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Automatic Extraction of Appendix from Ultrasonography with Self-Organizing Map and Shape-Brightness Pattern Learning

机译:通过自组织图和形状亮度模式学习从超声检查中自动提取附录

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摘要

Accurate diagnosis of acute appendicitis is a difficult problem in practice especially when the patient is too young or women in pregnancy. In this paper, we propose a fully automatic appendix extractor from ultrasonography by applying a series of image processing algorithms and an unsupervised neural learning algorithm, self-organizing map. From the suggestions of clinical practitioners, we define four shape patterns of appendix and self-organizing map learns those patterns in pixel clustering phase. In the experiment designed to test the performance for those four frequently found shape patterns, our method is successful in 3 types (1 failure out of 45 cases) but leaves a question for one shape pattern (80% correct).
机译:急性阑尾炎的准确诊断在实践中是一个难题,特别是当患者太年轻或孕妇时。在本文中,我们通过应用一系列图像处理算法和一种无监督的神经学习算法,自组织图,提出了一种超声检查中的全自动阑尾提取器。根据临床医生的建议,我们定义了阑尾的四种形状模式,自组织图在像素聚类阶段学习了这些模式。在旨在测试这四种常见形状模式的性能的实验中,我们的方法在3种类型(45例中的1种失败)中是成功的,但对一种形状模式(80%正确)提出了疑问。

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