4.7 Article

Reliability modelling of resting-state functional connectivity

期刊

NEUROIMAGE
卷 231, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2021.117842

关键词

Test-retest reliability; Reliability modelling; Functional connectivity; Measurement model; Measurement error; Human connectome project

资金

  1. Gravitation program of the Dutch Ministry of Education, culture, and Science
  2. Netherlands Organization for Scientific Research
  3. Consortium on Individual Development (CID)
  4. Biobanking and BioMolecular resources Research Infrastructure The Netherlands (BBMRI-NL2.0)
  5. NWO [024.001.003, 51.02.061, 51.02.062, 184.033.111]
  6. NWO-NIHC Programs of excellence [433-09-220]
  7. NWO-MagW [480-04-004]
  8. NWO/SPI [56-46414192]
  9. European Research Council [ERC-230374]
  10. Utrecht University
  11. McDonnell Centre for Systems Neuroscience at Washington University
  12. [1U54MH091657]

向作者/读者索取更多资源

The study investigated the impact of reliability modeling of FC estimates in rs-fMRI data on associations with various traits. Results showed that the split-half measurement model improved the reliability of FC, increased the strength of associations with traits, and enhanced heritability estimates, with greater benefits observed for shorter scan durations and smaller sample sizes. The reliability modeling based on a split-half using a measurement model can benefit genetic and behavioral studies by extracting a stable and reliable component of FC that is free from random measurement error and improves genetic and behavioral associations.
Resting-state functional magnetic resonance imaging (rs-fMRI) has an inherently low signal-to-noise ratio largely due to thermal and physiological noise that attenuates the functional connectivity (FC) estimates. Such attenuation limits the reliability of FC and may bias its association with other traits. Low reliability also limits heritability estimates. Classical test theory can be used to obtain a true correlation estimate free of random measurement error from parallel tests, such as split-half sessions of a rs-fMRI scan. We applied a measurement model to split-half FC estimates from the resting-state fMRI data of 1003 participants from the Human Connectome Project (HCP) to examine the benefit of reliability modelling of FC in association with traits from various domains. We evaluated the efficiency of the measurement model on extracting a stable and reliable component of FC and its association with several traits for various sample sizes and scan durations. In addition, we aimed to replicate our previous findings of increased heritability estimates when using a measurement model in a longitudinal adolescent twin cohort. The split-half measurement model improved test-retest reliability of FC on average with + 0.33 points (from + 0.49 to + 0.82), improved strength of associations between FC and various traits on average 1.2-fold (range 1.09-1.35), and increased heritability estimates on average with + 20% points (from 39% to 59%) for the full HCP dataset. On average, about half of the variance in split-session FC estimates was attributed to the stable and reliable component of FC. Shorter scan durations showed greater benefit of reliability modelling (up to 1.6-fold improvement), with an additional gain for smaller sample sizes (up to 1.8-fold improvement). Reliability modelling of FC based on a split-half using a measurement model can benefit genetic and behavioral studies by extracting a stable and reliable component of FC that is free from random measurement error and improves genetic and behavioral associations.

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