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Postoperative delirium prediction using machine learning models and preoperative electronic health record data.
Bishara, Andrew; Chiu, Catherine; Whitlock, Elizabeth L; Douglas, Vanja C; Lee, Sei; Butte, Atul J; Leung, Jacqueline M; Donovan, Anne L.
Afiliación
  • Bishara A; Department of Anesthesia and Perioperative Care, University of California, San Francisco, 521 Parnassus Avenue, San Francisco, CA, 94143, USA.
  • Chiu C; Bakar Computational Health Sciences Institute, University of California San Francisco, 490 Illinois Street, San Francisco, CA, 94143, USA.
  • Whitlock EL; Department of Anesthesia and Perioperative Care, University of California, San Francisco, 521 Parnassus Avenue, San Francisco, CA, 94143, USA.
  • Douglas VC; Department of Anesthesia and Perioperative Care, University of California, San Francisco, 521 Parnassus Avenue, San Francisco, CA, 94143, USA.
  • Lee S; Weill Institute for Neurosciences and Department of Neurology, University of California, 505 Parnassus Avenue, San Francisco, CA, 94143, USA.
  • Butte AJ; Division of Geriatrics, University of California, San Francisco, 505 Parnassus Avenue, San Francisco, CA, 94143, USA.
  • Leung JM; Bakar Computational Health Sciences Institute, University of California San Francisco, 490 Illinois Street, San Francisco, CA, 94143, USA.
  • Donovan AL; Department of Anesthesia and Perioperative Care, University of California, San Francisco, 521 Parnassus Avenue, San Francisco, CA, 94143, USA.
BMC Anesthesiol ; 22(1): 8, 2022 01 03.
Article en En | MEDLINE | ID: mdl-34979919
ABSTRACT

BACKGROUND:

Accurate, pragmatic risk stratification for postoperative delirium (POD) is necessary to target preventative resources toward high-risk patients. Machine learning (ML) offers a novel approach to leveraging electronic health record (EHR) data for POD prediction. We sought to develop and internally validate a ML-derived POD risk prediction model using preoperative risk features, and to compare its performance to models developed with traditional logistic regression.

METHODS:

This was a retrospective analysis of preoperative EHR data from 24,885 adults undergoing a procedure requiring anesthesia care, recovering in the main post-anesthesia care unit, and staying in the hospital at least overnight between December 2016 and December 2019 at either of two hospitals in a tertiary care health system. One hundred fifteen preoperative risk features including demographics, comorbidities, nursing assessments, surgery type, and other preoperative EHR data were used to predict postoperative delirium (POD), defined as any instance of Nursing Delirium Screening Scale ≥2 or positive Confusion Assessment Method for the Intensive Care Unit within the first 7 postoperative days. Two ML models (Neural Network and XGBoost), two traditional logistic regression models ("clinician-guided" and "ML hybrid"), and a previously described delirium risk stratification tool (AWOL-S) were evaluated using the area under the receiver operating characteristic curve (AUC-ROC), sensitivity, specificity, positive likelihood ratio, and positive predictive value. Model calibration was assessed with a calibration curve. Patients with no POD assessments charted or at least 20% of input variables missing were excluded.

RESULTS:

POD incidence was 5.3%. The AUC-ROC for Neural Net was 0.841 [95% CI 0. 816-0.863] and for XGBoost was 0.851 [95% CI 0.827-0.874], which was significantly better than the clinician-guided (AUC-ROC 0.763 [0.734-0.793], p < 0.001) and ML hybrid (AUC-ROC 0.824 [0.800-0.849], p < 0.001) regression models and AWOL-S (AUC-ROC 0.762 [95% CI 0.713-0.812], p < 0.001). Neural Net, XGBoost, and ML hybrid models demonstrated excellent calibration, while calibration of the clinician-guided and AWOL-S models was moderate; they tended to overestimate delirium risk in those already at highest risk.

CONCLUSION:

Using pragmatically collected EHR data, two ML models predicted POD in a broad perioperative population with high discrimination. Optimal application of the models would provide automated, real-time delirium risk stratification to improve perioperative management of surgical patients at risk for POD.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Complicaciones Posoperatorias / Delirio / Registros Electrónicos de Salud / Aprendizaje Automático Tipo de estudio: Etiology_studies / Incidence_studies / Observational_studies / Prognostic_studies / Risk_factors_studies Límite: Aged / Female / Humans / Male / Middle aged Idioma: En Año: 2022 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Complicaciones Posoperatorias / Delirio / Registros Electrónicos de Salud / Aprendizaje Automático Tipo de estudio: Etiology_studies / Incidence_studies / Observational_studies / Prognostic_studies / Risk_factors_studies Límite: Aged / Female / Humans / Male / Middle aged Idioma: En Año: 2022 Tipo del documento: Article