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PCA NN Based Classifier For Liver Diseases from Ultrasonic Liver Images

机译:基于PCA NN的超声肝图像肝脏疾病分类器

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This research aims at developing an optimal neural network based DSS, which is aimed at precise and reliable diagnosis of chronic active hepatitis (CAH) and cirrhosis (CRH). The principal component analysis neural network is designed scrupulously for classification of these diseases. The neural network is trained by eight quantified texture features, which were extracted from five different region of interests (ROIs) uniformly distributed in each B-mode ultrasonic image of normal liver (NL), Chronic Active Hepatitis (CAH) and Cirrhosis (CRH). The proposed PCA NN classifier is the most efficient learning machine that is able to classify all three cases of diffused liver with average classification accuracy of 95.23%; 6 cases of cirrhosis out of 7 (6/7), all 7 cases of chronic active hepatitis (7/7) and all 15 cases of normal liver (15/15).
机译:本研究旨在开发基于最佳的神经网络的DSS,其旨在精确可靠的慢性活性肝炎(CAH)和肝硬化(CRH)。主成分分析神经网络是粗略地设计的,用于分类这些疾病。神经网络训练八种量化的纹理特征,这些特征是从正常肝脏(NL)的每个B模式超声图像中均匀分布的五个不同的兴趣区(ROI)中提取,慢性活性肝炎(CAH)和肝硬化(CRH) 。所提出的PCA NN分类器是最有效的学习机,能够将所有三种散射肝脏分类,平均分类精度为95.23%; 6例肝硬化患者7例(6/7),所有7例慢性活性肝炎病例(7/7)和所有15例正常肝脏(15/15)。

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