Cargando…

Constraints of using historical data for modelling the spatial distribution of helminth parasites in ruminants

Dicrocoelium dendriticum is a trematode that infects ruminant livestock and requires two different intermediate hosts to complete its lifecycle. Modelling the spatial distribution of this parasite can help to improve its management in higher risk regions. The aim of this research was to assess the c...

Descripción completa

Detalles Bibliográficos
Autores principales: Hendrickx, Alizée, Marsboom, Cedric, Rinaldi, Laura, Vineer, Hannah Rose, Morgoglione, Maria Elena, Sotiraki, Smaragda, Cringoli, Giuseppe, Claerebout, Edwin, Hendrickx, Guy
Formato: Online Artículo Texto
Lenguaje:English
Publicado: EDP Sciences 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8162060/
https://www.ncbi.nlm.nih.gov/pubmed/34047693
http://dx.doi.org/10.1051/parasite/2021042
_version_ 1783700635144683520
author Hendrickx, Alizée
Marsboom, Cedric
Rinaldi, Laura
Vineer, Hannah Rose
Morgoglione, Maria Elena
Sotiraki, Smaragda
Cringoli, Giuseppe
Claerebout, Edwin
Hendrickx, Guy
author_facet Hendrickx, Alizée
Marsboom, Cedric
Rinaldi, Laura
Vineer, Hannah Rose
Morgoglione, Maria Elena
Sotiraki, Smaragda
Cringoli, Giuseppe
Claerebout, Edwin
Hendrickx, Guy
author_sort Hendrickx, Alizée
collection PubMed
description Dicrocoelium dendriticum is a trematode that infects ruminant livestock and requires two different intermediate hosts to complete its lifecycle. Modelling the spatial distribution of this parasite can help to improve its management in higher risk regions. The aim of this research was to assess the constraints of using historical data sets when modelling the spatial distribution of helminth parasites in ruminants. A parasitological data set provided by CREMOPAR (Napoli, Italy) and covering most of Italy was used in this paper. A baseline model (Random Forest, VECMAP(®)) using the entire data set was first used to determine the minimal number of data points needed to build a stable model. Then, annual distribution models were computed and compared with the baseline model. The best prediction rate and statistical output were obtained for 2012 and the worst for 2016, even though the sample size of the former was significantly smaller than the latter. We discuss how this may be explained by the fact that in 2012, the samples were more evenly geographically distributed, whilst in 2016 most of the data were strongly clustered. It is concluded that the spatial distribution of the input data appears to be more important than the actual sample size when computing species distribution models. This is often a major issue when using historical data to develop spatial models. Such data sets often include sampling biases and large geographical gaps. If this bias is not corrected, the spatial distribution model outputs may display the sampling effort rather than the real species distribution.
format Online
Article
Text
id pubmed-8162060
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher EDP Sciences
record_format MEDLINE/PubMed
spelling pubmed-81620602021-06-04 Constraints of using historical data for modelling the spatial distribution of helminth parasites in ruminants Hendrickx, Alizée Marsboom, Cedric Rinaldi, Laura Vineer, Hannah Rose Morgoglione, Maria Elena Sotiraki, Smaragda Cringoli, Giuseppe Claerebout, Edwin Hendrickx, Guy Parasite Research Article Dicrocoelium dendriticum is a trematode that infects ruminant livestock and requires two different intermediate hosts to complete its lifecycle. Modelling the spatial distribution of this parasite can help to improve its management in higher risk regions. The aim of this research was to assess the constraints of using historical data sets when modelling the spatial distribution of helminth parasites in ruminants. A parasitological data set provided by CREMOPAR (Napoli, Italy) and covering most of Italy was used in this paper. A baseline model (Random Forest, VECMAP(®)) using the entire data set was first used to determine the minimal number of data points needed to build a stable model. Then, annual distribution models were computed and compared with the baseline model. The best prediction rate and statistical output were obtained for 2012 and the worst for 2016, even though the sample size of the former was significantly smaller than the latter. We discuss how this may be explained by the fact that in 2012, the samples were more evenly geographically distributed, whilst in 2016 most of the data were strongly clustered. It is concluded that the spatial distribution of the input data appears to be more important than the actual sample size when computing species distribution models. This is often a major issue when using historical data to develop spatial models. Such data sets often include sampling biases and large geographical gaps. If this bias is not corrected, the spatial distribution model outputs may display the sampling effort rather than the real species distribution. EDP Sciences 2021-05-27 /pmc/articles/PMC8162060/ /pubmed/34047693 http://dx.doi.org/10.1051/parasite/2021042 Text en © A. Hendrickx et al., published by EDP Sciences, 2021 https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0 (https://creativecommons.org/licenses/by/4.0/) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Hendrickx, Alizée
Marsboom, Cedric
Rinaldi, Laura
Vineer, Hannah Rose
Morgoglione, Maria Elena
Sotiraki, Smaragda
Cringoli, Giuseppe
Claerebout, Edwin
Hendrickx, Guy
Constraints of using historical data for modelling the spatial distribution of helminth parasites in ruminants
title Constraints of using historical data for modelling the spatial distribution of helminth parasites in ruminants
title_full Constraints of using historical data for modelling the spatial distribution of helminth parasites in ruminants
title_fullStr Constraints of using historical data for modelling the spatial distribution of helminth parasites in ruminants
title_full_unstemmed Constraints of using historical data for modelling the spatial distribution of helminth parasites in ruminants
title_short Constraints of using historical data for modelling the spatial distribution of helminth parasites in ruminants
title_sort constraints of using historical data for modelling the spatial distribution of helminth parasites in ruminants
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8162060/
https://www.ncbi.nlm.nih.gov/pubmed/34047693
http://dx.doi.org/10.1051/parasite/2021042
work_keys_str_mv AT hendrickxalizee constraintsofusinghistoricaldataformodellingthespatialdistributionofhelminthparasitesinruminants
AT marsboomcedric constraintsofusinghistoricaldataformodellingthespatialdistributionofhelminthparasitesinruminants
AT rinaldilaura constraintsofusinghistoricaldataformodellingthespatialdistributionofhelminthparasitesinruminants
AT vineerhannahrose constraintsofusinghistoricaldataformodellingthespatialdistributionofhelminthparasitesinruminants
AT morgoglionemariaelena constraintsofusinghistoricaldataformodellingthespatialdistributionofhelminthparasitesinruminants
AT sotirakismaragda constraintsofusinghistoricaldataformodellingthespatialdistributionofhelminthparasitesinruminants
AT cringoligiuseppe constraintsofusinghistoricaldataformodellingthespatialdistributionofhelminthparasitesinruminants
AT claereboutedwin constraintsofusinghistoricaldataformodellingthespatialdistributionofhelminthparasitesinruminants
AT hendrickxguy constraintsofusinghistoricaldataformodellingthespatialdistributionofhelminthparasitesinruminants