认知
人工智能
深度学习
计算机科学
卷积神经网络
神经科学
空间学习
模式识别(心理学)
心理学
作者
Hinze Ho,Nejc Kejzar,Hiroki Sasaguri,Takashi Saito,Takaomi C. Saido,Bart De Strooper,Marius Bauža,Julija Krupic
标识
DOI:10.1016/j.crmeth.2023.100532
摘要
Automated home-cage monitoring systems present a valuable tool for comprehensive phenotyping of natural behaviors. However, current systems often involve complex training routines, water or food restriction, and probe a limited range of behaviors. Here, we present a fully automated home-cage monitoring system for cognitive and behavioral phenotyping in mice. The system incorporates T-maze alternation, novel object recognition, and object-in-place recognition tests combined with monitoring of locomotion, drinking, and quiescence patterns, all carried out over long periods. Mice learn the tasks rapidly without any need for water or food restrictions. Behavioral characterization employs a deep convolutional neural network image analysis. We show that combined statistical properties of multiple behaviors can be used to discriminate between mice with hippocampal, medial entorhinal, and sham lesions and predict the genotype of an Alzheimer's disease mouse model with high accuracy. This technology may enable large-scale behavioral screening for genes and neural circuits underlying spatial memory and other cognitive processes.
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