| Literature DB >> 25339246 |
Melinda S Bender1, JiWon Choi, Shoshana Arai, Steven M Paul, Prisila Gonzalez, Yoshimi Fukuoka.
Abstract
BACKGROUND: Interventions using mobile health (mHealth) apps have been effective in promoting healthy lifestyle behavior change and hold promise in improving health outcomes to thereby reduce health disparities among diverse racial/ethnic populations, particularly Latino and Asian American subgroups (Filipinos and Koreans) at high risk for diabetes and cardiovascular disease. Latinos and Asian Americans are avid digital technology owners and users. However, limited datasets exist regarding digital technology ownership and use, especially among specific racial/ethnic subgroups. Such information is needed to inform development of culturally tailored mHealth tools for use with lifestyle interventions promoting healthy behaviors for these at-risk racial/ethnic populations.Entities:
Keywords: Filipinos; Koreans; Latinos; cross-sectional survey; digital technology; mHealth; mobile health apps
Year: 2014 PMID: 25339246 PMCID: PMC4259923 DOI: 10.2196/mhealth.3710
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Demographics and digital technology characteristics by race/ethnic groups.
| Variable | All | Caucasian | Filipino | Korean | Latino | Overall | |
|
| n (%) | n (%) | n (%) | n (%) | n (%) |
| |
| Age, years, mean (SD) |
| 44 (16.1) | 45 (16.1) | 41 (18.1) | 50 (14.3) | 42 (14.0) | .001 |
|
| .01 | ||||||
|
| Female | 581 (64.3) | 125 (72.7) | 160 (64) | 133 (56.8) | 163 (65.7) |
|
|
| Male | 323 (35.7) | 47 (27.3) | 90 (36) | 101 (43.2) | 85 (34.3) |
|
|
| <.001 | ||||||
|
| Married or cohabitating | 524 (58.1) | 68 (39.5) | 117 (47.2) | 189 (80.8) | 150 (60.5) |
|
|
| Single or divorced | 378 (41.9) | 104 (60.5) | 131 (52.8) | 45 (19.2) | 98 (39.5) |
|
|
| <.001 | ||||||
|
| High school or some high school | 247 (27.4) | 19 (11.0) | 33 (13.3) | 41 (17.5) | 154 (62.6) |
|
|
| College or some college | 515 (57.2) | 109 (63.4) | 187 (75.1) | 136 (58.1) | 83 (33.7) |
|
|
| Graduate school | 139 (15.4) | 44 (25.6) | 29 (11.6) | 57 (24.4) | 9 (3.7) |
|
|
| <.001 | ||||||
|
| <10 years | 113 (12.5) | 5 (2.9) | 32 (12.8) | 43 (18.5) | 33 (13.4) |
|
|
| ≥10 years | 501 (55.6) | 23 (13.4) | 133 (53.2) | 182 (78.1) | 163 (66.3) |
|
|
| Native born | 287 (31.9) | 144 (83.7) | 85 (34) | 8 (3.4) | 50 (20.3) |
|
| Primary language English | 404 (44.7) | 169 (98.3) | 169 (67.6) | 22 (9.4) | 44 (17.7) | <.001 | |
|
| <.001 | ||||||
|
| Online | 250 (27.7) | 105 (61) | 49 (19.6) | 58 (24.8) | 38 (15.3) |
|
|
| Paper | 654 (72.3) | 67 (39.0) | 201 (80.4) | 176 (75.2) | 210 (84.7) |
|
aSome variables have missing data, percentages are based on the n of each individual variable per group.
Adjusted digital technology ownership and usage percentages by race/ethnic group.
| Variable | All | Caucasian (n=172) | Filipino (n=250) | Korean (n=234) | Latino (n=248) | Overall | |
|
| n (%) | n (%) | n (%) | n (%) | n (%) |
| |
|
| |||||||
|
| Landline phone | 485 (54.8) | 84 (49.3) | 159 (65.9) | 103 (44.4) | 137 (57.2) | <.001 |
|
| Mobile phonea | 825 (92.8) | 160 (93.7) | 215 (89) | 228 (97.8) | 222 (91.5) | .01 |
|
| Smartphone | 622 (75.8) | 115 (69.6) | 181 (81.7) | 183 (82.8) | 144 (67.5) | <.001 |
|
| Computer/laptop | 713 (80.8) | 140 (81.8) | 193 (80.4) | 224 (96.6) | 156 (65.3) | <.001 |
|
| iPad or tablet | 340 (39.0) | 60 (35.4) | 98 (40.9) | 124 (55.2) | 59 (24.4) | <.001 |
|
| |||||||
|
| Use mobile phonea,b | 795 (96.1) | 154 (92.7) | 217 (96.7) | 218 (98.2) | 207 (96.1) | .24 |
|
| Use Internet via smartphoneb | 547 (90.5) | 107 (93.2) | 168 (88.2) | 157 (95.7) | 115 (85.4) | .02 |
|
| Use Internet via computerb | 692 (78.6) | 133 (77.6) | 187 (78.7) | 225 (96.7) | 146 (61) | <.001 |
|
| Use textb | 672 (81.2) | 130 (78.3) | 192 (85.9) | 177 (79.7) | 172 (79.8) | .09 |
|
| Use emailb | 683 (90.7) | 145 (89.5) | 198 (93.1) | 199 (96.2) | 141 (82.2) | .001 |
|
| Use Facebookb | 456 (78.9) | 112 (86.4) | 156 (87.4) | 87 (65.1) | 101 (73.9) | .002 |
|
| Use Twitterb | 100 (38) | 22 (42.4) | 42 (48) | 25 (43.4) | 12 (18) | .011 |
|
| Download any apps | 509 (57.5) | 100 (58.6) | 144 (59.6) | 161 (69.6) | 106 (43.7) | <.001 |
|
| Download health apps | 175 (19.8) | 44 (25.5) | 60 (24.7) | 41 (17.8) | 30 (12.2) | <.03 |
aMobile phone=non-smartphones+smartphones.
bAt least 1x/week in the last month.
cAdjusted for age, gender, marital status, education, years lived in the United States, language, survey type.
dSome variables have missing data, percentages are based on the n for each individual variable per group.
Multivariate logistic regression model for factors predicting the download of mobile health apps (N=848).a
| Variable | Adjusted OR | 95% CI |
| |
| Age (years) |
| 0.96 | 0.95-0.97 | <.001 |
|
| .002b | |||
|
| Caucasian | reference |
|
|
|
| Filipino | 0.89 | 0.54-1.48 | .66 |
|
| Korean | 0.52 | 0.31-0.88 | .02 |
|
| Latino | 0.37 | 0.20-0.69 | .002 |
|
| .005b | |||
|
| High school or some high school | reference |
|
|
|
| College or some college | 2.62 | 1.44-4.80 | .002 |
|
| Graduate school | 2.93 | 1.43-6.0 | .003 |
| Family member with MIc |
| 2.02 | 1.16-3.51 | .013 |
|
| .001 | |||
|
| Online survey | reference |
|
|
|
| Paper survey | 0.50 | 0.34-0.75 |
|
aBackward elimination step-wise multiple logistic regression (Wald). Variables entered in initial model: race/ethnicity, age, gender, marital status, years lived in the United States, education, primary language is English, body mass index, smokes cigarettes, has high blood pressure, has high cholesterol, family member with diabetes, family member with heart attack, physical inactivity, perceived risk for MI, self-reported health status, discussed diabetes with provider, and survey type completed.
bOverall P value.
cMI: myocardial infarction.