High Resolution Isotropic 3D Cine imaging with Automated Segmentation using Concatenated 2D Real-time Imaging and Deep Learning
Mark Wrobel (1), Michele Pascale (1), Tina Yao (1), Ruaraidh Campbell (1), Elena Milano (2), Michael Quail (1, 2), Jennifer Steeden (1), Vivek Muthurangu (1) ((1) UCL Centre for Translational Cardiovascular Imaging, University College London, (2) Great Ormond Street Hospital)

TL;DR
This paper presents a deep learning-based method to convert concatenated 2D real-time cine images into high-resolution, fully segmented 3D cardiac cine datasets, significantly speeding up cardiovascular MRI procedures.
Contribution
The study introduces a novel deep learning pipeline that automates the creation of 3D cine images from 2D real-time data with rapid processing, improving clinical efficiency.
Findings
Successful transformation of 2D cine images into 3D datasets within 1 minute.
Good agreement of ventricular volume measurements with conventional methods.
Minor overestimation of pulmonary artery diameter observed.
Abstract
Background: Conventional cardiovascular magnetic resonance (CMR) in paediatric and congenital heart disease uses 2D, breath-hold, balanced steady state free precession (bSSFP) cine imaging for assessment of function and cardiac-gated, respiratory-navigated, static 3D bSSFP whole-heart imaging for anatomical assessment. Our aim is to concatenate a stack 2D free-breathing real-time cines and use Deep Learning (DL) to create an isotropic a fully segmented 3D cine dataset from these images. Methods: Four DL models were trained on open-source data that performed: a) Interslice contrast correction; b) Interslice respiratory motion correction; c) Super-resolution (slice direction); and d) Segmentation of right and left atria and ventricles (RA, LA, RV, and LV), thoracic aorta (Ao) and pulmonary arteries (PA). In 10 patients undergoing routine cardiovascular examination, our method was…
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Taxonomy
TopicsCongenital Heart Disease Studies · Advanced MRI Techniques and Applications · Cardiac Imaging and Diagnostics
