| Literature DB >> 26537656 |
Abstract
BACKGROUND: Mobile phone health apps may now seem to be ubiquitous, yet much remains unknown with regard to their usage. Information is limited with regard to important metrics, including the percentage of the population that uses health apps, reasons for adoption/nonadoption, and reasons for noncontinuance of use.Entities:
Keywords: cell phones; mobile apps; telemedicine
Year: 2015 PMID: 26537656 PMCID: PMC4704953 DOI: 10.2196/mhealth.4924
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Sociodemographic and health characteristics of the sample (abridged a) (n=1604).
| Item | Characteristic | n (%) |
| Sex | Female | 795 (49.56) |
| Race/ethnicity |
|
|
|
| African American or black | 408 (25.44) |
|
| Asian American or Asian | 114 (7.11) |
|
| White or Caucasian | 569 (35.47) |
|
| Native American/Pacific islander | 20 (1.25) |
|
| Latino/Hispanic | 447 (27.87) |
|
| Other | 46 (2.87) |
| Born in the United States | Yes | 1445 (90.09) |
| Education |
|
|
|
| Less than 12th grade | 79 (4.93) |
|
| High school degree or GEDb | 722 (45.01) |
|
| Some college/vocational school/apprenticeship | 399 (24.88) |
|
| Bachelor’s degree | 276 (17.21) |
|
| Graduate degree (master's, PhD, MD, etc) | 128 (7.98) |
| Household income |
|
|
|
| Less than US $25,000 | 463 (28.87) |
|
| US $25,000-49,999 | 497 (30.99) |
|
| US $50,000-74,999 | 218 (13.59) |
|
| US $75,000-99,999 | 195 (12.16) |
|
| US $100,000+ | 231 (14.40) |
| Region of country (n=1594) c |
|
|
|
| Northeast | 322 (20.20) |
|
| Midwest | 242 (15.18) |
|
| South | 636 (39.90) |
|
| West | 394 (24.72) |
| In general, would you say your health is...? |
|
|
|
| Poor | 44 (2.74) |
|
| Fair | 204 (12.72) |
|
| Average | 536 (33.42) |
|
| Very good | 603 (37.59) |
|
| Excellent | 217(13.53) |
| Body mass index (kg/m2) |
|
|
|
| <18.5 (underweight) | 63 (3.93) |
|
| 18.5-24.9 (normal) | 546 (34.04) |
|
| 25-29.9 (overweight) | 438 (27.31) |
|
| ≥30 (obese) | 557 (34.73) |
| Do you consider yourself to be...? |
|
|
|
| About the right weight | 683 (42.58) |
|
| Underweight | 108 (6.73) |
|
| Overweight | 813 (50.69) |
a Table 1 is an abridged version; see Multimedia Appendix 1 for the full list of items and responses.
bGED: General Educational Development.
cNot all participants provided ZIP code information.
Figure 1US distribution of sample by ZIP code.
Characteristics of health app use (abridged a).
| Survey item | Response category | n (%) |
| 3. Have you ever downloaded an “app” to track anything related to your health? (n=1604) | Yes | 934 (58.23) |
| 4. How many health-related smartphone apps have you used?a (n=934) |
|
|
|
| 1-5 apps | 545 (58.4) |
|
| 6-10 apps | 104 (11.1) |
|
| 11-20 apps | 160 (17.1) |
|
| More than 20 | 125 (13.4) |
| 5. Please check off all the reasons you have used health apps. (check all that apply) a (n=934) |
|
|
|
| Track how much activity/exercise I get | 493 (52.8) |
|
| Help me watch what I eat | 445 (47.6) |
|
| Weight loss | 437 (46.8) |
|
| Show/teach me exercises | 318 (34.0) |
|
| Track a health measure | 266 (28.5) |
| 6. Rank the most important reasons you have not downloaded a health app. a (n=670) |
|
|
|
| I’m just not interested in health apps | 181 (27.0) |
|
| They cost too much to buy | 156 (23.3) |
|
| I don’t trust letting apps collect my data | 103 (15.4) |
|
| My health is fine and I don’t need one | 73 (10.9) |
|
| They would use too much of my data | 85 (12.7) |
|
| They are too complicated to use | 72 (10.7) |
| 7. What would be the maximum amount you would pay for a health-related app? a (n=1604) |
|
|
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| I wouldn't pay anything | 662 (41.27) |
|
| US $1-US $3.99 | 400 (24.94) |
| 10. How much do you trust that your health apps automatically record your data accurately? a (n=934) |
|
|
|
| Moderately trust | 416 (44.5) |
|
| Very much trust | 344 (36.8) |
| 13. To what extent do you think health apps have improved your health? (n=934) |
|
|
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| Made worse/didn't help at all | 98 (10.5) |
|
| Just a little bit/somewhat improved | 563 (60.3) |
|
| Very much improved | 273 (29.2) |
| 14. Which health apps do you currently have on your phone? (free text) a (n=934) |
|
|
|
| Walgreens | 123 (13.2) |
|
| Fitbit | 107 (11.5) |
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| Weight Watchers | 59 (6.3) |
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| Web MD | 36 (3.9) |
|
| Nike+ | 34 (3.6) |
| 15. Are there any health apps you downloaded and no longer use? (n=934) | Yes | 427 (45.7) |
| 16. What reasons do you no longer use them? (check all that apply) a (n=427) |
|
|
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| Takes too much time to enter data | 190 (44.5) |
|
| Lost interest | 173 (40.5) |
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| There were hidden costs | 154 (36.1) |
| 20. Has a doctor ever recommended you use a health app? (n=1031) | Yes | 210 (20.37) |
a Table 2 is an abridged version; see Multimedia Appendix 2 for the full list of items and responses.
Multivariable correlates of health app usage.
| Variable | RRa (95% CI) |
| |
| Intercept | <.001 | ||
| Female (vs male) | 0.98 (0.90-1.07) | .64 | |
| Age in years (each year) | 0.98 (0.97-0.98) | <.001 | |
| Race/ethnicity (vs white) |
|
| |
|
| African American or black | 1.12 (0.99-1.26) | .07 |
|
| Asian American or Asian | 0.94 (0.78-1.13) | .51 |
|
| Latino/Hispanic | 1.19 (1.06-1.33) | .002 |
| Education (vs less than high school) | 1.12 (1.03-1.22) | .01 | |
| Income (vs US $50,000-$74,999) |
|
| |
|
| US $100,000+ | 1.33 (1.16-1.51) | <.001 |
|
| US $75,000-$99,999 | 1.32 (1.16-1.50) | <.001 |
|
| US $25,000-$49,999 | 0.98 (0.85-1.13) | .81 |
|
| Less than US $25,000 | 0.79 (0.67-0.93) | .004 |
| Diagnosed with chronic disease | 0.97 (0.89-1.05) | .42 | |
| BMI b (vs normal weight) |
|
| |
|
| Underweight | 0.88 (0.75-1.05) | .15 |
|
| Overweight | 1.09 (0.98-1.21) | .10 |
|
| Obese | 1.11 (1.01-1.22) | .02 |
aRR: relative risk.
bBMI: body mass index.