Department of Psychiatry, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA; First Affiliated Hospital of Hainan Medical College, Hainan Medical University, Haikou, Hainan, China.
Department of Psychiatry, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA.
Neuroimage Clin. 2019;22:101775. doi: 10.1016/j.nicl.2019.101775. Epub 2019 Mar 14.
Chronic low back pain (cLBP) is associated with widespread functional and structural changes in the brain. This study aims to investigate the resting state functional connectivity (rsFC) changes of visual networks in cLBP patients and the feasibility of distinguishing cLBP patients from healthy controls using machine learning methods. cLBP (n = 90) and control individuals (n = 74) were enrolled and underwent resting-state BOLD fMRI scans. Primary, dorsal, and ventral visual networks derived from independent component analysis were used as regions of interest to compare resting state functional connectivity changes between the cLBP patients and healthy controls. We then applied a support vector machine classifier to distinguish the cLBP patients and control individuals. These results were further verified in a new cohort of subjects. We found that the functional connectivity between the primary visual network and the somatosensory/motor areas were significantly enhanced in cLBP patients. The rsFC between the primary visual network and S1 was negatively associated with duration of cLBP. In addition, we found that the rsFC of the visual network could achieve a classification accuracy of 79.3% in distinguishing cLBP patients from HCs, and these results were further validated in an independent cohort of subjects (accuracy = 66.7%). Our results demonstrate significant changes in the rsFC of the visual networks in cLBP patients. We speculate these alterations may represent an adaptation/self-adjustment mechanism and cross-model interaction between the visual, somatosensory, motor, attention, and salient networks in response to cLBP. Elucidating the role of the visual networks in cLBP may shed light on the pathophysiology and development of the disorder.
慢性下腰痛(cLBP)与大脑中广泛的功能和结构变化有关。本研究旨在探讨 cLBP 患者视觉网络的静息状态功能连接(rsFC)变化,并利用机器学习方法区分 cLBP 患者与健康对照者。纳入了 90 名 cLBP 患者和 74 名健康对照者,并进行了静息状态 BOLD fMRI 扫描。从独立成分分析中提取的初级、背侧和腹侧视觉网络作为感兴趣区,比较 cLBP 患者和健康对照者之间静息状态功能连接的变化。然后,我们应用支持向量机分类器来区分 cLBP 患者和健康个体。这些结果在新的受试者队列中得到了进一步验证。我们发现,cLBP 患者初级视觉网络与躯体感觉/运动区之间的功能连接明显增强。初级视觉网络与 S1 之间的 rsFC 与 cLBP 的持续时间呈负相关。此外,我们发现视觉网络的 rsFC 可以达到区分 cLBP 患者和 HCs 的准确率为 79.3%,这些结果在一个独立的受试者队列中得到了进一步验证(准确率=66.7%)。我们的结果表明 cLBP 患者的 rsFC 发生了显著变化。我们推测这些改变可能代表了视觉、躯体感觉、运动、注意力和显著网络之间的适应/自我调节机制和交叉模型相互作用,以应对 cLBP。阐明视觉网络在 cLBP 中的作用可能有助于揭示该疾病的病理生理学和发展。