Literature DB >> 29106315

The Paradox of End-of-Life Hospital Treatment Intensity among Black Patients: A Retrospective Cohort Study.

Amber E Barnato1, Chung-Chou H Chang2,3, Judith R Lave4, Derek C Angus4,5.   

Abstract

OBJECTIVE: Black patients are more likely than white patients to die in the hospital with intensive care and life-sustaining treatments and less likely to use hospice. Regional concentration of high end-of-life (EOL) treatment intensity practice patterns may disproportionately affect black patients. We calculated and compared race-specific hospital-level EOL treatment intensity in Pennsylvania.
METHODS: We conducted a retrospective cohort analysis of Pennsylvania acute care hospital admissions, 2001-2007, among black and white admissions ≥21 years old at high probability of dying (HPD) (≥15% predicted probability of dying at admission). We calculated hospitals' race-specific observed, expected, and Bayes' shrunken observed-to-expected ratios of intensive care unit (ICU) admission, ICU length of stay (LOS), intubation/mechanical ventilation, hemodialysis, tracheostomy, and gastrostomy among HPD admissions; and an empirically weighted EOL treatment intensity index summing these ratios.
RESULTS: There were 35,609 black HPD admissions (27,576 unique patients) and 311,896 white HPD admissions (252,662 unique patients) to 182 hospitals. Among 95 hospitals with ≥30 black HPD admissions, 80% of black admissions were concentrated in 29 hospitals, where black-specific observed and expected EOL measures were usually higher than white-specific measures (p < 0.001 for all but 5/24 measures). Hospitals' black-specific and white-specific observed-to-expected ratios of ICU and life-sustaining treatment (LST) (rho 0.52-0.90) and EOL index (rho = 0.92) were highly correlated. However, black-specific observed-to-expected ratios and overall EOL intensity index were consistently lower than white-specific ratios (p < 0.001 for all except hemodialysis).
CONCLUSIONS: In Pennsylvania, black-serving hospitals have higher standardized EOL treatment intensity than nonblack-serving hospitals, contributing to black patients' relatively higher use of intensive treatment. However, conditional on being admitted to the same high-intensity hospital and after risk adjustment, blacks are less intensively treated than whites.

Entities:  

Keywords:  disparity; hospital profiling; intensive care; life support; race; terminal care

Mesh:

Year:  2017        PMID: 29106315      PMCID: PMC5757087          DOI: 10.1089/jpm.2016.0557

Source DB:  PubMed          Journal:  J Palliat Med        ISSN: 1557-7740            Impact factor:   2.947


  29 in total

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