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ISMRM 2023 presentations

GE HealthCare is pleased to announce the following abstracts on AIR™ Recon DL, other new deep-learning-based applications and novel MR imaging techniques were accepted for presentation at the 2023 Annual Meeting of the International Society for Magnetic Resonance in Medicine (ISMRM) scheduled to be held June 3–8 in Toronto, Ontario, Canada. AIR™ Recon DL is a GE-first, deep-learning MR reconstruction algorithm designed to improve SNR and image sharpness and enable shorter scan times.

 

AI

Modified Homodyne reconstruction using a high-resolution phase in magnetic resonance images

GE HealthCare

 

Perturbation loss with carrier image reconstruction: A loss function for optimized point spread functions

GE HealthCare

 

Body

Addressing Bias and Precision in Low SNR Chemical Shift Encoded MRI Proton Density Fat Fraction Estimation using a Deep Learning Reconstruction

University of Wisconsin - Madison, US

 

Establishment of SPGR-based MOLLI T1 mapping for the calculation of extracellular volume fraction (ECV) in Gd-EOB-DTPA-enhanced MRI

Fukuoka University, Japan

 

Feasibility of 3D Quantitative Synthetic MRI for Discriminating Immunohistochemical Status in Invasive Ductal Carcinoma of the Breast

Juntendo University, Japan

 

Free-Breathing, Confounder-Corrected, 3D T1 Mapping of the Liver through Simultaneous Estimation of T1, PDFF, R2* and B1+

University of Wisconsin - Madison, US

 

Free-Breathing, Gadoxetic Acid Enhanced, 3D T1w Phase Sensitive Inversion Recovery Hepatobiliary MRI Optimized for 3.0 Tesla

University of Wisconsin - Madison, US

 

In Vivo Evaluation of a Novel Deep Learning-based

MR Image Reconstruction for Liver Fat Quantification

University of Wisconsin - Madison, US

 

Radial vs. Spiral – A Comparison of Stack-of-stars and Stack-of-spirals Spatial Encoding Schemes in Multiparametric Body MRI with QTI

IRCCS Stella Maris, Italy

 

Slice-by-slice Dynamic Shimming Based on a Chemical Shift-Encoded Acquisition to Improve Fat Suppression in DWI

University of Wisconsin - Madison, US

 

Body, 7T

Quantitative Parameter Mapping in the Abdomen at 7T using Radial QTI Encoding

IRCCS Stella Maris, Italy

 

Body, AI

Deep Learning Based Reconstruction for Multi-shot DWI of the Breast: A Preliminary Study

IRCCS Stella Maris, Italy

 

Deep Learning Reconstruction to Pelvis Multi-Shot DWI Improved Image Quality with Less Image Distortion: A Preliminary Study

University of Hong Kong, Hong Kong

 

High-resolution PROPELLER T2-weighted imaging of the prostate with deep learning reconstruction: a phantom and clinical preliminary study

Osaka University Graduate School of Medicine, Japan

 

Improved Image Quality with Deep Learning-Based Image Reconstruction for Multi-shot Diffusion-Weighted Imaging of the Prostate

Stanford University, US

 

Multi-Shot M1-Nulled Pancreatic Diffusion Weighted Imaging with Deep Learning-Based Denoising

Stanford University, US

 

Utility of Thin-Slice Fat-Suppressed Single-Shot T2-Weighted MRI with Deep Learning Image Reconstruction for Pancreatic Cancer

Kobe University Hospital, Japan

 

Body, Lungs

Batch-mode production of hyperpolarised xenon gas with a continuous-flow polariser for preclinical and clinical human lung ventilation images

Aarhus University, Denmark; University of Sheffield, UK

 

Implementation of dissolved Xe lung MRI with 4-echo 3D radial spectroscopic imaging at 3T: comparing with results at 1.5T in healthy volunteers

University of Sheffield, UK

 

Mapping transmit and receive B using variable flip angle acquisition on a person-by-person basis for hyperpolarized Carbon-13 and Xenon-129 MRI

The University of Oxford (OCMR), UK

 

A feasibility study of deep learning cardiac cine comparing image quality and volumetry with the conventional ASSET cine

Keio University, Japan

 

Evaluation of image quality and global cardiac function for deep learning accelerated cardiac Cine

Stanford University, US; Fairfax Radiological Associates, US; University of Wisconsin - Madison, US

 

Relative noise variation with Unrolled Neural Networks for Accelerated Cardiac Cine

GE HealthCare

 

Lung

Self-navigated free-breathing ZTE lung imaging

University of Cambridge, UK; Kings College London, UK

 

Lung, AI

Improving Xenon-129 Lung Ventilation Image Quality with a Commercial Deep-Learning Based Image Reconstruction

University of Sheffield, UK

 

MSK

Comparison of UTE-T1p vs MAPSS-T1p Sequences in In-Vivo Knees

Hospital of Special Surgery, US

 

Deep Learning Reconstruction for 4-fold Accelerated 2D FSE Imaging: optimization of variable density undersampling

GE HealthCare

 

Deep learning reconstruction of zero echo time imaging: bone erosion detection in axial spondyloarthritis

Inje University Haeundae Paik Hospital, South Korea

 

Evaluation of an accelerated Deep Learning-reconstructed T2 mapping technique through knee cartilage regional analysis using DOSMA framework

Clinica CEMTRO, Spain; University of California San Francisco, US; Stanford University, US

 

Improved 3D DESS MR Neurography of the Lumbosacral Plexus with Deep Learning and Geometric Image Combination

Hospital of Special Surgery, US

 

Intelligent volume rendering of ZTE MR Bone images

GE HealthCare

 

Quantitative 3D DESS T2 mapping with Deep Learning Reconstruction for Magnetic Resonance Neurography

Hospital of Special Surgery, US

 

ZTE segmentation of glenohumeral bone structure using deep learning

University of California San Diego, US

 

Neuro

Application of Deep Learning-based Reconstruction for Diffusion Kurtosis Imaging in Head and Neck Cancer

Memorial Sloan Kettering Cancer Center, US

 

Comparison of Myelin Water Imaging from Multi-echo T2 Decay Curve and Myelin Content from Synthetic MRI

GE HealthCare

 

Controlled Modeling of Cerebrospinal Fluid Flow Artifacts with a Simple Digital Spine Phantom

GE HealthCare

 

Evaluation of deep learning-based reconstruction for qualitative and quantitative DW-MRI in head and neck cancers

Memorial Sloan Kettering Cancer Center, US

 

Performance Evaluation of Deep Learning-based Image Reconstruction for Head and Neck Imaging Protocol

Memorial Sloan Kettering Cancer Center, US

 

Repeatability and reproducibility of MRF-based Myelin Water Fraction maps of healthy human brains

IRCCS Stella Maris, Italy

 

The validation of ASL-aCBV measured by Hadamard encoded ASL imaging evaluating moyamoya disease correlative study with O-H O PET-CBV

Fukui University, Japan

 

TR effect on Myelin Water Imaging

GE HealthCare

 

What if every voxel was measured with a different diffusion protocol

NYU Grossman School of Medicine, US

 

Neuro, 7T

Simultaneous T1 and T2 relaxometry of the human brain at 7T using Quantitative Transient-state Imaging

IRCCS Stella Maris, Italy

 

Neuro, AI

Multiparameter estimation from DANTE-prepared multi-delay ASL using artificial neural network

Fukui University, Japan

 

Neuro, MNS

Beyond lactate: using hyperpolarized [1-C] pyruvate to measure human brain pH and amino acid metabolism

University of Cambridge, UK

 

Spine

Deep Learning based prediction of the planes for automated planning of MRI imaging of cervical neural foramina and lumbar pars interarticularis

GE Research, US

 

Vascular

Diffusion Weighted-Viscosity Imaging for Atherosclerotic Plaques

Tokushima University, Japan; Kanazawa University, Japan

 

Evaluation of Biological Metabolic Activity within an Atherosclerotic Plaque using Chemical Exchange Saturation Transfer Imaging

Tokushima University, Japan; Kanazawa University, Japan

 

Vascular, AI

Breath-hold Whole Heart Coronary MRA with Parallel Imaging, Compressed Sensing and Deep Learning reconstruction

Keio University, Japan

 

High Resolution Intracranial MR Angiography at 3T and 7T using a Deep Learning based Image Reconstruction

University of Iowa, US; Hirosaki University, Japan

 

Highly accelerated FLEXA 3D TOF MR Angiography with iterative deep learning reconstruction

Keio University, Japan

 

A black and white image of a book

For more information on ISMRM 2023, visit:

https://www.ismrm.org/23m/ 

 

 

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