Skip to main content
Enterprise AI Analysis: Healthcare workers' readiness for artificial intelligence and organizational change: a quantitative study in a university hospital

Enterprise AI Analysis

Healthcare Worker Readiness for AI and Organizational Change: A University Hospital Study

This analysis explores the readiness of healthcare professionals for medical Artificial Intelligence (AI) and their perception of organizational change in a university hospital setting. Key findings reveal a positive disposition towards AI integration and a low-level but significant positive correlation between AI readiness and openness to change, with demographic variations identified.

Executive Impact: Key Findings at a Glance

Understand the critical metrics driving healthcare AI adoption and organizational adaptability within your enterprise.

0 Avg. AI Readiness (MAIRS-MS)
0 Avg. Openness to Change (OTOC)
0 Correlation: AI Readiness & Change Openness
0 Healthcare Professionals Surveyed

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Healthcare Workforce Preparedness for AI

The study indicates that healthcare workers at the university hospital are generally prepared for the integration of medical AI and hold a positive perception of organizational change. While there's a significant positive relationship between AI readiness and openness to change, it's identified as a low-level correlation (r=0.236, R²=5%). This suggests that while positive, the connection could be strengthened through targeted interventions, potentially due to insufficient knowledge about AI-related change.

Study Design and Approach

This research utilized a cross-sectional descriptive quantitative method, surveying 195 healthcare workers at an Istanbul university hospital. Data was collected using the Medical Artificial Intelligence Readiness Scale for Medical Students (MAIRS-MS) and the Openness Toward Organizational Change (OTOC) scale. Validity and reliability were established through Exploratory Factor Analysis (EFA), Confirmatory Factor Analysis (CFA), and statistical analysis including Pearson correlation and Structural Equation Modeling (SEM).

Variations by Professional Group

Significant differences in AI readiness and openness to change were observed across various demographic groups. For example, males, doctors, and internal sciences professionals showed higher AI readiness. Conversely, postgraduate/doctoral graduates, surgical sciences, and nurses demonstrated higher openness to organizational change. These findings underscore the need for tailored strategies to address distinct concerns and expectations among diverse healthcare professionals when implementing AI.

Strategic Implications for AI Adoption

The study strongly recommends raising employee awareness about the benefits of AI in healthcare and planning necessary training activities. It is also crucial to continually assess healthcare workers' openness to organizational change to preemptively address resistance. Future research should investigate AI perceptions and attitudes more deeply across broader samples and diverse settings (private/public) to enhance generalizability and support comprehensive educational initiatives.

3.95/5 Average Perception of Openness to Organizational Change

Enterprise Process Flow: Research Methodology

Cross-sectional Quantitative Research
195 Healthcare Workers (University Hospital)
MAIRS-MS & OTOC Scale Application
Validity & Reliability Checks (EFA, CFA)
Statistical Analysis (Pearson, SEM)
Demographic Variable Differences

Key Demographic Differences

Demographic Variable Higher AI Readiness (MAIRS-MS) Higher Openness to Change (OTOC)
Gender
  • Males
  • No significant difference
Education Level
  • No significant difference
  • Postgraduate/Doctoral Graduates
Position/Title
  • Doctors
  • Nurses
Department
  • Internal Medical Sciences
  • Surgical Sciences

Calculate Your Potential AI Impact

Estimate the efficiency gains and cost savings your organization could achieve by strategically implementing AI.

Estimated Annual Savings $0
Annual Hours Reclaimed 0

Your AI Implementation Roadmap

A phased approach to integrate AI within your healthcare organization, ensuring smooth transition and maximum impact.

Phase 01: Assessment & Strategy

Conduct a readiness assessment, define AI objectives, identify key use cases, and develop a comprehensive AI strategy aligned with organizational goals.

Phase 02: Pilot Program & Training

Implement pilot AI applications in a controlled environment, gather feedback, and initiate targeted training programs for healthcare workers based on identified needs and demographic insights.

Phase 03: Scaled Deployment & Integration

Expand successful pilot programs across relevant departments, ensuring seamless integration with existing systems and continuous monitoring of performance and user adoption.

Phase 04: Optimization & Future Planning

Continuously optimize AI models, explore new AI technologies and applications, and establish robust governance and ethical frameworks for sustainable AI growth.

Ready to Transform Your Healthcare Operations with AI?

Leverage our expertise to build a data-driven AI strategy tailored to your organization's unique needs and workforce readiness.

Ready to Get Started?

Book Your Free Consultation.

Let's Discuss Your AI Strategy!

Lets Discuss Your Needs


AI Consultation Booking