Literature DB >> 32938361

Explicit representation of protein activity states significantly improves causal discovery of protein phosphorylation networks.

Jinling Liu1,2, Xiaojun Ma1, Gregory F Cooper1, Xinghua Lu3.   

Abstract

BACKGROUND: Protein phosphorylation networks play an important role in cell signaling. In these networks, phosphorylation of a protein kinase usually leads to its activation, which in turn will phosphorylate its downstream target proteins. A phosphorylation network is essentially a causal network, which can be learned by causal inference algorithms. Prior efforts have applied such algorithms to data measuring protein phosphorylation levels, assuming that the phosphorylation levels represent protein activity states. However, the phosphorylation status of a kinase does not always reflect its activity state, because interventions such as inhibitors or mutations can directly affect its activity state without changing its phosphorylation status. Thus, when cellular systems are subjected to extensive perturbations, the statistical relationships between phosphorylation states of proteins may be disrupted, making it difficult to reconstruct the true protein phosphorylation network. Here, we describe a novel framework to address this challenge.
RESULTS: We have developed a causal discovery framework that explicitly represents the activity state of each protein kinase as an unmeasured variable and developed a novel algorithm called "InferA" to infer the protein activity states, which allows us to incorporate the protein phosphorylation level, pharmacological interventions and prior knowledge. We applied our framework to simulated datasets and to a real-world dataset. The simulation experiments demonstrated that explicit representation of activity states of protein kinases allows one to effectively represent the impact of interventions and thus enabled our framework to accurately recover the ground-truth causal network. Results from the real-world dataset showed that the explicit representation of protein activity states allowed an effective and data-driven integration of the prior knowledge by InferA, which further leads to the recovery of a phosphorylation network that is more consistent with experiment results.
CONCLUSIONS: Explicit representation of the protein activity states by our novel framework significantly enhances causal discovery of protein phosphorylation networks.

Entities:  

Keywords:  Cancer signaling pathways; Causal inference; Protein kinase activity state; Protein phosphorylation networks

Mesh:

Substances:

Year:  2020        PMID: 32938361      PMCID: PMC7496209          DOI: 10.1186/s12859-020-03676-2

Source DB:  PubMed          Journal:  BMC Bioinformatics        ISSN: 1471-2105            Impact factor:   3.169


  7 in total

Review 1.  Protein kinases--the major drug targets of the twenty-first century?

Authors:  Philip Cohen
Journal:  Nat Rev Drug Discov       Date:  2002-04       Impact factor: 84.694

2.  A million variables and more: the Fast Greedy Equivalence Search algorithm for learning high-dimensional graphical causal models, with an application to functional magnetic resonance images.

Authors:  Joseph Ramsey; Madelyn Glymour; Ruben Sanchez-Romero; Clark Glymour
Journal:  Int J Data Sci Anal       Date:  2016-12-01

3.  Inferring causal molecular networks: empirical assessment through a community-based effort.

Authors:  Steven M Hill; Laura M Heiser; Thomas Cokelaer; Michael Unger; Nicole K Nesser; Daniel E Carlin; Yang Zhang; Artem Sokolov; Evan O Paull; Chris K Wong; Kiley Graim; Adrian Bivol; Haizhou Wang; Fan Zhu; Bahman Afsari; Ludmila V Danilova; Alexander V Favorov; Wai Shing Lee; Dane Taylor; Chenyue W Hu; Byron L Long; David P Noren; Alexander J Bisberg; Gordon B Mills; Joe W Gray; Michael Kellen; Thea Norman; Stephen Friend; Amina A Qutub; Elana J Fertig; Yuanfang Guan; Mingzhou Song; Joshua M Stuart; Paul T Spellman; Heinz Koeppl; Gustavo Stolovitzky; Julio Saez-Rodriguez; Sach Mukherjee
Journal:  Nat Methods       Date:  2016-02-22       Impact factor: 28.547

4.  Context Specificity in Causal Signaling Networks Revealed by Phosphoprotein Profiling.

Authors:  Steven M Hill; Nicole K Nesser; Katie Johnson-Camacho; Mara Jeffress; Aimee Johnson; Chris Boniface; Simon E F Spencer; Yiling Lu; Laura M Heiser; Yancey Lawrence; Nupur T Pande; James E Korkola; Joe W Gray; Gordon B Mills; Sach Mukherjee; Paul T Spellman
Journal:  Cell Syst       Date:  2016-12-22       Impact factor: 10.304

Review 5.  The crucial role of protein phosphorylation in cell signaling and its use as targeted therapy (Review).

Authors:  Fatima Ardito; Michele Giuliani; Donatella Perrone; Giuseppe Troiano; Lorenzo Lo Muzio
Journal:  Int J Mol Med       Date:  2017-06-22       Impact factor: 4.101

Review 6.  Targeting the cancer kinome through polypharmacology.

Authors:  Zachary A Knight; Henry Lin; Kevan M Shokat
Journal:  Nat Rev Cancer       Date:  2010-02       Impact factor: 60.716

7.  TCPA: a resource for cancer functional proteomics data.

Authors:  Jun Li; Yiling Lu; Rehan Akbani; Zhenlin Ju; Paul L Roebuck; Wenbin Liu; Ji-Yeon Yang; Bradley M Broom; Roeland G W Verhaak; David W Kane; Chris Wakefield; John N Weinstein; Gordon B Mills; Han Liang
Journal:  Nat Methods       Date:  2013-09-15       Impact factor: 28.547

  7 in total
  1 in total

1.  A Novel Bayesian Framework Infers Driver Activation States and Reveals Pathway-Oriented Molecular Subtypes in Head and Neck Cancer.

Authors:  Zhengping Liu; Chunhui Cai; Xiaojun Ma; Jinling Liu; Lujia Chen; Vivian Wai Yan Lui; Gregory F Cooper; Xinghua Lu
Journal:  Cancers (Basel)       Date:  2022-10-03       Impact factor: 6.575

  1 in total

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