Predicting Short-Term HR Response to Varying Training Loads Using Exponential Equations

Q2 Computer Science
Katrin Hoffmann, J. Wiemeyer
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引用次数: 4

Abstract

Abstract Aim of this study was to test whether a monoexponential formula is appropriate to analyze and predict individual responses to the change of load bouts online during training. Therefore, 234 heart rate (HR) data sets obtained from extensive interval protocols of four participants during a twelve-week training intervention on a bike ergometer were analyzed. First, HR for each interval was approximated using a monoexponential formula. HR at onset of exercise (HRstart), HR induced by load (HRsteady) and the slope of HR (c) were analyzed. Furthermore, a calculation routine incrementally predicted HRsteady using measured HR data after onset of exercise. Validity of original and approximated data sets were very high (r² =0.962, SD =0.025; Max =0.991, Min =0.702). HRstart was significantly different between all participants (one exception). HRsteady was similar in all participants. Parameter c was independent of the duration of intervention and intervals regarding one training session but was significantly different in all participants (one exception). Final HR was correctly predicted on average after 58.8 s (SD = 34.77, Max =150 s, Min =30 s) based on a difference criteria of less than 5 bpm. In 3 participants, HRsteady was predicted correctly in 142 out of 175 courses (81.1%).
用指数方程预测短期HR对不同训练负荷的反应
摘要本研究的目的是测试单指数公式是否适用于分析和预测训练过程中个体对在线负荷变化的反应。因此,分析了在自行车测力计上进行为期12周的训练干预期间,从四名参与者的广泛间隔协议中获得的234个心率(HR)数据集。首先,使用单指数公式对每个区间的HR进行近似。分析运动开始时的HR(HRstart)、负荷诱导的HR(HR稳态)和HR的斜率(c)。此外,计算程序在运动开始后使用测量的HR数据逐步预测HR稳定。原始数据集和近似数据集的有效性非常高(r²=0.962,SD=0.025;Max=0.991,Min=0.702)。所有参与者的HRstart显著不同(一个例外)。所有参与者的HRsteady相似。参数c与一次训练的干预持续时间和间隔无关,但在所有参与者中都有显著差异(一个例外)。根据小于5 bpm的差异标准,平均在58.8 s后正确预测最终HR(SD=34.77,Max=150 s,Min=30 s)。在3名参与者中,175门课程中有142门(81.1%)的HRstable预测正确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Computer Science in Sport
International Journal of Computer Science in Sport Computer Science-Computer Science (all)
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
12 weeks
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