Center for Genes, Environment and Health, National Jewish Health, Denver, CO, USA.
Department of Biostatistics and Informatics, University of Colorado Denver, Anschutz Medical Campus, Aurora, CO, USA.
Sci Rep. 2023 Aug 24;13(1):13862. doi: 10.1038/s41598-023-40950-8.
Quantitative assessment of emphysema in CT scans has mostly focused on calculating the percentage of lung tissue that is deemed abnormal based on a density thresholding strategy. However, this overall measure of disease burden discards virtually all the spatial information encoded in the scan that is implicitly utilized in a visual assessment. This simplification is likely grouping heterogenous disease patterns and is potentially obscuring clinical phenotypes and variable disease outcomes. To overcome this, several methods that attempt to quantify heterogeneity in emphysema distribution have been proposed. Here, we compare three of those: one based on estimating a power law for the size distribution of contiguous emphysema clusters, a second that looks at the number of emphysema-to-emphysema voxel adjacencies, and a third that applies a parametric spatial point process model to the emphysema voxel locations. This was done using data from 587 individuals from Phase 1 of COPDGene that had an inspiratory CT scan and plasma protein abundance measurements. The associations between these imaging metrics and visual assessment with clinical measures (FEV[Formula: see text], FEV[Formula: see text]-FVC ratio, etc.) and plasma protein biomarker levels were evaluated using a variety of regression models. Our results showed that a selection of spatial measures had the ability to discern heterogeneous patterns among CTs that had similar emphysema burdens. The most informative quantitative measure, average cluster size from the point process model, showed much stronger associations with nearly every clinical outcome examined than existing CT-derived emphysema metrics and visual assessment. Moreover, approximately 75% more plasma biomarkers were found to be associated with an emphysema heterogeneity phenotype when accounting for spatial clustering measures than when they were excluded.
CT 扫描中肺气肿的定量评估主要集中在基于密度阈值策略计算被认为异常的肺组织百分比上。然而,这种基于疾病负担的总体衡量标准几乎丢弃了扫描中隐含用于视觉评估的所有空间信息。这种简化可能会将异质的疾病模式分组,并可能掩盖临床表型和可变的疾病结果。为了克服这个问题,已经提出了几种试图量化肺气肿分布异质性的方法。在这里,我们比较了其中的三种:一种基于估计连续肺气肿簇大小分布的幂律,另一种方法关注肺气肿与肺气肿体素相邻的数量,第三种方法是将参数空间点过程模型应用于肺气肿体素位置。这是使用 COPDGene 第 1 阶段的 587 名个体的数据完成的,这些个体有吸气 CT 扫描和血浆蛋白丰度测量值。使用各种回归模型评估了这些成像指标与视觉评估与临床指标(FEV[Formula: see text]、FEV[Formula: see text]-FVC 比值等)以及血浆蛋白生物标志物水平之间的关联。我们的结果表明,一些空间指标具有辨别 CT 中具有相似肺气肿负担的异质模式的能力。来自点过程模型的平均簇大小是最具信息量的定量指标,与几乎所有检查的临床结果都有更强的关联,而不是现有的 CT 衍生的肺气肿指标和视觉评估。此外,当考虑空间聚类指标时,与肺气肿异质性表型相关的血浆生物标志物数量比不考虑时多了约 75%。