Preview |
PDF (Publisher's Version)
- Requires a PDF viewer such as GSview, Xpdf or Adobe Acrobat Reader
1MB |
|
MS Word (Supplementary Data)
8MB |
| Item Type: | Article |
|---|---|
| Title: | Prediction and risk evaluation of delirium after surgery in older patients: development and internal validation of an algorithm from the prospective BioCog cohort study |
| Creators Name: | Lammers-Lietz, Florian, Akyuez, Levent, Boraschi, Diana, Borchers, Friedrich, de Bresser, Jeroen, Chatterjee, Sreyoshi, Correia, Marta M., de Lange, Nikola M., Dschietzig, Thomas Bernd, Ghosh, Soumyabrata, Feinkohl, Insa, Ferreira da Silva, Izabela, Fislage, Marinus, Fournier, Anna, Gallinat, Jürgen, Hadzidiakos, Daniel, Hädel, Sven, Halzl-Yürek, Fatima, Heilmann-Heimbach, Stefanie, Heinrich, Maria, Hendrikse, Jeroen, Hoffmann, Per, Janke, Jürgen, Kant, Ilse M.J., Kraft, Angelie, Krause, Roland, Kruppa-Scheetz, Jochen, Kühn, Simone, Lachmann, Gunnar, Laubach, Markus, Lippert, Christoph, Menon, David K., Mörgeli, Rudolf, Müller, Anika, Mutsaerts, Henk-Jan, Nöthen, Markus, Nürnberg, Peter, Ofosu, Kwaku, Pietzsch, Malte, Piper, Sophie K., Pischon, Tobias, Preller, Jacobus, Scheurer, Konstanze, Schneider, Reinhard, Scholtz, Kathrin, Schreier, Peter H., Slooter, Arjen J.C., Stamatakis, Emmanuel A., von Haefen, Clarissa, van Montfort, Simone J.T., van Dellen, Edwin, Volk, Hans-Dieter, Weber, Simon, Wiebach, Janine, Wiehe, Anton, Winterer, Jeanne M., Wolf, Alissa, Zacharias, Norman, Spies, Claudia and Winterer, Georg |
| Abstract: | BACKGROUND: Postoperative delirium (POD) affects ∼20% of older surgical patients. It is associated with poor clinical outcome and increased mortality. We aimed to identify the major POD risk factors and to develop and validate a multivariate algorithm for individual POD risk prediction and risk evaluation in the very early postoperative period. METHODS: BioCog is a prospective cohort study conducted in the anaesthesiology departments of two tertiary care centres in Germany and The Netherlands. Patients aged ≥65 yr with no preoperative dementia (Mini-Mental Status Examination ≥24) undergoing surgery with an expected duration of at least 60 min were enrolled and screened for POD according to DSM 5 until the seventh postoperative day. Clinical, neuropsychological, neuroimaging data, and blood were measured before and after surgery. We evaluated several models by sequentially adding blocks of variables. Gradient-boosted trees (GBT) with nested cross-validation were used for POD prediction. Model accuracy (area under the receiver-operating curve, AUC) and calibration were assessed (Brier score). RESULTS: Out of 929 patients, 184 (20%) experienced POD. A GBT algorithm using both preoperative data, characteristics of the intervention, and postoperative changes in laboratory parameters achieved the highest AUC (0.83, [0.79-0.86]) with a Brier score of 0.12 (0.12-0.13). CONCLUSIONS: Models combining preoperative with precipitating factors during surgery predict POD with high accuracy. This suggests that the resulting algorithms eventually may become useful to support clinical decision-making. CLINICAL TRIAL REGISTRATION: NCT02265263. |
| Keywords: | Cohort Study, Neuroimaging, Postoperative Complications, Postoperative Delirium, Risk Factors, Transcriptome |
| Source: | British Journal of Anaesthesia |
| ISSN: | 0007-0912 |
| Publisher: | Elsevier |
| Date: | 17 March 2026 |
| Official Publication: | https://doi.org/10.1016/j.bja.2026.01.025 |
| PubMed: | View item in PubMed |
Repository Staff Only: item control page
Tools
Tools

