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Proximal correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum

OBJECTIVE: To examine the social and behavioural correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum. DESIGN: Cross-sectional study of a random population sample. PARTICIPANTS: A total of 718 community-dwelling adults (57% female), aged...

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Autores principales: Haren, M T, Misan, G, Grant, J F, Buckley, J D, Howe, P R C, Taylor, A W, Newbury, J, McDermott, R A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3302143/
https://www.ncbi.nlm.nih.gov/pubmed/23154680
http://dx.doi.org/10.1038/nutd.2011.20
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author Haren, M T
Misan, G
Grant, J F
Buckley, J D
Howe, P R C
Taylor, A W
Newbury, J
McDermott, R A
author_facet Haren, M T
Misan, G
Grant, J F
Buckley, J D
Howe, P R C
Taylor, A W
Newbury, J
McDermott, R A
author_sort Haren, M T
collection PubMed
description OBJECTIVE: To examine the social and behavioural correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum. DESIGN: Cross-sectional study of a random population sample. PARTICIPANTS: A total of 718 community-dwelling adults (57% female), aged 18–92 years from a regional South Australian city. MEASUREMENTS: Total body fat and lean mass and abdominal fat mass were assessed by dual energy x-ray absorptiometry. Fasting venous blood was collected in the morning for assessment of glycated haemoglobin, plasma glucose, serum triglycerides, cholesterol lipoproteins and insulin. Seated blood pressure (BP) was measured. Physical activity and smoking, alcohol and diet (96-item food frequency), sleep duration and frequency of sleep disordered breathing (SDB) symptoms, and family history of cardiometabolic disease, education, lifetime occupation and household income were assessed by questionnaire. Current medications were determined by clinical inventory. RESULTS: 36.5% were pharmacologically managed for a metabolic risk factor or had known diabetes (‘cases'), otherwise were classified as the ‘at-risk' population. In both ‘at-risk' and ‘cases', four major metabolic phenotypes were identified using principal components analysis that explained over 77% of the metabolic variance between people: fat mass/insulinemia (FMI); BP; lipidaemia/lean mass (LLM) and glycaemia (GLY). The BP phenotype was uncorrelated with other phenotypes in ‘cases', whereas all phenotypes were inter-correlated in the ‘at-risk'. Over and above other socioeconomic and behavioural factors, medications were the dominant correlates of all phenotypes in ‘cases' and SDB symptom frequency was most strongly associated with FMI, LLM and GLY phenotypes in the ‘at-risk'. CONCLUSION: Previous research has shown FMI, LLM and GLY phenotypes to be most strongly predictive of diabetes development. Reducing SDB symptom frequency and optimising the duration of sleep may be important concomitant interventions to standard diabetes risk reduction interventions. Prospective studies are required to examine this hypothesis.
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spelling pubmed-33021432012-03-16 Proximal correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum Haren, M T Misan, G Grant, J F Buckley, J D Howe, P R C Taylor, A W Newbury, J McDermott, R A Nutr Diabetes Original Article OBJECTIVE: To examine the social and behavioural correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum. DESIGN: Cross-sectional study of a random population sample. PARTICIPANTS: A total of 718 community-dwelling adults (57% female), aged 18–92 years from a regional South Australian city. MEASUREMENTS: Total body fat and lean mass and abdominal fat mass were assessed by dual energy x-ray absorptiometry. Fasting venous blood was collected in the morning for assessment of glycated haemoglobin, plasma glucose, serum triglycerides, cholesterol lipoproteins and insulin. Seated blood pressure (BP) was measured. Physical activity and smoking, alcohol and diet (96-item food frequency), sleep duration and frequency of sleep disordered breathing (SDB) symptoms, and family history of cardiometabolic disease, education, lifetime occupation and household income were assessed by questionnaire. Current medications were determined by clinical inventory. RESULTS: 36.5% were pharmacologically managed for a metabolic risk factor or had known diabetes (‘cases'), otherwise were classified as the ‘at-risk' population. In both ‘at-risk' and ‘cases', four major metabolic phenotypes were identified using principal components analysis that explained over 77% of the metabolic variance between people: fat mass/insulinemia (FMI); BP; lipidaemia/lean mass (LLM) and glycaemia (GLY). The BP phenotype was uncorrelated with other phenotypes in ‘cases', whereas all phenotypes were inter-correlated in the ‘at-risk'. Over and above other socioeconomic and behavioural factors, medications were the dominant correlates of all phenotypes in ‘cases' and SDB symptom frequency was most strongly associated with FMI, LLM and GLY phenotypes in the ‘at-risk'. CONCLUSION: Previous research has shown FMI, LLM and GLY phenotypes to be most strongly predictive of diabetes development. Reducing SDB symptom frequency and optimising the duration of sleep may be important concomitant interventions to standard diabetes risk reduction interventions. Prospective studies are required to examine this hypothesis. Nature Publishing Group 2012-01 2012-01-16 /pmc/articles/PMC3302143/ /pubmed/23154680 http://dx.doi.org/10.1038/nutd.2011.20 Text en Copyright © 2012 Macmillan Publishers Limited http://creativecommons.org/licenses/by-nc-nd/3.0/ This work is licensed under the Creative Commons Attribution-NonCommercial-No Derivative Works 3.0 Unported License. To view a copy of this license, visit http://creativecommons.org/licenses/by-nc-nd/3.0/
spellingShingle Original Article
Haren, M T
Misan, G
Grant, J F
Buckley, J D
Howe, P R C
Taylor, A W
Newbury, J
McDermott, R A
Proximal correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum
title Proximal correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum
title_full Proximal correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum
title_fullStr Proximal correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum
title_full_unstemmed Proximal correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum
title_short Proximal correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum
title_sort proximal correlates of metabolic phenotypes during ‘at-risk' and ‘case' stages of the metabolic disease continuum
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3302143/
https://www.ncbi.nlm.nih.gov/pubmed/23154680
http://dx.doi.org/10.1038/nutd.2011.20
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