Logistic regression model to predict outcome after in-hospital cardiac arrest: validation, accuracy, sensitivity and specificity

被引:14
作者
Dodek, PM [1 ]
Wiggs, BR [1 ]
机构
[1] St Pauls Hosp, Pulm Res Lab, Vancouver, BC V6Z 1Y6, Canada
关键词
cardiac arrest; inpatient; outcome; predictors; logistic regression;
D O I
10.1016/S0300-9572(98)00012-4
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
Objective: To develop and validate a logistic regression model to identify predictors of death before hospital discharge after in-hospital cardiac arrest. Design: Retrospective derivation and validation cohorts over two 1 year periods. Data from all in-hospital cardiac arrests in 1986-87 were used to derive a logistic regression model in which the estimated probability of death before hospital discharge was a function of patient and arrest descriptors, major underlying diagnosis, initial cardiac rhythm, and time of year. This model was validated in a separate data set from 1989-90 in the same hospital. Calculated for each case was 95% confidence limits (C.L.) about the estimated probability of death. In addition, accuracy, sensitivity, and specificity of estimated probability of death and lower 95% C.L. of the estimated probability of death in the derivation and validation data sets were calculated. Setting. 560-bed university teaching hospital. Patients: The derivation data set described 270 cardiac arrests in 197 inpatients. The validation data set described 158 cardiac arrests in 120 inpatients. Interventions: none. Measurements and results: Death before hospital discharge was the main outcome measure. Age, female gender, number of previous cardiac arrests, and electrical-mechanical dissociation were significant variables associated with a higher probability of death. Underlying coronary artery disease or valvular heart disease, ventricular tachycardia, and cardiac arrest during the period July-September were significant variables associated with a lower probability of death. Optimal sensitivity and specificity in the validation set were achieved at a cut-off probability of 0.85. Conclusions: Performance of this logistic regression model depends on the cut-off probability chosen to discriminate between predicted survival and predicted death and on whether the estimated probability or the lower 95% C.L. of the estimated probability is used. This model may inform the development of clinical practice guidelines for patients who are at risk of or who experience in-hospital cardiac arrest. (C) 1998 Elsevier Science Ireland Ltd. All rights reserved.
引用
收藏
页码:201 / 208
页数:8
相关论文
共 50 条
[31]   Aortic stenosis is an independent predictor for outcome in patients with in-hospital cardiac arrest [J].
Sulzgruber, Patrick ;
Schnaubelt, Sebastian ;
Pesce, Marco ;
Uray, Thomas ;
Niederdoeckl, Jan ;
Domanovits, Hans ;
Rosenhek, Raphael ;
Binder, Thomas ;
Distelmaier, Klaus ;
Hengstenberg, Christian ;
Niessner, Alexander ;
Goliasch, Georg .
RESUSCITATION, 2019, 137 :156-160
[32]   Relationship between previous severity of illness and outcome of in-hospital cardiac arrest [J].
Serrano, M. ;
Rodriguez, J. ;
Espejo, A. ;
del Olmo, R. ;
Llanos, S. ;
del Castillo, J. ;
Lopez-Herce, J. .
ANALES DE PEDIATRIA, 2014, 81 (01) :9-15
[33]   Outcomes of Mild Therapeutic Hypothermia After In-Hospital Cardiac Arrest [J].
Pierre Kory ;
Mayuko Fukunaga ;
Joseph P. Mathew ;
Bimaljeet Singh ;
Lisa Szainwald ;
Joseph Mosak ;
Mathew Marks ;
Dana Berg ;
Meir Saadia ;
Annie Katz ;
Paul H. Mayo .
Neurocritical Care, 2012, 16 :406-412
[34]   Outcomes of Mild Therapeutic Hypothermia After In-Hospital Cardiac Arrest [J].
Kory, Pierre ;
Fukunaga, Mayuko ;
Mathew, Joseph P. ;
Singh, Bimaljeet ;
Szainwald, Lisa ;
Mosak, Joseph ;
Marks, Mathew ;
Berg, Dana ;
Saadia, Meir ;
Katz, Annie ;
Mayo, Paul H. .
NEUROCRITICAL CARE, 2012, 16 (03) :406-412
[35]   Acute respiratory distress syndrome after in-hospital cardiac arrest [J].
Shih, Jenny A. ;
Robertson, Hannah K. ;
Issa, Mahmoud S. ;
Grossestreuer, Anne V. ;
Donnino, Michael W. ;
Berg, Katherine M. ;
Moskowitz, Ari .
RESUSCITATION, 2022, 177 :78-84
[36]   Advance Care Planning Before and After In-Hospital Cardiac Arrest [J].
Polyak, Alexander ;
Tacon, Phillip Ryan ;
Krom, Zachary ;
Friedman, Oren ;
Mirocha, James ;
Matusov, Yuri .
AMERICAN JOURNAL OF HOSPICE & PALLIATIVE MEDICINE, 2025,
[37]   Automated External Defibrillators and Survival After In-Hospital Cardiac Arrest [J].
Chan, Paul S. ;
Krumholz, Harlan M. ;
Spertus, John A. ;
Jones, Philip G. ;
Cram, Peter ;
Berg, Robert A. ;
Nadkarni, Vinay ;
Peberdy, MaryAnn ;
Mancini, Mary E. ;
Nallamothu, Brahmajee K. .
CIRCULATION, 2010, 122 (21)
[38]   Comparison of Outcome of Extracorporeal Cardiopulmonary Resuscitation for Out-of-Hospital and In-Hospital Cardiac Arrest [J].
Chen, Yih-Sharng ;
Chou, Nai-Kwoun ;
Wang, Chih-Hsien ;
Lin, Iou-Wei ;
Yu, Hsi-Yu ;
Chi, Nai-Hsin ;
Huang, Shu-Chien ;
Wang, Shoei-Shen ;
Becker, Lance .
CIRCULATION, 2013, 128 (22)
[39]   A predictive model for survival after in-hospital cardiopulmonary arrest [J].
Danciu, SC ;
Klein, L ;
Hosseini, MM ;
Ibrahim, L ;
Coyle, BW ;
Kehoe, RE .
RESUSCITATION, 2004, 62 (01) :35-42
[40]   The in-hospital Utstein style: use in reporting outcome from cardiac arrest in Middlemore Hospital 1995-1996 [J].
Patrick, A ;
Rankin, N .
RESUSCITATION, 1998, 36 (02) :91-94