Jared Vicory, Christian Herz, David Allemang, Hannah H Nam, Alana Cianciulli, Chad Vigil, Ye Han, Andras Lasso, Matthew A Jolley, Beatriz Paniagua
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引用次数: 0
Abstract
Hypoplastic left heart syndrome (HLHS) is a congenital heart disease characterized by incomplete development of the left heart. Children with HLHS undergo a series of operations which result in the tricuspid valve (TV) becoming the only functional atrioventricular valve. Some of those patients develop tricuspid regurgitation which is associated with heart failure and death and necessitates further surgical intervention. Repair of the regurgitant TV, and understanding the connections between structure and function of this valve remains extremely challenging. Adult cardiac populations have used 3D echocardiography (3DE) combined with computational modeling to better understand cardiac conditions affecting the TV. However, these structure-function analyses rely on simplistic point-based techniques that do not capture the leaflet surface in detail, nor do they allow robust comparison of shapes across groups. We propose using statistical shape modeling and analysis of the TV using Spherical Harmonic Representation Point Distribution Models (SPHARM-PDM) in order to generate a reproducible representation, which in turn enables high dimensional low sample size statistical analysis techniques such as principal component analysis and distance weighted discrimination. Our initial results suggest that visualization of the differences in regurgitant vs. non-regurgitant valves can precisely locate populational structural differences as well as how an individual regurgitant valve differs from the mean shape of functional valves. We believe that these results will support the creation of modern image-based modeling tools, and ultimately increase the understanding of the relationship between valve structure and function needed to inform and improve surgical planning in HLHS.
左心发育不全综合症(HLHS)是一种以左心发育不全为特征的先天性心脏病。患有 HLHS 的儿童需要接受一系列手术,从而使三尖瓣(TV)成为唯一具有功能的房室瓣。其中一些患者会出现三尖瓣反流,这与心力衰竭和死亡有关,因此需要进一步的手术干预。修复反流的 TV 以及了解该瓣膜的结构和功能之间的联系仍然极具挑战性。成人心脏病患者使用三维超声心动图(3DE)结合计算建模来更好地了解影响TV的心脏状况。然而,这些结构-功能分析依赖于简单的基于点的技术,无法捕捉到瓣叶表面的细节,也无法对不同群体的形状进行稳健的比较。我们建议使用球形谐波表征点分布模型(SPHARM-PDM)对 TV 进行统计形状建模和分析,以生成可重复的表征,进而实现高维、低样本量的统计分析技术,如主成分分析和距离加权判别。我们的初步结果表明,反流瓣膜与非反流瓣膜的可视化差异可以精确定位群体结构差异,以及单个反流瓣膜与功能性瓣膜平均形状的差异。我们相信,这些结果将为创建基于图像的现代建模工具提供支持,并最终加深对瓣膜结构与功能之间关系的理解,从而为 HLHS 的手术规划提供依据并加以改进。