| Literature DB >> 30120087 |
Xinyi Lu1, Runtong Zhang1, Wen Wu1, Xiaopu Shang1, Manlu Liu2.
Abstract
BACKGROUND: The internet has become a major mean for acquiring health information; however, Web-based health information is of mixed quality and may markedly affect patients' health-related behavior and decisions. According to the social information processing theory, patients' trust in their physicians may potentially change due to patients' health-information-seeking behavior. Therefore, it is important to identify the relationship between internet health information and patient compliance from the perspective of trust.Entities:
Keywords: affect-based trust; cognition-based trust; internet health information; patient compliance; patient-physician relationship; social exchange theory; social information processing theory; structural equation modeling
Mesh:
Year: 2018 PMID: 30120087 PMCID: PMC6119214 DOI: 10.2196/jmir.9364
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Research model.
Sample demographics (N=336).
| Demographic characteristics | Participants, n (%) | |
| <20 | 22 (6.6%) | |
| 20-29 | 83 (24.7%) | |
| 30-39 | 107 (31.8%) | |
| 40-49 | 59 (17.6%) | |
| 50-59 | 47 (14.0%) | |
| ≥60 | 18 (5.4%) | |
| Male | 156 (46.4%) | |
| Female | 180 (53.6%) | |
| Urban | 184 (54.8%) | |
| Rural | 152 (45.2%) | |
| Junior middle school | 31 (9.2%) | |
| High school | 96 (28.6%) | |
| Junior college | 68 (20.2%) | |
| Bachelor’s degree | 127 (37.8%) | |
| Master’s degree | 9 (2.7%) | |
| Doctor’s degree | 5 (1.5%) | |
| Private business owners | 28 (8.3%) | |
| Factory workers | 31 (9.2%) | |
| Professional and technical workers | 77 (22.9%) | |
| Commercial service workers | 63 (18.8%) | |
| Students | 38 (11.3%) | |
| Liberal professionals | 27 (8.0%) | |
| Employees in government offices and public institutions | 40 (11.9%) | |
| Retirees | 22 (6.5%) | |
| Farmers | 10 (3.0%) | |
Cronbach alpha of the constructs.
| Constructs | Cronbach alpha |
| Internet health information quality | .933 |
| Source of internet health information | .910 |
| Cognition-based trust (CBT) | .865 |
| Affect-based trust (ABT) | .756 |
| Patient compliance | .870 |
| Totala | .950 |
aFor the total value, all five constructs were regarded as one and were used to calculate the total Cronbach alpha.
Comparison of measurement models in confirmatory factor analysis.
| Distinctiveness test for all variables (model factors) | Fit indices | |||||
| χ2a ( | χ2/ | RMSEAc | CFId | IFIe | TLIf | |
| Model 1 (5 factors): internet health information quality, source of internet health information, CBTg, ABTh, patient compliance | 1793.1 (1390) | 1.29 | .029 | .96 | .96 | .95 |
| Model 2 (4 factors): internet health information quality and source of internet health information combined into 1 factor | 2322.5 (1394) | 1.67 | .045 | .91 | .92 | .89 |
| Model 3 (4 factors): CBT and ABT combined into 1 factor | 1878.8 (1394) | 1.35 | .032 | .96 | .96 | .94 |
| Model 4 (3 factors): internet health information quality and source of internet health information combined into 1 factor and CBT and ABT combined into 1 factor | 2399.4 (1397) | 1.72 | .046 | .91 | .91 | .88 |
| Model 5 (2 factors): internet health information quality, source of internet health information, CBT and ABT combined into 1 factor | 3046.8 (1399) | 2.18 | .059 | .85 | .85 | .81 |
| Model 6 (1 factor): internet health information quality, source of internet health information, CBT and ABT, and patient compliance combined into 1 factor | 3303.1 (1400) | 2.36 | .064 | .83 | .83 | .78 |
aχ2: Pearson chi-square.
bdf: degrees of freedom.
cRMSEA: root mean square error of approximation.
dCFI: comparative fit index.
eIFI: incremental fit index.
fTLI: Tucker-Lewis index.
gCBT: cognition-based trust.
hABT: affect-based trust.
Results of hierarchical multiple linear regression.
| Hypothesis | Path coefficient | |
| H1: Internet health information quality → CBTa | .317 | <.001 |
| H2: Internet health information quality → ABTb | .213 | <.001 |
| H3: Source of internet health information → CBT | .224 | <.001 |
| H4: Source of internet health information → ABT | .076 | .13 |
| H5: CBT → patient compliance | .326 | <.001 |
| H6: ABT → patient compliance | .378 | <.001 |
| H7: CBT → ABT | .535 | <.001 |
aCBT: cognition-based trust.
bABT: affect-based trust.
Multivariate coefficient of determination (R2) results, where ∆R2 is R2with control variables − R2without control variables.
| Variables | Control variable effects | ||||
| With control variables | Without control variables | ∆ | Cohen ƒ2 | Effects | |
| Cognition-based trust (CBT) | 0.252 | 0.229 | 0.023 | 0.031 | Small |
| Affect-based trust (ABT) | 0.487 | 0.470 | 0.017 | 0.033 | Small |
| Patient compliance | 0.461 | 0.443 | 0.018 | 0.033 | Small |
Hierarchical multiple linear regression effect size analysis, where R2 is multivariate coefficient of determination and ∆R2 is R2with control variables − R2without control variables.
| Variables | ∆ | Cohen ƒ2 | Effect size | |||
| In | Out | |||||
| Cognition-based trust (CBT) | .461 | .406 | .055 | .102 | Small | |
| Affect-based trust (ABT) | .461 | .388 | .073 | .135 | Small | |
| Internet health information quality | .252 | .185 | .067 | .090 | Small | |
| Source of internet health information | .252 | .219 | .033 | .044 | Small | |
| Internet health information quality | .487 | .459 | .028 | .055 | Small | |
| Source of internet health information | .487 | .483 | .004 | .008 | Small | |
| Cognition-based trust (CBT) | .487 | .272 | .215 | .419 | Large | |
Figure 2Research model with path coefficients. ***P<.001, *P<.05.
Hypothesis testing.
| Hypothesis | Path coefficient | |
| Internet health information quality has a positive impact on patients’ CBTa in their physicians. | .352 | <.001 |
| Internet health information quality has a positive impact on patients’ ABTb in their physicians. | .328 | <.001 |
| The source of the internet health information has a positive impact on patients’ CBT in their physicians. | .364 | <.001 |
| The source of the internet health information has a positive impact on patients’ ABT in their physician. | .023 | .72 |
| Patients’ CBT in their physicians has a positive impact on the compliance. | .167 | .09 |
| Patients’ ABT in their physicians has a positive impact on the compliance. | .656 | <.001 |
| Patients’ CBT in their physicians has a positive impact on their ABT in physicians. | .582 | <.001 |
aCBT: cognition-based trust.
bABT: affect-based trust.
Path coefficients by bootstrapping method. Amos 22.0 used to calculate direct, indirect, and total effects.
| Effect | Path coefficient (SD) | ||
| internet health information quality → CBTa | .309 (.076) | .001 | |
| source of internet health information → CBT | .310 (.069) | <.001 | |
| CBT → patient compliance | .142 (.288) | .46 | |
| internet health information quality → ABTb | .308 (.073) | <.001 | |
| source of internet health information → ABT | .062 (.074) | .39 | |
| ABT → patient compliance | .737 (.330) | .001 | |
| internet health information quality → patient compliance | .412 (.111) | <.001 | |
| source of internet health information → patient compliance | .232 (.081) | .008 | |
| internet health information quality → patient compliance | .393 (.067) | <.001 | |
| source of internet health information → patient compliance | .083 (.076) | .28 | |
aCBT: cognition-based trust.
bABT: affect-based trust.