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      Peer Review of “A Framework for a Statistical Characterization of Epidemic Cycles: COVID-19 Case Study”

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      , BVMS, MPVM, PhD, DACVPM, FACE 1
      JMIRx Med
      JMIR Publications
      COVID-19, pandemics, infection control, models, experimental, longitudinal studies, statistical modeling, epidemiology

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          A Framework for a Statistical Characterization of Epidemic Cycles: COVID-19 Case Study

          Background Since the beginning of the COVID-19 pandemic, researchers and health authorities have sought to identify the different parameters that drive its local transmission cycles to make better decisions regarding prevention and control measures. Different modeling approaches have been proposed in an attempt to predict the behavior of these local cycles. Objective This paper presents a framework to characterize the different variables that drive the local, or epidemic, cycles of the COVID-19 pandemic, in order to provide a set of relatively simple, yet efficient, statistical tools to be used by local health authorities to support decision making. Methods Virtually closed cycles were compared to cycles in progress from different locations that present similar patterns in the figures that describe them. With the aim to compare populations of different sizes at different periods of time and locations, the cycles were normalized, allowing an analysis based on the core behavior of the numerical series. A model for the reproduction number was derived from the experimental data, and its performance was presented, including the effect of subnotification (ie, underreporting). A variation of the logistic model was used together with an innovative inventory model to calculate the actual number of infected persons, analyze the incubation period, and determine the actual onset of local epidemic cycles. Results The similarities among cycles were demonstrated. A pattern between the cycles studied, which took on a triangular shape, was identified and used to make predictions about the duration of future cycles. Analyses on effective reproduction number (R t ) and subnotification effects for Germany, Italy, and Sweden were presented to show the performance of the framework introduced here. After comparing data from the three countries, it was possible to determine the probable dates of the actual onset of the epidemic cycles for each country, the typical duration of the incubation period for the disease, and the total number of infected persons during each cycle. In general terms, a probable average incubation time of 5 days was found, and the method used here was able to estimate the end of the cycles up to 34 days in advance, while demonstrating that the impact of the subnotification level (ie, error) on the effective reproduction number was <5%. Conclusions It was demonstrated that, with relatively simple mathematical tools, it is possible to obtain a reliable understanding of the behavior of COVID-19 local epidemic cycles, by introducing an integrated framework for identifying cycle patterns and calculating the variables that drive it, namely: the R t , the subnotification effects on estimations, the most probable actual cycles start dates, the total number of infected, and the most likely incubation period for SARS-CoV-2.

            Author and article information

            Journal
            JMIRx Med
            JMIRx Med
            JMed
            JMIRx Med
            JMIR Publications (Toronto, Canada )
            2563-6316
            Jan-Mar 2021
            18 March 2021
            : 2
            : 1
            : e27260
            Affiliations
            [1 ] College of Veterinary Medicine and Biomedical Sciences Colorado State University Fort Collins, CO United States
            Author information
            https://orcid.org/0000-0001-5982-6331
            Article
            v2i1e27260
            10.2196/27260
            10414490
            ccfe8c3d-2179-47ae-811a-f0813ffc785a
            ©Mo Salman. Originally published in JMIRx Med (https://med.jmirx.org), 18.03.2021.

            This is an open-access article distributed under the terms of the Creative Commons Attribution License ( https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the JMIRx Med, is properly cited. The complete bibliographic information, a link to the original publication on http://med.jmirx.org/, as well as this copyright and license information must be included.

            History
            : 18 January 2021
            : 27 January 2021
            Categories
            Peer-Review Report
            Peer-Review Report

            covid-19,pandemics,infection control,models,experimental,longitudinal studies,statistical modeling,epidemiology

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