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Policy, Financing, and Regulatory Barriers to Adopting AI-Powered Electrocardiography Interpretation Clinical Decision Support System in Ethiopia: A Qualitative Study

  • Minyahil Tadesse Boltena
  • , Ziad El-Khatib
  • , Amare Zewdie
  • , Paul Springer
  • , Abraham Tekola Gebremedhn
  • , Tsegab Alemayehu Bukate
  • , Yeabsira Alemu Fantaye
  • , Mirchaye Mekoro
  • , Mulatu Biru Shargie
  • , Abraham Sahilemichael Kebede
  • Ministry of Health
  • Armauer Hansen Research Institute
  • Jimma University Ethiopia
  • Karolinska Institutet
  • MI4People gGmbH
  • Health Poverty Action

Research output: Contribution to journalArticlepeer-review

Abstract

Cardiovascular diseases are a growing public health challenge in Ethiopia, worsened by limited access to diagnostics, including ECG, and shortages of specialized expertise. AI-powered ECG offers potential to improve diagnostic accuracy, efficiency, and access in resource-limited settings, but its adoption is influenced by policy, regulatory, financing, and governance factors, which are not well understood in Ethiopia. This study explored these system-level determinants using qualitative methods from September to October 2025 across federal institutions, four regions, and five tertiary hospitals. Twenty-five stakeholders, including policymakers, regulators, digital health experts, and hospital leaders, were interviewed. Data were transcribed verbatim, coded inductively, and analyzed thematically. Six themes emerged: policy and governance, regulatory frameworks, financing and cost considerations, data governance and bias, integration barriers, and sustainability recommendations. Findings showed AI-powered ECG interpretation aligns with Ethiopia’s digital health and noncommunicable disease priorities, but the country lacks AI-specific health policies, clear regulations, and dedicated budgets. Financing is largely donor-dependent, data governance and algorithmic bias remain concerns, and infrastructure gaps and digital skill shortages limit readiness. Study participants recommended learning from prior digital health projects, coordinated scale-up, phased implementation, and continuous monitoring. Effective adoption will require context-specific policies, sustainable financing, robust regulation, strong data governance, and careful system integration to ensure equitable, responsible, and sustainable use.

Original languageEnglish
Article number520
JournalInternational Journal of Environmental Research and Public Health
Volume23
Issue number4
DOIs
Publication statusPublished - Apr 2026

Keywords

  • artificial intelligence
  • electrocardiography interpretation
  • Ethiopia
  • political economy

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