Q175 亨廷顿病小鼠模型的深度行为表型:年龄、性别和体重的影响。

IF 4.4 1区 生物学 Q1 BIOLOGY
Ellen T Koch, Judy Cheng, Daniel Ramandi, Marja D Sepers, Alex Hsu, Tony Fong, Timothy H Murphy, Eric Yttri, Lynn A Raymond
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引用次数: 0

摘要

背景介绍亨廷顿病(Huntington disease,HD)是一种神经退行性疾病,具有复杂的运动和行为表现。最近,Q175基因敲入HD小鼠模型作为人类疾病的精确遗传模型受到了广泛欢迎。然而,该模型的行为表型往往很微妙,进展缓慢。在这里,我们采用机器学习算法来研究 Q175 模型的行为,并比较不同性别和不同疾病阶段的差异。我们在空地、旋转木马、水上T迷宫和家笼拉杆任务中探索了不同的行为模式和运动功能:在空地上,我们观察到两个版本的 Q175 模型(zQ175dn 和 Q175FDN,基于两个不同的背景品系)存在习惯化缺陷,并且使用先进的机器学习方法 B-SOiD,我们发现雄性表现 zQ175dn 小鼠的饲养性能发生了改变。值得注意的是,我们发现体重对加速旋转木马和水上 T 型迷宫任务的表现有相当大的影响,并通过对体重进行归一化来控制这种影响。显性zQ175dn小鼠在加速旋转(体重正常化后)方面表现出缺陷,同时爪运动学也发生了雄性特有的变化。我们的水上T迷宫实验发现,显性zQ175dn小鼠存在反应学习缺陷,而显性前雄性zQ175dn小鼠存在逆转学习缺陷;使用PyMouseTracks软件进行的进一步分析使我们能够确定这项任务的新行为特征,包括决策点时间和加速次数。在基于家庭笼的杠杆拉动评估中,我们发现雄性显性 zQ175dn 小鼠存在明显的学习障碍。我们还对一部分小鼠进行了电生理学切片实验,发现雄性显性zQ175dn小鼠的自发兴奋事件频率降低:我们的研究发现了 Q175 小鼠的一些行为变化,这些变化因性别、年龄和品系而异。我们的研究结果凸显了体重和实验方案对行为结果的影响,以及机器学习工具在以比以往更详细的方式研究行为方面的实用性。具体来说,这项工作为该领域提供了有关这种 HD 模型行为障碍的最新概述,以及在开放场、加速旋转木马和 T 型迷宫任务中剖析行为的新技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep behavioural phenotyping of the Q175 Huntington disease mouse model: effects of age, sex, and weight.

Background: Huntington disease (HD) is a neurodegenerative disorder with complex motor and behavioural manifestations. The Q175 knock-in mouse model of HD has gained recent popularity as a genetically accurate model of the human disease. However, behavioural phenotypes are often subtle and progress slowly in this model. Here, we have implemented machine-learning algorithms to investigate behaviour in the Q175 model and compare differences between sexes and disease stages. We explore distinct behavioural patterns and motor functions in open field, rotarod, water T-maze, and home cage lever-pulling tasks.

Results: In the open field, we observed habituation deficits in two versions of the Q175 model (zQ175dn and Q175FDN, on two different background strains), and using B-SOiD, an advanced machine learning approach, we found altered performance of rearing in male manifest zQ175dn mice. Notably, we found that weight had a considerable effect on performance of accelerating rotarod and water T-maze tasks and controlled for this by normalizing for weight. Manifest zQ175dn mice displayed a deficit in accelerating rotarod (after weight normalization), as well as changes to paw kinematics specific to males. Our water T-maze experiments revealed response learning deficits in manifest zQ175dn mice and reversal learning deficits in premanifest male zQ175dn mice; further analysis using PyMouseTracks software allowed us to characterize new behavioural features in this task, including time at decision point and number of accelerations. In a home cage-based lever-pulling assessment, we found significant learning deficits in male manifest zQ175dn mice. A subset of mice also underwent electrophysiology slice experiments, revealing a reduced spontaneous excitatory event frequency in male manifest zQ175dn mice.

Conclusions: Our study uncovered several behavioural changes in Q175 mice that differed by sex, age, and strain. Our results highlight the impact of weight and experimental protocol on behavioural results, and the utility of machine learning tools to examine behaviour in more detailed ways than was previously possible. Specifically, this work provides the field with an updated overview of behavioural impairments in this model of HD, as well as novel techniques for dissecting behaviour in the open field, accelerating rotarod, and T-maze tasks.

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来源期刊
BMC Biology
BMC Biology 生物-生物学
CiteScore
7.80
自引率
1.90%
发文量
260
审稿时长
3 months
期刊介绍: BMC Biology is a broad scope journal covering all areas of biology. Our content includes research articles, new methods and tools. BMC Biology also publishes reviews, Q&A, and commentaries.
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