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Separating the wheat from the chaff: How to measure hospital quality in routine data?

Authors :
Bilger, Jana
Pletscher, Mark
Muller, Tobias
Source :
Health Services Research. April, 2024, Vol. 59 Issue 2, p1r, 11 p.
Publication Year :
2024

Abstract

Objective: To measure hospital quality based on routine data available in many health care systems including the United States, Germany, the United Kingdom, Scandinavia, and Switzerland. Data Sources and Study Setting: We use the Swiss Medical Statistics of Hospitals, an administrative hospital dataset of all inpatient stays in acute care hospitals in Switzerland for the years 2017-2019. Study Design: We study hospital quality based on quality indicators used by leading agencies in five countries (the United States, the United Kingdom, Germany, Austria, and Switzerland) for two high-volume elective procedures: inguinal hernia repair and hip replacement surgery. We assess how least absolute shrinkage and selection operator (LASSO), a supervised machine learning technique for variable selection, and Mundlak corrections that account for unobserved heterogeneity between hospitals can be used to improve risk adjustment and correct for imbalances in patient risks across hospitals. Data Collection/Extraction Methods: The Swiss Federal Statistical Office collects annual data on all acute care inpatient stays including basic socio-demographic patient attributes and case-level diagnosis and procedure codes. Principal Findings: We find that LASSO-selected and Mundlak-corrected hospital random effects logit models outperform common practice logistic regression models used for risk adjustment. Besides the more favorable statistical properties, they have superior in- and out-of-sample explanatory power. Moreover, we find that Mundlak-corrected logits and the more complex LASSO-selected models identify the same hospitals as high or low-quality offering public health authorities a valuable alternative to standard logistic regression models. Our analysis shows that hospitals vary considerably in the quality they provide to patients. Conclusion: We find that routine hospital data can be used to measure clinically relevant quality indicators that help patients make informed hospital choices. KEYWORDS hospital, machine learning, quality of care, risk adjustment for clinical outcomes, surgery<br />1 | INTRODUCTION Many developed countries including Germany, the Netherlands, Belgium, Switzerland, and the United States (Affordable Care Act marketplaces & Medicare) have adapted elements of 'managed competition' in their [...]

Details

Language :
English
ISSN :
00179124
Volume :
59
Issue :
2
Database :
Gale General OneFile
Journal :
Health Services Research
Publication Type :
Periodical
Accession number :
edsgcl.789289840
Full Text :
https://doi.org/10.1111/1475-6773.14282