NAIVE STATISTICAL ANALYSES FOR COVID-19: APPLICATION TO DATA FROM BRAZIL AND ITALY

Q4 Medicine
C. Pereira, L. R. Nakamura, P. Rodrigues
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引用次数: 1

Abstract

This article is a direct consequence of the authors’ desire to discuss the role of statistics in data analysis. The analysis of coronavirus (COVID-19) databases are used as to show simple, but powerful statistical frameworks. We do believe that models for assessing future trends in temporal data in general, and in cases and/or deaths of COVID-19, belongs to the area of (Bio)Statistics. Just as engineers use knowledge of physics, chemistry and often architecture, when constructing bridges, buildings and roads, statisticians use knowledge of mathematics, computer science and even physics for modelling, analysing, and forecasting in order to transform data into information. While the statistician’s contribution is rarely acknowledged, everyone knows that a building is a work of an engineer. Nonetheless, nowadays statistics has been gaining the attention that it deserves due to the rise of big data and data science that was built on the foundations of statistics. This article shows that, even with only basic knowledge of statistics, one can adequately collaborate with the community in dealing with very important issues such as the COVID-19 numbers. In order to model and to obtain predictions we use well-known distributions to statisticians working on survival analysis: gamma, Weibull and log-normal distributions. We also make use of singular spectrum analysis, a simple non-parametric time series methodology, for an analogous purpose. Survival analysis is a research area widely used in Biostatistics and even in Reliability, while time series analysis is widely used across areas where the data is measured along the time.
针对covid-19的幼稚统计分析:在巴西和意大利数据中的应用
这篇文章是作者希望讨论统计在数据分析中的作用的直接结果。对冠状病毒(COVID-19)数据库的分析用于展示简单但功能强大的统计框架。我们确实认为,用于评估一般时间数据以及COVID-19病例和/或死亡的未来趋势的模型属于(生物)统计领域。就像工程师在建造桥梁、建筑物和道路时使用物理、化学和建筑学知识一样,统计学家使用数学、计算机科学甚至物理学知识来建模、分析和预测,以便将数据转化为信息。虽然统计学家的贡献很少得到承认,但每个人都知道,建筑是工程师的杰作。然而,随着以统计学为基础的大数据和数据科学的兴起,统计学得到了应有的关注。这篇文章表明,即使只有基本的统计知识,人们也可以在处理COVID-19数字等非常重要的问题时与社区充分合作。为了建立模型并获得预测,我们对从事生存分析的统计学家使用众所周知的分布:伽玛分布、威布尔分布和对数正态分布。我们也利用奇异谱分析,一种简单的非参数时间序列方法,用于类似的目的。生存分析是生物统计学甚至可靠性中广泛应用的研究领域,而时间序列分析则广泛应用于沿时间测量数据的各个领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Revista Brasileira de Biometria
Revista Brasileira de Biometria Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
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53 weeks
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