Brain network topology predicts participant adherence to mental training programs

Marzie Saghayi, Jonathan Greenberg, Christopher O’grady, Farshid Varno, Muhammad Ali Hashmi, Bethany Bracken, Stan Matwin, Sara W. Lazar, Javeria Ali Hashmi

Résultat de recherche: Articleexamen par les pairs

10 Citations (Scopus)

Résumé

Adherence determines the success and benefits of mental training (e.g., meditation) programs. It is unclear why some participants engage more actively in programs for mental training than others. Understanding neurobiological factors that predict adherence is necessary for understanding elements of learning and to inform better designs for new learning regimens. Clustering patterns in brain networks have been suggested to predict learning performance, but it is unclear whether these patterns contribute to motivational aspects of learning such as adherence. This study tests whether configurations of brain connections in resting-state fMRI scans can be used to predict adherence to two programs: meditation and creative writing. Results indicate that greater system segregation and clustering predict the number of practice sessions and class participation in both programs at a wide range of network thresholds (corrected p value < 0.05). At a local level, regions in subcortical circuitry such as striatum and accumbens predicted adherence in all subjects. Furthermore, there were also some important distinctions between groups: Adherence to meditation was predicted by connectivity within local network of the anterior insula and default mode network; and in the writing program, adherence was predicted by network neighborhood of frontal and temporal regions. Four machine learning methods were applied to test the robustness of the brain metric for classifying individual capacity for adherence and yielded reasonable accuracy. Overall, these findings underscore the fact that adherence and the ability to perform prescribed exercises is associated with organizational patterns of brain connectivity.

Langue d'origineEnglish
Pages (de-à)528-555
Nombre de pages28
JournalNetwork Neuroscience
Volume4
Numéro de publication3
DOI
Statut de publicationPublished - 2020

Note bibliographique

Funding Information:
Javeria Ali Hashmi, Natural Sciences and Engineering Research Council of Canada (http://dx. doi.org/10.13039/501100002790), Award ID: RGPIN/05684-2016. Sara Lazar, National Institutes of Health (http://dx.doi.org/10.13039/100000002), Award ID: AG048351. Sara Lazar, Intelligence Advanced Research Projects Activity (http://dx.doi.org/10.13039/100011039), Award ID: 2014-13121700006. Javeria Ali Hashmi, Canada Research Chairs (http://dx.doi.org/10. 13039/501100001804), Award ID: 950-231109. Javeria Ali Hashmi, Canadian Foundation for Innovation (CFI), Award ID: 35702. Javeria Ali Hashmi, CIHR project grant, Award ID: 168878. Javeria Ali Hashmi, Nova Scotia Health Authority Research Fund.

Publisher Copyright:
© 2020 Massachusetts Institute of Technology Published under a Creative Commons Attribution 4.0 International (CC BY 4.0) license.

ASJC Scopus Subject Areas

  • General Neuroscience
  • Computer Science Applications
  • Artificial Intelligence
  • Applied Mathematics

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