4.7 Article

Optimising network modelling methods for fMRI

Journal

NEUROIMAGE
Volume 211, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2020.116604

Keywords

Functional Connectivity; Connectome; Netmat; Riemannian geometry; Deep learning; Convolutional neural networks

Funding

  1. Health Data Research UK
  2. NIHR Oxford Biomedical Research Centre
  3. UK Medical Research Council
  4. Wellcome Trust
  5. McDonnell Center for Systems Neuroscience at Washington University
  6. National Institute on Drug Abuse (NIDA) [R01 MH094639]
  7. Child Mind Institute
  8. Nathan Kline Institute
  9. Leon Levy Foundation
  10. Stavros Niarchos Foundation
  11. NIMH [NIMH R03MH096321]
  12. NIHR Oxford Health Biomedical Research Centre
  13. Novonordisk Hallas-Moller Emerging Investigator Award [0054895]
  14. MRC Mental Health Data Pathfinder award [MC_PC_17215]
  15. Wellcome Trust [203139/Z/16/Z, 106183/Z/14/Z]
  16. [1U54MH091657]
  17. [NIMH K23MH087770]
  18. MRC [MC_PC_17215, MC_PC_12028] Funding Source: UKRI

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A major goal of neuroimaging studies is to develop predictive models to analyze the relationship between whole brain functional connectivity patterns and behavioural traits. However, there is no single widely-accepted standard pipeline for analyzing functional connectivity. The common procedure for designing functional connectivity based predictive models entails three main steps: parcellating the brain, estimating the interaction between defined parcels, and lastly, using these integrated associations between brain parcels as features fed to a classifier for predicting non-imaging variables e.g., behavioural traits, demographics, emotional measures, etc. There are also additional considerations when using correlation-based measures of functional connectivity, resulting in three supplementary steps: utilising Riemannian geometry tangent space parameterization to preserve the geometry of functional connectivity; penalizing the connectivity estimates with shrinkage approaches to handle challenges related to short time-series (and noisy) data; and removing confounding variables from brain-behaviour data. These six steps are contingent on each-other, and to optimise a general framework one should ideally examine these various methods simultaneously. In this paper, we investigated strengths and shortcomings, both independently and jointly, of the following measures: parcellation techniques of four kinds (categorized further depending upon number of parcels), five measures of functional connectivity, the decision of staying in the ambient space of connectivity matrices or in tangent space, the choice of applying shrinkage estimators, six alternative techniques for handling confounds and finally four novel classifiers/predictors. For performance evaluation, we have selected two of the largest datasets, UK Biobank and the Human Connectome Project resting state fMRI data, and have run more than 9000 different pipeline variants on a total of similar to 14000 individuals to determine the optimum pipeline. For independent performance validation, we have run some best-performing pipeline variants on ABIDE and ACPI datasets (similar to 1000 subjects) to evaluate the generalisability of proposed network modelling methods.

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