Literature DB >> 26420864

Discriminating direct and indirect connectivities in biological networks.

Taek Kang1, Richard Moore1, Yi Li1, Eduardo Sontag2, Leonidas Bleris3.   

Abstract

Reverse engineering of biological pathways involves an iterative process between experiments, data processing, and theoretical analysis. Despite concurrent advances in quality and quantity of data as well as computing resources and algorithms, difficulties in deciphering direct and indirect network connections are prevalent. Here, we adopt the notions of abstraction, emulation, benchmarking, and validation in the context of discovering features specific to this family of connectivities. After subjecting benchmark synthetic circuits to perturbations, we inferred the network connections using a combination of nonparametric single-cell data resampling and modular response analysis. Intriguingly, we discovered that recovered weights of specific network edges undergo divergent shifts under differential perturbations, and that the particular behavior is markedly different between topologies. Our results point to a conceptual advance for reverse engineering beyond weight inference. Investigating topological changes under differential perturbations may address the longstanding problem of discriminating direct and indirect connectivities in biological networks.

Keywords:  direct and indirect connectivities; human cells; nonparametric resampling; reverse engineering; synthetic biology

Mesh:

Year:  2015        PMID: 26420864      PMCID: PMC4611647          DOI: 10.1073/pnas.1507168112

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   11.205


  39 in total

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10.  Inferring genetic networks and identifying compound mode of action via expression profiling.

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5.  Identifiability and experimental design in perturbation studies.

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6.  Impact of measurement noise, experimental design, and estimation methods on Modular Response Analysis based network reconstruction.

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