Cargando…

Predicting the spatial abundance of Ixodes ricinus ticks in southern Scandinavia using environmental and climatic data

Recently, focus on tick-borne diseases has increased as ticks and their pathogens have become widespread and represent a health problem in Europe. Understanding the epidemiology of tick-borne infections requires the ability to predict and map tick abundance. We measured Ixodes ricinus abundance at 1...

Descripción completa

Detalles Bibliográficos
Autores principales: Jung Kjær, Lene, Soleng, Arnulf, Edgar, Kristin Skarsfjord, Lindstedt, Heidi Elisabeth H., Paulsen, Katrine Mørk, Andreassen, Åshild Kristine, Korslund, Lars, Kjelland, Vivian, Slettan, Audun, Stuen, Snorre, Kjellander, Petter, Christensson, Madeleine, Teräväinen, Malin, Baum, Andreas, Klitgaard, Kirstine, Bødker, René
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6889419/
https://www.ncbi.nlm.nih.gov/pubmed/31792296
http://dx.doi.org/10.1038/s41598-019-54496-1
_version_ 1783475412928561152
author Jung Kjær, Lene
Soleng, Arnulf
Edgar, Kristin Skarsfjord
Lindstedt, Heidi Elisabeth H.
Paulsen, Katrine Mørk
Andreassen, Åshild Kristine
Korslund, Lars
Kjelland, Vivian
Slettan, Audun
Stuen, Snorre
Kjellander, Petter
Christensson, Madeleine
Teräväinen, Malin
Baum, Andreas
Klitgaard, Kirstine
Bødker, René
author_facet Jung Kjær, Lene
Soleng, Arnulf
Edgar, Kristin Skarsfjord
Lindstedt, Heidi Elisabeth H.
Paulsen, Katrine Mørk
Andreassen, Åshild Kristine
Korslund, Lars
Kjelland, Vivian
Slettan, Audun
Stuen, Snorre
Kjellander, Petter
Christensson, Madeleine
Teräväinen, Malin
Baum, Andreas
Klitgaard, Kirstine
Bødker, René
author_sort Jung Kjær, Lene
collection PubMed
description Recently, focus on tick-borne diseases has increased as ticks and their pathogens have become widespread and represent a health problem in Europe. Understanding the epidemiology of tick-borne infections requires the ability to predict and map tick abundance. We measured Ixodes ricinus abundance at 159 sites in southern Scandinavia from August-September, 2016. We used field data and environmental variables to develop predictive abundance models using machine learning algorithms, and also tested these models on 2017 data. Larva and nymph abundance models had relatively high predictive power (normalized RMSE from 0.65–0.69, R(2) from 0.52–0.58) whereas adult tick models performed poorly (normalized RMSE from 0.94–0.96, R(2) from 0.04–0.10). Testing the models on 2017 data produced good results with normalized RMSE values from 0.59–1.13 and R(2) from 0.18–0.69. The resulting 2016 maps corresponded well with known tick abundance and distribution in Scandinavia. The models were highly influenced by temperature and vegetation, indicating that climate may be an important driver of I. ricinus distribution and abundance in Scandinavia. Despite varying results, the models predicted abundance in 2017 with high accuracy. The models are a first step towards environmentally driven tick abundance models that can assist in determining risk areas and interpreting human incidence data.
format Online
Article
Text
id pubmed-6889419
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-68894192019-12-10 Predicting the spatial abundance of Ixodes ricinus ticks in southern Scandinavia using environmental and climatic data Jung Kjær, Lene Soleng, Arnulf Edgar, Kristin Skarsfjord Lindstedt, Heidi Elisabeth H. Paulsen, Katrine Mørk Andreassen, Åshild Kristine Korslund, Lars Kjelland, Vivian Slettan, Audun Stuen, Snorre Kjellander, Petter Christensson, Madeleine Teräväinen, Malin Baum, Andreas Klitgaard, Kirstine Bødker, René Sci Rep Article Recently, focus on tick-borne diseases has increased as ticks and their pathogens have become widespread and represent a health problem in Europe. Understanding the epidemiology of tick-borne infections requires the ability to predict and map tick abundance. We measured Ixodes ricinus abundance at 159 sites in southern Scandinavia from August-September, 2016. We used field data and environmental variables to develop predictive abundance models using machine learning algorithms, and also tested these models on 2017 data. Larva and nymph abundance models had relatively high predictive power (normalized RMSE from 0.65–0.69, R(2) from 0.52–0.58) whereas adult tick models performed poorly (normalized RMSE from 0.94–0.96, R(2) from 0.04–0.10). Testing the models on 2017 data produced good results with normalized RMSE values from 0.59–1.13 and R(2) from 0.18–0.69. The resulting 2016 maps corresponded well with known tick abundance and distribution in Scandinavia. The models were highly influenced by temperature and vegetation, indicating that climate may be an important driver of I. ricinus distribution and abundance in Scandinavia. Despite varying results, the models predicted abundance in 2017 with high accuracy. The models are a first step towards environmentally driven tick abundance models that can assist in determining risk areas and interpreting human incidence data. Nature Publishing Group UK 2019-12-02 /pmc/articles/PMC6889419/ /pubmed/31792296 http://dx.doi.org/10.1038/s41598-019-54496-1 Text en © The Author(s) 2019 Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons license and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/.
spellingShingle Article
Jung Kjær, Lene
Soleng, Arnulf
Edgar, Kristin Skarsfjord
Lindstedt, Heidi Elisabeth H.
Paulsen, Katrine Mørk
Andreassen, Åshild Kristine
Korslund, Lars
Kjelland, Vivian
Slettan, Audun
Stuen, Snorre
Kjellander, Petter
Christensson, Madeleine
Teräväinen, Malin
Baum, Andreas
Klitgaard, Kirstine
Bødker, René
Predicting the spatial abundance of Ixodes ricinus ticks in southern Scandinavia using environmental and climatic data
title Predicting the spatial abundance of Ixodes ricinus ticks in southern Scandinavia using environmental and climatic data
title_full Predicting the spatial abundance of Ixodes ricinus ticks in southern Scandinavia using environmental and climatic data
title_fullStr Predicting the spatial abundance of Ixodes ricinus ticks in southern Scandinavia using environmental and climatic data
title_full_unstemmed Predicting the spatial abundance of Ixodes ricinus ticks in southern Scandinavia using environmental and climatic data
title_short Predicting the spatial abundance of Ixodes ricinus ticks in southern Scandinavia using environmental and climatic data
title_sort predicting the spatial abundance of ixodes ricinus ticks in southern scandinavia using environmental and climatic data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6889419/
https://www.ncbi.nlm.nih.gov/pubmed/31792296
http://dx.doi.org/10.1038/s41598-019-54496-1
work_keys_str_mv AT jungkjærlene predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT solengarnulf predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT edgarkristinskarsfjord predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT lindstedtheidielisabethh predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT paulsenkatrinemørk predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT andreassenashildkristine predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT korslundlars predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT kjellandvivian predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT slettanaudun predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT stuensnorre predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT kjellanderpetter predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT christenssonmadeleine predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT teravainenmalin predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT baumandreas predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT klitgaardkirstine predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata
AT bødkerrene predictingthespatialabundanceofixodesricinusticksinsouthernscandinaviausingenvironmentalandclimaticdata