Literature DB >> 35822106

Changes in Heart Rate Variability and Fatigue Measures Following Moderate Load Resistance Exercise.

Clifton J Holmes1,2, Lee J Winchester2, Hayley V MacDonald2, Michael V Fedewa2, Stefanie A Wind2, Michael R Esco2.   

Abstract

The purpose of this study was to determine the relationship between changes in heart rate variability (HRV), neuromuscular performance, and fatigue biomarkers in response to a resistance exercise bout. The root mean square of successive RR interval differences (RMSSD), neuromuscular performance - isometric handgrip (IHG), countermovement jump (CMJ), mean propulsive velocity (MPV) - metabolic stress (lactate [Lac]) and inflammation (interleukin-6 [IL-6]) were measured in 30 subjects who performed 6×10 back squat (BS), 3×10 bench press (BP), and 3×10 bent-over rows (BR) at 70% of 1-repetition maximum (1RM). The RMSSD, neuromuscular performance, and biomarkers were measured 10 min pre-exercise and 30 min post-exercise (Post30); HRV and Lac were also measured immediately post-exercise (Post0). Pre- versus post-exercise differences were evaluated using paired-samples t-tests. Pearson's correlations were used to determine the association between changes. With the exception of IL-6 (P=0.296) and MPVBP (P=0.678), LnRMSSD, neuromuscular performance, and metabolic stress were different post- compared to pre-exercise. We observed moderate associations between ΔLnRMSSD Post0 and ΔLac Post0 (r = -0.44) and ΔLac Post30 (r = -0.55), respectively. Practitioners should use multiple training load indicators to gain an accurate depiction of recovery.

Entities:  

Keywords:  Neuromuscular; Recovery; Training Load; Weightlifting

Year:  2020        PMID: 35822106      PMCID: PMC9273014     

Source DB:  PubMed          Journal:  J Exerc Physiol Online        ISSN: 1097-9751


  30 in total

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9.  Muscle metabolism during intense, heavy-resistance exercise.

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