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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Jul 3, 2025
Open Peer Review Period: Jul 4, 2025 - Aug 29, 2025
Date Accepted: Dec 18, 2025
(closed for review but you can still tweet)

The final, peer-reviewed published version of this preprint can be found here:

Scalable Agile Framework for Execution in AI for Medical AI Ethics Policy Design in Small- and Medium-Sized Enterprises

Nemteanu I, Mancebo A Jr, Joe L, Lopez R, Lopez P, Pettine W

Scalable Agile Framework for Execution in AI for Medical AI Ethics Policy Design in Small- and Medium-Sized Enterprises

J Med Internet Res 2026;28:e80028

DOI: 10.2196/80028

PMID: 41740154

PMCID: 12935426

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

A Practical SAFE-AI Framework for Small and Medium-Sized Enterprises Developing Medical Artificial Intelligence Ethics Policies

  • Ion Nemteanu; 
  • Adir Mancebo Jr; 
  • Leslie Joe; 
  • Ryan Lopez; 
  • Patricia Lopez; 
  • Warren Pettine

ABSTRACT

Background:

Artificial intelligence (AI) is transforming patient care but also raises ethical questions such as bias and transparency. While a range of well-established frameworks exist to guide responsible AI practice, most were designed for academic or regulatory settings and can be hard to operationalize within fast-moving, resource-limited small and medium-sized enterprises (SMEs).

Objective:

We introduce the Scalable Agile Framework for Execution in AI (SAFE-AI). SAFE-AI embeds ethical safeguards such as fairness, transparency, and continuous monitoring within standard Agile product-development cycles, while remaining practical for organizations without dedicated ethics teams.

Methods:

We followed a design-science, practice-oriented approach over 20 weeks. After a needs-finding workshop, a cross-functional team from an SME, ethics researchers, and academic partners met weekly in Agile sprints, continuously reviewing relevant literature and regulations. Through three prototype-feedback cycles the group iteratively refined a four-phase SAFE-AI lifecycle, acceptance/fairness/transparency checklists, and scenario-based responsibility metrics, recording decisions until unanimous consensus.

Results:

The co-design process produced a four-phase SAFE-AI life-cycle: Discovery, Assessment, Development, Monitoring. SAFE-AI’s phase-specific checklists melds acceptance, fairness, and transparency metrics into each Agile sprint. A novel scenario-based probability-analogy mapping (SPAMM) method was added to translate model risk and uncertainty into plain-language narratives for non-technical stakeholders, forming the framework’s core “responsibility metrics” layer. To keep oversight lightweight, SAFE-AI defines clear triggers that automatically reopen ethical review whenever models are retrained, tuned, or fed new data, ensuring consistent re-evaluation without duplicating earlier work.

Conclusions:

SAFE-AI shows that meaningful ethical safeguards can be embedded within standard Agile workflows without slowing delivery or requiring a full-time ethics team. Its checklist-driven phases and automatic review triggers provide a lightweight yet defensible way to track fairness, transparency, and responsibility throughout the model lifecycle.


 Citation

Please cite as:

Nemteanu I, Mancebo A Jr, Joe L, Lopez R, Lopez P, Pettine W

Scalable Agile Framework for Execution in AI for Medical AI Ethics Policy Design in Small- and Medium-Sized Enterprises

J Med Internet Res 2026;28:e80028

DOI: 10.2196/80028

PMID: 41740154

PMCID: 12935426

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