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938 Eco-phenotypic feedback loops differ in multi-stressor environments

DOI Info:

  • DOI: 10.18728/igb-fred-938.1
  • How to cite: Lynn Govaert (2024-10-18 ) Eco-phenotypic feedback loops differ in multi-stressor environments. IGB Leibniz-Institute of Freshwater Ecology and Inland Fisheries. dataset. https://doi.org/10.18728/igb-fred-938.1
  • Previous DOI version :10.18728/igb-fred-859.0
  • Successor DOI version :10.18728/igb-fred-996.2
  • This Data has been updated! You will be redirected to the latest version within a few seconds. Press STOP to stay on this specific version.

    DOI history

    Date DOI PackageId Note
    2023-12-1310.18728/igb-fred-859.0859
    2024-10-1810.18728/igb-fred-938.1938this package
    2025-07-2110.18728/igb-fred-996.2996 latest
Title
Eco-phenotypic feedback loops differ in multi-stressor environments
Sampling interval
Irregular Interval
Description

Density dynamics and cell size and shape dynamics of two freshwater ciliate species (Colpidium striatum and Paramecium aurelia) in a full factorial design of 4 different salinity (0, 0.75, 1.5 and 3 NaCl g/L) and 4 different temperature (20, 22, 24 and 26°C) conditions. 

 

 "ID" : is the unique ID of each experimental bottles. This way we can link each video to each bottle over time. 
 "Species": Col = colpidium striatum, Pau = paramecium aurelia, PC = competition treatment 
 "Culture" :  states the same either mono(culture - single species) or mixed culture (competition)
  "Salinity" : different salt levels
"Temperature" : different temperature levels
 "Replicate"  : replicates
 "Date" : is the julian date of the year which I like to use to plot the time series, it takes into account if we 'skipped' a day, or whether it is measured in the morning or afternoon
  "Time"  : categorical time points, does not take into account skipping days, looks at total time points
 "True.date" : the actual date of the measurement
 "predicted_species" : using the species identification algorithm which species it is, this is only implemented on the competition treatment
"density" : the average density of a sample
 "mean_area" : bio area , here average bio-area across individuals of that sample
"mean_ar" : cell shape, ar = aspect ratio of minor to major cell size axis
 "sd_mean_area" : the standard deviation of mean_area
 "sd_mean_ar"  : the standard deviation of mean aspect ratio
  "n." : the number of individuals that have been used to estimate the trait values from
"act.time" : helps to make a plot from 0 to end point in time (basically julian.date - max(julian.date))
 

density: #individuals / mL

mean_area: µm²

mean_ar : unitless

Species Groups
Study site
Leibniz Institute of Freshwater Ecology and Inland Fisheries
Contact
Lynn Govaert
Licence for data
All rights reserved. Please send a request to Lynn Govaert if you like to use this data. Mind our data policy: IGB Data Policy

Data files (e.g. excel)

TitlecreatedFiletypeActions
Data_Govaert_Klauschies.zip 14. Aug. 2024 19:41 datatable: .zip Download

Machine Readable Metadata Files

FRED provides all metadata of this package in a maschine readable format. There is a pure XML file and one EML file in Ecological Metadata Language. Both files are published under the free CC BY 4.0 Licence.

  • Eco-phenotypic_feedback_loops_differ_in_multi-stressor_environments.xml
  • Eco-phenotypic_feedback_loops_differ_in_multi-stressor_environments.eml

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