Change in Hospital Risk-standardized Stroke Mortality Performance With and Without the Passive Surveillance Stroke Severity Score

Author:

Yu Amy Y.X.12,Kapral Moira K.23,Park Alison L.2,Fang Jiming2,Hill Michael D.4,Kamal Noreen5,Field Thalia S.6,Joundi Raed A.7,Peterson Sandra8,Zhao Yinshan9,Austin Peter C.2

Affiliation:

1. Department of Medicine (Neurology), Sunnybrook Health Sciences Centre, University of Toronto

2. ICES

3. Department of Medicine (General Internal Medicine), University of Toronto-University Health Network, Toronto, ON

4. Departments of Clinical Neurosciences, Community Health Sciences, Medicine, Radiology and Hotchkiss Brain Institute, University of Calgary, Calgary, AB

5. Department of Industrial Engineering, Dalhousie University, Halifax, NS

6. Department of Medicine (Neurology), Vancouver Stroke Program, University of British Columbia, Vancouver, BC

7. Department of Medicine, Hamilton Health Sciences Centre, McMaster University, Hamilton, ON

8. Centre for Health Services and Policy Research, University of British Columbia

9. Population Data BC, University of British Columbia, Vancouver, BC, Canada

Abstract

Background: Adjustment for baseline stroke severity is necessary for accurate assessment of hospital performance. We evaluated whether adjusting for the Passive Surveillance Stroke SeVerity (PaSSV) score, a measure of stroke severity derived using administrative data, changed hospital-specific estimated 30-day risk-standardized mortality rate (RSMR) after stroke. Methods: We used linked administrative data to identify adults who were hospitalized with ischemic stroke or intracerebral hemorrhage across 157 hospitals in Ontario, Canada between 2014 and 2019. We fitted a random effects logistic regression model using Markov Chain Monte Carlo methods to estimate hospital-specific 30-day RSMR and 95% credible intervals with adjustment for age, sex, Charlson comorbidity index, and stroke type. In a separate model, we additionally adjusted for stroke severity using PaSSV. Hospitals were defined as low-performing, average-performing, or high-performing depending on whether the RSMR and 95% credible interval were above, overlapping, or below the cohort’s crude mortality rate. Results: We identified 65,082 patients [48.0% were female, the median age (25th,75th percentiles) was 76 years (65,84), and 86.4% had an ischemic stroke]. The crude 30-day all-cause mortality rate was 14.1%. The inclusion of PaSSV in the model reclassified 18.5% (n=29) of the hospitals. Of the 143 hospitals initially classified as average-performing, after adjustment for PaSSV, 20 were reclassified as high-performing and 8 were reclassified as low-performing. Of the 4 hospitals initially classified as low-performing, 1 was reclassified as high-performing. All 10 hospitals initially classified as high-performing remained unchanged. Conclusion: PaSSV may be useful for risk-adjusting mortality when comparing hospital performance. External validation of our findings in other jurisdictions is needed.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Public Health, Environmental and Occupational Health

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