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Automatic Classification of Focal Lesions in Ultrasound Liver Images using Principal Component Analysis and Neural Networks

机译:利用主成分分析和神经网络自动分类超声肝图像局灶性病变

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Ultrasound Medical Imaging is currently the most popular modality for diagnostic application. This imaging technique has been used for the detecting abnormalities associated with abdominal organs like liver, kidney, uterus etc. In this paper, the possibilities of automatic classification of the ultrasound liver images into four classes-Normal, Cyst, Benign and Malignant masses, using texture features are explored. These texture features are extracted using the various statistical and spectral methods. The optimal feature selection process is carried out manually to pick the best discriminating features from the extracted texture parameters. Also, the method of principal component analysis is used to extract the principal features or directions of maximum information from the data set there by automatically selecting the optimal features. Using these optimal features, a final combined feature set is formed and is employed for classification of the liver lesions into respective classes. K-means clustering and neural network based automatic classifiers are employed in this process. The classifier design and its performance are studied. This paper summarizes the various statistical and spectral texture parameter extraction processes, optimal feature selection techniques and automated classification procedures involved in our work.
机译:超声医学成像是目前最受诊断应用的方式。这种成像技术已被用于检测与肝,肾,子宫等腹部器官相关的异常。在本文中,将超声肝图像自动分类为四类正常,囊肿,良性和恶性肿块的可能性探索纹理功能。使用各种统计和光谱方法提取这些纹理特征。手动执行最佳特征选择处理,以从提取的纹理参数中选择最佳辨别特征。此外,主要成分分析的方法用于通过自动选择最佳特征来提取来自在那里的数据中的最大信息的主特征或方向。使用这些最佳特征,形成最终组合特征集,并用于将肝脏病变分类成相应的类。在此过程中使用K-Means Clustering和神经网络的自动分类器。研究了分类器设计及其性能。本文总结了各种统计和光谱纹理参数提取过程,优化特征选择技术和我们工作中涉及的自动分类程序。

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