# The Responsible Health AI Readiness and Maturity Index (RHAMI): Applications for a Global Narrative Review of Leading AI Use Cases in Public Health Nutrition

**Authors:** Dominique J. Monlezun, Gary Marshall, Lillian Omutoko, Patience Oduor, Donald Kokonya, John Rayel, Claudia Sotomayor, Oleg Sinyavskiy, Timothy Aksamit, Keir MacKay, David Grindem, Dhairya Jarsania, Tarek Souaid, Alberto Garcia, Colleen Gallagher, Cezar Iliescu, Sagar B. Dugani, Maria Ines Girault, María Elizabeth De Los Ríos Uriarte, Nandan Anavekar

PMC · DOI: 10.3390/nu18010038 · Nutrients · 2025-12-22

## TL;DR

This paper introduces RHAMI, a new index to evaluate and guide the use of AI in public health nutrition, aiming to improve health and equity globally.

## Contribution

The first global, automated index for assessing the readiness and maturity of responsible health AI in public health nutrition.

## Key findings

- RHAMI identifies top-performing healthcare systems and leading AI use cases in nutrition.
- Multimodal edge AI and swarm agentic AI are highlighted as promising approaches for nutrition assessment and healthy eating.
- The index supports strategic planning and optimization of AI in healthcare aligned with local values and constraints.

## Abstract

Poor diet is the leading preventable risk factor for death worldwide, associated with over 10 million premature deaths and USD 8 trillion related costs every year. Artificial intelligence or AI is rapidly emerging as the most historically disruptive, innovatively dynamic, rapidly scaled, cost-efficient, and economically productive technology (which is increasingly providing transformative countermeasures to these negative health trends, especially in low- and middle-income countries (LMICs) and underserved communities which bear the greatest burden from them). Yet widespread confusion persists among healthcare systems and policymakers on how to best identify, integrate, and evolve the safe, trusted, effective, affordable, and equitable AI solutions that are right for their communities, especially in public health nutrition. We therefore provide here the first known global, comprehensive, and actionable narrative review of the state of the art of AI-accelerated nutrition assessment and healthy eating for healthcare systems, generated by the first automated end-to-end empirical index for responsible health AI readiness and maturity: the Responsible Health AI readiness and Maturity Index (RHAMI). The index is built and the analysis and review conducted by a multi-national team spanning the Global North and South, consisting of front-line clinicians, ethicists, engineers, executives, administrators, public health practitioners, and policymakers. RHAMI analysis identified the top-performing healthcare systems and their nutrition AI, along with leading use cases including multimodal edge AI nutrition assessments as ambient intelligence, the strategic scaling of practical embedded precision nutrition platforms, and sovereign swarm agentic AI social networks for sustainable healthy diets. This index-based review is meant to facilitate standardized, continuous, automated, and real-time multi-disciplinary and multi-dimensional strategic planning, implementation, and optimization of AI capabilities and functionalities worldwide, aligned with healthcare systems’ strategic objectives, practical constraints, and local cultural values. The ultimate strategic objectives of the RHAMI’s application for AI-accelerated public health nutrition are to improve population health, financial efficiency, and societal equity through the global cooperation of the public and private sectors stretching across the Global North and South.

## Full-text entities

- **Diseases:** death (MESH:D003643)

## Full text

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## Figures

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## References

56 references — full list in the complete paper: https://tomesphere.com/paper/PMC12787627/full.md

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Source: https://tomesphere.com/paper/PMC12787627