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使用机器学习技术对6至15岁儿童优势手握力进行预测分析:决策树和回归分析

Predictive analysis of dominant hand grip strength among young children aged 6-15 years using machine learning techniques: a decision tree and regression analysis.

作者信息

Alshahrani Mastour Saeed, Thomas Resmi Ann, Samuel Paul Silvian, Kakaraparthi Venkata Nagaraj, Reddy Ravi Shankar, Dixit Snehil

机构信息

Department of Medical Rehabilitation Sciences, King Khalid University, Abha, Saudi Arabia.

Marketing and Retail Studies, The Business School, Centennial College, Toronto, ON, Canada.

出版信息

Front Pediatr. 2025 Mar 19;13:1569913. doi: 10.3389/fped.2025.1569913. eCollection 2025.

Abstract

BACKGROUND

This study aimed to investigate and understand predictor variables and isolate the exact roles of anthropometric and demographic variables in the hand grip strength of young children.

MATERIAL AND METHODS

In total, 315 male and female children participated in the study and 11 participants were excluded, therefore, 304 participants completed the assessments. Anthropometric measurements were collected at the time of study, along with age, height, weight, circumference of the hand, hand span, hand length, palm length, and hand grip strength (HGS) was measured. Both decision tree and regression machine learning analyses were used to isolate the relative contribution of independent features in predicting the targeted grip strength of children.

RESULTS

Two predictive models were developed to understand the role of predictor variables in dominant hand HGS for both boys and girls. For boys, the decision tree was found to be the best model with the lowest error in predicting HGS. The respondents' age, hand span, and weight were the most significant contributors to male hand grip strength. For the boys under 9.5 years of age, based on the decision tree analysis, weight (split at 27.5 kg) was found to be the most significant predictor. Furthermore, for the boys under 14.5 years of age, weight (split at 46.7 kg) remained the most important predictor. For boys 14.5 years and older, hand span was important in predicting handgrip strength. Backward regression was found to be the best model for predicting female hand grip strength. The value for the model was 0.6646 and the significant variables were body mass index (BMI), hand length, hand span, and palm length, showing significance at a -value of ≤0.05. This model predicted 66.46% of the variance in handgrip strength among the girls.

CONCLUSION

Anthropometric factors played a significant role in hand grip strength. Age, weight, and a larger hand span were found to be significant in impacting male HGS, while BMI, hand length, and palm length contributed to higher grip strength among the girls.

摘要

背景

本研究旨在调查并了解预测变量,并确定人体测量学和人口统计学变量在幼儿握力中的确切作用。

材料与方法

共有315名男女儿童参与本研究,11名参与者被排除,因此,304名参与者完成了评估。在研究时收集人体测量数据,同时记录年龄、身高、体重、手部周长、手跨度、手长度、手掌长度,并测量握力(HGS)。决策树和回归机器学习分析均用于确定独立特征在预测儿童目标握力方面的相对贡献。

结果

建立了两个预测模型,以了解预测变量在男孩和女孩优势手握力中的作用。对于男孩,决策树被认为是预测握力误差最低的最佳模型。受访者的年龄、手跨度和体重是男性握力的最重要贡献因素。对于9.5岁以下的男孩,基于决策树分析,体重(在27.5千克处划分)是最重要的预测因素。此外,对于14.5岁以下的男孩,体重(在46.7千克处划分)仍然是最重要的预测因素。对于14.5岁及以上的男孩,手跨度在预测握力方面很重要。向后回归被认为是预测女性握力的最佳模型。该模型的 值为0.6646,显著变量为体重指数(BMI)、手长度、手跨度和手掌长度,在 ≤0.05时具有显著性。该模型预测了女孩握力差异的66.46%。

结论

人体测量因素在握力中起重要作用。年龄、体重和较大的手跨度对男性握力有显著影响,而BMI、手长度和手掌长度则有助于提高女孩的握力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/35fd/11961908/6e6c3db35806/fped-13-1569913-g001.jpg

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