Affiliation:
1. Center for Weight, Eating, and Lifestyle Sciences (WELL Center), Drexel University, Philadelphia, PA 19104, USA
2. The Miriam Hospital’s Weight Control and Diabetes Research Center, The Warren Alpert Medical School of Brown University, Providence, RI, USA
Abstract
Abstract
Ecological momentary assessment (EMA; brief self-report surveys) of dietary lapse risk factors (e.g., cravings) has shown promise in predicting and preventing dietary lapse (nonadherence to a dietary prescription), which can improve weight loss interventions. Passive sensors also can measure lapse risk factors and may offer advantages over EMA (e.g., objective, automatic, semicontinuous data collection), but currently can measure only a few lapse predictors, a notable limitation. This study preliminarily compared the burden and accuracy of commercially available sensors versus established EMA in lapse prediction. N = 23 adults with overweight/obesity completed a 6-week commercial app-based weight loss program. Participants wore a Fitbit, enabled GPS tracking, completed EMA, and reported on EMA and sensor burden poststudy via a 5-point Likert scale. Sensed risk factors were physical activity and sleep (accelerometer), geolocation (GPS), and time, from which 233 features (measurable characteristics of sensor signals) were extracted. EMA measured 19 risk factors, lapse, and categorized GPS into meaningful geolocations. Two supervised binary classification models (LASSO) were created: the sensor model predicted lapse with 63% sensitivity (true prediction rate of lapse) and 60% specificity (true prediction rate of non-lapse) and EMA model with 59% sensitivity and 72% specificity. EMA model accuracy was higher, but self-reported EMA burden (M = 2.96, SD = 1.02) also was higher (M = 1.50, SD = 0.94). EMA model accuracy was superior, but EMA burden was higher than sensor burden. Findings highlight the promise of sensors in contributing to lapse prediction, and future research may use EMA, sensors, or both depending on prioritization of accuracy versus participant burden.
Funder
Psi Chi Graduate Research Grant
WELL Center Meritorious Student Research Award
Publisher
Oxford University Press (OUP)
Subject
Behavioral Neuroscience,Applied Psychology
Reference65 articles.
1. Prevalence of overweight, obesity, and severe obesity among adults aged 20 and over: United States, 1960–1962 through 2017–2018;Fryar,2020
2. The preventable causes of death in the United States: Comparative risk assessment of dietary, lifestyle, and metabolic risk factors;Danaei;PLoS Med.,2009
3. Metabolically healthy obese and incident cardiovascular disease events among 3.5 million men and women;Caleyachetty;J Am Coll Cardiol.,2017
4. Effects of changes in body weight on carbohydrate metabolism, catecholamine excretion, and thyroid function;Rosenbaum;Am J Clin Nutr.,2000
5. Behavioral treatment of obesity;Butryn;Psychiatr Clin North Am.,2011
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