Learning the structure of the mTOR protein signaling pathway from protein phosphorylation data

Abdul Salam, Marco Grzegorczyk*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

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Abstract

Statistical learning of the structures of cellular networks, such as protein signaling pathways, is a topical research field in computational systems biology. To get the most information out of experimental data, it is often required to develop a tailored statistical approach rather than applying one of the off-the-shelf network reconstruction methods. The focus of this paper is on learning the structure of the mTOR protein signaling pathway from immunoblotting protein phosphorylation data. Under two experimental conditions eleven phosphorylation sites of eight key proteins of the mTOR pathway were measured at ten non-equidistant time points. For the statistical analysis we propose a new advanced hierarchically coupled non-homogeneous dynamic Bayesian network (NH-DBN) model, and we consider various data imputation methods for dealing with non-equidistant temporal observations. Because of the absence of a true gold standard network, we propose to use predictive probabilities in combination with a leave-one-out cross validation strategy to objectively cross-compare the accuracies of different NH-DBN models and data imputation methods. Finally, we employ the best combination of model and data imputation method for predicting the structure of the mTOR protein signaling pathway.

Original languageEnglish
Pages (from-to)845-865
Number of pages21
JournalJournal of Applied Statistics
Volume51
Issue number5
Early online date16-Jan-2023
DOIs
Publication statusPublished - 2024

Keywords

  • data imputation
  • dynamic Bayesian networks
  • hierarchical Bayesian regression
  • Network learning
  • non-equidistant measurements
  • predictive probabilities

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