A2 Refereed review article in a scientific journal

Scoping review on the economic aspects of machine learning applications in healthcare




Authorsvon Gerich, Hanna; Helenius, Mikael; Hörhammer, Iiris; Moen, Hans; Peltonen, Laura-Maria

PublisherElsevier BV

Publication year2026

Journal: International Journal of Medical Informatics

Article number106103

Volume205

ISSN1386-5056

eISSN1872-8243

DOIhttps://doi.org/10.1016/j.ijmedinf.2025.106103

Publication's open availability at the time of reportingOpen Access

Publication channel's open availability Partially Open Access publication channel

Web address https://doi.org/10.1016/j.ijmedinf.2025.106103

Self-archived copy’s web addresshttps://research.utu.fi/converis/portal/detail/500135738

Self-archived copy's licenceCC BY

Self-archived copy's versionPublisher`s PDF


Abstract
Background

The development and use of artificial intelligence and machine learning technologies in healthcare have increased, prompting a need for evidence on their safety and value. Economic evaluations support healthcare decision-making and resource allocation. This scoping review aimed to map and synthesize current approaches to evaluating the economic aspects of machine learning based technologies implemented in healthcare.

Methods

Following the updated JBI guidance for scoping reviews, six databases (PubMed, CINAHL, Cochrane Library, Embase, Scopus, and IEEE Xplore) were searched for studies evaluating the economic aspects of machine learning-based technologies within healthcare. No exclusions were applied to healthcare settings, healthcare professionals or used economic evaluation methods. The results of data extraction were analyzed using descriptive statistics and inductive coding. The reporting of the studies was compared against the CHEERS-AI statement.

Results

A total of 6332 references were retrieved, with 18 studies included in the review. The studies comprised economic evaluations (n = 9), impact evaluations (n = 5), and performance evaluations (n = 4), with cost-effectiveness analysis being the most frequently used economic evaluation method (n = 8). The comparison of the studies to the reporting guidelines revealed gaps in the reporting of details from economic evaluations and the artificial intelligence nature of the technologies. Overall, the study alignment with the CHEERS-AI items on average was 39.6 %, with 64.1 % alignment with economic evaluation details, and 21.3 % alignment with key details related to the artificial intelligence nature of the evaluated technologies.

Conclusions

The current literature evaluating the economic aspects of machine learning-based technologies implemented in healthcare reveals gaps in coherence and coverage. Frameworks guiding artificial intelligence development should be refined to incorporate components related to system evaluation and post-implementation considerations. Further, multidisciplinary collaboration should be enhanced and promoted.


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Funding information in the publication
This research did not receive any specific grant from funding agencies in the public, commercial, or not-for-profit sectors.
This work was supported by the Strategic Research Council at the Academy of Finland (Project #352501 and #352503), Business Finland (3964/31/2024), Research Council of Finland (Flagship programme: Finnish Center for Artificial Intelligence FCAI, and grants 352986, 358246) and EU (H2020 grant 101016775 and NextGenerationEU).


Last updated on 26/01/2026 04:44:01 PM