Behavioral Neuroscience and Drug Development, Maj Institute of Pharmacology, Polish Academy of Sciences, Kraków, Poland.
PLoS One. 2024 Nov 8;19(11):e0307794. doi: 10.1371/journal.pone.0307794. eCollection 2024.
The rapid decrease of light intensity is a potent stimulus of rats' activity. The nature of this activity, including the character of social behavior and the composition of concomitant ultrasonic vocalizations (USVs), is unknown. Using deep learning algorithms, this study aimed to examine the social life of rat pairs kept in semi-natural conditions and observed during the transitions between light and dark, as well as between dark and light periods. Over six days, animals were video- and audio-recorded during the transition sessions, each starting 10 minutes before and ending 10 minutes after light change. The videos were used to train and apply the DeepLabCut neural network examining animals' movement in space and time. DeepLabCut data were subjected to the Simple Behavioral Analysis (SimBA) toolkit to build models of 11 distinct social and non-social behaviors. DeepSqueak toolkit was used to examine USVs. Deep learning algorithms revealed lights-off-induced increases in fighting, mounting, crawling, and rearing behaviors, as well as 22-kHz alarm calls and 50-kHz flat and short, but not frequency-modulated calls. In contrast, the lights-on stimulus increased general activity, adjacent lying (huddling), anogenital sniffing, and rearing behaviors. The animals adapted to the housing conditions by showing decreased ultrasonic calls as well as grooming and rearing behaviors, but not fighting. The present study shows a lights-off-induced increase in aggressive behavior but fails to demonstrate an increase in a positive affect defined by hedonic USVs. We further confirm and extend the utility of deep learning algorithms in analyzing rat social behavior and ultrasonic vocalizations.
光强度的快速下降是大鼠活动的强烈刺激。这种活动的性质,包括社会行为的特征和伴随的超声发声(USVs)的组成,尚不清楚。本研究使用深度学习算法,旨在检查在半自然条件下饲养的大鼠对光暗转换以及暗-光周期转换期间的社会生活。在六天的时间里,动物在过渡时段进行视频和音频记录,每个时段在灯光变化前 10 分钟开始,在灯光变化后 10 分钟结束。视频用于训练和应用 DeepLabCut 神经网络,以检查动物在空间和时间中的运动。DeepLabCut 数据被提交给 Simple Behavioral Analysis(SimBA)工具包,以构建 11 种不同的社交和非社交行为模型。DeepSqueak 工具包用于检查 USVs。深度学习算法揭示了熄灯引起的战斗、交配、爬行和竖起行为增加,以及 22-kHz 报警叫声和 50-kHz 平而短但不调频叫声。相比之下,开灯刺激增加了一般活动、相邻躺着(挤在一起)、肛门嗅探和竖起行为。动物通过减少超声叫声以及梳理和竖起行为来适应饲养条件,但不减少战斗行为。本研究表明熄灯会引起攻击行为增加,但未能证明愉悦性 USVs 定义的积极情绪增加。我们进一步证实并扩展了深度学习算法在分析大鼠社会行为和超声发声中的应用。