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EchoEFNet: Multi-task deep learning network for automatic calculation of left ventricular ejection fraction in 2D echocardiography

Honghe Li, Yonghuai Wang, Mingjun Qu, Peng Cao, Chaolu Feng, Jinzhu Yang

2023Computers in Biology and Medicine55 citationsDOIOpen Access PDF

Abstract

Left ventricular ejection fraction (LVEF) is essential for evaluating left ventricular systolic function. However, its clinical calculation requires the physician to interactively segment the left ventricle and obtain the mitral annulus and apical landmarks. This process is poorly reproducible and error prone. In this study, we propose a multi-task deep learning network EchoEFNet. The network use ResNet50 with dilated convolution as the backbone to extract high-dimensional features while maintaining spatial features. The branching network used our designed multi-scale feature fusion decoder to segment the left ventricle and detect landmarks simultaneously. The LVEF was then calculated automatically and accurately using the biplane Simpson's method. The model was tested for performance on the public dataset CAMUS and private dataset CMUEcho. The experimental results showed that the geometrical metrics and percentage of correct keypoints of EchoEFNet outperformed other deep learning methods. The correlation between the predicted LVEF and true values on the CAMUS and CMUEcho datasets was 0.854 and 0.916, respectively.

Topics & Concepts

Ejection fractionVentricleArtificial intelligenceComputer scienceBiplaneMitral annulusDeep learningFraction (chemistry)Pattern recognition (psychology)CardiologyMedicineInternal medicineHeart failureEngineeringBlood pressureAerospace engineeringOrganic chemistryChemistryDiastoleCardiovascular Function and Risk FactorsCardiac Valve Diseases and TreatmentsCOVID-19 diagnosis using AI
EchoEFNet: Multi-task deep learning network for automatic calculation of left ventricular ejection fraction in 2D echocardiography | Litcius