基于纹理和结构分析的自动蜂窝检测

James S. J. Wong, T. Zrimec
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引用次数: 7

摘要

肺蜂窝状是肺纤维化疾病的重要诊断征象。此外,为了确定疾病的严重程度,需要对蜂巢进行量化。在本文中,我们提出了一种新的方法,自动检测蜂窝状区域的高分辨率计算机断层扫描图像的肺。我们检测肺边界内潜在的蜂窝状囊肿,并基于欧几里得距离对其进行聚类。然后计算聚类区域的纹理属性。我们还使用集群的区域信息,因为蜂窝主要发生在肺的周围区域。这一区域信息尚未在任何文献报道中使用,使我们能够将蜂窝囊肿与其他类似的结构(如支气管)区分开来。使用Weka J48算法生成决策树,并使用放射科医生提供的训练示例。然后将决策树用于蜂窝区域的自动分类。通过与放射科医生提供的蜂窝状区域进行比较来评估分类性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic honeycombing detection using texture and structure analysis
Honeycombing in the lung is an important diagnostic sign for diseases involving fibrosis of the lung. Furthermore, the quantification of honeycombing is needed to determine the severity of the disease. In this paper, we present a novel method of automatically detecting honeycombing regions in high resolution computed tomography images of the lung. We detect potential honeycombing cysts within the lung boundary and cluster them based on Euclidean distance. The texture attributes of the cluster region are then calculated. We also use the regional information of the cluster as honeycombing occurs predominantly in the peripheral region of the lung. This regional information has not been used in any of the literature reported and allows us to distinguish honeycomb cysts from other similar looking structures such as the bronchi. A decision tree is generated using the Weka J48 algorithm, with the training examples supplied by the radiologist. The decision tree is then used in the automatic classification of honeycombing regions. The classification performance is evaluated by comparing against the honeycombing regions provided by the radiologist
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