Similarity network fusion for the integration of multi-omics and microbiomes in respiratory disease
Advances in platform technologies facilitate the design of largescale “multi-omic” studies that encompass genomic, transcriptomic, proteomic, epigenomic, metabolomic and microbiomic components, each representing different views of a single biological specimen [1]. While useful, this is analogous...
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sg-ntu-dr.10356-1608512022-08-03T07:52:25Z Similarity network fusion for the integration of multi-omics and microbiomes in respiratory disease Narayana, Jayanth Kumar Mac Aogáin, Micheál Nur A'tikah Mohamed Ali Tsaneva-Atanasova, Krasimira Chotirmall, Sanjay Haresh Lee Kong Chian School of Medicine (LKCMedicine) Science::Medicine Systems Medicine Respiratory Disease Advances in platform technologies facilitate the design of largescale “multi-omic” studies that encompass genomic, transcriptomic, proteomic, epigenomic, metabolomic and microbiomic components, each representing different views of a single biological specimen [1]. While useful, this is analogous to the ‘Flatland’ jeu d'esprit where the same reality (i.e., a sphere of constant diameter) is subject to different interpretations (i.e., circles of varying diameter) depending on one’s point of view (from various 2-D cross sections). Although each -omics approach has value, they can be even more useful if holistically modelled through appropriate integration. While ‘mono-omic’ analysis has been extremely beneficial, from a systems medicine perspective, this may fail to capture the emergent properties of an individual system and hence may yield limited understanding of non-linear and dynamic features, all of which are increasingly evident in the pathogenesis of respiratory disease [1]. There is clearly a growing need for a more holistic ‘all in’ integration methodology that leverages each distinct -omic dataset derived from multi-omic studies (Figure 1). Although several integrative methodologies are available (e.g. mixOmics, Anvi'o and integrOmics), Similarity Network Fusion (SNF) has emerged as an appropriate, applicable, and robust method in respiratory disease [2-4]. Ministry of Health (MOH) Nanyang Technological University This research is supported by the Singapore Ministry of Health’s National Medical Research Council under its Clinician-Scientist Individual Research Grant (MOH-000141) (S.H.C) and the NTU Integrated Medical, Biological and Environmental Life Sciences (NIMBELS) [NIM/03/2018] (S.H.C). KTA gratefully acknowledges the financial support of the EPSRC via grant EP/T017856/1. 2022-08-03T07:52:24Z 2022-08-03T07:52:24Z 2021 Journal Article Narayana, J. K., Mac Aogáin, M., Nur A'tikah Mohamed Ali, Tsaneva-Atanasova, K. & Chotirmall, S. H. (2021). Similarity network fusion for the integration of multi-omics and microbiomes in respiratory disease. European Respiratory Journal, 58(2), 2101016-. https://dx.doi.org/10.1183/13993003.01016-2021 0903-1936 https://hdl.handle.net/10356/160851 10.1183/13993003.01016-2021 34140302 2-s2.0-85114156522 2 58 2101016 en MOH-000141 NIM/03/2018 European Respiratory Journal © 2021 The authors. All rights reserved. |
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Science::Medicine Systems Medicine Respiratory Disease Narayana, Jayanth Kumar Mac Aogáin, Micheál Nur A'tikah Mohamed Ali Tsaneva-Atanasova, Krasimira Chotirmall, Sanjay Haresh Similarity network fusion for the integration of multi-omics and microbiomes in respiratory disease |
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Advances in platform technologies facilitate the design of largescale “multi-omic” studies that
encompass genomic, transcriptomic, proteomic, epigenomic, metabolomic and microbiomic
components, each representing different views of a single biological specimen [1]. While useful, this
is analogous to the ‘Flatland’ jeu d'esprit where the same reality (i.e., a sphere of constant diameter)
is subject to different interpretations (i.e., circles of varying diameter) depending on one’s point of
view (from various 2-D cross sections). Although each -omics approach has value, they can be even
more useful if holistically modelled through appropriate integration. While ‘mono-omic’ analysis has
been extremely beneficial, from a systems medicine perspective, this may fail to capture the emergent
properties of an individual system and hence may yield limited understanding of non-linear and
dynamic features, all of which are increasingly evident in the pathogenesis of respiratory disease [1].
There is clearly a growing need for a more holistic ‘all in’ integration methodology that leverages
each distinct -omic dataset derived from multi-omic studies (Figure 1). Although several integrative
methodologies are available (e.g. mixOmics, Anvi'o and integrOmics), Similarity Network Fusion
(SNF) has emerged as an appropriate, applicable, and robust method in respiratory disease [2-4]. |
author2 |
Lee Kong Chian School of Medicine (LKCMedicine) |
author_facet |
Lee Kong Chian School of Medicine (LKCMedicine) Narayana, Jayanth Kumar Mac Aogáin, Micheál Nur A'tikah Mohamed Ali Tsaneva-Atanasova, Krasimira Chotirmall, Sanjay Haresh |
format |
Article |
author |
Narayana, Jayanth Kumar Mac Aogáin, Micheál Nur A'tikah Mohamed Ali Tsaneva-Atanasova, Krasimira Chotirmall, Sanjay Haresh |
author_sort |
Narayana, Jayanth Kumar |
title |
Similarity network fusion for the integration of multi-omics and microbiomes in respiratory disease |
title_short |
Similarity network fusion for the integration of multi-omics and microbiomes in respiratory disease |
title_full |
Similarity network fusion for the integration of multi-omics and microbiomes in respiratory disease |
title_fullStr |
Similarity network fusion for the integration of multi-omics and microbiomes in respiratory disease |
title_full_unstemmed |
Similarity network fusion for the integration of multi-omics and microbiomes in respiratory disease |
title_sort |
similarity network fusion for the integration of multi-omics and microbiomes in respiratory disease |
publishDate |
2022 |
url |
https://hdl.handle.net/10356/160851 |
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1743119605930393600 |