Assessment of a non-invasive high-throughput classifier for behaviours associated with sleep and wake in mice

<p>Abstract</p> <p>This work presents a non-invasive high-throughput system for automatically detecting characteristic behaviours in mice over extended periods of time, useful for phenotyping experiments. The system classifies time intervals on the order of 2 to 4 seconds as corres...

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Main Authors: Crane Eli R, Medonza Dharshan C, Donohue Kevin D, O'Hara Bruce F
Format: Article
Language:English
Published: BMC 2008-04-01
Series:BioMedical Engineering OnLine
Online Access:http://www.biomedical-engineering-online.com/content/7/1/14
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spelling doaj-8c07af3289d54058a85dac029e5f1b032020-11-25T02:18:56ZengBMCBioMedical Engineering OnLine1475-925X2008-04-01711410.1186/1475-925X-7-14Assessment of a non-invasive high-throughput classifier for behaviours associated with sleep and wake in miceCrane Eli RMedonza Dharshan CDonohue Kevin DO'Hara Bruce F<p>Abstract</p> <p>This work presents a non-invasive high-throughput system for automatically detecting characteristic behaviours in mice over extended periods of time, useful for phenotyping experiments. The system classifies time intervals on the order of 2 to 4 seconds as corresponding to motions consistent with either active wake or inactivity associated with sleep. A single Polyvinylidine Difluoride (PVDF) sensor on the cage floor generates signals from motion resulting in pressure. This paper develops a linear classifier based on robust features extracted from normalized power spectra and autocorrelation functions, as well as novel features from the collapsed average (autocorrelation of complex spectrum), which characterize transient and periodic properties of the signal envelope. Performance is analyzed through an experiment comparing results from direct human observation and classification of the different behaviours with an automatic classifier used in conjunction with this system. Experimental results from over 28.5 hours of data from 4 mice indicate a 94% classification rate relative to the human observations. Examples of sequential classifications (2 second increments) over transition regions between sleep and wake behaviour are also presented to demonstrate robust performance to signal variation and explain performance limitations.</p> http://www.biomedical-engineering-online.com/content/7/1/14
collection DOAJ
language English
format Article
sources DOAJ
author Crane Eli R
Medonza Dharshan C
Donohue Kevin D
O'Hara Bruce F
spellingShingle Crane Eli R
Medonza Dharshan C
Donohue Kevin D
O'Hara Bruce F
Assessment of a non-invasive high-throughput classifier for behaviours associated with sleep and wake in mice
BioMedical Engineering OnLine
author_facet Crane Eli R
Medonza Dharshan C
Donohue Kevin D
O'Hara Bruce F
author_sort Crane Eli R
title Assessment of a non-invasive high-throughput classifier for behaviours associated with sleep and wake in mice
title_short Assessment of a non-invasive high-throughput classifier for behaviours associated with sleep and wake in mice
title_full Assessment of a non-invasive high-throughput classifier for behaviours associated with sleep and wake in mice
title_fullStr Assessment of a non-invasive high-throughput classifier for behaviours associated with sleep and wake in mice
title_full_unstemmed Assessment of a non-invasive high-throughput classifier for behaviours associated with sleep and wake in mice
title_sort assessment of a non-invasive high-throughput classifier for behaviours associated with sleep and wake in mice
publisher BMC
series BioMedical Engineering OnLine
issn 1475-925X
publishDate 2008-04-01
description <p>Abstract</p> <p>This work presents a non-invasive high-throughput system for automatically detecting characteristic behaviours in mice over extended periods of time, useful for phenotyping experiments. The system classifies time intervals on the order of 2 to 4 seconds as corresponding to motions consistent with either active wake or inactivity associated with sleep. A single Polyvinylidine Difluoride (PVDF) sensor on the cage floor generates signals from motion resulting in pressure. This paper develops a linear classifier based on robust features extracted from normalized power spectra and autocorrelation functions, as well as novel features from the collapsed average (autocorrelation of complex spectrum), which characterize transient and periodic properties of the signal envelope. Performance is analyzed through an experiment comparing results from direct human observation and classification of the different behaviours with an automatic classifier used in conjunction with this system. Experimental results from over 28.5 hours of data from 4 mice indicate a 94% classification rate relative to the human observations. Examples of sequential classifications (2 second increments) over transition regions between sleep and wake behaviour are also presented to demonstrate robust performance to signal variation and explain performance limitations.</p>
url http://www.biomedical-engineering-online.com/content/7/1/14
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