Author/Authors :
Nie, Weifang Shanghai Maritime University - Shanghai, China , Zeng, Weiming Shanghai Maritime University - Shanghai, China , Yang, Jiajun Department of Neurology - Shanghai Jiao Tong University Affiliated Sixth People's Hospital - Shanghai, China , Shi, Yuhu Shanghai Maritime University - Shanghai, China , Zhao, Le Shanghai Maritime University - Shanghai, China , Li, Ying Shanghai Maritime University - Shanghai, China , Chen, Dunyao Shanghai Maritime University - Shanghai, China , Deng, Jin Shanghai Maritime University - Shanghai, China , Wang, Nizhuan School of Computer Engineering - Jiangsu Ocean University - Lianyungang, China
Abstract :
Migraine seriously affects the physical and mental health of patients because of its recurrence and the hypersensitivity to the
environment that it causes. However, the pathogenesis and pathophysiology of migraine are not fully understood. We addressed
this issue in the present study using an autodynamic functional connectome model (A-DFCM) with twice-clustering to compare
dynamic functional connectome patterns (DFCPs) from resting-state functional magnetic resonance imaging data from
migraine patients and normal control subjects. We used automatic localization of segment points to improve the efficiency of
the model, and intergroup differences and network metrics were analyzed to identify the neural mechanisms of migraine. Using
the A-DFCM model, we identified 17 DFCPs—including 1 that was specific and 16 that were general—based on intergroup
differences. The specific DFCP was closely associated with neuronal dysfunction in migraine, whereas the general DFCPs
showed that the 2 groups had similar functional topology as well as differences in the brain resting state. An analysis of network
metrics revealed the critical brain regions in the specific DFCP; these were not only distributed in brain areas related to pain
such as Brodmann area 1/2/3, basal ganglia, and thalamus but also located in regions that have been implicated in migraine
symptoms such as the occipital lobe. An analysis of the dissimilarities in general DFCPs between the 2 groups identified 6 brain
areas belonging to the so-called pain matrix. Our findings provide insight into the neural mechanisms of migraine while also
identifying neuroimaging biomarkers that can aid in the diagnosis or monitoring of migraine patients.