Preoperative clinical model to predict myocardial injury after non-cardiac surgery: a retrospective analysis from the MANAGE cohort in a Spanish hospital
Victoria Gomez,
Ekaterine Popova,
Javier Zamora,
María Gómez-Rojo,
David Pestaña,
Gerard Urrútia,
José Manuel del Rey,
Ana Belen Serrano,
Eva Ureta,
Monica Nuñez,
Borja Fernández Félix,
Elisa Velasco,
Javier Burgos,
Alfonso Sanjuanbenito,
Juan Manuel Monteagudo,
Basilio de la Torre,
Ángel Candela-Toha
Affiliations
Victoria Gomez
Department of Urology, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Ekaterine Popova
Biomedical Research Institute, Iberoamerican Cochrane Center, (IIB Sant Pau), Barcelona, Catalunya, Spain
Javier Zamora
Institute of metabolism and systems researchs, University of Birmingham, Birmingham, UK
María Gómez-Rojo
Department of Anesthesiology and Surgical Critical Care, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
David Pestaña
Department of Anesthesiology and Surgical Critical Care, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Gerard Urrútia
Iberoamerican Cochrane Centre, Institut d’Investigació Biomèdica Sant Pau IIB Sant Pau, Barcelona, Spain
José Manuel del Rey
Department of Biochemistry, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Ana Belen Serrano
Department of Anesthesiology and Surgical Critical Care, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Eva Ureta
Department of Anesthesiology and Surgical Critical Care, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Monica Nuñez
Department of Anesthesiology and Surgical Critical Care, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Borja Fernández Félix
Clinical Biostatistics Unit, Instituto Ramon y Cajal de Investigacion Sanitaria, Madrid, Spain
Elisa Velasco
Department of Cardiology, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Javier Burgos
Department of Urology, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Alfonso Sanjuanbenito
Department of General Surgery, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Juan Manuel Monteagudo
Department of Cardiology, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Basilio de la Torre
Department of Traumatology, Ramon y Cajal University Hospital. IRYCIS, Madrid, Spain
Ángel Candela-Toha
Department of Anesthesiology and Critical Care, Hospital Universitario Ramón y Cajal, Madrid, Madrid, Spain
Objectives To determine preoperative factors associated to myocardial injury after non-cardiac surgery (MINS) and to develop a prediction model of MINS.Design Retrospective analysis.Setting Tertiary hospital in Spain.Participants Patients aged ≥45 years undergoing major non-cardiac surgery and with at least two measures of troponin levels within the first 3 days of the postoperative period. All patients were screened for the MANAGE trial.Primary and secondary outcome measures We used multivariable logistic regression analysis to study risk factors associated with MINS and created a score predicting the preoperative risk for MINS and a nomogram to facilitate bed-side use. We used Least Absolute Shrinkage and Selection Operator method to choose the factors included in the predictive model with MINS as dependent variable. The predictive ability of the model was evaluated. Discrimination was assessed with the area under the receiver operating characteristic curve (AUC) and calibration was visually assessed using calibration plots representing deciles of predicted probability of MINS against the observed rate in each risk group and the calibration-in-the-large (CITL) and the calibration slope. We created a nomogram to facilitate obtaining risk estimates for patients at pre-anaesthesia evaluation.Results Our cohort included 3633 patients recruited from 9 September 2014 to 17 July 2017. The incidence of MINS was 9%. Preoperative risk factors that increased the risk of MINS were age, American Status Anaesthesiology classification and vascular surgery. The predictive model showed good performance in terms of discrimination (AUC=0.720; 95% CI: 0.69 to 0.75) and calibration slope=1.043 (95% CI: 0.90 to 1.18) and CITL=0.00 (95% CI: −0.12 to 0.12).Conclusions Our predictive model based on routinely preoperative information is highly affordable and might be a useful tool to identify moderate-high risk patients before surgery. However, external validation is needed before implementation.