利用机器学习技术预测有氧运动期间血糖变化的模型

Q4 Health Professions Exercise Science Pub Date : 2023-08-31 DOI:10.15857/ksep.2023.00318
Okimitsu Oyama, Seonggyu Choi, Changgeun Oh, Eunchan Kim, Dong-Hyuk Park, Minsuk Oh, Dae-hyun Park, Hye-Kyoung Seo, jungsun Han, Dongiae Jeon, Seong-Hyok Kim, Justin Y Jeon
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引用次数: 0

摘要

目的:本研究旨在探讨运动过程中血糖水平变化与身体特征的关系,并提出6种预测运动过程中血糖水平变化的模型。方法:148名健康男女(年龄:31.9±9.7岁,空腹血糖:102.1±14.1 mg/dL, <i>p</i>= 0.032)参与研究,其中30人参加研究。选取24小时碳水化合物摄取量、年龄、血糖、心率变化、性别、骨骼肌量、运动后心率恢复、静息心率8个变量,建立2个预测模型。采用Logistic回归和随机森林分类模型预测运动期间血糖水平的变化。结果:所有参与者(男、女)共建立了6个模型。随机森林分类(训练集:AUC=0.837,约登指数=0.66;验证集:AUC=0.730,约登指数=0.53)和逻辑回归分类模型(训练集:AUC=0.807,约登指数=0.55;建立AUC=0.735, Youden指数=0.57的验证集。结论:随机森林模型对内部数据分类效果较好,而逻辑回归模型对验证数据分类效果较好。
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Prediction Models of Blood Glucose Change During Aerobic Exercise Using Machine Learning Techniques
PURPOSE: This study aimed to explore the relationship between blood glucose level changes and body characteristics during exercise and to present six models for predicting changes in blood glucose levels during exercise.METHODS: 148 healthy men and women (age: 31.9±9.7 year, fasting blood glucose: 102.1±14.1 mg/dL, p=.032) participated in the study, and 30 of them participated in the study. Eight variables were selected to build two prediction models: 24-hour ingested carbohydrates, age, blood glucose, heart rate changes, sex, skeletal muscle mass, heart rate recovery after exercise, and resting heart rate. Logistic regression and random forest classifier models were used to predict the changes in blood glucose levels during exercise.RESULTS: A total of six models were created for all participants, male and female. Random forest classification (training set: AUC=0.837, Youden index=0.66; validation set: AUC=0.730, Youden index=0.53) and logistic regression classification models (training set: AUC=0.807, Youden index=0.55; validation set: AUC=0.735, Youden index=0.57) were built.CONCLUSION: The random forest model showed good performance in classifying internal data, whereas the logistic regression classification model demonstrated relatively good performance in classifying validation data.
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来源期刊
Exercise Science
Exercise Science Health Professions-Physical Therapy, Sports Therapy and Rehabilitation
CiteScore
0.70
自引率
0.00%
发文量
48
审稿时长
8 weeks
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