心电图成像中分割变异性影响的不确定性量化。

Paemi Sino Pub Date : 2021-06-01 Epub Date: 2021-06-18 DOI:10.1007/978-3-030-78710-3_49
Jess D Tate, Wilson Good, Nejib Zemzemi, Machteld Boonstra, Peter van Dam, Dana H Brooks, Akil Narayan, Rob S MacLeod
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引用次数: 0

摘要

尽管心电图成像(ECGI)中使用的许多技术都在不断进步,但在管道的许多方面,不确定性仍未得到充分量化。迄今为止,几何不确定性的影响,尤其是由于分割变异造成的不确定性,可能是探索最少的。我们使用统计形状建模和不确定性量化(UQ)来计算分割可变性对心电图成像解决方案的影响。形状模型是用 Shapeworks 根据同一患者的九次分割建立的,并纳入心电图成像管道。我们使用 UncertainSCI 中的多项式混沌扩展 (PCE) 计算了心包电位和局部激活时间 (LAT) 的不确定性。心包电位因分割变化而产生的不确定性反映了形状模型中的高变化区域,即心脏底部和右心室流出道附近,ECGI 对心脏后部区域的不确定性不太敏感。随后,LAT 的计算结果会因分割变异而发生巨大变化,标准偏差高达 126 毫秒,但主要是在传导速度较低的区域。我们的形状建模和 UQ 管道展示了心电图成像中可能存在的因分割变异而导致的不确定性,研究人员可利用它们来减少上述不确定性或减轻其影响。统计形状建模和 UQ 的示范应用也可扩展到其他类型的建模管道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty Quantification of the Effects of Segmentation Variability in ECGI.

Despite advances in many of the techniques used in Electrocardiographic Imaging (ECGI), uncertainty remains insufficiently quantified for many aspects of the pipeline. The effect of geometric uncertainty, particularly due to segmentation variability, may be the least explored to date. We use statistical shape modeling and uncertainty quantification (UQ) to compute the effect of segmentation variability on ECGI solutions. The shape model was made with Shapeworks from nine segmentations of the same patient and incorporated into an ECGI pipeline. We computed uncertainty of the pericardial potentials and local activation times (LATs) using polynomial chaos expansion (PCE) implemented in UncertainSCI. Uncertainty in pericardial potentials from segmentation variation mirrored areas of high variability in the shape model, near the base of the heart and the right ventricular outflow tract, and that ECGI was less sensitive to uncertainty in the posterior region of the heart. Subsequently LAT calculations could vary dramatically due to segmentation variability, with a standard deviation as high as 126ms, yet mainly in regions with low conduction velocity. Our shape modeling and UQ pipeline presented possible uncertainty in ECGI due to segmentation variability and can be used by researchers to reduce said uncertainty or mitigate its effects. The demonstrated use of statistical shape modeling and UQ can also be extended to other types of modeling pipelines.

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