PSIRNet: Deep Learning-based Free-breathing Rapid Acquisition Late Enhancement Imaging
Arda Atalik, Hui Xue, Rhodri H. Davies, Thomas A. Treibel, Daniel K. Sodickson, Michael S. Hansen, Peter Kellman

TL;DR
PSIRNet is a deep learning method that produces high-quality free-breathing cardiac MRI images from a single acquisition, significantly reducing scan time compared to traditional methods.
Contribution
It introduces a physics-guided deep learning network trained on extensive multi-site data to reconstruct diagnostic-quality images from minimal acquisitions.
Findings
Single-acquisition PSIRNet images outperform MOCO PSIR in dark blood LGE.
Inference time per slice is approximately 100 ms, much faster than traditional methods.
Achieves 8- to 24-fold reduction in MRI acquisition time.
Abstract
Purpose: To develop and evaluate a deep learning (DL) method for free-breathing phase-sensitive inversion recovery (PSIR) late gadolinium enhancement (LGE) cardiac MRI that produces diagnostic-quality images from a single acquisition over two heartbeats, eliminating the need for 8 to 24 motion-corrected (MOCO) signal averages. Materials and Methods: Raw data comprising 800,653 slices from 55,917 patients, acquired on 1.5T and 3T scanners across multiple sites from 2016 to 2024, were used in this retrospective study. Data were split by patient: 640,000 slices (42,822 patients) for training and the remainder for validation and testing, without overlap. The training and testing data were from different institutions. PSIRNet, a physics-guided DL network with 845 million parameters, was trained end-to-end to reconstruct PSIR images with surface coil correction from a single interleaved…
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