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Options for experiment "PhenoTyper: Initial discrimination and reversal learning (CognitionWall)"
Select parameter:
Entries to criterion Initial Discrimination Learning
Errors to criterion Initial Discrimination Learning
Entry count per entrance Initial Discrimination Learning (2 days)
Entry count per entrance Reversal Learning (2 days)
Entries to criterion Reversal Learning
Errors to criterion Reversal Learning
Side bias
*Pellet drops Initial Discrimination Learning (2 days)
Total entries Initial Discrimination Learning
Hours to criterion Initial Discrimination Learning
*Pellet drops Reversal Learning
Total entries Reversal Learning
Hours to criterion Reversal Learning
Survival plot of entries to 70% criterion Initial Discrimination Learning
Survival plot of entries to 83% criterion Initial Discrimination Learning
Survival plot of entries to 73% criterion Initial Discrimination Learning
Survival plot of entries to 77% criterion Initial Discrimination Learning
*Survival plot of entries to 80% criterion Initial Discrimination Learning
Survival plot of entries to 87% criterion Initial Discrimination Learning
Survival plot of entries to 90% criterion Initial Discrimination Learning
Survival plot of entries to 70% criterion Reversal Learning
Survival plot of entries to 73% criterion Reversal Learning
Survival plot of entries to 77% criterion Reversal Learning
*Survival plot of entries to 80% criterion Reversal Learning
Survival plot of entries to 83% criterion Reversal Learning
Survival plot of entries to 87% criterion Reversal Learning
Survival plot of entries to 90% criterion Reversal Learning
*Number of entries required to 80% criterion Initial Discrimination Learning
*Number of entries to 80% criterion Reversal Learning
*Pellet drops Initial Discrimination Learning (1 day)
Entry count per entrance Initial Discrimination Learning (1 day)
*Pellet drops Initial Discrimination Learning (3 days)
Entry count per entrance Initial Discrimination Learning (3 days)
*Pellet drops Reversal Learning (3 days)
Entry count per entrance Reversal Learning (3 days)
Hours to 80% correct criterion Initial Discrimination Learning
Hours to 80% correct criterion Reversal Learning
Initial learning performance after 150 entries
Initial learning performance after 200 entries
Initial learning performance after 250 entries
Initial learning average performance between 100 - 150 entries
Initial learning average performance between 150 - 200 entries
Initial learning average performance between 200 - 250 entries
Reversal learning performance after 150 entries
Reversal learning performance after 200 entries
Reversal learning performance after 250 entries
Reversal learning average performance between 100 - 150 entries
Reversal learning average performance between 150 - 200 entries
Reversal learning average performance between 200 - 250 entries
*Pellet drops Initial Discrimination Learning (4 days)
Entry count per entrance Initial Discrimination Learning (4 days)
Number of perseverative errors to 70% criterion reversal
Number of perseverative errors to 73% criterion reversal
Number of perseverative errors to 77% criterion reversal
Number of perseverative errors to 80% criterion reversal
Number of perseverative errors to 83% criterion reversal
Number of perseverative errors to 87% criterion reversal
Number of perseverative errors to 90% criterion reversal
Number of neutral errors to 70% criterion reversal
Number of neutral errors to 73% criterion reversal
Number of neutral errors to 77% criterion reversal
Number of neutral errors to 80% criterion reversal
Number of neutral errors to 83% criterion reversal
Number of neutral errors to 87% criterion reversal
Number of neutral errors to 90% criterion reversal
Select mouse strains:
(hold ctrl + click to select multiple strains)
APPswePS1dE9/H (AppPs1 reference - 30wk)
APPswePS1dE9/H (AppPs1 reference - 30wk) WT
APPswePS1dE9/H (AppPs1 reference - 30wk) mut
APPswePS1dE9/H (AppPs1 reference - 30wk - CognitionWall)
APPswePS1dE9/H (AppPs1 reference - 30wk - CognitionWall) WT
APPswePS1dE9/H (AppPs1 reference - 30wk - CognitionWall) mut
C57BL/6J (MK-801 reference - 0.00 mgkg)
C57BL/6J (MK-801 reference - 0.00 mgkg) WT
C57BL/6J (MK-801 reference - 0.01 mgkg)
C57BL/6J (MK-801 reference - 0.01 mgkg) WT
C57BL/6J (MK-801 reference - 0.03 mgkg)
C57BL/6J (MK-801 reference - 0.03 mgkg) WT
C57BL/6J (MK-801 reference - 0.06 mgkg)
C57BL/6J (MK-801 reference - 0.06 mgkg) WT
Fmr1 (Fmr1 reference - 12wks - CognitionWall)
Fmr1 (Fmr1 reference - 12wks - CognitionWall) WT
Fmr1 (Fmr1 reference - 12wks - CognitionWall) hom
Fmr1 (Fmr1 reference - 6wks - CognitionWall)
Fmr1 (Fmr1 reference - 6wks - CognitionWall) WT
Fmr1 (Fmr1 reference - 6wks - CognitionWall) hom
MDX (Cognitive flexibility deficits in a mouse model for the absence of full-length dystrophin. (Remmelink 2016)) WT
MDX (Cognitive flexibility deficits in a mouse model for the absence of full-length dystrophin. (Remmelink 2016)) hom
MDX (Cognitive flexibility deficits in a mouse model for the absence of full-length dystrophin. (Remmelink 2016)) mut
Munc18-1(BL6) (Kovacevic2017)
Munc18-1(BL6) (Kovacevic2017) WT
Munc18-1(BL6) (Kovacevic2017) hetro
Munc18-1(Floxed) (Kovacevic2017) WT
Munc18-1(Floxed) (Kovacevic2017) hetro
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Separate batches in analysis