An iTRAQ approach was used to characterize the proteomes of reef corals (Orbicella faveolata) and their dinoflagellate endosymbionts (family Symbiodiniaceae) from a short-term (one month) thermal stress experiment. Please note that the same protein sample was labeled with the 113 tag and run in each batch (A, B, and C in the file names) to serve as an internal control aimed at limiting bias associated with batch-to-batch variation. As such, although 24 samples were analyzed (8-plex iTRAQ was used), only 21 of these reflect actual experimental coral samples. Please see the attached Word and Excel files to match the batch and tag with the experimental samples. Note that one sample (B5-7; iTRAQ batch A-label 114; a control coral sampled after five treatment days) spilled in the speed-vac during preparation and so was not analyzed, resulting in a final sample size of 20.
[doi:10.25345/C55Z0Q]
[dataset license: CC0 1.0 Universal (CC0 1.0)]
Keywords: coral reefs ; climate change ; dinoflagellate ; proteomics ; predictive modeling
Principal Investigators: (in alphabetical order) |
Anderson Mayfield, University of Miami, United States |
Submitting User: | abmayfield |
Anderson B. Mayfield.
Machine-learning-based proteomic predictive modeling with thermally- challenged Caribbean reef corals.
Mayfield AB (2022) Machine-learning-based proteomic predictive modeling with thermally- challenged Caribbean reef corals. Diversity 14, 33.
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Experimental Design | ||
Conditions:
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Biological Replicates:
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Technical Replicates:
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Identification Results | ||
Proteins (Human, Remapped):
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Proteins (Reported):
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Peptides:
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Variant Peptides:
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PSMs:
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Quantification Results | ||
Differential Proteins:
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Quantified Proteins:
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