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New Measure of Insulin Sensitivity Predicts Cardiovascular Disease Better than HOMA Estimated Insulin Resistance

CONTEXT: Accurate assessment of insulin sensitivity may better identify individuals at increased risk of cardio-metabolic diseases. OBJECTIVES: To examine whether a combination of anthropometric, biochemical and imaging measures can better estimate insulin sensitivity index (ISI) and provide improve...

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Autores principales: Venkataraman, Kavita, Khoo, Chin Meng, Leow, Melvin K. S., Khoo, Eric Y. H., Isaac, Anburaj V., Zagorodnov, Vitali, Sadananthan, Suresh A., Velan, Sendhil S., Chong, Yap Seng, Gluckman, Peter, Lee, Jeannette, Salim, Agus, Tai, E. Shyong, Seng Lee, Yung
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3787028/
https://www.ncbi.nlm.nih.gov/pubmed/24098646
http://dx.doi.org/10.1371/journal.pone.0074410
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author Venkataraman, Kavita
Khoo, Chin Meng
Leow, Melvin K. S.
Khoo, Eric Y. H.
Isaac, Anburaj V.
Zagorodnov, Vitali
Sadananthan, Suresh A.
Velan, Sendhil S.
Chong, Yap Seng
Gluckman, Peter
Lee, Jeannette
Salim, Agus
Tai, E. Shyong
Seng Lee, Yung
author_facet Venkataraman, Kavita
Khoo, Chin Meng
Leow, Melvin K. S.
Khoo, Eric Y. H.
Isaac, Anburaj V.
Zagorodnov, Vitali
Sadananthan, Suresh A.
Velan, Sendhil S.
Chong, Yap Seng
Gluckman, Peter
Lee, Jeannette
Salim, Agus
Tai, E. Shyong
Seng Lee, Yung
author_sort Venkataraman, Kavita
collection PubMed
description CONTEXT: Accurate assessment of insulin sensitivity may better identify individuals at increased risk of cardio-metabolic diseases. OBJECTIVES: To examine whether a combination of anthropometric, biochemical and imaging measures can better estimate insulin sensitivity index (ISI) and provide improved prediction of cardio-metabolic risk, in comparison to HOMA-IR. DESIGN AND PARTICIPANTS: Healthy male volunteers (96 Chinese, 80 Malay, 77 Indian), 21 to 40 years, body mass index 18−30 kg/m(2). Predicted ISI (ISI-cal) was generated using 45 randomly selected Chinese through stepwise multiple linear regression, and validated in the rest using non-parametric correlation (Kendall's tau τ). In an independent longitudinal cohort, ISI-cal and HOMA-IR were compared for prediction of diabetes and cardiovascular disease (CVD), using ROC curves. SETTING: The study was conducted in a university academic medical centre. OUTCOME MEASURES: ISI measured by hyperinsulinemic euglycemic glucose clamp, along with anthropometric measurements, biochemical assessment and imaging; incident diabetes and CVD. RESULTS: A combination of fasting insulin, serum triglycerides and waist-to-hip ratio (WHR) provided the best estimate of clamp-derived ISI (adjusted R(2) 0.58 versus 0.32 HOMA-IR). In an independent cohort, ROC areas under the curve were 0.77±0.02 ISI-cal versus 0.76±0.02 HOMA-IR (p>0.05) for incident diabetes, and 0.74±0.03 ISI-cal versus 0.61±0.03 HOMA-IR (p<0.001) for incident CVD. ISI-cal also had greater sensitivity than defined metabolic syndrome in predicting CVD, with a four-fold increase in the risk of CVD independent of metabolic syndrome. CONCLUSIONS: Triglycerides and WHR, combined with fasting insulin levels, provide a better estimate of current insulin resistance state and improved identification of individuals with future risk of CVD, compared to HOMA-IR. This may be useful for estimating insulin sensitivity and cardio-metabolic risk in clinical and epidemiological settings.
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spelling pubmed-37870282013-10-04 New Measure of Insulin Sensitivity Predicts Cardiovascular Disease Better than HOMA Estimated Insulin Resistance Venkataraman, Kavita Khoo, Chin Meng Leow, Melvin K. S. Khoo, Eric Y. H. Isaac, Anburaj V. Zagorodnov, Vitali Sadananthan, Suresh A. Velan, Sendhil S. Chong, Yap Seng Gluckman, Peter Lee, Jeannette Salim, Agus Tai, E. Shyong Seng Lee, Yung PLoS One Research Article CONTEXT: Accurate assessment of insulin sensitivity may better identify individuals at increased risk of cardio-metabolic diseases. OBJECTIVES: To examine whether a combination of anthropometric, biochemical and imaging measures can better estimate insulin sensitivity index (ISI) and provide improved prediction of cardio-metabolic risk, in comparison to HOMA-IR. DESIGN AND PARTICIPANTS: Healthy male volunteers (96 Chinese, 80 Malay, 77 Indian), 21 to 40 years, body mass index 18−30 kg/m(2). Predicted ISI (ISI-cal) was generated using 45 randomly selected Chinese through stepwise multiple linear regression, and validated in the rest using non-parametric correlation (Kendall's tau τ). In an independent longitudinal cohort, ISI-cal and HOMA-IR were compared for prediction of diabetes and cardiovascular disease (CVD), using ROC curves. SETTING: The study was conducted in a university academic medical centre. OUTCOME MEASURES: ISI measured by hyperinsulinemic euglycemic glucose clamp, along with anthropometric measurements, biochemical assessment and imaging; incident diabetes and CVD. RESULTS: A combination of fasting insulin, serum triglycerides and waist-to-hip ratio (WHR) provided the best estimate of clamp-derived ISI (adjusted R(2) 0.58 versus 0.32 HOMA-IR). In an independent cohort, ROC areas under the curve were 0.77±0.02 ISI-cal versus 0.76±0.02 HOMA-IR (p>0.05) for incident diabetes, and 0.74±0.03 ISI-cal versus 0.61±0.03 HOMA-IR (p<0.001) for incident CVD. ISI-cal also had greater sensitivity than defined metabolic syndrome in predicting CVD, with a four-fold increase in the risk of CVD independent of metabolic syndrome. CONCLUSIONS: Triglycerides and WHR, combined with fasting insulin levels, provide a better estimate of current insulin resistance state and improved identification of individuals with future risk of CVD, compared to HOMA-IR. This may be useful for estimating insulin sensitivity and cardio-metabolic risk in clinical and epidemiological settings. Public Library of Science 2013-09-30 /pmc/articles/PMC3787028/ /pubmed/24098646 http://dx.doi.org/10.1371/journal.pone.0074410 Text en © 2013 Venkataraman et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Venkataraman, Kavita
Khoo, Chin Meng
Leow, Melvin K. S.
Khoo, Eric Y. H.
Isaac, Anburaj V.
Zagorodnov, Vitali
Sadananthan, Suresh A.
Velan, Sendhil S.
Chong, Yap Seng
Gluckman, Peter
Lee, Jeannette
Salim, Agus
Tai, E. Shyong
Seng Lee, Yung
New Measure of Insulin Sensitivity Predicts Cardiovascular Disease Better than HOMA Estimated Insulin Resistance
title New Measure of Insulin Sensitivity Predicts Cardiovascular Disease Better than HOMA Estimated Insulin Resistance
title_full New Measure of Insulin Sensitivity Predicts Cardiovascular Disease Better than HOMA Estimated Insulin Resistance
title_fullStr New Measure of Insulin Sensitivity Predicts Cardiovascular Disease Better than HOMA Estimated Insulin Resistance
title_full_unstemmed New Measure of Insulin Sensitivity Predicts Cardiovascular Disease Better than HOMA Estimated Insulin Resistance
title_short New Measure of Insulin Sensitivity Predicts Cardiovascular Disease Better than HOMA Estimated Insulin Resistance
title_sort new measure of insulin sensitivity predicts cardiovascular disease better than homa estimated insulin resistance
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3787028/
https://www.ncbi.nlm.nih.gov/pubmed/24098646
http://dx.doi.org/10.1371/journal.pone.0074410
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