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Investigating the BOLD Spectral Power of the Intrinsic Connectivity Networks in Fibromyalgia Patients: A Resting-state fMRI Study

机译:研究纤维肌痛患者内在连通网络的大胆光谱力量:休息状态FMRI研究

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Recent advances in multivariate statistical analysis of blood oxygen level dependent (BOLD) functional magnetic resonance imaging (fMRI) have provided novel insights into the network organization of the human brain. Here, we applied group independent component analysis, a well-established approach for detecting brain intrinsic connectivity networks, to examine the spontaneous BOLD fluctuations in patients with fibromyalgia and healthy controls before and after exposure to a stressor. The BOLD spectral power characteristics of component time courses were calculated using the fast Fourier transform (FFT) algorithm, and group comparison was performed at six frequency bins between 0 and 0.24 Hz at 0.04 Hz intervals. Relative to controls, patients with fibromyalgia displayed significant BOLD spectral power differences in the default-mode, salience, and subcortical networks at the baseline level (P_(Bonferroni-corrected) < 0.05). Multivariate analysis of covariance (MANCOVA) further revealed significant effects of the cold water temperature, and pain rating on the spectral power of the sensorimotor, salience, and prefrontal networks, while the diagnosis of fibromyalgia influenced the BOLD spectral power of the salience and subcortical networks (P_(FDR-corrected) < 0.05). Since the BOLD spectral power reflects the degree of fluctuations within a network, future studies of the correlation between BOLD spectral power and pain processing can cast additional light on the nature of the central nervous system dysfunction in patients with chronic pain syndromes.
机译:多元血氧统计分析的最新进展依赖于(粗体)功能磁共振成像(FMRI)向人脑的网络组织提供了新的洞察。在这里,我们应用了群体独立分量分析,是检测大脑内在连通网络的良好方法,检查纤维肌痛患者的自发大胆波动,在暴露于压力源之前和之后的健康对照。使用快速傅里叶变换(FFT)算法计算组件时间路线的粗谱功率特性,并且在0.04Hz间隔的0到0.24Hz之间的六个频率箱中进行组比较。相对于对照组,纤维肌痛的患者在基线级别的默认模式,显着性和下皮网络中显示出显着的粗体频谱功率差异(P_(Bonferroni校正)<0.05)。协方差的多变量分析(Mancova)进一步揭示了冷水温度的显着影响,以及传感器,显着性和前逆转网络的光谱功率疼痛等级,而纤维肌痛的诊断影响了显着和皮质标准的大胆光谱力量(P_(校正)<0.05)。由于粗体光谱功率反映了网络内的波动程度,因此未来的粗谱功率和疼痛处理之间的相关性可以施加慢性疼痛综合征患者中枢神经系统功能障碍的性质。

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