有关肝脏表面粗糙度,肝脏边界锐度和肝实质的呼吸纹理的信息。在本文中,研究了肝脏级表征肝级灰级差矩阵的变体的行为。通过基于两个,三个,五个和七个相邻像素使用灰度差矩阵的变型来提取纹理特征集。此后,为了从提取的特征集中采取互补信息的优点,实现了特征融合方案。另外,混合特征选择(Creieff滤波器方法和顺序前进选择包装方法的组合)用于获得在表征肝阶段中设定的最佳特征。最后,计算机辅助系统设计有最佳特征,以在正常,慢性肝脏,肝硬化和肝细胞癌中对肝硬化的肝硬化和肝细胞癌进行分类。在所提出的工作中,对(1)进行实验识别衍生物(前进,中央或落后)的最佳近似; (2)分析灰度级差矩阵变体变体组的性能; (3)通过利用灰度级差矩阵的变体和(4)分析了与现有特征提取方法相比,通过利用灰度差矩阵的互补信息来获得最佳特征。这些实验是在临床获取的超声图像形成的754分段区域的数据库中进行的。 r.

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号