Rage Against the Machine: Advancing the study of aggression ethology via machine learning.

Journal: Psychopharmacology
Published Date:

Abstract

RATIONALE: Aggression, comorbid with neuropsychiatric disorders, exhibits with diverse clinical presentations and places a significant burden on patients, caregivers, and society. This diversity is observed because aggression is a complex behavior that can be ethologically demarcated as either appetitive (rewarding) or reactive (defensive), each with its own behavioral characteristics, functionality, and neural basis that may transition from adaptive to maladaptive depending on genetic and environmental factors. There has been a recent surge in the development of preclinical animal models for studying appetitive aggression-related behaviors and identifying the neural mechanisms guiding their progression and expression. However, adoption of these procedures is often impeded by the arduous task of manually scoring complex social interactions. Manual observations are generally susceptible to observer drift, long analysis times, and poor inter-rater reliability, and are further incompatible with the sampling frequencies required of modern neuroscience methods.

Authors

  • Nastacia L Goodwin
    Department of Biological Structure, University of Washington, Seattle, WA, USA.
  • Simon R O Nilsson
    Department of Biological Structure, University of Washington, Seattle, WA, USA.
  • Sam A Golden
    Department of Biological Structure, University of Washington, Seattle, WA, USA. sagolden@uw.edu.