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Predictors of High Profit and High Deficit Outliers under SwissDRG of a Tertiary Care Center

PRINCIPLES: Case weights of Diagnosis Related Groups (DRGs) are determined by the average cost of cases from a previous billing period. However, a significant amount of cases are largely over- or underfunded. We therefore decided to analyze earning outliers of our hospital as to search for predictor...

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Autores principales: Mehra, Tarun, Müller, Christian Thomas Benedikt, Volbracht, Jörk, Seifert, Burkhardt, Moos, Rudolf
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4627843/
https://www.ncbi.nlm.nih.gov/pubmed/26517545
http://dx.doi.org/10.1371/journal.pone.0140874
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author Mehra, Tarun
Müller, Christian Thomas Benedikt
Volbracht, Jörk
Seifert, Burkhardt
Moos, Rudolf
author_facet Mehra, Tarun
Müller, Christian Thomas Benedikt
Volbracht, Jörk
Seifert, Burkhardt
Moos, Rudolf
author_sort Mehra, Tarun
collection PubMed
description PRINCIPLES: Case weights of Diagnosis Related Groups (DRGs) are determined by the average cost of cases from a previous billing period. However, a significant amount of cases are largely over- or underfunded. We therefore decided to analyze earning outliers of our hospital as to search for predictors enabling a better grouping under SwissDRG. METHODS: 28,893 inpatient cases without additional private insurance discharged from our hospital in 2012 were included in our analysis. Outliers were defined by the interquartile range method. Predictors for deficit and profit outliers were determined with logistic regressions. Predictors were shortlisted with the LASSO regularized logistic regression method and compared to results of Random forest analysis. 10 of these parameters were selected for quantile regression analysis as to quantify their impact on earnings. RESULTS: Psychiatric diagnosis and admission as an emergency case were significant predictors for higher deficit with negative regression coefficients for all analyzed quantiles (p<0.001). Admission from an external health care provider was a significant predictor for a higher deficit in all but the 90% quantile (p<0.001 for Q10, Q20, Q50, Q80 and p = 0.0017 for Q90). Burns predicted higher earnings for cases which were favorably remunerated (p<0.001 for the 90% quantile). Osteoporosis predicted a higher deficit in the most underfunded cases, but did not predict differences in earnings for balanced or profitable cases (Q10 and Q20: p<0.00, Q50: p = 0.10, Q80: p = 0.88 and Q90: p = 0.52). ICU stay, mechanical and patient clinical complexity level score (PCCL) predicted higher losses at the 10% quantile but also higher profits at the 90% quantile (p<0.001). CONCLUSION: We suggest considering psychiatric diagnosis, admission as an emergencay case and admission from an external health care provider as DRG split criteria as they predict large, consistent and significant losses.
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spelling pubmed-46278432015-11-06 Predictors of High Profit and High Deficit Outliers under SwissDRG of a Tertiary Care Center Mehra, Tarun Müller, Christian Thomas Benedikt Volbracht, Jörk Seifert, Burkhardt Moos, Rudolf PLoS One Research Article PRINCIPLES: Case weights of Diagnosis Related Groups (DRGs) are determined by the average cost of cases from a previous billing period. However, a significant amount of cases are largely over- or underfunded. We therefore decided to analyze earning outliers of our hospital as to search for predictors enabling a better grouping under SwissDRG. METHODS: 28,893 inpatient cases without additional private insurance discharged from our hospital in 2012 were included in our analysis. Outliers were defined by the interquartile range method. Predictors for deficit and profit outliers were determined with logistic regressions. Predictors were shortlisted with the LASSO regularized logistic regression method and compared to results of Random forest analysis. 10 of these parameters were selected for quantile regression analysis as to quantify their impact on earnings. RESULTS: Psychiatric diagnosis and admission as an emergency case were significant predictors for higher deficit with negative regression coefficients for all analyzed quantiles (p<0.001). Admission from an external health care provider was a significant predictor for a higher deficit in all but the 90% quantile (p<0.001 for Q10, Q20, Q50, Q80 and p = 0.0017 for Q90). Burns predicted higher earnings for cases which were favorably remunerated (p<0.001 for the 90% quantile). Osteoporosis predicted a higher deficit in the most underfunded cases, but did not predict differences in earnings for balanced or profitable cases (Q10 and Q20: p<0.00, Q50: p = 0.10, Q80: p = 0.88 and Q90: p = 0.52). ICU stay, mechanical and patient clinical complexity level score (PCCL) predicted higher losses at the 10% quantile but also higher profits at the 90% quantile (p<0.001). CONCLUSION: We suggest considering psychiatric diagnosis, admission as an emergencay case and admission from an external health care provider as DRG split criteria as they predict large, consistent and significant losses. Public Library of Science 2015-10-30 /pmc/articles/PMC4627843/ /pubmed/26517545 http://dx.doi.org/10.1371/journal.pone.0140874 Text en © 2015 Mehra 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
Mehra, Tarun
Müller, Christian Thomas Benedikt
Volbracht, Jörk
Seifert, Burkhardt
Moos, Rudolf
Predictors of High Profit and High Deficit Outliers under SwissDRG of a Tertiary Care Center
title Predictors of High Profit and High Deficit Outliers under SwissDRG of a Tertiary Care Center
title_full Predictors of High Profit and High Deficit Outliers under SwissDRG of a Tertiary Care Center
title_fullStr Predictors of High Profit and High Deficit Outliers under SwissDRG of a Tertiary Care Center
title_full_unstemmed Predictors of High Profit and High Deficit Outliers under SwissDRG of a Tertiary Care Center
title_short Predictors of High Profit and High Deficit Outliers under SwissDRG of a Tertiary Care Center
title_sort predictors of high profit and high deficit outliers under swissdrg of a tertiary care center
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4627843/
https://www.ncbi.nlm.nih.gov/pubmed/26517545
http://dx.doi.org/10.1371/journal.pone.0140874
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