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Navigating the uncommon: challenges in applying evidence-based medicine to rare diseases and the prospects of artificial intelligence solutions

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Abstract

The study of rare diseases has long been an area of challenge for medical researchers, with agonizingly slow movement towards improved understanding of pathophysiology and treatments compared with more common illnesses. The push towards evidence-based medicine (EBM), which prioritizes certain types of evidence over others, poses a particular issue when mapped onto rare diseases, which may not be feasibly investigated using the methodologies endorsed by EBM, due to a number of constraints. While other trial designs have been suggested to overcome these limitations (with varying success), perhaps the most recent and enthusiastically adopted is the application of artificial intelligence to rare disease data. This paper critically examines the pitfalls of EBM (and its trial design offshoots) as it pertains to rare diseases, exploring the current landscape of AI as a potential solution to these challenges. This discussion is also taken a step further, providing philosophical commentary on the weaknesses and dangers of AI algorithms applied to rare disease research. While not proposing a singular solution, this article does provide a thoughtful reminder that no ‘one-size-fits-all’ approach exists in the complex world of rare diseases. We must balance cautious optimism with critical evaluation of new research paradigms and technology, while at the same time not neglecting the ever-important aspect of patient values and preferences, which may be challenging to incorporate into computer-driven models.

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Fig. 1

Adapted from Bolignano and Pisano 2016; Djulbegovic and Guyatt 2017)

Fig. 2

(Adapted from Day, 2017)

Fig. 3

(Adapted from Day, 2017)

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Acknowledgements

The author would like to thank Alexandra Calzavara and Dr. Prateek Lala for their input on this manuscript’s topic and suggestions during the research and writing process. The author would also like to acknowledge the use of the design software, Canva, for development of this manuscript’s figures.

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Olivia Rennie conceptualized the topic of this manuscript, and completed all research involved in reviewing published literature in this area. Olivia Rennie wrote the manuscript and manually created all tables and figures.

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Correspondence to Olivia Rennie.

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Rennie, O. Navigating the uncommon: challenges in applying evidence-based medicine to rare diseases and the prospects of artificial intelligence solutions. Med Health Care and Philos (2024). https://doi.org/10.1007/s11019-024-10206-x

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