• Skip to primary navigation
  • Skip to main content
  • Skip to primary sidebar

Datta Lab

  • Research
  • The Basics
  • Academics
  • Lab Members
  • Life in the Lab
  • Publications
  • Links
  • Contact

Life in the Lab

August 29, 2024

Characterizing the structure of mouse behavior using Motion Sequencing

Sherry Lin, Winthrop F. Gillis, Caleb Weinreb, Ayman Zeine, Samuel C. Jones, Emma M. Robinson, Jeffrey Markowitz, Sandeep Robert Datta (2024)

Characterizing the structure of mouse behavior using Motion Sequencing

Nature Protocols, 19:3242

Spontaneous mouse behavior is composed from repeatedly used modules of movement (e.g., rearing, running or grooming) that are flexibly placed into sequences whose content evolves over time. By identifying behavioral modules and the order in which they are expressed, researchers can gain insight into the effect of drugs, genes, context, sensory stimuli and neural activity on natural behavior. Here we present a protocol for performing Motion Sequencing (MoSeq), an ethologically inspired method that uses three-dimensional machine vision and unsupervised machine learning to decompose spontaneous mouse behavior into a series of elemental module called ‘syllables’. This protocol is based upon a MoSeq pipeline that includes modules for depth video acquisition, data preprocessing and modeling, as well as a standardized set of visualization tools. Users are provided with instructions and code for building a MoSeq imaging rig and acquiring three-dimensional video of spontaneous mouse behavior for submission to the modeling framework; the outputs of this protocol include syllable labels for each frame of the video data as well as summary plots describing how often each syllable was used and how syllables transitioned from one to the other. In addition, we provide instructions for analyzing and visualizing the outputs of keypoint-MoSeq, a recently developed variant of MoSeq that can identify behavioral motifs from keypoints identified from standard (rather than depth) video. This protocol and the accompanying pipeline significantly lower the bar for users without extensive computational ethology experience to adopt this unsupervised, data-driven approach to characterize mouse behavior.

Posted by

« Newer Posts
Older Post »

Primary Sidebar

Blog Archive

  • May 2024
  • June 2022
  • January 2022
  • December 2021
  • December 2020
  • November 2020
  • October 2020
  • August 2020
  • May 2020
  • April 2020
  • March 2020
  • January 2020
  • December 2019
  • November 2019
  • August 2019
  • June 2019
  • October 2018
  • July 2017
  • June 2017
  • May 2017
  • April 2017
  • February 2017
  • December 2016
  • November 2016
  • October 2016
  • July 2016
  • June 2016
  • April 2016
  • March 2016
  • December 2015
  • October 2015
  • September 2015
  • May 2015
  • October 2014
  • January 2014
  • January 2013
  • October 2012
  • June 2012
  • May 2012
  • February 2012
  • December 2011
  • October 2011
  • August 2011
  • July 2011
  • April 2011
  • March 2011
  • February 2011
  • January 2011
  • November 2010
  • October 2010
  • September 2010
  • July 2010

HISTORY SHOWS AGAIN AND AGAIN HOW NATURE POINTS OUT THE FOLLY OF MEN – “GODZILLA,” BLUE OYSTER CULT

Sandeep Robert Datta, MD, Ph.D Department of Neurobiology Harvard Medical School