Integrative Analysis of Longitudinal Metabolomics Data from a Personal Multi-Omics Profile
The integrative personal omics profile (iPOP) is a pioneering study that combines genomics, transcriptomics, proteomics, metabolomics and autoantibody profiles from a single individual over a 14-month period. The observation period includes two episodes of viral infection: a human rhinovirus and a r...
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doaj-e290af735d6d4f42a4f8794194076b492020-11-24T22:04:51ZengMDPI AGMetabolites2218-19892013-09-013374176010.3390/metabo3030741Integrative Analysis of Longitudinal Metabolomics Data from a Personal Multi-Omics ProfileMichael SnyderRoger HigdonLarissa StanberryGeorge I. MiasWinston HaynesEugene KolkerThe integrative personal omics profile (iPOP) is a pioneering study that combines genomics, transcriptomics, proteomics, metabolomics and autoantibody profiles from a single individual over a 14-month period. The observation period includes two episodes of viral infection: a human rhinovirus and a respiratory syncytial virus. The profile studies give an informative snapshot into the biological functioning of an organism. We hypothesize that pathway expression levels are associated with disease status. To test this hypothesis, we use biological pathways to integrate metabolomics and proteomics iPOP data. The approach computes the pathways’ differential expression levels at each time point, while taking into account the pathway structure and the longitudinal design. The resulting pathway levels show strong association with the disease status. Further, we identify temporal patterns in metabolite expression levels. The changes in metabolite expression levels also appear to be consistent with the disease status. The results of the integrative analysis suggest that changes in biological pathways may be used to predict and monitor the disease. The iPOP experimental design, data acquisition and analysis issues are discussed within the broader context of personal profiling.http://www.mdpi.com/2218-1989/3/3/741metabolomicsintegrative pathway analysisDEAPdendrogram sharpeningDELSAiPOPlongitudinal designmulti-omics datasingle linkage. |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Michael Snyder Roger Higdon Larissa Stanberry George I. Mias Winston Haynes Eugene Kolker |
spellingShingle |
Michael Snyder Roger Higdon Larissa Stanberry George I. Mias Winston Haynes Eugene Kolker Integrative Analysis of Longitudinal Metabolomics Data from a Personal Multi-Omics Profile Metabolites metabolomics integrative pathway analysis DEAP dendrogram sharpening DELSA iPOP longitudinal design multi-omics data single linkage. |
author_facet |
Michael Snyder Roger Higdon Larissa Stanberry George I. Mias Winston Haynes Eugene Kolker |
author_sort |
Michael Snyder |
title |
Integrative Analysis of Longitudinal Metabolomics Data from a Personal Multi-Omics Profile |
title_short |
Integrative Analysis of Longitudinal Metabolomics Data from a Personal Multi-Omics Profile |
title_full |
Integrative Analysis of Longitudinal Metabolomics Data from a Personal Multi-Omics Profile |
title_fullStr |
Integrative Analysis of Longitudinal Metabolomics Data from a Personal Multi-Omics Profile |
title_full_unstemmed |
Integrative Analysis of Longitudinal Metabolomics Data from a Personal Multi-Omics Profile |
title_sort |
integrative analysis of longitudinal metabolomics data from a personal multi-omics profile |
publisher |
MDPI AG |
series |
Metabolites |
issn |
2218-1989 |
publishDate |
2013-09-01 |
description |
The integrative personal omics profile (iPOP) is a pioneering study that combines genomics, transcriptomics, proteomics, metabolomics and autoantibody profiles from a single individual over a 14-month period. The observation period includes two episodes of viral infection: a human rhinovirus and a respiratory syncytial virus. The profile studies give an informative snapshot into the biological functioning of an organism. We hypothesize that pathway expression levels are associated with disease status. To test this hypothesis, we use biological pathways to integrate metabolomics and proteomics iPOP data. The approach computes the pathways’ differential expression levels at each time point, while taking into account the pathway structure and the longitudinal design. The resulting pathway levels show strong association with the disease status. Further, we identify temporal patterns in metabolite expression levels. The changes in metabolite expression levels also appear to be consistent with the disease status. The results of the integrative analysis suggest that changes in biological pathways may be used to predict and monitor the disease. The iPOP experimental design, data acquisition and analysis issues are discussed within the broader context of personal profiling. |
topic |
metabolomics integrative pathway analysis DEAP dendrogram sharpening DELSA iPOP longitudinal design multi-omics data single linkage. |
url |
http://www.mdpi.com/2218-1989/3/3/741 |
work_keys_str_mv |
AT michaelsnyder integrativeanalysisoflongitudinalmetabolomicsdatafromapersonalmultiomicsprofile AT rogerhigdon integrativeanalysisoflongitudinalmetabolomicsdatafromapersonalmultiomicsprofile AT larissastanberry integrativeanalysisoflongitudinalmetabolomicsdatafromapersonalmultiomicsprofile AT georgeimias integrativeanalysisoflongitudinalmetabolomicsdatafromapersonalmultiomicsprofile AT winstonhaynes integrativeanalysisoflongitudinalmetabolomicsdatafromapersonalmultiomicsprofile AT eugenekolker integrativeanalysisoflongitudinalmetabolomicsdatafromapersonalmultiomicsprofile |
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1725828537238159360 |