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体围:来自新几何模型的临床意义。

Body circumferences: clinical implications emerging from a new geometric model.

机构信息

Merck & Company, Rahway, NJ, USA.

出版信息

Nutr Metab (Lond). 2008 Oct 6;5:24. doi: 10.1186/1743-7075-5-24.

Abstract

BACKGROUND

Body volume expands with the positive energy balance associated with the development of adult human obesity and this "growth" is captured by two widely used clinical metrics, waist circumference and body mass index (BMI). Empirical correlations between circumferences, BMI, and related body compartments are frequently reported but fail to provide an important common conceptual foundation that can be related to key clinical observations. A two-phase program was designed to fill this important gap: a geometric model linking body volume with circumferences and BMI was developed and validated in cross-sectional cohorts; and the model was applied to the evaluation of longitudinally monitored subjects during periods of voluntary weight loss. Concepts emerging from the developed model were then used to examine the relations between the evaluated clinical measures and body composition.

METHODS

Two groups of healthy adults (n = 494 and 1499) were included in the cross-sectional model development/testing phase and subjects in two previous weight loss studies were included in the longitudinal model evaluation phase. Five circumferences (arm, waist, hip, thigh, and calf; average of sum, C), height (H), BMI, body volume (V; underwater weighing), and the volumes of major body compartments (whole-body magnetic resonance imaging) were measured.

RESULTS

The evaluation of a humanoid geometric model based a cylinder confirmed that V derived from C and H was highly correlated with measured V [R2 both males and females, 0.97; p < 0.001). Developed allometric models confirmed model predictions that C and BMI (represented as V/H) are directly linked as, C = (V/H)0.5. The scaling of individual circumferences to V/H varied, with waist the highest (V/H0.6) and calf the lowest (V/H0.3), indicating that the largest and smallest between-subject "growth" with greater body volume occurs in the abdominal area and lower extremities, respectively. A stepwise linear regression model including all five circumferences2 showed that each contributed independently to V/H. These cross-sectional observations were generally confirmed by analysis of the two longitudinal weight loss studies. The scaling of circumference ratios (e.g., waist/hip) to V/H conformed to models developed on the scaling of individual circumferences to V/H, indicating their relations to BMI are predictable a priori. Waist, hip, and arm/calf circumferences had the highest associations with whole-body visceral adipose tissue, subcutaneous adipose tissue, and skeletal muscle volumes, respectively.

CONCLUSION

These observations provide a simple geometric model relating circumferences with body size and composition, introduce a conceptual foundation explaining previous empirical observations, and reveal new clinical insights.

摘要

背景

人体体积会随着与成人肥胖发展相关的正能平衡而膨胀,而这一“生长”可以通过两个广泛使用的临床指标来捕捉,即腰围和体重指数(BMI)。周长、BMI 和相关身体腔室之间的经验相关性经常被报道,但未能提供一个重要的共同概念基础,使其与关键的临床观察相关。为此设计了一个两阶段的方案来填补这一重要空白:开发和验证了一个将体体积与周长和 BMI 联系起来的几何模型;并将该模型应用于自愿减肥期间对纵向监测对象的评估。从开发的模型中出现的概念随后用于检查评估的临床测量值与身体成分之间的关系。

方法

将两组健康成年人(n=494 和 1499)纳入横断面模型开发/测试阶段,并将两项先前的减肥研究中的受试者纳入纵向模型评估阶段。测量了五个周长(手臂、腰围、臀围、大腿和小腿;平均值,C)、身高(H)、BMI、体体积(水下称重,V)和主要身体腔室的体积(全身磁共振成像)。

结果

基于圆柱体的人形几何模型的评估证实,由 C 和 H 得出的 V 与实测 V 高度相关[男性和女性的 R2 均为 0.97;p<0.001)。开发的比例模型证实了模型预测,即 C 和 BMI(表示为 V/H)直接相关,C=(V/H)0.5。个体周长与 V/H 的比例变化,腰围最高(V/H0.6),小腿最低(V/H0.3),这表明随着体体积的增加,腹部和下肢之间的个体“生长”最大和最小。包括所有五个周长的逐步线性回归模型显示,每个周长都独立地对 V/H 有贡献。这两个纵向减肥研究的分析基本上证实了这些横断面观察结果。周长比(如腰围/臀围)与 V/H 的比例符合个体周长与 V/H 的比例模型,表明它们与 BMI 的关系可以预先预测。腰围、臀围和臂/小腿围与全身内脏脂肪组织、皮下脂肪组织和骨骼肌体积的相关性最高。

结论

这些观察结果提供了一个将周长与身体大小和成分联系起来的简单几何模型,引入了一个解释以前经验观察的概念基础,并揭示了新的临床见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6af1/2569934/dd37fd5be7e4/1743-7075-5-24-1.jpg

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