Scoping Meta-Review of Methods Used to Assess Artificial Intelligence-Based Medical Devices for Heart Failure.
Rossella Di BidinoDavide PiaggioAndellini MartinaBeatriz Merino-BarbanchoLaura Lopez-PerezTianhui ZhuZeeshan RazaMelody Zhifang NiAndra MorrisonSimone BorsciGiuseppe FicoLeandro PecchiaErnesto IadanzaPublished in: Bioengineering (Basel, Switzerland) (2023)
Artificial intelligence and machine learning (AI/ML) are playing increasingly important roles, permeating the field of medical devices (MDs). This rapid progress has not yet been matched by the Health Technology Assessment (HTA) process, which still needs to define a common methodology for assessing AI/ML-based MDs. To collect existing evidence from the literature about the methods used to assess AI-based MDs, with a specific focus on those used for the management of heart failure (HF), the International Federation of Medical and Biological Engineering (IFMBE) conducted a scoping meta-review. This manuscript presents the results of this search, which covered the period from January 1974 to October 2022. After careful independent screening, 21 reviews, mainly conducted in North America and Europe, were retained and included. Among the findings were that deep learning is the most commonly utilised method and that electronic health records and registries are among the most prevalent sources of data for AI/ML algorithms. Out of the 21 included reviews, 19 focused on risk prediction and/or the early diagnosis of HF. Furthermore, 10 reviews provided evidence of the impact on the incidence/progression of HF, and 13 on the length of stay. From an HTA perspective, the main areas requiring improvement are the quality assessment of studies on AI/ML (included in 11 out of 21 reviews) and their data sources, as well as the definition of the criteria used to assess the selection of the most appropriate AI/ML algorithm.
Keyphrases
- artificial intelligence
- machine learning
- deep learning
- big data
- electronic health record
- heart failure
- acute heart failure
- healthcare
- convolutional neural network
- systematic review
- drinking water
- clinical decision support
- meta analyses
- mental health
- atrial fibrillation
- left ventricular
- adverse drug
- health information
- climate change