Michalak Michał P, Węglińska Elżbieta, Kulawik Agnieszka, Cordes Jack, Lupa Michał, Leśniak Andrzej
Faculty of Geology, Geophysics and Environmental Protection, AGH University of Krakow, Kraków, Poland.
Faculty of Science and Technology, University of Silesia in Katowice, Katowice, Poland.
Front Public Health. 2025 Aug 4;13:1589461. doi: 10.3389/fpubh.2025.1589461. eCollection 2025.
This study examines how public health institutions estimate regional COVID-19 burdens, pursuing two primary objectives: (1) to analyze the methodologies employed for regional risk assessment, and (2) to perform spatial and Spearman rank correlation analyses of risk metrics that incorporate testing data across 101 countries. Classification methods used to assess COVID-19 risk often treat testing as a secondary, qualitative factor, overlooking its value as a quantitative input. Integrating testing data with case counts can improve the accuracy of regional infection probability estimates. Spatial analysis revealed that probabilistic metrics-such as the local probability of infection-showed stronger spatial synchronization of epidemic patterns compared to observed-to-expected case ratios. The death-to-population ratio displayed the strongest positive correlation with the observed-to-expected cases ratio. Conversely, the case fatality rate exhibited only a weak positive correlation with probabilistic metrics, though these correlations were not consistently statistically significant. The findings underscore the potential of probabilistic metrics, such as the local probability of infection, in predicting COVID-19 risk. Further research is warranted to explore the predictive capacity of probabilistic metrics concerning death-related outcomes.
本研究探讨了公共卫生机构如何估算区域新冠疫情负担,旨在实现两个主要目标:(1)分析用于区域风险评估的方法,(2)对纳入101个国家检测数据的风险指标进行空间和斯皮尔曼等级相关分析。用于评估新冠疫情风险的分类方法通常将检测视为次要的定性因素,而忽略了其作为定量输入的价值。将检测数据与病例数相结合可以提高区域感染概率估计的准确性。空间分析表明,与观察到的与预期病例数之比相比,诸如局部感染概率等概率指标显示出更强的疫情模式空间同步性。死亡人口比与观察到的与预期病例数之比呈现出最强的正相关。相反,病死率与概率指标仅呈现出较弱的正相关,尽管这些相关性在统计上并不始终显著。研究结果强调了诸如局部感染概率等概率指标在预测新冠疫情风险方面的潜力。有必要进行进一步研究,以探索概率指标对与死亡相关结果的预测能力。