Detecting commonality in multidimensional fish movement histories using sequence analysis

Abstract Background Acoustic telemetry, for tracking fish movement histories, is multidimensional capturing both spatial and temporal domains. Oftentimes, analyses of such data are limited to a single domain, one domain nested within the other, or ad hoc approaches that simultaneously consider both...

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Main Authors: Michael R. Lowe, Christopher M. Holbrook, Darryl W. Hondorp
Format: Article
Language:English
Published: BMC 2020-03-01
Series:Animal Biotelemetry
Subjects:
Online Access:http://link.springer.com/article/10.1186/s40317-020-00195-y
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spelling doaj-184bd5c146214469ae1f55fa6a5ad5e52020-11-25T02:50:26ZengBMCAnimal Biotelemetry2050-33852020-03-018111410.1186/s40317-020-00195-yDetecting commonality in multidimensional fish movement histories using sequence analysisMichael R. Lowe0Christopher M. Holbrook1Darryl W. Hondorp2Hammond Bay Biological Station, Great Lakes Science Center, United States Geological SurveyHammond Bay Biological Station, Great Lakes Science Center, United States Geological SurveyGreat Lakes Science Center, United States Geological SurveyAbstract Background Acoustic telemetry, for tracking fish movement histories, is multidimensional capturing both spatial and temporal domains. Oftentimes, analyses of such data are limited to a single domain, one domain nested within the other, or ad hoc approaches that simultaneously consider both domains. Sequence analysis, on the other hand, offers a repeatable statistical framework that uses a sequence alignment algorithm to calculate pairwise dissimilarities among individual movement histories and then hierarchical agglomerative clustering to identify groups of fish with similar movement histories. The objective of this paper is to explore how acoustic telemetry data can be fit to this statistical framework and used to identify commonalities in the movement histories of acoustic-tagged sea lamprey during upstream migration through the St. Clair-Detroit River System. Results Five significant clusters were identified among individual fish. Clusters represented differences in timing of movements (short vs long duration in the Detroit R. and Lake St. Clair); extent of upstream migration (ceased migration in Lake St. Clair, lower St. Clair R., or upper St. Clair R.), and occurrence of fallback (return to Lake St. Clair after ceasing migration in the St. Clair R.). Inferences about sea lamprey distribution and behavior from these results were similar to those reached in a previous analysis using ad-hoc analysis methods. Conclusions The repeatable statistical framework outlined here can be used to group sea lamprey movement histories based on shared sequence characteristics (i.e., chronological order of “states” occupied). Further, this framework is flexible and allows researchers to define a priori the movement aspect (e.g., order, timing, duration) that is important for identifying both common or previously undetected movement histories. As such, we do not view sequence analysis as a panacea but as a useful complement to other modelling approaches (i.e., exploratory tool for informing hypothesis development) or a stand-alone semi-quantitative method for generating a simplified, temporally and spatially structured view of complex acoustic telemetry data and hypothesis testing when observed patterns warrant further investigation.http://link.springer.com/article/10.1186/s40317-020-00195-yAcoustic telemetryFish movementHierarchical clusteringOptimal matching
collection DOAJ
language English
format Article
sources DOAJ
author Michael R. Lowe
Christopher M. Holbrook
Darryl W. Hondorp
spellingShingle Michael R. Lowe
Christopher M. Holbrook
Darryl W. Hondorp
Detecting commonality in multidimensional fish movement histories using sequence analysis
Animal Biotelemetry
Acoustic telemetry
Fish movement
Hierarchical clustering
Optimal matching
author_facet Michael R. Lowe
Christopher M. Holbrook
Darryl W. Hondorp
author_sort Michael R. Lowe
title Detecting commonality in multidimensional fish movement histories using sequence analysis
title_short Detecting commonality in multidimensional fish movement histories using sequence analysis
title_full Detecting commonality in multidimensional fish movement histories using sequence analysis
title_fullStr Detecting commonality in multidimensional fish movement histories using sequence analysis
title_full_unstemmed Detecting commonality in multidimensional fish movement histories using sequence analysis
title_sort detecting commonality in multidimensional fish movement histories using sequence analysis
publisher BMC
series Animal Biotelemetry
issn 2050-3385
publishDate 2020-03-01
description Abstract Background Acoustic telemetry, for tracking fish movement histories, is multidimensional capturing both spatial and temporal domains. Oftentimes, analyses of such data are limited to a single domain, one domain nested within the other, or ad hoc approaches that simultaneously consider both domains. Sequence analysis, on the other hand, offers a repeatable statistical framework that uses a sequence alignment algorithm to calculate pairwise dissimilarities among individual movement histories and then hierarchical agglomerative clustering to identify groups of fish with similar movement histories. The objective of this paper is to explore how acoustic telemetry data can be fit to this statistical framework and used to identify commonalities in the movement histories of acoustic-tagged sea lamprey during upstream migration through the St. Clair-Detroit River System. Results Five significant clusters were identified among individual fish. Clusters represented differences in timing of movements (short vs long duration in the Detroit R. and Lake St. Clair); extent of upstream migration (ceased migration in Lake St. Clair, lower St. Clair R., or upper St. Clair R.), and occurrence of fallback (return to Lake St. Clair after ceasing migration in the St. Clair R.). Inferences about sea lamprey distribution and behavior from these results were similar to those reached in a previous analysis using ad-hoc analysis methods. Conclusions The repeatable statistical framework outlined here can be used to group sea lamprey movement histories based on shared sequence characteristics (i.e., chronological order of “states” occupied). Further, this framework is flexible and allows researchers to define a priori the movement aspect (e.g., order, timing, duration) that is important for identifying both common or previously undetected movement histories. As such, we do not view sequence analysis as a panacea but as a useful complement to other modelling approaches (i.e., exploratory tool for informing hypothesis development) or a stand-alone semi-quantitative method for generating a simplified, temporally and spatially structured view of complex acoustic telemetry data and hypothesis testing when observed patterns warrant further investigation.
topic Acoustic telemetry
Fish movement
Hierarchical clustering
Optimal matching
url http://link.springer.com/article/10.1186/s40317-020-00195-y
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