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人工神经网络(ANN)和偏最小二乘法(PLS)回归模型在预测呼吸通气中的比较:一项探索性研究。

Comparison of artificial neural network (ANN) and partial least squares (PLS) regression models for predicting respiratory ventilation: an exploratory study.

机构信息

The National Cheng Kung University, Tainan 701, Taiwan.

出版信息

Eur J Appl Physiol. 2012 May;112(5):1603-11. doi: 10.1007/s00421-011-2118-6. Epub 2011 Aug 23.

Abstract

The objective of this study was to assess the potential for using artificial neural networks (ANN) to predict inspired minute ventilation (V(I)) during exercise activities. Six physiological/kinematic measurements obtained from a portable ambulatory monitoring system, along with individual's anthropometric and demographic characteristics, were employed as input variables to develop and optimize the ANN configuration with respect to reference values simultaneously measured using a pneumotachograph (PT). The generalization ability of the resulting two-hidden-layer ANN model was compared with a linear predictive model developed through partial least squares (PLS) regression, as well as other V(I) predictive models proposed in the literature. Using an independent dataset recorded from nine 80-min step tests, the results showed that the ANN-estimated V(I) was highly correlated (R(2) = 0.88) with V(I) measured by the PT, with a mean difference of approximately 0.9%. In contrast, the PLS and other regression-based models resulted in larger average errors ranging from 7 to 34%. In addition, the ANN model yielded estimates of cumulative total volume that were on average within 1% of reference PT measurements. Compared with established statistical methods, the proposed ANN model demonstrates the potential to provide improved prediction of respiratory ventilation in workplace applications for which the use of traditional laboratory-based instruments is not feasible. Further research should be conducted to investigate the performance of ANNs for different types of physical activity in larger and more varied worker populations.

摘要

本研究旨在评估人工神经网络(ANN)在预测运动期间吸入分钟通气量(V(I))方面的潜力。使用便携式动态监测系统获得的六个生理/运动学测量值,以及个体的人体测量学和人口统计学特征,被用作输入变量,以开发和优化 ANN 配置,同时使用气动量计(PT)同时测量参考值。所得到的两层 ANN 模型的泛化能力与通过偏最小二乘(PLS)回归开发的线性预测模型以及文献中提出的其他 V(I)预测模型进行了比较。使用从九个 80 分钟台阶测试中记录的独立数据集,结果表明,ANN 估计的 V(I)与 PT 测量的 V(I)高度相关(R(2)= 0.88),平均差异约为 0.9%。相比之下,PLS 和其他基于回归的模型导致的平均误差范围从 7%到 34%不等。此外,ANN 模型产生的累积总容积估计值平均与参考 PT 测量值相差 1%以内。与既定的统计方法相比,所提出的 ANN 模型有望为在工作场所应用中提供呼吸通气的改进预测,在这些应用中,使用传统的实验室仪器是不可行的。应进一步研究不同类型的体力活动中 ANN 的性能,以扩大和多样化工人群体。

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