The Intention and Influence Factors of Nurses’ Participation in Telenursing
Abstract
:1. Introduction
2. Literature Review
2.1. Factors Influencing the Use of Telenursing by Nursing Staff
2.2. The Role of Nursing Staff in Telenursing
2.3. The Performance of Nursing Staff in Telenursing Services
2.4. Decomposed Theory of Planned Behavior
2.5. Research Purpose and Framework
3. Research Method
3.1. Research Tools
3.2. Research Objects
3.3. Research Process
3.4. Statistical Analysis of Data
3.5. Test Results
3.6. Socio-Demographic Characteristics
3.7. Socio-Demographic Characteristics and Differences in Research Variables
3.8. The Correlation between Research Variables
3.9. Predictors of Behavioral Intention
4. Discussion
4.1. The Relationship between Attitude and Behavioral Intention
4.2. The Relationship between Subjective Norms and Behavioral Intentions
4.3. The Relationship between Perceived Behavior Control and Behavioral Intention
4.4. Predictors of Intention to Participate in Telehealth
4.5. Limitations
5. Conclusions and Suggestions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Category | Number | Percentage (%) |
---|---|---|---|
Age + | 199 | 100.0 | |
Sex | Female | 203 | 100.0 |
Education Level | College | 92 | 45.3 |
Bachelor | 111 | 54.7 | |
Years of nursing career + | 201 | 100.0 | |
Have telephone follow-up interview experience | Yes | 35 | 17.3 |
No | 167 | 82.7 | |
Experience in responding to phone inquiry from patients’ family | Yes | 145 | 72.1 |
No | 56 | 27.9 | |
Telenursing knowledge Years of using medical information system | Yes | 95 | 46.8 |
No | 108 | 53.2 | |
197 | 100.0 | ||
Experience in using telenursing system | Yes | 33 | 16.3 |
No | 169 | 83.7 |
Education Level | Have Telephone Follow-Up Interview Experience | Experience in Responding to Phone Inquiry from Patients’ Family | Knowledge in Telenursing | Experience in Using Telenursing System | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Variable | Level | M ± SD | t | Level | M ± SD | t | Level | M ± SD | t | Level | M ± SD | t | Level | M ± SD | t |
Attitude | College | 78.08 ± 8.72 | 0.526 | No | 77.49 ± 9.32 | −1.069 | No | 77.13 ± 11.41 | −0.558 | No | 76.72 ± 10.23 | −1.635 | No | 77.59 ± 9.11 | −0.515 |
Bachelor | 77.4 ± 9.46 | Yes | 79.29 ± 7.41 | Yes | 78.06 ± 7.97 | Yes | 78.82 ± 7.57 | Yes | 78.49 ± 9.34 | ||||||
Perceived usefulness | College | 41.25 ± 4.8 | −0.2 | No | 41.27 ± 5.19 | −0.788 | No | 41.13 ± 6.21 | −0.49 | No | 40.5 ± 5.67 | −2.519 * | No | 41.26 ± 5.15 | −0.58 |
Bachelor | 41.4 ± 5.31 | Yes | 42 ± 4.08 | Yes | 41.52 ± 4.51 | Yes | 42.27 ± 4.14 | Yes | 41.82 ± 4.75 | ||||||
Perceived ease of use | College | 24.92 ± 2.96 | 0.936 | No | 24.56 ± 3.08 | −1.655 | No | 24.44 ± 3.59 | −0.774 | No | 24.59 ± 3.37 | −0.569 | No | 24.68 ± 3 | −0.399 |
Bachelor | 24.52 ± 3.07 | Yes | 25.49 ± 2.63 | Yes | 24.81 ± 2.78 | Yes | 24.83 ± 2.6 | Yes | 24.91 ± 3.21 | ||||||
Compatibility | College | 11.9 ± 1.83 | 1.447 | No | 11.67 ± 2.04 | −0.35 | No | 11.56 ± 2.42 | −0.538 | No | 11.64 ± 2.06 | −0.228 | No | 11.65 ± 2.01 | −0.265 |
Bachelor | 11.48 ± 2.23 | Yes | 11.8 ± 2.07 | Yes | 11.74 ± 1.89 | Yes | 11.7 ± 2.08 | Yes | 11.76 ± 2.37 | ||||||
Subjective norms | College | 15.77 ± 2.42 | 1.344 | No | 15.47 ± 2.45 | −0.842 | No | 15.46 ± 2.9 | −0.282 | No | 15.19 ± 2.58 | −2.082 * | No | 15.41 ± 2.35 | −1.396 |
Bachelor | 15.31 ± 2.42 | Yes | 15.85 ± 2.25 | Yes | 15.58 ± 2.22 | Yes | 15.89 ± 2.18 | Yes | 16.06 ± 2.76 | ||||||
Supervisor influence | College | 7.87 ± 1.3 | 0.264 | No | 7.78 ± 1.32 | −1.501 | No | 7.78 ± 1.5 | −0.448 | No | 7.65 ± 1.33 | −2.211 * | No | 7.8 ± 1.27 | −1.068 |
Bachelor | 7.82 ± 1.29 | Yes | 8.14 ± 1.14 | Yes | 7.88 ± 1.21 | Yes | 8.05 ± 1.22 | Yes | 8.06 ± 1.39 | ||||||
Peer influence | College | 7.9 ± 1.29 | 2.105 * | No | 7.69 ± 1.32 | −0.314 | No | 7.67 ± 1.48 | −0.17 | 7.53 ± 1.38 | −1.778 | No | 7.61 ± 1.3 | −1.763 | |
Bachelor | 7.51 ± 1.33 | Yes | 7.77 ± 1.3 | Yes | 7.71 ± 1.26 | Yes | 7.86 ± 1.24 | Yes | 8.06 ± 1.46 | ||||||
Perceived behavior control | College | 30.95 ± 3.72 | 0.981 | No | 30.56 ± 3.88 | −0.772 | No | 30.34 ± 4.81 | −0.596 | No | 29.96 ± 4.23 | −2.892 ** | No | 30.54 ± 3.73 | −0.916 |
Bachelor | 30.42 ± 3.88 | Yes | 31.12 ± 3.51 | Yes | 30.76 ± 3.37 | Yes | 31.46 ± 3.09 | Yes | 31.22 ± 4.27 | ||||||
Self-efficacy | College | 20.16 ± 2.54 | 0.8 | No | 19.89 ± 2.54 | −1.142 | No | 19.68 ± 3.25 | −0.872 | No | 19.5 ± 2.88 | −3.135 ** | No | 19.99 ± 2.6 | −0.138 |
Bachelor | 19.87 ± 2.59 | Yes | 20.44 ± 2.63 | Yes | 20.09 ± 2.24 | Yes | 20.59 ± 2.01 | Yes | 20.06 ± 2.49 | ||||||
Facilitating conditions | College | 10.78 ± 1.95 | 0.849 | No | 10.67 ± 2 | −0.016 | No | 10.66 ± 2.3 | −0.019 | No | 10.46 ± 2.14 | −1.494 | No | 10.55 ± 1.91 | −1.596 |
Bachelor | 10.55 ± 2 | Yes | 10.68 ± 1.79 | Yes | 10.67 ± 1.83 | Yes | 10.87 ± 1.76 | Yes | 11.16 ± 2.26 | ||||||
Behavioral intention | College | 24 ± 4.35 | 0.152 | No | 23.83 ± 4.65 | −1.035 | No | 23.82 ± 5.68 | −0.267 | No | 23.12 ± 4.71 | −2.726 ** | No | 23.64 ± 4.45 | −2.252 * |
Bachelor | 23.9 ± 4.87 | Yes | 24.71 ± 4.46 | Yes | 24.01 ± 4.17 | Yes | 24.87 ± 4.39 | Yes | 25.61 ± 5.27 |
Variable | M ± SD | Coefficient of Correlation Analysis (r) | ||
---|---|---|---|---|
Age | Years of Nursing Career | Year of Using Medical Information System | ||
Age | 28.68 ± 6.32 | |||
Nursing career (yr) | 6.26 ± 5.82 | |||
Using medical info system (yr) | 2.98 ± 3.51 | |||
Attitude | 77.7 ± 9.12 | 0.025 | −0.036 | −0.004 |
Perceived usefulness | 41.33 ± 5.08 | 0.021 | −0.037 | 0.01 |
Perceived ease of use | 24.7 ± 3.02 | 0.011 | −0.055 | −0.03 |
Compatibility | 11.67 ± 2.07 | 0.041 | 0.01 | 0.004 |
Subjective norms | 15.52 ± 2.42 | −0.031 | −0.008 | 0.057 |
Supervisor influence | 7.84 ± 1.29 | −0.003 | −0.008 | 0.05 |
Peer influence | 7.69 ± 1.33 | −0.038 | −0.012 | 0.053 |
Perceptual behavior control | 30.66 ± 3.81 | −0.008 | 0.012 | 0.085 |
Self-efficacy | 20.01 ± 2.57 | 0.071 | 0.068 | 0.111 |
Facilitating conditions | 10.65 ± 1.98 | −0.107 | −0.063 | 0.021 |
Behavioral intention | 23.95 ± 4.63 | −0.048 | −0.064 | −0.023 |
Variable | Perceived Usefulness | Perceived Ease of Use | Compatibility | Supervisor Influence | Peer Influence | Self-Efficacy | Facilitating Conditions | Attitude | Subjective Norms | Perceived Behavior Control | Behavioral Intention |
---|---|---|---|---|---|---|---|---|---|---|---|
Perceived usefulness | 1 | ||||||||||
Perceived ease of use | 0.745 *** | 1 | |||||||||
Compatibility | 0.618 *** | 0.633 *** | 1 | ||||||||
Supervisor influence | 0.687 *** | 0.554 *** | 0.453 *** | 1 | |||||||
Peer influence | 0.557 *** | 0.469 *** | 0.406 *** | 0.720 *** | 1 | ||||||
Self-efficacy | 0.578 *** | 0.528 *** | 0.373 *** | 0.531 *** | 0.441 *** | 1 | |||||
Facilitating conditions | 0.395 *** | 0.330 *** | 0.420 *** | 0.437 *** | 0.515 *** | 0.396 *** | 1 | ||||
Attitude | 0.946 *** | 0.893 *** | 0.781 *** | 0.673 *** | 0.560 *** | 0.584 *** | 0.426 *** | 1 | |||
Subjective norms | 0.667 *** | 0.547 *** | 0.458 *** | 0.925 *** | 0.930 *** | 0.523 *** | 0.514 *** | 0.660 *** | 1 | ||
Perceived behavior control | 0.597 *** | 0.529 *** | 0.472 *** | 0.587 *** | 0.567 *** | 0.879 *** | 0.786 *** | 0.618 *** | 0.622 *** | 1 | |
Behavioral intention | 0.375 *** | 0.287 *** | 0.298 *** | 0.414 *** | 0.394 *** | 0.313 *** | 0.501 *** | 0.372 *** | 0.430 *** | 0.468 *** | 1 |
Predictor | B | β | t | F | R2 | Adjusted R2 |
---|---|---|---|---|---|---|
Criterion = Behavioral Intention | ||||||
Constant | 7.543 | 3.976 *** | ||||
Facilitating conditions | 0.923 | 0.394 | 5.817 *** | |||
Supervisor influence | 0.832 | 0.232 | 3.431 ** | 40.394 *** | 0.293 | 0.286 |
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Chang, M.-Y.; Kuo, F.-L.; Lin, T.-R.; Li, C.-C.; Lee, T.-Y. The Intention and Influence Factors of Nurses’ Participation in Telenursing. Informatics 2021, 8, 35. https://doi.org/10.3390/informatics8020035
Chang M-Y, Kuo F-L, Lin T-R, Li C-C, Lee T-Y. The Intention and Influence Factors of Nurses’ Participation in Telenursing. Informatics. 2021; 8(2):35. https://doi.org/10.3390/informatics8020035
Chicago/Turabian StyleChang, Mei-Ying, Fang-Li Kuo, Ting-Ru Lin, Chin-Ching Li, and Tso-Ying Lee. 2021. "The Intention and Influence Factors of Nurses’ Participation in Telenursing" Informatics 8, no. 2: 35. https://doi.org/10.3390/informatics8020035
APA StyleChang, M. -Y., Kuo, F. -L., Lin, T. -R., Li, C. -C., & Lee, T. -Y. (2021). The Intention and Influence Factors of Nurses’ Participation in Telenursing. Informatics, 8(2), 35. https://doi.org/10.3390/informatics8020035