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Multi-scale Analysis of Imaging Features and Its Use in the Study of COPD Exacerbation Susceptible Phenotypes

机译:COPD加剧易感表型研究的成像特征的多规模分析及其在研究中

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We propose a novel framework for exploring patterns of respiratory pathophysiology from paired breath-hold CT scans. This is designed to enable analysis of large datasets with the view of determining relationships between functional measures, disease state and the likelihood of disease progression. The framework is based on the local distribution of image features at various anatomical scales. Principal Component Analysis is used to visualise and quantify the multi-scale anatomical variation of features, whilst the distribution subspace can be exploited within a classification setting. This framework enables hypothesis testing related to the different phenotypes implicated in Chronic Obstructive Pulmonary Disease (COPD). We illustrate the potential of our method on initial results from a subset of patients from the COPDGene study, who are exacerbation susceptible and non-susceptible.
机译:我们提出了一种新颖的框架,用于探索来自成对的呼吸持有CT扫描的呼吸道病理生理学模式。这旨在使大型数据集进行分析,以便确定功能措施,疾病状态与疾病进展的可能性之间的关系。该框架基于各种解剖尺度的图像特征的局部分布。主要成分分析用于可视化和量化特征的多尺度解剖变量,同时可以在分类设置中利用分发子空间。该框架使得具有与慢性阻塞性肺疾病(COPD)相关的不同表型相关的假设检测。我们说明了我们对来自Copdgene研究的患者的初始结果的方法的潜力,他是易感和不易受影响的患者。

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