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Overcoming the effects of false positives and threshold bias in graph theoretical analyses of neuroimaging data
Drakesmith, M. ; Caeyenberghs, Karen ; Dutt, A. ; Lewis, G. ; David, A. ; Jones, D.
Drakesmith, M.
Caeyenberghs, Karen
Dutt, A.
Lewis, G.
David, A.
Jones, D.
Abstract
Graph theory (GT) is a powerful framework for quantifying topological features of neuroimaging-derived functional and structural networks. However, false positive (FP) connections arise frequently and influence the inferred topology of networks. Thresholding is often used to overcome this problem, but an appropriate threshold often relies on a priori assumptions, which will alter inferred network topologies. Four common network metrics (global efficiency, mean clustering coefficient, mean betweenness and smallworldness) were tested using a model tractography dataset. It was found that all four network metrics were significantly affected even by just one FP. Results also show that thresholding effectively dampens the impact of FPs, but at the expense of adding significant bias to network metrics. In a larger number (n = 248) of tractography datasets, statistics were computed across random group permutations for a range of thresholds, revealing that statistics for network metrics varied significantly more than for non-network metrics (i.e., number of streamlines and number of edges). Varying degrees of network atrophy were introduced artificially to half the datasets, to test sensitivity to genuine group differences. For some network metrics, this atrophy was detected as significant (p < 0.05, determined using permutation testing) only across a limited range of thresholds. We propose a multi-threshold permutation correction (MTPC) method, based on the cluster-enhanced permutation correction approach, to identify sustained significant effects across clusters of thresholds. This approach minimises requirements to determine a single threshold a priori. We demonstrate improved sensitivity of MTPC-corrected metrics to genuine group effects compared to an existing approach and demonstrate the use of MTPC on a previously published network analysis of tractography data derived from a clinical population. In conclusion, we show that there are large biases and instability induced by thresholding, making statistical comparisons of network metrics difficult. However, by testing for effects across multiple thresholds using MTPC, true group differences can be robustly identified.
Keywords
Date
2015
Type
Journal article
Journal
NeuroImage
Book
Volume
118
Issue
Page Range
313-333
Article Number
ACU Department
School of Nursing, Midwifery and Paramedicine
Faculty of Health Sciences
Non-faculty
Marketing and Communications
Faculty of Health Sciences
Non-faculty
Marketing and Communications
Relation URI
Source URL
Event URL
Open Access Status
License
File Access
Controlled
