[新旧人体测量指标作为青少年胰岛素抵抗的预测指标]。

Isabella Barbosa Pereira Carneiro, Helena Alves de Carvalho Sampaio, Antônio Augusto Ferreira Carioca, Francisco José Maia Pinto, Nágila Raquel Teixeira Damasceno
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引用次数: 8

摘要

目的:尽管胰岛素抵抗(IR)在慢性疾病的发展中具有重要意义,但其诊断仍具有侵袭性。因此,有必要在临床实践中开发替代方法来预测IR,而人体测量指标是一个很好的替代方法。鉴于此,本研究的目的是评估这些指标与HOMA-IR(胰岛素抵抗稳态模型评估)的关系。材料与方法:收集148名青少年的体重、身高和腰围资料。通过这些指数,我们计算了身体质量指数(BMI)、倒体重指数(iBMI)、腰高比(WHtR)和圆锥度指数(C指数)。我们还收集了用于HOMA-IR计算的身体成分(体脂百分比- %BF)、电阻抗和生化数据(空腹血糖和胰岛素水平)的数据。采用的HOMA-IR截止值为2.39±1.93。统计分析采用Spearman相关分析、多元线性回归模型和ROC (Receiver Operating Characteristic)曲线构建,采用95% CI。考虑到结果:所有人体测量指标与HOMA-IR呈统计学正相关。ROC曲线显示,WC、WHtR、C指数依次预测IR最有效。结论:在研究的指标中,与中心脂肪堆积相关的指标似乎最适合预测IR。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Old and new anthropometric indices as insulin resistance predictors in adolescents].

Objective: Despite the importance of insulin resistance (IR) on chronic diseases development, its diagnosis remains invasive. Thus, it's necessary to develop alternative methods to predict IR on clinical practice, and the anthropometric indices are a good alternative to it. Given that, this study's purpose is to evaluate these indices behavior in relation to HOMA-IR (Homeostasis Model Assessment of Insulin Resistance).

Materials and methods: We collected weight, height and waist circumference from 148 adolescents. Through these indices, we calculated the body mass index (BMI), inverted body mass index (iBMI), waist-to-height ratio (WHtR) and conicity index (C index). We also collected data from body composition (body fat percentage - %BF), through electric impedance, and biochemical data (fasting glucose and insulin levels) employed on the HOMA-IR calculation. The HOMA-IR cutoff adopted was of 2.39±1.93. The statistical analysis involved the Spearman correlation analysis, multiple linear regression models and ROC (Receiver Operating Characteristic) curves construction, using 95% CI. We used the statistic pack SPSS v.18, considering p<0.05 as the significance level.

Results: All anthropometric indices were statistically and positively correlated to HOMA-IR. The ROC curve showed that WC, WHtR and C index, in this order, were the most efficient to predict IR.

Conclusion: Among the indicators studied, those related to central fat accumulation seem the most suitable for predicting IR.

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