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. 2025 Jul;33(4):2034-2040.
doi: 10.1177/09287329241292168. Epub 2025 Mar 3.

Machine learning for improved medical device management: A focus on infant incubators

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Machine learning for improved medical device management: A focus on infant incubators

Lemana Spahić et al. Technol Health Care. 2025 Jul.

Expression of concern in

  • Expression of concern.
    [No authors listed] [No authors listed] Technol Health Care. 2025 Nov 12:9287329251392360. doi: 10.1177/09287329251392360. Online ahead of print. Technol Health Care. 2025. PMID: 41223024 No abstract available.

Abstract

BackgroundPoorly regulated and insufficiently maintained medical devices (MDs) carry high risk on safety and performance parameters impacting the clinical effectiveness and efficiency of patient diagnosis and treatment. As infant incubators are used as a form of fundamental healthcare support for the most sensitive population, prematurely born infants, special care mus be taken to ensure their proper functioning. This is done through a standardized process of post-market surveillance.ObjectiveTo address the issue of faulty infant incubators being undetected and used between yearly post-market surveillance, an automated system based on machine learning was developed for prediction of infant incubator performance status.MethodsIn total, 1997 samples were collected during the inspection process of infant incubator inspections performed by an ISO 17020 accredited laboratory at various healthcare institutions in Bosnia and Herzegovina. Various machine learning algorithms were considered, including Decision Tree (DT), Random Forest (RF), Naïve Bayes (NB) and Logistic Regression (LR) for the development of the automated system.ResultsThe aforementioned algorithms were selected because of their ability to handle large datasets and their potential for achieving high prediction accuracy. The 0.93 AUC of Naïve Bayes indicates that it is overall stronger in predictive capabilities than decision tree and random forest which displayed superior accuracy in comparison to Naïve Bayes.ConclusionThe results of this study demonstrate that machine learning algorithms can be effectively used to predict infant incubator performance status on the basis of measurements taken during post-market surveillance. Adoption of these automated systems based on artificial intelligence will help in overcoming challenges of ensuring quality of infant incubators that are already being used in healthcare institutions.

Keywords: artificial intelligence; clinical engineering; infant incubators; medical device; performance assessment.

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Conflict of interest statement

Declaration of conflicting interestsThe authors declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.

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