The probability of being identified as an outlier with commonly used funnel plot control limits for the standardised mortality ratio

BackgroundEmphasis is increasingly being placed on the monitoring of clinical outcomes for health care providers. Funnel plots have become an increasingly popular graphical methodology used to identify potential outliers. It is assumed that a provider only displaying expected random variation (i.e. ‘in-control’) will fall outside a control limit with a known probability. In reality, the discrete count nature of these data, and the differing methods, can lead to true probabilities quite different from the nominal value. This paper investigates the true probability of an ‘in control’ provider falling outside control limits for the Standardised Mortality Ratio (SMR).MethodsThe true probabilities of an ‘in control’ provider falling outside control limits for the SMR were calculated and compared for three commonly used limits: Wald confidence interval; ‘exact’ confidence interval; probability-based prediction interval.ResultsThe probability of falling above the upper limit, or below the lower limit, often varied greatly from the nominal value. This was particularly apparent when there were a small number of expected events: for expected events ≤50 the median probability of an ‘in-control’ provider falling above the upper 95% limit was 0.0301 (Wald), 0.0121 (‘exact’), 0.0201 (prediction).ConclusionsIt is important to understand the properties and probability of being identified as an outlier by each of these different methods to aid the correct identification of poorly performing health care providers. The limits obtained using probability-based prediction limits have the most intuitive interpretation and their properties can be defined a priori. Funnel plot control limits for the SMR should not be based on confidence intervals.

[1]  Jonathan J Deeks,et al.  In the context of performance monitoring, the caterpillar plot should be mothballed in favor of the funnel plot. , 2008, The Annals of thoracic surgery.

[2]  Rosa Gini,et al.  Funnel plots for institutional comparisons , 2009 .

[3]  Julian Flowers Apho Statistical process control methods in public health intelligence. Technical briefing 2 , 2007 .

[4]  F. Garwood,et al.  i) Fiducial Limits for the Poisson Distribution , 1936 .

[5]  David J. Spiegelhalter,et al.  Surgical audit: statistical lessons from Nightingale and Codman , 1999 .

[6]  F. Liddell,et al.  Simple exact analysis of the standardised mortality ratio. , 1984, Journal of epidemiology and community health.

[7]  J. Kirkham,et al.  The use of statistical process control for monitoring institutional performance in trauma care. , 2008, The Journal of trauma.

[8]  David J. Spiegelhalter,et al.  Use of the false discovery rate when comparing multiple health care providers. , 2008, Journal of clinical epidemiology.

[9]  L. Barker,et al.  A Comparison of Nine Confidence Intervals for a Poisson Parameter When the Expected Number of Events is ≤ 5 , 2002 .

[10]  David J Spiegelhalter,et al.  Funnel plots for comparing institutional performance , 2005, Statistics in medicine.

[11]  J. Neyman,et al.  On the Problem of Confidence Intervals , 1935 .

[12]  A. Bottle,et al.  Application of AHRQ patient safety indicators to English hospital data , 2009, Quality & Safety in Health Care.

[13]  R. Fleming Equity and Excellence: liberating the NHS , 2010 .

[14]  D J Spiegelhalter,et al.  How to interpret your dot: decoding the message of clinical performance indicators , 2008, Journal of Perinatology.

[15]  Peter McCulloch,et al.  Jan using hospital mortality data performance of surgical units : validation study Mortality control charts for comparing , 2003 .

[16]  Displaying random variation in comparing hospital performance , 2011, Quality and Safety in Health Care.

[17]  Ara W. Darzi,et al.  Funnel Plots and Their Emerging Application in Surgery , 2009, Annals of surgery.

[18]  R. F. Hart,et al.  Control Limits for p Control Charts With Small Subgroup Sizes , 2007, Quality management in health care.

[19]  K. Wright The Eastern Region Public Health Observatory. , 2014, Nursing standard (Royal College of Nursing (Great Britain) : 1987).

[20]  D. Spiegelhalter,et al.  Funnel plots for institutional comparison , 2002, Quality & safety in health care.