five

Replication Data for: The role of Fezolinetant in fear memory consolidation

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DataCite Commons2025-11-10 更新2026-04-25 收录
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https://dataverse.csuc.cat/citation?persistentId=doi:10.34810/data2715
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All behavioral sessions were divided into the following phases: • FA – Fear acquisition • FE1 – Fear extinction 1 • FE2 – Fear extinction 2 • FE3 – Fear extinction 3 • FE4 – Fear extinction 4 The two output files obtained from the EzTrack software after video analysis are included in the dataset. These are FreezingOutput (freezing time, frame by frame) and SummaryStats (containing key information such as file length, motion cutoff, freeze threshold, etc.). All files are labeled as FA, FE1, FE2, FE3, or FE4, followed by the corresponding animal identification number. Due to experimental conditions, datasets for both males and females were collected in two independent batches. Accordingly, the corresponding freezing analyses were organized by batches. When the animal number is followed by “.1,” it refers to the first batch (1n) (e.g., 8.1 corresponds to animal 8 from batch 1), whereas numbers followed by “.2” refer to the second batch (e.g., 8.2 corresponds to animal 8 from batch 2). Details for all animals, their respective experimental groups, and their freezing percentages are provided in the Excel files “1.FC fezolinetant 1n males and females” (first batch) and “1.FC fezolinetant 2n males and females” (second batch). Please download it as original file format so you can see that each session (FA, FE1, FE2, FE3, FE4) is divided in one tab of the excel file. For the proestrus analysis, animals were labeled using the format c1a3, where c indicates the cage and a indicates the animal number, following the specific experimental design. The analyzed freezing data and corresponding treatment for each animal are included in the Excel file “1.FC fezolinetant proestrus.”
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CORA.Repositori de Dades de Recerca
创建时间:
2025-10-27
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