학술논문

Estimated Covid-19 burden in Spain: ARCH underreported non-stationary time series.
Document Type
Article
Source
BMC Medical Research Methodology. 3/28/2023, Vol. 23 Issue 1, p1-8. 8p.
Subject
*TIME series analysis
*COVID-19
*COVID-19 pandemic
*AUTOREGRESSIVE models
*ARCH model (Econometrics)
*FLATFOOT
Language
ISSN
1471-2288
Abstract
Background: The problem of dealing with misreported data is very common in a wide range of contexts for different reasons. The current situation caused by the Covid-19 worldwide pandemic is a clear example, where the data provided by official sources were not always reliable due to data collection issues and to the high proportion of asymptomatic cases. In this work, a flexible framework is proposed, with the objective of quantifying the severity of misreporting in a time series and reconstructing the most likely evolution of the process. Methods: The performance of Bayesian Synthetic Likelihood to estimate the parameters of a model based on AutoRegressive Conditional Heteroskedastic time series capable of dealing with misreported information and to reconstruct the most likely evolution of the phenomenon is assessed through a comprehensive simulation study and illustrated by reconstructing the weekly Covid-19 incidence in each Spanish Autonomous Community. Results: Only around 51% of the Covid-19 cases in the period 2020/02/23–2022/02/27 were reported in Spain, showing relevant differences in the severity of underreporting across the regions. Conclusions: The proposed methodology provides public health decision-makers with a valuable tool in order to improve the assessment of a disease evolution under different scenarios. [ABSTRACT FROM AUTHOR]