
NICE has recently completed a series of stakeholder workshops exploring the potential applications, opportunities, and challenges of Generative AI (GenAI) in health economic evaluation (HEE). These discussions build on NICE’s 2024 Position Statement on the Use of AI in Evidence Generation, which acknowledges that AI methods are likely to play an increasing role in future HTA submissions — provided they are used transparently, responsibly, and give clear added value.
The overarching NICE guidance is clear:
Health economic evaluation is one of the most resource-intensive elements of HTA submissions — and therefore one of the areas where GenAI could bring the greatest benefit. The GenAI technology offers clear opportunities to improve efficiency and quality by automating repetitive tasks, accelerating evidence identification and supporting the conceptualisation and implementation of economic models.
GenAI can rapidly extract input parameters from the literature, generate or adapt code for model construction, and even draft technical documentation. The potential time savings are substantial, but so are the risks — particularly around the consistency and robustness of AI-generated outputs.
NICE’s position signals both openness and caution. The agency recognises the potential of AI but expects full human oversight, justification of use, and transparency. This marks a step in the right direction: a green light to explore AI in modelling, balanced with clear expectations for accountability and rigour.
Pharmaceutical companies should therefore start exploring AI-supported evidence generation, piloting tools that improve model development, validation, and reporting — always with human validation at the core.
From a technical perspective, GenAI can add value at nearly every stage of health economic model development:
However, human oversight remains indispensable. AI can generate, suggest, or verify, but cannot judge context, clinical plausibility, or policy relevance. Economists and technical experts must interpret AI outputs, resolve ambiguities, and ensure final models reflect methodological best practice.
NICE’s recent workshops and position statements mark an important first step towards mainstreaming AI in HTA. By embracing AI thoughtfully — as an accelerator rather than a substitute for expertise — the industry can achieve faster, more consistent, and higher-quality evaluations while maintaining the scientific integrity on which HTA decisions depend.
1) NICE Generative AI in health economic evaluation - https://www.nice.org.uk/what-nice-does/our-research-work/hta-lab/hta-lab-projects#generative
2) Use of AI in evidence generation: NICE position statement - https://www.nice.org.uk/position-statements/use-of-ai-in-evidence-generation-nice-position-statement

