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基于社区的方法,使用身体围度预测台湾社区居住老年人的瘦体重和四肢骨骼肌量。

A community-based approach to lean body mass and appendicular skeletal muscle mass prediction using body circumferences in community-dwelling elderly in Taiwan.

机构信息

Graduate Institute of Sports Science, National Taiwan Sport University, Kueishan, Taoyuan, Taiwan. Email:

Department of Physical Therapy and Assistive Technology, National Yang Ming University, Taipei, Taiwan.

出版信息

Asia Pac J Clin Nutr. 2020;29(1):94-100. doi: 10.6133/apjcn.202003_29(1).0013.

DOI:10.6133/apjcn.202003_29(1).0013
PMID:32229447
Abstract

BACKGROUND AND OBJECTIVES

To develop and validate the prediction equations for lean body mass (LBM) and appendicular skeletal muscle mass (ASM) using body circumference measurements of community-dwelling adults older than 50 years old.

METHODS AND STUDY DESIGN

Four hundred and ninety-eight community-dwelling adults older than 50 years old were recruited for this study. Participants were randomly assigned to a development group (DG, n=332) and validation group (VG, n=166). Lean body mass and ASM were assessed using dualenergy x-ray absorptiometry along with the anthropometric parameters. The Pearson correlation coefficient was used to examine the associations between ASM, LBM and anthropometric parameters in the DG. Prediction equations for LBM and ASM were established from DG data using multiple regression analyses. Paired t-test and Bland-Altman test were used to validate the equations in the VG.

RESULTS

Forearm circumference had the highest correlation with LBM and ASM. The developed prediction models were: LBM (kg) = 27.479 + 0.726 * weight (kg) - 3.383 * gender (male = 1, female = 2) - 0.672 * BMI + 0.514 * forearm circumference (cm) - 0.245 * hip circumference (cm)(r2=0.90); ASM (kg) = -4.287 + 0.202 * weight (kg) - 0.166 * hip circumference (cm) - 1.484 * gender (male = 1, female = 2) + 0.173 * calf circumference (cm) + 0.096 * height + 0.243 * forearm circumference (cm)(r2=0.85).

CONCLUSIONS

Prediction equations using only a measuring tape provide accurate, inexpensive, practical methods to assess LBM and ASM in Asians older than 50 years old.

摘要

背景与目的

本研究旨在建立并验证适用于 50 岁以上社区居民的基于体围测量的去脂体重(LBM)和四肢骨骼肌质量(ASM)预测方程。

方法和研究设计

本研究共纳入 498 名 50 岁以上的社区居民,他们被随机分配到发展组(DG,n=332)和验证组(VG,n=166)。采用双能 X 射线吸收法(DXA)和人体测量学参数评估 LBM 和 ASM。DG 中使用 Pearson 相关系数来评估 ASM、LBM 与人体测量学参数之间的相关性。采用多元回归分析从 DG 数据中建立 LBM 和 ASM 的预测方程。在 VG 中,使用配对 t 检验和 Bland-Altman 检验来验证方程。

结果

前臂围与 LBM 和 ASM 的相关性最高。得出的预测模型为:LBM(kg)=27.479+0.726体重(kg)-3.383性别(男=1,女=2)-0.672BMI+0.514前臂围(cm)-0.245臀围(cm)(r2=0.90);ASM(kg)=-4.287+0.202体重(kg)-0.166臀围(cm)-1.484性别(男=1,女=2)+0.173小腿围(cm)+0.096身高+0.243*前臂围(cm)(r2=0.85)。

结论

仅使用卷尺的预测方程为评估 50 岁以上亚洲人的 LBM 和 ASM 提供了准确、经济、实用的方法。

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