Machine learning delirium

Published: 17 January 2022| Version 1 | DOI: 10.17632/5sbrfcg5r7.1
Contributor:
Hong Zhao

Description

We conducted a retrospective case-control study on elderly patients ( 65 years of age) who received orthopedic repair with hip fracture under spinal or general anesthesia between June 1, 2018, and May 31, 2019. Anesthesia records and medical charts were reviewed to collect demographic, surgical, anesthetic features, and frailty index to explore potential risk factors for postoperative delirium. Delirium was assessed by trained nurses using the Confusion Assessment Method (CAM) every 12 h during the hospital stay. Four machine learning risk models were constructed to predict the incidence of postoperative delirium: random forest, eXtreme Gradient Boosting (XGBoosting), support vector machine (SVM), and multilayer perception (MLP). K-fold cross-validation was de- ployed to accomplish internal validation and performance evaluation.

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Institutions

Peking University People's Hospital

Categories

Delirium, Older Adult, Hip Fracture

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