Deng Jia, Fu Yan, Liu Qi, Chang Le, Li Haibo, Liu Shenglin
School of Mechanical Science & Technology, Huazhong University of Science and Technology, Wuhan 430074, China.
York Region Secondary Virtual School, York Region, Markham, ON L3R 3Y3, Canada.
Diagnostics (Basel). 2022 Oct 19;12(10):2538. doi: 10.3390/diagnostics12102538.
Among various assessment paradigms, the cardiopulmonary exercise test (CPET) provides rich evidence as part of the cardiopulmonary endurance (CPE) assessment. However, methods and strategies for interpreting CPET results are not in agreement. The purpose of this study is to validate the possibility of using machine learning to evaluate CPET data for automatically classifying the CPE level of workers in high-latitude areas.
A total of 120 eligible workers were selected for this cardiopulmonary exercise experiment, and the physiological data and completion of the experiment were recorded in the simulated high-latitude workplace, within which 84 sets of data were used for XGBOOST model training and36 were used for the model validation. The model performance was compared with Support Vector Machine and Random Forest. Furthermore, hyperparameter optimization was applied to the XGBOOST model by using a genetic algorithm.
The model was verified by the method of tenfold cross validation; the correct rate was 0.861, with a Micro-F1 Score of 0.864. Compared with RF and SVM, all data achieved a better performance.
With a relatively small number of training samples, the GA-XGBOOST model fits well with the training set data, which can effectively evaluate the CPE level of subjects, and is expected to provide automatic CPE evaluation for selecting, training, and protecting the working population in plateau areas.
在各种评估范式中,心肺运动试验(CPET)作为心肺耐力(CPE)评估的一部分提供了丰富的证据。然而,解释CPET结果的方法和策略并不统一。本研究的目的是验证使用机器学习评估CPET数据以自动分类高纬度地区工人CPE水平的可能性。
总共选择120名符合条件的工人进行这项心肺运动实验,并在模拟的高纬度工作场所记录生理数据和实验完成情况,其中84组数据用于XGBOOST模型训练,36组用于模型验证。将该模型的性能与支持向量机和随机森林进行比较。此外,使用遗传算法对XGBOOST模型进行超参数优化。
通过十折交叉验证法对模型进行验证;正确率为0.861,微F1分数为0.864。与随机森林和支持向量机相比,所有数据都取得了更好的性能。
在训练样本数量相对较少的情况下,GA-XGBOOST模型与训练集数据拟合良好,能够有效评估受试者的CPE水平,有望为高原地区劳动人群的选拔、训练和保障提供CPE自动评估。