Linking satellites to genes with machine ...
Type de document :
Article dans une revue scientifique: Article original
DOI :
Titre :
Linking satellites to genes with machine learning to estimate phytoplankton community structure from space
Auteur(s) :
El Hourany, Roy [Auteur]
Université du Littoral Côte d'Opale [ULCO]
Laboratoire d’Océanologie et de Géosciences (LOG) - UMR 8187 [LOG]
Pierella Karlusich, Juan [Auteur]
Global Oceans Systems Ecology & Evolution - Tara Oceans [GOSEE]
Harvard University
Institut de biologie de l'ENS Paris [IBENS]
Zinger, Lucie [Auteur]
Naturalis Biodiversity Center [Leiden]
Global Oceans Systems Ecology & Evolution - Tara Oceans [GOSEE]
Institut de biologie de l'ENS Paris [IBENS]
Loisel, Hubert [Auteur]
Université du Littoral Côte d'Opale [ULCO]
Laboratoire d’Océanologie et de Géosciences (LOG) - UMR 8187 [LOG]
Levy, Marina [Auteur]
Processus et interactions de fine échelle océanique [LOCEAN-PROTEO]
Bowler, Chris [Auteur]
Institut de biologie de l'ENS Paris [IBENS]
Global Oceans Systems Ecology & Evolution - Tara Oceans [GOSEE]
Université du Littoral Côte d'Opale [ULCO]
Laboratoire d’Océanologie et de Géosciences (LOG) - UMR 8187 [LOG]
Pierella Karlusich, Juan [Auteur]
Global Oceans Systems Ecology & Evolution - Tara Oceans [GOSEE]
Harvard University
Institut de biologie de l'ENS Paris [IBENS]
Zinger, Lucie [Auteur]
Naturalis Biodiversity Center [Leiden]
Global Oceans Systems Ecology & Evolution - Tara Oceans [GOSEE]
Institut de biologie de l'ENS Paris [IBENS]
Loisel, Hubert [Auteur]

Université du Littoral Côte d'Opale [ULCO]
Laboratoire d’Océanologie et de Géosciences (LOG) - UMR 8187 [LOG]
Levy, Marina [Auteur]
Processus et interactions de fine échelle océanique [LOCEAN-PROTEO]
Bowler, Chris [Auteur]
Institut de biologie de l'ENS Paris [IBENS]
Global Oceans Systems Ecology & Evolution - Tara Oceans [GOSEE]
Titre de la revue :
OCEAN SCIENCE
Pagination :
217-239
Éditeur :
European Geosciences Union
Date de publication :
2024-02-21
ISSN :
1812-0784
Discipline(s) HAL :
Sciences de l'environnement/Biodiversité et Ecologie
Informatique [cs]/Intelligence artificielle [cs.AI]
Informatique [cs]/Apprentissage [cs.LG]
Informatique [cs]/Intelligence artificielle [cs.AI]
Informatique [cs]/Apprentissage [cs.LG]
Résumé en anglais : [en]
Ocean color remote sensing has been used for more than 2 decades to estimate primary productivity. Approaches have also been developed to disentangle phytoplankton community structure based on spectral data from space, in ...
Lire la suite >Ocean color remote sensing has been used for more than 2 decades to estimate primary productivity. Approaches have also been developed to disentangle phytoplankton community structure based on spectral data from space, in particular when combined with in situ measurements of photosynthetic pigments. Here, we propose a new ocean color algorithm to derive the relative cell abundance of seven phytoplankton groups, as well as their contribution to total chlorophyll a (Chl a) at the global scale. Our algorithm is based on machine learning and has been trained using remotely sensed parameters (reflectance, backscattering, and attenuation coefficients at different wavelengths, plus temperature and Chl a) combined with an omics-based biomarker developed using Tara Oceans data representing a single-copy gene encoding a component of the photosynthetic machinery that is present across all phytoplankton, including both prokaryotes and eukaryotes. It differs from previous methods which rely on diagnostic pigments to derive phytoplankton groups. Our methodology provides robust estimates of the phytoplankton community structure in terms of relative cell abundance and contribution to total Chl a concentration. The newly generated datasets yield complementary information about different aspects of phytoplankton that are valuable for assessing the contributions of different phytoplankton groups to primary productivity and inferring community assembly processes. This makes remote sensing observations excellent tools to collect essential biodiversity variables (EBVs) and provide a foundation for developing marine biodiversity forecasts.Lire moins >
Lire la suite >Ocean color remote sensing has been used for more than 2 decades to estimate primary productivity. Approaches have also been developed to disentangle phytoplankton community structure based on spectral data from space, in particular when combined with in situ measurements of photosynthetic pigments. Here, we propose a new ocean color algorithm to derive the relative cell abundance of seven phytoplankton groups, as well as their contribution to total chlorophyll a (Chl a) at the global scale. Our algorithm is based on machine learning and has been trained using remotely sensed parameters (reflectance, backscattering, and attenuation coefficients at different wavelengths, plus temperature and Chl a) combined with an omics-based biomarker developed using Tara Oceans data representing a single-copy gene encoding a component of the photosynthetic machinery that is present across all phytoplankton, including both prokaryotes and eukaryotes. It differs from previous methods which rely on diagnostic pigments to derive phytoplankton groups. Our methodology provides robust estimates of the phytoplankton community structure in terms of relative cell abundance and contribution to total Chl a concentration. The newly generated datasets yield complementary information about different aspects of phytoplankton that are valuable for assessing the contributions of different phytoplankton groups to primary productivity and inferring community assembly processes. This makes remote sensing observations excellent tools to collect essential biodiversity variables (EBVs) and provide a foundation for developing marine biodiversity forecasts.Lire moins >
Langue :
Anglais
Comité de lecture :
Oui
Audience :
Internationale
Vulgarisation :
Non
Projet ANR :
Source :
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