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Van, Santvliet, L; Zappon, E; Gsell, MAF; Thaler, F; Blondeel, M; Dymarkowski, S; Claessen, G; Willems, R; Urschler, M; Vandenberk, B; Plank, G; De, Vos, M.
Integrating anatomy and electrophysiology in the healthy human heart: Insights from biventricular statistical shape analysis using universal coordinates.
Comput Biol Med. 2025; 192(Pt A):110230 Doi: 10.1016/j.compbiomed.2025.110230
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Co-Autor*innen der Med Uni Graz
Gsell Matthias
Plank Gernot
Thaler Franz
Urschler Martin
Zappon Elena
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Abstract:
A cardiac digital twin is a virtual replica of a patient-specific heart, mimicking its anatomy and physiology. A crucial step of building a cardiac digital twin is anatomical twinning, where the computational mesh of the digital twin is tailored to the patient-specific cardiac anatomy. In a number of studies, the effect of anatomical variation on clinically relevant functional measurements like electrocardiograms (ECGs) is investigated, using computational simulations. While such a simulation environment provides researchers with a carefully controlled ground truth, the impact of anatomical differences on functional measurements in real-world patients remains understudied. In this study, we develop a biventricular statistical shape model and use it to quantify the effect of biventricular anatomy on ECG-derived and demographic features, providing novel insights for the development of digital twins of cardiac electrophysiology. To this end, a dataset comprising high-resolution cardiac CT scans from 271 healthy individuals, including athletes, is utilized. Furthermore, a novel, universal, ventricular coordinate-based method is developed to establish lightweight shape correspondence. The performance of the shape model is rigorously established, focusing on its dimensionality reduction capabilities and the training data requirements. The most important variability in healthy ventricles captured by the model is their size, followed by their elongation. These anatomical factors are found to significantly correlate with ECG-derived and demographic features. Additionally, a comprehensive synthetic cohort is made available, featuring ready-to-use biventricular meshes with fiber structures and anatomical region annotations. These meshes are well-suited for electrophysiological simulations.
Find related publications in this database (using NLM MeSH Indexing)
Humans - administration & dosage
Models, Cardiovascular - administration & dosage
Electrocardiography - administration & dosage
Heart Ventricles - diagnostic imaging, anatomy & histology
Female - administration & dosage
Male - administration & dosage
Adult - administration & dosage
Heart - physiology, anatomy & histology, diagnostic imaging
Tomography, X-Ray Computed - administration & dosage
Middle Aged - administration & dosage

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