Deep learning estimation of three-dimensional left atrial shape from two-chamber and four-chamber cardiac long axis views
European Heart Journal - Cardiovascular Imaging

Abstract
Left atrial volume is commonly estimated using the bi-plane area-length method from two-chamber (2CH) and four-chamber (4CH) long axes views. However, this can be inaccurate due to a violation of geometric assumptions. We aimed to develop a deep learning neural network to infer 3D left atrial shape, volume and surface area from 2CH and 4CH views.
A 3D UNet was trained and tested using 2CH and 4CH segmentations generated from 3D coronary computed tomography angiography (CCTA) segmentations (
Compared to the bi-plane area-length method, the network showed higher accuracy and robustness for both volume and surface area.
Contributors

Hao Xu
Author

Steven E Williams
Author

Michelle C Williams
Author

David E Newby
Author

Jonathan Taylor
Author

Radhouene Neji
Author

Karl P Kunze
Author

Steven A Niederer
Author
Imperial College London London , United Kingdom of Great Britain & Northern Ireland

Alistair A Young
Author
King's College Hospital London , United Kingdom of Great Britain & Northern Ireland
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