The Impact of the Moderating Effect of Psychological Health Status on Nurse Healthcare Management Information System Usage Intention
Abstract
:1. Introduction
2. Theoretical Framework, Hypotheses, and Rationale
2.1. Technology Sophistication
2.2. Hospital Image
2.3. Subjective Norm
2.4. The Original Technology Acceptance Model
2.5. Psychological Health Status
3. Methods
3.1. Design and Participants
3.2. Questionnaire Design, Expert Panel, and Pilot Test
3.3. Measures
3.4. Data Analysis Tools
4. Results
4.1. Descriptive Results
4.2. Reliability Test Results
4.3. Test of the Hypothesized Model
5. Discussion
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Construct | Operational Definition | # of Items | Researches |
---|---|---|---|
Psychological health status | Employed the Chinese Health Questionnaire (CHQ-12) to measure nurses’ psychological health status | 12 | [58,59] |
Technology sophistication | Having an active email account, the number of online activity, and online count (e.g., shopped or purchased something on an online auction, ordered medications, or managed prescriptions) were included to assess ability to use information | 6 | [6] |
Hospital image | The sum of the beliefs, ideas, and impressions of patients and/or the general public with regard to a hospital, which were developed based on their past experience with the hospital | 4 | [60] |
Perceived usefulness | The degree to which a nurse believes that the use of HMIS would enhance his or her health | 5 | [31,41] |
Perceived ease of use | The degree to which a nurse believes that the use of HMIS would be free of effort | 4 | [31,41] |
Subjective norm | The degree to which a nurse believes that people who are important to her/him thinks he/she should perform the behavior | 4 | [20,61] |
HMIS usage intention | Nurses’ intention to use NHMIS | 3 | [21] |
Demographic | Category | Taiwan (n = 142) | Northeast of China (n = 1422) | F-Value | ||||||
---|---|---|---|---|---|---|---|---|---|---|
PU | PEOU | SN | HI | TS | UI | PHS | ||||
Gender | male | 2 | 17 | 0.196 | 0.839 | 0.465 | 0.315 | 1.191 | 0.749 | 1.193 |
female | 140 | 1406 | ||||||||
Education background | high school | 1 | 15 | 0.648 | 1.583 | 0.787 | 2.298 | 1.471 | 1.212. | 2.403 |
college | 45 | 618 | ||||||||
university | 74 | 782 | ||||||||
graduate | 22 | 8 | ||||||||
Marriage status | married | 88 | 776 | 2.190 | 0.588 | 2.100 | 2.431 * | 2.089 * | 1.755 | 0.010 |
single | 54 | 647 | ||||||||
Psychological health status | negative | 47 | 385 | 3.908 * n > p | 2.222 * n > p | 3.605 * n > p | 3.463 * n > p | 2.668 * n > p | 4.088 * n > p | 2.980 * n > p |
positive | 95 | 1038 |
Variables | Cronbach’s Alpha |
---|---|
Perceived Ease of Use | 0.917 |
Perceived Usefulness | 0.923 |
Subjective Norm | 0.912 |
Hospital Image | 0.920 |
Technology Sophistication | 0.921 |
NHMIS Usage Intention | 0.936 |
Psychological health status | 0.771 |
Hypotheses | Full Sample (n = 1563) | Positive Psychological Health Status (n = 1146) | Negative Psychological Health Status (n = 417) |
---|---|---|---|
H1 | 0.28 * | 0.27 * | 0.29 * |
H2 | 0.15 * | 0.11 * | 0.24 * |
H3 | 0.60 * | 0.61 * | 0.54 * |
H4 | 0.49 * | 0.50 * | 0.44 * |
H5 | 0.37 * | 0.39 * | 0.35 * |
H6 | 0.62 * | 0.68 * | 0.56 * |
H7 | 0.10 * | 0.03 | 0.18 * |
H8 | 0.30 * | 0.44 * | 0.30 * |
H9 | 0.07 * | 0.16 * | −0.08 |
R2 | 0.56 | 0.58 | 0.52 |
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Hsiao, S.-J.; Tseng, H.-T. The Impact of the Moderating Effect of Psychological Health Status on Nurse Healthcare Management Information System Usage Intention. Healthcare 2020, 8, 28. https://doi.org/10.3390/healthcare8010028
Hsiao S-J, Tseng H-T. The Impact of the Moderating Effect of Psychological Health Status on Nurse Healthcare Management Information System Usage Intention. Healthcare. 2020; 8(1):28. https://doi.org/10.3390/healthcare8010028
Chicago/Turabian StyleHsiao, Shih-Jung, and Hsiao-Ting Tseng. 2020. "The Impact of the Moderating Effect of Psychological Health Status on Nurse Healthcare Management Information System Usage Intention" Healthcare 8, no. 1: 28. https://doi.org/10.3390/healthcare8010028