Critical appraisal of machine learning prognostic models for acute pancreatitis: protocol for a systematic review.
Amier HassanBrian CritelliIla LahootiAli LahootiNate MatzkoJan Niklas AdamsLukas LissJustin QuionDavid RestrepoMelica NikahdStacey CulpLydia NohKathleen TongJun Sung ParkVenkata AkshintalaJohn A WindsorNikhil K MullGeorgios I PapachristouLeo Anthony CeliPeter J LeePublished in: Diagnostic and prognostic research (2024)
Acute pancreatitis (AP) is an acute inflammatory disorder that is common, costly, and is increasing in incidence worldwide with over 300,000 hospitalizations occurring yearly in the United States alone. As its course and outcomes vary widely, a critical knowledge gap in the field has been a lack of accurate prognostic tools to forecast AP patients' outcomes. Despite several published studies in the last three decades, the predictive performance of published prognostic models has been found to be suboptimal. Recently, non-regression machine learning models (ML) have garnered intense interest in medicine for their potential for better predictive performance. Each year, an increasing number of AP models are being published. However, their methodologic quality relating to transparent reporting and risk of bias in study design has never been systematically appraised. Therefore, through collaboration between a group of clinicians and data scientists with appropriate content expertise, we will perform a systematic review of papers published between January 2021 and December 2023 containing artificial intelligence prognostic models in AP. To systematically assess these studies, the authors will leverage the CHARMS checklist, PROBAST tool for risk of bias assessment, and the most current version of the TRIPOD-AI. (Research Registry ( http://www.reviewregistry1727 .).
Keyphrases
- artificial intelligence
- machine learning
- big data
- transcription factor
- end stage renal disease
- healthcare
- randomized controlled trial
- ejection fraction
- newly diagnosed
- emergency department
- chronic kidney disease
- intensive care unit
- liver failure
- type diabetes
- palliative care
- peritoneal dialysis
- hepatitis b virus
- adipose tissue
- meta analyses
- metabolic syndrome
- acute respiratory distress syndrome
- quality improvement
- weight loss
- aortic dissection
- patient reported outcomes
- respiratory failure
- drug induced
- glycemic control