TY - JOUR T1 - KAsH: A new tool to predict in-hospital mortality in patients with myocardial infarction JO - Revista Portuguesa de Cardiologia T2 - AU - Ponte Monteiro,Joel AU - Costa Rodrigues,Ricardo AU - Neto,Micaela AU - Sousa,João Adriano AU - Mendonça,Flávio AU - Gomes Serrão,Marco AU - Santos,Nuno AU - Silva,Bruno AU - Faria,Ana Paula AU - Pereira,Décio AU - Henriques,Eva AU - Freitas,António Drumond AU - Mendonça,Isabel SN - 08702551 M3 - 10.1016/j.repc.2019.12.005 DO - 10.1016/j.repc.2019.12.005 UR - https://www.revportcardiol.org/pt-kash-a-new-tool-predict-articulo-S0870255119305785 AB - IntroductionComplex risk scores have limited applicability in the assessment of patients with myocardial infarction (MI). In this work, the authors aimed to develop a simple to use clinical score to stratify the in-hospital mortality risk of patients with MI at first medical contact. MethodsIn this single-center prospective registry assessing 1504 consecutively admitted patients with MI, the strongest predictors of in-hospital mortality were selected through multivariate logistic regression. The KAsH score was developed according to the following formula: KAsH=(Killip class×Age×Heart rate)/systolic blood pressure. Its predictive power was compared to previously validated scores using the DeLong test. The score was categorized and further compared to the Killip classification. ResultsThe KAsH score displayed excellent predictive power for in-hospital mortality, superior to other well-validated risk scores (AUC: KAsH 0.861 vs. GRACE 0.773, p<0.001) and robust in subgroup analysis. KAsH maintained its predictive capacity after adjustment for multiple confounding factors such as diabetes, heart failure, mechanical complications and bleeding (OR 1.004, 95% CI 1.001-1.008, p=0.012) and reclassified 81.5% of patients into a better risk category compared to the Killip classification.KAsH's categorization displayed excellent mortality discrimination (KAsH 1: 1.0%, KAsH 2: 8.1%, KAsH 3: 20.4%, KAsH 4: 55.2%) and better mortality prediction than the Killip classification (AUC: KAsH 0.839 vs. Killip 0.775, p<0.0001). ConclusionKAsH, an easy to use score calculated at first medical contact with patients with MI, displays better predictive power for in-hospital mortality than existing scores. ER -