Institute of Exercise Physiology and Wellness, University of Central Florida, 12494 University Boulevard, Orlando, FL 32816, United States.
Exp Gerontol. 2013 Dec;48(12):1479-88. doi: 10.1016/j.exger.2013.10.005. Epub 2013 Oct 16.
The purpose of this investigation was to determine body composition classification using field-based testing measurements in healthy elderly men and women. The use of isoperformance curves is presented as a method for this determination. Baseline values from 107 healthy Caucasian men and women, over the age of 65years old, who participated in a separate longitudinal study, were used for this investigation. Field-based measurements of age, height, weight, body mass index (BMI), and handgrip strength were recorded on an individual basis. Relative skeletal muscle index (RSMI) and body fat percentage (FAT%) were determined by dual-energy X-ray absorptiometry (DXA) for each participant. Sarcopenia cut-off values for RSMI of 7.26kg·m(-2) for men and 5.45kg·m(-2) for women and elderly obesity cut-off values for FAT% of 27% for men and 38% for women were used. Individuals above the RSMI cut-off and below the FAT% cut-off were classified in the normal phenotype category, while individuals below the RSMI cut-off and above the FAT% cut-off were classified in the sarcopenic-obese phenotype category. Prediction equations for RSMI and FAT% from sex, BMI, and handgrip strength values were developed using multiple regression analysis. The prediction equations were validated using double cross-validation. The final regression equation developed to predict FAT% from sex, BMI, and handgrip strength resulted in a strong relationship (adjusted R(2)=0.741) to DXA values with a low standard error of the estimate (SEE=3.994%). The final regression equation developed to predict RSMI from the field-based testing measures also resulted in a strong relationship (adjusted R(2)=0.841) to DXA values with a low standard error of the estimate (SEE=0.544kg·m(-2)). Isoperformance curves were developed from the relationship between BMI and handgrip strength for men and women with the aforementioned clinical phenotype classification criteria. These visual representations were used to aid in the classification and evaluation of sarcopenia, obesity, and sarcopenic-obesity in elderly individuals. Future research should replicate the current findings with an increased sample size and the development of tailored interventions for each body composition category.
本研究旨在通过对健康老年人进行现场测试测量,确定身体成分分类。本文提出了使用等性能曲线的方法。本研究使用了来自年龄在 65 岁以上、参加另一项纵向研究的 107 名健康白种人男性和女性的基线值。对每位参与者分别记录了现场测量的年龄、身高、体重、体重指数(BMI)和握力。每位参与者的相对骨骼肌指数(RSMI)和体脂百分比(FAT%)通过双能 X 射线吸收法(DXA)确定。男性 RSMI 截断值为 7.26kg·m(-2),女性 RSMI 截断值为 5.45kg·m(-2),男性老年肥胖 FAT%截断值为 27%,女性 FAT%截断值为 38%。高于 RSMI 截断值且低于 FAT% 截断值的个体被归类为正常表型,而低于 RSMI 截断值且高于 FAT% 截断值的个体被归类为肌少症肥胖表型。使用多元回归分析为男性、BMI 和握力值开发了 RSMI 和 FAT%的预测方程。使用双交叉验证对预测方程进行了验证。从性别、BMI 和握力强度开发的最终回归方程来预测 FAT%与 DXA 值有很强的相关性(调整 R(2)=0.741),且估计值的标准误差较低(SEE=3.994%)。从现场测试测量开发的最终回归方程预测 RSMI 与 DXA 值也有很强的相关性(调整 R(2)=0.841),且估计值的标准误差较低(SEE=0.544kg·m(-2))。为男性和女性制定了基于 BMI 和握力的等性能曲线,同时采用上述临床表型分类标准。这些直观的表示形式可用于辅助老年人肌少症、肥胖症和肌少症肥胖症的分类和评估。未来的研究应该使用更大的样本量复制当前的发现,并为每个身体成分类别制定针对性的干预措施。