Publication | Open Access
Unraveling cognitive traits using the Morris water maze unbiased strategy classification (MUST-C) algorithm
58
Citations
26
References
2015
Year
NeuropsychologyBrain FunctionCognitionPsychologySocial SciencesCognitive ArchitectureSpatial Cognitive LearningCognitive DevelopmentManagementMemoryCognitive AnalysisCognitive ComputingCognitive NeuroscienceDecision TheorySpatial ReasoningBehavioral SciencesCognitive ScienceStrategy ClassificationCortical RemodelingMorris Water MazeExperimental PsychologyCognitive TraitsCognitive Spatial LearningCognitive System EngineeringProcedural MemoryCognitive ModelingSpatial CognitionNeuroscienceDecision Science
The assessment of spatial cognitive learning in rodents is a central approach in neuroscience, as it enables one to assess and quantify the effects of treatments and genetic manipulations from a broad perspective. Although the Morris water maze (MWM) is a well-validated paradigm for testing spatial learning abilities, manual categorization of performance in the MWM into behavioral strategies is subject to individual interpretation, and thus to biases. Here we offer a support vector machine (SVM) - based, automated, MWM unbiased strategy classification (MUST-C) algorithm, as well as a cognitive score scale. This model was examined and validated by analyzing data obtained from five MWM experiments with changing platform sizes, revealing a limitation in the spatial capacity of the hippocampus. We have further employed this algorithm to extract novel mechanistic insights on the impact of members of the Toll-like receptor pathway on cognitive spatial learning and memory. The MUST-C algorithm can greatly benefit MWM users as it provides a standardized method of strategy classification as well as a cognitive scoring scale, which cannot be derived from typical analysis of MWM data.
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