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Analysis of Ultrasound kidney Images using Content Descriptive Multiple Features for Disorder Identification and ANN based Classification

机译:利用内容描述多种特征的超声肾图像分析和基于ANN的分类

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The objective of this work is to provide a set of most significant content descriptive feature parameters to identify and classify the kidney disorders with ultrasound scan. The ultrasound images are initially pre-processed to preserve the pixels of interest prior to feature extraction. In total 28 features are extracted, the analysis of features value shows that 13 features are highly significant in discrimination. This resultant feature vector is used to train the multilayer back propagation network. The network is tested with the unknown samples. The outcome of multi- layer back propagation network is verified with medical experts and this confirms classification efficiency of 90.47%, 86.66%, and 85.71% for the classes considered respectively. The study shows that feature extraction after pre-processing followed by ANN based classification significantly enhance objective diagnosis and provides the possibility of developing computer-aided diagnosis system.
机译:这项工作的目的是提供一系列最重要的内容描述性特征参数,以通过超声扫描来识别和分类肾脏障碍。最初预处理超声图像以在特征提取之前保留感兴趣的像素。在提取28个特征中,特征值的分析表明,13个特征在歧视中非常显着。该得到的特征向量用于训练多层背部传播网络。通过未知样本测试网络。多层背部传播网络的结果与医学专家核实,这确认分别为课程的90.47%,86.66%和85.71%的分类效率。该研究表明,预处理后的特征提取,后跟基于ANN的分类显着提高了客观诊断,并提供了开发计算机辅助诊断系统的可能性。

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