Michele Leone1, Andrea Pagnani. 1. Institute for Scientific Interchange (ISI) Viale Settimio Severo 65, Turin, I-10133, Italy. leone@isiosf.isi.it
Abstract
MOTIVATION: In the last few years, a growing interest in biology has been shifting toward the problem of optimal information extraction from the huge amount of data generated via large-scale and high-throughput techniques. One of the most relevant issues has recently emerged that of correctly and reliably predicting the functions of a given protein with that of functions exploiting information coming from the whole network of proteins physically interacting with the functionally undetermined one. In the present work, we will refer to an 'observed' protein as the one present in the protein-protein interaction networks published in the literature. METHODS: The method proposed in this paper is based on a message passing algorithm known as Belief Propagation, which accepts the network of protein's physical interactions and a catalog of known protein's functions as input, and returns the probabilities for each unclassified protein of having one chosen function. The implementation of the algorithm allows for fast online analysis, and can easily be generalized into more complex graph topologies taking into account hypergraphs, i.e. complexes of more than two interacting proteins. RESULTS: Benchmarks of our method are the two Saccharomyces cerevisiae protein-protein interaction networks and the Database of Interacting Proteins. The validity of our approach is successfully tested against other available techniques. CONTACT: leone@isiosf.isi.it SUPPLEMENTARY INFORMATION: http://isiosf.isi.it/~pagnani
MOTIVATION: In the last few years, a growing interest in biology has been shifting toward the problem of optimal information extraction from the huge amount of data generated via large-scale and high-throughput techniques. One of the most relevant issues has recently emerged that of correctly and reliably predicting the functions of a given protein with that of functions exploiting information coming from the whole network of proteins physically interacting with the functionally undetermined one. In the present work, we will refer to an 'observed' protein as the one present in the protein-protein interaction networks published in the literature. METHODS: The method proposed in this paper is based on a message passing algorithm known as Belief Propagation, which accepts the network of protein's physical interactions and a catalog of known protein's functions as input, and returns the probabilities for each unclassified protein of having one chosen function. The implementation of the algorithm allows for fast online analysis, and can easily be generalized into more complex graph topologies taking into account hypergraphs, i.e. complexes of more than two interacting proteins. RESULTS: Benchmarks of our method are the two Saccharomyces cerevisiae protein-protein interaction networks and the Database of Interacting Proteins. The validity of our approach is successfully tested against other available techniques. CONTACT: leone@isiosf.isi.it SUPPLEMENTARY INFORMATION: http://isiosf.isi.it/~pagnani
Authors: Renming Liu; Christopher A Mancuso; Anna Yannakopoulos; Kayla A Johnson; Arjun Krishnan Journal: Bioinformatics Date: 2020-06-01 Impact factor: 6.937
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Authors: Lourdes Peña-Castillo; Murat Tasan; Chad L Myers; Hyunju Lee; Trupti Joshi; Chao Zhang; Yuanfang Guan; Michele Leone; Andrea Pagnani; Wan Kyu Kim; Chase Krumpelman; Weidong Tian; Guillaume Obozinski; Yanjun Qi; Sara Mostafavi; Guan Ning Lin; Gabriel F Berriz; Francis D Gibbons; Gert Lanckriet; Jian Qiu; Charles Grant; Zafer Barutcuoglu; David P Hill; David Warde-Farley; Chris Grouios; Debajyoti Ray; Judith A Blake; Minghua Deng; Michael I Jordan; William S Noble; Quaid Morris; Judith Klein-Seetharaman; Ziv Bar-Joseph; Ting Chen; Fengzhu Sun; Olga G Troyanskaya; Edward M Marcotte; Dong Xu; Timothy R Hughes; Frederick P Roth Journal: Genome Biol Date: 2008-06-27 Impact factor: 13.583