Hebenstreit, K.†, Convalexius, C.†, Reichl, S.†, Huber, S., Bock, C., & Samwald, M. (2025). Scientific Reports (in publication). · †Equal contribution · Preprint: arXiv:2508.16613
General-purpose artificial intelligence (GPAI) is widely expected to transform scientific discovery, but in biomedicine its real-world impact remains uncertain. This study provides a systematic analysis of how much current biomedical research could realistically be accelerated by GPAI, and where fundamental limits remain.
Large task-level speed-ups do not translate into equivalent reductions in overall project duration. Many biomedical projects are constrained by biological processes that cannot be compressed (cell growth, organism development, disease progression).
Modeling a hypothetical 3-year project with 3 months of incompressible biological processes:
| Project duration | Physical: No GPAI | Physical: Next-level (2x) | Physical: Max-level (25x) |
|---|---|---|---|
| Cognitive: No GPAI | 36 months | 32 months | 27 months |
| Cognitive: Next-level (2x) | 24 months | 20 months | 15 months |
| Cognitive: Max-level (100x) | 12 months | 7.7 months | 3.6 months |
Even with maximum acceleration, the lower bound is ~3.6 months (10x overall), with incompressible biological processes dominating.
Eight senior biomedical researchers participated in an expert survey.
How is time distributed across research tasks?
|
Project durations Experts reported average project durations of ~6 years for high-impact publications. |
Are maximum-level acceleration estimates plausible?
What limits acceleration potential?
|
Limiting factors All experts identified scientific community assimilation as a moderate to crucial bottleneck for realizing acceleration benefits. |
Realizing the full potential of GPAI-driven research acceleration will require coordinated investments in automation infrastructure, improved data accessibility, and reforms in research organization and publication practices.
This repository contains the data and R scripts used to generate the figures:
| Figure | Description | Data | Script |
|---|---|---|---|
| 1 | GPAI capability framework | — | plot_capability_model.R |
| 2 | Major research tasks | — | (graphical software) |
| 3 | Acceleration factors | acceleration_factors.csv |
plot_accelerations.R |
| 4 | Project time durations | project_times.csv |
plot_project_times.R |
| 5 | Plausibility estimates | plausibility.csv |
plot_plausibility_estimates.R |
| 6 | Limiting factors | limiting_factors.csv |
plot_limitation_estimates.R |
If you find our work useful in your research, please cite:
Scientific Reports (2025)
Hebenstreit, K.†, Convalexius, C.†, Reichl, S.†, Huber, S., Bock, C., & Samwald, M. (2025). What are the limits to biomedical research acceleration through general-purpose AI? Scientific Reports (in publication).
ArXiv Preprint (2025)
† Equal contribution




