Detailed analysis of trajectories in the Morris water maze (Gehring et al. 2015)


Gehring TV, Luksys G, Sandi C, Vasilaki E. (2015). Detailed classification of swimming paths in the Morris Water Maze: multiple strategies within one trial. Scientific reports. 5 [PubMed]

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