A reimbursement framework for artificial intelligence in healthcare
- PMID: 35681002
- PMCID: PMC9184542
- DOI: 10.1038/s41746-022-00621-w
A reimbursement framework for artificial intelligence in healthcare
Abstract
Responsible adoption of healthcare artificial intelligence (AI) requires that AI systems which benefit patients and populations, including autonomous AI systems, are incentivized financially at a consistent and sustainable level. We present a framework for analytically determining value and cost of each unique AI service. The framework’s processes involve affected stakeholders, including patients, providers, legislators, payors, and AI creators, in order to find an optimum balance among ethics, workflow, cost, and value as identified by each of these stakeholders. We use a real world, completed, an example of a specific autonomous AI service, to show how multiple “guardrails” for the AI system implementation enforce ethical principles. It can guide the development of sustainable reimbursement for future AI services, ensuring the quality of care, healthcare equity, and mitigation of potential bias, and thereby contribute to realize the potential of AI to improve clinical outcomes for patients and populations, improve access, remove disparities, and reduce cost.
Conflict of interest statement
M.D.A.: reports the following competing interests: Investor, Director, Consultant, Digital Diagnostics; patents and patent applications assigned to the University of Iowa and Digital Diagnostics that are relevant to the subject matter of this manuscript; member, American Academy of Ophthalmology (AAO) AI Committee; member, Digital Medicine Payment Advisory Group (DMPAG) AI Workgroup. E.S.: Chair, RVS Update Committee (RUC); Chair, DMPAG; Chair, Neiman Health Policy Institute. MXR: Medical Director for Government Affairs, AAO. ASG: Chair of the AI Workgroup, subcommittee of the MAC New Technology Collaboration, Medical Director of Medical Policy, Noridian Healthcare Solutions.
References
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- Centers for Medicare & Medicaid Services. Proposal to Establish Values for Remote Retinal Imaging (CPT code 92229) (Pages 56ff). https://public-inspection.federalregister.gov/2021-14973.pdf (2021).
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- Oakden-Rayner, L. It’s complicated. A deep dive into the Viz/Medicare AI reimbursement model. https://thehealthcareblog.com/blog/2020/09/24/its-complicated-a-deep-div... (2020).
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