BehaviorDEPOT is a simple, flexible tool for automated behavioral detection based on markerless pose tracking

Author:

Gabriel Christopher J12ORCID,Zeidler Zachary1ORCID,Jin Benita13ORCID,Guo Changliang4,Goodpaster Caitlin M2ORCID,Kashay Adrienne Q5,Wu Anna1,Delaney Molly5ORCID,Cheung Jovian5,DiFazio Lauren E6,Sharpe Melissa J6ORCID,Aharoni Daniel4ORCID,Wilke Scott A5,DeNardo Laura A1ORCID

Affiliation:

1. Department of Physiology, University of California, Los Angeles

2. UCLA Neuroscience Interdepartmental Program, University of California, Los Angeles

3. UCLA Molecular, Cellular, and Integrative Physiology Program, University of California, Los Angeles

4. Department of Neurology, University of California, Los Angeles

5. Department of Psychiatry, University of California, Los Angeles

6. Department of Psychology, University of California, Los Angeles

Abstract

Quantitative descriptions of animal behavior are essential to study the neural substrates of cognitive and emotional processes. Analyses of naturalistic behaviors are often performed by hand or with expensive, inflexible commercial software. Recently, machine learning methods for markerless pose estimation enabled automated tracking of freely moving animals, including in labs with limited coding expertise. However, classifying specific behaviors based on pose data requires additional computational analyses and remains a significant challenge for many groups. We developed BehaviorDEPOT (DEcoding behavior based on POsitional Tracking), a simple, flexible software program that can detect behavior from video timeseries and can analyze the results of experimental assays. BehaviorDEPOT calculates kinematic and postural statistics from keypoint tracking data and creates heuristics that reliably detect behaviors. It requires no programming experience and is applicable to a wide range of behaviors and experimental designs. We provide several hard-coded heuristics. Our freezing detection heuristic achieves above 90% accuracy in videos of mice and rats, including those wearing tethered head-mounts. BehaviorDEPOT also helps researchers develop their own heuristics and incorporate them into the software’s graphical interface. Behavioral data is stored framewise for easy alignment with neural data. We demonstrate the immediate utility and flexibility of BehaviorDEPOT using popular assays including fear conditioning, decision-making in a T-maze, open field, elevated plus maze, and novel object exploration.

Funder

National Institutes of Health

Whitehall Foundation

Simonsen Foundation

ARCS

National Science Foundation

Brain Research Foundation

Brain and Behavior Research Foundation

Publisher

eLife Sciences Publications, Ltd

Subject

General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine,General Neuroscience

Reference57 articles.

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