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Network Inference from Perturbation Time Course Data

Network Inference from Perturbation Time Course Data

来源:bioRxiv_logobioRxiv
英文摘要

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.

Sarmah Deepraj、Smith Gregory R、Stern Alan D.、Bouhaddou Mehdi、Birtwistle Marc R、Erskine James

Department of Chemical and Biomolecular Engineering, Clemson UniversityDepartment of Neurology, Center for Advanced Research on Diagnostic Assays, Icahn School of Medicine at Mount SinaiDepartment of Pharmacological Sciences, Icahn School of Medicine at Mount SinaiJ. David Gladstone Institutes||Department of Cellular and Molecular Pharmacology, University of California San FranciscoDepartment of Chemical and Biomolecular Engineering, Clemson University||Department of Bioengineering, Clemson UniversityDepartment of Chemical and Biomolecular Engineering, Clemson University

10.1101/341008

生物科学研究方法、生物科学研究技术生物科学理论、生物科学方法分子生物学

Sarmah Deepraj,Smith Gregory R,Stern Alan D.,Bouhaddou Mehdi,Birtwistle Marc R,Erskine James.Network Inference from Perturbation Time Course Data[EB/OL].(2025-03-28)[2025-06-24].https://www.biorxiv.org/content/10.1101/341008.点此复制

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