scholarly journals SECAT: Quantifying differential protein-protein interaction states by network-centric analysis

2019 ◽  
Author(s):  
George Rosenberger ◽  
Moritz Heusel ◽  
Isabell Bludau ◽  
Ben Collins ◽  
Claudia Martelli ◽  
...  

AbstractProtein-protein interactions (PPIs) play critical functional and regulatory roles in virtually all cellular processes. They are essential for the formation of macromolecular complexes, which in turn constitute the basis for extended protein interaction networks that determine the functional state of a cell. We and others have previously shown that chromatographic fractionation of native protein complexes in combination with bottom-up mass spectrometric analysis of consecutive fractions supports the multiplexed characterization and detection of state-specific changes of protein complexes.In this study, we describe a computational approach that extends the analysis of data from the co-fractionation / mass spectrometric analysis of native complexes to the level of PPI networks, thus enabling a qualitative and quantitative comparison of the proteome organization between samples and states. The Size-Exclusion Chromatography Algorithmic Toolkit (SECAT) implements a novel, network-centric strategy for the scalable and robust differential analysis of PPI networks. SECAT and its underlying statistical framework elucidate differential quantitative abundance and stoichiometry attributes of proteins in the context of their PPIs. We validate algorithm predictions using publicly available datasets and demonstrate that SECAT represents a more scalable and effective methodology to assess protein-network state and that our approach thus obviates the need to explicitly infer individual protein complexes. Further, by differential analysis of PPI networks of HeLa cells in interphase and mitotic state, respectively, we demonstrate the ability of the algorithm to detect PPI network differences and to thus suggest molecular mechanisms that differentiate cellular states.

2001 ◽  
Vol 12 (2) ◽  
pp. 222-227 ◽  
Author(s):  
J. W. Back ◽  
A. F. Hartog ◽  
H. L. Dekker ◽  
Anton O. Muijsers ◽  
L. J. Koning ◽  
...  

2020 ◽  
Author(s):  
Andrea Fossati ◽  
Chen Li ◽  
Peter Sykacek ◽  
Moritz Heusel ◽  
Fabian Frommelt ◽  
...  

AbstractProtein complexes, macro-molecular assemblies of two or more proteins, play vital roles in numerous cellular activities and collectively determine the cellular state. Despite the availability of a range of methods for analysing protein complexes, systematic analysis of complexes under multiple conditions has remained challenging. Approaches based on biochemical fractionation of intact, native complexes and correlation of protein profiles have shown promise, for instance in the combination of size exclusion chromatography (SEC) with accurate protein quantification by SWATH/DIA-MS. However, most approaches for interpreting co-fractionation datasets to yield complex composition, abundance and rearrangements between samples depend heavily on prior evidence. We introduce PCprophet, a computational framework to identify novel protein complexes from SEC-SWATH-MS data and to characterize their changes across different experimental conditions. We demonstrate accurate prediction of protein complexes (AUC >0.99 and accuracy around 97%) via five-fold cross-validation on SEC-SWATH-MS data, show improved performance over state-of-the-art approaches on multiple annotated co-fractionation datasets, and describe a Bayesian approach to analyse altered protein-protein interactions across conditions. PCprophet is a generic computational tool consisting of modules for data pre-processing, hypothesis generation, machine-learning prediction, post-prediction processing, and differential analysis. It can be applied to any co-fractionation MS dataset, independent of separation or quantitative LC-MS workflow employed, and to support the detection and quantitative tracking of novel protein complexes and their physiological dynamics.


2005 ◽  
Vol 9 (5) ◽  
pp. 509-516 ◽  
Author(s):  
Jonas Borch ◽  
Thomas JD Jørgensen ◽  
Peter Roepstorff

FEBS Journal ◽  
2006 ◽  
Vol 273 (2) ◽  
pp. 281-291 ◽  
Author(s):  
Leo J. Koning ◽  
Piotr T. Kasper ◽  
Jaap Willem Back ◽  
Merel A. Nessen ◽  
Frank Vanrobaeys ◽  
...  

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