Impact of binary mixtures of ketoprofen and chloramphenicol on the germination of Sorghum bicolor (sorgo) seeds - Open Research Data - Bridge of Knowledge

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Impact of binary mixtures of ketoprofen and chloramphenicol on the germination of Sorghum bicolor (sorgo) seeds

Description

Research was carried out for various ratios of the previously determined EC50 values for mixture of ketoprofen and chloramphenicol, the first substance at 100% of its EC50 concentration was mixed with the second substance at 100% of its EC50 concentration, or the first substance at 50% of its EC50 concentration was mixed with the second substance at 150% of its EC50 concentration. Distilled water was used as the control, and individual pharmaceuticals at 50, 100, and 150% of their EC50 concentrations were also studied to confirm the test validity. All studies were performed in duplicate, except for the EC50 determination research, in which studies were performed in triplicates; ten S. bicolor seeds were used for each experiment. As already stated, after a 3-day incubation period, the root length was measured, and the growth inhibition was calculated.

The data sets include photos of sorghum seed plates with ketoprofen and chloramphenicol solutions  at appropriate levels according to the publication, and corresponding excel files with data on the length of germinated seeds (using Jimage graphical software) in two replicates, as well as controls.

Studies were conducted between 2017.
These results are part of the manuscript published in Science of the Total Environment

https://doi.org/10.1007/s11356-018-2049-4

Illustration of the publication

Dataset file

Results.zip
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License:
Creative Commons: by 4.0 open in new tab
CC BY
Attribution
Raw data:
Data contained in dataset was not processed.

Details

Year of publication:
2024
Verification date:
2024-05-31
Dataset language:
English
Fields of science:
  • chemical sciences (Natural sciences)
  • Earth and related environmental sciences (Natural sciences)
DOI:
DOI ID 10.34808/ay48-mr38 open in new tab
Funding:
Series:
Verified by:
Gdańsk University of Technology

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