Kim Minjun, Park Soo Hyun, Lee Inhwan
Research Institute of Future Convergence, Changwon National University, Changwon, Republic of Korea.
Department of Sports Science, Korea Institute of Sport Science, Seoul, Republic of Korea.
Phys Act Nutr. 2025 Jun;29(2):41-48. doi: 10.20463/pan.2025.0013. Epub 2025 Jun 30.
The objective of this study was to develop a predictive model to estimate the number of risk factors associated with metabolic syndrome based on physical activity and fitness in individuals with physical disabilities.
A total of 134 adults aged ≥ 30 years with severe physical disabilities diagnosed over 1 year were enrolled in this study. Standardized procedures were used to collect anthropometric data, blood samples, and physical fitness measurements. Participants were randomly assigned to the derivation (70%) and validation (30%) sets. The derivation set was subjected to a stepwise multiple regression analysis to develop a predictive equation. Criteria and cross-validity were assessed using Bland-Altman plots, and the model's ability to identify metabolic syndrome was evaluated using receiver operating characteristic (ROC) analysis.
The final model included neck circumference, the number of medications, leisure-time physical activity, and muscular strength, with an R² value of 0.397 and a standard error of the estimate of 1.019. The predicted values closely match the measured values for both sets. ROC analysis indicated good to excellent classification performance (derivation set: area under the curve [AUC], 0.867; 95% confidence interval [CI], 0.796-0.937; p < 0.001; validation set: AUC, 0.765; 95% CI, 0.617-0.913; p = 0.009).
A regression model based on physical activity and fitness could provide a simple, non-invasive approach to estimating the risk of metabolic syndrome in individuals with physical disabilities.
本研究的目的是开发一种预测模型,以根据身体残疾个体的身体活动和健康状况来估计与代谢综合征相关的风险因素数量。
本研究纳入了134名年龄≥30岁、患有严重身体残疾且诊断超过1年的成年人。使用标准化程序收集人体测量数据、血液样本和身体素质测量数据。参与者被随机分配到推导组(70%)和验证组(30%)。对推导组进行逐步多元回归分析以建立预测方程。使用Bland-Altman图评估标准和交叉效度,并使用受试者工作特征(ROC)分析评估模型识别代谢综合征的能力。
最终模型包括颈围、用药数量、休闲时间身体活动和肌肉力量,R²值为0.397,估计标准误差为1.019。两组的预测值与测量值密切匹配。ROC分析表明分类性能良好至优秀(推导组:曲线下面积[AUC],0.867;95%置信区间[CI],0.796 - 0.937;p < 0.001;验证组:AUC,0.765;95%CI,0.617 - 0.913;p = 0.009)。
基于身体活动和健康状况的回归模型可为估计身体残疾个体代谢综合征风险提供一种简单、非侵入性的方法。