Projects per year
Abstract
OBJECTIVE: We developed an idiographic, within-individual binge-eating prediction approach based on ecological momentary assessment (EMA) data.
METHODS: We first derived a novel EMA-item set that covers a broad set of potential idiographic binge-eating antecedents from literature and an eating disorder focus group (n=11). The final EMA-item set (6 prompts per day for 14 days) was assessed in female patients with bulimia nervosa or binge-eating disorder. We used a correlation-based machine learning approach (Best Items Scale that is Cross-validated, Unit-weighted, Informative, and Transparent) to select parsimonious, idiographic item subsets and predict binge-eating occurrence from EMA data (32 items assessing antecedent contextual and affective states and 12 time-derived predictors).
RESULTS: On average 67.3 (SD 13.4; range 43-84) EMA observations were analyzed within participants (n=13). The derived item subsets predicted binge-eating episodes with high accuracy on average (mean area under the curve 0.80, SD 0.15; mean 95% CI 0.63-0.95; mean specificity 0.87, SD 0.08; mean sensitivity 0.79, SD 0.19; mean maximum reliability of rD 0.40, SD 0.13; and mean rCV 0.13, SD 0.31). Across patients, highly heterogeneous predictor sets of varying sizes (mean 7.31, SD 1.49; range 5-9 predictors) were chosen for the respective best prediction models.
CONCLUSIONS: Predicting binge-eating episodes from psychological and contextual states seems feasible and accurate, but the predictor sets are highly idiographic. This has practical implications for mobile health and just-in-time adaptive interventions. Furthermore, current theories around binge eating need to account for this high between-person variability and broaden the scope of potential antecedent factors. Ultimately, a radical shift from purely nomothetic models to idiographic prediction models and theories is required.
Original language | English |
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Article number | e41513 |
Number of pages | 13 |
Journal | JMIR Medical Informatics |
Volume | 11 |
DOIs | |
Publication status | Published - 23 Feb 2023 |
Bibliographical note
©Ann-Kathrin Arend, Tim Kaiser, Björn Pannicke, Julia Reichenberger, Silke Naab, Ulrich Voderholzer, Jens Blechert. Originally published in JMIR Medical Informatics (https://medinform.jmir.org), 23.02.2023.Keywords
- idiographic (1)
- individualized
- N of 1
- Ecological Momentary Assessment (EMA)
- Just-In-Time Adaptive Intervention (JITAI)
- binge eating (1)
- literature research
- focus group (6)
- prediction algorithm
- machine learning (270)
- Best Items Scales that are Cross-validated
- Unit-weighted
- Informative and Transparent
- BISCUIT
Fields of Science and Technology Classification 2012
- 501 Psychology
Projects
- 2 Finished
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Mapping neural mechanisms of appetitive behavior
Blechert, J. (Principal Investigator)
15/09/19 → 14/12/24
Project: Research
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NewEat: Transdiagnostic views on eating disorders and obesity and new approaches for treatment
Blechert, J. (Principal Investigator), Meule, A. (Co-Investigator), Richard, A. (Co-Investigator), Reichenberger, J. (Co-Investigator), Schnepper, R. (Co-Investigator), Eichin, K. N. (Co-Investigator), Arend, A.-K. (Co-Investigator) & Schoeberl, R. (Co-Investigator)
1/07/15 → 31/12/20
Project: Research
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Individualisierte Vorhersage von Essanfällen basierend auf ambulanten Daten: Item-Entwicklung und Pilotstudie bei Patientinnen mit Bulimia Nervosa und Essanfallstörung
Arend, A.-K. (Speaker)
29 Sept 2023Activity: Talk or presentation › Oral presentation › science to science / art to art
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Toward Individualized Prediction of Binge-Eating Episodes Based on Ecological Momentary Assessment Data
Arend, A.-K. (Speaker)
6 Jun 2023Activity: Talk or presentation › Oral presentation › science to science / art to art
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Selection of idiographic predictors from a broad sets of ecological momentary assessment (EMA) items
Arend, A.-K. (Speaker)
16 Feb 2023Activity: Talk or presentation › Guest lecture › science to science / art to art