An artificial intelligence-based platform for automatically estimating time-averaged wall shear stress in the ascending aorta
European Heart Journal - Digital Health

Abstract
Aortopathies are a series of disorders requiring multiple indicators to assess risk. Time-averaged wall shear stress (TAWSS) is currently considered as the primary indicator of aortopathies progression, which can only be calculated by Computational Fluid Dynamics (CFD). However, CFD's complexity and high computational cost, greatly limit its application. The study aimed to construct a deep learning platform which could accurately estimate TAWSS in ascending aorta.
A total of 154 patients who had thoracic computed tomography angiography were included and randomly divided into two parts: training set (90%,
The high-efficiency and robust AI platform can automatically estimate value and distribution of TAWSS in ascending aorta, which may be suitable for clinical applications and provide potential ideas for CFD-based problem solving.
Contributors

Lei Lv
Author

Haotian Li
Author

Zonglv Wu
Author

Weike Zeng
Author

Ping Hua
Author

Songran Yang
Author
