A Novel Network Modelling for Metabolite Set Analysis: A Case Study on CRC Metabolomics

In metabolomics, pathway analysis normally refers to analysis of a pre-defined sets of metabolites (metabolite set) associated to the metabolic pathways. The metabolite set analysis is useful to facilitate biological interpretation of metabolomics data. The currently available methods may be divided...

Full description

Bibliographic Details
Main Authors: Yueyue Liu, Xiangnan Xu, Lingli Deng, Kian-Kai Cheng, Jingjing Xu, Daniel Raftery, Jiyang Dong
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9109583/
id doaj-45dccaa5d5654fffbc5c62802c98d8c8
record_format Article
spelling doaj-45dccaa5d5654fffbc5c62802c98d8c82021-03-30T02:54:31ZengIEEEIEEE Access2169-35362020-01-01810642510643610.1109/ACCESS.2020.30004329109583A Novel Network Modelling for Metabolite Set Analysis: A Case Study on CRC MetabolomicsYueyue Liu0https://orcid.org/0000-0002-1121-0412Xiangnan Xu1https://orcid.org/0000-0002-1910-6126Lingli Deng2https://orcid.org/0000-0002-3131-1659Kian-Kai Cheng3https://orcid.org/0000-0002-5894-1781Jingjing Xu4https://orcid.org/0000-0001-6672-7630Daniel Raftery5https://orcid.org/0000-0003-2467-8118Jiyang Dong6https://orcid.org/0000-0002-1064-6548Department of Electronic Science, Xiamen University, Xiamen, ChinaSchool of Mathematics and Statistics, The University of Sydney, NSW, AustraliaSchool of Information Engineering, East China University of Technology, Nanchang, ChinaInnovation Centre in Agritechnology, Universiti Teknologi Malaysia, Johor, MalaysiaDepartment of Electronic Science, Xiamen University, Xiamen, ChinaNorthwest Metabolomics Research Center, Anesthesiology and Pain Medicine, University of Washington, Seattle, WA, USADepartment of Electronic Science, Xiamen University, Xiamen, ChinaIn metabolomics, pathway analysis normally refers to analysis of a pre-defined sets of metabolites (metabolite set) associated to the metabolic pathways. The metabolite set analysis is useful to facilitate biological interpretation of metabolomics data. The currently available methods may be divided into three generations: over-representation analysis, functional class scoring, and network topology analysis. Among the three generations of tools, the network topology methods have been shown to have lower false discovery rates and better biological interpretability than the other two earlier generations of tools. However, most of the current network topology methods focus the analysis only at the metabolite-level network. The interaction between pathways are not taken into consideration. To address this issue, we propose a new metabolite sets association network (MSAN) modelling scheme. In the developed method, the metabolite sets are defined based on the KEGG databases. By using the metabolite sets as vertexes, the MSAN network evaluated the relationships between pairs of metabolite sets based on their mutual information. The impact of a single metabolite set on the overall network was evaluated by the MSAN network, which may help to uncover differential metabolite sets relevant to the underlying biology mechanism of the study. A metabolomic dataset from a published colorectal cancer (CRC) study is used to evaluate the performance of MSAN network to identify perturbed metabolite sets in colorectal cancer patients. The current results are compared to that of two commonly used methods, NetGSA and MetaboAnalyst, which are based on the metabolite-level network approach. The current method highlights a number of metabolites sets consistent with recent published CRC reports. Taken together, the proposed method may provide an alternative tool for the identification of dysregulated pathways and facilitate biological interpretation of metabolomics data.https://ieeexplore.ieee.org/document/9109583/Metabolite sets association network (MSAN)colorectal cancer (CRC) metabolomicsmutual informationpathway analysis
collection DOAJ
language English
format Article
sources DOAJ
author Yueyue Liu
Xiangnan Xu
Lingli Deng
Kian-Kai Cheng
Jingjing Xu
Daniel Raftery
Jiyang Dong
spellingShingle Yueyue Liu
Xiangnan Xu
Lingli Deng
Kian-Kai Cheng
Jingjing Xu
Daniel Raftery
Jiyang Dong
A Novel Network Modelling for Metabolite Set Analysis: A Case Study on CRC Metabolomics
IEEE Access
Metabolite sets association network (MSAN)
colorectal cancer (CRC) metabolomics
mutual information
pathway analysis
author_facet Yueyue Liu
Xiangnan Xu
Lingli Deng
Kian-Kai Cheng
Jingjing Xu
Daniel Raftery
Jiyang Dong
author_sort Yueyue Liu
title A Novel Network Modelling for Metabolite Set Analysis: A Case Study on CRC Metabolomics
title_short A Novel Network Modelling for Metabolite Set Analysis: A Case Study on CRC Metabolomics
title_full A Novel Network Modelling for Metabolite Set Analysis: A Case Study on CRC Metabolomics
title_fullStr A Novel Network Modelling for Metabolite Set Analysis: A Case Study on CRC Metabolomics
title_full_unstemmed A Novel Network Modelling for Metabolite Set Analysis: A Case Study on CRC Metabolomics
title_sort novel network modelling for metabolite set analysis: a case study on crc metabolomics
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description In metabolomics, pathway analysis normally refers to analysis of a pre-defined sets of metabolites (metabolite set) associated to the metabolic pathways. The metabolite set analysis is useful to facilitate biological interpretation of metabolomics data. The currently available methods may be divided into three generations: over-representation analysis, functional class scoring, and network topology analysis. Among the three generations of tools, the network topology methods have been shown to have lower false discovery rates and better biological interpretability than the other two earlier generations of tools. However, most of the current network topology methods focus the analysis only at the metabolite-level network. The interaction between pathways are not taken into consideration. To address this issue, we propose a new metabolite sets association network (MSAN) modelling scheme. In the developed method, the metabolite sets are defined based on the KEGG databases. By using the metabolite sets as vertexes, the MSAN network evaluated the relationships between pairs of metabolite sets based on their mutual information. The impact of a single metabolite set on the overall network was evaluated by the MSAN network, which may help to uncover differential metabolite sets relevant to the underlying biology mechanism of the study. A metabolomic dataset from a published colorectal cancer (CRC) study is used to evaluate the performance of MSAN network to identify perturbed metabolite sets in colorectal cancer patients. The current results are compared to that of two commonly used methods, NetGSA and MetaboAnalyst, which are based on the metabolite-level network approach. The current method highlights a number of metabolites sets consistent with recent published CRC reports. Taken together, the proposed method may provide an alternative tool for the identification of dysregulated pathways and facilitate biological interpretation of metabolomics data.
topic Metabolite sets association network (MSAN)
colorectal cancer (CRC) metabolomics
mutual information
pathway analysis
url https://ieeexplore.ieee.org/document/9109583/
work_keys_str_mv AT yueyueliu anovelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT xiangnanxu anovelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT linglideng anovelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT kiankaicheng anovelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT jingjingxu anovelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT danielraftery anovelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT jiyangdong anovelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT yueyueliu novelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT xiangnanxu novelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT linglideng novelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT kiankaicheng novelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT jingjingxu novelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT danielraftery novelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
AT jiyangdong novelnetworkmodellingformetabolitesetanalysisacasestudyoncrcmetabolomics
_version_ 1724184402257248256