Marín-Machuca Olegario, Chacón Ruy D, Alvarez-Lovera Natalia, Pesantes-Grados Pedro, Pérez-Timaná Luis, Marín-Sánchez Obert
Departamento Académico de Ciencias Alimentarias, Facultad de Oceanografía, Pesquería, Ciencias Alimentarias y Acuicultura, Universidad Nacional Federico Villarreal, Calle Roma 350, Miraflores 15074, Peru.
Department of Pathology, School of Veterinary Medicine, University of São Paulo, Av. Prof. Orlando M. Paiva, 87, São Paulo 05508-270, Brazil.
Vaccines (Basel). 2023 Oct 27;11(11):1648. doi: 10.3390/vaccines11111648.
The COVID-19 pandemic has caused widespread infections, deaths, and substantial economic losses. Vaccine development efforts have led to authorized candidates reducing hospitalizations and mortality, although variant emergence remains a concern. Peru faced a significant impact due to healthcare deficiencies. This study employed logistic regression to mathematically model COVID-19's dynamics in Peru over three years and assessed the correlations between cases, deaths, and people vaccinated. We estimated the critical time (t) for cases (627 days), deaths (389 days), and people vaccinated (268 days), which led to the maximum speed values on those days. Negative correlations were identified between people vaccinated and cases (-0.40) and between people vaccinated and deaths (-0.75), suggesting reciprocal relationships between those pairs of variables. In addition, Granger causality tests determined that the vaccinated population dynamics can be used to forecast the behavior of deaths (-value < 0.05), evidencing the impact of vaccinations against COVID-19. Also, the coefficient of determination (R) indicated a robust representation of the real data. Using the Peruvian context as an example case, the logistic model's projections of cases, deaths, and vaccinations provide crucial insights into the pandemic, guiding public health tactics and reaffirming the essential role of vaccinations and resource distribution for an effective fight against COVID-19.
新冠疫情已造成广泛感染、死亡及巨大经济损失。疫苗研发工作已带来获批的候选疫苗,减少了住院率和死亡率,尽管病毒变种的出现仍是一个担忧。秘鲁因医疗保健不足面临重大影响。本研究采用逻辑回归对秘鲁三年来新冠疫情的动态进行数学建模,并评估病例、死亡和接种疫苗人群之间的相关性。我们估计了病例(627天)、死亡(389天)和接种疫苗人群(268天)的关键时间(t),这些时间导致了当日的最大速度值。接种疫苗人群与病例之间(-0.40)以及接种疫苗人群与死亡之间(-0.75)存在负相关,表明这几对变量之间存在相互关系。此外,格兰杰因果检验确定接种疫苗人群动态可用于预测死亡行为(p值<0.05),证明了新冠疫苗接种的影响。而且,决定系数(R)表明对实际数据有较强的代表性。以秘鲁的情况为例,逻辑模型对病例、死亡和疫苗接种的预测为疫情提供了关键见解,指导公共卫生策略,并再次确认了疫苗接种和资源分配在有效抗击新冠疫情中的重要作用。