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Accurate method to estimate insulin resistance from multiple regression models using data of metabolic syndrome and oral glucose tolerance test

AIMS/INTRODUCTION: How to measure insulin resistance (IR) accurately and conveniently is a critical issue for both clinical practice and research. In the present study, we tried to modify the β‐cell function, insulin sensitivity, and glucose tolerance test (BIGTT) in patients with normal glucose tol...

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Autores principales: Wu, Chung‐Ze, Lin, Jiunn‐Diann, Hsia, Te‐Lin, Hsu, Chun‐Hsien, Hsieh, Chang‐Hsun, Chang, Jin‐Biou, Chen, Jin‐Shuen, Pei, Chun, Pei, Dee, Chen, Yen‐Lin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wiley-Blackwell 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4020333/
https://www.ncbi.nlm.nih.gov/pubmed/24843777
http://dx.doi.org/10.1111/jdi.12155
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author Wu, Chung‐Ze
Lin, Jiunn‐Diann
Hsia, Te‐Lin
Hsu, Chun‐Hsien
Hsieh, Chang‐Hsun
Chang, Jin‐Biou
Chen, Jin‐Shuen
Pei, Chun
Pei, Dee
Chen, Yen‐Lin
author_facet Wu, Chung‐Ze
Lin, Jiunn‐Diann
Hsia, Te‐Lin
Hsu, Chun‐Hsien
Hsieh, Chang‐Hsun
Chang, Jin‐Biou
Chen, Jin‐Shuen
Pei, Chun
Pei, Dee
Chen, Yen‐Lin
author_sort Wu, Chung‐Ze
collection PubMed
description AIMS/INTRODUCTION: How to measure insulin resistance (IR) accurately and conveniently is a critical issue for both clinical practice and research. In the present study, we tried to modify the β‐cell function, insulin sensitivity, and glucose tolerance test (BIGTT) in patients with normal glucose tolerance (NGT) and abnormal glucose tolerance (AGT) by oral glucose tolerance test (OGTT) and metabolic syndrome (MetS) components. MATERIALS AND METHODS: There were 327 participants enrolled and divided into NGT or AGT. Data from 75% of the participants were used to build the models, and the remaining 25% were used for external validation. Steady‐state plasma glucose (SSPG) concentration derived from the insulin suppression test was regarded as the standard measurement for IR. Five models were built from multiple regression: model 1 (MetS model with sex, age and MetS components); model 2 (simple OGTT model with sex, age, plasma glucose, and insulin concentrations at 0 and 120 min during OGTT); model 3 (full OGTT model with sex, age, and plasma glucose and insulin concentrations at 0, 30, 60, 90, 120, and 180 min during OGTT); model 4 (simple combined model): model 1 and model 2; and model 5 (full model): model 1 and 3. RESULTS: In general, our models had higher r(2) compared with surrogates derived from OGTT, such as homeostasis model assessment‐insulin resistance and quantitative insulin sensitivity check index. Among them, model 5 had the highest r(2) (0.505 in NGT, 0.556 in AGT, respectively). CONCLUSIONS: Our modified BIGTT models proved to be accurate and easy methods for estimating IR, and can be used in clinical practice and research.
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spelling pubmed-40203332014-05-19 Accurate method to estimate insulin resistance from multiple regression models using data of metabolic syndrome and oral glucose tolerance test Wu, Chung‐Ze Lin, Jiunn‐Diann Hsia, Te‐Lin Hsu, Chun‐Hsien Hsieh, Chang‐Hsun Chang, Jin‐Biou Chen, Jin‐Shuen Pei, Chun Pei, Dee Chen, Yen‐Lin J Diabetes Investig Articles AIMS/INTRODUCTION: How to measure insulin resistance (IR) accurately and conveniently is a critical issue for both clinical practice and research. In the present study, we tried to modify the β‐cell function, insulin sensitivity, and glucose tolerance test (BIGTT) in patients with normal glucose tolerance (NGT) and abnormal glucose tolerance (AGT) by oral glucose tolerance test (OGTT) and metabolic syndrome (MetS) components. MATERIALS AND METHODS: There were 327 participants enrolled and divided into NGT or AGT. Data from 75% of the participants were used to build the models, and the remaining 25% were used for external validation. Steady‐state plasma glucose (SSPG) concentration derived from the insulin suppression test was regarded as the standard measurement for IR. Five models were built from multiple regression: model 1 (MetS model with sex, age and MetS components); model 2 (simple OGTT model with sex, age, plasma glucose, and insulin concentrations at 0 and 120 min during OGTT); model 3 (full OGTT model with sex, age, and plasma glucose and insulin concentrations at 0, 30, 60, 90, 120, and 180 min during OGTT); model 4 (simple combined model): model 1 and model 2; and model 5 (full model): model 1 and 3. RESULTS: In general, our models had higher r(2) compared with surrogates derived from OGTT, such as homeostasis model assessment‐insulin resistance and quantitative insulin sensitivity check index. Among them, model 5 had the highest r(2) (0.505 in NGT, 0.556 in AGT, respectively). CONCLUSIONS: Our modified BIGTT models proved to be accurate and easy methods for estimating IR, and can be used in clinical practice and research. Wiley-Blackwell 2013-10-30 2014-05-04 /pmc/articles/PMC4020333/ /pubmed/24843777 http://dx.doi.org/10.1111/jdi.12155 Text en Copyright © 2014 Asian Association for the Study of Diabetes and Wiley Publishing Asia Pty Ltd This is an open access article under the terms of the Creative Commons Attribution‐NonCommercial‐NoDerivs (http://creativecommons.org/licenses/by-nc-nd/3.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Articles
Wu, Chung‐Ze
Lin, Jiunn‐Diann
Hsia, Te‐Lin
Hsu, Chun‐Hsien
Hsieh, Chang‐Hsun
Chang, Jin‐Biou
Chen, Jin‐Shuen
Pei, Chun
Pei, Dee
Chen, Yen‐Lin
Accurate method to estimate insulin resistance from multiple regression models using data of metabolic syndrome and oral glucose tolerance test
title Accurate method to estimate insulin resistance from multiple regression models using data of metabolic syndrome and oral glucose tolerance test
title_full Accurate method to estimate insulin resistance from multiple regression models using data of metabolic syndrome and oral glucose tolerance test
title_fullStr Accurate method to estimate insulin resistance from multiple regression models using data of metabolic syndrome and oral glucose tolerance test
title_full_unstemmed Accurate method to estimate insulin resistance from multiple regression models using data of metabolic syndrome and oral glucose tolerance test
title_short Accurate method to estimate insulin resistance from multiple regression models using data of metabolic syndrome and oral glucose tolerance test
title_sort accurate method to estimate insulin resistance from multiple regression models using data of metabolic syndrome and oral glucose tolerance test
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4020333/
https://www.ncbi.nlm.nih.gov/pubmed/24843777
http://dx.doi.org/10.1111/jdi.12155
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