Longitudinal Omics Modelling and Integration in Clinical Metabonomics Research: challenges in childhood metabolic health research
Systems biology is an important approach for deciphering the complex processes in health maintenance and the etiology of metabolic diseases. Such integrative methodologies will help better understand the molecular mechanisms involved in growth and development throughout childhood, and consequently w...
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doaj-164fd479fabc4a97825791b481737b672020-11-24T20:59:05ZengFrontiers Media S.A.Frontiers in Molecular Biosciences2296-889X2015-08-01210.3389/fmolb.2015.00044151246Longitudinal Omics Modelling and Integration in Clinical Metabonomics Research: challenges in childhood metabolic health researchPeter eSperisen0Ornella eCominetti1Francois-Pierre eMartin2Nestle Institute of Health SciencesNestle Institute of Health SciencesNestle Institute of Health SciencesSystems biology is an important approach for deciphering the complex processes in health maintenance and the etiology of metabolic diseases. Such integrative methodologies will help better understand the molecular mechanisms involved in growth and development throughout childhood, and consequently will result in new insights about metabolic and nutritional requirements of infants, children and adults. To achieve this, a better understanding of the physiological processes at anthropometric, cellular and molecular level for any given individual is needed. In this respect, novel omics technologies in combination with sophisticated data modelling techniques are key. Due to the highly complex network of influential factors determining individual trajectories, it becomes imperative to develop proper tools and solutions that will comprehensively model biological information related to growth and maturation of our body functions. The aim of this review and perspective is to evaluate, succinctly, promising data analysis approaches to enable data integration for clinical research, with an emphasis on the longitudinal component. Approaches based on empirical and mechanistic modelling of omics data are essential to leverage findings from high dimensional omics datasets and enable biological interpretation and clinical translation. On the one hand, empirical methods, which provide quantitative descriptions of patterns in the data, are mostly used for exploring and mining datasets. On the other hand, mechanistic models are based on an understanding of the behavior of a system’s components and condense information about the known functions, allowing robust and reliable analyses to be performed by bioinformatics pipelines and similar tools. Herein, we will illustrate current examples, challenges and perspectives in the applications of empirical and mechanistic modelling in the context of childhood metabolic health research.http://journal.frontiersin.org/Journal/10.3389/fmolb.2015.00044/fullclinical phenotypeMetabolic ModellingMetabonomicsempirical modellingLongitudinal high dimensional data |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Peter eSperisen Ornella eCominetti Francois-Pierre eMartin |
spellingShingle |
Peter eSperisen Ornella eCominetti Francois-Pierre eMartin Longitudinal Omics Modelling and Integration in Clinical Metabonomics Research: challenges in childhood metabolic health research Frontiers in Molecular Biosciences clinical phenotype Metabolic Modelling Metabonomics empirical modelling Longitudinal high dimensional data |
author_facet |
Peter eSperisen Ornella eCominetti Francois-Pierre eMartin |
author_sort |
Peter eSperisen |
title |
Longitudinal Omics Modelling and Integration in Clinical Metabonomics Research: challenges in childhood metabolic health research |
title_short |
Longitudinal Omics Modelling and Integration in Clinical Metabonomics Research: challenges in childhood metabolic health research |
title_full |
Longitudinal Omics Modelling and Integration in Clinical Metabonomics Research: challenges in childhood metabolic health research |
title_fullStr |
Longitudinal Omics Modelling and Integration in Clinical Metabonomics Research: challenges in childhood metabolic health research |
title_full_unstemmed |
Longitudinal Omics Modelling and Integration in Clinical Metabonomics Research: challenges in childhood metabolic health research |
title_sort |
longitudinal omics modelling and integration in clinical metabonomics research: challenges in childhood metabolic health research |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Molecular Biosciences |
issn |
2296-889X |
publishDate |
2015-08-01 |
description |
Systems biology is an important approach for deciphering the complex processes in health maintenance and the etiology of metabolic diseases. Such integrative methodologies will help better understand the molecular mechanisms involved in growth and development throughout childhood, and consequently will result in new insights about metabolic and nutritional requirements of infants, children and adults. To achieve this, a better understanding of the physiological processes at anthropometric, cellular and molecular level for any given individual is needed. In this respect, novel omics technologies in combination with sophisticated data modelling techniques are key. Due to the highly complex network of influential factors determining individual trajectories, it becomes imperative to develop proper tools and solutions that will comprehensively model biological information related to growth and maturation of our body functions. The aim of this review and perspective is to evaluate, succinctly, promising data analysis approaches to enable data integration for clinical research, with an emphasis on the longitudinal component. Approaches based on empirical and mechanistic modelling of omics data are essential to leverage findings from high dimensional omics datasets and enable biological interpretation and clinical translation. On the one hand, empirical methods, which provide quantitative descriptions of patterns in the data, are mostly used for exploring and mining datasets. On the other hand, mechanistic models are based on an understanding of the behavior of a system’s components and condense information about the known functions, allowing robust and reliable analyses to be performed by bioinformatics pipelines and similar tools. Herein, we will illustrate current examples, challenges and perspectives in the applications of empirical and mechanistic modelling in the context of childhood metabolic health research. |
topic |
clinical phenotype Metabolic Modelling Metabonomics empirical modelling Longitudinal high dimensional data |
url |
http://journal.frontiersin.org/Journal/10.3389/fmolb.2015.00044/full |
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