Abstract
Network-based protein localization prediction is explored utilizing the protein-protein interaction score along with the network connectivity. Score-based diffusion kernel is introduced to solve the problem. Four different PPI networks, namely, co-expressed PPI, Genetic PPI, Physical PPI, and scored PPI are used for analysis. Our investigation shows that PPI score does have positive impact in predicting subcellular protein localization. At high average PPI score of 891, performance accuracy ranges from 0.78 for ‘punctate composite’ to 0.93 for ‘nucleolus’ and at low average PPI score of 169, performance accuracy ranges from 0.60 for ‘cytoplasm’ to 0.83 for ‘mitochondrion’.
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Mondal, A.M., Hu, J. (2013). Scored Protein-Protein Interaction to Predict Subcellular Localizations for Yeast Using Diffusion Kernel. In: Maji, P., Ghosh, A., Murty, M.N., Ghosh, K., Pal, S.K. (eds) Pattern Recognition and Machine Intelligence. PReMI 2013. Lecture Notes in Computer Science, vol 8251. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-45062-4_91
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DOI: https://doi.org/10.1007/978-3-642-45062-4_91
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