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Unsupervised Discovery of Spatially-Informed Lung Texture Patterns for Pulmonary Emphysema: The MESA COPD Study

机译:肺肺部空间通知肺部纹理模式的无监督发现:MESA COPD研究

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Unsupervised discovery of pulmonary emphysema subtypes offers the potential for new definitions of emphysema on lung computed tomography (CT) that go beyond the standard subtypes identified on autopsy. Emphysema subtypes can be defined on CT as a variety of textures with certain spatial prevalence. However, most existing approaches for learning emphysema subtypes on CT are limited to texture features, which are sub-optimal due to the lack of spatial information. In this work, we exploit a standardized spatial mapping of the lung and propose a novel framework for combining spatial and texture information to discover spatially-informed lung texture patterns (sLTPs). Our spatial mapping is demonstrated to be a powerful tool to study emphysema spatial locations over different populations. The discovered sLTPs are shown to have high reproducibility, ability to encode standard emphysema subtypes, and significant associations with clinical characteristics.
机译:未经监督的肺肺部亚型的发现提供了肺计算断层扫描(CT)的新定义,其超出了尸检所确定的标准亚型。可以在CT上定义肺气肿亚型,作为具有某些空间普遍性的各种纹理。然而,在CT上学习肺气肿亚型的大多数现有方法仅限于纹理特征,这是由于缺乏空间信息而是子最优的。在这项工作中,我们利用了肺的标准化空间映射,提出了一种组合空间和纹理信息的新框架,以发现空间通知的肺纹理图案(SLTPS)。我们的空间映射被证明是一个强大的工具,用于研究不同人群的肺气肿空间位置。发现的SLTP被证明具有高再现性,编码标准肺气肿亚型的能力,以及具有临床特征的重要关联。

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