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The Back Muscle Surface Electromyography-Based Fatigue Index: A Digital Biomarker of Human Neuromuscular Aging?

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Date 2023 Mar 29
PMID 36978691
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Abstract

As part of our quest for digital biomarkers of neuromuscular aging, and encouraged by recent findings in healthy volunteers, this study investigated if the instantaneous median frequency (IMDF) derived from back muscle surface electromyographic (SEMG) data monitored during cyclic back extensions could reliably differentiate between younger and older individuals with cLBP. A total of 243 persons with cLBP participated in three experimental sessions: at baseline, one to two days after the first session, and then again approximately six weeks later. During each session, the study participants performed a series of three isometric maximal voluntary contractions (MVC) of back extensors using a dynamometer. These were followed by an isometric back extension at 80% MVC, and-after a break-25 slow cyclic back extensions at 50% MVC. SEMG data were recorded bilaterally at L5 (multifidus), L2 (longissimus dorsi), and L1 (iliocostalis lumborum). Linear mixed-effects models found the IMDF-SEMG time-course changes more rapidly in younger than in older individuals, and more prominently in male participants. The absolute and relative reliabilities of the SEMG time-frequency representations were well compared between older and younger participants. The results indicated an overall good relative reliability, but variable absolute reliability levels. IMDF-SEMG estimates derived from cyclic back extensions proved to be successful in reliably detecting differences in back muscle function in younger vs. older persons with cLBP. These findings encourage further research, with a focus on assessing whether an IMDF-SEMG-based index could be utilized as a tool to achieve the preclinical detection of back muscle aging, and possibly predict the development of back muscle sarcopenia.

References
1.
Contessa P, Adam A, De Luca C . Motor unit control and force fluctuation during fatigue. J Appl Physiol (1985). 2009; 107(1):235-43. PMC: 2711782. DOI: 10.1152/japplphysiol.00035.2009. View

2.
Kienbacher T, Kollmitzer J, Anders P, Habenicht R, Starek C, Wolf M . Age-related test-retest reliability of isometric trunk torque measurements in patiens with chronic low back pain. J Rehabil Med. 2016; 48(10):893-902. DOI: 10.2340/16501977-2164. View

3.
Fortin M, Videman T, Gibbons L, Battie M . Paraspinal muscle morphology and composition: a 15-yr longitudinal magnetic resonance imaging study. Med Sci Sports Exerc. 2013; 46(5):893-901. DOI: 10.1249/MSS.0000000000000179. View

4.
Mannion A, Dumas G, Stevenson J, Cooper R . The influence of muscle fiber size and type distribution on electromyographic measures of back muscle fatigability. Spine (Phila Pa 1976). 1998; 23(5):576-84. DOI: 10.1097/00007632-199803010-00010. View

5.
Hasenbring M, Fehrmann E, Ebenbichler G . Embodied Pain: There is a Need to Reflect Interactions Between Cognitions, Behavior, and Neuromuscular Activity in Chronic Pain. Clin J Pain. 2019; 36(3):178-180. DOI: 10.1097/AJP.0000000000000789. View