DPoP: Derivative Profiling omics Package

Identify differential signals from your dynamic omics data
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Aggiornato 18 lug 2023

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  • GUI based application for identifying differentially changing signals from a dynamic omics data set.
  • Packaged as an installable Matlab App (.mlappinstall), or as a developable app file (.mlapp).
  • Data from another omics type is not a problem. Includes example transcriptomic data and example phosphoproteomic data.
  • Data in another organism is no problem. Includes examples from two different organisms.
  • Can use experiments with unevenly spaced timepoints/experimental steps.
  • Does not require fold change calculations.
  • Measures the derivative of the count signal for all analytes, and normalizes by average count, yielding a distribution of omic "rates".
  • The zscore of a specific rate in the normal distribution of rates is used to assign significance to the specific signal.
  • Includes (but does not require) GO term enrichment analysis to programatically describe the results of your analysis with field/organism specific data. Includes two .gaf files, one for A. nidulans, and one for S. cerevisiae.
  • Inputs and outputs are compatible to use this app the with omics clustering app and omics averaging apps we've also developed.
  • Please see README file for more notes about using this app.

Cita come

Harley Edwards (2025). DPoP: Derivative Profiling omics Package (https://it.mathworks.com/matlabcentral/fileexchange/129184-dpop-derivative-profiling-omics-package), MATLAB Central File Exchange. Recuperato .

This work is further described in the research article titled below, which is currently in review. "Using flux theory in dynamic omics data sets to identify differentially changing signals using DPoP" Authors: Harley Edwards, Joseph Zavorskas, Walker Huso, Alexander G. Doan, Caton Silbiger, Steven Harris, Ranjan Srivastava, Mark R. Marten,* Institiutions: UMBC, UConn, IowaState

This material is based upon work supported by the National Science Foundation under Grant No. 2006189. Any opinions, findings, and conclusions or recommendations expressed in this material are those of the authors and do not necessarily reflect the views of the National Science Foundation.

Compatibilità della release di MATLAB
Creato con R2020b
Compatibile con qualsiasi release
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Versione Pubblicato Note della release
1.1.2

Updated Acknowledgements

1.1.1

Included links to clustering app averaging app

1.1.0

Fixed typos and added information to README file

1.0.0