Shi Jianan, He Qiang, Pan Yang, Zhang Xianliang, Li Ming, Chen Si
School of Nursing and Rehabilitation, Cheeloo College of Medicine, Shandong University, Jinan City, Shandong Province, China.
School of Physical Education, Shandong University, Jinan City, Shandong Province, China.
J Am Med Dir Assoc. 2022 Dec;23(12):1985.e1-1985.e7. doi: 10.1016/j.jamda.2022.09.002. Epub 2022 Oct 7.
This article aimed to develop and validate an anthropometric equation based on the least absolute shrinkage and selection operator (LASSO) regression, a machine learning approach, to predict appendicular skeletal muscle mass (ASM) in 60-70-year-old women.
A cross-sectional study.
Community-dwelling women aged 60-70 years.
A total of 1296 community-dwelling women aged 60-70 years were randomly divided into the development or the validation group (1:1 ratio). ASM was evaluated by bioelectrical impedance analysis (BIA) as the reference. Variables including weight, height, body mass index (BMI), sitting height, waist-to-hip ratio (WHR), calf circumference (CC), and 5 summary measures of limb length were incorporated as candidate predictors. LASSO regression was used to select predictors with 10-fold cross-validation, and multiple linear regression was applied to develop the BIA-measured ASM prediction equation. Paired t test and Bland-Altman analysis were used to validate agreement.
Weight, WHR, CC, and sitting height were selected by LASSO regression as independent variables and the equation is ASM = 0.2308 × weight (kg) - 27.5652 × WHR + 8.0179 × CC (m) + 2.3772 × Sitting height (m) + 22.2405 (adjusted R = 0.848, standard error of the estimate = 0.661 kg, P < .001). Bland-Altman analysis showed a high agreement between BIA-measured ASM and predicted ASM that the mean difference between the 2 methods was -0.041 kg, with the 95% limits of agreement of -1.441 to 1.359 kg.
The equation for 60-70-year-old women could provide an available measurement of ASM for communities that cannot equip with BIA, which promotes the early screening of sarcopenia at the community level. Additionally, sitting height could predict ASM effectively, suggesting that maybe it can be used in further studies of muscle mass.
本文旨在开发并验证一种基于最小绝对收缩和选择算子(LASSO)回归(一种机器学习方法)的人体测量学方程,以预测60至70岁女性的 appendicular 骨骼肌质量(ASM)。
一项横断面研究。
60至70岁的社区居住女性。
总共1296名60至70岁的社区居住女性被随机分为开发组或验证组(比例为1:1)。以生物电阻抗分析(BIA)评估的ASM作为参考。纳入的变量包括体重、身高、体重指数(BMI)、坐高、腰臀比(WHR)、小腿围(CC)以及肢体长度的5项汇总测量值作为候选预测因子。使用LASSO回归通过10倍交叉验证来选择预测因子,并应用多元线性回归来建立以BIA测量的ASM预测方程。采用配对t检验和Bland-Altman分析来验证一致性。
LASSO回归选择体重、WHR、CC和坐高作为自变量,方程为ASM = 0.2308×体重(kg) - 27.5652×WHR + 8.0179×CC(m) + 2.3772×坐高(m) + 22.2405(调整后R = 0.848,估计标准误差 = 0.661 kg,P <.001)。Bland-Altman分析显示,BIA测量的ASM与预测的ASM之间具有高度一致性,两种方法之间的平均差异为 - 0.041 kg,95%一致性界限为 - 1.441至1.359 kg。
该针对60至70岁女性的方程可为无法配备BIA的社区提供一种可用的ASM测量方法,这有助于在社区层面促进肌肉减少症的早期筛查。此外,坐高可有效预测ASM,表明其可能可用于肌肉质量的进一步研究。