Quantifying the Enhancement of Sarcopenic Skeletal Muscle Preservation Through a Hybrid Exercise Program: Randomized Controlled Trial.

IF 5 Q1 GERIATRICS & GERONTOLOGY JMIR Aging Pub Date : 2024-11-15 DOI:10.2196/58175
Hongzhi Guo, Jianwei Cao, Shichun He, Meiqi Wei, Deyu Meng, Ichen Yu, Ziyi Wang, Xinyi Chang, Guang Yang, Ziheng Wang
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Abstract

Background: Sarcopenia is characterized by the loss of skeletal muscle mass and muscle function with increasing age. The skeletal muscle mass of older people who endure sarcopenia may be improved via the practice of strength training and tai chi. However, it remains unclear if the hybridization of strength exercise training and traditional Chinese exercise will have a better effect.

Objective: We designed a strength training and tai chi exercise hybrid program to improve sarcopenia in older people. Moreover, explainable artificial intelligence was used to predict postintervention sarcopenic status and quantify the feature contribution.

Methods: To assess the influence of sarcopenia in the older people group, 93 participated as experimental participants in a 24-week randomized controlled trial and were randomized into 3 intervention groups, namely the tai chi exercise and strength training hybrid group (TCSG; n=33), the strength training group (STG; n=30), and the control group (n=30). Abdominal computed tomography was used to evaluate the skeletal muscle mass at the third lumbar (L3) vertebra. Analysis of demographic characteristics of participants at baseline used 1-way ANOVA and χ2 tests, and repeated-measures ANOVA was used to analyze experimental data. In addition, 10 machine-learning classification models were used to calculate if these participants could reverse the degree of sarcopenia after the intervention.

Results: A significant interaction effect was found in skeletal muscle density at the L3 vertebra, skeletal muscle area at the L3 vertebra (L3 SMA), grip strength, muscle fat infiltration, and relative skeletal muscle mass index (all P values were <.05). Grip strength, relative skeletal muscle mass index, and L3 SMA were significantly improved after the intervention for participants in the TCSG and STG (all P values were <.05). After post hoc tests, we found that participants in the TCSG experienced a better effect on L3 SMA than those in the STG and participants in the control group. The LightGBM classification model had the greatest performance in accuracy (88.4%), recall score (74%), and F1-score (76.1%).

Conclusions: The skeletal muscle area of older adults with sarcopenia may be improved by a hybrid exercise program composed of strength training and tai chi. In addition, we identified that the LightGBM classification model had the best performance to predict the reversion of sarcopenia.

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量化通过混合运动计划增强骨骼肌减少的保存:随机对照试验。
背景:骨骼肌减少症的特征是骨骼肌质量和肌肉功能随着年龄的增长而减少。患有肌肉减少症的老年人的骨骼肌质量可以通过力量训练和太极拳的练习得到改善。然而,力量训练和中国传统运动的混合是否会有更好的效果还不清楚。目的:我们设计了一种力量训练和太极运动的混合方案来改善老年人的肌肉减少症。此外,可解释的人工智能被用于预测干预后肌肉减少状态并量化特征贡献。方法:为评估骨骼肌减少症对老年人的影响,93人作为实验对象进行了为期24周的随机对照试验,随机分为3个干预组,即太极拳运动与力量训练混合组(TCSG);n=33),力量训练组(STG;N =30),对照组(N =30)。腹部计算机断层扫描用于评估第三腰椎(L3)的骨骼肌质量。基线时受试者人口学特征分析采用单因素方差分析和χ2检验,实验数据分析采用重复测量方差分析。此外,使用10个机器学习分类模型来计算这些参与者在干预后是否可以逆转肌肉减少症的程度。结果:三椎骨骼肌密度、三椎骨骼肌面积(L3 SMA)、握力、肌肉脂肪浸润、相对骨骼肌质量指数(P值均为)存在显著的交互作用。结论:力量训练与太极拳混合运动方案可改善老年骨骼肌减少症患者的骨骼肌面积。此外,我们发现LightGBM分类模型在预测肌肉减少症的逆转方面具有最佳性能。
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来源期刊
JMIR Aging
JMIR Aging Social Sciences-Health (social science)
CiteScore
6.50
自引率
4.10%
发文量
71
审稿时长
12 weeks
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