Prediction and risk evaluation of delirium after surgery in older patients: development and internal validation of an algorithm from the prospective BioCog cohort study

Autor/innen

  • Florian Lammers-Lietz
  • Levent Akyuez
  • Diana Boraschi
  • Friedrich Borchers
  • Jeroen de Bresser
  • Sreyoshi Chatterjee
  • Marta M. Correia
  • Nikola M. de Lange
  • Thomas Bernd Dschietzig
  • Soumyabrata Ghosh
  • Insa Feinkohl
  • Izabela Ferreira da Silva
  • Marinus Fislage
  • Anna Fournier
  • Jürgen Gallinat
  • Daniel Hadzidiakos
  • Sven Hädel
  • Fatima Halzl-Yürek
  • Stefanie Heilmann-Heimbach
  • Maria Heinrich
  • Jeroen Hendrikse
  • Per Hoffmann
  • Jürgen Janke
  • Ilse M.J. Kant
  • Angelie Kraft
  • Roland Krause
  • Jochen Kruppa-Scheetz
  • Simone Kühn
  • Gunnar Lachmann
  • Markus Laubach
  • Christoph Lippert
  • David K. Menon
  • Rudolf Mörgeli
  • Anika Müller
  • Henk-Jan Mutsaerts
  • Markus Nöthen
  • Peter Nürnberg
  • Kwaku Ofosu
  • Malte Pietzsch
  • Sophie K. Piper
  • Tobias Pischon
  • Jacobus Preller
  • Konstanze Scheurer
  • Reinhard Schneider
  • Kathrin Scholtz
  • Peter H. Schreier
  • Arjen J.C. Slooter
  • Emmanuel A. Stamatakis
  • Clarissa von Haefen
  • Simone J.T. van Montfort
  • Edwin van Dellen
  • Hans-Dieter Volk
  • Simon Weber
  • Janine Wiebach
  • Anton Wiehe
  • Jeanne M. Winterer
  • Alissa Wolf
  • Norman Zacharias
  • Claudia Spies
  • Georg Winterer

Journal

  • British Journal of Anaesthesia

Quellenangabe

  • Br J Anaesth

Zusammenfassung

  • 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.


DOI

doi:10.1016/j.bja.2026.01.025