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Complexity in applying spatial analysis to describe heterogeneous air-trapping in thoracic imaging data

机译:应用空间分析描述胸腔成像数据中的异质气陷的复杂性

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In this paper we consider a novel approach to analyzing medical images by applying a concept typically employed in geospatial studies. For certain diseases, such as asthma, there is a relevant distinction between the heterogeneity of constriction in airways for patients compared to healthy individuals. In order to describe such heterogeneities quantitatively, we utilize spatial correlation in the realm of lung computer tomography (CT). Specifically, we apply the approximate profile-likelihood estimator (APLE) to simulated lung air-trapping data selected based on potential interest to pulmonologists, and we explore reference values obtainable through this statistic. Results indicate that APLE values are independent of air-trapping values, and can provide useful insight into spatial patterns of these values within the lungs in situations where other common metrics, such as the coefficient of variation, reveal little. The APLE relies on a neighborhood weights matrix to define spatial relatedness of considered regions, and among a few weight structures explored, a working optimal choice seems to be one based on the inverse distance squared between regions of interest. The application yields a new method to help analyze the degree of heterogeneity in lung CT images, which can be generalized to other medical images as well.
机译:在本文中,我们考虑了一种通过应用通常在地理空间研究中采用的概念来分析医学图像的新颖方法。对于某些疾病,例如哮喘,患者的气道收缩异质性与健康个体之间存在明显的区别。为了定量地描述这种异质性,我们在肺部计算机层析成像(CT)领域中利用了空间相关性。具体来说,我们将近似轮廓似然估计器(APLE)应用于基于肺科医生的潜在兴趣而选择的模拟肺空气捕获数据,并探索可通过该统计数据获得的参考值。结果表明,APLE值与空气诱捕值无关,并且可以在其他常见指标(例如变异系数)很少揭示的情况下,深入了解这些值在肺内的空间格局。 APLE依靠邻域权重矩阵来定义所考虑区域的空间相关性,并且在探索的一些权重结构中,一种有效的最佳选择似乎是基于关注区域之间平方反距离的选择。该应用程序产生了一种新方法,可以帮助分析肺部CT图像的异质性程度,该方法也可以推广到其他医学图像。

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