Yemin Fang 1 , Lei Chen 1 . Show Affiliations »
Abstract
BACKGROUND: The study of metabolic pathway is one of the most important fields in biochemistry. Good comprehension of the metabolic pathway system is helpful to uncover the mechanism of some fundamental biological processes. Because chemicals are part of the main components of the metabolic pathway, correct identification of which metabolic pathways a given chemical can participate in is an important step for understanding the metabolic pathway system. Most previous methods only considered the chemical information, which tried to deal with a multilabel classification problem of assigning chemicals to proper metabolic pathways. METHODS: In this study, the pathway information was also employed, thereby transforming the problem into a binary classification problem of identifying the pair of chemicals and metabolic pathways, i.e., a chemical and a metabolic pathway was paired as a sample to be considered in this study. To construct the prediction model, the association between chemical pathway type pairs was evaluated by integrating the association between chemicals and association between pathway types. The support vector machine was adopted as the prediction engine. RESULTS: The extensive tests show that the constructed model yields good performance with total prediction accuracy around 0.878. CONCLUSION: The comparison results indicate that our model is quite effective and suitable for the identification of whether a given chemical can participate in a given metabolic pathway. Copyright© Bentham Science Publishers; For any queries, please email at epub@benthamscience.org.
BACKGROUND: The study of metabolic pathway is one of the most important fields in biochemistry. Good comprehension of the metabolic pathway system is helpful to uncover the mechanism of some fundamental biological processes. Because chemicals are part of the main components of the metabolic pathway, correct identification of which metabolic pathways a given chemical can participate in is an important step for understanding the metabolic pathway system. Most previous methods only considered the chemical information, which tried to deal with a multilabel classification problem of assigning chemicals to proper metabolic pathways. METHODS: In this study, the pathway information was also employed, thereby transforming the problem into a binary classification problem of identifying the pair of chemicals and metabolic pathways, i.e., a chemical and a metabolic pathway was paired as a sample to be considered in this study. To construct the prediction model, the association between chemical pathway type pairs was evaluated by integrating the association between chemicals and association between pathway types. The support vector machine was adopted as the prediction engine. RESULTS: The extensive tests show that the constructed model yields good performance with total prediction accuracy around 0.878. CONCLUSION: The comparison results indicate that our model is quite effective and suitable for the identification of whether a given chemical can participate in a given metabolic pathway. Copyright© Bentham Science Publishers; For any queries, please email at epub@benthamscience.org.
Keywords:
Kuhn-Munkreszzm321990algorithm; Metabolic pathway; bipartite graph; chemical-chemical interaction; protein-protein interaction; support vector machine
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Year: 2017
PMID: 27981902 DOI: 10.2174/1386207319666161215142130
Source DB: PubMed Journal: Comb Chem High Throughput Screen ISSN: 1386-2073 Impact factor: 1.339