High Resolution Growth Screen of Ruegeria pomeroyi Transporter Mutants Data September 2021 - June 2022 (C-CoMP Marine Bacterial Transporters project)
High Resolution Growth Screen of Ruegeria pomeroyi Transporter Mutants Data September 2021 - June 2022 (C-CoMP Marine Bacterial Transporters project)
Date
2023-05-24
Authors
Moran, Mary Ann
Reisch, Christopher R.
Mejia, Catalina
Trujillo Rodriguez, Lidimarie
Reisch, Christopher R.
Mejia, Catalina
Trujillo Rodriguez, Lidimarie
Linked Authors
Alternative Title
Citable URI
Date Created
2023-04-18
Location
DOI
10.26008/1912/bco-dmo.894179.1
Related Materials
Replaces
Replaced By
Keywords
RB-TnSeq
gene fitness
transporters
metabolism
arrayed mutant library
genetic screen
gene fitness
transporters
metabolism
arrayed mutant library
genetic screen
Abstract
High resolution growth screens were used to confirm the phenotype of Ruegeria pomeroyi DSS-3 transporter knockout mutants. Mutants which had demonstrated growth defects on a given substrate as sole carbon source during an initial growth screen were selected and used here. Each mutant was grown on the substrate(s) of interest along side a wildtype analog (pooled-TnSeq library). Growth curves were generated by reading the optical density at 600 nm hourly. The annotations of a transporter's cognate substrate was confirmed when the mutant of said transporter demonstrated significant defect relative to the wildtype analog on the substrate of interest.
For a complete list of measurements, refer to the full dataset description in the supplemental file 'Dataset_description.pdf'. The most current version of this dataset is available at: https://www.bco-dmo.org/dataset/894179
Description
Dataset: High resolution screen growth curves
Embargo Date
Citation
Moran, M. A., Reisch, C. R., Mejia, C., & Trujillo Rodriguez, L. (2023). High Resolution Growth Screen of Ruegeria pomeroyi Transporter Mutants Data September 2021 - June 2022 (C-CoMP Marine Bacterial Transporters project) (Version 1) [Data Set]. Biological and Chemical Oceanography Data Management Office (BCO-DMO). https://doi.org/10.26008/1912/bco-dmo.894179.1