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Development of a Mouse Pain Scale Using Sub-second Behavioral Mapping and Statistical Modeling

Authors :
Weihua Cai
Mark Lay
Yuan Xiang Tao
Xinying Guo
Justin Burdge
John R. Bethea
Jessica M Jones
Xinzhong Dong
Roman Fischer
Ishmail Abdus-Saboor
Wenqin Luo
Long Ding
Minghong Ma
Peter Dong
Nathan T. Fried
Kathryn A Swanson
Source :
Cell reports
Publication Year :
2019
Publisher :
Elsevier BV, 2019.

Abstract

SUMMARY Rodents are the main model systems for pain research, but determining their pain state is challenging. To develop an objective method to assess pain sensation in mice, we adopt high-speed videography to capture sub-second behavioral features following hind paw stimulation with both noxious and innocuous stimuli and identify several differentiating parameters indicating the affective and reflexive aspects of nociception. Using statistical modeling and machine learning, we integrate these parameters into a single index and create a “mouse pain scale,” which allows us to assess pain sensation in a graded manner for each withdrawal. We demonstrate the utility of this method by determining sensations triggered by three different von Frey hairs and optogenetic activation of two different nociceptor populations. Our behavior-based “pain scale” approach will help improve the rigor and reproducibility of using withdrawal reflex assays to assess pain sensation in mice.<br />Graphical Abstract<br />In Brief Abdus-Saboor et al. develop a behavior-centered “mouse pain scale” using high-speed videography, statistical modeling, and machine learning. With this method, they assess the sensation induced by noxious, innocuous, and optogenetic stimuli. This method will improve the reliability of using the mouse hind paw withdrawal to measure pain.

Details

ISSN :
22111247
Volume :
28
Database :
OpenAIRE
Journal :
Cell Reports
Accession number :
edsair.doi.dedup.....8f3a7f51efaeded5d12328f42a11a5c1
Full Text :
https://doi.org/10.1016/j.celrep.2019.07.017