Neuromuscular Research Center, Department of Biology of Physical Activity, University of Jyvaskyla, Finland.
Department of Mathematics and Statistics, University of Jyvaskyla, Finland.
Physiol Meas. 2021 Apr 6;42(3). doi: 10.1088/1361-6579/abea25.
Heart rate (HR) monitoring provides a convenient and inexpensive way to predict energy expenditure (EE) during physical activity. However, there is a lot of variation among individuals in the EE-HR relationship, which should be taken into account in predictions. The objective is to develop a model that allows the prediction of EE based on HR as accurately as possible and allows an improvement of the prediction using calibration measurements from the target individual.We propose a nonlinear (logistic) mixed model for EE and HR measurements and an approach to calibrate the model for a new person who does not belong to the dataset used to estimate the model. The calibration utilizes the estimated model parameters and calibration measurements of HR and EE from the person in question. We compare the results of the logistic mixed model with a simpler linear mixed model for which the calibration is easier to perform.We show that the calibration is beneficial already with only one pair of measurements on HR and EE. This is an important benefit over an individual-level model fitting, which requires a larger number of measurements. Moreover, we present an algorithm for calculating the confidence and prediction intervals of the calibrated predictions. The analysis was based on up to 11 pairs of EE and HR measurements from each of 54 individuals of a heterogeneous group of people, who performed a maximal treadmill test.The proposed method allows accurate energy expenditure predictions based on only a few calibration measurements from a new individual without access to the original dataset, thus making the approach viable for example on wearable computers.
心率(HR)监测提供了一种方便且经济的方法,可用于预测体力活动期间的能量消耗(EE)。然而,个体之间的 EE-HR 关系存在很大差异,在预测中应考虑到这一点。目的是开发一种模型,尽可能准确地根据 HR 预测 EE,并使用目标个体的校准测量值来改善预测。我们提出了一种用于 EE 和 HR 测量的非线性(逻辑)混合模型,以及一种针对不属于用于估计模型的数据集的新个体校准模型的方法。校准利用了所讨论个体的 HR 和 EE 的估计模型参数和校准测量值。我们将逻辑混合模型的结果与更简单的线性混合模型进行了比较,后者更容易进行校准。我们表明,即使只有一对 HR 和 EE 的测量值,校准也很有益。这是个体水平模型拟合的一个重要优势,后者需要更多的测量值。此外,我们还提出了一种用于计算校准预测的置信区间和预测区间的算法。分析基于 54 名不同人群中每个人最多 11 对 EE 和 HR 测量值,他们进行了最大跑步机测试。该方法允许根据新个体的少数校准测量值进行准确的能量消耗预测,而无需访问原始数据集,因此为例如在可穿戴计算机上的应用提供了可行性。