Cape Town - 2026 ISMRM-ISMRT Annual Meeting and Exhibition
9 May 2026 – 14 May 2026 · Cape Town, South Africa
467-01-002 ISMRM Abstract

Quantitative MRI with PDFF and Texture Outperforms Volume Measurements to Assess Aging of the Masseter Muscle

Accepted
Daiki Tamada 1, Amirhossein Roshanshad1, Jitka Starekova1,2, Eisuke Takai, Scott B Reeder1,2,3,4,5,6,7
1Department of Radiology, University of Wisconsin - Madison, Madison, United States of America
2University of Wisconsin - Madison, Madison, United States of America
3Department of Biomedical Engineering, University of Wisconsin - Madison, Madison, United States of America
4Department of Medicine, University of Wisconsin - Madison, Madison, United States of America
5Department of Emergency Medicine, University of Wisconsin - Madison, Madison, United States of America
6Calimetrix, Madison, United States of America
7Department of Medical Physics, University of Wisconsin - Madison, Madison, United States of America
Presenting Author: Daiki Tamada

Synopsis

Motivation:
Goals:
Approach:
Results:
Full abstract & presentation

The full text, figures, and any recorded presentation for this abstract are not shown here. Log in if you are a member or registered attendee with access.

Full abstracts, figures, and presentations for Cape Town - 2026 ISMRM-ISMRT Annual Meeting and Exhibition are available to registered attendees. This content becomes freely available to the public roughly two years after the meeting.

To request or purchase access, contact the ISMRM Central Office at info@ismrm.org.

Log in

References

1. Hooijmans MT, Schlaffke L, Bolsterlee B, Schlaeger S, Marty B, Mazzoli V. Compositional and Functional MRI of Skeletal Muscle: A Review. J Magn Reson Imaging 2024; 60:860–877. PMID: 37929681. [pmid]
2. Borda MG, Duque G, Perez-Zepeda MU, et al. Using magnetic resonance imaging to measure head muscles: An innovative method to opportunistically determine muscle mass and detect sarcopenia. J Cachexia Sarcopenia Muscle 2024; 15:189–197. PMID: 38050325. [pmid]
3. Smit MJ, Nijholt W, Bakker MH, Visser A. The predictive value of masticatory function for adverse health outcomes in older adults: a systematic review. J Nutr Health Aging 2024; 28:100210. PMID: 38489994. [pmid]
4. Thanaj M, Basty N, Whitcher B, et al. Precision MRI phenotyping of muscle volume and quality at a population scale. Front Physiol 2024; 15:1288657. PMID: 38370011. [pmid]
5. Patzelt L, Junker D, Syvari J, et al. MRI-Determined Psoas Muscle Fat Infiltration Correlates with Severity of Weight Loss during Cancer Cachexia. Cancers (Basel) 2021; 13. PMID: 34503243. [pmid]
6. Burian E, Syvari J, Holzapfel C, et al. Gender- and Age-Related Changes in Trunk Muscle Composition Using Chemical Shift Encoding-Based Water(-)Fat MRI. Nutrients 2018; 10. PMID: 30551614. [pmid]
7. Yu H, Shimakawa A, McKenzie CA, Brodsky E, Brittain JH, Reeder SB. Multiecho water‐fat separation and simultaneous R estimation with multifrequency fat spectrum modeling. Magnetic Resonance in Medicine: An Official Journal of the International Society for Magnetic Resonance in Medicine 2008; 60:1122–1134. PMID: 18956464. [pmid]
8. Dieckmeyer M, Inhuber S, Schlaeger S, et al. Texture Features of Proton Density Fat Fraction Maps from Chemical Shift Encoding-Based MRI Predict Paraspinal Muscle Strength. Diagnostics (Basel) 2021; 11. PMID: 33557080. [pmid]
9. Farrow M, Biglands J, Tanner SF, et al. The effect of ageing on skeletal muscle as assessed by quantitative MR imaging: an association with frailty and muscle strength. Aging Clin Exp Res 2021; 33:291–301. PMID: 32198628. [pmid]

Cite this abstract