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构建一个人体测量判别模型以识别优秀游泳运动员:自适应套索方法。

Construction of an anthropometric discriminant model for identification of elite swimmers: an adaptive lasso approach.

机构信息

Shanghai Research Institute of Sports Science (Shanghai Anti-doping Agency), Shanghai, China.

出版信息

PeerJ. 2023 Jan 9;11:e14635. doi: 10.7717/peerj.14635. eCollection 2023.

Abstract

BACKGROUND

Anthropometric characteristics are important factors that affect swimming performance. The aim of this study is to build a discriminant model using anthropometric factors to identify elite short-to-medium-distance freestyle swimmers through an adaptive Lasso approach.

METHODS

The study recruited 254 swimmers (145 males and 109 females) who were divided them into elite (aged 17.9 ± 2.2 years, FINA points 793.8 ± 73.8) and non-elite (aged 17.1 ± 1.3 years, FINA points 560.6 ± 78.7) groups. Data for 73 variables were obtained, including basic information, anthropometric and derivative indicators. After filtering out highly correlated variables, 24 candidate variables were retained to be used in adaptive Lasso to select variables for prediction of elite swimmers. Deviance and area under the curve (AUC) were applied to assess the goodness of fit and prediction accuracy of the model, respectively.

RESULTS

The adaptive Lasso selected 12 variables using the whole sample, with an AUC being 0.926 (95% CI [0.895-0.956]; = 2.42 × 10). In stratified analysis by gender, nine variables were selected for male swimmers with an AUC of 0.921 (95% CI [0.880-0.963]; = 8.82 × 10), and eight variables were for female swimmers with an AUC of 0.941 (95% CI [0.898-0.984]; = 7.67 × 10).

CONCLUSION

The adaptive Lasso showed satisfactory performance in selecting anthropometric characteristics to identify elite swimmers. Additional studies with longitudinal data or data from other ethnicities are needed to validate our findings.

摘要

背景

人体测量特征是影响游泳表现的重要因素。本研究旨在通过自适应套索方法,利用人体测量因素构建一个判别模型,以识别优秀的短中距离自由泳运动员。

方法

研究招募了 254 名游泳运动员(男性 145 名,女性 109 名),将他们分为优秀组(年龄 17.9 ± 2.2 岁,FINA 积分 793.8 ± 73.8)和非优秀组(年龄 17.1 ± 1.3 岁,FINA 积分 560.6 ± 78.7)。获得了 73 个变量的数据,包括基本信息、人体测量和衍生指标。在剔除高度相关的变量后,保留了 24 个候选变量,用于自适应套索选择预测优秀游泳运动员的变量。偏差和曲线下面积(AUC)分别用于评估模型的拟合优度和预测准确性。

结果

自适应套索使用全样本选择了 12 个变量,AUC 为 0.926(95%置信区间[0.895-0.956]; = 2.42×10)。按性别分层分析,男性游泳运动员选择了 9 个变量,AUC 为 0.921(95%置信区间[0.880-0.963]; = 8.82×10),女性游泳运动员选择了 8 个变量,AUC 为 0.941(95%置信区间[0.898-0.984]; = 7.67×10)。

结论

自适应套索在选择人体测量特征来识别优秀游泳运动员方面表现出令人满意的性能。需要进一步进行包含纵向数据或其他种族数据的研究来验证我们的研究结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d039/9835708/8a83613f6fce/peerj-11-14635-g001.jpg

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