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Network inference from perturbation time course data. | LitMetric

Network inference from perturbation time course data.

NPJ Syst Biol Appl

Department of Chemical and Biomolecular Engineering, Clemson University, Clemson, SC, USA.

Published: November 2022

AI Article Synopsis

  • Networks play a crucial role in biology, but determining the specific experimental data needed to accurately identify their structures remains a significant challenge.
  • A new method called dynamic least squares modular response analysis (DL-MRA) helps infer two and three node networks by considering key properties like edge directionality, feedback loops, and the impact of external factors.
  • The study evaluates DL-MRA’s performance on various biological networks, revealing insights like the need for incomplete knockdown in gene regulatory networks, which could shift experimental strategies in network reconstruction.

Article Abstract

Networks underlie much of biology from subcellular to ecological scales. Yet, understanding what experimental data are needed and how to use them for unambiguously identifying the structure of even small networks remains a broad challenge. Here, we integrate a dynamic least squares framework into established modular response analysis (DL-MRA), that specifies sufficient experimental perturbation time course data to robustly infer arbitrary two and three node networks. DL-MRA considers important network properties that current methods often struggle to capture: (i) edge sign and directionality; (ii) cycles with feedback or feedforward loops including self-regulation; (iii) dynamic network behavior; (iv) edges external to the network; and (v) robust performance with experimental noise. We evaluate the performance of and the extent to which the approach applies to cell state transition networks, intracellular signaling networks, and gene regulatory networks. Although signaling networks are often an application of network reconstruction methods, the results suggest that only under quite restricted conditions can they be robustly inferred. For gene regulatory networks, the results suggest that incomplete knockdown is often more informative than full knockout perturbation, which may change experimental strategies for gene regulatory network reconstruction. Overall, the results give a rational basis to experimental data requirements for network reconstruction and can be applied to any such problem where perturbation time course experiments are possible.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9622863PMC
http://dx.doi.org/10.1038/s41540-022-00253-6DOI Listing

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