Pugar Joseph A, Kim Junsung, Khabaz Kameel, Yuan Karen, Pocivavsek Luka
University of Chicago, Chicago, IL 60637 USA.
medRxiv. 2025 Jan 29:2024.08.30.24312310. doi: 10.1101/2024.08.30.24312310.
The scale and resolution of anatomical features extracted from medical CT images are crucial for advancing clinical decision-making tools. While traditional metrics, such as maximum aortic diameter, have long been the standard for classifying aortic diseases, these one-dimensional measures often fall short in capturing the rich geometrical nuances available in progressively advancing imaging modalities. Recent advancements in computational methods and imaging have introduced more sophisticated geometric signatures, in particular scale-invariant measures of aortic shape. Among these, the normalized fluctuation in total integrated Gaussian curvature ( ) over a surface mesh model of the aorta has emerged as a particularly promising metric. However, there exists a critical tradeoff between noise reduction and shape signal preservation within the scale space parameters - namely, smoothing intensity, meshing density, and partitioning size. Through a comprehensive analysis of over 1200 unique scale space constructions derived from a cohort of 185 aortic dissection patients, this work pinpoints optimal resolution scales at which shape variations are most strongly correlated with surgical outcomes. Importantly, these findings emphasize the pivotal role of a secondary discretization step, which consistently yield the most robust signal when scaled to approximately 1 cm. This approach enables the development of models that are not only clinically effective but also inherently resilient to biases introduced by patient population heterogeneity. By focusing on the appropriate intermediate scales for analysis, this study paves the way for more precise and reliable tools in medical imaging, ultimately contributing to improved patient outcomes in cardiovascular surgery.
从医学CT图像中提取的解剖特征的尺度和分辨率对于推进临床决策工具至关重要。虽然传统指标,如主动脉最大直径,长期以来一直是主动脉疾病分类的标准,但这些一维测量方法在捕捉不断进步的成像模式中丰富的几何细微差别方面往往存在不足。计算方法和成像技术的最新进展引入了更复杂的几何特征,特别是主动脉形状的尺度不变测量方法。其中,主动脉表面网格模型上总积分高斯曲率( )的归一化波动已成为一个特别有前景的指标。然而,在尺度空间参数(即平滑强度、网格密度和分区大小)内的降噪和形状信号保留之间存在关键的权衡。通过对来自185名主动脉夹层患者队列的1200多个独特尺度空间结构的全面分析,这项工作确定了形状变化与手术结果最强烈相关的最佳分辨率尺度。重要的是,这些发现强调了二次离散化步骤的关键作用,当缩放到约1厘米时,该步骤始终能产生最稳健的信号。这种方法能够开发出不仅在临床上有效,而且对患者群体异质性引入的偏差具有内在弹性的模型。通过关注适当的中间尺度进行分析,本研究为医学成像中更精确、可靠的工具铺平了道路,最终有助于改善心血管手术患者的预后。