Dynamic prediction modeling of postoperative mortality among patients undergoing surgical aortic valve replacement in a statewide cohort over a 12-year periodCentral MessagePerspective

Objective: Clinical prediction models for surgical aortic valve replacement mortality, are valuable decision tools but are often limited in their ability to account for changes in medical practice, patient selection, and the risk of outcomes over time. Recent research has identified methods to updat...

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Veröffentlicht in:JTCVS open 2023-09, Vol.15, p.94-112
Hauptverfasser: Jackie Pollack, MSc, Wei Yang, PhD, Erin M. Schnellinger, PhD, MS, George J. Arnaoutakis, MD, Michael J. Kallan, MS, Stephen E. Kimmel, MD, MSCE
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Sprache:eng
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Zusammenfassung:Objective: Clinical prediction models for surgical aortic valve replacement mortality, are valuable decision tools but are often limited in their ability to account for changes in medical practice, patient selection, and the risk of outcomes over time. Recent research has identified methods to update models as new data accrue, but their effect on model performance has not been rigorously tested. Methods: The study population included 44,546 adults who underwent an isolated surgical aortic valve replacement from January 1, 1999, to December 31, 2018, statewide in Pennsylvania. After chronologically splitting the data into training and validation sets, we compared calibration, discrimination, and accuracy measures amongst a nonupdating model to 2 methods of model updating: calibration regression and the novel dynamic logistic state space model. Results: The risk of mortality decreased significantly during the validation period (P 
ISSN:2666-2736
2666-2736