An automated three-dimensional visualization and classification of emphysema using neural network

T. K. Liang, Toshiyuki Tanaka, Hidetoshi Nakamura, T. Shirahata, H. Sugiura
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引用次数: 3

Abstract

Chronic obstructive pulmonary disease (COPD) is a disease in which the airways and tiny air sacs (alveoli) inside the lungs are partially obstructed or destroyed. Emphysema is what occurs as more and more of the walls between air sacs get destroyed. Computed tomography (CT) image has been a useful modality for assessing diffuse lung diseases, particularly, emphysema. At present, diagnosis of emphysema is done by using spirometry, X-rays, spiral chest computed tomography (CT)-scan, bronchoscopy, blood tests and pulse oximetry. In this study, we extracted the two-dimensional emphysematous lung tissues in the lung CT automatically using digital image processing techniques, then we visualized the extracted emphysematous lung tissues by implementing a three-dimensional (3D) lung model which was computed using 55 pre-processed CT images, and finally we divided the lung model into eight sub-volumes and classified each sub-volume into five classes of emphysema related severity using an artificial neural network. The performance of the classifier was assessed using the leave-one-out method on 120 sub-volumes of the lungs generated from 15 COPD-verified patients' CT data sets.
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基于神经网络的肺气肿自动三维可视化与分类
慢性阻塞性肺疾病(COPD)是一种肺部的气道和微小的气囊(肺泡)被部分阻塞或破坏的疾病。肺气肿是随着越来越多的气囊之间的壁被破坏而发生的。计算机断层扫描(CT)图像已成为评估弥漫性肺部疾病,特别是肺气肿的有效方式。目前,肺气肿的诊断是通过肺活量测定、x射线、螺旋胸部计算机断层扫描(CT)、支气管镜检查、血液检查和脉搏血氧仪来完成的。本研究首先利用数字图像处理技术自动提取肺部CT上的二维肺气肿组织,然后利用55张预处理后的CT图像计算三维肺模型,对提取的肺气肿组织进行可视化处理,最后将肺模型划分为8个子体积,并利用人工神经网络将每个子体积划分为肺气肿相关严重程度的5个等级。使用“留一”方法对15例copd患者CT数据集生成的120个肺亚容积进行分类器的性能评估。
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