Leveraging the TOE Framework: Examining the Potential of Mobile Health (mHealth) to Mitigate Health Inequalities
Abstract
:1. Introduction
1.1. mHealth Potential to Reduce Health Disparities
1.2. Theoretical Framework and Hypotheses Development
1.2.1. Technological Factors (TF)
1.2.2. Organizational Factors (OF)
1.2.3. Environmental Factors (EF)
1.3. Study Objectives
2. Materials and Methods
2.1. Participants and Procedure
2.2. Research Instrument
2.3. Data Collection and Analysis Procedure
2.4. Ethical Approval
3. Results
3.1. Demographic Information
3.2. Structural Equation Model
3.2.1. Standardized Estimation of Regression Weights
3.2.2. Standardized Estimation of Correlation among Latent Variables
3.2.3. Estimation of Covariances among Latent Variables
3.2.4. Model Fit Indices
3.2.5. Standardized Estimation of Regression Weights and Validation of the Hypotheses
4. Discussion
4.1. Study Limitations
4.2. Note to Readers
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Construct | Items | Measure | Sources |
---|---|---|---|
Relative Advantage (RA) | RA4 | I think using mobile for healthcare improves patients’ service and lowers the costs on healthcare provision. | [27,39] |
RA5 | I think using mobile for healthcare brings in new service opportunities. | ||
RA6 | I think mHealth supports medical emergency response. | ||
RA7 | I think mHealth helps improve users’ experience by offering better services. | ||
Compatibility (CP) | CP1 | I think using mobile for healthcare is consistent with our practices. | [75] |
CP2 | I think using mobile for healthcare fits our organizational culture. | ||
CP3 | I think that, overall, it is easy to incorporate mHealth into our organization. | ||
CP4 | I think mHealth apps are compatible with most of today’s hand-held devices. | ||
Management Support (MS) | MS1 | I think the adoption of mHealth for healthcare delivery is encouraged by our senior management. | [41] |
MS2 | I think our senior management is willing to support mHealth adoption campaigns. | ||
MS3 | I think healthcare delivery through mHealth is a strategic endeavor that our top management places a high priority on. | ||
MS4 | I think our top management is enthusiastic about using mobile phone technologies in the healthcare industry. | ||
Organizational Readiness (OG) | OG1 | I think the hospital has the required resources to adopt mHealth solutions. | [56,57] |
OG2 | The hospital/health department has organized workshops or trainings on ICT/computer proficiency in order to effectively adopt mHealth solutions for patient care. | ||
OG3 | I think the hospital aims to encourage mHealth solutions in the future. | ||
External Support (ES) | ES1 | I think external funding agencies (such as Asian Development Bank, WHO, etc.) encourage adopting new health ICT (e.g., mHealth for quality patient care). | [76] |
ES2 | I think health department can offer necessary training for using mHealth in healthcare | ||
ES3 | I think the health department can offer efficient technical assistance for the use of mHealth in healthcare | ||
Government Regulation (GR) | GR1 | I think government regulations encourage adopting new information technology (e.g., mHealth for quality patient care). | [75] |
GR2 | I think the government can provide the technical support, training, and funding to increase the usage of mHealth services | ||
GR3 | I think the government can support safeguarding security and privacy concerns while using the mHealth | ||
GR4 | I think government can be adaptable towards the regulations for advances in mHealth technologies | ||
mHealth Adoption (AD) | AD1 | I think adopting an mHealth service will be a pleasant experience. | [17] |
AD2 | I think mHealth can provide an opportunity to respond to patients more quickly. | ||
AD3 | I spend a lot of time using mHealth applications. | ||
AD4 | I think adopting mHealth can enable faster access to patient data. | ||
Health Disparity Reduction (HD) | HD1 | I think mHealth is an effective solution for reducing health disparities. | [25] |
HD2 | I am satisfied with the impact of mHealth adoption on improving healthcare access for marginalized communities. | ||
HD3 | mHealth initiatives can address the specific health needs of underserved populations. | ||
HD4 | I think mHealth has the potential to reduce health disparities in the healthcare setting/areas where I practice medicine. | ||
HD5 | I recommend mHealth solutions to colleagues for addressing health disparities. |
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Doctors | Nurses | χ2 Value | p-Value | Phi/ Cramer’s V | |
---|---|---|---|---|---|
Gender | |||||
Male | 117 (78%) | 33 (22%) | 47.327 | 0.000 | 0.388 |
Female | 65 (36.6%) | 99 (60.4%) | |||
Total | 182 (100%) | 132 (100%) | |||
Age | |||||
<35 years | 174 (95.6%) | 94 (71.2%) | 42.560 | 0.000 | 0.368 |
36–50 years | 2 (1.1%) | 31 (23.5%) | |||
>50 years | 6 (3.3%) | 7 (5.3%) | |||
Total | 182 (100%) | 132 (100%) | |||
Experience | |||||
<5 years | 105 (57.7%) | 88 (66.7%) | 34.114 | 0.000 | 0.330 |
5–10 years | 63 (34.6%) | 38 (28.8%) | |||
11–15 Semester | 8 (4.4%) | 5 (3.8%) | |||
>15 years | 6 (3.3%) | 1 (0.8%) | |||
Total | 182 (100%) | 132 (100%) | |||
Setting | |||||
Primary Healthcare | 84 (46.1%) | 27 (20.5%) | 108.695 | 0.000 | 0.588 |
Medical/Surgical | 56 (30.8%) | 15 (11.4%) | |||
Intensive Care | 11 (6%) | 44 (33.3%) | |||
Emergency Unit | 1 (0.5%) | 35 (26.5%) | |||
Operating Unit | 30 (16.5%) | 11 (8.3%) | |||
Total | 182 (100%) | 132 (100%) |
Factor | Factor | Estimate | S.E | C.R | p-Value | Result | ||
---|---|---|---|---|---|---|---|---|
Relative Advantage | –> | mHealth Adoption | 0.045 | 0.141 | 0.320 | 0.749 | Rejected | |
Compatibility | –> | mHealth Adoption | 0.126 | 0.123 | 1.018 | 0.309 | Rejected | |
Management support | –> | mHealth Adoption | 0.357 | 0.067 | 5.318 | *** | Accepted | |
Organization readiness | –> | mHealth Adoption | 0.047 | 0.059 | 0.800 | 0.424 | Rejected | |
External support | –> | mHealth Adoption | 0.166 | 0.082 | 2.024 | *** | Accepted | |
Government regulations | –> | mHealth Adoption | 0.057 | 0.043 | 1.323 | 0.186 | Rejected | |
mHealth adoption | –> | Health disparity reduction | 0.109 | 0.076 | 1.426 | 0.154 | Rejected |
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Bin Naeem, S.; Azam, M.; Kamel Boulos, M.N.; Bhatti, R. Leveraging the TOE Framework: Examining the Potential of Mobile Health (mHealth) to Mitigate Health Inequalities. Information 2024, 15, 176. https://doi.org/10.3390/info15040176
Bin Naeem S, Azam M, Kamel Boulos MN, Bhatti R. Leveraging the TOE Framework: Examining the Potential of Mobile Health (mHealth) to Mitigate Health Inequalities. Information. 2024; 15(4):176. https://doi.org/10.3390/info15040176
Chicago/Turabian StyleBin Naeem, Salman, Mehreen Azam, Maged N. Kamel Boulos, and Rubina Bhatti. 2024. "Leveraging the TOE Framework: Examining the Potential of Mobile Health (mHealth) to Mitigate Health Inequalities" Information 15, no. 4: 176. https://doi.org/10.3390/info15040176
APA StyleBin Naeem, S., Azam, M., Kamel Boulos, M. N., & Bhatti, R. (2024). Leveraging the TOE Framework: Examining the Potential of Mobile Health (mHealth) to Mitigate Health Inequalities. Information, 15(4), 176. https://doi.org/10.3390/info15040176