Minimum spanning tree analysis of brain networks: A systematic review of network size effects, sensitivity for neuropsychiatric pathology, and disorder specificity

Publication date

2022-06

Authors

Blomsma, N
de Rooy, B
Gerritse, Frank L.
van der Spek, Rick
Tewarie, P
Hillebrand, A
Otte, Willem M.ORCID 0000-0003-1511-6834ISNI 0000000389423861
Stam, C J
van Dellen, EdwinORCID 0000-0003-1828-5959ISNI 0000000392942531

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Abstract

Brain network characteristics' potential to serve as a neurological and psychiatric pathology biomarker has been hampered by the so-called thresholding problem. The minimum spanning tree (MST) is increasingly applied to overcome this problem. It is yet unknown whether this approach leads to more consistent findings across studies and converging outcomes of either disease-specific biomarkers or transdiagnostic effects. We performed a systematic review on MST analysis in neurophysiological and neuroimaging studies ( N = 43) to study consistency of MST metrics between different network sizes and assessed disease specificity and transdiagnostic sensitivity of MST metrics for neurological and psychiatric conditions. Analysis of data from control groups (12 studies) showed that MST leaf fraction but not diameter decreased with increasing network size. Studies showed a broad range in metric values, suggesting that specific processing pipelines affect MST topology. Contradicting findings remain in the inconclusive literature of MST brain network studies, but some trends were seen: (1) a more linelike organization characterizes neurodegenerative disorders across pathologies, and is associated with symptom severity and disease progression; (2) neurophysiological studies in epilepsy show frequency band specific MST alterations that normalize after successful treatment; and (3) less efficient MST topology in alpha band is found across disorders associated with attention impairments.

Keywords

Minimum spanning tree, multimodal, network neuroscience, network size, transdiagnostic, General Neuroscience, Computer Science Applications, Artificial Intelligence, Applied Mathematics

Citation

Blomsma, N, de Rooy, B, Gerritse, F, van der Spek, R, Tewarie, P, Hillebrand, A, Otte, W M, Stam, C J & van Dellen, E 2022, 'Minimum spanning tree analysis of brain networks : A systematic review of network size effects, sensitivity for neuropsychiatric pathology, and disorder specificity', Network neuroscience, vol. 6, no. 2, pp. 301-319. https://doi.org/10.1162/netn_a_00245