Graph-theoretical prediction of biological modules in quaternary structures of large protein complexes

Author:

Gisdon Florian J1ORCID,Zunker Mariella1,Wolf Jan Niclas1,Prüfer Kai1,Ackermann Jörg1,Welsch Christoph2,Koch Ina1ORCID

Affiliation:

1. Goethe University Frankfurt, Molecular Bioinformatics, Institute of Computer Science, Faculty of Computer Science and Mathematics , 60325 Frankfurt am Main, Germany

2. Goethe University Frankfurt, University Hospital, Medical Clinic 1 , 60590 Frankfurt am Main, Germany

Abstract

Abstract Motivation The functional complexity of biochemical processes is strongly related to the interplay of proteins and their assembly into protein complexes. In recent years, the discovery and characterization of protein complexes have substantially progressed through advances in cryo-electron microscopy, proteomics, and computational structure prediction. This development results in a strong need for computational approaches to analyse the data of large protein complexes for structural and functional characterization. Here, we aim to provide a suitable approach, which processes the growing number of large protein complexes, to obtain biologically meaningful information on the hierarchical organization of the structures of protein complexes. Results We modelled the quaternary structure of protein complexes as undirected, labelled graphs called complex graphs. In complex graphs, the vertices represent protein chains and the edges spatial chain–chain contacts. We hypothesized that clusters based on the complex graph correspond to functional biological modules. To compute the clusters, we applied the Leiden clustering algorithm. To evaluate our approach, we chose the human respiratory complex I, which has been extensively investigated and exhibits a known biological module structure experimentally validated. Additionally, we characterized a eukaryotic group II chaperonin TRiC/CCT and the head of the bacteriophage Φ29. The analysis of the protein complexes correlated with experimental findings and indicated known functional, biological modules. Using our approach enables not only to predict functional biological modules in large protein complexes with characteristic features but also to investigate the flexibility of specific regions and coformational changes. The predicted modules can aid in the planning and analysis of experiments. Availability and implementation Jupyter notebooks to reproduce the examples are available on our public GitHub repository: https://github.com/MolBIFFM/PTGLtools/tree/main/PTGLmodulePrediction.

Funder

ACLF-I

ENABLE

Publisher

Oxford University Press (OUP)

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