Weight gained during treatment predicts 6‐month body mass index in a large sample of patients with anorexia nervosa using ensemble machine learning

Author:

Frank Guido K. W.1ORCID,Stoddard Joel J.2ORCID,Brown Tiffany3ORCID,Gowin Josh4ORCID,Kaye Walter H.1ORCID

Affiliation:

1. Department of Psychiatry University of California San Diego San Diego California USA

2. Department of Psychiatry University of Colorado Anschutz Medical Campus Aurora Colorado USA

3. Department of Psychological Sciences Auburn University Auburn Alabama USA

4. Department of Radiology University of Colorado Anschutz Medical Campus Aurora Colorado USA

Abstract

AbstractObjectiveThis study used machine learning methods to analyze data on treatment outcomes from individuals with anorexia nervosa admitted to a specialized eating disorders treatment program.MethodsOf 368 individuals with anorexia nervosa (209 adolescents and 159 adults), 160 individuals had data available for a 6‐month follow‐up analysis. Participants were treated in a 6‐day‐per‐week partial‐hospital program. Participants were assessed for eating disorder‐specific and non‐specific psychopathology. The analyses used established machine learning procedures combined in an ensemble model from support vector machine learning, random forest prediction, and the elastic net regularized regression with an exploration (training; 75%) and confirmation (test; 25%) split of the data.ResultsThe models predicting body mass index (BMI) at 6‐month follow‐up explained a 28.6% variance in the training set (n = 120). The model had good performance in predicting 6‐month BMI in the test dataset (n = 40), with predicted BMI significantly correlating with actual BMI (r = .51, p = 0.01). The change in BMI from admission to discharge was the most important predictor, strongly correlating with reported BMI at 6‐month follow‐up (r = .55). Behavioral variables were much less predictive of BMI outcome. Results were similar for z‐transformed BMI in the adolescent‐only group. Length of stay was most predictive of weight gain in treatment (r = .56) but did not predict longer‐term BMI.ConclusionsThis study, using an agnostic ensemble machine learning approach in the largest to‐date sample of individuals with anorexia nervosa, suggests that achieving weight gain goals in treatment predicts longer‐term weight‐related outcomes. Other potential predictors, personality, mood, or eating disorder‐specific symptoms were relatively much less predictive.Public SignificanceThe results from this study indicate that the amount of weight gained during treatment predicts BMI 6 months after discharge from a high level of care. This suggests that patients require sufficient time in a higher level of care treatment to meet their specific weight goals and be able to maintain normal weight.

Funder

National Institute of Mental Health

National Institute on Alcohol Abuse and Alcoholism

Publisher

Wiley

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1. Review of machine learning solutions for eating disorders;International Journal of Medical Informatics;2024-09

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