Sergey Leontyev1, Jean-Francois Légaré2, Michael A Borger3, Karen J Buth2, Anne K Funkat3, Jochann Gerhard3, Friedrich W Mohr3. 1. Department of Cardiac Surgery, Heart Center, University of Leipzig, Leipzig, Germany. Electronic address: sergey.leontyev@medizin.uni-leipzig.de. 2. Division of Cardiac Surgery, Department of Surgery, Queen Elizabeth II Health Sciences Center, Halifax, Nova Scotia, Canada. 3. Department of Cardiac Surgery, Heart Center, University of Leipzig, Leipzig, Germany.
Abstract
BACKGROUND: This study evaluated preoperative predictors of in-hospital death for the surgical treatment of patients with acute type A aortic dissection (Type A) and created an easy-to-use scorecard to predict in-hospital death. METHODS: We reviewed retrospectively all consecutive patients who underwent operations for acute Type A between 1996 and 2011 at 2 tertiary care institutions. A logistic regression model was created to identify independent preoperative predictors of in-hospital death. The results were used to create a scorecard predicting operative risk. RESULTS: Emergency operations were performed in 534 consecutive patients for acute Type A. Mean age was 61 ± 14 years and 36.3% were women. Critical preoperative state was present in 31% of patients and malperfusion of one or more end organs in 36%. Unadjusted in-hospital mortality was 18.7% and not significantly different between institutions. Independent predictors of in-hospital death were age 50 to 70 years (odds ratio [OR], 3.8; p = 0.001), age older than 70 years (OR, 2.8; p = 0.03), critical preoperative state (OR, 3.2; p < 0.001), visceral malperfusion (OR, 3.0; p = 0.003), and coronary artery disease (OR, 2.2; p = 0.006). Age younger than 50 years (OR, 0.3; p = 0.01) was protective for early survival. Using this information, we created an easily usable mortality risk score based on these variables. The patients were stratified into four risk categories predicting in-hospital death: less than 10%, 10% to 25%, 25% to 50%, and more than 50%. CONCLUSIONS: This represents one of the largest series of patients with Type A in which a risk model was created. Using our approach, we have shown that age, critical preoperative state, and malperfusion syndrome were strong independent risk factors for early death and could be used for the preoperative risk assessment.
BACKGROUND: This study evaluated preoperative predictors of in-hospital death for the surgical treatment of patients with acute type A aortic dissection (Type A) and created an easy-to-use scorecard to predict in-hospital death. METHODS: We reviewed retrospectively all consecutive patients who underwent operations for acute Type A between 1996 and 2011 at 2 tertiary care institutions. A logistic regression model was created to identify independent preoperative predictors of in-hospital death. The results were used to create a scorecard predicting operative risk. RESULTS: Emergency operations were performed in 534 consecutive patients for acute Type A. Mean age was 61 ± 14 years and 36.3% were women. Critical preoperative state was present in 31% of patients and malperfusion of one or more end organs in 36%. Unadjusted in-hospital mortality was 18.7% and not significantly different between institutions. Independent predictors of in-hospital death were age 50 to 70 years (odds ratio [OR], 3.8; p = 0.001), age older than 70 years (OR, 2.8; p = 0.03), critical preoperative state (OR, 3.2; p < 0.001), visceral malperfusion (OR, 3.0; p = 0.003), and coronary artery disease (OR, 2.2; p = 0.006). Age younger than 50 years (OR, 0.3; p = 0.01) was protective for early survival. Using this information, we created an easily usable mortality risk score based on these variables. The patients were stratified into four risk categories predicting in-hospital death: less than 10%, 10% to 25%, 25% to 50%, and more than 50%. CONCLUSIONS: This represents one of the largest series of patients with Type A in which a risk model was created. Using our approach, we have shown that age, critical preoperative state, and malperfusion syndrome were strong independent risk factors for early death and could be used for the preoperative risk assessment.
Authors: Bo Yang; Elizabeth L Norton; Carlo Maria Rosati; Xiaoting Wu; Karen M Kim; Minhaj S Khaja; G Michael Deeb; David M Williams; Himanshu J Patel Journal: J Thorac Cardiovasc Surg Date: 2018-12-14 Impact factor: 5.209
Authors: Bo Yang; Carlo Maria Rosati; Elizabeth L Norton; Karen M Kim; Minhaj S Khaja; Narasimham Dasika; Xiaoting Wu; Whitney E Hornsby; Himanshu J Patel; G Michael Deeb; David M Williams Journal: Circulation Date: 2018-11-06 Impact factor: 29.690