Short Report: Estimating Blood Lactate Dynamics from Sweat Lactate and Sweat Rate After High-Intensity Exercise - A Pilot Regression-Based Study.

IF 1.6 Q3 SPORT SCIENCES
Open Access Journal of Sports Medicine Pub Date : 2025-07-30 eCollection Date: 2025-01-01 DOI:10.2147/OAJSM.S534243
Masaaki Hattori, Kazuya Yashiro
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引用次数: 0

Abstract

Background: Blood lactate (BL) is a critical biomarker for assessing anaerobic metabolism and fatigue. Sweat lactate (SWL) and sweat rate (SWR) have been explored as non-invasive alternatives, but their capacity to estimate BL dynamics after short-term high-intensity exercise remains unclear.

Purpose: This pilot study aimed to evaluate whether BL dynamics can be predicted using a regression model based on the time-series patterns of SWL and SWR measured by wearable sensors.

Methods: Five healthy male athletes (three sprinters and two endurance runners) performed a 30-second Wingate anaerobic test. SWL and SWR were continuously monitored using a wearable electrochemical sensor and a ventilated capsule-type sweat rate meter. Capillary BL was sampled for 30 minutes post-exercise.

Results: BL showed a delayed peak at 6.4 ± 1.2 min, while SWL and SWR exhibited biphasic responses. The second SWL peak (7.5 ± 2.2 min) aligned with the BL peak. Although peak-based correlations were not significant, Pearson correlations using time-series data revealed strong associations (r = 0.501-0.933 for SWL; r = 0.515-0.805 for SWR; all p < 0.001). A multivariate regression model using both variables predicted BL with high accuracy ( = 0.763, RMSE = 1.612, MAE = 0.995, p < 0.001).

Conclusion: These findings support the feasibility of a regression-based approach using sweat-derived time-series data to non-invasively estimate BL dynamics after high-intensity exercise.

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简短报告:从高强度运动后的汗液乳酸和出汗率估计血乳酸动态-一项基于先导回归的研究。
背景:血乳酸(BL)是评估无氧代谢和疲劳的重要生物标志物。汗液乳酸(SWL)和汗液率(SWR)作为非侵入性替代指标已被探索,但它们在短期高强度运动后评估BL动态的能力尚不清楚。目的:本初步研究旨在评估基于可穿戴传感器测量的SWL和SWR的时间序列模式的回归模型是否可以预测BL动态。方法:5名健康男性运动员(3名短跑运动员和2名耐力运动员)进行30秒Wingate无氧测试。使用可穿戴式电化学传感器和通风胶囊式汗液率仪连续监测SWL和SWR。运动后30分钟采样毛细血管BL。结果:BL在6.4±1.2 min出现延迟峰,而SWL和SWR表现为双相反应。第二个SWL峰(7.5±2.2 min)与BL峰对齐。尽管基于峰值的相关性不显著,但使用时间序列数据的Pearson相关性显示出较强的相关性(r = 0.501-0.933;r = 0.515-0.805;均p < 0.001)。采用多变量回归模型预测BL具有较高的准确性(R²= 0.763,RMSE = 1.612, MAE = 0.995, p < 0.001)。结论:这些发现支持了一种基于回归的方法的可行性,该方法使用来自汗液的时间序列数据来非侵入性地估计高强度运动后的BL动态。
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
CiteScore
4.80
自引率
0.00%
发文量
13
审稿时长
16 weeks
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