4.5 Article

Estimating lengths-of-stay of hospitalised COVID-19 patients using a non-parametric model: a case study in Galicia (Spain)

Journal

EPIDEMIOLOGY AND INFECTION
Volume 149, Issue -, Pages -

Publisher

CAMBRIDGE UNIV PRESS
DOI: 10.1017/S0950268821000959

Keywords

COVID-19; forecasting; ICU; length-of-stay; mixture cure model; non-parametric

Funding

  1. BEATRIZ GALINDO JUNIOR Spanish from MICINN (Ministerio de Ciencia, Innovacion y Universidades) [BGP18/00154]
  2. MINECO (Ministerio de Economia y Competitividad) (EU ERDF) [MTM2014-52876-R]
  3. Xunta de Galicia [ED431G 2019/01, ED431C-2020-14, ED431C2016-015]
  4. European Union (European Regional Development Fund - ERDF)
  5. Ramon Areces Foundation
  6. MICINN (EU ERDF) [MTM2017-82724-R]

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This study focuses on modeling the lengths-of-stay of hospitalized COVID-19 patients using real-time surveillance data, demonstrating that a non-parametric mixture cure model outperforms standard methods in estimating ICU and HW lengths-of-stay, and emphasizing the importance of adjusting for sex and age in accurately predicting occupancy rates and discharge/death outcomes.
Estimating the lengths-of-stay (LoS) of hospitalised COVID-19 patients is key for predicting the hospital beds' demand and planning mitigation strategies, as overwhelming the healthcare systems has critical consequences for disease mortality. However, accurately mapping the time-to-event of hospital outcomes, such as the LoS in the intensive care unit (ICU), requires understanding patient trajectories while adjusting for covariates and observation bias, such as incomplete data. Standard methods, such as the Kaplan-Meier estimator, require prior assumptions that are untenable given current knowledge. Using real-time surveillance data from the first weeks of the COVID-19 epidemic in Galicia (Spain), we aimed to model the time-to-event and event probabilities of patients' hospitalised, without parametric priors and adjusting for individual covariates. We applied a non-parametric mixture cure model and compared its performance in estimating hospital ward (HW)/ICU LoS to the performances of commonly used methods to estimate survival. We showed that the proposed model outperformed standard approaches, providing more accurate ICU and HW LoS estimates. Finally, we applied our model estimates to simulate COVID-19 hospital demand using a Monte Carlo algorithm. We provided evidence that adjusting for sex, generally overlooked in prediction models, together with age is key for accurately forecasting HW and ICU occupancy, as well as discharge or death outcomes.

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