| Literature DB >> 29212629 |
Kaili Dou1, Ping Yu2, Ning Deng1, Fang Liu3, YingPing Guan3, Zhenye Li3, Yumeng Ji1, Ningkai Du1, Xudong Lu1, Huilong Duan1.
Abstract
BACKGROUND: Chronic disease patients often face multiple challenges from difficult comorbidities. Smartphone health technology can be used to help them manage their conditions only if they accept and use the technology.Entities:
Keywords: chronic disease; disease management; hypertension; mobile health; patients; smartphone
Year: 2017 PMID: 29212629 PMCID: PMC5738544 DOI: 10.2196/mhealth.7886
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1The hypothesized theoretical research model.
Figure 2Screenshots of the smartphone-based Blood Pressure Assistant application.
The constructs, measurement items, and source references of the measurement items.
| Construct | Item code | Measurement items | Source referencea |
| Demographics | — | Age, gender, and education | — |
| Perceived usefulness (PU) | PU1 | Logging or sending blood pressure values would make me cope with hypertension better | [ |
| PU2 | Knowing that a doctor checks my blood pressure data gives me confidence in hypertension management | ||
| PU3 | Overall, Blood Pressure Assistant is useful | ||
| Perceived ease of use (PEOU) | PEOU1 | Learning how to use the mobile app would be easy for me | [ |
| PEOU2 | I would find Blood Pressure Assistant easy to use | ||
| PEOU3 | Blood Pressure Assistant is not cumbersome to use | ||
| Social influence (SI) | SI1 | People who are important to me think that I should use Blood Pressure Assistant | [ |
| SI2 | People who are important to me use Blood Pressure Assistant | ||
| Usage experience (UE) | UE1 | I use smartphone to search health information on the Web | [ |
| UE2 | I use mobile apps to help with managing health issues | ||
| Resistance to change (RTC) | RTC1 | I do not want the mobile app to change the way I deal with hypertension | [ |
| RTC2 | I do not want the mobile health app to change the way I interact with other people | ||
| Perceived health threat (PHT) | PHT1 | I am aware of my hypertension condition | Drafted by authors |
| PHT2 | I am very concerned about hypertension | ||
| PHT3 | I would take effort to manage hypertension | ||
| Self-efficacy (SE) | SE1 | I am able to use Blood Pressure Assistant without much time and energy | [ |
| SE2 | I get the best value from using Blood Pressure Assistant | ||
| Relationship with doctor (RWD) | RWD1 | Doctors are my most trusted source of health information | [ |
| RWD2 | When I have a health concern, my first step is to contact a doctor | ||
| Intention to use (ITU) | ITU1 | Given the opportunity, I would like to use Blood Pressure Assistant | [ |
| ITU2 | I would consider to continuously use Blood Pressure Assistant | ||
| Actual use (AU) | AU | Ratio of the actual number of measurements to the physician’s recommended number of measurements in care plan | — |
aThe symbol — denotes that the item has no source reference.
Demographics of the participating patients.
| Characteristics | n (%) | |
| Male | 106 (69.7) | |
| Female | 46 (30.3) | |
| <30 | 5 (3.2) | |
| <40 | 15 (9.9) | |
| 40-49 | 55 (36.2) | |
| 50-59 | 57 (37.5) | |
| >60 | 20 (13.2) | |
| <Middle school | 9 (5.9) | |
| Middle school | 12 (7.9) | |
| Vocational and technical education | 18 (11.8) | |
| High school | 25 (16.4) | |
| Three-year college | 34 (22.4) | |
| University | 38 (25) | |
| Missing information | 16 (10.6) | |
| iPhone operating system users | 20 (13.2) | |
| Android users | 132 (86.8) | |
Descriptive statistics of the variables and the reliability coefficients.
| Construct | Items | Mean (SD) | Standardized loading | Composite reliability |
| Usage Experience (UE) | UE1 | 3.23 (1.56) | .945 | .8948 |
| UE2 | 3.07 (1.77) | .835 | ||
| Relationship with doctor (RWD) | RWD1 | 4.59 (0.74) | .870 | .8223 |
| RWD2 | 4.40 (0.76) | .801 | ||
| Perceived health threat (PHT) | PHT1 | 4.13 (0.87) | .762 | .8775 |
| PHT2 | 3.29 (2.05) | .863 | ||
| PHT3 | 4.35 (0.63) | .890 | ||
| Perceived ease of use (PEOU) | PEOU1 | 4.58 (0.79) | .908 | .8702 |
| PEOU2 | 4.26 (1.13) | .866 | ||
| PEOU3 | 4.49 (0.84) | .710 | ||
| Perceived usefulness (PU) | PU1 | 4.17 (1.19) | .942 | .9413 |
| PU2 | 4.68 (0.55) | .944 | ||
| Resistance to change (RTC) | RTC1 | 1.87 (1.25) | .921 | .8802 |
| RTC2 | 1.66 (1.09) | .852 | ||
| Self-efficacy (SE) | SE1 | 4.33 (1.02) | .889 | .9035 |
| SE2 | 4.47 (0.62) | .926 | ||
| Social influence (SI) | SI1 | 2.42 (1.98) | .944 | .9150 |
| SI2 | 1.76 (1.93) | .891 | ||
| Intention to use (ITU) | ITU1 | 4.53 (0.94) | .955 | .9350 |
| ITU2 | 4.64 (0.56) | .976 | ||
| Actual use (AU) | AU1 | 0.84 (0.13) | 1 | 1 |
Figure 3A heat map showing correlations and discriminant validity. The diagonal elements denote the square root of average variance extracted, and all other elements are correlations between the constructs.
Figure 4The validated theoretical model. *P<.05, **P<.01.