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Towards early risk biomarkers: serum metabolic signature in childhood predicts cardio-metabolic risk in adulthood

BACKGROUND: Cardiovascular diseases may originate in childhood. Biomarkers identifying individuals with increased risk for disease are needed to support early detection and to optimise prevention strategies. METHODS: In this prospective study, by applying a machine learning to high throughput NMR-ba...

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Autores principales: Ojanen, Xiaowei, Cheng, Runtan, Törmäkangas, Timo, Rappaport, Noa, Wilmanski, Tomasz, Wu, Na, Fung, Erik, Nedelec, Rozenn, Sebert, Sylvain, Vlachopoulos, Dimitris, Yan, Wei, Price, Nathan D., Cheng, Sulin, Wiklund, Petri
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8511803/
https://www.ncbi.nlm.nih.gov/pubmed/34628356
http://dx.doi.org/10.1016/j.ebiom.2021.103611
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author Ojanen, Xiaowei
Cheng, Runtan
Törmäkangas, Timo
Rappaport, Noa
Wilmanski, Tomasz
Wu, Na
Fung, Erik
Nedelec, Rozenn
Sebert, Sylvain
Vlachopoulos, Dimitris
Yan, Wei
Price, Nathan D.
Cheng, Sulin
Wiklund, Petri
author_facet Ojanen, Xiaowei
Cheng, Runtan
Törmäkangas, Timo
Rappaport, Noa
Wilmanski, Tomasz
Wu, Na
Fung, Erik
Nedelec, Rozenn
Sebert, Sylvain
Vlachopoulos, Dimitris
Yan, Wei
Price, Nathan D.
Cheng, Sulin
Wiklund, Petri
author_sort Ojanen, Xiaowei
collection PubMed
description BACKGROUND: Cardiovascular diseases may originate in childhood. Biomarkers identifying individuals with increased risk for disease are needed to support early detection and to optimise prevention strategies. METHODS: In this prospective study, by applying a machine learning to high throughput NMR-based metabolomics data, we identified circulating childhood metabolic predictors of adult cardiovascular disease risk (MetS score) in a cohort of 396 females, followed from childhood (mean age 11·2 years) to early adulthood (mean age 18·1 years). The results obtained from the discovery cohort were validated in a large longitudinal birth cohort of females and males followed from puberty to adulthood (n = 2664) and in four cross-sectional data sets (n = 6341). FINDINGS: The identified childhood metabolic signature included three circulating biomarkers, glycoprotein acetyls (GlycA), large high-density lipoprotein phospholipids (L-HDL-PL), and the ratio of apolipoprotein B to apolipoprotein A-1 (ApoB/ApoA) that were associated with increased cardio-metabolic risk in early adulthood (AUC = 0·641‒0·802, all p<0·01). These associations were confirmed in all validation cohorts with similar effect estimates both in females (AUC = 0·667‒0·905, all p<0·01) and males (AUC = 0·734‒0·889, all p<0·01) as well as in elderly patients with and without type 2 diabetes (AUC = 0·517‒0·700, all p<0·01). We subsequently applied random intercept cross-lagged panel model analysis, which suggested bidirectional causal relationship between metabolic biomarkers and cardio-metabolic risk score from childhood to early adulthood. INTERPRETATION: These results provide evidence for the utility of a circulating metabolomics panel to identify children and adolescents at risk for future cardiovascular disease, to whom preventive measures and follow-up could be indicated.
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spelling pubmed-85118032021-10-21 Towards early risk biomarkers: serum metabolic signature in childhood predicts cardio-metabolic risk in adulthood Ojanen, Xiaowei Cheng, Runtan Törmäkangas, Timo Rappaport, Noa Wilmanski, Tomasz Wu, Na Fung, Erik Nedelec, Rozenn Sebert, Sylvain Vlachopoulos, Dimitris Yan, Wei Price, Nathan D. Cheng, Sulin Wiklund, Petri EBioMedicine Research Paper BACKGROUND: Cardiovascular diseases may originate in childhood. Biomarkers identifying individuals with increased risk for disease are needed to support early detection and to optimise prevention strategies. METHODS: In this prospective study, by applying a machine learning to high throughput NMR-based metabolomics data, we identified circulating childhood metabolic predictors of adult cardiovascular disease risk (MetS score) in a cohort of 396 females, followed from childhood (mean age 11·2 years) to early adulthood (mean age 18·1 years). The results obtained from the discovery cohort were validated in a large longitudinal birth cohort of females and males followed from puberty to adulthood (n = 2664) and in four cross-sectional data sets (n = 6341). FINDINGS: The identified childhood metabolic signature included three circulating biomarkers, glycoprotein acetyls (GlycA), large high-density lipoprotein phospholipids (L-HDL-PL), and the ratio of apolipoprotein B to apolipoprotein A-1 (ApoB/ApoA) that were associated with increased cardio-metabolic risk in early adulthood (AUC = 0·641‒0·802, all p<0·01). These associations were confirmed in all validation cohorts with similar effect estimates both in females (AUC = 0·667‒0·905, all p<0·01) and males (AUC = 0·734‒0·889, all p<0·01) as well as in elderly patients with and without type 2 diabetes (AUC = 0·517‒0·700, all p<0·01). We subsequently applied random intercept cross-lagged panel model analysis, which suggested bidirectional causal relationship between metabolic biomarkers and cardio-metabolic risk score from childhood to early adulthood. INTERPRETATION: These results provide evidence for the utility of a circulating metabolomics panel to identify children and adolescents at risk for future cardiovascular disease, to whom preventive measures and follow-up could be indicated. Elsevier 2021-10-07 /pmc/articles/PMC8511803/ /pubmed/34628356 http://dx.doi.org/10.1016/j.ebiom.2021.103611 Text en © 2021 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research Paper
Ojanen, Xiaowei
Cheng, Runtan
Törmäkangas, Timo
Rappaport, Noa
Wilmanski, Tomasz
Wu, Na
Fung, Erik
Nedelec, Rozenn
Sebert, Sylvain
Vlachopoulos, Dimitris
Yan, Wei
Price, Nathan D.
Cheng, Sulin
Wiklund, Petri
Towards early risk biomarkers: serum metabolic signature in childhood predicts cardio-metabolic risk in adulthood
title Towards early risk biomarkers: serum metabolic signature in childhood predicts cardio-metabolic risk in adulthood
title_full Towards early risk biomarkers: serum metabolic signature in childhood predicts cardio-metabolic risk in adulthood
title_fullStr Towards early risk biomarkers: serum metabolic signature in childhood predicts cardio-metabolic risk in adulthood
title_full_unstemmed Towards early risk biomarkers: serum metabolic signature in childhood predicts cardio-metabolic risk in adulthood
title_short Towards early risk biomarkers: serum metabolic signature in childhood predicts cardio-metabolic risk in adulthood
title_sort towards early risk biomarkers: serum metabolic signature in childhood predicts cardio-metabolic risk in adulthood
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8511803/
https://www.ncbi.nlm.nih.gov/pubmed/34628356
http://dx.doi.org/10.1016/j.ebiom.2021.103611
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