Stability of graph theoretical measures in structural brain networks in Alzheimer’s disease

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作者
Gustav Mårtensson
Joana B. Pereira
Patrizia Mecocci
Bruno Vellas
Magda Tsolaki
Iwona Kłoszewska
Hilkka Soininen
Simon Lovestone
Andrew Simmons
Giovanni Volpe
Eric Westman
机构
[1] Care Sciences and Society,Division of Clinical Geriatrics, Department of Neurobiology
[2] Karolinska Institutet,Institute of Gerontology and Geriatrics
[3] University of Perugia,3rd Department of Neurology
[4] INSERM U 558,Institute of Clinical Medicine
[5] University of Toulouse,Department of Psychiatry
[6] Memory and Dementia Unit,Department of Neuroimaging
[7] Aristotle University of Thessaloniki,Department of Physics
[8] Medical University of Lodz,undefined
[9] Neurology,undefined
[10] University of Eastern Finland,undefined
[11] Neurocenter,undefined
[12] Neurology,undefined
[13] Kuopio University Hospital,undefined
[14] Warneford Hospital,undefined
[15] University of Oxford,undefined
[16] NIHR Biomedical Research Centre for Mental Health,undefined
[17] NIHR Biomedical Research Unit for Dementia,undefined
[18] Centre for Neuroimaging Sciences,undefined
[19] Institute of Psychiatry,undefined
[20] Psychology and Neuroscience,undefined
[21] King’s College London,undefined
[22] University of Gothenburg,undefined
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摘要
Graph analysis has become a popular approach to study structural brain networks in neurodegenerative disorders such as Alzheimer’s disease (AD). However, reported results across similar studies are often not consistent. In this paper we investigated the stability of the graph analysis measures clustering, path length, global efficiency and transitivity in a cohort of AD (N = 293) and control subjects (N = 293). More specifically, we studied the effect that group size and composition, choice of neuroanatomical atlas, and choice of cortical measure (thickness or volume) have on binary and weighted network properties and relate them to the magnitude of the differences between groups of AD and control subjects. Our results showed that specific group composition heavily influenced the network properties, particularly for groups with less than 150 subjects. Weighted measures generally required fewer subjects to stabilize and all assessed measures showed robust significant differences, consistent across atlases and cortical measures. However, all these measures were driven by the average correlation strength, which implies a limitation of capturing more complex features in weighted networks. In binary graphs, significant differences were only found in the global efficiency and transitivity measures when using cortical thickness measures to define edges. The findings were consistent across the two atlases, but no differences were found when using cortical volumes. Our findings merits future investigations of weighted brain networks and suggest that cortical thickness measures should be preferred in future AD studies if using binary networks. Further, studying cortical networks in small cohorts should be complemented by analyzing smaller, subsampled groups to reduce the risk that findings are spurious.
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