Case Report: Case study of 100 consecutive IRONMAN®-distance triathlons-impact of race splits and sleep on the performance of an elite athlete.

IF 2.3 Q2 SPORT SCIENCES
Frontiers in Sports and Active Living Pub Date : 2025-06-26 eCollection Date: 2025-01-01 DOI:10.3389/fspor.2025.1554342
Beat Knechtle, Luciano Bernardes Leite, Pedro Forte, Marilia Santos Andrade, Ivan Cuk, Pantelis T Nikolaidis, Volker Scheer, Katja Weiss, Thomas Rosemann
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引用次数: 0

Abstract

Background: Long-distance triathletes such as IRONMAN® and ultra-triathletes competing in longer race distances continue to extend ultra-endurance limits. While the performance of 60 IRONMAN®-distance triathlons in 60 days was the longest described to date, we analysed in the present case study the impact of split disciplines and recovery in one athlete completing 100 IRONMAN®-distance triathlons in 100 days. To date, this is the longest self-paced world record attempt for most daily IRONMAN®-distance triathlons.

Methods: To assess the influence of each activity's duration on the total time, the cross-correlation function was calculated for swimming, cycling, running, and sleeping times. The autocorrelation function, which measures the correlation of a time series with itself at different lags, was also employed using NumPy.

Results: The moving average for swimming slightly increased in the middle of the period, stabilizing at ∼1.43 h. Cycling displayed notable fluctuations between ∼5.5 and 7h, with a downward trend toward the end. The moving average for running remains high, between 5.8 and 7.2 h, showing consistency over the 100 days. The moving average for total time hovered at ∼15 h, with peaks at the beginning, and slightly declined in the final days. The cross-correlation between swimming time and total time showed relatively low values. Cycling demonstrated a stronger correlation with total time. Running also exhibited a high correlation with total time. The cross-correlation between sleep time and swimming time presented low values. In cycling, the correlation was stronger. For running, a moderate correlation was observed. The correlation with total time was also high. The autocorrelation for swimming showed high values at short lags with a gradual decrease over time. For cycling, the autocorrelation also began strong, decreasing moderately as lags increased. Running displayed high autocorrelation at short lags, indicating a daily dependency in performance, with a gradual decay over time. The total time autocorrelation was high and remained relatively elevated with increasing lags, showing consistent dependency on cumulative efforts across all activities.

Conclusions: In a triathlete completing 100 IRONMAN®-distance triathlons in 100 days, cycling and running split times have a higher influence on overall times than swimming. Swimming performance is not influenced by sleep quality, whereas cycling performance is. Swimming times slowed faster over days than cycling and running times. Any athlete intending to break this record should focus on cycling and running training in the pre-event preparation.

案例报告:连续100个IRONMAN®-距离铁人三项-比赛分割和睡眠对精英运动员表现的影响的案例研究。
背景:长距离铁人三项运动员,如IRONMAN®和超级铁人三项运动员在更长的比赛距离中继续扩展超耐力极限。虽然在60天内完成60项IRONMAN®距离铁人三项的表现是迄今为止描述的最长的,但在本案例研究中,我们分析了在100天内完成100项IRONMAN®距离铁人三项的运动员,拆分学科和恢复的影响。迄今为止,这是大多数每日IRONMAN®距离铁人三项中最长的自我节奏世界纪录。方法:计算游泳、骑车、跑步和睡眠时间的相互关系函数,以评估各项活动持续时间对总时间的影响。NumPy也使用了自相关函数,该函数测量时间序列与自身在不同滞后时的相关性。结果:游泳的移动平均时间在中期略有增加,稳定在1.43 h。循环在~ 5.5 ~ 7h之间表现出明显的波动,并在结束时呈下降趋势。跑步的移动平均值仍然很高,在5.8到7.2小时之间,在100天内表现出一致性。总时间的移动平均值徘徊在~ 15 h,在开始时达到峰值,在最后几天略有下降。游泳时间与总时间的相关系数相对较低。骑车与总时间的相关性更强。跑步也表现出与总时间高度相关。睡眠时间与游泳时间呈低相关性。在自行车运动中,相关性更强。对于跑步,观察到适度的相关性。与总时间的相关性也很高。游泳的自相关在短滞后时表现出较高的值,随着时间的推移逐渐降低。对于循环,自相关也开始很强,随着滞后的增加而适度下降。运行在较短的滞后时间内显示出高度的自相关性,这表明性能每天都依赖,随着时间的推移逐渐衰减。总时间的自相关性很高,并且随着滞后的增加而保持相对较高的水平,显示出对所有活动的累积努力的一致依赖。结论:在100天内完成100个IRONMAN®(距离铁人三项)的铁人三项运动员中,骑车和跑步的分段时间对总时间的影响大于游泳。游泳成绩不受睡眠质量的影响,而骑自行车的成绩受睡眠质量的影响。随着时间的推移,游泳时间比骑车和跑步时间慢得更快。任何想要打破这一纪录的运动员都应该在赛前的准备中集中精力进行自行车和跑步训练。
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
2.60
自引率
7.40%
发文量
459
审稿时长
15 weeks
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