Development of a 3D tracking system for multiple marmosets under free-moving conditions

被引:3
|
作者
Yurimoto, Terumi [1 ]
Kumita, Wakako [1 ]
Sato, Kenya [1 ]
Kikuchi, Rika [1 ]
Oka, Gohei [1 ]
Shibuki, Yusuke [1 ]
Hashimoto, Rino [1 ]
Kamioka, Michiko [1 ]
Hayasegawa, Yumi [1 ]
Yamazaki, Eiko [1 ]
Kurotaki, Yoko [2 ]
Goda, Norio [3 ]
Kitakami, Junichi [4 ]
Fujita, Tatsuya [5 ]
Inoue, Takashi [1 ]
Sasaki, Erika [1 ]
机构
[1] Cent Inst Expt Med & Life Sci, Dept Marmoset Biol & Med, Kawasaki 2100821, Japan
[2] Cent Inst Expt Med & Life Sci, Ctr Basic Technol Marmoset, Kawasaki 2100821, Japan
[3] Hitachi Ltd, Publ Digital Transformat Dept, Shinagawa 1408512, Japan
[4] Hitachi Solut Technol Ltd, Vis AI Solut Design Dept, Tachikawa 1900014, Japan
[5] Totec Amen Ltd, Engn Dept Eastern Japan Div, Tokyo 1630417, Japan
关键词
SLEEP DISTURBANCES; PREFERENCES;
D O I
10.1038/s42003-024-05864-9
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Assessment of social interactions and behavioral changes in nonhuman primates is useful for understanding brain function changes during life events and pathogenesis of neurological diseases. The common marmoset (Callithrix jacchus), which lives in a nuclear family like humans, is a useful model, but longitudinal automated behavioral observation of multiple animals has not been achieved. Here, we developed a Full Monitoring and Animal Identification (FulMAI) system for longitudinal detection of three-dimensional (3D) trajectories of each individual in multiple marmosets under free-moving conditions by combining video tracking, Light Detection and Ranging, and deep learning. Using this system, identification of each animal was more than 97% accurate. Location preferences and inter-individual distance could be calculated, and deep learning could detect grooming behavior. The FulMAI system allows us to analyze the natural behavior of individuals in a family over their lifetime and understand how behavior changes due to life events together with other data. An automated behavior analysis system that can track multiple marmoset family members in three dimensions and capture social indicators such as grooming behavior and distance between individuals in the home cage has been developed using deep learning, cameras, and lidar.
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页数:11
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