From the Departments of Radiology (J.P.H., T.B.P.).
Physical Therapy and Human Movement Sciences (J.M.E.), Feinberg School of Medicine, Northwestern University, Chicago, Illinois.
AJNR Am J Neuroradiol. 2020 Jun;41(6):994-1000. doi: 10.3174/ajnr.A6569. Epub 2020 Jun 4.
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.
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.
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).
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.
挥鞭样损伤相关疾病常发生于机动车事故后,常伴有一系列认知和情感症状,但其神经相关性尚不清楚。本研究采用静息态 fMRI 对慢性挥鞭样损伤患者进行扫描,以评估与长期预后指标相关的脑网络变化。
对 23 名参与者进行静息态 fMRI 采集,用于计算网络模块性,这是一种衡量脑区社区功能分离的定量指标。对其与挥鞭样损伤相关疾病的预后指标进行分析,包括颈部残疾、创伤性痛苦、抑郁和疼痛的量表。除了这些临床量表外,还通过 Dixon 水脂成像定量评估颈椎肌肉脂肪浸润,该技术已显示出作为评估疾病严重程度和预测慢性挥鞭样损伤恢复的生物标志物的潜力。
发现脑网络结构与肌肉脂肪浸润之间存在关联,在控制年龄、性别、体重指数和扫描运动后,较低的网络模块性与较大的颈椎肌肉脂肪浸润量相关(r=-4.02,部分 r=0.49,p<.001)。
本研究通过对慢性挥鞭样损伤相关疾病患者的静息态 fMRI 进行分析,为现有的挥鞭样损伤文献做出了贡献。发现网络模块化程度较低与颈椎肌肉脂肪浸润量较大有关,这表明疾病严重程度与神经变化之间存在联系,神经影像学可能在理解慢性挥鞭样损伤相关疾病的病理生理学方面具有潜在作用。