Dynamic fMRI networks predict success in a behavioral weight loss program among older adults.

Neuroimage

Laboratory for Complex Brain Networks, Department of Radiology, Wake Forest University School of Medicine, Winston Salem, NC, USA; Translational Science Center, Wake Forest University, Winston Salem, NC, USA. Electronic address:

Published: June 2018

AI Article Synopsis

  • Obesity is prevalent among over one-third of U.S. adults, particularly older adults, leading to serious health issues like diabetes and heart disease, but many struggle to maintain weight loss following interventions.
  • Research suggests that identifying specific brain network patterns through fMRI can help predict which older adults are more likely to succeed in weight loss interventions, with a prediction accuracy over 95%.
  • The study emphasizes the need for further research on diverse populations to validate these findings and move towards more personalized weight loss treatments based on individual brain connectivity.

Article Abstract

More than one-third of adults in the United States are obese, with a higher prevalence among older adults. Obesity among older adults is a major cause of physical dysfunction, hypertension, diabetes, and coronary heart diseases. Many people who engage in lifestyle weight loss interventions fail to reach targeted goals for weight loss, and most will regain what was lost within 1-2 years following cessation of treatment. This variability in treatment efficacy suggests that there are important phenotypes predictive of success with intentional weight loss that could lead to tailored treatment regimen, an idea that is consistent with the concept of precision-based medicine. Although the identification of biochemical and metabolic phenotypes are one potential direction of research, neurobiological measures may prove useful as substantial behavioral change is necessary to achieve success in a lifestyle intervention. In the present study, we use dynamic brain networks from functional magnetic resonance imaging (fMRI) data to prospectively identify individuals most likely to succeed in a behavioral weight loss intervention. Brain imaging was performed in overweight or obese older adults (age: 65-79 years) who participated in an 18-month lifestyle weight loss intervention. Machine learning and functional brain networks were combined to produce multivariate prediction models. The prediction accuracy exceeded 95%, suggesting that there exists a consistent pattern of connectivity which correctly predicts success with weight loss at the individual level. Connectivity patterns that contributed to the prediction consisted of complex multivariate network components that substantially overlapped with known brain networks that are associated with behavior emergence, self-regulation, body awareness, and the sensory features of food. Future work on independent datasets and diverse populations is needed to corroborate our findings. Additionally, we believe that efforts can begin to examine whether these models have clinical utility in tailoring treatment.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5911254PMC
http://dx.doi.org/10.1016/j.neuroimage.2018.02.025DOI Listing

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