基于Logistic回归和Gompertz曲线的古巴COVID-19预测

IF 1.8 4区 医学 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Medicc Review Pub Date : 2020-07-01 DOI:10.37757/MR2020.V22.N3.8
Juan Felipe Medina-Mendieta, Manuel Cortés-Cortés, Manuel Cortés-Iglesias
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引用次数: 10

摘要

2020年3月11日,世卫组织宣布COVID-19为大流行,并呼吁各国政府采取严厉措施抗击疫情。至关重要的是,政府卫生当局和领导人必须对感染病例和死亡人数有可靠的估计,以便利用其掌握的资源采取必要的措施。目的检验logistic回归和Gompertz曲线预测古巴确诊病例、死亡病例高峰及总病例数的有效性。方法采用logistic和Gompertz生长曲线,采用最小二乘法和信息学工具进行调整,分析和预测COVID-19病例和死亡人数的增长情况。研究人员对意大利和西班牙这两个已经度过了最初感染率高峰的国家进行了研究,并从这些国家的研究结果推断,它们的模式适用于古巴。通过对其参数进行拟合优度和显著性检验,对该假设进行了检验。结果两种模型拟合良好,均方误差小,各参数均高度显著。结论基于逻辑回归和Gompertz曲线的模型在预测古巴感染高峰和死亡日期以及总病例数方面的有效性得到了证实。关键词:COVID-19, SARS-CoV-2, logistic模型,大流行,死亡率,古巴
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COVID-19 Forecasts for Cuba Using Logistic Regression and Gompertz Curves.

INTRODUCTION On March 11, 2020, WHO declared COVID-19 a pandemic and called on governments to impose drastic measures to fi ght it. It is vitally important for government health authorities and leaders to have reliable estimates of infected cases and deaths in order to apply the necessary measures with the resources at their disposal. OBJECTIVE Test the validity of the logistic regression and Gompertz curve to forecast peaks of confi rmed cases and deaths in Cuba, as well as total number of cases. METHODS An inferential, predictive study was conducted using lo-gistic and Gompertz growth curves, adjusted with the least squares method and informatics tools for analysis and prediction of growth in COVID-19 cases and deaths. Italy and Spain-countries that have passed the initial peak of infection rates-were studied, and it was inferred from the results of these countries that their models were ap-plicable to Cuba. This hypothesis was tested by applying goodness-of-fi t and signifi cance tests on its parameters.RESULTS Both models showed good fi t, low mean square errors, and all parameters were highly signifi cant. CONCLUSIONS The validity of models was confi rmed based on logis-tic regression and the Gompertz curve to forecast the dates of peak infections and deaths, as well as total number of cases in Cuba. KEYWORDS COVID-19, SARS-CoV-2, logistic models, pandemic, mortality, Cuba.

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来源期刊
Medicc Review
Medicc Review PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
3.30
自引率
9.50%
发文量
49
审稿时长
>12 weeks
期刊介绍: Uphold the highest standards of ethics and excellence, publishing open-access articles in English relevant to global health equity that offer the best of medical, population health and social sciences research and perspectives by Cuban and other developing-country professionals.
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