Real-time analysis of the behaviour of groups of mice via a depth-sensing camera and machine learning

被引:0
|
作者
Fabrice de Chaumont
Elodie Ey
Nicolas Torquet
Thibault Lagache
Stéphane Dallongeville
Albane Imbert
Thierry Legou
Anne-Marie Le Sourd
Philippe Faure
Thomas Bourgeron
Jean-Christophe Olivo-Marin
机构
[1] Institut Pasteur,
[2] BioImage Analysis Unit,undefined
[3] CNRS UMR 3691,undefined
[4] Human Genetics and Cognitive Functions,undefined
[5] Institut Pasteur,undefined
[6] UMR 3571 CNRS,undefined
[7] University Paris-Diderot,undefined
[8] Sorbonne Université,undefined
[9] CNRS UMR 8246,undefined
[10] INSERM,undefined
[11] Neurosciences Paris Seine - Institut de Biologie Paris-Seine,undefined
[12] Institut Pasteur,undefined
[13] FabLab,undefined
[14] Center for Innovation and Technological research,undefined
[15] Aix-Marseille Université,undefined
[16] CNRS,undefined
[17] LPL,undefined
[18] UMR 7309,undefined
来源
Nature Biomedical Engineering | 2019年 / 3卷
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摘要
Preclinical studies of psychiatric disorders use animal models to investigate the impact of environmental factors or genetic mutations on complex traits such as decision-making and social interactions. Here, we introduce a method for the real-time analysis of the behaviour of mice housed in groups of up to four over several days and in enriched environments. The method combines computer vision through a depth-sensing infrared camera, machine learning for animal and posture identification, and radio-frequency identification to monitor the quality of mouse tracking. It tracks multiple mice accurately, extracts a list of behavioural traits of both individuals and the groups of mice, and provides a phenotypic profile for each animal. We used the method to study the impact of Shank2 and Shank3 gene mutations—mutations that are associated with autism—on mouse behaviour. Characterization and integration of data from the behavioural profiles of Shank2 and Shank3 mutant female mice revealed their distinctive activity levels and involvement in complex social interactions.
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页码:930 / 942
页数:12
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