利用隐马尔可夫模型识别野外围栏中地下啮齿动物加速度测量数据中的行为模式。

IF 2.9 3区 生物学 Q2 BIOLOGY
Milene G Jannetti, Veronica S Valentinuzzi, Gisele A Oda
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引用次数: 0

摘要

实验室啮齿类动物的活动节奏通常是通过跑步的轮子来测量的,尽管轮子跑步活动或休息的数据可以直接进行节奏分析,但它提供的行为信息有限。在地下啮齿类动物(tuco-tucos)中,我们使用生物记录仪(加速度计)来测量实验室和野外条件下的活动节奏,检测构成活动的各种运动。然而,理解这些不同的加速度计检测到的活动成分需要更复杂的分析工具。本研究使用监督隐马尔可夫模型(hmm)作为机器学习分析,识别野地围栏中tuco- tuco-tucos加速度计数据中的行为模式,并表征其在这种情况下的行为节律。tuco-tucos的活动以前是在实验室中用同步加速度计测量记录下来的。在HMM模型中使用视频获取的行为数据来细化(训练)加速度计记录到不同行为状态的分类。HMM的分类结果与视频观测方法的分类结果的匹配率为93%。然后使用训练好的模型自动提取20只未观察到的tuco-tuco -tuco的加速度计的行为信息,这些加速度计首先放在野外围栏中,然后转移到实验室。与挖掘和移动相关的活动回合负责田间围栏的昼夜节律和实验室的夜间节律。在这两种情况下,活动分布在白天和晚上(导管状),并与进食、食腐和梳理有关。最后,虽然在实验室环境中白天和晚上都有休息,但在野外围栏下,tuco-tucos将休息时间限制在夜间,这可能是对挑战性环境的行为调整。HMM模型从加速度计数据中提供了更多的行为信息,扩大了自然条件下小型哺乳动物活动模式研究的范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Hidden Markov Models to Identify Behavioral Patterns in Accelerometry Data of Subterranean Rodents in Field Enclosures.

Activity rhythms of laboratory rodents are usually measured by running wheels, and although wheel running activity-or-rest data enable straightforward rhythmic analyses, it provides limited behavioral information. In subterranean rodents (tuco-tucos), we used bio-loggers (accelerometers) to measure activity rhythms in both lab and field conditions, detecting diverse movements that compose activity. However, understanding these different accelerometer-detected activity components requires more complex analytical tools. Here we used supervised hidden Markov models (HMMs) as a machine learning analysis, to identify behavioral patterns in accelerometer data of tuco-tucos from field enclosures and characterize their behavioral rhythms in this condition. Activity of tuco-tucos was previously video-recorded in the laboratory with simultaneous accelerometer measurements. Video-obtained behavioral data were used in HMM models to refine (train) the classification of accelerometer recordings into different behavioral states. The classification obtained by HMM matched in 93% the one obtained by the video-observed method. Trained models were then used to automatically extract behavior information from accelerometers attached to 20 unobserved tuco-tucos first maintained in field enclosures and then transferred to the laboratory. Activity bouts associated with digging and locomotion were responsible for the diurnal rhythm in field enclosures and the nocturnal rhythm in the laboratory. Bouts of activity spread throughout day and night (cathemeral) were present in both conditions and were associated with feeding, coprophagy, and grooming. Finally, while rest occurs throughout day and night in the laboratory setting, tuco-tucos restrict rest episodes to nighttime under field enclosures, possibly as a behavioral adjustment to challenging environments. HMM models provide more behavioral information from accelerometry data, expanding the scope of activity pattern studies in small mammals under natural conditions.

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来源期刊
CiteScore
6.10
自引率
8.60%
发文量
48
审稿时长
>12 weeks
期刊介绍: Journal of Biological Rhythms is the official journal of the Society for Research on Biological Rhythms and offers peer-reviewed original research in all aspects of biological rhythms, using genetic, biochemical, physiological, behavioral, epidemiological & modeling approaches, as well as clinical trials. Emphasis is on circadian and seasonal rhythms, but timely reviews and research on other periodicities are also considered. The journal is a member of the Committee on Publication Ethics (COPE).
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