about
P1889
Clinical aspects and self-reported symptoms of sequelae of Yersinia enterocolitica infections in a population-based study, Germany 2009-2010OutbreakTools: a new platform for disease outbreak analysis using the R softwareAre People Living Near Modern Swine Production Facilities at Increased Risk of Influenza Virus Infection?Prevalence of antibodies to 2009 pandemic influenza A (H1N1) virus in German adult population in pre- and post-pandemic period.German outbreak of Escherichia coli O104:H4 associated with sprouts.Carrier prevalence, secondary household transmission, and long-term shedding in 2 districts during the Escherichia coli O104:H4 outbreak in Germany, 2011.Duration of fecal shedding of Shiga toxin-producing Escherichia coli O104:H4 in patients infected during the 2011 outbreak in Germany: a multicenter study.Shiga toxin-producing Escherichia coli O157 is more likely to lead to hospitalization and death than non-O157 serogroups--except O104Estimating the under-reporting of norovirus illness in Germany utilizing enhanced awareness of diarrhoea during a large outbreak of Shiga toxin-producing E. coli O104:H4 in 2011--a time series analysis.Bayesian nowcasting during the STEC O104:H4 outbreak in Germany, 2011.Hepatitis E virus seroprevalence among adults, Germany.Ecological analysis of social risk factors for Rotavirus infections in Berlin, Germany, 2007-2009.Modelling the epidemiological impact of rotavirus vaccination in Germany--a Bayesian approach.More reasons to dread rain on vacation? Dengue fever in 42 German and United Kingdom Madeira tourists during autumn 2012.Bayesian outbreak detection in the presence of reporting delays.A system for automated outbreak detection of communicable diseases in Germany.Risk factors for sporadic Yersinia enterocolitica infections, Germany 2009-2010.Bayesian parameter inference for dynamic infectious disease modelling: rotavirus in Germany.Large multistate outbreak of norovirus gastroenteritis associated with frozen strawberries, Germany, 2012.Bayesian outbreak detection algorithm for monitoring reported cases of campylobacteriosis in Germany.A space-time conditional intensity model for invasive meningococcal disease occurrence.Re: "The 'case-chaos study' as an adjunct or alternative to conventional case-control study methodology".A statistician's perspective on digital epidemiology.Identifying the source of food-borne disease outbreaks: An application of Bayesian variable selection.No temporal association between influenza outbreaks and invasive pneumococcal infections.Boosting structured additive quantile regression for longitudinal childhood obesity data.Assessment of varicella vaccine effectiveness in Germany: a time-series approach.Statistical approaches to the monitoring and surveillance of infectious diseases for veterinary public health.A two-component model for counts of infectious diseases.Modelling the spread in space and time of an airborne plant diseaseNow-casting the COVID-19 epidemic: The use case of Japan, March 2020Model selection and parameter estimation for dynamic epidemic models via iterated filtering: application to rotavirus in Germany
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description
forsker, Stockholms Universitet
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researcher, Stockholm University
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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Michael Höhle
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P106
P1153
23034586800
P1889
P21
P31
P496
0000-0002-0423-6702