Institute of Smart Cities, Public University of Navawordpadrre, Pamplona, Spain.
Departamento de Matemáticas, Research Group MODES, CITIC, Universidade da Coruña, A Coruña, Spain.
PLoS One. 2023 Feb 27;18(2):e0282331. doi: 10.1371/journal.pone.0282331. eCollection 2023.
Hospital bed demand forecast is a first-order concern for public health action to avoid healthcare systems to be overwhelmed. Predictions are usually performed by estimating patients flow, that is, lengths of stay and branching probabilities. In most approaches in the literature, estimations rely on not updated published information or historical data. This may lead to unreliable estimates and biased forecasts during new or non-stationary situations. In this paper, we introduce a flexible adaptive procedure using only near-real-time information. Such method requires handling censored information from patients still in hospital. This approach allows the efficient estimation of the distributions of lengths of stay and probabilities used to represent the patient pathways. This is very relevant at the first stages of a pandemic, when there is much uncertainty and too few patients have completely observed pathways. Furthermore, the performance of the proposed method is assessed in an extensive simulation study in which the patient flow in a hospital during a pandemic wave is modelled. We further discuss the advantages and limitations of the method, as well as potential extensions.
医院床位需求预测是公共卫生行动的首要关注点,可避免医疗系统不堪重负。预测通常通过估计患者流量(即住院时间和分支概率)来完成。在文献中的大多数方法中,估计依赖于未更新的已发表信息或历史数据。这可能导致在新情况或非平稳情况下产生不可靠的估计和有偏差的预测。在本文中,我们介绍了一种仅使用近实时信息的灵活自适应程序。该方法需要处理仍在住院的患者的截尾信息。这种方法可以有效地估计住院时间和概率的分布,这些分布用于表示患者的路径。在大流行的早期阶段,当存在很大的不确定性且只有很少的患者完全观察到路径时,这一点非常重要。此外,我们还在一项广泛的模拟研究中评估了所提出方法的性能,其中模拟了大流行期间医院的患者流量。我们进一步讨论了该方法的优点和局限性,以及潜在的扩展。