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Article

Differences in External and Internal Load in Elite Youth Soccer Players within Different Match Timing Zones

1
Faculty of Physical Education and Sport, Charles University, 162 52 Prague, Czech Republic
2
Department of Physical Therapy, High Point University, High Point, NC 27268, USA
3
Faculty of Sport Sciences, Waseda University, Tokyo 169-8050, Japan
4
The Micheli Center for Sports Injury Prevention, Waltham, MA 02453, USA
5
Department of Biomechanics, Kinesiology and Computer Science in Sport, University of Vienna, 1150 Vienna, Austria
*
Author to whom correspondence should be addressed.
Appl. Sci. 2022, 12(14), 7230; https://doi.org/10.3390/app12147230
Submission received: 24 April 2022 / Revised: 3 July 2022 / Accepted: 14 July 2022 / Published: 18 July 2022
(This article belongs to the Special Issue Human Performance Monitoring and Augmentation)

Abstract

:
The aim of this study was to determine and analyze the differences between the players’ internal (IL) and external load (EL) in different time zones (T1: 0–45 min, T2: 45–70 min, T3: 0–70 min, T4: 70–90 min, T5: 45–90 min, and T6: 0–90 min) in elite youth soccer matches (U17–19 age category). The monitored group comprised elite youth soccer players (n = 66; age = 17.5 ± 1.2 years; body height = 178.5 ± 8.7 cm; body mass = 70.4 ± 6.3 kg). Multivariate analysis of variances was used to compare the following variables: relative total distance covered (TDCrel), distance covered in different speed zones (Z1–Z6), high-metabolic load distance (HMLD), maximum running speed (Smax), number of acceleration (ACC) and deceleration (DCC) entries in different speed zones (Z1, Z2, Z3), and maximum heart rate (HRmax). Results revealed significant differences (p < 0.05) in the first 70 min (T3) compared to the last 20 min of the match (T4) in the following: TDCrel was higher, up to 6.6% (123.09 ± 9.48 vs. 115.03 ± 9.42 m.min−1); distance in Z5 (22.4%, 6.08 ± 1.82 vs. 4.72 ± 1.72 m.min−1); Z4 (18.6%, 20.15 ± 4.82 vs. 16.40 ± 3.48 m.min−1); Z3 (10.4%, 53.06 ± 47.52 m.min−1); and HMLD (16.1%, 34.86 ± 5.67 vs. 29.26 ± 5.11 m.min−1). We also found higher running performance in the first half (T1) than in the second half (T5) in the following parameters: TDCrel, Z5, Z4, ACCZ1, ACCZ2, and DCCZ1. With progressive time (in T4) we found a significant decrease in physical running performance, probably due to fatigue, which can lead to potential injury or losing in a match. The results of this study may provide helpful information in developing training strategies for coaches and in the set-up of plan for potential substitution of exhausted players mainly for the last 20 min of a match (T4). The present results are expressed as a relative value and should be compared with other study results with irregular timing zones.

1. Introduction

A consistent finding in the literature is that soccer is becoming more physically demanding [1]. To be a successful player, it is necessary to enhance fitness level in practice, which, in turn, helps excel in a match situation [2,3]. Therefore, we want to maximize the elite players’ fitness performance during the match by monitoring their load during the match. A study showed that 70% of professional players start their professional career at the age of 17–20 years [4]; however, there is a limited amount of research in this age category (elite performance level) to compare match load data and training data [5,6] or load data in the different time periods of a match [7].
Dellal et al. [8] reported that during a match, adult players reach greater external load (EL) such as sprinting distance than youth players (U17 category); however, Stevens et al. [9] noted no differences between elite adult players and youth players in covering the distances of the individual speed zones. In addition to the internal load (IL), younger players demonstrated greater amount of aerobic energy in locomotion activities, such as running and walking, than adult players during a match. Besides factors such as short length steps, high pace speed, and frequency relative to body size, it is possible that there is a greater relative physiological IL in young players than in adult players [10].
More than half of the total distance covered (TDC) comprised walking, jogging, and running <14.4 km.h−1 [11,12]. Relative total distance covered (TDCrel) was 118.9 ± 10.7 m.min−1 and player’s work-to-rest ratio was 2.1:1 [13]. In relation to the match’s physical demand profile in the study by Gómez-Carmona et al. [14], the U18 players were monitored in terms of parameters such as TDCrel, high intensity running (HIR), acceleration (ACC), deceleration (DCC), and average heart rate (HRavg). This study reported that only 8–10% of TDC in a professional soccer game is covered with HIR (>19.8 km.h−1). Nevertheless, ACC is a more energetically demanding activity than moving at constant velocity [15] and repeated ability to accelerate and decelerate relative to their body mass from various velocities (rarely standing still) is a fundamental necessity for soccer players. Domene [16] reported that in the last period of the adult match (75–90 min), players covered a higher average distance with HIR than in the previous periods. Conversely, Mohr et al. [17] showed that in the last 15 min, HIR load showed a notable decrease compared to HIR load of the previous periods. Rampini et al. [12] also showed that the decrease in the TDC, HIR, and very high-intensity running (running speed > 19.8 km.h−1, VHIR) during the second half is not a systematic phenomenon and is associated with the amount of activity completed in the first half. Wehbe et al. [18] reported that when the team was winning, the average speed was lower by 4.17% than when the team was drawing. Randers et al. [19] found differences in covered HIR distance in the first 15 min period and less HIR distance covered during the last 15 min period, compared to all other 15 min intervals, with a reduction in HIR from the first to the last 15 min period of 46 ± 19%, 37 ± 26%, 50 ± 26%, and 45 ± 27%. The sprint distance during an official football match is only 1–4% [20]. The number of sprints, average sprint distance, and maximal sprint distance during the half time (45 min) were reported as 12.7 ± 6.1, 18.2 ± 3.4, and 35.1 ± 11.3 m, respectively [21]. Players from the UEFA European League teams covered 167–345 m in sprints during the official match [22,23].
When monitoring heart rate (HR) for exercise intensity, there is a linear correlation between HR and oxygen consumption (VO2) over varying submaximal loads [24]. Physiological requirements of soccer players were assessed by monitoring HR during the match [25]. Studies have found that the average exercise intensity for a professional soccer player is 80–90% of the HRmax [14,25]. Alexandre et al. [26] analyzed the HR zones during the official soccer matches of various performance levels. The intensity values were in the range of 80–90% HRmax and players spent up to 65% of the total match duration in this zone.
Using a new equipment like the global position system (GPS) to monitor players also helps build specific endurance in the season macro-cycle in the different youth categories. This significantly influences the players’ performance at any position during a match [3,27] as well as helps by adding preventive fitness programs and analyzing each player’s load on an individual basis [28].
We conducted our research to identify players’ fitness profiles from both external and internal load points of view during official matches and to compare selected variables based on irregular time periods. The aim of this study was to determine and analyze the differences between the players’ internal (IL) and external load (EL) in different zones (T1: 0–45 min, T2: 45–70 min, T3: 0–70 min, T4: 70–90 min, T5: 45–90 min, and T6: 0–90 min) in elite youth (U17 and U19 age category) soccer matches.

2. Materials and Methods

2.1. Subjects

The study cohort consisted of soccer players from the category of 17 years and under (U17) to 19 years and under (U19) teams who played a total of 90 min (min) during one of the 12 highest-level matches in the spring national season (February to May) 2019/2020 (n = 66; age = 17.5 ± 1.2 years; body height = 178.5 ± 8.7 cm; body mass = 70.4 ± 6.3 kg). The weekly micro-cycle at each of the matches was as follows: 5 soccer-specific trainings per week (90 min), one strength and power training (60 min), one official match (90 min), and one recovery day (day off). There was not a single joint or muscle injury during the testing. The training experience of the players was similar (>10 years of soccer-specific training). The players did not sustain any injuries during the measurement. Prior to measurement, participants were instructed on the course of measurement, the subsequent processing of results, and their potential use in scientific research. Measurements were performed according to the ethical standards of the Helsinki Declaration and the ethical standards in sport and exercise science research described by Harriss et al. [29].

2.2. GPS Data Collection

All the players were using a 15 Hz GPS (Spi HPU, GPSport®, Canberra, Australia) in championship matches. The only exception was the goalkeeper’s game position, which was not included in the measurements. The GPS data were downloaded to the docking station and analyzed immediately after each match using GPSports Team AMS (GPSports®, Canberra, Australia). Additionally, we recorded players’ heart rates using Polar T31 heart rate monitors (Polar Electro, Kempele, Finland). Subsequently, the data were exported to MS Excel, where basic statistical operations were performed.

2.3. Main Outcome Variables

The strategy used recently in monitoring the player’s load during a match is to track and evaluate the TDC; TDCrel; distance/time (m.min−1); maximum running sprint speed (Smax) km.h−1; average speed during the match (Savg) km.h−1; distance covered in different intensity speed zones: Z1 (0–0.7 km.h−1), Z2 (0.7–7.2 km.h−1), Z3 (7.2–14.4 km.h−1), Z4 (14.4–19.8 km.h−1), Z5 (19.8–25.2 km.h−1), Z6 (>25.2 km.h−1); high-metabolic load distance (HMLD); numbers of acceleration entries: ACC Z1-Z3 (ACCZ3 Very High Magnitude of Acceleration (>3.6 m.s−2), ACCZ2 High Magnitude of Acceleration (2.4–3.6 m.s−2), ACCZ1 Low Magnitude of Acceleration (<2.4 m.s−2)); and numbers of deceleration entries: DCC Z1-Z3 (DCCZ3 Very High Magnitude of Deceleration (<−3.6 m.s−2), DCCZ2 High Magnitude of Deceleration (−2.4–3.6 m.s−2), DCCZ1 Low Magnitude of Deceleration (<−2.4 m.s−2)), maximum heart rate (HRmax), average heart rate (HRavg), and time spent in different intensity zones: HRZ1 steady state intensity (time in %), HRZ2 low intensity (%), HRZ3 aerobic intensity (%), HRZ4 submaximal intensity (%), HRZ5 maximum intensity (%). We applied parameters and criteria for player’s load which has been used in previous research studies [1,7,23,30,31].

2.4. Statistical Analysis

We used descriptive and inductive statistics to process the data. Measurements were expressed using the arithmetic mean, and the measure of variability was expressed through standard deviation. Data normality was evaluated using the Shapiro–Wilk test. An outlier value was defined as if the data were found to be out of the interval of mean ± 2 × standard deviation. The assumptions for using a parametric test were satisfied, and differences in the observed dependent variables between groups were assessed using a multivariate analysis of variance. Multiple comparisons of the mean of the monitored variables were performed using the Bonferroni’s post hoc test. Moreover, the effect size coefficient was assessed using partial eta squared (ηp2). For all analyses, the statistical significance level was set at p < 0.05. Radar charts were processed based on standardized values. Statistical analysis was performed using IBM® SPSS® v24 (Statistical Package for Social Science, Inc., Chicago, IL, USA).

3. Results

3.1. External Load

Results revealed significant differences for all indicators of EL during the observed match time period (Table 1, Figure 1 and Figure 2). The players reached higher running performance in the first half than in the second half in the following observed indicators: TDCrel was higher up to 6.6% (123.09 ± 9.48 vs. 115.03 m.min−1); Z5 (22.4%, 6.08 ± 1.82 vs. 4.72 ± 1.72 m.min−1); Z4 (18.6%, 20.15 ± 4.82 vs. 16.40 ± 3.48 m.min−1); Z3 (10.4%, 53.06 ± 47.52 m.min−1); HMLD (16.1%, 34.86 ± 5.67 vs. 29.26 ± 5.11 m.min−1); Savg (6.8%, 7.18 ± 0.56 vs. 6.59 ± 0.60 km.h−1); ACCZ1 (11.8%, 2.28 ± 0.54 vs. 2.01 ± 0.55 n.min−1); ACCZ2 (15.3%, 0.59 ± 0.24 vs. 0.50 ± 0.26 n.min−1); and DCCZ1 (11.8%, 1.69 ± 0.74 vs. 1.49 ± 0.75 n.min−1).
Conversely, in the second half, we found a significant increase in the running distance covered in Z2 (5.21%, 42.01 ± 3.47 vs. 44.32 ± 4.02 m.min−1).
The analysis detected significant differences between the first 70 min (T3) compared to the last 20 min of the match (T4) in the following external performance indicators: higher TDCrel in T3 than in T4 (6.5%, 120.91 ± 8.89 vs. 113.09 ± 12.01 m.min−1); Z5 (27.6%, 5.79 ± 4.19 m.min−1); Z4 (21.1%, 19.24 ± 4.05 vs. 15.19 ± 4.33 m.min−1); Z3 (13.9%, 52.04 ± 6.63 vs. 44.82 ± 9.33 m.min−1); HMLD (17.7%, 33.41 ± 5.17 vs. 27.50 ± 6.01 m.min−1); Smax (7.1%, 28.77 ± 1.84 vs. 26.74 ± 2.50 km.h−1); Savg (7.4%, 7.03 ± 0.55 vs. 6.51 ± 0.77 km.h−1); ACCZ1 (12.3%, 2.19 ± 0.49 vs. 1.92 ± 0.67 n.min−1); ACCZ2 (14.3%, 0.56 ± 0.23 vs. 0.48 vs. 0.27 n.min−1); ACCZ3 (60.0%, 0.05 ± 0.07 vs. 0.02 ± 0.02 n.min−1); and DCCZ1 (11.0%, 1.63 ± 0.72 vs. 1.45 ± 0.78 n.min−1). On the other hand, the study found lower distance covered in T3 than in T4 for Z2 (9.3%, 42.09 ± 3.01 vs. 46.41 ± 5.21 m.min−1).

3.2. Internal Load

Results revealed significant differences in HRmax during the time of the match, particularly comparing the first half with the last stage (T4) of the match (Table 2). During the second half, the players had significantly lower HRavg than that during the first half. While there were no significant differences in time (HRZ3, HRZ4) in highest intensity (HRZ5), we noted significantly lower internal load in the second half. During the second half, we did not find differences between T2 (45–70 min) and T4 (70–90 min).

4. Discussion

In this study, we aimed to determine IL and EL (expressed in relative values) and set-up irregular timing zones (T1: 0–45 min, T2: 45–70 min, T3: 0–70 min, T4: 70–90 min, T5: 45–90 min, and T6: 0–90 min) for elite youth (U17 and U19 age category) soccer matches. Significant differences were noted between the observed match time period for all EL and IL (Table 1, Table 2). Players reached higher TDCrel by 6.6% (123.09 ± 9.48 vs. 115.03 m.min−1) in the first half than in the second half. There was a relatively large difference (up to 22.4%) for the first half’s distance, spent in Z3 (>14.4 km.h−1), while for the second half (T5; 45–90 min), only the distance in the Z2 (0.7–7.2 km.h−1) was increased by 5.21%. Youth, especially elite youth, were chosen because of the limited research in the area of comparative profiles of the match demands in adolescent team sports [32,33]. Other studies [3,12,34,35] evaluated comparable factors of movement using the GPS system; however, the study subjects in the study were adult elite soccer players. Additionally, soccer analysis using the GPS also deviates from the elite sphere; covered distance in semi-pro players varies at 113.0 ± 8.9 m.min−1 [36]. In a study conducted by Rampinini et al. [12], significant correlation between TDC (r = 0.62, p < 0.001, CI95% = 0.36–0.79), HIR (r = 0.51, p < 0.05, CI = 0.21–0.72), and VHIR (r = 0.65, p < 0.001, CI95% = 0.40–0.81) was established. In top-level European and Australian leagues, Sarmento et al. [34] reported TDC from 10,063 to 11,230 m. Varley et al. [35] reported 104 ± 10 m.min−1 for the Australian soccer players. We must emphasize that there is a significant difference in soccer formation such as 4-3-3, 4-4-2, and 4-5-1 gameplay, which might have influenced the player load [11]. Buchheit et al. [37] revealed that in addition to age, maturation and body dimension were position-dependent variables that influenced in-match running performance. Demoupoulos [38] reported greater TDC in the U16 category than in the U18 category. TDC was significantly greater in the U16 team for both half times (1st half: 5.2 ± 0.6 km; 2nd half: 4.9 ± 0.4 km) than in the U18 (1st half: 4.8 ± 0.6 km, ES = 0.70, CI95% = 0.01–0.83; 2nd half: 4.5 ± 0.5 km, ES = 0.74, CI95% = 0.04–0.7, p < 0.001) and U21 teams (1st half: 4.7 ± 0.6 km, p < 0.001, ES = 0.74, CI95% = 0.05–0.91; 2nd half: 4.5 ± 0.7 km, p < 0.004, ES = 0.55, CI95% = −0.08–0.76).
In relation to the match demand profile, Gómez-Carmona et al. [14] examined U18 players, using parameters such as TDCrel 98.3 ± 21.94 m.min−1 at an average speed of 5.95 ± 0.94 km.h−1 and with 9.74 ± 4.21% HIR. The range of the TDCrel was 93.5 to 108.8 m.min−1. Barron et al. [39] used GPS units to monitor distances covered by players (U18) in ACC and DCC zones. From a time point of view, the study monitored the decline in ACC/DCC (−4.0 to 4.0 m. s−2) between the first and second halves. In our study, we also found a significant decline in ACC/DCC numbers of entries between the two halves; for ACCZ2 (2.4–3.6 m.s−2) by 14.3%; ACCZ3 (>3.6 m.s−2) by 60.0%; and DCCZ1 (<−2.4 m.s−2) by 11.0% in between T3 and T4 (0–70 vs. 70–90 min). We must emphasize that it is difficult to compare the ACC data of our study with those of other studies as there is little consensus regarding the use of ACC thresholds in team sports [40]. Our study and the study by Barron et al. [39] suggest that high speed movements in the first half reach a volume when enough neuromuscular fatigue accumulates, influencing performance in the latter half of the match (45–90 min or even 70–90 min). The negative impact of neuromuscular fatigue and strength imbalances on specific soccer skills has been also reported [41]. Demopoulos [38] revealed significantly greater TDCrel for the U16 group (108.68 ± 9.79 m.min−1) than for the U18 (99.97 ± 11.18 m.min−1) and U21 (98.72 ± 14.04 m.min−1) groups. In our research, we established TDCrel to be 117 ± 9.02 m.min−1 for the total match duration (0–90 min). The players reached in the first half higher TDCrel, up to 6.6%, than in the second half (123.09 ± 9.48 vs. 115.03 ± 9.42 m.min−1). Further analysis also revealed significant differences between the first 70 min (T3; Table 1, Figure 2) and the last 20 min of the match in terms of Z5 (27.6%, 5.79± 4.19 m.min−1), Z4 (21.1%, 19.24 ± 4.05 vs. 15.19 ± 4.33 m.min−1), and Z3 (13.9%, 52.04 ± 6.63 vs. 44.82 ± 9.33 m.min−1). Here, we identify the possibility of focusing on soccer-specific speed-endurance training while practicing using small-sided games. This strategy could help increase the players’ fitness levels, improve their physical preparation to last for the total match duration, and avoid the decrease in running performance towards the end of the match.
The tactical gameplay of the team could also change the high intensity running and sprinting distance (~30%) [12,42]. There is also significant difference between the playing positions in terms of very high intensity running distance (>19.8 km.h−1), jogging and running (7.2–19.7 km.h−1), Z5, ACC, and DCC entries. Previous studies [18,43] reported that attackers performed 27.5% and 30.24% less medium acceleration entries than defenders and midfielders, respectively (p < 0.01; d = 1.54 and 1.73). In our study, we found ACCZ1 (11.8%, 2.28 ± 0.54 vs. 2.01 ± 0.55 n.m−1), ACCZ2 (15.3%, 0.59 ± 0.24 vs. 0.50 ± 0.26 n.min−1), and DCCZ1 (11.8%, 1.69 ± 0.74 vs. 1.49 ± 0.75 n.min−1). A higher running performance (Table 1) in the first half than that in the second half is an important finding of our research. The quality of the opponent’s team (best and worst opponents) should also be considered, as it might have affected the distance covered in different speed zones [12,44]. In the last period (75–90 min), Domene [16] found higher HIR than that in the previous periods of time, which contradicts our study findings. During a typical match, there is a significant difference in distance covered with HIR (from 3138 ± 565 to 1834 ± 256 m, p < 0.01). Bradley [23] reported up to 36% difference in HIR. Additionally, detailed motion analysis combined with use of the triaxial accelerometer was performed by Dalen et al. [44]. They evaluated a full elite match by first and second half performances. The average number of ACC entries for the first and second halves was 38 ± 12 and 37 ± 12, respectively, with no statistical difference; their novel finding was that ACC covered up to 10% of the player load with load differences of 7–17% (p < 0.09). They also enrolled a remarkably high number of participants (n = 298) at each position, but the participants were adults (age = 25.38 ± 4.73 years).
We found differences in speed variables between the first 70 min and the last 20 min of the match in speed zones. Smax differed by 7.1% (from 28.77 ± 1.84 to 26.74 ± 2.50 km.h−1) and Savg differed by 7.4%. We also found significant differences in Savg (6.8%, 7.18 ± 0.56 vs. 6.59 ± 0.60 km.h−1) between the first and second halves. In the last period (70–90 min), we evaluated only 1.04 m.min−1 sprint distance covered by players, which is the lowest number of sprints within the entire match. In the U19 category, Reinhart et al. [15] revealed large differences in sprint times (d = −2.5), but the ACC.min−1 between 5 and 20 km.h−1 as well as 20 and 25 km.h−1 showed merely small variations (d < 0.5). According to Stevens et al. [45], during an official soccer match, the sprint distance in Dutch team pro players was ~281 m, while it varied between 100 and 190 m in English team pro players [46,47]. We reported ~90 m sprint distance for elite youth players in our study. In terms of the IL, we found differences between the T1 and T5. In the second half, the players had significantly lower HRavg than during the first half. A very common parameter while monitoring player load is the HR variability [25,48,49]. The highest player load in high-intensity anaerobic threshold was found in central midfielders (21.8 ± 7.8%) and attackers (17.8 ± 3.8%). The most significant decrease in high intensity was observed in the last 15 min of the match [50,51]. Elite youth players in our study spent 27% of time in HRZ5 during the first 70 min, compared to 18% of the time in the last 20 min of the match, which is similar to the results of Mohr et al. [50] and Rienzi et al. [51]. Bujnovsky et al. [52] reported that in the second half, the HR of elite adult players decreased by 9 bpm; we observed a 4 bpm decrease in our study. This decrease is attributed most probably to fatigue.
There is an increased interest to maintain a balance between the player load during a match and the recovery status to maximize the supercompensation and player performance while minimizing the risk of injury [53,54]. Price et al. [55] reported that 36% of the injuries during a match occur in the last third of each half. Therefore, we believe that future research should investigate the injury ratio during elite soccer matches and evaluate the differences between the physical load in chosen periods. We observed a significant difference (p < 0.05) between the first 70 min (T3) and last 20 min of the match (T4) in several parameters: TDCrel, Z5, Z4, and Z3 zones. We also encountered a higher running performance in the first half than in the second half in the following observed indicators: TDCrel, Z5, Z4, ACCZ1, ACCZ2, and DCCZ1. However, our study has several limitations. The monitoring of match load took place during the spring season 2019/20 in the elite youth soccer league of the Czech Republic. This data may not be generalizable to recreational level soccer players. Additionally, the opposing team level varied. In addition, we could not take situational variables into account (winning, drawing, and losing), which often determined how hard each player needed to play in a game of soccer. Some of the measurements were obtained when playing against worse opponents than expected. The tactical gameplay of the team was from the beginning of the match 4-4-2, but changed occasionally because of the actual match result. It would be beneficial if more teams of the first Czech division are evaluated, or the elite youth players are compared with those of international teams in the same age category. We aim to compare league and international level matches as well as focus more on the differences in playing positions in our future study.

5. Conclusions

This study determined the difference between external and internal load in several time parameters (T1: 0–45 min, T2: 45–70 min, T3: 0–70 min, T4: 70–90 min, T5: 45–90 min, and T6: 0–90 min) of elite youth (U17 and U19 age category) soccer matches with GPS running performance and HR response. The main findings were observed in both EL and IL parameters between the first 70 min (T3) and the last 20 min of the match (T4), and between the first half (T1) and the second half (T5). A decrease in HMLD in the last T4 was up to 17.7% compared to T3. Moreover, players’ performances in highest heart rate zone (HRZ5) in T4 phase was just 17.85% compared to 27.05% in the T3 phase. Because of these facts, we must implement soccer-specific training of small sided and large games to be able maintain high intensity performance during the total match duration. On-field demands, specific player load, and youth physiological adaptability to the soccer match are the most important determinants for setting up a soccer training strategy. Factual results of players’ loads are the basis for designing team, group, and individual training programs in all team-based sports. Monitoring of the player’s load could also give us the opportunity to improve the aerobic and anaerobic capacity at the start of the youth elite player’s season and to get progressive results at the end of the season macro-cycle. The present study may enhance the process of training and help improve players’ fitness levels. Furthermore, it could be beneficial for improving individual player monitoring during matches and, thus, help substitute faster players who do not fit in the tactical play and help change the play. Our data could also be beneficial when comparing youth players to professionals, in situations such as young players graduating to their club’s first-team squad.

Author Contributions

Conceptualization, E.K., T.M. and F.Z.; methodology, T.M. and K.R.F.; software, E.K. and M.H.; validation, D.S., A.B. and F.Z.; formal analysis, D.B., A.B. and F.Z.; investigation, E.K., T.M. and M.H.; resources, E.K. and L.M.; data curation, E.K. and M.H.; writing—original draft preparation, E.K.; writing—review and editing, K.R.F., D.S., L.M. and A.B.; visualization, T.M., D.B. and M.H.; supervision, T.M., D.S. and K.R.F.; project administration, F.Z., L.M. and T.M.; funding acquisition, T.M. and F.Z. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by GACR19-12150S, UNCE HUM 32 and Cooperatio: Sport Sciences—Biomedical and Rehabilitation Medicine.

Institutional Review Board Statement

The study was conducted in accordance with the Declaration of Helsinki and approved by the Institutional Review Board (or Ethics Committee) of Faculty of Physical Education and Sport, Charles University in Prague, Czech Republic (Nr. 101/2018).

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study. The design was explained to all participants and informed consent was collected from players, or the players’ parents if the players were younger than 18 years old, before assessments were performed. The study was approved by the Ethical Committee of the Faculty of Physical Education and Sport, Charles University, in Prague, Czech Republic (Nr. 101/2018).

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or in the decision to publish the results.

References

  1. Casamichana, D.; Castellano, J.; Diaz, A.G.; Gabbett, T.J.; Martin-Garcia, A. The most demanding passages of play in football competition: A comparison between halves. Biol. Sport 2019, 36, 233–240. [Google Scholar] [CrossRef]
  2. Dragijsky, M.; Maly, T.; Zahalka, F.; Kunzmann, E.; Hank, M. Seasonal variation of agility, speed and endurance performance in young elite soccer players. Sports 2017, 5, 12. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  3. Scott, B.R.; Lockie, R.G.; Davies, S.J.; Clark, A.C.; Lynch, D.M.; Janse de Jonge, X. The physical demands of professional soccer players during in-season field-based training and match-play. J. Aust. Strength Cond. 2014, 22, 48–52. [Google Scholar]
  4. Poli, R.; Ravenel, L. Annual Review of the European Football Players’ Labour Market; Centre International D’étude du Sport: Neuchâtel, Switzerland, 2008. [Google Scholar]
  5. Bowen, L.; Gross, A.S.; Gimpel, M.; Li, F.-X. Accumulated workloads and the acute: Chronic workload ratio relate to injury risk in elite youth football players. Br. J. Sports Med. 2017, 51, 452–459. [Google Scholar] [CrossRef] [Green Version]
  6. Hill-Haas, S.V.; Dawson, B.; Impellizzeri, F.M.; Coutts, A.J. Physiology of small-sided games training in football. Sports Med. 2011, 41, 199–220. [Google Scholar] [CrossRef] [PubMed]
  7. Casamichana, D.; Martin-Garcia, A.; Diaz, A.G.; Bradley, P.S.; Castellano, J. Accumulative weekly load in a professional football team: With special reference to match playing time and game position. Biol. Sport 2022, 39, 115–124. [Google Scholar] [CrossRef]
  8. Dellal, A.; Hill-Haas, S.; Lago-Penas, C.; Chamari, K. Small-sided games in soccer: Amateur vs. professional players’ physiological responses, physical, and technical activities. J. Strength Cond. Res. 2011, 25, 2371–2381. [Google Scholar] [CrossRef]
  9. Stevens, T.G.A.; De Ruiter, C.J.; Beek, P.J.; Savelsbergh, G.J.P. Validity and reliability of 6-a-side small-sided game locomotor performance in assessing physical fitness in football players. J. Sports Sci. 2016, 34, 527–534. [Google Scholar] [CrossRef] [Green Version]
  10. Castagna, C.; D’Ottavio, S.; Abt, G. Activity profile of young soccer players during actual match play. J. Strength Cond. Res. 2003, 17, 775–780. [Google Scholar]
  11. Bradley, P.S.; Carling, C.; Archer, D.; Roberts, J.; Dodds, A.; Di Mascio, M.; Paul, D.; Gomez Diaz, A.; Peart, D.; Krustrup, P. The effect of playing formation on high-intensity running and technical profiles in English FA Premier League soccer matches. J. Sports Sci. 2011, 29, 821–830. [Google Scholar] [CrossRef]
  12. Rampinini, E.; Coutts, A.J.; Castagna, C.; Sassi, R.; Impellizzeri, F. Variation in top level soccer match performance. Int. J. Sports Med. 2007, 28, 1018–1024. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  13. Arrones, L.S.; Torreno, N.; Requena, B.; De Villarreal, E.; Casamichana, D.; Carlos, J.; Barbero-Alvarez, D. Match-play activity profile in professional soccer players during official games and the relationship between external and internal load. J. Sports Med. Phys. Fit. 2014, 55, 1417–1422. [Google Scholar]
  14. Gómez-Carmona, C.D.; Gamonales, J.M.; Pino-Ortega, J.; Ibáñez, S.J. Comparative analysis of load profile between small-sided games and official matches in youth soccer players. Sports 2018, 6, 173. [Google Scholar] [CrossRef] [Green Version]
  15. Reinhardt, L.; Schwesig, R.; Lauenroth, A.; Schulze, S.; Kurz, E. Enhanced sprint performance analysis in soccer: New insights from a GPS-based tracking system. PLoS ONE 2019, 14, e0217782. [Google Scholar] [CrossRef] [PubMed]
  16. Domene, A.M. Evaluation of movement and physiological demands of full-back and center-back soccer players using global positioning systems. J. Hum. Sport Exerc. 2013, 8, 1015–1028. [Google Scholar] [CrossRef] [Green Version]
  17. Mohr, M.; Nybo, L.; Grantham, J.; Racinais, S. Physiological responses and physical performance during football in the heat. PLoS ONE 2012, 7, e39202. [Google Scholar] [CrossRef]
  18. Wehbe, G.M.; Hartwig, T.B.; Duncan, C.S. Movement analysis of Australian national league soccer players using global positioning system technology. J. Strength Cond. Res. 2014, 28, 834–842. [Google Scholar] [CrossRef]
  19. Randers, M.B.; Mujika, I.; Hewitt, A.; Santisteban, J.; Bischoff, R.; Solano, R.; Zubillaga, A.; Peltola, E.; Krustrup, P.; Mohr, M. Application of four different football match analysis systems: A comparative study. J. Sports Sci. 2010, 28, 171–182. [Google Scholar] [CrossRef]
  20. Di Salvo, V.; Baron, R.; González-Haro, C.; Gormasz, C.; Pigozzi, F.; Bachl, N. Sprinting analysis of elite soccer players during European Champions League and UEFA Cup matches. J. Sports Sci. 2010, 28, 1489–1494. [Google Scholar] [CrossRef]
  21. Rago, V.; Pizzuto, F.; Raiola, G. Relationship between intermittent endurance capacity and match performance according to the playing position in sub-19 professional male football players: Preliminary results. J. Phys. Educ. Sport 2017, 17, 688. [Google Scholar]
  22. Andrzejewski, M.; Chmura, J.; Pluta, B.; Strzelczyk, R.; Kasprzak, A. Analysis of sprinting activities of professional soccer players. J. Strength Cond. Res. 2013, 27, 2134–2140. [Google Scholar] [CrossRef] [PubMed]
  23. Bradley, P.S.; Sheldon, W.; Wooster, B.; Olsen, P.; Boanas, P.; Krustrup, P. High-intensity running in English FA Premier League soccer matches. J. Sports Sci. 2009, 27, 159–168. [Google Scholar] [CrossRef]
  24. Åstrand, P.-O.; Rodahl, K.; Dahl, H.A.; Strømme, S.B. Textbook of Work Physiology: Physiological Bases of Exercise; Human Kinetics: Champaign, IL, USA, 2003. [Google Scholar]
  25. Bujnovsky, D.; Maly, T.; Ford, K.R.; Sugimoto, D.; Kunzmann, E.; Hank, M.; Zahalka, F. Physical fitness characteristics of high-level youth football players: Influence of playing position. Sports 2019, 7, 46. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  26. Alexandre, D.; Da Silva, C.D.; Hill-Haas, S.; Wong, D.P.; Natali, A.J.; De Lima, J.R.; Bara Filho, M.G.; Marins, J.J.; Garcia, E.S.; Karim, C. Heart rate monitoring in soccer: Interest and limits during competitive match play and training, practical application. J. Strength Cond. Res. 2012, 26, 2890–2906. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  27. Clemente, F.M.; Owen, A.; Serra-Olivares, J.; Nikolaidis, P.T.; Van Der Linden, C.M.; Mendes, B. Characterization of the weekly external load profile of professional soccer teams from Portugal and the Netherlands. J. Hum. Kinet. 2019, 66, 155–164. [Google Scholar] [CrossRef] [Green Version]
  28. Maly, T.; Zahalka, F.; Mala, L.; Teplan, J. Profile, correlation and structure of speed in youth elite soccer players. J. Hum. Kinet. 2014, 40, 149–159. [Google Scholar] [CrossRef] [Green Version]
  29. Harriss, D.J.; Macsween, A.; Atkinson, G. Standards for Ethics in Sport and Exercise Science Research: 2018 Update. Int. J. Sports Med. 2017, 38, 1126–1131. [Google Scholar] [CrossRef] [Green Version]
  30. Rago, V.; Brito, J.; Figueiredo, P.; Costa, J.; Barreira, D.; Krustrup, P.; Rebelo, A. Methods to collect and interpret external training load using microtechnology incorporating GPS in professional football: A systematic review. Res. Sports Med. 2020, 28, 437–458. [Google Scholar] [CrossRef]
  31. Tierney, P.J.; Young, A.; Clarke, N.D.; Duncan, M.J. Match play demands of 11 versus 11 professional football using Global Positioning, System tracking: Variations across common playing formations. Hum. Mov. Sci. 2016, 49, 1–8. [Google Scholar] [CrossRef]
  32. Hartwig, T.B.; Naughton, G.; Searl, J. Motion analyses of adolescent rugby union players: A comparison of training and game demands. J. Strength Cond. Res. 2011, 25, 966–972. [Google Scholar] [CrossRef]
  33. Wrigley, R.; Drust, B.; Stratton, G.; Scott, M.; Gregson, W. Quantification of the typical weekly in-season training load in elite junior soccer players. J. Sports Sci. 2012, 30, 1573–1580. [Google Scholar] [CrossRef] [PubMed]
  34. Sarmento, H.; Marcelino, R.; Anguera, M.T.; CampaniÇo, J.; Matos, N.; LeitÃo, J.C. Match analysis in football: A systematic review. J. Sports Sci. 2014, 32, 1831–1843. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  35. Varley, M.C.; Gabbett, T.; Aughey, R.J. Activity profiles of professional soccer, rugby league and Australian football match play. J. Sports Sci. 2014, 32, 1858–1866. [Google Scholar] [CrossRef] [PubMed]
  36. Casamichana, D.; Castellano, J.; Castagna, C. Comparing the physical demands of friendly matches and small-sided games in semiprofessional soccer players. J. Strength Cond. Res. 2012, 26, 837–843. [Google Scholar] [CrossRef] [Green Version]
  37. Buchheit, M.; Mendez-Villanueva, A. Effects of age, maturity and body dimensions on match running performance in highly trained under-15 soccer players. J. Sports Sci. 2014, 32, 1271–1278. [Google Scholar] [CrossRef]
  38. Demopoulos, P. Optimising the use of GPS technology to quantify biomechanical load in elite level soccer. Ph.D. Thesis, Edge Hill University, Ormskirk, UK, 2016. [Google Scholar]
  39. Barron, D.J.; Atkins, S.; Edmundson, C.; Fewtrell, D. Accelerometer derived load according to playing position in competitive youth soccer. Int. J. Perform. Anal. Sport 2014, 14, 734–743. [Google Scholar] [CrossRef]
  40. Johnston, R.J.; Watsford, M.L.; Kelly, S.J.; Pine, M.J.; Spurrs, R.W. Validity and interunit reliability of 10 Hz and 15 Hz GPS units for assessing athlete movement demands. J. Strength Cond. Res. 2014, 28, 1649–1655. [Google Scholar] [CrossRef]
  41. Maly, T.; Sugimoto, D.; Izovska, J.; Zahalka, F.; Mala, L. Effect of muscular strength, asymmetries and fatigue on kicking performance in soccer players. Int. J. Sports Med. 2018, 39, 297–303. [Google Scholar] [CrossRef]
  42. Barrett, S.; Midgley, A.W.; Towlson, C.; Garrett, A.; Portas, M.; Lovell, R. Within-match PlayerLoad™ patterns during a simulated soccer match: Potential implications for unit positioning and fatigue management. Int. J. Sport Physiol. Perform. 2016, 11, 135–140. [Google Scholar] [CrossRef]
  43. Mallo, J.; Mena, E.; Nevado, F.; Paredes, V. Physical demands of top-class soccer friendly matches in relation to a playing position using global positioning system technology. J. Hum. Kinet. 2015, 47, 179. [Google Scholar] [CrossRef] [Green Version]
  44. Dalen, T.; Jørgen, I.; Gertjan, E.; Havard, H.G.; Ulrik, W. Player load, acceleration, and deceleration during forty-five competitive matches of elite soccer. J. Strength Cond. Res. 2016, 30, 351–359. [Google Scholar] [CrossRef] [PubMed]
  45. Stevens, T.G.; de Ruiter, C.J.; Twisk, J.W.; Savelsbergh, G.J.; Beek, P.J. Quantification of in-season training load relative to match load in professional Dutch Eredivisie football players. Sci. Med. Footb. 2017, 1, 117–125. [Google Scholar] [CrossRef]
  46. Akenhead, R.; Harley, J.A.; Tweddle, S.P. Examining the external training load of an English Premier League football team with special reference to acceleration. J. Strength Cond. Res. 2016, 30, 2424–2432. [Google Scholar] [CrossRef] [PubMed]
  47. Anderson, L.; Orme, P.; Di Michele, R.; Close, G.L.; Morgans, R.; Drust, B.; Morton, J.P. Quantification of training load during one-, two-and three-game week schedules in professional soccer players from the English Premier League: Implications for carbohydrate periodisation. J. Sports Sci. 2016, 34, 1250–1259. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  48. Bricout, V.-A.; DeChenaud, S.; Favre-Juvin, A. Analyses of heart rate variability in young soccer players: The effects of sport activity. Auton. Neurosci. 2010, 154, 112–116. [Google Scholar] [CrossRef]
  49. Buchheit, M.; Mendez-Villanueva, A.; Simpson, B.; Bourdon, P. Match running performance and fitness in youth soccer. Int. J. Sports Med. 2010, 31, 818–825. [Google Scholar] [CrossRef]
  50. Mohr, M.; Krustrup, P.; Bangsbo, J. Match performance of high-standard soccer players with special reference to development of fatigue. J. Sports Sci. 2003, 21, 519–528. [Google Scholar] [CrossRef] [Green Version]
  51. Rienzi, E.; Drust, B.; Reilly, T.; Carter, J.E.L.; Martin, A. Investigation of anthropometric and work-rate profiles of elite South American international soccer players. J. Sports Med. Phys. Fit. 2000, 40, 162. [Google Scholar]
  52. Bujnovsky, D.; Maly, T.; Zahalka, F.; Mala, L. Analysis of physical load among professional soccer players during matches with respect to field position. J. Phys. Educ. Sport 2015, 15, 569. [Google Scholar]
  53. Brink, M.S.; Nederhof, E.; Visscher, C.; Schmikli, S.L.; Lemmink, K.A. Monitoring load, recovery, and performance in young elite soccer players. J. Strength Cond. Res. 2010, 24, 597–603. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  54. Vanrenterghem, J.; Nedergaard, N.J.; Robinson, M.A.; Drust, B. Training load monitoring in team sports: A novel framework separating physiological and biomechanical load-adaptation pathways. Sports Med. 2017, 47, 2135–2142. [Google Scholar] [CrossRef] [PubMed]
  55. Price, R.; Hawkins, R.; Hulse, M.; Hodson, A. The Football Association medical research programme: An audit of injuries in academy youth football. Br. J. Sports Med. 2004, 38, 466–471. [Google Scholar] [CrossRef] [PubMed] [Green Version]
Figure 1. Comparison of selected external load parameters within different match timing zones. Note: TDCrel: relative total distance covered; HMLD: high-metabolic load distance; Smax: maximum sprint speed; Savg: average speed; ACCz3: number of acceleration entries (>3.6 m.s−2); DCCz3: number of deceleration entries (<−3.6 m.s−2); T1: 0–45 min; T2: 45–70 min; T3: 0–70 min; T4: 79–90 min; T5: 45–90 min; T6: 0–90 min.
Figure 1. Comparison of selected external load parameters within different match timing zones. Note: TDCrel: relative total distance covered; HMLD: high-metabolic load distance; Smax: maximum sprint speed; Savg: average speed; ACCz3: number of acceleration entries (>3.6 m.s−2); DCCz3: number of deceleration entries (<−3.6 m.s−2); T1: 0–45 min; T2: 45–70 min; T3: 0–70 min; T4: 79–90 min; T5: 45–90 min; T6: 0–90 min.
Applsci 12 07230 g001
Figure 2. Comparison of distance covered in speed zones within different match timing zones. Note: Z1: 0–0.7 km.h−1; Z2: 0.7–7.2 km.h−1; Z3: 7.2–14.4 km.h−1; Z4: 14.4–19.8 km.h−1; Z5: 19.8–25.2 km.h−1; Z6: >25.2 km.h−1; T1: 0–45 min; T2: 45–70 min; T3: 0–70 min; T4: 79–90 min; T5: 45–90 min; T6: 0–90 min.
Figure 2. Comparison of distance covered in speed zones within different match timing zones. Note: Z1: 0–0.7 km.h−1; Z2: 0.7–7.2 km.h−1; Z3: 7.2–14.4 km.h−1; Z4: 14.4–19.8 km.h−1; Z5: 19.8–25.2 km.h−1; Z6: >25.2 km.h−1; T1: 0–45 min; T2: 45–70 min; T3: 0–70 min; T4: 79–90 min; T5: 45–90 min; T6: 0–90 min.
Applsci 12 07230 g002
Table 1. Comparison of external load parameters of the different match time periods.
Table 1. Comparison of external load parameters of the different match time periods.
ParametersT1T2T3T4T5T6Fpηp2Posthoc
0–4545–700–7070–9045–900–90
TDCrel (m.min−1)X123.09116.97120.91113.09115.03117.0028.42<0.050.3a,b,c,d,e,
f,j,k,l,n,o
SD9.4811.098.8912.019.429.02
Z6
(m.min−1)
X1.190.771.041.040.911.041.980.080.03
SD1.822.171.591.983.451.48
Z5
(m.min−1)
X6.085.265.794.194.724.9924.17<0.050.27c,d,e,g,h,i,
j,k,l,m,n
SD1.822.171.591.981.721.48
Z4
(m.min−1)
X20.1517.6119.2415.1916.4017.2137.28<0.050.37a,b,c,d,e,f,
g,h,j,k,l,m,n,o
SD4.824.174.054.333.483.50
Z3
(m.min−1)
X53.0650.2252.0444.8247.5248.4327.73<0.050.3c,d,e,g,h,j,
k,l,m,n
SD7.668.206.639.337.266.75
Z2
(m.min−1)
X42.0142.2342.0946.4144.3244.2541.06<0.050.39c,d,e,g,h,i,
j,k,l,m,n
SD3.474.253.015.214.023.82
Z1
(m.min−1)
X0.060.050.060.060.060.064.09<0.050.06h,i
SD0.030.030.020.030.020.02
HMLD
(m.min−1)
X34.8631.0033.4127.5029.2630.4656.54<0.050.47a,b,c,d,e,f,
g,h,j,k,l,m,n,o
SD5.675.595.176.015.114.85
Smax
(km.h−1)
X28.4026.9328.7726.7427.9028.9632.77<0.050.34a,c,e,f,h,i,
j,k,l,m,n,o
SD1.882.161.842.502.121.84
Savg
(km.h−1)
X7.186.877.036.516.696.7831.42<0.050.33a,b,c,d,e,f,g,
h,j,k,l,m,n,o
SD0.560.650.550.770.600.55
ACCZ1
(n.min−1)
X2.282.102.191.922.012.1522.2<0.050.26a,b,c,d,e,g,
h,j,k,m,n,o
SD0.540.520.490.670.550.51
ACCZ2
(n.min−1)
X0.590.510.560.480.500.549.79<0.050.13c,d,e,j,k,l,n,o
SD0.240.270.230.270.260.23
ACCZ3
(n.min−1)
X0.060.050.050.020.050.057.15<0.050.10c,j,n
SD0.080.080.070.020.070.07
DCCZ1
(n.min−1)
X1.691.521.631.451.491.5918.92<0.050.23a,b,c,d,e,
f,j,k,l,n,o
SD0.740.760.720.780.750.73
DCCZ2
(n.min−1)
X0.520.500.510.450.470.504.48<0.050.06c
SD0.260.250.240.340.270.25
DCCZ3
(n.min−1)
X0.140.140.130.100.120.125.08<0.050.07c
SD0.130.120.110.090.100.10
Note: Relative total distance covered (TDCrel), maximum sprint speed (Smax), average speed (Savg), relative distance covered in different speed zones Z1 (0–0.7 km.h−1), Z2 (0.7–7.2 km.h−1), Z3 (7.2–14.4 km.h−1), Z4 (14.4–19.8 km.h−1), Z5 (19.8–25.2 km.h−1), Z6 (>25.2 km.h−1), high-metabolic load distance (HMLD); number of acceleration entries: ACCZ3 (Very High Magnitude of Acceleration (>3.6 m.s−2); ACCZ2 High Magnitude Acceleration (2.4–3.6 m.s−2), ACCZ1 Low Magnitude of Acceleration (<2.4 m.s−2), numbers of deceleration entries: DCCZ3 Very High Magnitude of Deceleration(<−3.6 m.s−2), DCCZ2 High Magnitude of Deceleration (−2.4–3.6 m.s−2), DCCZ1 Low Magnitude of Deceleration Distance (<−2.4 m.s−2); a—significant difference between T1 and T2; b—significant difference between T1 and T3; c—significant difference between T1 and T4; d—significant difference between T1 and T5; e—significant difference between T1 and T6; f—significant difference between T2 and T3; g—significant difference between T2 and T4; h—significant difference between T2 and T5; i—significant difference between T2 and T6; j—significant difference between T3 and T4; k—significant difference between T3 and T5; l—significant difference between T3 and T6; m—significant difference between T4 and T5; n—significant difference between T4 and T6; o—significant difference between T5 and T6.
Table 2. Comparison of internal load parameters of the different match time periods.
Table 2. Comparison of internal load parameters of the different match time periods.
Parameters T1T2T3T4T5T6Fpηp2Posthoc
0–4545–700–7070–9045–900–90
HRmax (beats.min−1)X192.70188.74193.23187.48188.11193.7657.45<0.050.47a,c,d,f,
i,j,k,n,o
SD6.576.586.406.615.976.05
HRavg (beats.min−1)X168.41163.85166.62164.53164.19165.588.23<0.050.11a,d,f,k,o
SD12.3810.069.369.929.128.73
Time in HRZ1
(%)
X18.8025.9222.3624.4825.2023.424.66<0.050.07a,b,o
SD2.014.652.804.623.953.29
Time in HRZ2
(%)
X18.8025.9222.3624.4825.2023.426.33<0.050.09a,b,d,e,f,o
SD16.4717.3415.2717.1615.0914.03
Time in HRZ3
(%)
X19.2921.9320.6223.5622.7522.095.28<0.050.08
SD10.189.438.439.968.257.65
Time in HRZ4
(%)
X22.7924.9723.8928.0226.5025.965.03<0.050.07
SD10.3811.679.4817.1713.2812.07
Time in HRZ5
(%)
X34.5319.5727.0517.8518.7122.4526.82<0.050.29a,b,c,d,e,
f,j,k,l,n,o
SD25.6317.4019.4714.8914.5714.86
Note: HRmax: maximum heart rate, (beats.min−1), HRavg: average heart rate (beats.min−1), time spent in different intensities zones (Z1-Z5), time in HRz1: steady state intensity (%), time in HRz2: low intensity (%), time in HRz3: aerobic intensity (%), time in HRz4: submaximal intensity (%), time in HRz5: maximum intensity (%); a—difference between T1 and T2; b—significant difference between T1 and T3; c—significant difference between T1 and T4; d—significant difference between T1 and T5; e—significant difference between T1 and T6; f—significant difference between T2 and T3; g—significant difference between T2 and T4; h—significant difference between T2 and T5; i—significant difference between T2 and T6; j—significant difference between T3 and T4; k—significant difference between T3 and T5; l—significant difference between T3 and T6; m—significant difference between T4 and T5; n—significant difference between T4 and T6; o—significant difference between T5 and T6.
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Kunzmann, E.; Ford, K.R.; Sugimoto, D.; Baca, A.; Hank, M.; Bujnovsky, D.; Mala, L.; Zahalka, F.; Maly, T. Differences in External and Internal Load in Elite Youth Soccer Players within Different Match Timing Zones. Appl. Sci. 2022, 12, 7230. https://doi.org/10.3390/app12147230

AMA Style

Kunzmann E, Ford KR, Sugimoto D, Baca A, Hank M, Bujnovsky D, Mala L, Zahalka F, Maly T. Differences in External and Internal Load in Elite Youth Soccer Players within Different Match Timing Zones. Applied Sciences. 2022; 12(14):7230. https://doi.org/10.3390/app12147230

Chicago/Turabian Style

Kunzmann, Egon, Kevin R. Ford, Dai Sugimoto, Arnold Baca, Mikulas Hank, David Bujnovsky, Lucia Mala, Frantisek Zahalka, and Tomas Maly. 2022. "Differences in External and Internal Load in Elite Youth Soccer Players within Different Match Timing Zones" Applied Sciences 12, no. 14: 7230. https://doi.org/10.3390/app12147230

APA Style

Kunzmann, E., Ford, K. R., Sugimoto, D., Baca, A., Hank, M., Bujnovsky, D., Mala, L., Zahalka, F., & Maly, T. (2022). Differences in External and Internal Load in Elite Youth Soccer Players within Different Match Timing Zones. Applied Sciences, 12(14), 7230. https://doi.org/10.3390/app12147230

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