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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Hybrid Airway Segmentation Using Multi-Scale Tubular Structure Filters and Texture Analysis on 3D Chest CT Scans
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Hybrid Airway Segmentation Using Multi-Scale Tubular Structure Filters and Texture Analysis on 3D Chest CT Scans

机译:使用多尺度管状结构过滤器的混合气道分割及3D胸CT扫描纹理分析

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摘要

Airway diseases are frequently related to morphological changes that may influence lung physiology. Accurate airway region segmentation may be useful for quantitative evaluation of disease prognosis and therapy efficacy. The information can also be applied to understand the fundamental mechanisms of various lung diseases. We present a hybrid method to automatically segment the airway regions on 3D volume chest computed tomography (CT) scans. This method uses multi-scale filtering and support vector machine (SVM) classification. The proposed scheme is comprised of two hybrid steps. First, a tubular structure-based multi-scale filter is applied to find the initial candidate airway regions. Second, for identifying candidate airway regions using the fuzzy connectedness technique, the small and disconnected branches of airway regions are detected using SVM classification trained to differentiate between airway and non-airway regions through texture analysis of user-defined landmark points. For development and evaluation of the method, two datasets were incorporated: (1) 55 lung-CT volumes from the Korean Obstructive Lung Disease (KOLD) Cohort Study and (2) 20 cases from the publicly open database (EXACT ' 09). The average tree-length detection rates of EXACT ' 09 and KOLD were 56.9 +/- 11.0 and 70.5 +/- 8.98, respectively. Comparison of the results for the EXACT ' 09 data set between the presented method and other methods revealed that our approach was a high performer. The method limitations were higher false-positive rates than those of the other methods and risk of leakage. In future studies, application of a convolutional neural network will help overcome these shortcomings.
机译:气道疾病经常与可能影响肺生理学的形态学变化有关。精确的气道区域分割对于疾病预后和治疗效能的定量评估可能是有用的。这些信息也可以应用于了解各种肺病的基本机制。我们提出了一种混合方法,自动分割了3D音量胸部计算断层扫描(CT)扫描的气道区域。该方法使用多尺度过滤并支持向量机(SVM)分类。所提出的方案由两个混合步骤组成。首先,应用管状结构的多尺度滤波器来找到初始候选气道区域。其次,为了使用模糊连接技术识别候选气道区域,使用SVM分类检测到气道区域的小型和断开的分支,通过训练来通过对用户定义的地标点的纹理分析来区分气道和非气道区域。对于该方法的开发和评估,已纳入两个数据集:(1)从韩国阻塞性肺病(KOLD)队列研究中的55个肺CT体积和(2)来自公开的数据库(确切的'09)20例。精确'09和Kold的平均树长检测率分别为56.9 +/- 11.0和70.5 +/- 8.98。对所提出的方法和其他方法之间的确切'09数据集的结果进行比较显示我们的方法是高性能者。该方法限制比其他方法和泄漏风险更高的假阳性率。在未来的研究中,卷积神经网络的应用将有助于克服这些缺点。

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