论文标题
低剂量腹部CT的纵向变异性分析,基于深度学习的分割
Longitudinal Variability Analysis on Low-dose Abdominal CT with Deep Learning-based Segmentation
论文作者
论文摘要
从心脏病学到神经病学的疾病中,代谢健康越来越多地成为危险因素,对身体成分的效率评估对于定量表征这些关系至关重要。 2D低剂量单切计算机断层扫描(CT)提供了高分辨率,定量组织图,尽管视野有限。尽管在量化图像上下文时已经提出了许多潜在的分析,但尚无对低剂量单切片CT CT纵向变异的全面研究。我们使用受监督的基于深度学习的分割和无监督的聚类方法研究了1469名巴尔的摩纵向研究(BLSA)腹部数据集的1469名受试者的1816片切片。在前两次扫描中有两年差距的1469名受试者中,有300个被选出,以评估纵向变异性,包括在组织/器官的大小和平均强度方面,包括类内相关系数(ICC)和变异系数(CV)(CV)。我们表明,我们的分割方法在纵向环境中是稳定的,骰子范围为13个目标腹部组织结构的0.821至0.962。我们观察到ICC <0.5的大多数器官的较高变异性,肌肉,腹壁,脂肪和体膜的变化较低,平均ICC> 0.8。我们发现器官的变异性与2D切片的横截面位置高度相关。我们的努力铺平了定量探索和质量控制,以减少纵向分析中的不确定性。
Metabolic health is increasingly implicated as a risk factor across conditions from cardiology to neurology, and efficiency assessment of body composition is critical to quantitatively characterizing these relationships. 2D low dose single slice computed tomography (CT) provides a high resolution, quantitative tissue map, albeit with a limited field of view. Although numerous potential analyses have been proposed in quantifying image context, there has been no comprehensive study for low-dose single slice CT longitudinal variability with automated segmentation. We studied a total of 1816 slices from 1469 subjects of Baltimore Longitudinal Study on Aging (BLSA) abdominal dataset using supervised deep learning-based segmentation and unsupervised clustering method. 300 out of 1469 subjects that have two year gap in their first two scans were pick out to evaluate longitudinal variability with measurements including intraclass correlation coefficient (ICC) and coefficient of variation (CV) in terms of tissues/organs size and mean intensity. We showed that our segmentation methods are stable in longitudinal settings with Dice ranged from 0.821 to 0.962 for thirteen target abdominal tissues structures. We observed high variability in most organ with ICC<0.5, low variability in the area of muscle, abdominal wall, fat and body mask with average ICC>0.8. We found that the variability in organ is highly related to the cross-sectional position of the 2D slice. Our efforts pave quantitative exploration and quality control to reduce uncertainties in longitudinal analysis.