CAS Key Laboratory of Brain Connectome and Manipulation, Shenzhen-Hong Kong Institute of Brain Science, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen, 518055, China.
Guangdong Provincial Key Laboratory of Brain Connectome and Behavior, the Brain Cognition and Brain Disease Institute, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen, 518055, China.
Transl Psychiatry. 2023 May 25;13(1):178. doi: 10.1038/s41398-023-02481-8.
Investigation of the neurobiology of depression in humans depends on animal models that attempt to mimic specific features of the human disorder. However, frequently-used paradigms based on social stress cannot be easily applied to female mice which has led to a large sex bias in preclinical studies of depression. Furthermore, most studies focus on one or only a few behavioral assessments, with time and practical considerations prohibiting a comprehensive evaluation. In this study, we demonstrate that predator stress effectively induced depression-like behaviors in both male and female mice. By comparing predator stress and social defeat models, we observed that the former elicited a higher level of behavioral despair and the latter elicited more robust social avoidance. Furthermore, the use of machine learning (ML)-based spontaneous behavioral classification can distinguish mice subjected to one type of stress from another, and from non-stressed mice. We show that related patterns of spontaneous behaviors correspond to depression status as measured by canonical depression-like behaviors, which illustrates that depression-like symptoms can be predicted by ML-classified behavior patterns. Overall, our study confirms that the predator stress induced phenotype in mice is a good reflection of several important aspects of depression in humans and illustrates that ML-supported analysis can simultaneously evaluate multiple behavioral alterations in different animal models of depression, providing a more unbiased and holistic approach for the study of neuropsychiatric disorders.
人类抑郁症的神经生物学研究依赖于试图模拟人类疾病特定特征的动物模型。然而,基于社会压力的常用范式不能轻易应用于雌性小鼠,这导致了抑郁症临床前研究中的严重性别偏见。此外,大多数研究集中在一到几种行为评估上,时间和实际考虑因素禁止进行全面评估。在这项研究中,我们证明了捕食者压力可以有效地在雄性和雌性小鼠中诱导出类似抑郁症的行为。通过比较捕食者压力和社会挫败模型,我们观察到前者引起更高水平的行为绝望,后者引起更强烈的社会回避。此外,基于机器学习 (ML) 的自发行为分类可以将接受一种压力的小鼠与另一种压力的小鼠以及未接受压力的小鼠区分开来。我们表明,自发行为的相关模式与通过典型的类似抑郁症行为测量的抑郁症状态相对应,这表明抑郁症样症状可以通过 ML 分类的行为模式来预测。总体而言,我们的研究证实,小鼠中捕食者压力引起的表型很好地反映了人类抑郁症的几个重要方面,并表明 ML 支持的分析可以同时评估不同抑郁症动物模型中的多种行为改变,为神经精神疾病的研究提供了更客观和全面的方法。