| Literature DB >> 27012937 |
Shivani Goyal1, Plinio P Morita, Peter Picton, Emily Seto, Ahmad Zbib, Joseph A Cafazzo.
Abstract
BACKGROUND: Lifestyle behavior modification can reduce the risk of cardiovascular disease, one of the leading causes of death worldwide, by up to 80%. We hypothesized that a dynamic risk assessment and behavior change tool delivered as a mobile app, hosted by a reputable nonprofit organization, would promote uptake among community members. We also predicted that the uptake would be influenced by incentives offered for downloading the mobile app.Entities:
Keywords: cardiovascular disease; health behavior; incentives; lifestyle; mobile apps; mobile phone; prevention; risk reduction
Year: 2016 PMID: 27012937 PMCID: PMC4824871 DOI: 10.2196/mhealth.4730
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1Components of the <30 Day mobile app for dynamic risk assessment for heart and disease and stroke. Left: users can either commit to the challenge or choose another one. Middle: users can review their risk factors and progress. Right: playful badges highlight various accomplishments throughout the <30 Day challenge.
Figure 2Number of users who downloaded and launched the <30 Days app and completed the risk assessment.
Demographics of users who completed the <30 Days health risk assessment app (n=57,330).
| Characteristic | n (%) | |
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| Male | 14,950 (26.08) |
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| Female | 42,380 (73.92) |
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| ≤20 | 14,842 (25.89) |
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| 21–30 | 19,200 (33.49) |
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| 31–40 | 11,464 (20.00) |
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| 41–50 | 6782 (11.83) |
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| 51–60 | 3777 (6.59) |
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| 61–70 | 1125 (1.96) |
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| 71–80 | 116 (0.2) |
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| 81–90 | 13 (0) |
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| ≥91+ | 11 (0) |
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| White | 39,700 (69.25) |
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| Latin American | 2374 (4.14) |
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| Chinese | 2091 (3.65) |
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| South Asian | 2057 (3.59) |
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| African heritage | 1928 (3.36) |
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| Other | 9180 (16.01) |
Health conditions identified by users who completed the <30 Days health risk assessment app (n=57,330).
| Questions posed to users | Positive response, n (%) | |
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| Depression or anxiety | 17,839 (31.12) |
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| Diabetes or high blood sugar | 1978 (3.45) |
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| History of heart disease | 1736 (3.03) |
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| History of stroke | 746 (1.3) |
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| High blood pressure | 5564 (9.71) |
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| High cholesterol or triglycerides | 4847 (8.45) |
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| Renal disease | 209 (0.4) |
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| Sleep apnea | 3611 (6.30) |
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| None of the above | 31,819 (55.50) |
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| Diabetes or high blood sugar | 24,309 (42.40) |
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| Heart disease | 15,916 (27.76) |
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| High blood pressure | 25,204 (43.96) |
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| High cholesterol or triglycerides | 16,678 (29.09) |
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| Stroke | 10,806 (18.85) |
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| None of the above | 17,537 (30.59) |
User engagement levels measured by the number of completed challenges in the first 30 days of using the <30 Days health risk assessment app (n=52,431).
| Engagement level (challenges completed) | n (%) |
| Very low (0) | 14,546 (27.74) |
| Low (1–14) | 29,991 (57.20) |
| Moderate (15–21) | 2635 (5.03) |
| High (≥22) | 5259 (10.03) |
Number of challenges in the <30 Days health risk assessment app completed by age group (n=52,431).
| Age group | Number of challenges | n (%) | |
| Mean | SD | ||
| ≤20 | 5.44 | 11.08 | 13,291 (25.35) |
| 21–30 | 6.47 | 12.23 | 17,571 (33.51) |
| 31–40 | 7.67 | 18.11 | 10,604 (20.22) |
| 41–50 | 8.59 | 16.71 | 6297 (12.01) |
| 51–60 | 9.78 | 19.96 | 3485 (6.65) |
| 61–70 | 9.74 | 16.10 | 1050 (2.00) |
| 71–80 | 9.89 | 15.69 | 110 (0.2) |
| 81–90 | 10.08 | 16.09 | 13 (0) |
| ≥91 | 19.80 | 36.59 | 10 (0) |
Figure 3Rewards achieved in the <30 Days health risk assessment app by users per age group. This graph shows the distribution of users (n=52,431) who completed the health risk assessment and were part of the engagement subset.
Number of challenges that users completed based on whether they identified as having a personal or family history of various health conditions in the <30 Days health risk assessment app.
| Health condition | Had condition | Did not have condition |
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| No. | Mean | SD | No. | Mean | SD | |||||
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| Depression | 16,112 | 6.97 | 15.59 | 36,319 | 7.01 | 14.25 | 0.25 | –0.003 | .80 |
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| Diabetes | 1795 | 7.87 | 14.32 | 50,636 | 6.97 | 14.69 | –2.56 | 0.60 | .05 |
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| History of heart disease | 1581 | 8.60 | 19.47 | 50,850 | 6.95 | 14.50 | –4.42 | 0.11 | <.001 |
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| History of stroke | 688 | 9.27 | 21.33 | 51,743 | 6.97 | 14. 56 | –4.10 | 0.15 | <.001 |
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| High blood pressure | 5079 | 7.93 | 14.24 | 47,362 | 6.90 | 14.72 | –4.76 | 0.70 | <.001 |
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| High cholesterol | 4429 | 8.24 | 22.19 | 48,002 | 6.88 | 13.77 | –5.87 | 0.09 | <.001 |
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| Renal disease | 191 | 7.95 | 14.63 | 52,240 | 7.00 | 14.68 | –0.90 | 0.06 | .37 |
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| Sleep apnea | 3254 | 7.40 | 14.78 | 49,177 | 6.97 | 14.67 | –1.61 | 0.03 | .11 |
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| Diabetes | 22,177 | 7.25 | 16.05 | 30,254 | 6.81 | 13.58 | –3.69 | 0.03 | .01 |
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| Heart disease | 14,533 | 7.83 | 17.57 | 37,898 | 6.68 | 13.39 | –6.24 | 0.11 | <.001 |
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| Stroke | 9874 | 7.83 | 16.19 | 42,557 | 6.81 | 14.293 | –4.096 | 0.15 | <.001 |
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| High blood pressure | 23,063 | 7.43 | 15.52 | 29,368 | 6.66 | 13.97 | –5.94 | 0.05 | <.001 |
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| High cholesterol | 15,233 | 7.69 | 17.69 | 37,198 | 6.71 | 13.24 | –6.939 | 0.07 | <.001 |
Summary of the multiple regression analysis of predictors of how many challenges would be completed by users of the <30 Days health risk assessment app.
| Variable | Ba | SEB b | Beta |
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| Intercept | 2.741 | 0.855 |
| <.001 | |
| Sex | 1.064 | 0.154 | 0.033 | <.001 | |
| Age group | 0.911 | 0.051 | 0.083 | <.001 | |
| Ethnicity | –0.074 | 0.021 | –0.015 | <.001 | |
| Height | 0.006 | 0.004 | 0.007 | .16 | |
| Weight | 0.002 | 0.002 | 0.005 | .37 | |
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| Alcohol | 0.233 | 0.199 | 0.005 | .24 |
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| Smoking | –0.761 | 0.171 | –0.019 | <.001 |
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| Stress | 0.641 | 0.126 | 0.022 | <.001 |
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| Exercise | –2.015 | 0.123 | –0.071 | <.001 |
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| Salt intake | –1.174 | 0.132 | –0.038 | <.001 |
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| Nutrition | –1.071 | 0.189 | –0.025 | <.001 |
| Incentive (AIR MILES) | 1.573 | 0.126 | 0.052 | <.001 | |
| Number of conditions | –0.007 | 0.075 | 0 | .93 | |
| Number of family histories | 0.315 | 0.043 | 0.033 | <.001 | |
aB: unstandardized regression coefficient.
bSEB: standard error of the coefficient.
cBeta: standardized coefficient.
Figure 4Challenge completion rates by risk factor by users of the <30 Days health risk assessment app.