Abut Fatih, Akay Mehmet Fatih
Department of Computer Engineering, Çukurova University, Adana, Turkey.
Med Devices (Auckl). 2015 Aug 27;8:369-79. doi: 10.2147/MDER.S57281. eCollection 2015.
Maximal oxygen uptake (VO2max) indicates how many milliliters of oxygen the body can consume in a state of intense exercise per minute. VO2max plays an important role in both sport and medical sciences for different purposes, such as indicating the endurance capacity of athletes or serving as a metric in estimating the disease risk of a person. In general, the direct measurement of VO2max provides the most accurate assessment of aerobic power. However, despite a high level of accuracy, practical limitations associated with the direct measurement of VO2max, such as the requirement of expensive and sophisticated laboratory equipment or trained staff, have led to the development of various regression models for predicting VO2max. Consequently, a lot of studies have been conducted in the last years to predict VO2max of various target audiences, ranging from soccer athletes, nonexpert swimmers, cross-country skiers to healthy-fit adults, teenagers, and children. Numerous prediction models have been developed using different sets of predictor variables and a variety of machine learning and statistical methods, including support vector machine, multilayer perceptron, general regression neural network, and multiple linear regression. The purpose of this study is to give a detailed overview about the data-driven modeling studies for the prediction of VO2max conducted in recent years and to compare the performance of various VO2max prediction models reported in related literature in terms of two well-known metrics, namely, multiple correlation coefficient (R) and standard error of estimate. The survey results reveal that with respect to regression methods used to develop prediction models, support vector machine, in general, shows better performance than other methods, whereas multiple linear regression exhibits the worst performance.
最大摄氧量(VO2max)表示身体在剧烈运动状态下每分钟能够消耗的氧气毫升数。VO2max在体育和医学领域出于不同目的都发挥着重要作用,比如用于表明运动员的耐力水平,或者作为评估个人疾病风险的一项指标。一般来说,直接测量VO2max能提供对有氧能力最准确的评估。然而,尽管测量精度很高,但与直接测量VO2max相关的实际限制,比如需要昂贵且精密的实验室设备或训练有素的工作人员,促使人们开发了各种用于预测VO2max的回归模型。因此,在过去几年里开展了大量研究,以预测各类目标人群的VO2max,从足球运动员、非专业游泳者、越野滑雪者到健康的成年人、青少年和儿童。人们使用不同的预测变量集以及各种机器学习和统计方法,包括支持向量机、多层感知器、广义回归神经网络和多元线性回归,开发了众多预测模型。本研究的目的是详细概述近年来针对VO2max预测开展的数据驱动建模研究,并根据两个知名指标,即多重相关系数(R)和估计标准误差,比较相关文献中报道的各种VO2max预测模型的性能。调查结果显示,就用于开发预测模型的回归方法而言,一般来说,支持向量机的表现优于其他方法,而多元线性回归的表现最差。