» Articles » PMID: 32499250

Brain Network Disruption in Whiplash

Overview
Specialty Neurology
Date 2020 Jun 6
PMID 32499250
Citations 8
Authors
Affiliations
Soon will be listed here.
Abstract

Background And Purpose: Whiplash-associated disorders frequently develop following motor vehicle collisions and often involve a range of cognitive and affective symptoms, though the neural correlates of the disorder are largely unknown. In this study, a sample of participants with chronic whiplash injuries were scanned by using resting-state fMRI to assess brain network changes associated with long-term outcome metrics.

Materials And Methods: Resting-state fMRI was collected for 23 participants and used to calculate network modularity, a quantitative measure of the functional segregation of brain region communities. This was analyzed for associations with whiplash-associated disorder outcome metrics, including scales of neck disability, traumatic distress, depression, and pain. In addition to these clinical scales, cervical muscle fat infiltration was quantified by using Dixon fat-water imaging, which has shown promise as a biomarker for assessing disorder severity and predicting recovery in chronic whiplash.

Results: An association was found between brain network structure and muscle fat infiltration, wherein lower network modularity was associated with larger amounts of cervical muscle fat infiltration after controlling for age, sex, body mass index, and scan motion ( =-4.02, partial =0.49, < .001).

Conclusions: This work contributes to the existing whiplash literature by examining a sample of participants with whiplash-associated disorder by using resting-state fMRI. Less modular brain networks were found to be associated with greater amounts of cervical muscle fat infiltration suggesting a connection between disorder severity and neurologic changes, and a potential role for neuroimaging in understanding the pathophysiology of chronic whiplash-associated disorders.

Citing Articles

Global, regional, and national burden of neck pain, 1990-2020, and projections to 2050: a systematic analysis of the Global Burden of Disease Study 2021.

Lancet Rheumatol. 2024; 6(3):e142-e155.

PMID: 38383088 PMC: 10897950. DOI: 10.1016/S2665-9913(23)00321-1.


Exploratory Study of Associations and Agreement between Prognostic Patient-Registered Factors, Physiotherapists' Intuitive Synthesis, and Patient-Reported Factors in Whiplash-Associated Disorders.

Oostendorp R, Scholten-Peeters G, Mulder J, van Trijffel E, Rutten G, De Kooning M J Clin Med. 2023; 12(6).

PMID: 36983329 PMC: 10051901. DOI: 10.3390/jcm12062330.


Biopsychosocial sequelae and recovery trajectories from whiplash injury following a motor vehicle collision.

Elliott J, Walton D, Albin S, Courtney D, Siegmund G, Carroll L Spine J. 2023; 23(7):1028-1036.

PMID: 36958668 PMC: 10330498. DOI: 10.1016/j.spinee.2023.03.005.


Altered Effective Connectivity of the Primary Motor Cortex in Transient Ischemic Attack.

Hao Z, Song Y, Shi Y, Xi H, Zhang H, Zhao M Neural Plast. 2022; 2022:2219993.

PMID: 36437903 PMC: 9699783. DOI: 10.1155/2022/2219993.


Traumatic Brain Injury After Music-Associated Head Banging: A Scoping Review.

Meiling J, Schulze D, Hines E, Hassett L, Esterov D Arch Rehabil Res Clin Transl. 2022; 4(3):100192.

PMID: 36123989 PMC: 9482027. DOI: 10.1016/j.arrct.2022.100192.


References
1.
Fonov V, Evans A, Botteron K, Almli C, McKinstry R, Collins D . Unbiased average age-appropriate atlases for pediatric studies. Neuroimage. 2010; 54(1):313-27. PMC: 2962759. DOI: 10.1016/j.neuroimage.2010.07.033. View

2.
Gorgolewski K, Burns C, Madison C, Clark D, Halchenko Y, Waskom M . Nipype: a flexible, lightweight and extensible neuroimaging data processing framework in python. Front Neuroinform. 2011; 5:13. PMC: 3159964. DOI: 10.3389/fninf.2011.00013. View

3.
Walton D, Elliott J . A new clinical model for facilitating the development of pattern recognition skills in clinical pain assessment. Musculoskelet Sci Pract. 2018; 36:17-24. DOI: 10.1016/j.msksp.2018.03.006. View

4.
Abbott R, Peolsson A, West J, Elliott J, Aslund U, Karlsson A . The qualitative grading of muscle fat infiltration in whiplash using fat and water magnetic resonance imaging. Spine J. 2017; 18(5):717-725. PMC: 8845185. DOI: 10.1016/j.spinee.2017.08.233. View

5.
Cox R . AFNI: software for analysis and visualization of functional magnetic resonance neuroimages. Comput Biomed Res. 1996; 29(3):162-73. DOI: 10.1006/cbmr.1996.0014. View