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Promising solution for standardised length of hospital stay based on time-to-event models and contemporary Australian administrative data

Por: Duke · G. J. · Hirth · S. · Santamaria · J. D. · Li · Z. · Read · C. · Hamilton · A. · Lapiz · E. · Le · T. · Fernando · T. · Merlo · R.
Objective

Hospital length of stay (LOS) is a key indicator of hospital efficiency and quality of care, but a reliable metric for benchmarking LOS remains problematic. This report describes a time-to-event methodology to generate a hospital standardised LOS ratio (HSLR).

Design

Retrospective observational analysis of LOS from a jurisdictional administrative dataset using a time-to-event (hazard of discharge) analytic approach to generate risk-adjusted LOS (predicted LOS—pLOS), and the HSLR (= (sum observed LOS)/(sum total pLOS)).

Setting

219 (public and private) acute-care hospitals in the State of Victoria, Australia, adult population 5.28 million.

Participants

2.73 million adult multiday separations and 15.53 million bed-days from July 2019 to June 2024.

Interventions

Nil.

Outcome measures

Descriptive statistics for annual mean LOS (aLOS), pLOS and HSLR at the hospital level with model fit assessed for calibration (Cox-Snell residuals), classification (aLOS and HSLR results for hospital-years compared to benchmark), variance (intraclass correlation coefficient (ICC) at provider level) and model dispersion (value () and random effect SD ()) characteristics.

Results

Observed LOS was markedly right skewed and autocorrelated (p3 SD of benchmark); whereas 936 (99.5%) HSLR values were inliers (

Conclusions

aLOS is a simple descriptor but poor comparator. Time-to-event survival analytic models furnish risk-adjusted pLOS and HSLR metrics which indicate that the majority of LOS variation is due to patient-related, not hospital, factors.

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