Ethical AI in the Healthcare Sector: Investigating Key Drivers of Adoption through the Multi-Dimensional Ethical AI Adoption Model (MEAAM)
Prathamesh Muzumdar, Apoorva Muley, Kuldeep Singh, Sumanth, Cheemalapati

TL;DR
This study introduces the Multi-Dimensional Ethical AI Adoption Model (MEAAM), a comprehensive framework analyzing ethical factors influencing AI adoption in healthcare, validated through empirical survey data and PLS-SEM analysis.
Contribution
The paper presents the MEAAM framework categorizing 13 ethical variables across four dimensions, providing an empirical basis for understanding ethical AI adoption in healthcare.
Findings
Normative concerns drive operational AI adoption
Overarching concerns influence systemic AI strategies
Epistemic concerns enhance trust and transparency
Abstract
The adoption of Artificial Intelligence (AI) in the healthcare service industry presents numerous ethical challenges, yet current frameworks often fail to offer a comprehensive, empirical understanding of the multidimensional factors influencing ethical AI integration. Addressing this critical research gap, this study introduces the Multi-Dimensional Ethical AI Adoption Model (MEAAM), a novel theoretical framework that categorizes 13 critical ethical variables across four foundational dimensions of Ethical AI Fair AI, Responsible AI, Explainable AI, and Sustainable AI. These dimensions are further analyzed through three core ethical lenses: epistemic concerns (related to knowledge, transparency, and system trustworthiness), normative concerns (focused on justice, autonomy, dignity, and moral obligations), and overarching concerns (highlighting global, systemic, and long-term ethical…
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Taxonomy
Methodstravel james
