Using flux theory in dynamic omics data sets to identify differentially changing signals using DPoP

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Citation of Original Publication

Harley Edwards et al., “Using Flux Theory in Dynamic Omics Data Sets to Identify Differentially Changing Signals Using DPoP,” BMC Bioinformatics 25, no. 1 (September 27, 2024): 312, https://doi.org/10.1186/s12859-024-05938-9.

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Attribution-NonCommercial-NoDerivatives 4.0 International

Abstract

Derivative profiling is a novel approach to identify differential signals from dynamic omics data sets. This approach applies variable step-size differentiation to time dynamic omics data. This work assumes that there is a general omics derivative that is a useful and descriptive feature of dynamic omics experiments. We assert that this omics derivative, or omics flux, is a valuable descriptor that can be used instead of, or with, fold change calculations.