Left atrial ejection fraction estimation using SEGANet for fully automated segmentation of CINE MRI
Ana Louren\c{c}o, Eric Kerfoot, Connor Dibblin, Ebraham Alskaf,, Mustafa Anjari, Anil A Bharath, Andrew P King, Henry Chubb, Teresa M Correia,, Marta Varela

TL;DR
This study introduces SEGANet, a fully automated CNN-based segmentation method for the left atrium in CINE MRI, enabling accurate estimation of atrial ejection fractions to improve atrial fibrillation assessment.
Contribution
The paper presents a novel deep learning approach for automatic segmentation and functional biomarker estimation of the left atrium from CINE MRI, surpassing previous single-slice methods.
Findings
High-quality segmentation with Dice score 0.93
Automatic LA EF and aEF estimations align with literature
LA biomarkers are significantly higher in AF patients
Abstract
Atrial fibrillation (AF) is the most common sustained cardiac arrhythmia, characterised by a rapid and irregular electrical activation of the atria. Treatments for AF are often ineffective and few atrial biomarkers exist to automatically characterise atrial function and aid in treatment selection for AF. Clinical metrics of left atrial (LA) function, such as ejection fraction (EF) and active atrial contraction ejection fraction (aEF), are promising, but have until now typically relied on volume estimations extrapolated from single-slice images. In this work, we study volumetric functional biomarkers of the LA using a fully automatic SEGmentation of the left Atrium based on a convolutional neural Network (SEGANet). SEGANet was trained using a dedicated data augmentation scheme to segment the LA, across all cardiac phases, in short axis dynamic (CINE) Magnetic Resonance Images (MRI)…
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