Predicting global distributions of eukaryotic plankton communities from satellite data
This is contribution number 146 of the Tara Oceans Expedition 2009–2013.-- 9 pages, 6 figures, 1 table, supplementary data https://doi.org/10.1038/s43705-023-00308-7.-- Data Availability: Figures S1–S19, Tables S1 and S2, Data S1–S3, and Video S1 are provided as supplementary materials. Video S1 sho...
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2023
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ftcsic:oai:digital.csic.es:10261/355404 2024-05-19T07:49:15+00:00 Predicting global distributions of eukaryotic plankton communities from satellite data Kaneko, Hiroto Endo, Hisashi Henry, Nicolas Berney, Cédric Mahé, Frédéric Poulain, Julie Labadie, Karine Beluche, Odette El Hourany, Roy Tara Oceans Coordinators Acinas, Silvia G. Chaffron, Samuel Wincker, Patrick Nakamura, Ryosuke Karp-Boss, Lee Boss, Emmanuel Bowler, Chris Vargas, Colomban de Tomii, Kentaro Ogata, Hiroyuki Kyoto University France Génomique European Research Council European Commission Agencia Estatal de Investigación (España) 2023-12 http://hdl.handle.net/10261/355404 https://doi.org/10.1038/s43705-023-00308-7 en eng International Society for Microbial Ecology #PLACEHOLDER_PARENT_METADATA_VALUE# info:eu-repo/grantAgreement/EC/H2020/101082021 https://doi.org/10.1038/s43705-023-00308-7 Sí ISME Communications 3(1): 101 (2023) CEX2019-000928-S http://hdl.handle.net/10261/355404 doi:10.1038/s43705-023-00308-7 2730-6151 open Conserve and sustainably use the oceans seas and marine resources for sustainable development artículo 2023 ftcsic https://doi.org/10.1038/s43705-023-00308-7 2024-04-30T23:33:38Z This is contribution number 146 of the Tara Oceans Expedition 2009–2013.-- 9 pages, 6 figures, 1 table, supplementary data https://doi.org/10.1038/s43705-023-00308-7.-- Data Availability: Figures S1–S19, Tables S1 and S2, Data S1–S3, and Video S1 are provided as supplementary materials. Video S1 shows the 19-year time series of community-type distributions predicted from satellite-derived parameters, related to Fig. 6. Newly sequenced Tara Oceans 18 S V4 data have been deposited to EMBL/EBI-ENA: PRJEB6610 (Tara Oceans), PRJEB9737 (TARA Oceans Polar Circle). Data and codes used in the analysis are available at the GenomeNet FTP: https://www.genome.jp/ftp/db/community/tara/Satellite/. Essential codes are also available at the GitHub repository: https://github.com/hirotokaneko/plankton-from-satellite Satellite remote sensing is a powerful tool to monitor the global dynamics of marine plankton. Previous research has focused on developing models to predict the size or taxonomic groups of phytoplankton. Here, we present an approach to identify community types from a global plankton network that includes phytoplankton and heterotrophic protists and to predict their biogeography using global satellite observations. Six plankton community types were identified from a co-occurrence network inferred using a novel rDNA 18 S V4 planetary-scale eukaryotic metabarcoding dataset. Machine learning techniques were then applied to construct a model that predicted these community types from satellite data. The model showed an overall 67% accuracy in the prediction of the community types. The prediction using 17 satellite-derived parameters showed better performance than that using only temperature and/or the concentration of chlorophyll a. The constructed model predicted the global spatiotemporal distribution of community types over 19 years. The predicted distributions exhibited strong seasonal changes in community types in the subarctic–subtropical boundary regions, which were consistent with previous field observations. The ... Article in Journal/Newspaper Subarctic Digital.CSIC (Spanish National Research Council) ISME Communications 3 1 |
institution |
Open Polar |
collection |
Digital.CSIC (Spanish National Research Council) |
op_collection_id |
ftcsic |
language |
English |
topic |
Conserve and sustainably use the oceans seas and marine resources for sustainable development |
spellingShingle |
Conserve and sustainably use the oceans seas and marine resources for sustainable development Kaneko, Hiroto Endo, Hisashi Henry, Nicolas Berney, Cédric Mahé, Frédéric Poulain, Julie Labadie, Karine Beluche, Odette El Hourany, Roy Tara Oceans Coordinators Acinas, Silvia G. Chaffron, Samuel Wincker, Patrick Nakamura, Ryosuke Karp-Boss, Lee Boss, Emmanuel Bowler, Chris Vargas, Colomban de Tomii, Kentaro Ogata, Hiroyuki Predicting global distributions of eukaryotic plankton communities from satellite data |
topic_facet |
Conserve and sustainably use the oceans seas and marine resources for sustainable development |
description |
This is contribution number 146 of the Tara Oceans Expedition 2009–2013.-- 9 pages, 6 figures, 1 table, supplementary data https://doi.org/10.1038/s43705-023-00308-7.-- Data Availability: Figures S1–S19, Tables S1 and S2, Data S1–S3, and Video S1 are provided as supplementary materials. Video S1 shows the 19-year time series of community-type distributions predicted from satellite-derived parameters, related to Fig. 6. Newly sequenced Tara Oceans 18 S V4 data have been deposited to EMBL/EBI-ENA: PRJEB6610 (Tara Oceans), PRJEB9737 (TARA Oceans Polar Circle). Data and codes used in the analysis are available at the GenomeNet FTP: https://www.genome.jp/ftp/db/community/tara/Satellite/. Essential codes are also available at the GitHub repository: https://github.com/hirotokaneko/plankton-from-satellite Satellite remote sensing is a powerful tool to monitor the global dynamics of marine plankton. Previous research has focused on developing models to predict the size or taxonomic groups of phytoplankton. Here, we present an approach to identify community types from a global plankton network that includes phytoplankton and heterotrophic protists and to predict their biogeography using global satellite observations. Six plankton community types were identified from a co-occurrence network inferred using a novel rDNA 18 S V4 planetary-scale eukaryotic metabarcoding dataset. Machine learning techniques were then applied to construct a model that predicted these community types from satellite data. The model showed an overall 67% accuracy in the prediction of the community types. The prediction using 17 satellite-derived parameters showed better performance than that using only temperature and/or the concentration of chlorophyll a. The constructed model predicted the global spatiotemporal distribution of community types over 19 years. The predicted distributions exhibited strong seasonal changes in community types in the subarctic–subtropical boundary regions, which were consistent with previous field observations. The ... |
author2 |
Kyoto University France Génomique European Research Council European Commission Agencia Estatal de Investigación (España) |
format |
Article in Journal/Newspaper |
author |
Kaneko, Hiroto Endo, Hisashi Henry, Nicolas Berney, Cédric Mahé, Frédéric Poulain, Julie Labadie, Karine Beluche, Odette El Hourany, Roy Tara Oceans Coordinators Acinas, Silvia G. Chaffron, Samuel Wincker, Patrick Nakamura, Ryosuke Karp-Boss, Lee Boss, Emmanuel Bowler, Chris Vargas, Colomban de Tomii, Kentaro Ogata, Hiroyuki |
author_facet |
Kaneko, Hiroto Endo, Hisashi Henry, Nicolas Berney, Cédric Mahé, Frédéric Poulain, Julie Labadie, Karine Beluche, Odette El Hourany, Roy Tara Oceans Coordinators Acinas, Silvia G. Chaffron, Samuel Wincker, Patrick Nakamura, Ryosuke Karp-Boss, Lee Boss, Emmanuel Bowler, Chris Vargas, Colomban de Tomii, Kentaro Ogata, Hiroyuki |
author_sort |
Kaneko, Hiroto |
title |
Predicting global distributions of eukaryotic plankton communities from satellite data |
title_short |
Predicting global distributions of eukaryotic plankton communities from satellite data |
title_full |
Predicting global distributions of eukaryotic plankton communities from satellite data |
title_fullStr |
Predicting global distributions of eukaryotic plankton communities from satellite data |
title_full_unstemmed |
Predicting global distributions of eukaryotic plankton communities from satellite data |
title_sort |
predicting global distributions of eukaryotic plankton communities from satellite data |
publisher |
International Society for Microbial Ecology |
publishDate |
2023 |
url |
http://hdl.handle.net/10261/355404 https://doi.org/10.1038/s43705-023-00308-7 |
genre |
Subarctic |
genre_facet |
Subarctic |
op_relation |
#PLACEHOLDER_PARENT_METADATA_VALUE# info:eu-repo/grantAgreement/EC/H2020/101082021 https://doi.org/10.1038/s43705-023-00308-7 Sí ISME Communications 3(1): 101 (2023) CEX2019-000928-S http://hdl.handle.net/10261/355404 doi:10.1038/s43705-023-00308-7 2730-6151 |
op_rights |
open |
op_doi |
https://doi.org/10.1038/s43705-023-00308-7 |
container_title |
ISME Communications |
container_volume |
3 |
container_issue |
1 |
_version_ |
1799467719591985152 |