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Normalization of large-scale behavioural data collected from zebrafish

Many contemporary neuroscience experiments utilize high-throughput approaches to simultaneously collect behavioural data from many animals. The resulting data are often complex in structure and are subjected to systematic biases, which require new approaches for analysis and normalization. This stud...

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Autores principales: Xie, Rui, Zhang, Mengrui, Venkatraman, Prahatha, Zhang, Xinlian, Zhang, Gaonan, Carmer, Robert, Kantola, Skylar A., Pang, Chi Pui, Ma, Ping, Zhang, Mingzhi, Zhong, Wenxuan, Leung, Yuk Fai
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6377122/
https://www.ncbi.nlm.nih.gov/pubmed/30768618
http://dx.doi.org/10.1371/journal.pone.0212234
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author Xie, Rui
Zhang, Mengrui
Venkatraman, Prahatha
Zhang, Xinlian
Zhang, Gaonan
Carmer, Robert
Kantola, Skylar A.
Pang, Chi Pui
Ma, Ping
Zhang, Mingzhi
Zhong, Wenxuan
Leung, Yuk Fai
author_facet Xie, Rui
Zhang, Mengrui
Venkatraman, Prahatha
Zhang, Xinlian
Zhang, Gaonan
Carmer, Robert
Kantola, Skylar A.
Pang, Chi Pui
Ma, Ping
Zhang, Mingzhi
Zhong, Wenxuan
Leung, Yuk Fai
author_sort Xie, Rui
collection PubMed
description Many contemporary neuroscience experiments utilize high-throughput approaches to simultaneously collect behavioural data from many animals. The resulting data are often complex in structure and are subjected to systematic biases, which require new approaches for analysis and normalization. This study addressed the normalization need by establishing an approach based on linear-regression modeling. The model was established using a dataset of visual motor response (VMR) obtained from several strains of wild-type (WT) zebrafish collected at multiple stages of development. The VMR is a locomotor response triggered by drastic light change, and is commonly measured repeatedly from multiple larvae arrayed in 96-well plates. This assay is subjected to several systematic variations. For example, the light emitted by the machine varies slightly from well to well. In addition to the light-intensity variation, biological replication also created batch-batch variation. These systematic variations may result in differences in the VMR and must be normalized. Our normalization approach explicitly modeled the effect of these systematic variations on VMR. It also normalized the activity profiles of different conditions to a common baseline. Our approach is versatile, as it can incorporate different normalization needs as separate factors. The versatility was demonstrated by an integrated normalization of three factors: light-intensity variation, batch-batch variation and baseline. After normalization, new biological insights were revealed from the data. For example, we found larvae of TL strain at 6 days post-fertilization (dpf) responded to light onset much stronger than the 9-dpf larvae, whereas previous analysis without normalization shows that their responses were relatively comparable. By removing systematic variations, our model-based normalization can facilitate downstream statistical comparisons and aid detecting true biological differences in high-throughput studies of neurobehaviour.
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spelling pubmed-63771222019-03-01 Normalization of large-scale behavioural data collected from zebrafish Xie, Rui Zhang, Mengrui Venkatraman, Prahatha Zhang, Xinlian Zhang, Gaonan Carmer, Robert Kantola, Skylar A. Pang, Chi Pui Ma, Ping Zhang, Mingzhi Zhong, Wenxuan Leung, Yuk Fai PLoS One Research Article Many contemporary neuroscience experiments utilize high-throughput approaches to simultaneously collect behavioural data from many animals. The resulting data are often complex in structure and are subjected to systematic biases, which require new approaches for analysis and normalization. This study addressed the normalization need by establishing an approach based on linear-regression modeling. The model was established using a dataset of visual motor response (VMR) obtained from several strains of wild-type (WT) zebrafish collected at multiple stages of development. The VMR is a locomotor response triggered by drastic light change, and is commonly measured repeatedly from multiple larvae arrayed in 96-well plates. This assay is subjected to several systematic variations. For example, the light emitted by the machine varies slightly from well to well. In addition to the light-intensity variation, biological replication also created batch-batch variation. These systematic variations may result in differences in the VMR and must be normalized. Our normalization approach explicitly modeled the effect of these systematic variations on VMR. It also normalized the activity profiles of different conditions to a common baseline. Our approach is versatile, as it can incorporate different normalization needs as separate factors. The versatility was demonstrated by an integrated normalization of three factors: light-intensity variation, batch-batch variation and baseline. After normalization, new biological insights were revealed from the data. For example, we found larvae of TL strain at 6 days post-fertilization (dpf) responded to light onset much stronger than the 9-dpf larvae, whereas previous analysis without normalization shows that their responses were relatively comparable. By removing systematic variations, our model-based normalization can facilitate downstream statistical comparisons and aid detecting true biological differences in high-throughput studies of neurobehaviour. Public Library of Science 2019-02-15 /pmc/articles/PMC6377122/ /pubmed/30768618 http://dx.doi.org/10.1371/journal.pone.0212234 Text en © 2019 Xie et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Xie, Rui
Zhang, Mengrui
Venkatraman, Prahatha
Zhang, Xinlian
Zhang, Gaonan
Carmer, Robert
Kantola, Skylar A.
Pang, Chi Pui
Ma, Ping
Zhang, Mingzhi
Zhong, Wenxuan
Leung, Yuk Fai
Normalization of large-scale behavioural data collected from zebrafish
title Normalization of large-scale behavioural data collected from zebrafish
title_full Normalization of large-scale behavioural data collected from zebrafish
title_fullStr Normalization of large-scale behavioural data collected from zebrafish
title_full_unstemmed Normalization of large-scale behavioural data collected from zebrafish
title_short Normalization of large-scale behavioural data collected from zebrafish
title_sort normalization of large-scale behavioural data collected from zebrafish
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6377122/
https://www.ncbi.nlm.nih.gov/pubmed/30768618
http://dx.doi.org/10.1371/journal.pone.0212234
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