Of power and despair in cetacean conservation: estimation and detection of trend in abundance with noisy and short time-series

Many conservation instruments rely on detecting and estimating a population decline in a target species to take action. Trend estimation is difficult because of small sample size and relatively large uncertainty in abundance/density estimates of many wild populations of animals. Focusing on cetacean...

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Main Authors: Matthieu Authier, Anders Galatius, Anita Gilles, Jérôme Spitz
Format: Article
Language:English
Published: PeerJ Inc. 2020-08-01
Series:PeerJ
Subjects:
Online Access:https://peerj.com/articles/9436.pdf
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spelling doaj-203bc0c7fbc8465fb1b51323cf1e90372020-11-25T03:33:37ZengPeerJ Inc.PeerJ2167-83592020-08-018e943610.7717/peerj.9436Of power and despair in cetacean conservation: estimation and detection of trend in abundance with noisy and short time-seriesMatthieu Authier0Anders Galatius1Anita Gilles2Jérôme Spitz3Observatoire Pelagis UMS3462 CNRS-La Rochelle Université, La Rochelle Université, La Rochelle, FranceDepartment of Bioscience - Marine Mammal Research, Åarhus University, Roskilde, DenmarkInstitute for Terrestrial and Aquatic Wildlife Research (ITAW), University of Veterinary Medicine Hannover, Foundation, Büsum, GermanyObservatoire Pelagis UMS3462 CNRS-La Rochelle Université, La Rochelle Université, La Rochelle, FranceMany conservation instruments rely on detecting and estimating a population decline in a target species to take action. Trend estimation is difficult because of small sample size and relatively large uncertainty in abundance/density estimates of many wild populations of animals. Focusing on cetaceans, we performed a prospective analysis to estimate power, type-I, sign (type-S) and magnitude (type-M) error rates of detecting a decline in short time-series of abundance estimates with different signal-to-noise ratio. We contrasted results from both unregularized (classical) and regularized approaches. The latter allows to incorporate prior information when estimating a trend. Power to detect a statistically significant estimates was in general lower than 80%, except for large declines. The unregularized approach (status quo) had inflated type-I error rates and gave biased (either over- or under-) estimates of a trend. The regularized approach with a weakly-informative prior offered the best trade-off in terms of bias, statistical power, type-I, type-S and type-M error rates and confidence interval coverage. To facilitate timely conservation decisions, we recommend to use the regularized approach with a weakly-informative prior in the detection and estimation of trend with short and noisy time-series of abundance estimates.https://peerj.com/articles/9436.pdfPower analysisTrend detectionWeakly-informative priorCetaceanConservationMarine
collection DOAJ
language English
format Article
sources DOAJ
author Matthieu Authier
Anders Galatius
Anita Gilles
Jérôme Spitz
spellingShingle Matthieu Authier
Anders Galatius
Anita Gilles
Jérôme Spitz
Of power and despair in cetacean conservation: estimation and detection of trend in abundance with noisy and short time-series
PeerJ
Power analysis
Trend detection
Weakly-informative prior
Cetacean
Conservation
Marine
author_facet Matthieu Authier
Anders Galatius
Anita Gilles
Jérôme Spitz
author_sort Matthieu Authier
title Of power and despair in cetacean conservation: estimation and detection of trend in abundance with noisy and short time-series
title_short Of power and despair in cetacean conservation: estimation and detection of trend in abundance with noisy and short time-series
title_full Of power and despair in cetacean conservation: estimation and detection of trend in abundance with noisy and short time-series
title_fullStr Of power and despair in cetacean conservation: estimation and detection of trend in abundance with noisy and short time-series
title_full_unstemmed Of power and despair in cetacean conservation: estimation and detection of trend in abundance with noisy and short time-series
title_sort of power and despair in cetacean conservation: estimation and detection of trend in abundance with noisy and short time-series
publisher PeerJ Inc.
series PeerJ
issn 2167-8359
publishDate 2020-08-01
description Many conservation instruments rely on detecting and estimating a population decline in a target species to take action. Trend estimation is difficult because of small sample size and relatively large uncertainty in abundance/density estimates of many wild populations of animals. Focusing on cetaceans, we performed a prospective analysis to estimate power, type-I, sign (type-S) and magnitude (type-M) error rates of detecting a decline in short time-series of abundance estimates with different signal-to-noise ratio. We contrasted results from both unregularized (classical) and regularized approaches. The latter allows to incorporate prior information when estimating a trend. Power to detect a statistically significant estimates was in general lower than 80%, except for large declines. The unregularized approach (status quo) had inflated type-I error rates and gave biased (either over- or under-) estimates of a trend. The regularized approach with a weakly-informative prior offered the best trade-off in terms of bias, statistical power, type-I, type-S and type-M error rates and confidence interval coverage. To facilitate timely conservation decisions, we recommend to use the regularized approach with a weakly-informative prior in the detection and estimation of trend with short and noisy time-series of abundance estimates.
topic Power analysis
Trend detection
Weakly-informative prior
Cetacean
Conservation
Marine
url https://peerj.com/articles/9436.pdf
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