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Neural net classification of liver ultrasonogram for quantitative evaluation of diffuse liver disease

机译:肝超声检查的神经净分类,用于弥漫性肝病的定量评价

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There have been a number of studies on the quantitative evaluation of diffuse liver disease by using texture analysis technique. However, the previous studies have been focused on the classification between only normal and abnormal pattern based on textural properties, resulting in lack of clinically useful information about the progressive status of liver disease. Considering our collaborative research experience with clinical experts, we judged that not only texture information but also several shape properties are necessary in order to successfully classify between various states of disease with liver ultrasonogram. Nine image parameters were selected experimentally. One of these was texture parameter and others were shape parameters measured as length, area and curvature. We have developed a neural-net algorithm that classifies liver ultrasonogram into 9 categories of liver disease: 3 main category and 3 sub-steps for each. Nine parameters were collected semi- automatically from the user by using graphical user interface tool, and then processed to give a grade for each parameter. Classifying algorithm consists of two steps. At the first step, each parameter was graded into pre-defined levels using neural network. in the next step, neural network classifier determined disease status using graded nine parameters. We implemented a PC based computer-assist diagnosis workstation and installed it in radiology department of Seoul National University Hospital. Using this workstation we collected 662 cases during 6 months. Some of these were used for training and others were used for evaluating accuracy of the developed algorithm. As a conclusion, a liver ultrasonogram classifying algorithm was developed using both texture and shape parameters and neural network classifier. Preliminary results indicate that the proposed algorithm is useful for evaluation of diffuse liver disease.
机译:利用纹理分析技术,已经有许多关于弥漫性肝病的定量评估的研究。然而,之前的研究已经专注于基于纹理性质的仅正常和异常模式之间的分类,导致缺乏有关肝病的渐进状态的临床上有用的信息。考虑到我们对临床专家的协同研究经验,我们判断不仅是纹理信息,而且需要几种形状的属性,以便在肝超声检查各种疾病状态之间成功分类。通过实验选择九个图像参数。其中一个是纹理参数,其他是形状参数,测量为长度,面积和曲率。我们开发了一种神经网络算法,将肝超声波分类为9类肝病:3个主要类别和每次3个分阶段。通过使用图形用户界面工具自动从用户自动收集九个参数,然后处理以给出每个参数的等级。分类算法由两个步骤组成。在第一步,每个参数使用神经网络分为预定义的级别。在下一步中,神经网络分类器使用分级九个参数确定疾病状态。我们实施了基于PC的计算机辅助诊断工作站,并在首尔国立大学医院放射学部门安装。使用此工作站,我们在6个月内收集了662例。其中一些用于培训,其他人用于评估发达算法的准确性。作为结论,使用纹理和形状参数和神经网络分类器开发了一种肝超声波分类算法。初步结果表明该算法可用于评估弥漫性肝病。

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