| Literature DB >> 34184991 |
Meelim Kim1, Jaeyeong Yang2, Woo-Young Ahn2,3, Hyung Jin Choi1,4.
Abstract
BACKGROUND: The digital health care community has been urged to enhance engagement and clinical outcomes by analyzing multidimensional digital phenotypes.Entities:
Keywords: clinical efficacy; digital phenotype; in-app engagement; machine learning analysis; mobile phone
Year: 2021 PMID: 34184991 PMCID: PMC8277339 DOI: 10.2196/27218
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1A conceptual framework of mobile health components and examples of digital phenotypes.
Participant characteristics on demographic, behavioral, cognitive, emotional, and motivational measures.
| Phenotype | Value, mean (SD) | |||
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| Age (years) | 22.59 (3.68) | ||
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| Presession BMI | 27.86 (3.14) | ||
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| Postsession BMI | 27.01 (3.51) | ||
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| Restricted eating (DEBQ-REa) | 29.81 (6.90) | |
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| Emotional eating (DEBQ-EMb) | 37.54 (9.85) | |
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| Environmental eating (DEBQ-ENVc) | 34.76 (4.82) | |
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| Food addiction (YFASd) | 2.54 (1.30) | |
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| Automatic thoughts (ATQ-30e) | 56.92 (21.81) | |
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| Depression (BDIf) | 13.22 (8.04) | |
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| Anxiety (TAIg) | 47.92 (10.03) | |
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| Body satisfaction (BSQ-8Ch) | 35.84 (7.30) | |
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| Self-esteem (RSESi) | 19.65 (5.15) | |
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| Conventional motivation (SIMSj) | 75.97 (5.89) | |
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| Carbohydrate | 142.95 (26.49) | |
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| Protein | 49.69 (10.60) | |
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| Fat | 38.46 (9.37) | |
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| Sodium | 2190.52 (585.95) | |
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| Sugar | 39.47 (11.42) | |
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| Breakfast | 201.03 (108.33) | |
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| Morning snack | 18.28 (15.98) | |
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| Lunch | 402.16 (98.56) | |
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| Afternoon snack | 56.71 (39.97) | |
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| Dinner | 438.98 (120.26) | |
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| Evening snack | 67.98 (56.61) | |
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| High-calorie food | 0.29 (0.09) | |
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| Moderate calorie food | 0.48 (0.06) | |
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| Low-calorie food | 0.18 (0.09) | |
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| Steps | 6485.00 (2618.54) | |
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| Exercise | 8.17 (8.14) | |
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| Interaction frequency | 9.48 (2.34) | |
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| Obesity automatic thoughts | 0.49 (0.64) | |
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| Irritated | 46.53 (23.39) | |
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| Lonely | 49.43 (24.52) | |
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| Nervous | 47.26 (23.81) | |
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| Bored | 47.74 (24.18) | |
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| Depressed | 47.04 (24.27) | |
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| Will | 4.58 (2.23) | |
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| Importance | 3.73 (2.10) | |
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| Confidence | 4.11 (2.20) | |
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| Satisfaction | 4.46 (2.40) | |
aDEBQ-RE: Dutch Eating Behavior Questionnaire–Restricted Eating.
bDEBQ-EM: Dutch Eating Behavior Questionnaire–Emotional Eating.
cDEBQ-ENV: Dutch Eating Behavior Questionnaire–Environmental Eating.
dYFAS: Yale Food Addiction Scale.
eATQ-30: Automatic Thoughts Questionnaire-30.
fBDI: Beck Depression Inventory.
gTAI: Trait Anxiety Inventory.
hBSQ-8C: Body Shape Questionnaire-8C.
iRSES: Rosenberg Self-Esteem Scale.
jSIMS: Situational Motivational Scale.
Figure 2Relationships between engagement and health outcomes. The health outcome larger than zero indicates weight loss compared with baseline.
Figure 3Multivariate patterns of conventional and digital phenotypes for predicting engagement (red) as well as short-term (green) and long-term (blue) health outcomes. Points indicate the averaged β coefficients across 100 repetitions of net elastic analysis (see the Methods section for details). A positive β estimate of a phenotype indicates an association between the phenotype and higher in-app activities (engagement) or more weight loss (health outcomes). The points, which contain zero in the simulated 95% ranges, are omitted.
Figure 4Common predictors between engagement and health outcomes for (A) health outcome (short term) versus engagement, (B) health outcome (long term) versus engagement, and (C) health outcome (long term) versus health outcome (short term). Each axis indicates the β estimate for predicting engagement and health outcomes. A positive β coefficient indicates a positive association with engagement but negative associations with health outcomes (weight changes).
Common and specific predictors of conventional and digital phenotypes for predicting engagement and health outcomes.
| Phenotypes | Common predictorsa | Predictors specific to each dependent variable | |||||||
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| Engagement | Health outcome (short term) | Health outcome (long term) | |||||
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Self-esteemb |
Body satisfactionb Environmental eatingc |
Emotional eatingb Anxietyb Environmental eatingc Conventional motivationc |
Food addictionb Body satisfactionb Conventional motivationc Restrictive eatingc | |||||
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| N/Ad |
High-calorie foodb Night snackb Lunchb Dinnerb Breakfastc Sugarc Morning snackc Moderate calorie foodc Low-calorie foodc Interaction frequencyc |
High-calorie foodb Carbohydrateb Sodiumb Fatb Afternoon snackb Low-calorie foodc Interaction frequencyc |
Carbohydrateb Night snackb Lunchb Fatb Stepsb | ||||
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| N/A |
Irritatedc Boredc Depressedc |
Irritatedc Boredc | N/A | ||||
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Satisfactionc Willc Confidencec | N/A | N/A | N/A | ||||
aCommon predictors in the first column were involved in all models. The cognitive dimension of digital phenotypes was omitted because of a lack of significance.
bPredictors having positive associations with the engagement in app or health outcomes.
cPredictors having negative associations with the engagement in app or health outcomes.
dN/A: not applicable.
Figure 5Two examples of common predictors between short-term and long-term health outcomes: (A) carbohydrate intake and (B) confidence in digital phenotypes. VAS: Visual Analogue Scale.