The development of an automated ward independent delirium risk prediction model

被引:0
|
作者
Hugo A. J. M. de Wit
Bjorn Winkens
Carlota Mestres Gonzalvo
Kim P. G. M. Hurkens
Wubbo J. Mulder
Rob Janknegt
Frans R. Verhey
Paul-Hugo M. van der Kuy
Jos M. G. A. Schols
机构
[1] Zuyderland Medical Centre,Department of Clinical Pharmacy
[2] Maastricht University,Department of Methodology and Statistics, CAPHRI
[3] Zuyderland Medical Centre,School for Public Health and Primary Care
[4] Zuyderland Medical Centre,Department of Clinical Pharmacy
[5] Maastricht University Medical Centre,Section of Geriatric Medicine, Department of Internal Medicine
[6] Maastricht University,Department of Internal Medicine
[7] Maastricht University,Department of Psychiatry and Neuropsychology, Alzheimer Centrum Limburg/School for Mental Health and Neurosciences
关键词
Automation; Decision support systems; Decision support techniques; Delirium; Hospital; Predicting;
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摘要
Background A delirium is common in hospital settings resulting in increased mortality and costs. Prevention of a delirium is clearly preferred over treatment. A delirium risk prediction model can be helpful to identify patients at risk of a delirium, allowing the start of preventive treatment. Current risk prediction models rely on manual calculation of the individual patient risk. Objective The aim of this study was to develop an automated ward independent delirium riskprediction model. To show that such a model can be constructed exclusively from electronically available risk factors and thereby implemented into a clinical decision support system (CDSS) to optimally support the physician to initiate preventive treatment. Setting A Dutch teaching hospital. Methods A retrospective cohort study in which patients, 60 years or older, were selected when admitted to the hospital, with no delirium diagnosis when presenting, or during the first day of admission. We used logistic regression analysis to develop a delirium predictive model out of the electronically available predictive variables. Main outcome measure A delirium risk prediction model. Results A delirium risk prediction model was developed using predictive variables that were significant in the univariable regression analyses. The area under the receiver operating characteristics curve of the “medication model” model was 0.76 after internal validation. Conclusions CDSSs can be used to automatically predict the risk of a delirium in individual hospitalised patients’ by exclusively using electronically available predictive variables. To increase the use and improve the quality of predictive models, clinical risk factors should be documented ready for automated use.
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页码:915 / 923
页数:8
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