TY - JOUR
T1 - Generation of Patient Specific Cardiac Chamber Models Using Generative Neural Networks Under a Bayesian Framework for Electroanatomical Mapping
AU - Mathew, Sunil
AU - Sra, Jasbir
AU - Rowe, Daniel B.
N1 - Publisher Copyright:
© Grace Scientific Publishing 2025.
PY - 2025/3
Y1 - 2025/3
N2 - Electroanatomical mapping is a technique used in cardiology to create a detailed 3D map of the electrical activity in the heart. It is useful for diagnosis, treatment planning and real time guidance in cardiac ablation procedures to treat arrhythmias like atrial fibrillation. A probabilistic machine learning model trained on a library of CT/MRI scans of the heart can be used during electroanatomical mapping to generate a patient-specific 3D model of the chamber being mapped. The use of probabilistic machine learning models under a Bayesian framework provides a way to quantify uncertainty in results and provide a natural framework of interpretability of the model. Here we introduce a Bayesian approach to surface reconstruction of cardiac chamber models from a sparse 3D point cloud data acquired during electroanatomical mapping. We show how probabilistic graphical models trained on segmented CT/MRI data can be used to generate cardiac chamber models from few acquired locations thereby reducing procedure time and x-ray exposure. We show how they provide insight into what the neural network learns from the segmented CT/MRI images used to train the network, which provides explainability to the resulting cardiac chamber models generated by the model.
AB - Electroanatomical mapping is a technique used in cardiology to create a detailed 3D map of the electrical activity in the heart. It is useful for diagnosis, treatment planning and real time guidance in cardiac ablation procedures to treat arrhythmias like atrial fibrillation. A probabilistic machine learning model trained on a library of CT/MRI scans of the heart can be used during electroanatomical mapping to generate a patient-specific 3D model of the chamber being mapped. The use of probabilistic machine learning models under a Bayesian framework provides a way to quantify uncertainty in results and provide a natural framework of interpretability of the model. Here we introduce a Bayesian approach to surface reconstruction of cardiac chamber models from a sparse 3D point cloud data acquired during electroanatomical mapping. We show how probabilistic graphical models trained on segmented CT/MRI data can be used to generate cardiac chamber models from few acquired locations thereby reducing procedure time and x-ray exposure. We show how they provide insight into what the neural network learns from the segmented CT/MRI images used to train the network, which provides explainability to the resulting cardiac chamber models generated by the model.
KW - Atrial fibrillation
KW - Bayesian inference
KW - Cardiac mapping
KW - Generative neural networks
KW - Model interpretability
KW - Probabilistic machine learning
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U2 - 10.1007/s42519-024-00416-0
DO - 10.1007/s42519-024-00416-0
M3 - Article
AN - SCOPUS:85218277121
SN - 1559-8608
VL - 19
JO - Journal of Statistical Theory and Practice
JF - Journal of Statistical Theory and Practice
IS - 1
M1 - 13
ER -