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Gehring TV, Luksys G, Sandi C, Vasilaki E (2015) Detailed classification of swimming paths in the Morris Water Maze: multiple strategies within one trial. Sci Rep 5:14562 [PubMed]

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

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