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Prediction of Oncogenic Interactions and Cancer-Related Signaling Networks Based on Network Topology

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  • Marcio Luis Acencio
  • Luiz Augusto Bovolenta
  • Esther Camilo
  • Ney Lemke

Abstract

Cancer has been increasingly recognized as a systems biology disease since many investigators have demonstrated that this malignant phenotype emerges from abnormal protein-protein, regulatory and metabolic interactions induced by simultaneous structural and regulatory changes in multiple genes and pathways. Therefore, the identification of oncogenic interactions and cancer-related signaling networks is crucial for better understanding cancer. As experimental techniques for determining such interactions and signaling networks are labor-intensive and time-consuming, the development of a computational approach capable to accomplish this task would be of great value. For this purpose, we present here a novel computational approach based on network topology and machine learning capable to predict oncogenic interactions and extract relevant cancer-related signaling subnetworks from an integrated network of human genes interactions (INHGI). This approach, called graph2sig, is twofold: first, it assigns oncogenic scores to all interactions in the INHGI and then these oncogenic scores are used as edge weights to extract oncogenic signaling subnetworks from INHGI. Regarding the prediction of oncogenic interactions, we showed that graph2sig is able to recover 89% of known oncogenic interactions with a precision of 77%. Moreover, the interactions that received high oncogenic scores are enriched in genes for which mutations have been causally implicated in cancer. We also demonstrated that graph2sig is potentially useful in extracting oncogenic signaling subnetworks: more than 80% of constructed subnetworks contain more than 50% of original interactions in their corresponding oncogenic linear pathways present in the KEGG PATHWAY database. In addition, the potential oncogenic signaling subnetworks discovered by graph2sig are supported by experimental evidence. Taken together, these results suggest that graph2sig can be a useful tool for investigators involved in cancer research interested in detecting signaling networks most prone to contribute with the emergence of malignant phenotype.

Suggested Citation

  • Marcio Luis Acencio & Luiz Augusto Bovolenta & Esther Camilo & Ney Lemke, 2013. "Prediction of Oncogenic Interactions and Cancer-Related Signaling Networks Based on Network Topology," PLOS ONE, Public Library of Science, vol. 8(10), pages 1-12, October.
  • Handle: RePEc:plo:pone00:0077521
    DOI: 10.1371/journal.pone.0077521
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    References listed on IDEAS

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    1. da Silva, João Paulo Müller & Acencio, Marcio Luis & Mombach, José Carlos Merino & Vieira, Renata & da Silva, José Camargo & Lemke, Ney & Sinigaglia, Marialva, 2008. "In silico network topology-based prediction of gene essentiality," Physica A: Statistical Mechanics and its Applications, Elsevier, vol. 387(4), pages 1049-1055.
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