Automated classification of mouse pup isolation syllables: from cluster analysis to an Excel based ‘mouse pup syllable classification calculator’

Mouse pups vocalize at high rates when they are cold or isolated from the nest. The proportions of each syllable type produced carry information about disease state and are being used as behavioral markers for the internal state of animals. Manual classifications of these vocalizations identified te...

Full description

Bibliographic Details
Main Authors: Jasmine eGrimsley, Marie eGadziola, Jeff James Wenstrup
Format: Article
Language:English
Published: Frontiers Media S.A. 2013-01-01
Series:Frontiers in Behavioral Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fnbeh.2012.00089/full
id doaj-0e7bd445a0514dcf8b9819c055b6e28b
record_format Article
spelling doaj-0e7bd445a0514dcf8b9819c055b6e28b2020-11-24T22:38:06ZengFrontiers Media S.A.Frontiers in Behavioral Neuroscience1662-51532013-01-01610.3389/fnbeh.2012.0008936250Automated classification of mouse pup isolation syllables: from cluster analysis to an Excel based ‘mouse pup syllable classification calculator’Jasmine eGrimsley0Marie eGadziola1Marie eGadziola2Jeff James Wenstrup3Northeast Ohio Medical University (NEOMED)Northeast Ohio Medical University (NEOMED)Kent State UniversityNortheast Ohio Medical University (NEOMED)Mouse pups vocalize at high rates when they are cold or isolated from the nest. The proportions of each syllable type produced carry information about disease state and are being used as behavioral markers for the internal state of animals. Manual classifications of these vocalizations identified ten syllable types based on their spectro-temporal features. However, manual classification of mouse syllables is time consuming and vulnerable to experimenter bias. This study uses an automated cluster analysis to identify acoustically distinct syllable types produced by CBA/CaJ mouse pups, and then compares the results to prior manual classification methods. The cluster analysis identified two syllable types, based on their frequency bands, that have continuous frequency-time structure, and two syllable types featuring abrupt frequency transitions. Although cluster analysis computed fewer syllable types than manual classification, the clusters represented well the probability distributions of the acoustic features within syllables. These probability distributions indicate that some of the manually classified syllable types are not statistically distinct. The characteristics of the four classified clusters were used to generate a Microsoft Excel-based mouse syllable classifier that rapidly categorizes syllables, with over a 90% match, into the syllable types determined by cluster analysis.http://journal.frontiersin.org/Journal/10.3389/fnbeh.2012.00089/fullCluster analysisvocalizationMouse pup callsIsolation callsMouse songCommunication call.
collection DOAJ
language English
format Article
sources DOAJ
author Jasmine eGrimsley
Marie eGadziola
Marie eGadziola
Jeff James Wenstrup
spellingShingle Jasmine eGrimsley
Marie eGadziola
Marie eGadziola
Jeff James Wenstrup
Automated classification of mouse pup isolation syllables: from cluster analysis to an Excel based ‘mouse pup syllable classification calculator’
Frontiers in Behavioral Neuroscience
Cluster analysis
vocalization
Mouse pup calls
Isolation calls
Mouse song
Communication call.
author_facet Jasmine eGrimsley
Marie eGadziola
Marie eGadziola
Jeff James Wenstrup
author_sort Jasmine eGrimsley
title Automated classification of mouse pup isolation syllables: from cluster analysis to an Excel based ‘mouse pup syllable classification calculator’
title_short Automated classification of mouse pup isolation syllables: from cluster analysis to an Excel based ‘mouse pup syllable classification calculator’
title_full Automated classification of mouse pup isolation syllables: from cluster analysis to an Excel based ‘mouse pup syllable classification calculator’
title_fullStr Automated classification of mouse pup isolation syllables: from cluster analysis to an Excel based ‘mouse pup syllable classification calculator’
title_full_unstemmed Automated classification of mouse pup isolation syllables: from cluster analysis to an Excel based ‘mouse pup syllable classification calculator’
title_sort automated classification of mouse pup isolation syllables: from cluster analysis to an excel based ‘mouse pup syllable classification calculator’
publisher Frontiers Media S.A.
series Frontiers in Behavioral Neuroscience
issn 1662-5153
publishDate 2013-01-01
description Mouse pups vocalize at high rates when they are cold or isolated from the nest. The proportions of each syllable type produced carry information about disease state and are being used as behavioral markers for the internal state of animals. Manual classifications of these vocalizations identified ten syllable types based on their spectro-temporal features. However, manual classification of mouse syllables is time consuming and vulnerable to experimenter bias. This study uses an automated cluster analysis to identify acoustically distinct syllable types produced by CBA/CaJ mouse pups, and then compares the results to prior manual classification methods. The cluster analysis identified two syllable types, based on their frequency bands, that have continuous frequency-time structure, and two syllable types featuring abrupt frequency transitions. Although cluster analysis computed fewer syllable types than manual classification, the clusters represented well the probability distributions of the acoustic features within syllables. These probability distributions indicate that some of the manually classified syllable types are not statistically distinct. The characteristics of the four classified clusters were used to generate a Microsoft Excel-based mouse syllable classifier that rapidly categorizes syllables, with over a 90% match, into the syllable types determined by cluster analysis.
topic Cluster analysis
vocalization
Mouse pup calls
Isolation calls
Mouse song
Communication call.
url http://journal.frontiersin.org/Journal/10.3389/fnbeh.2012.00089/full
work_keys_str_mv AT jasmineegrimsley automatedclassificationofmousepupisolationsyllablesfromclusteranalysistoanexcelbasedmousepupsyllableclassificationcalculator
AT marieegadziola automatedclassificationofmousepupisolationsyllablesfromclusteranalysistoanexcelbasedmousepupsyllableclassificationcalculator
AT marieegadziola automatedclassificationofmousepupisolationsyllablesfromclusteranalysistoanexcelbasedmousepupsyllableclassificationcalculator
AT jeffjameswenstrup automatedclassificationofmousepupisolationsyllablesfromclusteranalysistoanexcelbasedmousepupsyllableclassificationcalculator
_version_ 1725714695790264320