作者
Annie M Racine, Douglas Tommet, Madeline L D’Aquila, Tamara G Fong, Yun Gou, Patricia A Tabloski, Eran D Metzger, Tammy T Hshieh, Eva M Schmitt, Sarinnapha M Vasunilashorn, Lisa Kunze, Kamen Vlassakov, Ayesha Abdeen, Jeffrey Lange, Brandon Earp, Bradford C Dickerson, Edward R Marcantonio, Jon Steingrimsson, Thomas G Travison, Sharon K Inouye, Richard N Jones
发表日期
2021/2
期刊
Journal of general internal medicine
卷号
36
页码范围
265-273
出版商
Springer International Publishing
简介
Background
Our objective was to assess the performance of machine learning methods to predict post-operative delirium using a prospective clinical cohort.
Methods
We analyzed data from an observational cohort study of 560 older adults (≥ 70 years) without dementia undergoing major elective non-cardiac surgery. Post-operative delirium was determined by the Confusion Assessment Method supplemented by a medical chart review (N = 134, 24%). Five machine learning algorithms and a standard stepwise logistic regression model were developed in a training sample (80% of participants) and evaluated in the remaining hold-out testing sample. We evaluated three overlapping feature sets, restricted to variables that are readily available or minimally burdensome to collect in clinical settings, including interview and medical record data. A large …
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