Journal of Clinical Medicine (Aug 2023)

When Eating Intuitively Is Not Always a Positive Response: Using Machine Learning to Better Unravel Eaters Profiles

  • Johana Monthuy-Blanc,
  • Usef Faghihi,
  • Mahan Najafpour Ghazvini Fardshad,
  • Giulia Corno,
  • Sylvain Iceta,
  • Marie-Josée St-Pierre,
  • Stéphane Bouchard

DOI
https://doi.org/10.3390/jcm12165172
Journal volume & issue
Vol. 12, no. 16
p. 5172

Abstract

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Background: The aim of the present study was to identify eaters profiles using the latest advantages of Machine Learning approach to cluster analysis. Methods: A total of 317 participants completed an online-based survey including self-reported measures of body image dissatisfaction, bulimia, restraint, and intuitive eating. Analyses were conducted in two steps: (a) identifying an optimal number of clusters, and (b) validating the clustering model of eaters profile using a procedure inspired by the Causal Reasoning approach. Results: This study reveals a 7-cluster model of eaters profiles. The characteristics, needs, and strengths of each eater profile are discussed along with the presentation of a continuum of eaters profiles. Conclusions: This conceptualization of eaters profiles could guide the direction of health education and treatment interventions targeting perceptual and eating dimensions.

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