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Pediatric Predictive Artificial Intelligence Implemented in Clinical Practice from 2010 to 2021: A Systematic Review
5
Zitationen
17
Autoren
2025
Jahr
Abstract
To review pediatric artificial intelligence (AI) implementation studies from 2010 to 2021 and analyze reported performance measures.We searched PubMed/Medline, Embase CINHAL, Cochrane Library CENTRAL, IEEE, and Web of Science with controlled vocabulary. Inclusion criteria: AI intervention in a pediatric clinical setting that learns from data (i.e., data-driven, as opposed to rule-based) and takes actions to make patient-specific recommendations; published between 01/2010 and 10/2021; must have agency (AI must provide guidance that affects clinical care, not merely running in the background). We extracted study characteristics, target users, implementation setting, time span, and performance measures.Of 126 articles reviewed as full text, 17 met inclusion criteria. Eight studies (47%) reported both clinical outcomes and process measures, six (35%) reported only process measures and two (12%) reported only clinical outcomes. Five studies (30%) reported no difference in clinical outcomes with AI, four (24%) reported improvement in clinical outcomes compared with controls, two (12%) reported positive effects on clinical outcomes with use of AI but had no formal comparison or controls, and one (6%) reported poor clinical outcomes with AI. Twelve studies (71%) reported improvement in process measures, while two (12%) reported no improvement. Five (30%) studies reported on at least 1 human performance measure.While there are many published pediatric AI models, the number of AI implementations is minimal with no standardized reporting of outcomes, care processes, or human performance measures. More comprehensive evaluations will help elucidate mechanisms of impact.
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Autoren
Institutionen
- Emory University(US)
- University of Iowa Health Care(US)
- University of Iowa(US)
- University of Rochester(US)
- Wake Forest University(US)
- Miami VA Healthcare System(US)
- Vanderbilt University(US)
- Vanderbilt University Medical Center(US)
- Texas Children's Hospital(US)
- Baylor College of Medicine(US)
- Children's Healthcare of Atlanta(US)
- Woodruff Health Sciences Center(US)
- Atrium Health Wake Forest Baptist(US)
- Cincinnati Children's Hospital Medical Center(US)
- Yale New Haven Hospital(US)
- Children's Hospital of Philadelphia(US)
- University of Pennsylvania(US)
- The Ohio State University(US)
- Nationwide Children's Hospital(US)