Introducing a machine learning algorithm for delirium prediction—the Supporting SURgery with GEriatric Co-Management and AI project (SURGE-Ahead)

Author:

Benovic Samuel12,Ajlani Anna H3456,Leinert Christoph12,Fotteler Marina27,Wolf Dennis8,Steger Florian34,Kestler Hans8,Dallmeier Dhayana19,Denkinger Michael12,Eschweiler Gerhard W1011,Thomas Christine1112,Kocar Thomas D12ORCID

Affiliation:

1. Institute of Geriatric Research, Ulm University Medical Center , Ulm , Germany

2. Agaplesion Bethesda Clinic Ulm , Ulm , Germany

3. Institute of the History , Philosophy and Ethics of Medicine, , Ulm , Germany

4. Ulm University , Philosophy and Ethics of Medicine, , Ulm , Germany

5. Department of Sociology with a Focus on Innovation and Digitalization , Institute of Sociology, , Linz , Austria

6. Johannes Kepler University Linz , Institute of Sociology, , Linz , Austria

7. DigiHealth Institute, Neu-Ulm University of Applied Sciences , Neu-Ulm , Germany

8. Institute of Medical Systems Biology, Ulm University , Ulm , Germany

9. Department of Epidemiology, Boston University School of Public Health , Boston , USA

10. Geriatric Center, University Hospital Tübingen , Tubingen , Germany

11. Department of Psychiatry and Psychotherapy, Tübingen University Hospital , Tübingen , Germany

12. Department of Geriatric Psychiatry and Psychotherapy, Klinikum Stuttgart , Stuttgart , Germany

Abstract

Abstract Introduction Post-operative delirium (POD) is a common complication in older patients, with an incidence of 14–56%. To implement preventative procedures, it is necessary to identify patients at risk for POD. In the present study, we aimed to develop a machine learning (ML) model for POD prediction in older patients, in close cooperation with the PAWEL (patient safety, cost-effectiveness and quality of life in elective surgery) project. Methods The model was trained on the PAWEL study’s dataset of 878 patients (no intervention, age ≥ 70, 209 with POD). Presence of POD was determined by the Confusion Assessment Method and a chart review. We selected 15 features based on domain knowledge, ethical considerations and a recursive feature elimination. A logistic regression and a linear support vector machine (SVM) were trained, and evaluated using receiver operator characteristics (ROC). Results The selected features were American Society of Anesthesiologists score, multimorbidity, cut-to-suture time, estimated glomerular filtration rate, polypharmacy, use of cardio-pulmonary bypass, the Montreal cognitive assessment subscores ‘memory’, ‘orientation’ and ‘verbal fluency’, pre-existing dementia, clinical frailty scale, age, recent falls, post-operative isolation and pre-operative benzodiazepines. The linear SVM performed best, with an ROC area under the curve of 0.82 [95% CI 0.78–0.85] in the training set, 0.81 [95% CI 0.71–0.88] in the test set and 0.76 [95% CI 0.71–0.79] in a cross-centre validation. Conclusion We present a clinically useful and explainable ML model for POD prediction. The model will be deployed in the Supporting SURgery with GEriatric Co-Management and AI project.

Funder

German Federal Ministry of Education and Research

Publisher

Oxford University Press (OUP)

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