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首页> 外文期刊>BMC Public Health >Comparison of body mass index (BMI) with the CUN-BAE body adiposity estimator in the prediction of hypertension and type 2 diabetes
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Comparison of body mass index (BMI) with the CUN-BAE body adiposity estimator in the prediction of hypertension and type 2 diabetes

机译:体重指数(BMI)与CUN-BAE体脂估计量在预测高血压和2型糖尿病中的比较

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摘要

Obesity is a world-wide epidemic whose prevalence is underestimated by BMI measurements, but CUN-BAE (Clínica Universidad de Navarra - Body Adiposity Estimator) estimates the percentage of body fat (BF) while incorporating information on sex and age, thus giving a better match. Our aim is to compare the BMI and CUN-BAE in determining the population attributable fraction (AFp) for obesity as a cause of chronic diseases. We calculated the Pearson correlation coefficient between BMI and CUN-BAE, the Kappa index and the internal validity of the BMI. The risks of arterial hypertension (AHT) and diabetes mellitus (DM) and the AFp for obesity were assessed using both the BMI and CUN-BAE. 3888 white subjects were investigated. The overall correlation between BMI and CUN-BAE was R2?=?0.48, which improved when sex and age were taken into account (R2?>?0.90). The Kappa coefficient for diagnosis of obesity was low (28.7?%). The AFp was 50?% higher for DM and double for AHT when CUN-BAE was used. The overall correlation between BMI and CUN-BAE was not good. The AFp of obesity for AHT and DM may be underestimated if assessed using the BMI, as may the prevalence of obesity when estimated from the percentage of BF.
机译:肥胖症是一种全球流行病,其流行率被BMI测量低估了,但是CUN-BAE(纳瓦拉大学医学院-身体肥胖估算者)在结合性别和年龄信息的同时估算了身体脂肪(BF)的百分比,从而提供了一个更好的选择比赛。我们的目的是比较BMI和CUN-BAE,以确定肥胖归因于慢性疾病的人群归因分数(AFp)。我们计算了BMI与CUN-BAE之间的Pearson相关系数,Kappa指数和BMI的内部有效性。使用BMI和CUN-BAE评估了肥胖症的动脉高压(AHT)和糖尿病(DM)以及AFp的风险。调查了3888名白人受试者。 BMI与CUN-BAE的总体相关性为R2≥0.48,如果考虑到性别和年龄,则改善了(R2≥0.90)。诊断肥胖的卡伯系数较低(28.7%)。使用CUN-BAE时,DM的AFp高50%,而AHT的AFp高一倍。 BMI和CUN-BAE之间的总体相关性不好。如果使用BMI进行评估,则对于AHT和DM的肥胖AFp可能会被低估,从BF的百分比进行估算时,肥胖的患病率也可能被低估。

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