Aligning Metabolic Pathways Exploiting Binary Relation of Reactions

Journal Article (2016)
Author(s)

Yiran Huang (Guangxi University, South China University of Technology)

Cheng Zhong (Guangxi University)

H.X. Lin (TU Delft - Mathematical Physics)

Jing Huang (Guangxi University)

Research Group
Mathematical Physics
Copyright
© 2016 Yiran Huang, Cheng Zhong, H.X. Lin, Jing Huang
DOI related publication
https://doi.org/10.1371/journal.pone.0168044
More Info
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Publication Year
2016
Language
English
Copyright
© 2016 Yiran Huang, Cheng Zhong, H.X. Lin, Jing Huang
Research Group
Mathematical Physics
Pages (from-to)
1-25
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Abstract

Metabolic pathway alignment has been widely used to find one-to-one and/or one-to-many reaction mappings to identify the alternative pathways that have similar functions through different sets of reactions, which has important applications in reconstructing phylogeny and understanding metabolic functions. The existing alignment methods exhaustively search reaction sets, which may become infeasible for large pathways. To address this problem, we present an effective alignment method for accurately extracting reaction mappings between two metabolic pathways. We show that connected relation between reactions can be formalized as binary relation of reactions in metabolic pathways, and the multiplications of zero-one matrices for binary relations of reactions can be accomplished in finite steps. By utilizing the multiplications of zero-one matrices for binary relation of reactions, we efficiently obtain reaction sets in a small number of steps without exhaustive search, and accurately uncover biologically relevant reaction mappings. Furthermore, we introduce a measure of topological similarity of nodes (reactions) by comparing the structural similarity of the kneighborhood
subgraphs of the nodes in aligning metabolic pathways. We employ this similarity metric to improve the accuracy of the alignments. The experimental results on the
KEGG database show that when compared with other state-of-the-art methods, in most cases, our method obtains better performance in the node correctness and edge correctness, and the number of the edges of the largest common connected subgraph for one-toone reaction mappings, and the number of correct one-to-many reaction mappings. Our method is scalable in finding more reaction mappings with better biological relevance in large metabolic pathways.