Tick-borne encephalitis (TBE) cases are not random: explaining trend, low- and high-frequency oscillations based on the Austrian TBE time series

Abstract Background Why human tick-borne encephalitis (TBE) cases differ from year to year, in some years more 100%, has not been clarified, yet. The cause of the increasing or decreasing trends is also controversial. Austria is the only country in Europe where a 40-year TBE time series and an offic...

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Main Authors: Franz Rubel, Melanie Walter, Janna R. Vogelgesang, Katharina Brugger
Format: Article
Language:English
Published: BMC 2020-06-01
Series:BMC Infectious Diseases
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12879-020-05156-7
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spelling doaj-5c76f127a8b945718fbc27b3d81362bc2020-11-25T03:48:27ZengBMCBMC Infectious Diseases1471-23342020-06-0120111210.1186/s12879-020-05156-7Tick-borne encephalitis (TBE) cases are not random: explaining trend, low- and high-frequency oscillations based on the Austrian TBE time seriesFranz Rubel0Melanie Walter1Janna R. Vogelgesang2Katharina Brugger3Unit for Veterinary Public Health and Epidemiology, University of Veterinary Medicine Vienna, AustriaUnit for Veterinary Public Health and Epidemiology, University of Veterinary Medicine Vienna, AustriaUnit for Veterinary Public Health and Epidemiology, University of Veterinary Medicine Vienna, AustriaUnit for Veterinary Public Health and Epidemiology, University of Veterinary Medicine Vienna, AustriaAbstract Background Why human tick-borne encephalitis (TBE) cases differ from year to year, in some years more 100%, has not been clarified, yet. The cause of the increasing or decreasing trends is also controversial. Austria is the only country in Europe where a 40-year TBE time series and an official vaccine coverage time series are available to investigate these open questions. Methods A series of generalized linear models (GLMs) has been developed to identify demographic and environmental factors associated with the trend and the oscillations of the TBE time series. Both the observed and the predicted TBE time series were subjected to spectral analysis. The resulting power spectra indicate which predictors are responsible for the trend, the high-frequency and the low-frequency oscillations, and with which explained variance they contribute to the TBE oscillations. Results The increasing trend can be associated with the demography of the increasing human population. The responsible GLM explains 12% of the variance of the TBE time series. The low-frequency oscillations (10 years) are associated with the decadal changes of the large-scale climate in Central Europe. These are well described by the so-called Scandinavian index. This 10-year oscillation cycle is reinforced by the socio-economic predictor net migration. Considering the net migration and the Scandinavian index increases the explained variance of the GLM to 44%. The high-frequency oscillations (2–3 years) are associated with fluctuations of the natural TBE transmission cycle between small mammals and ticks, which are driven by beech fructification. Considering also fructification 2 years prior explains 64% of the variance of the TBE time series. Additionally, annual sunshine duration as predictor for the human outdoor activity increases the explained variance to 70%. Conclusions The GLMs presented here provide the basis for annual TBE forecasts, which were mainly determined by beech fructification. A total of 3 of the 5 years with full fructification, resulting in high TBE case numbers 2 years later, occurred after 2010. The effects of climate change are therefore not visible through a direct correlation of the TBE cases with rising temperatures, but indirectly via the increased frequency of mast seeding.http://link.springer.com/article/10.1186/s12879-020-05156-7Vector-borne diseaseClimate changeScandinavian indexBeech fructificationMast seedingPrediction
collection DOAJ
language English
format Article
sources DOAJ
author Franz Rubel
Melanie Walter
Janna R. Vogelgesang
Katharina Brugger
spellingShingle Franz Rubel
Melanie Walter
Janna R. Vogelgesang
Katharina Brugger
Tick-borne encephalitis (TBE) cases are not random: explaining trend, low- and high-frequency oscillations based on the Austrian TBE time series
BMC Infectious Diseases
Vector-borne disease
Climate change
Scandinavian index
Beech fructification
Mast seeding
Prediction
author_facet Franz Rubel
Melanie Walter
Janna R. Vogelgesang
Katharina Brugger
author_sort Franz Rubel
title Tick-borne encephalitis (TBE) cases are not random: explaining trend, low- and high-frequency oscillations based on the Austrian TBE time series
title_short Tick-borne encephalitis (TBE) cases are not random: explaining trend, low- and high-frequency oscillations based on the Austrian TBE time series
title_full Tick-borne encephalitis (TBE) cases are not random: explaining trend, low- and high-frequency oscillations based on the Austrian TBE time series
title_fullStr Tick-borne encephalitis (TBE) cases are not random: explaining trend, low- and high-frequency oscillations based on the Austrian TBE time series
title_full_unstemmed Tick-borne encephalitis (TBE) cases are not random: explaining trend, low- and high-frequency oscillations based on the Austrian TBE time series
title_sort tick-borne encephalitis (tbe) cases are not random: explaining trend, low- and high-frequency oscillations based on the austrian tbe time series
publisher BMC
series BMC Infectious Diseases
issn 1471-2334
publishDate 2020-06-01
description Abstract Background Why human tick-borne encephalitis (TBE) cases differ from year to year, in some years more 100%, has not been clarified, yet. The cause of the increasing or decreasing trends is also controversial. Austria is the only country in Europe where a 40-year TBE time series and an official vaccine coverage time series are available to investigate these open questions. Methods A series of generalized linear models (GLMs) has been developed to identify demographic and environmental factors associated with the trend and the oscillations of the TBE time series. Both the observed and the predicted TBE time series were subjected to spectral analysis. The resulting power spectra indicate which predictors are responsible for the trend, the high-frequency and the low-frequency oscillations, and with which explained variance they contribute to the TBE oscillations. Results The increasing trend can be associated with the demography of the increasing human population. The responsible GLM explains 12% of the variance of the TBE time series. The low-frequency oscillations (10 years) are associated with the decadal changes of the large-scale climate in Central Europe. These are well described by the so-called Scandinavian index. This 10-year oscillation cycle is reinforced by the socio-economic predictor net migration. Considering the net migration and the Scandinavian index increases the explained variance of the GLM to 44%. The high-frequency oscillations (2–3 years) are associated with fluctuations of the natural TBE transmission cycle between small mammals and ticks, which are driven by beech fructification. Considering also fructification 2 years prior explains 64% of the variance of the TBE time series. Additionally, annual sunshine duration as predictor for the human outdoor activity increases the explained variance to 70%. Conclusions The GLMs presented here provide the basis for annual TBE forecasts, which were mainly determined by beech fructification. A total of 3 of the 5 years with full fructification, resulting in high TBE case numbers 2 years later, occurred after 2010. The effects of climate change are therefore not visible through a direct correlation of the TBE cases with rising temperatures, but indirectly via the increased frequency of mast seeding.
topic Vector-borne disease
Climate change
Scandinavian index
Beech fructification
Mast seeding
Prediction
url http://link.springer.com/article/10.1186/s12879-020-05156-7
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