A bi-atrial statistical shape model for large-scale in silico studies of human atria: model development and application to ECG simulations
Claudia Nagel, Steffen Schuler, Olaf D\"ossel, Axel Loewe

TL;DR
This paper introduces a new bi-atrial statistical shape model built from human imaging data, enabling large-scale, realistic atrial ECG simulations for machine learning and research.
Contribution
The authors developed and validated a comprehensive bi-atrial shape model using Gaussian process morphable models, which is publicly available for in silico studies.
Findings
Model covers 95% of shape variance with 23 eigenvectors
Simulated ECGs match large cohort data in P wave duration
Model generalizes well to unseen geometries
Abstract
Large-scale electrophysiological simulations to obtain electrocardiograms (ECG) carry the potential to produce extensive datasets for training of machine learning classifiers to, e.g., discriminate between different cardiac pathologies. The adoption of simulations for these purposes is limited due to a lack of ready-to-use models covering atrial anatomical variability. We built a bi-atrial statistical shape model (SSM) of the endocardial wall based on 47 segmented human CT and MRI datasets using Gaussian process morphable models. Generalization, specificity, and compactness metrics were evaluated. The SSM was applied to simulate atrial ECGs in 100 random volumetric instances. The first eigenmode of our SSM reflects a change of the total volume of both atria, the second the asymmetry between left vs. right atrial volume, the third a change in the prominence of the atrial appendages. The…
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Taxonomy
MethodsGaussian Process
