Department of Biomedical Engineering, University of Minnesota, MN, USA.
Department of Biomedical Engineering, University of Minnesota, MN, USA.
Neuroimage Clin. 2019;21:101599. doi: 10.1016/j.nicl.2018.11.009. Epub 2018 Nov 14.
Sickle cell disease (SCD) is a hereditary blood disorder associated with many life-threatening comorbidities including cerebral stroke and chronic pain. The long-term effects of this disease may therefore affect the global brain network which is not clearly understood. We performed graph theory analysis of functional networks using non-invasive fMRI and high resolution EEG on thirty-one SCD patients and sixteen healthy controls. Resting state data were analyzed to determine differences between controls and patients with less severe and more severe sickle cell related pain. fMRI results showed that patients with higher pain severity had lower clustering coefficients and local efficiency. The neural network of the more severe patient group behaved like a random network when performing a targeted attack network analysis. EEG results showed the beta1 band had similar results to fMRI resting state data. Our data show that SCD affects the brain on a global level and that graph theory analysis can differentiate between patients with different levels of pain severity.
镰状细胞病(SCD)是一种遗传性血液疾病,与许多危及生命的合并症有关,包括脑卒中和慢性疼痛。因此,这种疾病的长期影响可能会影响全球大脑网络,而目前对此尚不清楚。我们对 31 名 SCD 患者和 16 名健康对照者进行了功能网络的图论分析,使用了非侵入性 fMRI 和高分辨率 EEG。对静息状态数据进行了分析,以确定疼痛严重程度较轻和较重的镰状细胞相关疼痛患者之间的差异。fMRI 结果表明,疼痛严重程度较高的患者聚类系数和局部效率较低。当对更严重的患者组进行有针对性的攻击网络分析时,神经网络的行为就像一个随机网络。脑电图结果显示,β1 波段与 fMRI 静息状态数据具有相似的结果。我们的数据表明,SCD 会对大脑产生全身性影响,图论分析可以区分不同疼痛严重程度的患者。