Beyond the three-chamber test: toward a multimodal and objective assessment of social behavior in rodents.

IF 6.3 1区 医学 Q1 GENETICS & HEREDITY Molecular Autism Pub Date : 2022-10-25 DOI:10.1186/s13229-022-00521-6
Renad Jabarin, Shai Netser, Shlomo Wagner
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引用次数: 18

Abstract

MAIN: In recent years, substantial advances in social neuroscience have been realized, including the generation of numerous rodent models of autism spectrum disorder. Still, it can be argued that those methods currently being used to analyze animal social behavior create a bottleneck that significantly slows down progress in this field. Indeed, the bulk of research still relies on a small number of simple behavioral paradigms, the results of which are assessed without considering behavioral dynamics. Moreover, only few variables are examined in each paradigm, thus overlooking a significant portion of the complexity that characterizes social interaction between two conspecifics, subsequently hindering our understanding of the neural mechanisms governing different aspects of social behavior. We further demonstrate these constraints by discussing the most commonly used paradigm for assessing rodent social behavior, the three-chamber test. We also point to the fact that although emotions greatly influence human social behavior, we lack reliable means for assessing the emotional state of animals during social tasks. As such, we also discuss current evidence supporting the existence of pro-social emotions and emotional cognition in animal models. We further suggest that adequate social behavior analysis requires a novel multimodal approach that employs automated and simultaneous measurements of multiple behavioral and physiological variables at high temporal resolution in socially interacting animals. We accordingly describe several computerized systems and computational tools for acquiring and analyzing such measurements. Finally, we address several behavioral and physiological variables that can be used to assess socio-emotional states in animal models and thus elucidate intricacies of social behavior so as to attain deeper insight into the brain mechanisms that mediate such behaviors. CONCLUSIONS: In summary, we suggest that combining automated multimodal measurements with machine-learning algorithms will help define socio-emotional states and determine their dynamics during various types of social tasks, thus enabling a more thorough understanding of the complexity of social behavior.

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超越三室试验:对啮齿类动物的社会行为进行多模式客观评估。
主要:近年来,社会神经科学取得了实质性进展,包括产生了许多自闭症谱系障碍的啮齿动物模型。尽管如此,可以说,目前用于分析动物社会行为的方法造成了一个瓶颈,大大减缓了该领域的进展。事实上,大部分研究仍然依赖于少数简单的行为范式,其结果在评估时没有考虑行为动力学。此外,在每个范式中,只有少数变量被检查,因此忽略了两个同种之间社会互动的复杂性的很大一部分,从而阻碍了我们对控制社会行为不同方面的神经机制的理解。我们通过讨论最常用的评估啮齿动物社会行为的范式,即三室测试,进一步证明了这些限制。我们还指出,尽管情绪在很大程度上影响着人类的社会行为,但我们缺乏可靠的方法来评估动物在社会任务中的情绪状态。因此,我们还讨论了目前支持动物模型中存在亲社会情绪和情绪认知的证据。我们进一步提出,充分的社会行为分析需要一种新的多模式方法,该方法在高时间分辨率下对社会互动动物的多个行为和生理变量进行自动和同时测量。因此,我们描述了几种用于获取和分析此类测量的计算机化系统和计算工具。最后,我们讨论了几个行为和生理变量,这些变量可用于评估动物模型中的社会情绪状态,从而阐明社会行为的复杂性,从而更深入地了解介导这些行为的大脑机制。结论:总之,我们建议将自动多模式测量与机器学习算法相结合,将有助于定义社会情绪状态,并确定其在各种类型的社会任务中的动态,从而能够更彻底地了解社会行为的复杂性。
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来源期刊
Molecular Autism
Molecular Autism GENETICS & HEREDITY-NEUROSCIENCES
CiteScore
12.10
自引率
1.60%
发文量
44
审稿时长
17 weeks
期刊介绍: Molecular Autism is a peer-reviewed, open access journal that publishes high-quality basic, translational and clinical research that has relevance to the etiology, pathobiology, or treatment of autism and related neurodevelopmental conditions. Research that includes integration across levels is encouraged. Molecular Autism publishes empirical studies, reviews, and brief communications.
期刊最新文献
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