| Literature DB >> 29305343 |
Rebecca Schnall1, Hwayoung Cho1, Jianfang Liu1.
Abstract
BACKGROUND: Mobile technology has become a ubiquitous technology and can be particularly useful in the delivery of health interventions. This technology can allow us to deliver interventions to scale, cover broad geographic areas, and deliver technologies in highly tailored ways based on the preferences or characteristics of users. The broad use of mobile technologies supports the need for usability assessments of these tools. Although there have been a number of usability assessment instruments developed, none have been validated for use with mobile technologies.Entities:
Keywords: mobile health apps; mobile technology; psychometric evaluation; usability
Year: 2018 PMID: 29305343 PMCID: PMC5775483 DOI: 10.2196/mhealth.8851
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1Untitled.
Participant characteristics (N=92).
| Characteristics | n (%) | |
| Male | 50 (54) | |
| Female | 40 (43) | |
| Transgender (FTM) | 1 (1) | |
| Other | 1 (1) | |
| African American/black | 67 (74) | |
| White | 8 (9) | |
| Other | 16 (18) | |
| Ethnicity | ||
| Hispanic | 19 (21) | |
| Non-Hispanic | 73 (79) | |
| Homosexual/gay/lesbian | 24 (33) | |
| Heterosexual/straight | 44 (61) | |
| Bisexual | 3 (4) | |
| Other | 1 (1) | |
| Elementary | 1 (1) | |
| Some high school | 16 (17) | |
| High school diploma or equivalent | 27 (29) | |
| Some college | 28 (30) | |
| Associate/technical degree | 5 (5) | |
| Bachelor/college degree | 15 (16) | |
| Less than $10,000 | 41 (45) | |
| $10,000-$19,999 | 24 (26) | |
| $20,000-$39,999 | 14 (15) | |
| $40,000-$59,999 | 1 (1) | |
| $60,000-$79,999 | 1 (1) | |
| $80,000-$99,999 | 1 (1) | |
| Don’t know | 5 (5) | |
| Prefer not to answer | 5 (5) | |
| Married or in a steady relationship | 22 (31) | |
| Single, separated, divorced, or widowed | 48 (67) | |
| Other | 2 (3) | |
| Android phone | 62 (67) | |
| iPhone | 23 (25) | |
| Tablet | 5 (5) | |
| Other | 2 (2) | |
| Several times every day | 82 (89) | |
| Once a day | 5 (5) | |
| Several times per week | 4 (4) | |
| Several times per month | 1 (1) | |
| Yes | 80 (88) | |
| No | 12 (13) | |
Descriptive statistics: scale scores at enrollment for the Health-ITUES subscales (N=92).
| Scale | Mean (SD) | Median (range) | Floor, % | Ceiling, % |
| Impact | 4.5 (0.7) | 5.0 (1.3-5.0) | 0 | 59 |
| Perceived usefulness | 4.3 (0.8) | 4.5 (1.7-5.0) | 0 | 36 |
| Perceived ease of use | 4.6 (0.8) | 5.0 (1.2-5.0) | 0 | 60 |
| User control | 4.2 (0.9) | 4.5 (1.7-5.0) | 0 | 42 |
| Overall Health-ITUES score | 4.4 (0.7) | 4.6 (1.6-5.0) | 0 | 33 |
Internal scale consistency scores and interscale correlations for Health-ITUES subscales (N=83).
| Scale | Impact | Perceived usefulness | Perceived ease of use | User control | ||||||
| Cronbach alpha | Cronbach alpha | Cronbach alpha | Cronbach alpha | |||||||
| Impact | .85 | |||||||||
| Perceived usefulness | .82 | .92 | ||||||||
| Perceived ease of use | .63 | .69 | .92 | |||||||
| User control | .56 | .68 | .61 | .86 | ||||||
Mean scale scores at baseline by intervention versus control groups for Health-ITUES subscales (N=83).
| Impact | 4.70 (0.52) | 4.53 (0.61) | .13 |
| Perceived usefulness | 4.58 (0.59) | 4.28 (0.60) | .01 |
| Perceived ease of use | 4.77 (0.48) | 4.52 (0.64) | .03 |
| User control | 4.45 (0.73) | 4.11 (0.82) | .048 |
| Overall Health-ITUES score | 4.62 (0.51) | 4.35 (0.56) | .01 |
aFrom Kruskal-Wallis test.
Correlations between Health-ITUES and PSSUQ subscales (N=83).
| PSSUQ | Health-ITUES, | ||||
| Impact | Perceived usefulness | Perceived ease of use | User control | Overall | |
| System usefulness | .63 | .53 | .57 | .49 | .63 |
| Information quality | .46 | .56 | .52 | .67 | .65 |
| Interface quality | .56 | .49 | .50 | .55 | .61 |
| Overall | .60 | .60 | .59 | .64 | .70 |
aAll correlations significant at the P<.001 level.