Literature DB >> 33557080

Texture Features of Proton Density Fat Fraction Maps from Chemical Shift Encoding-Based MRI Predict Paraspinal Muscle Strength.

Michael Dieckmeyer1, Stephanie Inhuber2, Sarah Schlaeger1, Dominik Weidlich3, Muthu Rama Krishnan Mookiah4, Karupppasamy Subburaj5, Egon Burian1, Nico Sollmann1, Jan S Kirschke1, Dimitrios C Karampinos3, Thomas Baum1.   

Abstract

Texture analysis (TA) has shown promise as a surrogate marker for tissue structure, based on conventional and quantitative MRI sequences. Chemical-shift-encoding-based MRI (CSE-MRI)-derived proton density fat fraction (PDFF) of paraspinal muscles has been associated with various medical conditions including lumbar back pain (LBP) and neuromuscular diseases (NMD). Its application has been shown to improve the prediction of paraspinal muscle strength beyond muscle volume. Since mean PDFF values do not fully reflect muscle tissue structure, the purpose of our study was to investigate PDFF-based TA of paraspinal muscles as a predictor of muscle strength, as compared to mean PDFF. We performed 3T-MRI of the lumbar spine in 26 healthy subjects (age = 30 ± 6 years; 15 females) using a six-echo 3D spoiled gradient echo sequence for chemical-shift-encoding-based water-fat separation. Erector spinae (ES) and psoas (PS) muscles were segmented bilaterally from level L2-L5 to extract mean PDFF and texture features. Muscle flexion and extension strength was measured with an isokinetic dynamometer. Out of the eleven texture features extracted for each muscle, Kurtosis(global) of ES showed the highest significant correlation (r = 0.59, p = 0.001) with extension strength and Variance(global) of PS showed the highest significant correlation (r = 0.63, p = 0.001) with flexion strength. Using multivariate linear regression models, Kurtosis(global) of ES and BMI were identified as significant predictors of extension strength (R2adj = 0.42; p < 0.001), and Variance(global) and Skewness(global) of PS were identified as significant predictors of flexion strength (R2adj = 0.59; p = 0.001), while mean PDFF was not identified as a significant predictor. TA of CSE-MRI-based PDFF maps improves the prediction of paraspinal muscle strength beyond mean PDFF, potentially reflecting the ability to quantify the pattern of muscular fat infiltration. In the future, this may help to improve the pathophysiological understanding, diagnosis, monitoring and treatment evaluation of diseases with paraspinal muscle involvement, e.g., NMD and LBP.

Entities:  

Keywords:  magnetic resonance imaging; muscle strength; paraspinal muscles; proton density fat fraction; texture analysis

Year:  2021        PMID: 33557080      PMCID: PMC7913879          DOI: 10.3390/diagnostics11020239

Source DB:  PubMed          Journal:  Diagnostics (Basel)        ISSN: 2075-4418


  44 in total

1.  Attenuation of skeletal muscle and strength in the elderly: The Health ABC Study.

Authors:  B H Goodpaster; C L Carlson; M Visser; D E Kelley; A Scherzinger; T B Harris; E Stamm; A B Newman
Journal:  J Appl Physiol (1985)       Date:  2001-06

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Journal:  Osteoporos Int       Date:  2018-01-10       Impact factor: 4.507

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