Data from: Integrating genetic analysis of mixed populations with a spatially-explicit population dynamics model

Inferring the dynamics of populations in time and space is a central challenge in ecology. Intra-specific structure (for example genetically distinct sub-populations or meta-populations) may require methods that can jointly infer the dynamics of multiple populations. This is of particular importance...

Full description

Bibliographic Details
Main Authors: Whitlock, Rebecca, Mäntyniemi, Samu, Palm, Stefan, Koljenen, Marja-Liisa, Dannewitz, Johan, Östergren, Johan, Koljonen, Marja-Liisa
Format: Dataset
Language:unknown
Published: Data Archiving and Networked Services (DANS) 2017
Subjects:
Online Access:https://doi.org/10.5061/dryad.4pg37
id fttriple:oai:gotriple.eu:50|dedup_wf_001::e2ba1284eff82ec0f1f100dc4c690280
record_format openpolar
spelling fttriple:oai:gotriple.eu:50|dedup_wf_001::e2ba1284eff82ec0f1f100dc4c690280 2023-05-15T18:10:00+02:00 Data from: Integrating genetic analysis of mixed populations with a spatially-explicit population dynamics model Whitlock, Rebecca Mäntyniemi, Samu Palm, Stefan Koljenen, Marja-Liisa Dannewitz, Johan Östergren, Johan Koljonen, Marja-Liisa 2017-01-01 https://doi.org/10.5061/dryad.4pg37 undefined unknown Data Archiving and Networked Services (DANS) http://dx.doi.org/10.5061/dryad.4pg37 https://dx.doi.org/10.5061/dryad.4pg37 lic_creative-commons oai:easy.dans.knaw.nl:easy-dataset:99713 10.5061/dryad.4pg37 oai:services.nod.dans.knaw.nl:Products/dans:oai:easy.dans.knaw.nl:easy-dataset:99713 10|re3data_____::84e123776089ce3c7a33db98d9cd15a8 10|openaire____::9e3be59865b2c1c335d32dae2fe7b254 10|re3data_____::94816e6421eeb072e7742ce6a9decc5f 10|openaire____::081b82f96300b6a6e3d282bad31cb6e2 re3data_____::r3d100000044 10|eurocrisdris::fe4903425d9040f680d8610d9079ea14 10|opendoar____::8b6dd7db9af49e67306feb59a8bdc52c Life sciences medicine and health care Baltic salmon 2014 Salmo salar Bayesian spatial model mixed fisheries Baltic Sea envir demo Dataset https://vocabularies.coar-repositories.org/resource_types/c_ddb1/ 2017 fttriple https://doi.org/10.5061/dryad.4pg37 2023-01-22T17:22:33Z Inferring the dynamics of populations in time and space is a central challenge in ecology. Intra-specific structure (for example genetically distinct sub-populations or meta-populations) may require methods that can jointly infer the dynamics of multiple populations. This is of particular importance for harvested species, for which management must balance utilization of productive populations with protection of weak ones. Here we present a novel method for simultaneous learning about the spatio-temporal dynamics of multiple populations that combines genetic data with prior information about abundance and movement in an integrated population modelling approach. We apply the Bayesian genetic mixed stock analysis to 17 wild and 10 hatchery-reared Baltic salmon (S. salar) stocks, quantifying uncertainty in stock composition in time and space, and in population dynamics parameters such as migration timing and speed. Our results indicate that the commonly used “equal prior probabilities” assumption may not be appropriate for all mixed stock analyses. Incorporation of prior information about stock abundance and movement resulted in more precise and plausible estimates of mixture compositions in time and space. Inclusion of a population dynamics model also allowed robust interpolation of expected catch composition at areas and times with no genetic observations. The genetic data were informative about stock-specific movement patterns, updating priors for migration path, timing and speed. The model we present here forms the basis for optimizing the spatial and temporal allocation of harvest to support the management of mixed populations of migratory species. Baltic_salmon_baseline_dataBaseline genotypes (17 microsatellite loci) for Baltic salmon from 27 stocks (3593 individuals of known stock of origin).Baltic_salmon_mixture_dataBaltic salmon mixture data: Genotypes (17 microsatellite loci) for 2058 Baltic salmon individuals sampled from Swedish and Finnish coastal trap net fisheries in 2014. Dataset Salmo salar Unknown
institution Open Polar
collection Unknown
op_collection_id fttriple
language unknown
topic Life sciences
medicine and health care
Baltic salmon
2014
Salmo salar
Bayesian
spatial model
mixed fisheries
Baltic Sea
envir
demo
spellingShingle Life sciences
medicine and health care
Baltic salmon
2014
Salmo salar
Bayesian
spatial model
mixed fisheries
Baltic Sea
envir
demo
Whitlock, Rebecca
Mäntyniemi, Samu
Palm, Stefan
Koljenen, Marja-Liisa
Dannewitz, Johan
Östergren, Johan
Koljonen, Marja-Liisa
Data from: Integrating genetic analysis of mixed populations with a spatially-explicit population dynamics model
topic_facet Life sciences
medicine and health care
Baltic salmon
2014
Salmo salar
Bayesian
spatial model
mixed fisheries
Baltic Sea
envir
demo
description Inferring the dynamics of populations in time and space is a central challenge in ecology. Intra-specific structure (for example genetically distinct sub-populations or meta-populations) may require methods that can jointly infer the dynamics of multiple populations. This is of particular importance for harvested species, for which management must balance utilization of productive populations with protection of weak ones. Here we present a novel method for simultaneous learning about the spatio-temporal dynamics of multiple populations that combines genetic data with prior information about abundance and movement in an integrated population modelling approach. We apply the Bayesian genetic mixed stock analysis to 17 wild and 10 hatchery-reared Baltic salmon (S. salar) stocks, quantifying uncertainty in stock composition in time and space, and in population dynamics parameters such as migration timing and speed. Our results indicate that the commonly used “equal prior probabilities” assumption may not be appropriate for all mixed stock analyses. Incorporation of prior information about stock abundance and movement resulted in more precise and plausible estimates of mixture compositions in time and space. Inclusion of a population dynamics model also allowed robust interpolation of expected catch composition at areas and times with no genetic observations. The genetic data were informative about stock-specific movement patterns, updating priors for migration path, timing and speed. The model we present here forms the basis for optimizing the spatial and temporal allocation of harvest to support the management of mixed populations of migratory species. Baltic_salmon_baseline_dataBaseline genotypes (17 microsatellite loci) for Baltic salmon from 27 stocks (3593 individuals of known stock of origin).Baltic_salmon_mixture_dataBaltic salmon mixture data: Genotypes (17 microsatellite loci) for 2058 Baltic salmon individuals sampled from Swedish and Finnish coastal trap net fisheries in 2014.
format Dataset
author Whitlock, Rebecca
Mäntyniemi, Samu
Palm, Stefan
Koljenen, Marja-Liisa
Dannewitz, Johan
Östergren, Johan
Koljonen, Marja-Liisa
author_facet Whitlock, Rebecca
Mäntyniemi, Samu
Palm, Stefan
Koljenen, Marja-Liisa
Dannewitz, Johan
Östergren, Johan
Koljonen, Marja-Liisa
author_sort Whitlock, Rebecca
title Data from: Integrating genetic analysis of mixed populations with a spatially-explicit population dynamics model
title_short Data from: Integrating genetic analysis of mixed populations with a spatially-explicit population dynamics model
title_full Data from: Integrating genetic analysis of mixed populations with a spatially-explicit population dynamics model
title_fullStr Data from: Integrating genetic analysis of mixed populations with a spatially-explicit population dynamics model
title_full_unstemmed Data from: Integrating genetic analysis of mixed populations with a spatially-explicit population dynamics model
title_sort data from: integrating genetic analysis of mixed populations with a spatially-explicit population dynamics model
publisher Data Archiving and Networked Services (DANS)
publishDate 2017
url https://doi.org/10.5061/dryad.4pg37
genre Salmo salar
genre_facet Salmo salar
op_source oai:easy.dans.knaw.nl:easy-dataset:99713
10.5061/dryad.4pg37
oai:services.nod.dans.knaw.nl:Products/dans:oai:easy.dans.knaw.nl:easy-dataset:99713
10|re3data_____::84e123776089ce3c7a33db98d9cd15a8
10|openaire____::9e3be59865b2c1c335d32dae2fe7b254
10|re3data_____::94816e6421eeb072e7742ce6a9decc5f
10|openaire____::081b82f96300b6a6e3d282bad31cb6e2
re3data_____::r3d100000044
10|eurocrisdris::fe4903425d9040f680d8610d9079ea14
10|opendoar____::8b6dd7db9af49e67306feb59a8bdc52c
op_relation http://dx.doi.org/10.5061/dryad.4pg37
https://dx.doi.org/10.5061/dryad.4pg37
op_rights lic_creative-commons
op_doi https://doi.org/10.5061/dryad.4pg37
_version_ 1766182715667775488