Subsecond Analysis of Locomotor Activity in Parkinsonian Mice

Output Details

Published July 28, 2025

The degeneration of midbrain dopamine (DA) neurons disrupts the neural control of natural behavior, such as walking, posture, and gait in Parkinson's disease. While some aspects of motor symptoms can be managed by DA replacement therapies, others respond poorly. Recent advancements in machine learning-based technologies offer opportunities to better understand the organizing principles of behavior modules at fine timescales and its dependence on dopaminergic modulation. In the present study, we applied the motion sequencing (MoSeq) platform to study the spontaneous locomotor activities of neurotoxin and genetic mouse models of parkinsonism as the midbrain DA neurons progressively degenerate. We also evaluated the treatment efficacy of levodopa (l-DOPA) on behavioral modules at fine timescales. We revealed robust changes in the kinematics and usage of the behavioral modules that encode spontaneous locomotor activity. Further analysis demonstrates that fast behavioral modules with higher velocities were more vulnerable to loss of DA and preferentially affected at early stages of Parkinsonism. Last, l-DOPA effectively improved the velocity, but not the usage and transition probability, of behavioral modules in parkinsonian animals. In conclusion, the hypokinetic phenotypes in parkinsonism involve the decreased velocities of behavioral modules and their disrupted temporal organization during movement. Moreover, we showed that the therapeutic effect of l-DOPA is mainly mediated by its effect on the velocities of behavior modules at fine timescales. This work documents robust changes in the velocity, usage, and temporal organization of behavioral modules and their responsiveness to dopaminergic treatment under the parkinsonian state.
Tags
  • Basal Ganglia
  • Dopamine
  • Machine learning
  • Original Research
  • Parkinson's disease

Meet the Authors

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    Daniil Berezhnoi, PhD

    Key Personnel: Team Wichmann

    Van Andel Institute

  • Hiba Douja Chehade, PhD

    Key Personnel: Team Wichmann

    Georgetown University

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    Gabriel Simms

  • User avatar fallback logo

    Liqiang Chen, PhD

    Key Personnel: Team Wichmann

    Georgetown University Medical Center

  • User avatar fallback logo

    Kishore Kumar S. Narasimhan

  • User avatar fallback logo

    Shashank M. Dravid

  • Hong-Yuan Chu, PhD

    Co-PI (Core Leadership): Team Wichmann

    Georgetown University

Aligning Science Across Parkinson's
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