Measuring Hospital Performance Using Mortality Rates: An Alternative to the RAMR

Background The risk-adjusted mortality rate (RAMR) is used widely by healthcare agencies to evaluate hospital performance. The RAMR is insensitive to case volume and requires a confidence interval for proper interpretation, which results in a hypothesis testing framework. Unfamiliarity with hypothe...

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Main Authors: Christine Pitocco, Thomas R. Sexton
Format: Article
Language:English
Published: Kerman University of Medical Sciences 2018-04-01
Series:International Journal of Health Policy and Management
Subjects:
Online Access:http://www.ijhpm.com/article_3401_53b0850b799b264f8edd25af68d31dc7.pdf
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spelling doaj-dd6328a6644f44de9a41b322cdfb6dd62020-11-24T22:24:48ZengKerman University of Medical SciencesInternational Journal of Health Policy and Management2322-59392322-59392018-04-017430831610.15171/IJHPM.2017.94Measuring Hospital Performance Using Mortality Rates: An Alternative to the RAMRChristine Pitocco0Thomas R. Sexton1College of Business, Stony Brook University, Stony Brook, NY, USACollege of Business, Stony Brook University, Stony Brook, NY, USABackground The risk-adjusted mortality rate (RAMR) is used widely by healthcare agencies to evaluate hospital performance. The RAMR is insensitive to case volume and requires a confidence interval for proper interpretation, which results in a hypothesis testing framework. Unfamiliarity with hypothesis testing can lead to erroneous interpretations by the public and other stakeholders. We argue that screening, rather than hypothesis testing, is more defensible. We propose an alternative to the RAMR that is based on sound statistical methodology, easier to understand and can be used in large-scale screening with no additional data requirements. Methods We use an upper-tail probability to screen for hospitals performing poorly and a lower-tail probability to screen for hospitals performing well. Confidence intervals and hypothesis tests are not needed to compute or interpret our measures. Moreover, unlike the RAMR, our measures are sensitive to the number of cases treated. Results To demonstrate our proposed methodology, we obtained data from the New York State Department of Health for 10 Inpatient Quality Indicators (IQIs) for the years 2009-2013. We find strong agreement between the upper tail probability (UTP) and the RAMR, supporting our contention that the UTP is a viable alternative to the RAMR. Conclusion We show that our method is simpler to implement than the RAMR and, with no need for a confidence interval, it is easier to interpret. Moreover, it will be available for all hospitals and all diseases/conditions regardless of patient volumehttp://www.ijhpm.com/article_3401_53b0850b799b264f8edd25af68d31dc7.pdfwhich results in a hypothesis testing framework. Unfamiliarity with hypothesis testing can lead to erroneous interpretations by the public and other stakeholders. We argue that screeningrather than hypothesis testingis more defensible. We propose an alternative to the RAMR that is based on sound statistical methodologyeasier to understand and can be used in large-scale screening with no additional data requirements. Methods We use an upper-tail probability to screen for hospitals performing poorly and a lower-tail probability to screen for hospitals performing well. Confidence intervals and hypothesis tests are not needed to compute or interpret our measures. Moreoverunlike the RAMRour measures are sensitive to the number of cases treated. Results To demonstrate our proposed methodologywe obtained data from the New York State Department of Health for 10 Inpatient Quality Indicators (IQIs) for the years 2009-2013. We find strong agreement between the upper tail probability (UTP) and the RAMRsupporting our contention that the UTP is a viable alternative to the RAMR. Conclusion We show that our method is simpler to implement than the RAMR andwith no need for a confidence intervalit is easier to interpret. Moreoverit will be available for all hospitals and all diseases/conditions regardless of patient volumeHospital Performance MeasuresMortality RateRisk Adjustment
collection DOAJ
language English
format Article
sources DOAJ
author Christine Pitocco
Thomas R. Sexton
spellingShingle Christine Pitocco
Thomas R. Sexton
Measuring Hospital Performance Using Mortality Rates: An Alternative to the RAMR
International Journal of Health Policy and Management
which results in a hypothesis testing framework. Unfamiliarity with hypothesis testing can lead to erroneous interpretations by the public and other stakeholders. We argue that screening
rather than hypothesis testing
is more defensible. We propose an alternative to the RAMR that is based on sound statistical methodology
easier to understand and can be used in large-scale screening with no additional data requirements. Methods We use an upper-tail probability to screen for hospitals performing poorly and a lower-tail probability to screen for hospitals performing well. Confidence intervals and hypothesis tests are not needed to compute or interpret our measures. Moreover
unlike the RAMR
our measures are sensitive to the number of cases treated. Results To demonstrate our proposed methodology
we obtained data from the New York State Department of Health for 10 Inpatient Quality Indicators (IQIs) for the years 2009-2013. We find strong agreement between the upper tail probability (UTP) and the RAMR
supporting our contention that the UTP is a viable alternative to the RAMR. Conclusion We show that our method is simpler to implement than the RAMR and
with no need for a confidence interval
it is easier to interpret. Moreover
it will be available for all hospitals and all diseases/conditions regardless of patient volume
Hospital Performance Measures
Mortality Rate
Risk Adjustment
author_facet Christine Pitocco
Thomas R. Sexton
author_sort Christine Pitocco
title Measuring Hospital Performance Using Mortality Rates: An Alternative to the RAMR
title_short Measuring Hospital Performance Using Mortality Rates: An Alternative to the RAMR
title_full Measuring Hospital Performance Using Mortality Rates: An Alternative to the RAMR
title_fullStr Measuring Hospital Performance Using Mortality Rates: An Alternative to the RAMR
title_full_unstemmed Measuring Hospital Performance Using Mortality Rates: An Alternative to the RAMR
title_sort measuring hospital performance using mortality rates: an alternative to the ramr
publisher Kerman University of Medical Sciences
series International Journal of Health Policy and Management
issn 2322-5939
2322-5939
publishDate 2018-04-01
description Background The risk-adjusted mortality rate (RAMR) is used widely by healthcare agencies to evaluate hospital performance. The RAMR is insensitive to case volume and requires a confidence interval for proper interpretation, which results in a hypothesis testing framework. Unfamiliarity with hypothesis testing can lead to erroneous interpretations by the public and other stakeholders. We argue that screening, rather than hypothesis testing, is more defensible. We propose an alternative to the RAMR that is based on sound statistical methodology, easier to understand and can be used in large-scale screening with no additional data requirements. Methods We use an upper-tail probability to screen for hospitals performing poorly and a lower-tail probability to screen for hospitals performing well. Confidence intervals and hypothesis tests are not needed to compute or interpret our measures. Moreover, unlike the RAMR, our measures are sensitive to the number of cases treated. Results To demonstrate our proposed methodology, we obtained data from the New York State Department of Health for 10 Inpatient Quality Indicators (IQIs) for the years 2009-2013. We find strong agreement between the upper tail probability (UTP) and the RAMR, supporting our contention that the UTP is a viable alternative to the RAMR. Conclusion We show that our method is simpler to implement than the RAMR and, with no need for a confidence interval, it is easier to interpret. Moreover, it will be available for all hospitals and all diseases/conditions regardless of patient volume
topic which results in a hypothesis testing framework. Unfamiliarity with hypothesis testing can lead to erroneous interpretations by the public and other stakeholders. We argue that screening
rather than hypothesis testing
is more defensible. We propose an alternative to the RAMR that is based on sound statistical methodology
easier to understand and can be used in large-scale screening with no additional data requirements. Methods We use an upper-tail probability to screen for hospitals performing poorly and a lower-tail probability to screen for hospitals performing well. Confidence intervals and hypothesis tests are not needed to compute or interpret our measures. Moreover
unlike the RAMR
our measures are sensitive to the number of cases treated. Results To demonstrate our proposed methodology
we obtained data from the New York State Department of Health for 10 Inpatient Quality Indicators (IQIs) for the years 2009-2013. We find strong agreement between the upper tail probability (UTP) and the RAMR
supporting our contention that the UTP is a viable alternative to the RAMR. Conclusion We show that our method is simpler to implement than the RAMR and
with no need for a confidence interval
it is easier to interpret. Moreover
it will be available for all hospitals and all diseases/conditions regardless of patient volume
Hospital Performance Measures
Mortality Rate
Risk Adjustment
url http://www.ijhpm.com/article_3401_53b0850b799b264f8edd25af68d31dc7.pdf
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