Integrating genetic data and population viability analyses for the identification of harbour seal (Phoca vitulina) populations and management units

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Integrating genetic data and population viability analyses for the identification of harbour seal (Phoca vitulina) populations and management units. / Olsen, Morten Tange; Andersen, Liselotte Wesley; Dietz, Rune; Teilmann, Jonas; Härkönen, Tero; Siegismund, Hans Redlef.

In: Molecular Ecology, Vol. 23, No. 4, 2014, p. 815-831.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Olsen, MT, Andersen, LW, Dietz, R, Teilmann, J, Härkönen, T & Siegismund, HR 2014, 'Integrating genetic data and population viability analyses for the identification of harbour seal (Phoca vitulina) populations and management units', Molecular Ecology, vol. 23, no. 4, pp. 815-831. https://doi.org/10.1111/mec.12644

APA

Olsen, M. T., Andersen, L. W., Dietz, R., Teilmann, J., Härkönen, T., & Siegismund, H. R. (2014). Integrating genetic data and population viability analyses for the identification of harbour seal (Phoca vitulina) populations and management units. Molecular Ecology, 23(4), 815-831. https://doi.org/10.1111/mec.12644

Vancouver

Olsen MT, Andersen LW, Dietz R, Teilmann J, Härkönen T, Siegismund HR. Integrating genetic data and population viability analyses for the identification of harbour seal (Phoca vitulina) populations and management units. Molecular Ecology. 2014;23(4):815-831. https://doi.org/10.1111/mec.12644

Author

Olsen, Morten Tange ; Andersen, Liselotte Wesley ; Dietz, Rune ; Teilmann, Jonas ; Härkönen, Tero ; Siegismund, Hans Redlef. / Integrating genetic data and population viability analyses for the identification of harbour seal (Phoca vitulina) populations and management units. In: Molecular Ecology. 2014 ; Vol. 23, No. 4. pp. 815-831.

Bibtex

@article{a4d2934a868b483391d6601b674e5dbc,
title = "Integrating genetic data and population viability analyses for the identification of harbour seal (Phoca vitulina) populations and management units",
abstract = "Identification of populations and management units is an essential step in the study of natural systems. Still, there is limited consensus regarding how to define populations and management units, and whether genetic methods allow for inference at the relevant spatial and temporal scale. Here, we present a novel approach, integrating genetic, life-history and demographic data to identify populations and management units in southern Scandinavian harbour seals. First, 15 microsatellite markers and model- and distance-based genetic clustering methods were used to determine the population genetic structure in harbour seals. Second, we used harbour seal demographic and life-history data to conduct population viability analyses (PVAs) in the VORTEX simulation model in order to determine whether the inferred genetic units could be classified as management units according to Lowe and Allendorf's (2010) {"}population viability criterion{"} for demographic independence. The genetic analyses revealed fine-scale population structuring in southern Scandinavian harbour seals and pointed to the existence of six genetic units. The PVAs indicated that the census population size of each of these genetic units was sufficiently large for long-term population viability, and hence that the six units could be classified as demographically independent management units. Our study suggests that population genetic inference can offer the same degree of temporal and spatial resolution as {"}non-genetic{"} methods, and that the combined use of genetic data and PVAs constitute a promising approach for delineating populations and management units. This article is protected by copyright. All rights reserved.",
author = "Olsen, {Morten Tange} and Andersen, {Liselotte Wesley} and Rune Dietz and Jonas Teilmann and Tero H{\"a}rk{\"o}nen and Siegismund, {Hans Redlef}",
note = "This article is protected by copyright. All rights reserved.",
year = "2014",
doi = "10.1111/mec.12644",
language = "English",
volume = "23",
pages = "815--831",
journal = "Molecular Ecology",
issn = "0962-1083",
publisher = "Wiley-Blackwell",
number = "4",

}

RIS

TY - JOUR

T1 - Integrating genetic data and population viability analyses for the identification of harbour seal (Phoca vitulina) populations and management units

AU - Olsen, Morten Tange

AU - Andersen, Liselotte Wesley

AU - Dietz, Rune

AU - Teilmann, Jonas

AU - Härkönen, Tero

AU - Siegismund, Hans Redlef

N1 - This article is protected by copyright. All rights reserved.

PY - 2014

Y1 - 2014

N2 - Identification of populations and management units is an essential step in the study of natural systems. Still, there is limited consensus regarding how to define populations and management units, and whether genetic methods allow for inference at the relevant spatial and temporal scale. Here, we present a novel approach, integrating genetic, life-history and demographic data to identify populations and management units in southern Scandinavian harbour seals. First, 15 microsatellite markers and model- and distance-based genetic clustering methods were used to determine the population genetic structure in harbour seals. Second, we used harbour seal demographic and life-history data to conduct population viability analyses (PVAs) in the VORTEX simulation model in order to determine whether the inferred genetic units could be classified as management units according to Lowe and Allendorf's (2010) "population viability criterion" for demographic independence. The genetic analyses revealed fine-scale population structuring in southern Scandinavian harbour seals and pointed to the existence of six genetic units. The PVAs indicated that the census population size of each of these genetic units was sufficiently large for long-term population viability, and hence that the six units could be classified as demographically independent management units. Our study suggests that population genetic inference can offer the same degree of temporal and spatial resolution as "non-genetic" methods, and that the combined use of genetic data and PVAs constitute a promising approach for delineating populations and management units. This article is protected by copyright. All rights reserved.

AB - Identification of populations and management units is an essential step in the study of natural systems. Still, there is limited consensus regarding how to define populations and management units, and whether genetic methods allow for inference at the relevant spatial and temporal scale. Here, we present a novel approach, integrating genetic, life-history and demographic data to identify populations and management units in southern Scandinavian harbour seals. First, 15 microsatellite markers and model- and distance-based genetic clustering methods were used to determine the population genetic structure in harbour seals. Second, we used harbour seal demographic and life-history data to conduct population viability analyses (PVAs) in the VORTEX simulation model in order to determine whether the inferred genetic units could be classified as management units according to Lowe and Allendorf's (2010) "population viability criterion" for demographic independence. The genetic analyses revealed fine-scale population structuring in southern Scandinavian harbour seals and pointed to the existence of six genetic units. The PVAs indicated that the census population size of each of these genetic units was sufficiently large for long-term population viability, and hence that the six units could be classified as demographically independent management units. Our study suggests that population genetic inference can offer the same degree of temporal and spatial resolution as "non-genetic" methods, and that the combined use of genetic data and PVAs constitute a promising approach for delineating populations and management units. This article is protected by copyright. All rights reserved.

U2 - 10.1111/mec.12644

DO - 10.1111/mec.12644

M3 - Journal article

C2 - 24382213

VL - 23

SP - 815

EP - 831

JO - Molecular Ecology

JF - Molecular Ecology

SN - 0962-1083

IS - 4

ER -

ID: 94631645