Development and validation of an international preoperative risk assessment model for postoperative delirium

Author:

Dodsworth Benjamin T1ORCID,Reeve Kelly2,Falco Lisa3,Hueting Tom4,Sadeghirad Behnam56,Mbuagbaw Lawrence5678910,Goettel Nicolai1112ORCID,Schmutz Gelsomino Nayeli113

Affiliation:

1. PIPRA AG , Zurich 8005 , Switzerland

2. Institute of Data Analysis and Process Design, Zurich University of Applied Sciences , Winterthur 8400 , Switzerland

3. Zühlke Engineering AG , Zürcherstrasse 39J, Schlieren 8952 , Switzerland

4. Evidencio , Irenesingel 19, Haaksbergen 7481 GJ , Netherlands

5. McMaster University Department of Health Research Methods, Evidence, and Impact, , Hamilton ON L8S 4L8 , Canada

6. McMaster University Department of Anesthesia, , Hamilton ON L8S 4L8 , Canada

7. McMaster University Department of Pediatrics, , Hamilton, ON L8S 4L8 , Canada

8. St Joseph's Healthcare Biostatistics Unit, Father Sean O'Sullivan Research Centre, , Hamilton, ON L8S 4L8 , Canada

9. Yaoundé Central Hospital Centre for Development of Best Practices in Health (CDBPH), , Yaoundé 12117 , Cameroon

10. Stellenbosch University Division of Epidemiology and Biostatistics, Department of Global Health, , Cape Town 7600 , South Africa

11. University of Florida College of Medicine Department of Anesthesiology, , Gainesville FL 32610 , USA

12. University of Basel Department of Clinical Research, , Basel 4031 , Switzerland

13. University Hospital Basel Department of Anaesthesia, , Spitalstrasse 21, Basel 4031 , Switzerland

Abstract

Abstract Background Postoperative delirium (POD) is a frequent complication in older adults, characterised by disturbances in attention, awareness and cognition, and associated with prolonged hospitalisation, poor functional recovery, cognitive decline, long-term dementia and increased mortality. Early identification of patients at risk of POD can considerably aid prevention. Methods We have developed a preoperative POD risk prediction algorithm using data from eight studies identified during a systematic review and providing individual-level data. Ten-fold cross-validation was used for predictor selection and internal validation of the final penalised logistic regression model. The external validation used data from university hospitals in Switzerland and Germany. Results Development included 2,250 surgical (excluding cardiac and intracranial) patients 60 years of age or older, 444 of whom developed POD. The final model included age, body mass index, American Society of Anaesthesiologists (ASA) score, history of delirium, cognitive impairment, medications, optional C-reactive protein (CRP), surgical risk and whether the operation is a laparotomy/thoracotomy. At internal validation, the algorithm had an AUC of 0.80 (95% CI: 0.77–0.82) with CRP and 0.79 (95% CI: 0.77–0.82) without CRP. The external validation consisted of 359 patients, 87 of whom developed POD. The external validation yielded an AUC of 0.74 (95% CI: 0.68–0.80). Conclusions The algorithm is named PIPRA (Pre-Interventional Preventive Risk Assessment), has European conformity (ce) certification, is available at http://pipra.ch/ and is accepted for clinical use. It can be used to optimise patient care and prioritise interventions for vulnerable patients and presents an effective way to implement POD prevention strategies in clinical practice.

Funder

EIT Health

Publisher

Oxford University Press (OUP)

Subject

Geriatrics and Gerontology,Aging,General Medicine

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