A predictive model to identify patients with suspected acute coronary syndromes at high risk of cardiac arrest or in-hospital mortality: An IMMEDIATE Trial sub-study
Background: The IMMEDIATE Trial of emergency medical service use of intravenous glucose–insulin–potassium (GIK) very early in acute coronary syndromes (ACS) showed benefit for the composite outcome of cardiac arrest or in-hospital mortality. Objectives: This analysis of IMMEDIATE Trial data sought t...
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doaj-6a39f0dff5344cc080ce0302bc188aab2020-11-25T00:36:22ZengElsevierInternational Journal of Cardiology: Heart & Vasculature2352-90672015-12-019C374210.1016/j.ijcha.2015.07.001A predictive model to identify patients with suspected acute coronary syndromes at high risk of cardiac arrest or in-hospital mortality: An IMMEDIATE Trial sub-studyMadhab Ray0Robin Ruthazer1Joni R. Beshansky2David M. Kent3Jayanta T. Mukherjee4Hadeel Alkofide5Harry P. Selker6Lahey Hospital and Medical Center, Burlington, MA, United StatesCenter for Cardiovascular Health Services Research, Institute for Clinical Research and Health Policy Studies, Tufts Medical Center, Boston, MA, United StatesCenter for Cardiovascular Health Services Research, Institute for Clinical Research and Health Policy Studies, Tufts Medical Center, Boston, MA, United StatesTufts Clinical and Translational Science Institute, Tufts University, Boston, MA, United StatesTufts Clinical and Translational Science Institute, Tufts University, Boston, MA, United StatesTufts Clinical and Translational Science Institute, Tufts University, Boston, MA, United StatesCenter for Cardiovascular Health Services Research, Institute for Clinical Research and Health Policy Studies, Tufts Medical Center, Boston, MA, United StatesBackground: The IMMEDIATE Trial of emergency medical service use of intravenous glucose–insulin–potassium (GIK) very early in acute coronary syndromes (ACS) showed benefit for the composite outcome of cardiac arrest or in-hospital mortality. Objectives: This analysis of IMMEDIATE Trial data sought to develop a predictive model to help clinicians identify patients at highest risk for this outcome and most likely to benefit from GIK. Methods: Multivariable logistic regression was used to develop a predictive model for the composite endpoint cardiac arrest or in-hospital mortality using the 460 participants in the placebo arm of the IMMEDIATE Trial. Results: The final model had four variables: advanced age, low systolic blood pressure, ST elevation in the presenting electrocardiogram, and duration of time since ischemic symptom onset. Predictive performance was good, with a C statistic of 0.75, as was its calibration. Stratifying patients into three risk categories based on the model's predictions, there was an absolute risk reduction of 8.6% with GIK in the high-risk tertile, corresponding to 12 patients needed to treat to prevent one bad outcome. The corresponding values for the low-risk tertile were 0.8% and 125, respectively. Conclusions: The multivariable predictive model developed identified patients with very early ACS at high risk of cardiac arrest or death. Using this model could assist treating those with greatest potential benefit from GIK.http://www.sciencedirect.com/science/article/pii/S2352906715300130Acute coronary syndromeGlucose–insulin–potassium (GIK)Predictive modelCardiac arrestMortalityEmergency medical service |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Madhab Ray Robin Ruthazer Joni R. Beshansky David M. Kent Jayanta T. Mukherjee Hadeel Alkofide Harry P. Selker |
spellingShingle |
Madhab Ray Robin Ruthazer Joni R. Beshansky David M. Kent Jayanta T. Mukherjee Hadeel Alkofide Harry P. Selker A predictive model to identify patients with suspected acute coronary syndromes at high risk of cardiac arrest or in-hospital mortality: An IMMEDIATE Trial sub-study International Journal of Cardiology: Heart & Vasculature Acute coronary syndrome Glucose–insulin–potassium (GIK) Predictive model Cardiac arrest Mortality Emergency medical service |
author_facet |
Madhab Ray Robin Ruthazer Joni R. Beshansky David M. Kent Jayanta T. Mukherjee Hadeel Alkofide Harry P. Selker |
author_sort |
Madhab Ray |
title |
A predictive model to identify patients with suspected acute coronary syndromes at high risk of cardiac arrest or in-hospital mortality: An IMMEDIATE Trial sub-study |
title_short |
A predictive model to identify patients with suspected acute coronary syndromes at high risk of cardiac arrest or in-hospital mortality: An IMMEDIATE Trial sub-study |
title_full |
A predictive model to identify patients with suspected acute coronary syndromes at high risk of cardiac arrest or in-hospital mortality: An IMMEDIATE Trial sub-study |
title_fullStr |
A predictive model to identify patients with suspected acute coronary syndromes at high risk of cardiac arrest or in-hospital mortality: An IMMEDIATE Trial sub-study |
title_full_unstemmed |
A predictive model to identify patients with suspected acute coronary syndromes at high risk of cardiac arrest or in-hospital mortality: An IMMEDIATE Trial sub-study |
title_sort |
predictive model to identify patients with suspected acute coronary syndromes at high risk of cardiac arrest or in-hospital mortality: an immediate trial sub-study |
publisher |
Elsevier |
series |
International Journal of Cardiology: Heart & Vasculature |
issn |
2352-9067 |
publishDate |
2015-12-01 |
description |
Background: The IMMEDIATE Trial of emergency medical service use of intravenous glucose–insulin–potassium (GIK) very early in acute coronary syndromes (ACS) showed benefit for the composite outcome of cardiac arrest or in-hospital mortality.
Objectives: This analysis of IMMEDIATE Trial data sought to develop a predictive model to help clinicians identify patients at highest risk for this outcome and most likely to benefit from GIK.
Methods: Multivariable logistic regression was used to develop a predictive model for the composite endpoint cardiac arrest or in-hospital mortality using the 460 participants in the placebo arm of the IMMEDIATE Trial.
Results: The final model had four variables: advanced age, low systolic blood pressure, ST elevation in the presenting electrocardiogram, and duration of time since ischemic symptom onset. Predictive performance was good, with a C statistic of 0.75, as was its calibration. Stratifying patients into three risk categories based on the model's predictions, there was an absolute risk reduction of 8.6% with GIK in the high-risk tertile, corresponding to 12 patients needed to treat to prevent one bad outcome. The corresponding values for the low-risk tertile were 0.8% and 125, respectively.
Conclusions: The multivariable predictive model developed identified patients with very early ACS at high risk of cardiac arrest or death. Using this model could assist treating those with greatest potential benefit from GIK. |
topic |
Acute coronary syndrome Glucose–insulin–potassium (GIK) Predictive model Cardiac arrest Mortality Emergency medical service |
url |
http://www.sciencedirect.com/science/article/pii/S2352906715300130 |
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