Skip to main content
Dataset Overview | National Centers for Environmental Information (NCEI)

Towards predicting coral fate with a molecular biotechnology+machine-learning approach (NCEI Accession 0254274)

browse graphicPreview graphic
Given the widespread decline of coral reefs across the globe on account of climate change-induced rises in seawater temperature, a series of temperature-focused models have been generated to predict when and where bleaching events may occur (e.g., NOAA’s Coral Reef Watch). Although such algorithms are adept at forecasting the onset of periods of severe bleaching in many parts of the world, they suffer from poor predictive capacity in areas featuring high numbers of corals that have either adapted or acclimatized to life in marginalized environments, such as stress-hardened corals of the Florida Keys. In these areas, it may instead be superior to use physiological data from the corals themselves to make predictions about coral bleaching susceptibility. To that end, both field and laboratory analyses were undertaken with the massive Caribbean reef-builder Orbicella faveolata whereby, after elucidating the cellular pathways underlying both bleaching and high-temperature tolerance in diverse genotypes ex situ, the protein profiles of tagged field colonies were tracked across seasons. Neural networks trained with proteomic data from the laboratory specimens were then tested using proteomic data from bleaching-susceptible and bleaching-resistant field colonies, and the resulting artificial intelligence (AI) was capable of predicting with a high degree of confidence whether a coral colony would bleach. This ‘Omics+AI approach could be of potential use in delineating O. faveolata climate resilience elsewhere in the Florida Keys, and perhaps beyond. This dataset includes raw files from the mass spectrometer, as well as "distilled" mass spectrometry data that can be analyzed and interpreted by those with access to a personal computer and the Microsoft Office suite.
  • Cite as: Mayfield, Anderson B. (2022). Towards predicting coral fate with a molecular biotechnology+machine-learning approach (NCEI Accession 0254274). [indicate subset used]. NOAA National Centers for Environmental Information. Dataset. https://www.ncei.noaa.gov/archive/accession/0254274. Accessed [date].
gov.noaa.nodc:0254274
Download Data
  • HTTPS (download)
    Navigate directly to the URL for data access and direct download.
  • FTP (download)
    These data are available through the File Transfer Protocol (FTP). FTP is no longer supported by most internet browsers. You may copy and paste the FTP link to the data into an FTP client (e.g., FileZilla or WinSCP).
Distribution Formats
  • CSV
  • Excel
  • Word
  • fasta
  • raw
  • mzML
  • mzTab
Ordering Instructions Contact NCEI for other distribution options and instructions.
Distributor NOAA National Centers for Environmental Information
+1-301-713-3277
NCEI.Info@noaa.gov
Dataset Point of Contact NOAA National Centers for Environmental Information
ncei.info@noaa.gov
Time Period 2019-07-10 to 2019-12-04
Spatial Bounding Box Coordinates
West: -80.61573
East: -80.50205
South: 24.89742
North: 24.95375
Spatial Coverage Map
General Documentation
Associated Resources
  • Mayfield, A.B. Towards predicting coral fate with a molecular biotechnology + machine-learning approach (under review).
  • Mayfield, Anderson (2021). Images of coral colonies sampled at four time points in 2019: July (prior to bleaching), August (during a coral bleaching event), October (during the post-bleaching recovery period), and December (a cool-water period in which corals had fully recovered from bleaching) (NCEI Accession 0243645). NOAA National Centers for Environmental Information. Dataset. https://www.ncei.noaa.gov/archive/accession/0243645.
  • Mayfield, Anderson B. (2021). Differential proteomic analysis of the massive star coral Orbicella faveolata exposed to experimentally elevated temperatures (NCEI Accession 0242879). NOAA National Centers for Environmental Information. Dataset. https://www.ncei.noaa.gov/archive/accession/0242879.
Publication Dates
  • publication: 2022-06-29
Data Presentation Form Digital table - digital representation of facts or figures systematically displayed, especially in columns
Dataset Progress Status Complete - production of the data has been completed
Historical archive - data has been stored in an offline storage facility
Data Update Frequency As needed
Supplemental Information
Submission Package ID: 7C8LY6
Purpose This dataset is available to the public for a wide variety of uses including scientific research and analysis.
Use Limitations
  • accessLevel: Public
  • Distribution liability: NOAA and NCEI make no warranty, expressed or implied, regarding these data, nor does the fact of distribution constitute such a warranty. NOAA and NCEI cannot assume liability for any damages caused by any errors or omissions in these data. If appropriate, NCEI can only certify that the data it distributes are an authentic copy of the records that were accepted for inclusion in the NCEI archives.
Dataset Citation
  • Cite as: Mayfield, Anderson B. (2022). Towards predicting coral fate with a molecular biotechnology+machine-learning approach (NCEI Accession 0254274). [indicate subset used]. NOAA National Centers for Environmental Information. Dataset. https://www.ncei.noaa.gov/archive/accession/0254274. Accessed [date].
Cited Authors
Principal Investigators
Contributors
Resource Providers
Publishers
Acknowledgments
  • Related Funding Agency: US DOC; National Oceanic and Atmospheric Administration
Theme keywords NODC DATA TYPES THESAURUS NODC OBSERVATION TYPES THESAURUS WMO_CategoryCode
  • oceanography
CoRIS Discovery Thesaurus
  • Genetic Data Sets > Proteomic Analysis
CoRIS Theme Thesaurus
  • EARTH SCIENCE > Biosphere > Zoology > Corals > Bleaching > Bleaching Resistance
  • EARTH SCIENCE > Biosphere > Zoology > Corals > Coral Diseases > Bleaching
  • EARTH SCIENCE > Biosphere > Zoology > Corals > Reef Monitoring and Assessment > Molecular Genetic Analysis > Proteomic Analysis
  • EARTH SCIENCE > Biosphere > Zoology > Corals > Scleractinia (stony corals)
  • EARTH SCIENCE > Oceans > Coastal Processes > Coral Reefs
  • EARTH SCIENCE > Oceans > Marine Biology > Coral
Global Change Master Directory (GCMD) Science Keywords Provider Keywords
  • 'Omics + AI approach
  • Orbicella faveolata
  • protein concentrations
Data Center keywords NODC COLLECTING INSTITUTION NAMES THESAURUS NODC SUBMITTING INSTITUTION NAMES THESAURUS Global Change Master Directory (GCMD) Data Center Keywords
Platform keywords Provider Platform Names
  • R/V GBN1
Instrument keywords NODC INSTRUMENT TYPES THESAURUS Global Change Master Directory (GCMD) Instrument Keywords
Place keywords NODC SEA AREA NAMES THESAURUS CoRIS Place Thesaurus
  • COUNTRY/TERRITORY > United States of America > Florida > Monroe County > Cheeca Rocks (24N080W0009)
  • COUNTRY/TERRITORY > United States of America > Florida > Monroe County > Conch Reef (24N080W0011)
  • COUNTRY/TERRITORY > United States of America > Florida > Monroe County > Florida Keys (24N081W0007)
  • OCEAN BASIN > Atlantic Ocean > North Atlantic Ocean > Florida Reef Tract > Florida Keys (24N081W0007)
  • OCEAN BASIN > Atlantic Ocean > North Atlantic Ocean > Florida Reef Tract > Upper Florida Keys > Cheeca Rocks (24N080W0009)
  • OCEAN BASIN > Atlantic Ocean > North Atlantic Ocean > Florida Reef Tract > Upper Florida Keys > Conch Reef (24N080W0011)
Global Change Master Directory (GCMD) Location Keywords Provider Place Names
  • Crocker Reef
  • Little Conch
  • The Rocks
Project keywords Provider Project Names
  • NOAA 'Omics Initiative
Keywords NCEI ACCESSION NUMBER
Use Constraints
  • Cite as: Mayfield, Anderson B. (2022). Towards predicting coral fate with a molecular biotechnology+machine-learning approach (NCEI Accession 0254274). [indicate subset used]. NOAA National Centers for Environmental Information. Dataset. https://www.ncei.noaa.gov/archive/accession/0254274. Accessed [date].
Access Constraints
  • Use liability: NOAA and NCEI cannot provide any warranty as to the accuracy, reliability, or completeness of furnished data. Users assume responsibility to determine the usability of these data. The user is responsible for the results of any application of this data for other than its intended purpose.
Fees
  • In most cases, electronic downloads of the data are free. However, fees may apply for custom orders, data certifications, copies of analog materials, and data distribution on physical media.
Lineage information for: dataset
Processing Steps
  • 2022-06-29T22:10:50Z - NCEI Accession 0254274 v1.1 was published.
Output Datasets
Lineage information for: dataset
Processing Steps
  • Parameter or Variable: protein concentrations (measured); Units: relative levels (ratios to control); Observation Category: laboratory analysis; Sampling Instrument: mass spectrometer; Sampling and Analyzing Method: Coral proteins were extracted, labeled (iTRAQ), separated by nano-liquid chromatography, and sequenced by mass spectrometry.; Data Quality Method: Protein quantity was determined using BCA assays (against BSA standards), and quality was determined by SDS-PAGE (Phastgel System)..
Acquisition Information (collection)
Instrument
  • mass spectrometer
Last Modified: 2023-10-06T18:10:57Z
For questions about the information on this page, please email: ncei.info@noaa.gov