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通过双能X线吸收法测量身体成分可改善能量消耗的预测。

Measurements of body composition by dual-energy X-ray absorptiometry improve prediction of energy expenditure.

作者信息

Kistorp C N, Toubro S, Astrup A, Svendsen O L

机构信息

Center for Clinical and Basic Research, Ballerup, Denmark.

出版信息

Ann N Y Acad Sci. 2000 May;904:79-84. doi: 10.1111/j.1749-6632.2000.tb06424.x.

Abstract

The prediction of energy expenditure by dual-energy X-ray absorptiometry (DXA) and bioimpedance analysis (BIA) was assessed in 35 healthy individuals of both sexes, with a mean body mass index (BMI) of 23.8 kg/m2 (range 18-33.8), and mean age of 30 years (22-40). Energy expenditure (EE) was measured under standard conditions in a respiration chamber, the total and regional body composition by DXA, and total body composition by BIA. When body composition was measured by BIA, 88.5% of the variation in 24-h EE was explained by lean body mass (LBM); this figure was increased by DXA, where total lean tissue mass (LTM) and total fat tissue mass (FTM) could account for 91.5% of the variation. Also, the prediction of resting energy expenditure (REE) was improved by DXA, from 88.1% to 89.8% (LBM vs. LTM, FTM). Measurements of regional body composition showed that trunk LTM was significantly superior as a predictor, especially of REE and sleeping EE (EE sleep), compared to the peripheral LTM; thus, the predictions of REE were 83% vs. 87% (peripheral vs. trunk), respectively; and the predictions of EE sleep were 83% vs. 89% (peripheral vs. trunk), respectively. Therefore, body composition measurements by DXA improved the prediction of EE. Trunk LTM was a superior predictor, especially of REE and EE sleep, compared to peripheral LTM. In conclusion, the present results suggest that measuring total and regional body composition by DXA can somewhat improve the prediction of EE.

摘要

在35名平均体重指数(BMI)为23.8kg/m²(范围18 - 33.8)、平均年龄30岁(22 - 40岁)的健康男女个体中,评估了双能X线吸收法(DXA)和生物电阻抗分析(BIA)对能量消耗的预测情况。在呼吸室内标准条件下测量能量消耗(EE),通过DXA测量全身和局部身体成分,通过BIA测量全身身体成分。当通过BIA测量身体成分时,24小时EE变化的88.5%可由去脂体重(LBM)解释;DXA可提高该比例,其中总去脂组织质量(LTM)和总脂肪组织质量(FTM)可解释91.5%的变化。此外,DXA改善了静息能量消耗(REE)的预测,从88.1%提高到89.8%(LBM与LTM、FTM对比)。局部身体成分测量表明,与外周LTM相比,躯干LTM作为预测指标明显更优,尤其是对REE和睡眠EE(EE睡眠);因此,REE的预测分别为83%和87%(外周与躯干);EE睡眠的预测分别为83%和89%(外周与躯干)。所以,通过DXA测量身体成分改善了EE的预测。与外周LTM相比,躯干LTM是更优的预测指标,尤其是对REE和EE睡眠。总之,目前的结果表明,通过DXA测量全身和局部身体成分在一定程度上可改善EE的预测。

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