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Bayesian Markov Random Field Analysis for Protein Function Prediction Based on Network Data

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  • Yiannis A I Kourmpetis
  • Aalt D J van Dijk
  • Marco C A M Bink
  • Roeland C H J van Ham
  • Cajo J F ter Braak

Abstract

Inference of protein functions is one of the most important aims of modern biology. To fully exploit the large volumes of genomic data typically produced in modern-day genomic experiments, automated computational methods for protein function prediction are urgently needed. Established methods use sequence or structure similarity to infer functions but those types of data do not suffice to determine the biological context in which proteins act. Current high-throughput biological experiments produce large amounts of data on the interactions between proteins. Such data can be used to infer interaction networks and to predict the biological process that the protein is involved in. Here, we develop a probabilistic approach for protein function prediction using network data, such as protein-protein interaction measurements. We take a Bayesian approach to an existing Markov Random Field method by performing simultaneous estimation of the model parameters and prediction of protein functions. We use an adaptive Markov Chain Monte Carlo algorithm that leads to more accurate parameter estimates and consequently to improved prediction performance compared to the standard Markov Random Fields method. We tested our method using a high quality S.cereviciae validation network with 1622 proteins against 90 Gene Ontology terms of different levels of abstraction. Compared to three other protein function prediction methods, our approach shows very good prediction performance. Our method can be directly applied to protein-protein interaction or coexpression networks, but also can be extended to use multiple data sources. We apply our method to physical protein interaction data from S. cerevisiae and provide novel predictions, using 340 Gene Ontology terms, for 1170 unannotated proteins and we evaluate the predictions using the available literature.

Suggested Citation

  • Yiannis A I Kourmpetis & Aalt D J van Dijk & Marco C A M Bink & Roeland C H J van Ham & Cajo J F ter Braak, 2010. "Bayesian Markov Random Field Analysis for Protein Function Prediction Based on Network Data," PLOS ONE, Public Library of Science, vol. 5(2), pages 1-10, February.
  • Handle: RePEc:plo:pone00:0009293
    DOI: 10.1371/journal.pone.0009293
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    Cited by:

    1. Lei Chen & Jing Lu & Jian Zhang & Kai-Rui Feng & Ming-Yue Zheng & Yu-Dong Cai, 2013. "Predicting Chemical Toxicity Effects Based on Chemical-Chemical Interactions," PLOS ONE, Public Library of Science, vol. 8(2), pages 1-9, February.
    2. Yu-Fei Gao & Lei Chen & Yu-Dong Cai & Kai-Yan Feng & Tao Huang & Yang Jiang, 2012. "Predicting Metabolic Pathways of Small Molecules and Enzymes Based on Interaction Information of Chemicals and Proteins," PLOS ONE, Public Library of Science, vol. 7(9), pages 1-9, September.
    3. Le-Le Hu & Chen Chen & Tao Huang & Yu-Dong Cai & Kuo-Chen Chou, 2011. "Predicting Biological Functions of Compounds Based on Chemical-Chemical Interactions," PLOS ONE, Public Library of Science, vol. 6(12), pages 1-9, December.

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