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小学学龄儿童静态姿势负荷的预测因素:弹性网络法与多元回归法比较

Predictors of Static Postural Loading in Primary-School-Aged Children: Comparing Elastic Net and Multiple Regression Methods.

作者信息

Mohseni Bandpei Mohammad Ali, Osqueizadeh Reza, Goudarzi Hamidreza, Rahmani Nahid, Ebadi Abbas

机构信息

Neuromusculoskeletal Rehabilitation Research Center, University of Social Welfare and Rehabilitation Sciences, Tehran 1985713871, Iran.

Pediatric Neurorehabilitation Research Center, University of Social Welfare and Rehabilitation Sciences, Tehran 1985713871, Iran.

出版信息

Children (Basel). 2025 Jun 8;12(6):744. doi: 10.3390/children12060744.

Abstract

Adverse effects of a sedentary lifestyle on an individual's overall health are inevitable. With reference to primary-school-aged children, the establishment of effective postural hygiene is critical as it not only promotes optimal musculoskeletal development but also significantly influences their long-term well-being and productivity. This study aimed to develop and internally validate a regularized regression model to predict static postural loading (SPL) in primary school children. The outcome and predictors of SPL were shortlisted through a systematic review of the literature and expert panels. Data were derived from 258 primary school children. We developed regularized elastic net (EN) and used multiple linear regression (MLR) as a reference. Both models were fitted through five-fold cross-validation with 10 iterations. The grid search technique was used to find the optimal combination of hyperparameters α and λ for the EN. We conducted a permutation importance analysis to obtain and compare predictor rankings for each model. Both models presented a good and comparable fit, with the EN marginally outperforming the MLR in error metrics. Postural risk, sedentary behavior, task duration, and BMI were the most important predictors of SPL in primary school children. The proof of a direct impact of a sedentary lifestyle on children's overall health is both credible and alarming. Hence, proper identification and management of contributing factors to static postural loading in this age group is critical. In various clinical settings, where the objective is to develop a model that accurately forecasts the outcome, advanced regularized regression methods have evidently shown great performance.

摘要

久坐不动的生活方式对个人整体健康的不良影响是不可避免的。对于小学年龄段的儿童来说,建立有效的姿势卫生习惯至关重要,因为这不仅有助于促进最佳的肌肉骨骼发育,还会显著影响他们的长期健康和生产力。本研究旨在开发并内部验证一个正则化回归模型,以预测小学生的静态姿势负荷(SPL)。通过对文献的系统回顾和专家小组,筛选出了SPL的结果和预测因素。数据来自258名小学生。我们开发了正则化弹性网(EN),并将多元线性回归(MLR)作为参考。两个模型都通过五折交叉验证(10次迭代)进行拟合。使用网格搜索技术来找到EN的超参数α和λ的最佳组合。我们进行了排列重要性分析,以获得并比较每个模型的预测因素排名。两个模型都呈现出良好且可比的拟合度,在误差指标方面,EN略优于MLR。姿势风险、久坐行为、任务持续时间和BMI是小学生SPL的最重要预测因素。久坐不动的生活方式对儿童整体健康有直接影响,这一证据既可信又令人担忧。因此,正确识别和管理该年龄组静态姿势负荷的影响因素至关重要。在各种临床环境中,目标是开发一个能够准确预测结果的模型,先进的正则化回归方法显然表现出了出色的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4cd1/12191867/cd1ae08ef55c/children-12-00744-g001.jpg

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