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Transforming healthcare through just, equitable and quality driven artificial intelligence solutions in South Asia
10
Zitationen
15
Autoren
2025
Jahr
Abstract
AI can transform healthcare in LMICs by improving access, reducing costs, and enhancing efficiency. However, challenges such as safety, bias, and the resource constraints need to be addressed. Further, collaboration across domains is essential to develop capacity, user-friendly tools, and training. Ethical considerations should be central to AI deployment. By emphasizing gender equity, fairness, and responsible design, LMICs can harness AI's power to enhance healthcare outcomes and advance equitable care.
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Autoren
Institutionen
- University of Applied Sciences Potsdam(DE)
- Institute for Social and Environmental Research-Nepal(NP)
- University of Colombo(LK)
- Bangladesh Institute of Development Studies(BD)
- Dhulikhel Hospital(NP)
- Nepal Development Research Institute(NP)
- Aga Khan University(PK)
- National University of Sciences and Technology(PK)