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Scanner-Independent MyoMapNet for Accelerated Cardiac MRI T 1 Mapping Across Vendors and Field Strengths.

Authors :
Amyar A
Fahmy AS
Guo R
Nakata K
Sai E
Rodriguez J
Cirillo J
Pareek K
Kim J
Judd RM
Ruberg FL
Weinsaft JW
Nezafat R
Source :
Journal of magnetic resonance imaging : JMRI [J Magn Reson Imaging] 2024 Jan; Vol. 59 (1), pp. 179-189. Date of Electronic Publication: 2023 Apr 13.
Publication Year :
2024

Abstract

Background: In cardiac T <subscript>1</subscript> mapping, a series of T <subscript>1</subscript> -weighted (T <subscript>1</subscript> w) images are collected and numerically fitted to a two or three-parameter model of the signal recovery to estimate voxel-wise T <subscript>1</subscript> values. To reduce the scan time, one can collect fewer T <subscript>1</subscript> w images, albeit at the cost of precision or/and accuracy. Recently, the feasibility of using a neural network instead of conventional two- or three-parameter fit modeling has been demonstrated. However, prior studies used data from a single vendor and field strength; therefore, the generalizability of the models has not been established.<br />Purpose: To develop and evaluate an accelerated cardiac T <subscript>1</subscript> mapping approach based on MyoMapNet, a convolution neural network T <subscript>1</subscript> estimator that can be used across different vendors and field strengths by incorporating the relevant scanner information as additional inputs to the model.<br />Study Type: Retrospective, multicenter.<br />Population: A total of 1423 patients with known or suspected cardiac disease (808 male, 57 ± 16 years), from three centers, two vendors (Siemens, Philips), and two field strengths (1.5 T, 3 T). The data were randomly split into 60% training, 20% validation, and 20% testing.<br />Field Strength/sequence: A 1.5 T and 3 T, Modified Look-Locker inversion recovery (MOLLI) for native and postcontrast T <subscript>1</subscript> .<br />Assessment: Scanner-independent MyoMapNet (SI-MyoMapNet) was developed by altering the deep learning (DL) architecture of MyoMapNet to incorporate scanner vendor and field strength as inputs. Epicardial and endocardial contours and blood pool (by manually drawing a large region of interest in the blood pool) of the left ventricle were manually delineated by three readers, with 2, 8, and 9 years of experience, and SI-MyoMapNet myocardial and blood pool T <subscript>1</subscript> values (calculated from four T <subscript>1</subscript> w images) were compared with conventional MOLLI T <subscript>1</subscript> values (calculated from 8 to 11 T <subscript>1</subscript> w images).<br />Statistical Tests: Equivalency test with 95% confidence interval (CI), linear regression slope, Pearson correlation coefficient (r), Bland-Altman analysis.<br />Results: The proposed SI-MyoMapNet successfully created T <subscript>1</subscript> maps. Native and postcontrast T <subscript>1</subscript> values measured from SI-MyoMapNet were strongly correlated with MOLLI, despite using only four T <subscript>1</subscript> w images, at both field-strengths and vendors (all r > 0.86). For native T <subscript>1</subscript> , SI-MyoMapNet and MOLLI were in good agreement for myocardial and blood T <subscript>1</subscript> values in institution 1 (myocardium: 5 msec, 95% CI [3, 8]; blood: -10 msec, 95%CI [-16, -4]), in institution 2 (myocardium: 6 msec, 95% CI [0, 11]; blood: 0 msec, [-18, 17]), and in institution 3 (myocardium: 7 msec, 95% CI [-8, 22]; blood: 8 msec, [-14, 30]). Similar results were observed for postcontrast T <subscript>1</subscript> .<br />Data Conclusion: Inclusion of field strength and vendor as additional inputs to the DL architecture allows generalizability of MyoMapNet across different vendors or field strength.<br />Evidence Level: 2.<br />Technical Efficacy: Stage 2.<br /> (© 2023 International Society for Magnetic Resonance in Medicine.)

Details

Language :
English
ISSN :
1522-2586
Volume :
59
Issue :
1
Database :
MEDLINE
Journal :
Journal of magnetic resonance imaging : JMRI
Publication Type :
Academic Journal
Accession number :
37052580
Full Text :
https://doi.org/10.1002/jmri.28739