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Real-Time Assessment of Rodent Engagement Using ArUco Markers: A Scalable and Accessible Approach for Scoring Behavior in a Nose-Poking Go/No-Go Task. | LitMetric

AI Article Synopsis

  • In behavioral neuroscience, traditional methods for scoring animal behavior are labor-intensive and biased, prompting a shift towards automated tracking systems using computational methods and image-processing algorithms.
  • This study highlights the effectiveness of using ArUco markers in a marker-based tracking approach to assess rat behavior during a nose-poking task, achieving a high classification accuracy of 98% compared to manual video analysis.
  • Additionally, a two-state engagement model based on the tracking data allows researchers to identify critical transitions in engagement, providing insights into optimal session durations and enhancing the efficiency of behavioral data collection.

Article Abstract

In the field of behavioral neuroscience, the classification and scoring of animal behavior play pivotal roles in the quantification and interpretation of complex behaviors displayed by animals. Traditional methods have relied on video examination by investigators, which is labor-intensive and susceptible to bias. To address these challenges, research efforts have focused on computational methods and image-processing algorithms for automated behavioral classification. Two primary approaches have emerged: marker- and markerless-based tracking systems. In this study, we showcase the utility of "Augmented Reality University of Cordoba" (ArUco) markers as a marker-based tracking approach for assessing rat engagement during a nose-poking go/no-go behavioral task. In addition, we introduce a two-state engagement model based on ArUco marker tracking data that can be analyzed with a rectangular kernel convolution to identify critical transition points between states of engagement and distraction. In this study, we hypothesized that ArUco markers could be utilized to accurately estimate animal engagement in a nose-poking go/no-go behavioral task, enabling the computation of optimal task durations for behavioral testing. Here, we present the performance of our ArUco tracking program, demonstrating a classification accuracy of 98% that was validated against the manual curation of video data. Furthermore, our convolution analysis revealed that, on average, our animals became disengaged with the behavioral task at ∼75 min, providing a quantitative basis for limiting experimental session durations. Overall, our approach offers a scalable, efficient, and accessible solution for automated scoring of rodent engagement during behavioral data collection.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11046262PMC
http://dx.doi.org/10.1523/ENEURO.0500-23.2024DOI Listing

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