Title of article :
Risk-Standardizing Survival for In-Hospital Cardiac Arrest to Facilitate Hospital Comparisons
Author/Authors :
Chan، نويسنده , , Paul S. and Berg، نويسنده , , Robert A. and Spertus، نويسنده , , John A. and Schwamm، نويسنده , , Lee H. and Bhatt، نويسنده , , Deepak L. and Fonarow، نويسنده , , Gregg C. and Heidenreich، نويسنده , , Paul A. and Nallamothu، نويسنده , , Brahmajee K. and Tang، نويسنده , , Fengming and Merchant، نويسنده , , Raina M.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
Objectives
rpose of this study is to develop a method for risk-standardizing hospital survival after cardiac arrest.
ound
dation with which hospitals can improve quality is to be able to benchmark their risk-adjusted performance against other hospitals, something that cannot currently be done for survival after in-hospital cardiac arrest.
s
the Get With The Guidelines (GWTG)-Resuscitation registry, we identified 48,841 patients admitted between 2007 and 2010 with an in-hospital cardiac arrest. Using hierarchical logistic regression, we derived and validated a model for survival to hospital discharge and calculated risk-standardized survival rates (RSSRs) for 272 hospitals with at least 10 cardiac arrest cases.
s
rvival rate was 21.0% and 21.2% for the derivation and validation cohorts, respectively. The model had good discrimination (C-statistic 0.74) and excellent calibration. Eighteen variables were associated with survival to discharge, and a parsimonious model contained 9 variables with minimal change in model discrimination. Before risk adjustment, the median hospital survival rate was 20% (interquartile range: 14% to 26%), with a wide range (0% to 85%). After adjustment, the distribution of RSSRs was substantially narrower: median of 21% (interquartile range: 19% to 23%; range 11% to 35%). More than half (143 [52.6%]) of hospitals had at least a 10% positive or negative absolute change in percentile rank after risk standardization, and 50 (23.2%) had a ≥20% absolute change in percentile rank.
sions
e derived and validated a model to risk-standardize hospital rates of survival for in-hospital cardiac arrest. Use of this model can support efforts to compare hospitals in resuscitation outcomes as a foundation for quality assessment and improvement.
Keywords :
Risk adjustment , variation in care , Cardiac Arrest
Journal title :
JACC (Journal of the American College of Cardiology)
Journal title :
JACC (Journal of the American College of Cardiology)