1. Introduction
Pacing can be defined as the distribution of work over a time or distance trial. In track and field, the past 30 years of research have demonstrated that pacing strategies differ depending on race distance and its contextual factors (e.g., heats vs. finals) [
1,
2]. Effective pacing is a prerequisite for success as more even pacing strategies are associated with faster performances in endurance athletic events. However, when the same athlete succeeds in breaking their own personal record, there is little change in pacing behavior [
3]. Thus, we need more sensitive methods to better explain such little changes in pacing and subsequent performances for a better evaluation of pacing behaviors.
The most frequently used methods to analyze pacing behavior include the comparison of the mean speed between the different race segments (e.g., tertiles or quartiles of the total distance) and coefficient of variation (CV%) of speed [
1,
4]. These methods capture the overall pacing variability around a mean speed. However, tactical demands in competitive races impose a high degree of decision-making, leading to frequent speed variations [
4] (e.g., brief accelerations and decelerations) that are especially pronounced during championship qualifying rounds and finals [
5]. These changes in speed may be different between sexes [
6]. They can also determine the potential for success of an athlete depending on the D’ balance (i.e., how much an athlete runs below/over the critical speed) [
7]. These pacing micro-variations or short-term pacing variability are not captured by traditional methods (e.g., CV%) of pacing analyses. In this regard, simple calculations such as the root mean square of successive differences of time series (RMSSD) could be appropriate to assess the changes in mean speed between adjacent race segments. The usefulness of this algorithm is well recognized in physiology since it represents the most robust short-term variability analysis of heart rate (HR) which shows the instantaneous vagal influence on the HR [
8]. Consequently, the mathematical properties of RMSSD could be used to better evaluate short-term variability of velocity/speed as it is used for the same purpose with HR.
Therefore, the aim of the current exploratory study is to calculate both overall (i.e., SD, CV%) and short-term pacing variability (i.e., RMSSD) in men’s and women’s track running races to verify whether they provide different information when analyzing pacing characteristics during highly stochastic races of major championships. This new procedure will be useful for a better evaluation of athletes’ pacing stochasticity.
2. Materials and Methods
Publicly available data from World Athletics databases were used. As this is an exploratory study, we compared the performances of athletes participating in both the heats and the finals of various 5000 m major championships. As segment times were recorded every 100 m, we obtained 50 time series per athlete in each race. The races included were the men’s heats and finals from the Beijing 2008 Olympic Games and the London 2017 World Athletics Championships; and the women’s heats and finals from the Rio 2016 Olympic Games and the London 2017 World Athletics Championships. The main reasons for including these races were their publicly available data and that the number of participants of both sexes completing both the heats and finals were similar (14 men vs. 15–17 women).
Statistical Analyses
The mean ± SDs of all individual time series were computed in Excel. Subsequently, the coefficient of variation (CV%; [SD/mean] ∗ 100) was calculated. The RMSSD between 100 m section times were also computed in Excel. Comparisons between heats and finals at the same major championship were performed with a paired t-test. The p value was set at 0.05.
3. Results
The comparisons of both overall (SD, CV%) and short-term (RMSSD) variability analyses between heats and finals in Beijing 2008 and London 2017 for men and in Rio 2016 and London 2017 for women are presented in
Table 1 and
Table 2, respectively.
The pacing profiles and their respective metrics with a 100 m resolution of men’s and women’s champions in both heats and finals are presented in
Figure 1.
4. Discussion
This is an exploratory study analyzing overall and short-term pacing variability in different major championships in both men and women, aiming to determine whether there are differences between variability metrics. As expected, the mean values of both overall and short-term pacing variability revealed different trends between heats and finals when analyzing race performances characterized by substantially different tactical behaviors and mean speeds. In addition, when examining the variability metrics of men’s and women’s champions, it is evident that there is not a unique pattern of pacing behavior with races of similar times showing different variability metrics and vice versa. More importantly, changes in CV% are not necessarily linked to changes in RMSSD. For instance, Muktar recorded similar finishing times in the men’s heat and final in London 2017. However, in the final, the overall variability increased (i.e., CV%) while short-term variability (i.e., RMSSD) decreased.
These results suggest a great potential of RMSSD to better analyze and understand pacing behavior in competitive settings as it captures changes between adjacent time sections whereas the CV% assesses only the variability around the mean speed or time. For instance, while previous evidence revealed a reduced CV% when different runners broke World Records, a new analysis of World Records broken by the same athlete revealed no changes in CV% [
3]. The use of RMSSD is therefore helpful in this context to identify whether some sudden surges or decelerations throughout the race are related to differences in performance that are not evident through the analysis of CV%. In this regard, the calculation of RMSSD for the comparison of race sections (e.g., halves, tertiles) could also be pertinent in some cases to better identify what race sections are more stochastic.
One important aspect to be considered refers to the resolution used in the current study (i.e., 100 m section times) as sudden accelerations and decelerations might impact this metric more significantly with shorter sections than the current ones. Furthermore, other complexity measures such as fractal [
9,
10] and entropy [
11] analyses would even require a greater frequency of time series for appropriate validity. Therefore, further studies should identify the optimal resolution of time series needed to capture the influence of sudden surges and decelerations while allowing valid complexity analyses. This necessity has to also consider the specific characteristics of using different technologies on the track (e.g., WaveLight pacing) and the field (e.g., GPS). Meanwhile, it should be pointed out that RMSSD (a) may not accurately capture short-term variability if data series are too short; (b) is influenced by extreme values or outliers which can have a disproportionate impact on its values; (c) does not present an accepted threshold or benchmark for what constitutes high or low values; (d) might present a sex bias during its use. Future investigations should address these issues to assist in the identification of the real potential of this metric to capture pacing stochasticity in both sexes.
The use of this new measure of pacing stochasticity is very simple as its value can be easily calculated with an Excel spreadsheet when a minimum of time series of running speed is available. Of note, the use of these pacing metrics can be extended to endurance sports other than running. For the individual athlete, coaches can calculate both the CV% and RMSSD of speed in different races over the same distance during the season to check whether there are changes in pacing with respect to the mean speed with the use of CV%, and whether there are changes in stochasticity (e.g., less steady pace because of tactical decisions) with the use of RMSSD. These analyses can be complemented with qualitative data considering the level of the opponents or the importance of the race in the context of the competitive season. Exploratory analyses of race subsections and laps with the support of pacing graphical profiles can also be considered to better understand the impact of specific tactical decisions on pacing behaviors. More specifically, the combined use of RMSSD while knowing the critical speed and D’ of an athlete would allow a better characterization of pacing behaviors with respect to their endurance running capacity and potential for improvement. Further, these analyses are not exclusive to competitive settings as CV% and RMSSD calculations can be also derived from training speed recordings to identify pacing behaviors during race simulations or interval training sessions with and without the presence of other athletes. This may be relevant in the context of endurance sports, in which the coach is not always present during training sessions, to better understand what happens during specific training sessions with the analysis of speed recordings. Finally, the combination of these pacing metrics could be also applied to time or distance trial testing to increase the sensitivity of pacing metrics to verify the concurrent evolution of physiological adaptations and pacing behaviors of athletes over time. In this context, RMSSD may be also helpful for biomechanical testing of runners in the field to check the steadiness of running pace at different speeds when the speeds of the sections evaluated are not imposed by an external cue.
5. Conclusions
Short-term (RMSSD) and overall (SD and CV%) variability indices captured different within-championship pacing characteristics for men and women during highly stochastic races. The use of RMSSD is recommended to complement overall variability indices for a better characterization of pacing stochasticity.
The use of RMSSD would be helpful to compare within- and between-athlete performances over the same or different distances to better characterize short-term variability in pacing that likely reflects the degree of sudden accelerations and decelerations occurring because of tactical behaviors of competitive athletes. Although we used the available data with a resolution of 100 m section times, the use of higher resolutions would be desirable for this purpose in future analyses. The use of RMSSD could be also extended to other contexts including training and evaluation settings in different endurance sports.
Author Contributions
Conceptualization, D.B. and C.F.; methodology, D.B. and E.P.; validation, A.R., A.C., B.H. and C.F.; formal analysis, E.P.; resources, B.H.; data curation, E.P.; writing—original draft preparation, D.B.; writing—review and editing, A.R., A.C., B.H. and C.F. All authors have read and agreed to the published version of the manuscript.
Funding
DB was supported by Grant RYC2021-031098-I funded by MCIN/AEI/10.13039/501100011033, by “European Union NextGenerationEU/PRTR”, and by a productivity research grant (PQ1D) from CNPq (Brazil).
Institutional Review Board Statement
Not applicable. Because of the use of data publicly available.
Informed Consent Statement
Athletes’ consent was waived due to the public availability of the data.
Data Availability Statement
The data that support the findings of this study are available from Brian Hanley upon reasonable request.
Conflicts of Interest
The authors declare no conflict of interest.
References
- Casado, A.; Hanley, B.; Jiménez-Reyes, P.; Renfree, A. Pacing Profiles and Tactical Behaviors of Elite Runners. J. Sport. Health Sci. 2021, 10, 537–549. [Google Scholar] [CrossRef] [PubMed]
- Foster, C.; de Koning, J.J.; Hettinga, F.J.; Barroso, R.; Boullosa, D.; Casado, A.; Cortis, C.; Fusco, A.; Gregorich, H.; Jaime, S.; et al. Competition Between Desired Competitive Result, Tolerable Homeostatic Disturbance, and Psychophysiological Interpretation Determines Pacing Strategy. Int. J. Sport. Physiol. Perform. 2023, 18, 335–346. [Google Scholar] [CrossRef] [PubMed]
- Foster, C.; De Koning, J.J.; Thiel, C.; Versteeg, B.; Boullosa, D.A.; Bok, D.; Porcari, J.P. Beating Yourself: How Do Runners Improve Their Own Records? Int. J. Sport. Physiol. Perform. 2020, 15, 437–440. [Google Scholar] [CrossRef] [PubMed]
- Thiel, C.; Foster, C.; Banzer, W.; de Koning, J. Pacing in Olympic Track Races: Competitive Tactics versus Best Performance Strategy. J. Sport. Sci. 2012, 30, 1107–1115. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Hanley, B.; Stellingwerff, T.; Hettinga, F.J. Successful Pacing Profiles of Olympic and IAAF World Championship Middle-Distance Runners across Qualifying Rounds and Finals. Int. J. Sport. Physiol. Perform. 2019, 14, 894–901. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Casado, A.; González-Mohíno, F.; González-Ravé, J.M.; Boullosa, D. Pacing Profiles of Middle-Distance Running World Records in Men and Women. Int. J. Environ. Res. Public Health 2021, 18, 12589. [Google Scholar] [CrossRef] [PubMed]
- Kirby, B.S.; Winn, B.J.; Wilkins, B.W.; Jones, A.M. Interaction of Exercise Bioenergetics with Pacing Behavior Predicts Track Distance Running Performance. J. Appl. Physiol. 2021, 131, 1532–1542. [Google Scholar] [CrossRef] [PubMed]
- Medeiros, A.R.; Leicht, A.S.; Michael, S.; Boullosa, D. Weekly Vagal Modulations and Their Associations with Physical Fitness and Physical Activity. Eur. J. Sport Sci. 2021, 21, 1326–1336. [Google Scholar] [CrossRef] [PubMed]
- Tucker, R.; Bester, A.; Lambert, E.V.; Noakes, T.D.; Vaughan, C.L.; Gibson, A.S.C. Non-Random Fluctuations in Power Output during Self-Paced Exercise. Br. J. Sport. Med. 2006, 40, 912–917. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Hoos, O.; Boeselt, T.; Steiner, M.; Hottenrott, K.; Beneke, R. Long-Range Correlations and Complex Regulation of Pacing in Long-Distance Road Racing. Int. J. Sport. Physiol. Perform. 2014, 9, 544–553. [Google Scholar] [CrossRef] [PubMed]
- Exel, J.; Mateus, N.; Gonçalves, B.; Abrantes, C.; Calleja-González, J.; Sampaio, J. Entropy Measures Can Add Novel Information to Reveal How Runners’ Heart Rate and Speed Are Regulated by Different Environments. Front. Psychol. 2019, 10, 1278. [Google Scholar] [CrossRef] [PubMed]
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