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2022-04-20Zeitschriftenartikel
Data-driven prediction of COVID-19 cases in Germany for decision making
dc.contributor.authorRefisch, Lukas
dc.contributor.authorLorenz, Fabian
dc.contributor.authorRiedlinger, Torsten
dc.contributor.authorTaubenböck, Hannes
dc.contributor.authorFischer, Martina
dc.contributor.authorGrabenhenrich, Linus
dc.contributor.authorWolkewitz, Martin
dc.contributor.authorBinder, Harald
dc.contributor.authorKreutz, Clemens
dc.date.accessioned2024-09-04T11:19:31Z
dc.date.available2024-09-04T11:19:31Z
dc.date.issued2022-04-20none
dc.identifier.other10.1186/s12874-022-01579-9
dc.identifier.urihttp://edoc.rki.de/176904/12089
dc.description.abstractBackground The COVID-19 pandemic has led to a high interest in mathematical models describing and predicting the diverse aspects and implications of the virus outbreak. Model results represent an important part of the information base for the decision process on different administrative levels. The Robert-Koch-Institute (RKI) initiated a project whose main goal is to predict COVID-19-specific occupation of beds in intensive care units: Steuerungs-Prognose von Intensivmedizinischen COVID-19 Kapazitäten (SPoCK). The incidence of COVID-19 cases is a crucial predictor for this occupation. Methods We developed a model based on ordinary differential equations for the COVID-19 spread with a time-dependent infection rate described by a spline. Furthermore, the model explicitly accounts for weekday-specific reporting and adjusts for reporting delay. The model is calibrated in a purely data-driven manner by a maximum likelihood approach. Uncertainties are evaluated using the profile likelihood method. The uncertainty about the appropriate modeling assumptions can be accounted for by including and merging results of different modelling approaches. The analysis uses data from Germany describing the COVID-19 spread from early 2020 until March 31st, 2021. Results The model is calibrated based on incident cases on a daily basis and provides daily predictions of incident COVID-19 cases for the upcoming three weeks including uncertainty estimates for Germany and its subregions. Derived quantities such as cumulative counts and 7-day incidences with corresponding uncertainties can be computed. The estimation of the time-dependent infection rate leads to an estimated reproduction factor that is oscillating around one. Data-driven estimation of the dark figure purely from incident cases is not feasible. Conclusions We successfully implemented a procedure to forecast near future COVID-19 incidences for diverse subregions in Germany which are made available to various decision makers via an interactive web application. Results of the incidence modeling are also used as a predictor for forecasting the need of intensive care units.eng
dc.language.isoengnone
dc.publisherRobert Koch-Institut
dc.rights(CC BY 3.0 DE) Namensnennung 3.0 Deutschlandger
dc.rights.urihttp://creativecommons.org/licenses/by/3.0/de/
dc.subjectCOVID-19ger
dc.subjectinfectious disease modelsger
dc.subjectinput estimationger
dc.subjectordinary differential equationsger
dc.subjectparameter estimationger
dc.subjectnonlinear systemsger
dc.subjectSEIR modelsger
dc.subject.ddc610 Medizin und Gesundheitnone
dc.titleData-driven prediction of COVID-19 cases in Germany for decision makingnone
dc.typearticle
dc.identifier.urnurn:nbn:de:0257-176904/12089-1
dc.type.versionupdatedVersionnone
local.edoc.container-titleBMC Medical Research Methodologynone
local.edoc.container-issn1471-2288none
local.edoc.pages13none
local.edoc.type-nameZeitschriftenartikel
local.edoc.container-typeperiodical
local.edoc.container-type-nameZeitschrift
local.edoc.container-urlhttps://bmcmedresmethodol.biomedcentral.com/none
local.edoc.container-publisher-nameSpringer Naturenone
local.edoc.container-volume22none
local.edoc.container-reportyear2022none
dc.description.versionPeer Reviewednone

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