Human-Centric Artificial Intelligence (HCAI) is rapidly emerging as a transformative paradigm, shifting the focus of AI development from mere algorithmic optimization to ethical alignment, user trust, and societal integration most notably within the critical domain of healthcare. This review offers a comprehensive examination of the principles, architecture, challenges, and future directions underpinning HCAI, with an emphasis on its applications in health-related contexts. We begin by exploring the conceptual foundations of human-centricity, including core values such as transparency, fairness, autonomy, and privacy, all of which are essential in sensitive environments like clinical decision-making and patient data management. The paper then surveys key enabling technologies such as Explainable AI (XAI), Human-in-the-Loop learning, affective computing, and multi-agent collaboration demonstrating how these approaches operationalize human alignment in real-world systems, especially in personalized healthcare delivery and diagnostic support. Societal implications are critically evaluated, encompassing trust, data sovereignty, algorithmic bias, regulatory compliance, and cross-cultural adaptability, which are particularly pronounced in global health systems. We highlight the limitations of existing benchmarks and propose a multi-metric, user-centered evaluation framework capable of assessing both technical robustness and alignment with human values in healthcare and beyond. Finally, we identify open research challenges and outline a strategic agenda that integrates cognitive science, ethical theory, and participatory design. This review aims to serve as both a foundational reference and a forward-looking roadmap for researchers, developers, and policymakers striving to build AI systems that are not only intelligent, but also responsible, inclusive, and aligned with human dignity, particularly in life-critical domains like healthcare
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Zakaria Benlalia
Ghada Al-Kateb
Mourad Mzili
Mesopotamian Journal of Artificial Intelligence in Healthcare
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Benlalia et al. (Sat,) studied this question.
www.synapsesocial.com/papers/689a0939e6551bb0af8ce754 — DOI: https://doi.org/10.58496/mjaih/2025/017