4.7 Article

PHONEMeS: Efficient Modeling of Signaling Networks Derived from Large-Scale Mass Spectrometry Data

Journal

JOURNAL OF PROTEOME RESEARCH
Volume 20, Issue 4, Pages 2138-2144

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jproteome.0c00958

Keywords

phosphoproteomics; cell signaling; modelling; integer linear programming

Funding

  1. European Union [675585, 668858]
  2. Bayer
  3. Marie Curie Actions (MSCA) [675585] Funding Source: Marie Curie Actions (MSCA)

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Protein post-translational modifications are crucial for cellular processes, and mass spectrometry analysis of proteome modifications can provide insights into signaling mechanisms. The newly formulated PHONEMeS method as an Integer Linear Program (ILP) is significantly more efficient and can analyze data sets with multiple time points to understand signal propagation dynamics. This study expands the analysis scenarios and sheds light on signaling mechanisms and drug modes of action.
Post-translational modifications of proteins play an important role in the regulation of cellular processes. The mass spectrometry analysis of proteome modifications offers huge potential for the study of how protein inhibitors affect the phosphosignaling mechanisms inside the cells. We have recently proposed PHONEMeS, a method that uses high-content shotgun phosphoproteomic data to build logical network models of signal perturbation flow. However, in its original implementation, PHONEMeS was computationally demanding and was only used to model signaling in a perturbation context. We have reformulated PHONEMeS as an Integer Linear Program (ILP) that is orders of magnitude more efficient than the original one. We have also expanded the scenarios that can be analyzed. PHONEMeS can model data upon perturbation on not only a known target but also deregulated pathways upstream and downstream of any set of deregulated kinases. Finally, PHONEMeS can now analyze data sets with multiple time points, which helps us to obtain better insight into the dynamics of the propagation of signals. We illustrate the value of the new approach on various data sets of medical relevance, where we shed light on signaling mechanisms and drug modes of action.

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