Machine learning-augmented interventions in perioperative care: a systematic review and meta-analysis

We lack evidence on the cumulative effectiveness of machine learning (ML)-driven interventions in perioperative settings. Therefore, we conducted a systematic review to appraise the evidence on the impact of ML-driven interventions on perioperative outcomes. Ovid MEDLINE, CINAHL, Embase, Scopus, Pub...

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Veröffentlicht in:British journal of anaesthesia : BJA 2024-12, Vol.133 (6), p.1159-1172
Hauptverfasser: Mehta, Divya, Gonzalez, Xiomara T., Huang, Grace, Abraham, Joanna
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Sprache:eng
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Zusammenfassung:We lack evidence on the cumulative effectiveness of machine learning (ML)-driven interventions in perioperative settings. Therefore, we conducted a systematic review to appraise the evidence on the impact of ML-driven interventions on perioperative outcomes. Ovid MEDLINE, CINAHL, Embase, Scopus, PubMed, and ClinicalTrials.gov were searched to identify randomised controlled trials (RCTs) evaluating the effectiveness of ML-driven interventions in surgical inpatient populations. The review was registered with PROSPERO (CRD42023433163) and conducted according to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. Meta-analysis was conducted for outcomes with two or more studies using a random-effects model, and vote counting was conducted for other outcomes. Among 13 included RCTs, three types of ML-driven interventions were evaluated: Hypotension Prediction Index (HPI) (n=5), Nociception Level Index (NoL) (n=7), and a scheduling system (n=1). Compared with the standard care, HPI led to a significant decrease in absolute hypotension (n=421, P=0.003, I2=75%) and relative hypotension (n=208, P
ISSN:0007-0912
1471-6771
1471-6771
DOI:10.1016/j.bja.2024.08.007