ZebraZoom: an automated program for high-throughput behavioral analysis and categorization

The zebrafish larva stands out as an emergent model organism for translational studies involving gene or drug screening thanks to its size, genetics, and permeability. At the larval stage, locomotion occurs in short episodes punctuated by periods of rest. Although phenotyping behavior is a key compo...

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Main Authors: Olivier eMirat, Jenna Renée Sternberg, Kristen E Severi, Claire eWyart
Format: Article
Language:English
Published: Frontiers Media S.A. 2013-06-01
Series:Frontiers in Neural Circuits
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fncir.2013.00107/full
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spelling doaj-82d43ec8e4d542fea53fcb464af5fc442020-11-25T00:02:48ZengFrontiers Media S.A.Frontiers in Neural Circuits1662-51102013-06-01710.3389/fncir.2013.0010748122ZebraZoom: an automated program for high-throughput behavioral analysis and categorizationOlivier eMirat0Olivier eMirat1Jenna Renée Sternberg2Jenna Renée Sternberg3Kristen E Severi4Claire eWyart5Brain and Spinal cord Institute (ICM), ParisUniversité Paris Descartes Paris 5Brain and Spinal cord Institute (ICM), ParisUniversité Pierre et Marie Curie, Paris 6Brain and Spinal cord Institute (ICM), ParisBrain and Spinal cord Institute (ICM), ParisThe zebrafish larva stands out as an emergent model organism for translational studies involving gene or drug screening thanks to its size, genetics, and permeability. At the larval stage, locomotion occurs in short episodes punctuated by periods of rest. Although phenotyping behavior is a key component of large-scale screens, it has not yet been automated in this model system. We developed ZebraZoom, a program to automatically track larvae and identify maneuvers for many animals performing discrete movements. Our program detects each episodic movement and extracts large-scale statistics on motor patterns to produce a quantification of the locomotor repertoire. We used ZebraZoom to identify motor defects induced by a glycinergic receptor antagonist. The analysis of the blind mutant atoh7 (lak) revealed small locomotor defects associated with the mutation. Using multiclass supervised machine learning, ZebraZoom categorizes all episodes of movement for each larva into one of three possible maneuvers: slow forward swim, routine turn, and escape. ZebraZoom reached 91% accuracy for categorization of stereotypical maneuvers that four independent experimenters unanimously identified. For all maneuvers in the data set, ZebraZoom agreed 73.2-82.5% of cases with four independent experimenters. We modeled the series of maneuvers performed by larvae as Markov chains and observed that larvae often repeated the same maneuvers within a group. When analyzing subsequent maneuvers performed by different larvae, we found that larva-larva interactions occurred as series of escapes. Overall, ZebraZoom reaches the level of precision found in manual analysis but accomplishes tasks in a high-throughput format necessary for large screens.http://journal.frontiersin.org/Journal/10.3389/fncir.2013.00107/fullmachine learningcollective behaviortrackingclassifierSupport vector machineanalysis of kinematics
collection DOAJ
language English
format Article
sources DOAJ
author Olivier eMirat
Olivier eMirat
Jenna Renée Sternberg
Jenna Renée Sternberg
Kristen E Severi
Claire eWyart
spellingShingle Olivier eMirat
Olivier eMirat
Jenna Renée Sternberg
Jenna Renée Sternberg
Kristen E Severi
Claire eWyart
ZebraZoom: an automated program for high-throughput behavioral analysis and categorization
Frontiers in Neural Circuits
machine learning
collective behavior
tracking
classifier
Support vector machine
analysis of kinematics
author_facet Olivier eMirat
Olivier eMirat
Jenna Renée Sternberg
Jenna Renée Sternberg
Kristen E Severi
Claire eWyart
author_sort Olivier eMirat
title ZebraZoom: an automated program for high-throughput behavioral analysis and categorization
title_short ZebraZoom: an automated program for high-throughput behavioral analysis and categorization
title_full ZebraZoom: an automated program for high-throughput behavioral analysis and categorization
title_fullStr ZebraZoom: an automated program for high-throughput behavioral analysis and categorization
title_full_unstemmed ZebraZoom: an automated program for high-throughput behavioral analysis and categorization
title_sort zebrazoom: an automated program for high-throughput behavioral analysis and categorization
publisher Frontiers Media S.A.
series Frontiers in Neural Circuits
issn 1662-5110
publishDate 2013-06-01
description The zebrafish larva stands out as an emergent model organism for translational studies involving gene or drug screening thanks to its size, genetics, and permeability. At the larval stage, locomotion occurs in short episodes punctuated by periods of rest. Although phenotyping behavior is a key component of large-scale screens, it has not yet been automated in this model system. We developed ZebraZoom, a program to automatically track larvae and identify maneuvers for many animals performing discrete movements. Our program detects each episodic movement and extracts large-scale statistics on motor patterns to produce a quantification of the locomotor repertoire. We used ZebraZoom to identify motor defects induced by a glycinergic receptor antagonist. The analysis of the blind mutant atoh7 (lak) revealed small locomotor defects associated with the mutation. Using multiclass supervised machine learning, ZebraZoom categorizes all episodes of movement for each larva into one of three possible maneuvers: slow forward swim, routine turn, and escape. ZebraZoom reached 91% accuracy for categorization of stereotypical maneuvers that four independent experimenters unanimously identified. For all maneuvers in the data set, ZebraZoom agreed 73.2-82.5% of cases with four independent experimenters. We modeled the series of maneuvers performed by larvae as Markov chains and observed that larvae often repeated the same maneuvers within a group. When analyzing subsequent maneuvers performed by different larvae, we found that larva-larva interactions occurred as series of escapes. Overall, ZebraZoom reaches the level of precision found in manual analysis but accomplishes tasks in a high-throughput format necessary for large screens.
topic machine learning
collective behavior
tracking
classifier
Support vector machine
analysis of kinematics
url http://journal.frontiersin.org/Journal/10.3389/fncir.2013.00107/full
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