AptRank: An Adaptive PageRank Model for Protein Function Prediction on Bi-relational Graphs
Biaobin Jiang, Kyle Kloster, David F. Gleich, Michael Gribskov

TL;DR
AptRank introduces an adaptive PageRank-based method on a bi-relational graph combining protein interactions and GO hierarchy, significantly improving protein function prediction accuracy over existing methods.
Contribution
It presents a novel two-layer network model integrating GO hierarchy with protein data and an adaptive PageRank mechanism for enhanced prediction performance.
Findings
AptRank outperforms previous methods in missing function prediction.
The adaptive mechanism improves prediction accuracy over fixed-parameter models.
Both BirgRank and AptRank excel in various validation strategies.
Abstract
Diffusion-based network models are widely used for protein function prediction using protein network data and have been shown to outperform neighborhood- and module-based methods. Recent studies have shown that integrating the hierarchical structure of the Gene Ontology (GO) data dramatically improves prediction accuracy. However, previous methods usually either used the GO hierarchy to refine the prediction results of multiple classifiers, or flattened the hierarchy into a function-function similarity kernel. No study has taken the GO hierarchy into account together with the protein network as a two-layer network model. We first construct a Bi-relational graph (Birg) model comprised of both protein-protein association and function-function hierarchical networks. We then propose two diffusion-based methods, BirgRank and AptRank, both of which use PageRank to diffuse information on…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Computational Drug Discovery Methods · Gene expression and cancer classification
