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30-Day Survival Probabilities as a Quality Indicator for Norwegian Hospitals: Data Management and Analysis

BACKGROUND: The Norwegian Knowledge Centre for the Health Services (NOKC) reports 30-day survival as a quality indicator for Norwegian hospitals. The indicators have been published annually since 2011 on the website of the Norwegian Directorate of Health (www.helsenorge.no), as part of the Norwegian...

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Autores principales: Hassani, Sahar, Lindman, Anja Schou, Kristoffersen, Doris Tove, Tomic, Oliver, Helgeland, Jon
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4564217/
https://www.ncbi.nlm.nih.gov/pubmed/26352600
http://dx.doi.org/10.1371/journal.pone.0136547
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author Hassani, Sahar
Lindman, Anja Schou
Kristoffersen, Doris Tove
Tomic, Oliver
Helgeland, Jon
author_facet Hassani, Sahar
Lindman, Anja Schou
Kristoffersen, Doris Tove
Tomic, Oliver
Helgeland, Jon
author_sort Hassani, Sahar
collection PubMed
description BACKGROUND: The Norwegian Knowledge Centre for the Health Services (NOKC) reports 30-day survival as a quality indicator for Norwegian hospitals. The indicators have been published annually since 2011 on the website of the Norwegian Directorate of Health (www.helsenorge.no), as part of the Norwegian Quality Indicator System authorized by the Ministry of Health. Openness regarding calculation of quality indicators is important, as it provides the opportunity to critically review and discuss the method. The purpose of this article is to describe the data collection, data pre-processing, and data analyses, as carried out by NOKC, for the calculation of 30-day risk-adjusted survival probability as a quality indicator. METHODS AND FINDINGS: Three diagnosis-specific 30-day survival indicators (first time acute myocardial infarction (AMI), stroke and hip fracture) are estimated based on all-cause deaths, occurring in-hospital or out-of-hospital, within 30 days counting from the first day of hospitalization. Furthermore, a hospital-wide (i.e. overall) 30-day survival indicator is calculated. Patient administrative data from all Norwegian hospitals and information from the Norwegian Population Register are retrieved annually, and linked to datasets for previous years. The outcome (alive/death within 30 days) is attributed to every hospital by the fraction of time spent in each hospital. A logistic regression followed by a hierarchical Bayesian analysis is used for the estimation of risk-adjusted survival probabilities. A multiple testing procedure with a false discovery rate of 5% is used to identify hospitals, hospital trusts and regional health authorities with significantly higher/lower survival than the reference. In addition, estimated risk-adjusted survival probabilities are published per hospital, hospital trust and regional health authority. The variation in risk-adjusted survival probabilities across hospitals for AMI shows a decreasing trend over time: estimated survival probabilities for AMI in 2011 varied from 80.6% (in the hospital with lowest estimated survival) to 91.7% (in the hospital with highest estimated survival), whereas it ranged from 83.8% to 91.2% in 2013. CONCLUSIONS: Since 2011, several hospitals and hospital trusts have initiated quality improvement projects, and some of the hospitals have improved the survival over these years. Public reporting of survival/mortality indicators are increasingly being used as quality measures of health care systems. Openness regarding the methods used to calculate the indicators are important, as it provides the opportunity of critically reviewing and discussing the methods in the literature. In this way, the methods employed for establishing the indicators may be improved.
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spelling pubmed-45642172015-09-17 30-Day Survival Probabilities as a Quality Indicator for Norwegian Hospitals: Data Management and Analysis Hassani, Sahar Lindman, Anja Schou Kristoffersen, Doris Tove Tomic, Oliver Helgeland, Jon PLoS One Research Article BACKGROUND: The Norwegian Knowledge Centre for the Health Services (NOKC) reports 30-day survival as a quality indicator for Norwegian hospitals. The indicators have been published annually since 2011 on the website of the Norwegian Directorate of Health (www.helsenorge.no), as part of the Norwegian Quality Indicator System authorized by the Ministry of Health. Openness regarding calculation of quality indicators is important, as it provides the opportunity to critically review and discuss the method. The purpose of this article is to describe the data collection, data pre-processing, and data analyses, as carried out by NOKC, for the calculation of 30-day risk-adjusted survival probability as a quality indicator. METHODS AND FINDINGS: Three diagnosis-specific 30-day survival indicators (first time acute myocardial infarction (AMI), stroke and hip fracture) are estimated based on all-cause deaths, occurring in-hospital or out-of-hospital, within 30 days counting from the first day of hospitalization. Furthermore, a hospital-wide (i.e. overall) 30-day survival indicator is calculated. Patient administrative data from all Norwegian hospitals and information from the Norwegian Population Register are retrieved annually, and linked to datasets for previous years. The outcome (alive/death within 30 days) is attributed to every hospital by the fraction of time spent in each hospital. A logistic regression followed by a hierarchical Bayesian analysis is used for the estimation of risk-adjusted survival probabilities. A multiple testing procedure with a false discovery rate of 5% is used to identify hospitals, hospital trusts and regional health authorities with significantly higher/lower survival than the reference. In addition, estimated risk-adjusted survival probabilities are published per hospital, hospital trust and regional health authority. The variation in risk-adjusted survival probabilities across hospitals for AMI shows a decreasing trend over time: estimated survival probabilities for AMI in 2011 varied from 80.6% (in the hospital with lowest estimated survival) to 91.7% (in the hospital with highest estimated survival), whereas it ranged from 83.8% to 91.2% in 2013. CONCLUSIONS: Since 2011, several hospitals and hospital trusts have initiated quality improvement projects, and some of the hospitals have improved the survival over these years. Public reporting of survival/mortality indicators are increasingly being used as quality measures of health care systems. Openness regarding the methods used to calculate the indicators are important, as it provides the opportunity of critically reviewing and discussing the methods in the literature. In this way, the methods employed for establishing the indicators may be improved. Public Library of Science 2015-09-09 /pmc/articles/PMC4564217/ /pubmed/26352600 http://dx.doi.org/10.1371/journal.pone.0136547 Text en © 2015 Hassani et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Hassani, Sahar
Lindman, Anja Schou
Kristoffersen, Doris Tove
Tomic, Oliver
Helgeland, Jon
30-Day Survival Probabilities as a Quality Indicator for Norwegian Hospitals: Data Management and Analysis
title 30-Day Survival Probabilities as a Quality Indicator for Norwegian Hospitals: Data Management and Analysis
title_full 30-Day Survival Probabilities as a Quality Indicator for Norwegian Hospitals: Data Management and Analysis
title_fullStr 30-Day Survival Probabilities as a Quality Indicator for Norwegian Hospitals: Data Management and Analysis
title_full_unstemmed 30-Day Survival Probabilities as a Quality Indicator for Norwegian Hospitals: Data Management and Analysis
title_short 30-Day Survival Probabilities as a Quality Indicator for Norwegian Hospitals: Data Management and Analysis
title_sort 30-day survival probabilities as a quality indicator for norwegian hospitals: data management and analysis
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4564217/
https://www.ncbi.nlm.nih.gov/pubmed/26352600
http://dx.doi.org/10.1371/journal.pone.0136547
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