Literature DB >> 22610184

Performance of risk-adjusted control charts to monitor in-hospital mortality of intensive care unit patients: a simulation study.

Antonie Koetsier1, Nicolette F de Keizer, Evert de Jonge, David A Cook, Niels Peek.   

Abstract

OBJECTIVES: Increases in case-mix adjusted mortality may be indications of decreasing quality of care. Risk-adjusted control charts can be used for in-hospital mortality monitoring in intensive care units by issuing a warning signal when there are more deaths than expected. The aim of this study was to systematically assess and compare, by computer simulation, expected delay before a warning signal was given for an upward shift in mortality rate in intensive care mortality data by different risk-adjusted control charts.
DESIGN: We compared the efficiency of the risk-adjusted P-chart, risk-adjusted Additive P-chart, risk-adjusted Multiplicative P-chart, monthly Standardized Mortality Ratio, risk-adjusted Cumulative Sum, risk-adjusted Resetting Sequential Probability Ratio Test, and risk-adjusted Exponentially Weighted Moving Average control chart to detect an upward shift in mortality rate in eight different scenarios that varied by mortality increase factor and monthly patient volume.
SETTING: Adult intensive care units in The Netherlands. PATIENTS: Patients admitted to 73 intensive care units from the Dutch National Intensive Care Evaluation quality registry from the year 2009.
INTERVENTIONS: None. MEASUREMENTS: We compared the performance of the different risk-adjusted control charts by the median time-to-signal and the 6-month detection rate. MAIN
RESULTS: In all eight scenarios, the risk-adjusted Exponentially Weighted Moving Average control chart had the shortest median time-to-signal, and in four, the highest 6-month detection rate. The median time-to-signal for an average volume intensive care unit (i.e., 50 admissions per month) with an increase in mortality rate of R = 1.50 on the odds scale was 9 months for the risk-adjusted Exponentially Weighted Moving Average control chart.
CONCLUSIONS: The risk-adjusted Exponentially Weighted Moving Average control chart signaled the fastest in most of the simulated scenarios and is therefore superior in detecting increases in in-hospital mortality of intensive care patients compared to the other types of risk-adjusted control charts.

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Year:  2012        PMID: 22610184     DOI: 10.1097/CCM.0b013e31824e0ff9

Source DB:  PubMed          Journal:  Crit Care Med        ISSN: 0090-3493            Impact factor:   7.598


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