Reliability of dynamic causal modelling of resting‐state magnetoencephalography

Author:

Jafarian Amirhossein12ORCID,Assem Melek Karadag12,Kocagoncu Ece12,Lanskey Juliette H.12,Williams Rebecca12,Cheng Yun‐Ju3,Quinn Andrew J.45,Pitt Jemma6,Raymont Vanessa6,Lowe Stephen7,Singh Krish D.8,Woolrich Mark4,Nobre Anna C.69,Henson Richard N.1ORCID,Friston Karl J.10ORCID,Rowe James B.12

Affiliation:

1. MRC Cognition and Brain Sciences Unit University of Cambridge Cambridge UK

2. Department of Clinical Neurosciences and Cambridge University Hospitals NHS Foundation Trust Cambridge Biomedical Campus Cambridge UK

3. Lilly Corporate Center Indianapolis Indiana USA

4. Oxford Centre for Human Brain Activity, Wellcome Centre for Integrative Neuroimaging, Department of Psychiatry University of Oxford Oxford UK

5. Department of Psychology University of Birmingham Birmingham UK

6. Department of Psychiatry University of Oxford Oxford UK

7. Lilly Centre for Clinical Pharmacology Singapore Singapore

8. Cardiff University Brain Research Imaging Centre, School of Psychology Cardiff University Cardiff UK

9. Department of Psychology and Center for Neurocognition and Behavior, Wu Tsai Institute Yale University New Haven Connecticut USA

10. Wellcome Centre for Human Neuroimaging University College London London UK

Abstract

AbstractThis study assesses the reliability of resting‐state dynamic causal modelling (DCM) of magnetoencephalography (MEG) under conductance‐based canonical microcircuit models, in terms of both posterior parameter estimates and model evidence. We use resting‐state MEG data from two sessions, acquired 2 weeks apart, from a cohort with high between‐subject variance arising from Alzheimer's disease. Our focus is not on the effect of disease, but on the reliability of the methods (as within‐subject between‐session agreement), which is crucial for future studies of disease progression and drug intervention. To assess the reliability of first‐level DCMs, we compare model evidence associated with the covariance among subject‐specific free energies (i.e., the ‘quality’ of the models) with versus without interclass correlations. We then used parametric empirical Bayes (PEB) to investigate the differences between the inferred DCM parameter probability distributions at the between subject level. Specifically, we examined the evidence for or against parameter differences (i) within‐subject, within‐session, and between‐epochs; (ii) within‐subject between‐session; and (iii) within‐site between‐subjects, accommodating the conditional dependency among parameter estimates. We show that for data acquired close in time, and under similar circumstances, more than 95% of inferred DCM parameters are unlikely to differ, speaking to mutual predictability over sessions. Using PEB, we show a reciprocal relationship between a conventional definition of ‘reliability’ and the conditional dependency among inferred model parameters. Our analyses confirm the reliability and reproducibility of the conductance‐based DCMs for resting‐state neurophysiological data. In this respect, the implicit generative modelling is suitable for interventional and longitudinal studies of neurological and psychiatric disorders.

Funder

NIHR Cambridge Biomedical Research Centre

Medical Research Council

Wellcome Trust

Publisher

Wiley

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