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Quantitative tissue characterization of diffuse liver diseases from ultrasound images by neural network

机译:神经网络从超声图像定量分析弥漫性肝病的组织特征

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The aim of the study is to establish a computer-aided diagnosis system for diffuse liver diseases such as chronic active hepatitis (CAH) and liver cirrhosis (LC). The authors introduced an artificial neural network in the classification of these diseases. In this system the neural network was trained by feature parameters extracted from B-mode ultrasonic images of normal liver (NL), CAH and LC. Therefore one need not input any a priori information about these diseases. For input data the authors used 7 parameters calculated by 5 regions of interest (ROIs) in each image. They are variance of pixel values in an ROI, coefficient of variation, annular Fourier power spectrum, longitudinal Fourier power spectrum, and variation of the means of the 5 ROIs. In addition, the authors used 2 more parameters calculated from a co-occurrence matrix of pixel values in an ROI. The results showed that the accuracies of the neural network were 83.8% for LC, 90.0% for CAH and 93.6% for NL, and that the system was considered to be helpful for clinical and educational use.
机译:该研究的目的是建立用于弥漫性肝脏疾病(例如慢性活动性肝炎(CAH)和肝硬化(LC))的计算机辅助诊断系统。作者在这些疾病的分类中引入了人工神经网络。在该系统中,神经网络通过从正常肝脏(NL),CAH和LC的B型超声图像中提取的特征参数进行训练。因此,不需要输入关于这些疾病的任何先验信息。对于输入数据,作者使用了每个图像中5个感兴趣区域(ROI)所计算出的7个参数。它们是ROI中像素值的方差,变异系数,环形傅立叶功率谱,纵向傅立叶功率谱以及5个ROI平均值的变化。此外,作者还使用了另外2个参数,这些参数是根据ROI中像素值的共现矩阵计算得出的。结果表明,该神经网络的准确度对于LC为83.8%,对于CAH为90.0%,对于NL为93.6%,并且该系统被认为有助于临床和教育用途。

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