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Effect of machine learning models on clinician prediction of postoperative complications: the Perioperative ORACLE randomised clinical trial.
Fritz, Bradley A; King, Christopher R; Abdelhack, Mohamed; Chen, Yixin; Kronzer, Alex; Abraham, Joanna; Tripathi, Sandhya; Ben Abdallah, Arbi; Kannampallil, Thomas; Budelier, Thaddeus P; Helsten, Daniel; Montes de Oca, Arianna; Mehta, Divya; Sontha, Pratyush; Higo, Omokhaye; Kerby, Paul; Gregory, Stephen H; Wildes, Troy S; Avidan, Michael S.
Affiliation
  • Fritz BA; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA. Electronic address: bafritz@wustl.edu.
  • King CR; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Abdelhack M; Department of Computer Science and Engineering, Washington University McKelvey School of Engineering, Saint Louis, MO, USA; Krembil Centre for Neuroinformatics, Centre for Addiction and Mental Health, Toronto, ON, Canada.
  • Chen Y; Department of Computer Science and Engineering, Washington University McKelvey School of Engineering, Saint Louis, MO, USA.
  • Kronzer A; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Abraham J; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA; Institute for Informatics, Data Science, and Biostatistics, Washington University School of Medicine, Saint Louis, MO, USA.
  • Tripathi S; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Ben Abdallah A; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Kannampallil T; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA; Institute for Informatics, Data Science, and Biostatistics, Washington University School of Medicine, Saint Louis, MO, USA.
  • Budelier TP; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Helsten D; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Montes de Oca A; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Mehta D; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Sontha P; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Higo O; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Kerby P; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Gregory SH; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
  • Wildes TS; Department of Anesthesiology, University of Nebraska Medical Center, Omaha, NE, USA.
  • Avidan MS; Department of Anesthesiology, Washington University School of Medicine, Saint Louis, MO, USA.
Br J Anaesth ; 133(5): 1042-1050, 2024 Nov.
Article in En | MEDLINE | ID: mdl-39261226
ABSTRACT

BACKGROUND:

Anaesthesiologists might be able to mitigate risk if they know which patients are at greatest risk for postoperative complications. This trial examined the impact of machine learning models on clinician risk assessment.

METHODS:

This single-centre, prospective, randomised clinical trial enrolled surgical patients aged ≥18 yr. Anaesthesiologists and nurse anaesthetists providing remote telemedicine support reviewed electronic health records with (assisted group) or without (unassisted group) reviewing machine learning predictions. Clinicians predicted the likelihood of postoperative 30-day all-cause mortality and postoperative acute kidney injury (AKI) within 7 days. The primary outcome was area under the receiver operating characteristic curve (AUROC) for clinician predictions of mortality and AKI, comparing AUROCs between assisted and unassisted assessments.

RESULTS:

We analysed 5071 patients (mean [range] age 58 [18-100] yr; 52% female) assessed by 89 clinicians. Of these, 98 (2.2%) patients died within 30 days of surgery and 450 (11.1%) patients sustained AKI. Clinician predictions agreed with the models more strongly in the assisted vs unassisted group (weighted kappa 0.75 vs 0.62 for death, mean difference 0.13 [95% CI 0.10-0.17]; and 0.79 vs 0.54 for AKI, mean difference 0.25 [95% CI 0.21-0.29]). Clinical prediction of death was similar between the assisted (AUROC 0.793) and unassisted (AUROC 0.780) groups (mean difference 0.013 [95% CI -0.070 to 0.097]; P=0.76). Prediction of AKI had an AUROC of 0.734 in the assisted group vs 0.688 in the unassisted group (difference 0.046 [95% CI -0.003 to 0.091]; P=0.06).

CONCLUSIONS:

Clinician performance was not improved by machine learning assistance. Further work is needed to clarify the role of machine learning in real-time perioperative risk stratification. CLINICAL TRIAL REGISTRATION NCT05042804.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Postoperative Complications / Acute Kidney Injury / Machine Learning Limits: Adolescent / Adult / Aged / Aged80 / Female / Humans / Male / Middle aged Language: En Journal: Br J Anaesth Year: 2024 Document type: Article Country of publication:

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Postoperative Complications / Acute Kidney Injury / Machine Learning Limits: Adolescent / Adult / Aged / Aged80 / Female / Humans / Male / Middle aged Language: En Journal: Br J Anaesth Year: 2024 Document type: Article Country of publication: