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Graph theory analysis reveals how sickle cell disease impacts neural networks of patients with more severe disease

机译:图论分析揭示了镰状细胞疾病如何影响重症患者的神经网络

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摘要

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.
机译:镰状细胞病(SCD)是一种遗传性血液病,与许多威胁生命的合并症相关,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尚不清楚的全球大脑网络。我们对31例SCD患者和16例健康对照者进行了使用无创功能性MRI和高分辨率脑电图的功能网络图论分析。分析静息状态数据,以确定对照与镰刀细胞相关性疼痛较轻和较严重的患者之间的差异。 fMRI结果显示,疼痛严重程度较高的患者具有较低的聚类系数和局部效率。当执行有针对性的攻击网络分析时,较重患者组的神经网络的行为就像随机网络。脑电图结果表明,beta1带具有与功能磁共振成像静息状态数据相似的结果。我们的数据表明,SCD在全球范围内影响大脑,并且图论分析可以区分疼痛严重程度不同的患者。

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