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Title: Rule-based definition of muscle bundles in patient-specific models of the left atrium
Atrial fibrillation (AF) is the most common arrhythmia encountered clinically, and as the population ages, its prevalence is increasing. Although the CHA 2 DS 2 − VASc score is the most used risk-stratification system for stroke risk in AF, it lacks personalization. Patient-specific computer models of the atria can facilitate personalized risk assessment and treatment planning. However, a challenge faced in creating such models is the complexity of the atrial muscle arrangement and its influence on the atrial fiber architecture. This work proposes a semi-automated rule-based algorithm to generate the local fiber orientation in the left atrium (LA). We use the solutions of several harmonic equations to decompose the LA anatomy into subregions. Solution gradients define a two-layer fiber field in each subregion. The robustness of our approach is demonstrated by recreating the fiber orientation on nine models of the LA obtained from AF patients who underwent WATCHMAN device implantation. This cohort of patients encompasses a variety of morphology variants of the left atrium, both in terms of the left atrial appendages (LAAs) and the number of pulmonary veins (PVs). We test the fiber construction algorithm by performing electrophysiology (EP) simulations. Furthermore, this study is the first to compare its results with other rule-based algorithms for the LA fiber architecture definition available in the literature. This analysis suggests that a multi-layer fiber architecture is important to capture complex electrical activation patterns. A notable advantage of our approach is the ability to reconstruct the main LA fiber bundles in a variety of morphologies while solving for a small number of harmonic fields, leading to a comparatively straightforward and reproducible approach.  more » « less
Award ID(s):
1931516 1450327
NSF-PAR ID:
10391004
Author(s) / Creator(s):
; ; ; ; ;
Date Published:
Journal Name:
Frontiers in Physiology
Volume:
13
ISSN:
1664-042X
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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    Methods

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    Results

    During a follow‐up period of 12 months, 76 of 230 (33%) patients with HF experienced recurrent AF after ablation. The median APPLE and CAAP‐AF scores were 1.5 ([Q1, Q3]: [1.0, 2.0]) and 4.0 ([Q1, Q3]: [3.0, 5.0]), respectively and were not different from those patients with and without recurrent AF. Freedom from AF was not different according to APPLE and CAAP‐AF scores. Discrimination for recurrent AF with the CAAP‐AF score was modest with a C‐statistic of 0.60 (95% CI 0.52‐0.67). Discrimination with the APPLE score was similarly modest, with a C‐statistic of 0.54 (95% CI: 0.47‐0.62).

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