AI-Powered Transformation of Healthcare: Enhancing Patient Safety Through AI Interventions with the Mediating Role of Operational Efficiency and Moderating Role of Digital Competence—Insights from the Gulf Cooperation Council Region
Abstract
:1. Introduction
2. Literature Review
3. Theoretical Framework
3.1. Definition of Variables
- AI Interventions (Independent Variable)
- 2.
- Digital Competence (Moderator)
- 3.
- Operational Efficiency (Mediator)
- 4.
- Patient Safety (Dependent Variable)
3.2. Hypotheses
- H1: The AI interventions in healthcare organizations are likely to enhance operational efficiency.
- 2.
- H2: Operational efficiency within healthcare organizations is likely to augment patient safety.
- 3.
- H3: Operational efficiency mediates the relationship between AI interventions and patient safety.
- 4.
- H4: Digital competence moderates the relationship between AI interventions and operational efficiency, such that the relationship is stronger when digital competence is high.
- 5.
- H5: Introduction of AI-powered interventions in healthcare organizations are likely to enhance patient safety
4. Methodology
4.1. Research Design
4.2. Population and Sample
- Population:
- Sample Size:
- Homogeneity of Sample:
- Exclusion Criteria:
- Sampling Technique:
4.3. Measurement Scales
4.4. Pilot Study
4.5. Data Analysis Method
4.6. Ethical Considerations
5. Data Analysis
5.1. Descriptive Statistics and Demographics
5.2. Reliability and Convergent Validity
5.3. Discriminant Validity
5.4. Multicollinearity and Model Fit
5.5. Structural Model and Hypothesis Testing
5.6. Clinical Performance Metrics
6. Discussion
Comparison of Patient Safety Indicators
7. Theoretical and Practical Implications
8. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Questionnaire
Section 1: Demographic Information
|
(5-point Likert scale, 1 = Strongly Disagree, 5 Strongly Agree) |
Section 2: AI Interventions
Section 3: Operational Efficiency
Section 4: Digital Competence
Section 5: Patient Safety
|
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Demographic Variable | Category | Frequency (n) | Percentage (%) |
---|---|---|---|
Gender | Male | 180 | 60% |
Female | 120 | 40% | |
Age | 20–30 years | 100 | 33.3% |
31–40 years | 140 | 46.7% | |
41–50 years | 50 | 16.7% | |
Above 50 years | 10 | 3.3% | |
Role | Physicians | 120 | 40% |
Nurses | 100 | 33.3% | |
Administrative Staff | 80 | 26.7% | |
Nationality | Local | 93 | 31% |
Expatriates: | |||
South Asia | 72 | 24% | |
Southeast Asia | 51 | 17% | |
Middle East | 38 | 12.7% | |
Western Countries | 29 | 9.6% | |
Others | 17 | 5.7% | |
Experience in Healthcare | Less than 5 years | 60 | 20% |
5–10 years | 120 | 40% | |
11–20 years | 80 | 26.7% | |
More than 20 years | 40 | 13.3% |
Construct | Cronbach’s Alpha | Composite Reliability (CR) | Average Variance Extracted (AVE) |
---|---|---|---|
AI Interventions | 0.82 | 0.87 | 0.62 |
Operational Efficiency | 0.85 | 0.89 | 0.68 |
Digital Competence | 0.81 | 0.86 | 0.60 |
Patient Safety | 0.83 | 0.88 | 0.65 |
Construct | AI Interventions | Operational Efficiency | Digital Competence | Patient Safety |
---|---|---|---|---|
AI Interventions | 0.79 | 0.65 | 0.60 | 0.63 |
Operational Efficiency | 0.65 | 0.82 | 0.59 | 0.68 |
Digital Competence | 0.60 | 0.59 | 0.77 | 0.61 |
Patient Safety | 0.63 | 0.68 | 0.61 | 0.81 |
Constructs | AI Interventions | Operational Efficiency | Digital Competence | Patient Safety |
---|---|---|---|---|
AI Interventions | - | |||
Operational Efficiency | 0.72 | - | ||
Digital Competence | 0.68 | 0.65 | ||
Patient Safety | 0.70 | 0.74 | 0.67 | - |
Construct | VIF |
---|---|
AI Interventions | 2.10 |
Operational Efficiency | 2.25 |
Digital Competence | 1.95 |
Indicator | Value | Threshold | Result |
---|---|---|---|
SRMR | 0.061 | <0.08 | Good Fit |
R2 (Operational Efficiency) | 0.41 | >0.26 | Substantial |
R2 (Patient Safety) | 0.46 | >0.26 | Substantial |
Path | Beta Coefficient | T-Statistic | p-Value | Hypothesis Result |
---|---|---|---|---|
AI Interventions → Operational Efficiency | 0.48 | 7.89 | 0.001 | Supported |
Operational Efficiency → Patient Safety | 0.52 | 8.34 | 0.001 | Supported |
AI Interventions → Patient Safety | 0.34 | 6.12 | 0.002 | Supported |
Digital Competence → Operational Efficiency | 0.39 | 5.76 | 0.001 | Supported |
Digital Competence → Patient Safety | 0.19 | 3.98 | 0.002 | Supported |
Hospital | Medication Error Rate Reduction | Patient Wait Time Reduction | Diagnostic Accuracy Improvement | AI Usage Frequency |
---|---|---|---|---|
Hospital 1 | 4.2% to 1.7% | 55 min to 38 min | 88.9% to 95.0% | 70% increase |
Hospital 2 | 5.0% to 2.0% | 50 min to 35 min | 89.3% to 94.8% | 65% increase |
Hospital 3 | 4.8% to 1.5% | 49 min to 36 min | 87.5% to 94.5% | 72% increase |
Hospital 4 | 4.6% to 1.9% | 54 min to 39 min | 90.0% to 96.0% | 68% increase |
Hospital 5 | 4.4% to 1.8% | 53 min to 37 min | 89.7% to 95.5% | 74% increase |
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AlDhaen, F.S. AI-Powered Transformation of Healthcare: Enhancing Patient Safety Through AI Interventions with the Mediating Role of Operational Efficiency and Moderating Role of Digital Competence—Insights from the Gulf Cooperation Council Region. Healthcare 2025, 13, 614. https://doi.org/10.3390/healthcare13060614
AlDhaen FS. AI-Powered Transformation of Healthcare: Enhancing Patient Safety Through AI Interventions with the Mediating Role of Operational Efficiency and Moderating Role of Digital Competence—Insights from the Gulf Cooperation Council Region. Healthcare. 2025; 13(6):614. https://doi.org/10.3390/healthcare13060614
Chicago/Turabian StyleAlDhaen, Fatema Saleh. 2025. "AI-Powered Transformation of Healthcare: Enhancing Patient Safety Through AI Interventions with the Mediating Role of Operational Efficiency and Moderating Role of Digital Competence—Insights from the Gulf Cooperation Council Region" Healthcare 13, no. 6: 614. https://doi.org/10.3390/healthcare13060614
APA StyleAlDhaen, F. S. (2025). AI-Powered Transformation of Healthcare: Enhancing Patient Safety Through AI Interventions with the Mediating Role of Operational Efficiency and Moderating Role of Digital Competence—Insights from the Gulf Cooperation Council Region. Healthcare, 13(6), 614. https://doi.org/10.3390/healthcare13060614