External validation of a deep learning algorithm for automated echocardiographic strain measurements
European Heart Journal - Digital Health

Abstract
Echocardiographic strain imaging reflects myocardial deformation and is a sensitive measure of cardiac function and wall-motion abnormalities. Deep learning (DL) algorithms could automate the interpretation of echocardiographic strain imaging.
We developed and trained an automated DL-based algorithm for left ventricular (LV) strain measurements in an internal dataset. Global longitudinal strain (GLS) was validated externally in (i) a
DL algorithms can interpret echocardiographic strain images with similar accuracy as conventional measurements. These results highlight the potential of DL algorithms to democratize the use of cardiac strain measurements and reduce time-spent and costs for echo labs globally.
Contributors

Matthew J Frost
Author

Zhubo Jiang
Author

Wouter Ouwerkerk
Author

Sara Svedlund
Author

Peder L Myhre
Author

Camilla Hage
Author

Ru-San Tan
Author

Chung-Lieh Hung
Author

Lauren Beussink-Nelson
Author

Maria L Fermer
Author

Li-Ming Gan
Author

Yoran M Hummel
Author

Lars H Lund
Author

Sanjiv J Shah
Author

Carolyn S P Lam
Author

Jasper Tromp
Author

