Predicting clinical deterioration in the hospital: the impact of outcome selection.

BACKGROUND Clinical deterioration of ward patients can result in intensive care unit (ICU) transfer, cardiac arrest (CA), and/or death. These different outcomes have been used to develop and test track and trigger systems, but the impact of outcome selection on the performance of prediction algorithms is unknown. METHODS Patients hospitalized on the wards between November 2008 and August 2011 at an academic hospital were included in the study. Ward vital signs and demographic characteristics were compared across outcomes. The dataset was then split into derivation and validation cohorts. Logistic regression was used to derive four models (one per outcome and a combined outcome) for predicting each event within 24h of a vital sign set. The models were compared in the validation cohort using the area under the receiver operating characteristic curve (AUC). RESULTS A total of 59,643 patients were included in the study (including 109 ward CAs, 291 deaths, and 2638 ICU transfers). Most mean vital signs within 24h of the events differed statistically, with those before death being the most deranged. Validation model AUCs were highest for predicting mortality (range 0.73-0.82), followed by CA (range 0.74-0.76), and lowest for predicting ICU transfer (range 0.68-0.71). CONCLUSIONS Despite differences in vital signs before CA, ICU transfer, and death, the different models performed similarly for detecting each outcome. Mortality was the easiest outcome to predict and ICU transfer the most difficult. Studies should be interpreted with these differences in mind.

[1]  C. Subbe,et al.  Effect of introducing the Modified Early Warning score on clinical outcomes, cardio‐pulmonary arrests and intensive care utilisation in acute medical admissions * , 2003, Anaesthesia.

[2]  Brian H Cuthbertson,et al.  Can physiological variables and early warning scoring systems allow early recognition of the deteriorating surgical patient?* , 2007, Critical care medicine.

[3]  Gary B. Smith,et al.  ViEWS--Towards a national early warning score for detecting adult inpatient deterioration. , 2010, Resuscitation.

[4]  B. Waxman,et al.  Recognising clinical instability in hospital patients before cardiac arrest or unplanned admission to intensive care: A pilot study in a tertiary‐care hospital , 1999, The Medical journal of Australia.

[5]  M. Boroujerdi,et al.  The use of combined physiological parameters in the early recognition of the deteriorating acute medical patient. , 2010, The journal of the Royal College of Physicians of Edinburgh.

[6]  R. Wachter,et al.  The hospitalist movement 5 years later. , 2002, JAMA.

[7]  C. Subbe,et al.  Validation of a modified Early Warning Score in medical admissions. , 2001, QJM : monthly journal of the Association of Physicians.

[8]  K. Hillman,et al.  The objective medical emergency team activation criteria: a case-control study. , 2007, Resuscitation.

[9]  R. Bussani,et al.  Anticipating events of in-hospital cardiac arrest , 2004, European journal of emergency medicine : official journal of the European Society for Emergency Medicine.

[10]  K. Hillman,et al.  Antecedents to hospital deaths , 2001, Internal medicine journal.

[11]  Geoffrey K Lighthall,et al.  Abnormal vital signs are associated with an increased risk for critical events in US veteran inpatients. , 2009, Resuscitation.

[12]  M. Churpek,et al.  Predicting cardiac arrest on the wards: a nested case-control study. , 2012, Chest.

[13]  Paul E. Schmidt,et al.  Review and performance evaluation of aggregate weighted 'track and trigger' systems. , 2008, Resuscitation.

[14]  K. Hillman,et al.  Introduction of the medical emergency team (MET) system: a cluster-randomised controlled trial , 2005, The Lancet.

[15]  David R Prytherch,et al.  A review, and performance evaluation, of single-parameter "track and trigger" systems. , 2008, Resuscitation.

[16]  T. Hodgetts,et al.  The identification of risk factors for cardiac arrest and formulation of activation criteria to alert a medical emergency team. , 2002, Resuscitation.

[17]  David O. Meltzer,et al.  Derivation of a cardiac arrest prediction model using ward vital signs* , 2011, Critical care medicine.

[18]  K. Hillman,et al.  Findings of the First Consensus Conference on Medical Emergency Teams* , 2006, Critical care medicine.

[19]  D. Wakefield,et al.  Respiratory rate predicts cardiopulmonary arrest for internal medicine inpatients , 1993, Journal of General Internal Medicine.

[20]  D. Hire,et al.  Longitudinal analysis of one million vital signs in patients in an academic medical center. , 2011, Resuscitation.

[21]  D. Harrison,et al.  Systematic review and evaluation of physiological track and trigger warning systems for identifying at-risk patients on the ward , 2007, Intensive Care Medicine.