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Functional Heatmap: an automated and interactive pattern recognition tool to integrate time with multi-omics assays

  1. Author:
    Williams,Joshua
    Yang,Ruoting
    Clifford, John L.
    Watson,Daniel
    Campbell,Ross
    Getnet, Derese
    Kumar,Raina
    Hammamieh, Rasha
    Jett, Marti
  2. Author Address

    NCI, Frederick Natl Lab Canc Res, Adv Biomed Computat Sci, Frederick, MD 21702 USA.US Army, Integrat Syst Biol Program, Ctr Environm Hlth Res, Frederick, MD 21702 USA.
    1. Year: 2019
    2. Date: Feb 15
    3. Epub Date: 2019 02 15
  1. Journal: BMC bioinformatics
  2. BMC,
    1. 20
    2. 1
  3. Type of Article: Article
  4. Article Number: 81
  5. ISSN: 1471-2105
  1. Abstract:

    BackgroundLife science research is moving quickly towards large-scale experimental designs that are comprised of multiple tissues, time points, and samples. Omic time-series experiments offer answers to three big questions: what collective patterns do most analytes follow, which analytes follow an identical pattern or synchronize across multiple cohorts, and how do biological functions evolve over time. Existing tools fall short of robustly answering and visualizing all three questions in a unified interface.ResultsFunctional Heatmap offers time-series data visualization through a Master Panel page, and Combined page to answer each of the three time-series questions. It dissects the complex multi-omics time-series readouts into patterned clusters with associated biological functions. It allows users to identify a cascade of functional changes over a time variable. Inversely, Functional Heatmap can compare a pattern with specific biology respond to multiple experimental conditions. All analyses are interactive, searchable, and exportable in a form of heatmap, line-chart, or text, and the results are easy to share, maintain, and reproduce on the web platform.ConclusionsFunctional Heatmap is an automated and interactive tool that enables pattern recognition in time-series multi-omics assays. It significantly reduces the manual labour of pattern discovery and comparison by transferring statistical models into visual clues. The new pattern recognition feature will help researchers identify hidden trends driven by functional changes using multi-tissues/conditions on a time-series fashion from omic assays.

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External Sources

  1. DOI: 10.1186/s12859-019-2657-0
  2. PMID: 30770734
  3. PMCID: PMC6377781
  4. WOS: 000458847500003

Library Notes

  1. Fiscal Year: FY2018-2019
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