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使用DeepLabCut和SimBA机器学习模型对大鼠恐惧表达进行全面的行为学分析。

Comprehensive ethological analysis of fear expression in rats using DeepLabCut and SimBA machine learning model.

作者信息

Chanthongdee Kanat, Fuentealba Yerko, Wahlestedt Thor, Foulhac Lou, Kardash Tetiana, Coppola Andrea, Heilig Markus, Barbier Estelle

机构信息

Department of Biomedical and Clinical Sciences, Center for Social and Affective Neuroscience, Linköping University, Linköping, Sweden.

Department of Physiology, Faculty of Medicine Siriraj Hospital, Mahidol University, Bangkok, Thailand.

出版信息

Front Behav Neurosci. 2024 Aug 1;18:1440601. doi: 10.3389/fnbeh.2024.1440601. eCollection 2024.

Abstract

INTRODUCTION

Defensive responses to threat-associated cues are commonly evaluated using conditioned freezing or suppression of operant responding. However, rats display a broad range of behaviors and shift their defensive behaviors based on immediacy of threats and context. This study aimed to systematically quantify the defensive behaviors that are triggered in response to threat-associated cues and assess whether they can accurately be identified using DeepLabCut in conjunction with SimBA.

METHODS

We evaluated behavioral responses to fear using the auditory fear conditioning paradigm. Observable behaviors triggered by threat-associated cues were manually scored using Ethovision XT. Subsequently, we investigated the effects of diazepam (0, 0.3, or 1 mg/kg), administered intraperitoneally before fear memory testing, to assess its anxiolytic impact on these behaviors. We then developed a DeepLabCut + SimBA workflow for ethological analysis employing a series of machine learning models. The accuracy of behavior classifications generated by this pipeline was evaluated by comparing its output scores to the manually annotated scores.

RESULTS

Our findings show that, besides conditioned suppression and freezing, rats exhibit heightened risk assessment behaviors, including sniffing, rearing, free-air whisking, and head scanning. We observed that diazepam dose-dependently mitigates these risk-assessment behaviors in both sexes, suggesting a good predictive validity of our readouts. With adequate amount of training data (approximately > 30,000 frames containing such behavior), DeepLabCut + SimBA workflow yields high accuracy with a reasonable transferability to classify well-represented behaviors in a different experimental condition. We also found that maintaining the same condition between training and evaluation data sets is recommended while developing DeepLabCut + SimBA workflow to achieve the highest accuracy.

DISCUSSION

Our findings suggest that an ethological analysis can be used to assess fear learning. With the application of DeepLabCut and SimBA, this approach provides an alternative method to decode ongoing defensive behaviors in both male and female rats for further investigation of fear-related neurobiological underpinnings.

摘要

引言

对威胁相关线索的防御反应通常通过条件性僵立或操作性反应抑制来评估。然而,大鼠表现出广泛的行为,并根据威胁的紧迫性和情境改变其防御行为。本研究旨在系统地量化对威胁相关线索做出反应时触发的防御行为,并评估是否可以使用DeepLabCut结合SimBA准确识别这些行为。

方法

我们使用听觉恐惧条件反射范式评估对恐惧的行为反应。使用Ethovision XT对手动评分由威胁相关线索触发的可观察行为。随后,我们研究了在恐惧记忆测试前腹腔注射地西泮(0、0.3或1mg/kg)的效果,以评估其对这些行为的抗焦虑作用。然后,我们开发了一种用于行为学分析的DeepLabCut + SimBA工作流程,采用一系列机器学习模型。通过将该流程生成的行为分类输出分数与手动注释分数进行比较,评估其准确性。

结果

我们的研究结果表明,除了条件性抑制和僵立外,大鼠还表现出增强的风险评估行为,包括嗅探、直立、自由空气拂动和头部扫描。我们观察到,地西泮在两性中均剂量依赖性地减轻这些风险评估行为,这表明我们的读数具有良好的预测效度。有了足够的训练数据(约>30,000帧包含此类行为),DeepLabCut + SimBA工作流程具有很高的准确性,并且在不同实验条件下对代表性良好的行为进行分类时具有合理的可转移性。我们还发现,在开发DeepLabCut + SimBA工作流程时,建议在训练和评估数据集之间保持相同的条件,以实现最高的准确性。

讨论

我们的研究结果表明,行为学分析可用于评估恐惧学习。通过应用DeepLabCut和SimBA,这种方法提供了一种替代方法,用于解码雄性和雌性大鼠正在进行的防御行为,以进一步研究恐惧相关的神经生物学基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cc50/11324570/351565cabe6f/fnbeh-18-1440601-g001.jpg

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