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DDSB: An Unsupervised and Training-free Method for Phase Detection in Echocardiography

Authors :
Bu, Zhenyu
Liu, Yang
Huo, Jiayu
Peng, Jingjing
Wang, Kaini
Zhou, Guangquan
Sparks, Rachel
Dasgupta, Prokar
Granados, Alejandro
Ourselin, Sebastien
Publication Year :
2024

Abstract

Accurate identification of End-Diastolic (ED) and End-Systolic (ES) frames is key for cardiac function assessment through echocardiography. However, traditional methods face several limitations: they require extensive amounts of data, extensive annotations by medical experts, significant training resources, and often lack robustness. Addressing these challenges, we proposed an unsupervised and training-free method, our novel approach leverages unsupervised segmentation to enhance fault tolerance against segmentation inaccuracies. By identifying anchor points and analyzing directional deformation, we effectively reduce dependence on the accuracy of initial segmentation images and enhance fault tolerance, all while improving robustness. Tested on Echo-dynamic and CAMUS datasets, our method achieves comparable accuracy to learning-based models without their associated drawbacks. The code is available at https://github.com/MRUIL/DDSB

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.12787
Document Type :
Working Paper