Estimation of missing total number of trials in binomial time series analysis by a BDLM process with an illustration of the COVID-19 pandemic data

Q3 Medicine
Massoud Nakhkoob
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引用次数: 0

Abstract

The criteria used for sample size determination are generally developed based on applying averaging techniques to the possible values a variable can take on. This paper presented new methods for estimation of sample size, in particular for binomial distribution, when an observation on number of successes is available. In this paper, first, the general criteria for the determination of sample size were reviewed. Next, the BDLM process was concisely introduced and fit to the first real-world dataset. Then, based on the model, four new methods for the estimation of the missing total number of trials in binomial time series were developed with the illustrated small dataset, where number of successes at any specific time point was known. In addition, the worst outcome criterion was evaluated based on the highest probability density (HPD) confidence set by using the illustrated data and the results were compared with those of the new methods developed in the present paper. Later, an illustration of COVID-19 trinomial data was presented in which BDLM was fit to the time series of cured cases infected due to COVID-19 disease. Finally, the new methods of estimation of missing total confirmed cases evaluated by the relatively large dataset.
用BDLM过程估计二项时间序列分析中缺失的试验总数,并举例说明COVID-19大流行数据
用于确定样本量的标准通常是基于对变量可能具有的值应用平均技术而制定的。本文提出了估计样本量的新方法,特别是当可以观察到成功次数时的二项式分布。本文首先对样品大小测定的一般标准进行了综述。接下来,简要介绍了BDLM过程,并将其适用于第一个真实世界的数据集。然后,基于该模型,用所示的小数据集开发了四种新的方法来估计二项式时间序列中遗漏的试验总数,其中已知在任何特定时间点的成功次数。此外,通过使用所示数据,基于最高概率密度(HPD)置信集对最坏结果标准进行了评估,并将结果与本文开发的新方法进行了比较。随后,对新冠肺炎三项数据进行了说明,其中BDLM适用于因新冠肺炎疾病感染的治愈病例的时间序列。最后,通过相对较大的数据集评估了遗漏总确诊病例的新估计方法。
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
Biostatistics and Epidemiology
Biostatistics and Epidemiology Medicine-Health Informatics
CiteScore
1.80
自引率
0.00%
发文量
23
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