Simultaneous Confidence Band Approach for Comparison of COVID-19 Case Counts
Q. Shao ()
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Q. Shao: The University of Toledo
Statistics in Biosciences, 2023, vol. 15, issue 2, No 4, 372-383
Abstract:
Abstract The outbreak of the novel coronavirus (COVID-19) was declared to be a global emergency in January of 2020, and everyday life throughout the world was disrupted. Among many questions about COVID-19 that remain unanswered, it is of interest for society to identify whether there is any significant difference in daily case counts between males and females. The daily case count sequences are correlated due to the nature of a contagious disease, and contain a nonlinear trend owing to several unexpected events, such as vaccinations and the appearance of the delta variant. It is possible that these unexpected events have changed the dynamical system that generates data. The classic t-test is not appropriate to analyze such correlated data with a nonconstant trend. This study applies a simultaneous confidence band approach in an attempt to overcome these difficulties; that is, a simultaneous confidence band for the trend of an autoregressive moving-average time series is constructed using B-spline estimation. The proposed method is applied to the daily case count data of seniors of both genders (at least 60 years old) in the State of Ohio from April 1, 2020 to March 31, 2022, and the result shows that there is a significant difference at the 95% confidence level between the two gender case counts adjusted for the population sizes.
Keywords: COVID-19; Case counts; B-splines; Simultaneous confidence band; Autoregressive moving-average time series (search for similar items in EconPapers)
Date: 2023
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DOI: 10.1007/s12561-023-09364-y
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