Journal of Strength and Conditioning Research Publish Ahead of Print DOI: 10.1519/JSC.0000000000001321
METABOLIC DEMAND AND INTERNAL TRAINING LOAD IN TECHNICAL-
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TACTICAL TRAINING SESSIONS OF PROFESSIONAL FUTSAL PLAYERS
Brief running head: Internal training load in professional futsal
Carolina F Wilke1,2, Guilherme P Ramos1,3, Diogo A S Pacheco1, Weslley H M Santos1,
Emerson Silami-Garcia1
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Mateus S L Diniz1, Gabriela G P Gonçalves2, João C B Marins3, Samuel P Wanner1,
Exercise Physiology Laboratory, Universidade Federal de Minas Gerais, Belo
Horizonte (MG), Brazil
Nucleus of Sport Sciences Integration, Minas Tênis Club, Belo Horizonte (MG), Brazil
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Brazilian Football Confederation, Teresópolis (RJ), Brazil
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Human Performance Laboratory, Universidade Federal de Viçosa, Viçosa (MG), Brazil
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Corresponding author:
Dr. Samuel Penna Wanner
E-mail:
[email protected] Telephone: +55 (31) 3409-2328
This investigation was supported by the Conselho Nacional de Desenvolvimento Científico e Tecnológico (CNPq), the Fundação de Amparo à Pesquisa do Estado de
Copyright ª 2016 National Strength and Conditioning Association
Minas Gerais (FAPEMIG), the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES), the Pró-Reitoria de Pesquisa da Universidade Federal de Minas
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Gerais, FUNDEP/Santander and the Brazilian Ministry of Sport.
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ABSTRACT
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This study aimed to characterize aspects of technical-tactical training sessions of a
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professional futsal team. We addressed four specific aims: characterize the metabolic
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demands and intensity of these training sessions, compare the training intensity among
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players of different positions, compare the intensity of different futsal-specific activities
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(4 × 4, 6 × 4 and match simulation), and investigate the association between an
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objective (training impulse; TRIMP) and a subjective method (session rating of
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perceived exertion; sRPE) of measuring a player’s internal training load. Twelve top-
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level futsal players performed an incremental exercise to determine their maximal
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oxygen consumption, maximal heart rate (HRmax), ventilatory threshold (VT) and
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respiratory compensation point (RCP). Each player’s HR and RPE were measured and
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used to calculate energy expenditure, TRIMP and sRPE during 37 training sessions over
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8 weeks. The average intensity was 74 ± 4% of HRmax, which corresponded to 9.3
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kcal.min-1. The players trained at intensities above the RCP, between the RCP and VT
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and below the VT for 20 ± 8%, 28 ± 6% and 51 ± 10% of the session duration,
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respectively. Wingers, defenders and pivots exercised at a similar average intensity but
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with different intensity distributions. No difference in intensity was found between the
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three typical activities. A strong correlation between the average daily TRIMP and
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sRPE was observed; however, this relationship was significant for only four of twelve
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players, indicating that sRPE is a useful tool for monitoring training loads but that it
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should be interpreted for each player individually rather than collectively.
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Keywords: energy expenditure, situational activity, team sport, training monitoring.
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INTRODUCTION
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A fundamental pillar for sport performance enhancement is to achieve an adequate
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balance between training stimuli and athlete recovery. Within this context, monitoring
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the training load provides coaches and sports scientists with important information that
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enables adjustments in training sessions and recovery periods, thereby maximizing
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performance improvement (26). Although many studies have been conducted in sports
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with extended media coverage, including cycling (17, 28), rugby (22, 43) and soccer
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(16, 24), fewer studies have focused on less-popular sports, such as futsal (41).
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Several methods can be used to measure the internal load, which is defined as the
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individual response to the workload (external load) imposed on athletes during training
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or competition. The heart rate (HR) is indicative of the overall physiological strain
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during exercise (3) and can be used to calculate the training impulse (TRIMP), a
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training load index (35). TRIMP was originally calculated by multiplying the average
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intensity (expressed as the percentage of HR reserve) by the training duration and by a
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weighting factor, which was included to account for the non-linear increase in the
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contribution of the anaerobic system on the energy supply with increasing exercise
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intensity (35). The concept of TRIMP was later developed by authors who proposed
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intensity zones based on HR and attributed different weights to the time spent on high-
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and low-intensity exercises during a training session (18, 28). Lucia et al. (28) used the
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ventilatory threshold (VT) and the respiratory compensation point (RCP) as criteria to
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determine three intensity zones, namely, the zones below the VT (considered to be low
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intensity), between the VT and RCP (moderate intensity) and above the RCP (high
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intensity). Using Lucia’s method, Milanez et al. (31) described the training load of 8 on-
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court semiprofessional Brazilian futsal players during 78 training sessions performed
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before the main competition of the season. The authors observed that the players spent
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73% of the duration of a technical-tactical training session below the VT, 20% between
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the VT and RCP and only 7% above the RCP.
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The session rating of perceived exertion (sRPE) is a simpler method than measuring the
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HR to quantify the internal training load (21) and consists of assessing athletes’ RPEs
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using Borg’s 10-point scale (12) 20 to 30 minutes after a training session and then
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multiplying the score by the session duration. To validate the use of this method in team
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sports, previous studies tested the correlation between sRPE and TRIMP and found
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moderate to very strong correlation coefficients (4, 25, 40). However, only one study
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has investigated the relationship between these variables to quantify the internal load
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during physical and technical-tactical training sessions in futsal (31). Milanez et al. (31)
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reported strong to very strong individual correlation coefficients between sRPE and
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TRIMP and concluded that sRPE is a valid method to measure the internal training load
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of futsal players.
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Futsal is an intermittent, high-intensity sport (14, 11, 15, 38) in which an unlimited
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number of player substitutions are allowed by official rules (20). To enable the athletes
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to achieve optimal physical, technical and tactical performance during competitive
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matches, coaches usually plan training activities with aspects similar to those of
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different match situations (e.g., small-sided games, specific exercises with the same
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number of players and court sizes as in official matches but with different rules and
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instructions, and match simulations (MS)) in an attempt to mimic both the physiological
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and cognitive demands of matches during the training sessions (42, 44). Although
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previous studies have shown that some aspects of situational activities, such as the rules,
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pitch size and number of players, can influence exercise intensity in different sports (1,
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24), it remains unknown whether the existing information can be used to guide futsal
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training prescription (11). Thus, based on the importance given to specific training as a
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determining factor for achieving optimal performance during competitive matches, the
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intensities of specific activities for futsal with different rules and number of players
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must be measured and compared.
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Another aspect that deserves further investigation is the stress imposed on players of
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different tactical positions by training activities. A recent study showed that the
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concentrations of muscle damage and inflammation markers after matches are similar in
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defenders, winger and pivots (15), suggesting similar physiological strain among
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players during the matches. However, to the best of our knowledge, no study has
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investigated whether physiological strain is also similar among athletes of different
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playing positions during technical-tactical training sessions.
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Thus, considering the lack of information about training load in futsal, the general aim
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of this study was to characterize different aspects of training load in professional futsal
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technical-tactical training sessions. Four specific aims were established: 1) characterize
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the metabolic demands (estimated VO2) and intensity (percentage of HRmax; %HRmax)
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of professional futsal training sessions, 2) characterize and compare the training
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intensity (%HRmax) and intensity distribution (percent of time spent at different intensity
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zones) among players of different positions (wingers, defenders and pivots), 3)
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characterize and compare the intensity of typical exercises (4 × 4, 6 × 4 and MS)
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performed by professional futsal players, and 4) investigate the association between an
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objective method (TRIMP) and a subjective method (sRPE) of measuring the internal
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training load in futsal.
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METHOD
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Experimental approach to the problem
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This study followed a descriptive longitudinal approach. The internal load of
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professional futsal players was recorded in every technical-tactical training session over
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8 weeks. These experiments were conducted between late September and early
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November, when the team was not participating in any competition and only
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participated in two friendly matches. The training sessions were planned and executed
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by the coaches; to ensure ecological validity, the researchers did not interfere with either
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the planning or execution of the training sessions.
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Prior to the commencement of the study, all of the players performed an incremental
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maximal test to assess their maximal HR (HRmax) and their HR relative to the VT and to
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the RCP. To evaluate the internal training load, we measured the HR and RPE of each
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player in each session over an 8-week period. To assess whether the players’ hydration
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status could affect the HR measurements during training sessions, the volume of fluid
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consumed, the body mass loss and the environmental temperature were also measured
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over the entire study. Estimated oxygen consumption (VO2), energy expenditure, sweat
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loss, TRIMP and sRPE were calculated for each player in each training session. To
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guarantee a deeper understanding of the observed data, the training intensity for the
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different playing positions (winger, defender and pivot) and the intensities of three
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futsal-specific training activities were compared. Additionally, the correlation between
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two internal load indices (i.e., TRIMP and sRPE) and two measures of training intensity
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(HR and RPE) were tested.
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Subjects
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Twelve top-level male futsal players from a first division Brazilian team participated in
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this study. At the time of the study, the players displayed the following characteristics
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(mean ± SD): 23.0 ± 4.3 years of age (18 – 32 years range), 70.7 ± 8.5 kg body mass
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and 54.2 ± 4.2 mlO2.kg-1.min-1 maximal oxygen consumption (VO2max). During the year
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of this investigation, the team won the second main national competition promoted by
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the Brazilian Futsal Federation. The players were familiarized with the procedures for 4
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weeks prior to the commencement of the study and were asked to maintain their
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habitual diet during the experimental period.
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All of the procedures described in this study were approved by the Federal University of
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Minas Gerais Ethics Committee (14376413.0.0000.5149), and all volunteers provided
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their written consent after being informed of the procedures, potential risks and benefits
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of their participation in this investigation.
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Procedures
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Preliminary tests
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A maximal incremental test (adapted from DITTRICH et al., 16) was performed to
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assess the players’ VO2max, HRmax, VT and RCP. The test was conducted on a treadmill
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(Total Health®, HPX 380, Brazil) with an initial speed of 9 km.h-1 and additional
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increments of 1.2 km.h-1 every 3 minutes until volitional fatigue. If the subject did not
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interrupt the exercise after finishing the stage corresponding to 16.2 km.h-1, this speed
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was kept constant, and the inclination was increased by 1% every 3 minutes until
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fatigue (this was the case for only one player). At least 2 of the following criteria had to
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be met to determine the VO2max: 1) no further increase in VO2 or HR despite an increase
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in exercise intensity; 2) RPE higher than 17 on the 6 – 20 scale; and 3) respiratory
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exchange ratio higher than 1.10. The highest HR and VO2 registered during the test
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were considered the subject’s HRmax and VO2max.
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VO2 and VCO2 were measured breath-by-breath using an open circuit gas analyzer
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(GasSys2, BIOPAC System®, USA) calibrated before each test. HR was continuously
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measured (Team System, Polar®, Finland) and was recorded every minute, and RPE (15
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point scale – Borg, 12) was assessed immediately after the completion of each stage and
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at volitional fatigue. Average data from the last minute of each stage were used to
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determine the individual VO2 values. A linear regression equation was developed using
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individual HR and VO2 data to establish the association between these two variables.
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The VT and RCP were visually identified by two independent investigators, and a
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consensus-derived value was used. The VT was defined as the HR value corresponding
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to the moment of increase in VE.VO2−1 without a concomitant increase in VE.VCO2−1,
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whereas RCP was defined as the moment of increase in both VE.VO2−1 and VE.VCO2−1
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(6). Whenever there was a disagreement between the two investigators, a third
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researcher was asked to analyze the data. The point at which two of the three
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researchers agreed was used for subsequent analyses. Notably, disagreement only
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occurred for the RCP analysis of one player.
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Training sessions
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In total, 37 technical-tactical training sessions were conducted and monitored over 8
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weeks. The training routine comprised one to two daily technical-tactical training
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sessions performed on indoor futsal courts six days per week and one to two resistance
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training sessions per week. During the study, the researchers did not interfere with the
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training planning or execution, which were coordinated by the coaches of the team.
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Care was taken to not modify the training session routine to guarantee the ecological
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validity of the results.
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All of the evaluated sessions were divided in the following two parts: 1) the first 15 to
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30 minutes consisted of a warm-up that included general exercises such as jogging, low-
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intensity multidirectional movements and stretching; and 2) the next 60 to 90 minutes
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consisted of match simulations or activities specific for futsal, with varying instructions
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and numbers of players, that aimed to improve the technical and tactical skill of the
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athletes. The second part of each training session was termed the technical-tactical
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period. The training sessions were performed on courts with the following dimensions:
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36 × 20 m (n = 23), 31 × 19 m (n = 11) and 25 × 15 m (n = 03). The court dimensions
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were selected by the coaching staff based on the space available in the multisport
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training center.
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Before each training session, each player’s semi-nude (wearing shorts only) body mass
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was measured. Then, each player received a HR monitor (Team System, Polar®,
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Finland) that was used during the entire session. This monitor is reliable for measuring
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HR during continuous and intermittent exercises (3). Two bottles of water (WAT) and
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one bottle of a commercial carbohydrate beverage (CHO, 6%), filled with
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approximately 500 ml of fluid and previously weighed in a 0.02-kg precision balance
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(MF100, Filizola®, Brazil), were provided for each athlete. They were instructed to
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consume these fluids ad libitum and not to use the fluids for purposes other than
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ingestion (such as applying to the skin for refreshment). If necessary, the researchers
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refilled the bottles with the respective drink during training, thereby guaranteeing ad
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libitum fluid ingestion. WAT and CHO were offered to maintain the team’s routine
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because both of these fluids were available during all of the previous training sessions
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throughout the year.
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HR was continuously measured, and training activities were recorded using a digital
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video camera (DCR SR87 HD, Sony®, Japan). Wet and dry bulb temperatures were
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measured using a psychrometer (Alla France, France) every 15 minutes to calculate the
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average wet bulb globe temperature (WBGT) for indoor environments.
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At the end of the training sessions, the players dried their sweat with a towel and then
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underwent a second body mass measurement. Within 15 to 20 minutes after the end of
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the session, RPE was assessed using a 10-point scale (CR-10; FOSTER et al., 21) by
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asking each player individually “how was your training?” Finally, all of the bottles were
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weighed to calculate the volumes of WAT, CHO and total fluid ingested.
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Total sweat was calculated as the difference between post- and pre-training body mass
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corrected for the total volume of fluid ingested. Total sweat was divided by the duration
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of the training session to assess the sweat rate. The difference between post- and pre-
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training body mass was divided by the pre-training body mass and multiplied by 100 to
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calculate the percent change in body mass (%BM). Body mass losses higher than 3%
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are associated with exaggerated exercise-induced increases in HR (23, 39).
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To estimate the VO2 during the training sessions, a linear regression analysis was
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performed using the individual VO2 and HR values obtained during the incremental test.
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The average HR measured in each training session for each athlete was then applied to
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the resultant regression equation to estimate the average VO2 of the training sessions.
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The energy expenditure was then estimated, considering that the uptake of 1 L of O2
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corresponds to the expenditure of 4.8 kcal (9).
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Training intensity was calculated as the average percentage (%) of HRmax and time (in
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minutes) spent in three HR zones, defined as follows: zone 1) HR values lower than the
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HR corresponding to the VT; zone 2) HR values between those corresponding to the VT
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and RCP; and zone 3) HR values higher than the HR corresponding to the RCP. The
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time spent in each zone was then multiplied by its corresponding score (zone 1 = 1;
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zone 2 = 2; zone 3 = 3), and the products were summed to calculate the individual
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TRIMP for each training session (28). The sRPE was also calculated by multiplying
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each player’s RPE after the training session by the session duration in minutes (21).
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To compare the training intensity between playing positions [i.e., wingers (n = 5),
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defenders (n = 2) and pivots (n = 5)], the average values for % HRmax and the time spent
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in the high, moderate and low intensity zones were calculated for each position in each
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session (i.e., n = 35 sessions for each of the three playing positions). The head coach
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was responsible for determining the playing position of each athlete.
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Characterization of different training activities
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The results from 9 athletes were used to calculate the average %HR and intensity
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distribution (time spent in zones 1, 2 and 3) for three specific activities frequently
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performed during the training sessions. All of the selected activities included in the
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analysis met the following criteria: 1) performed in the morning; 2) held in a 36 × 20-m
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court; 3) involved the same number of players; and 4) lasted for a minimum of 15
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minutes. For data analysis, the three specific activities were as follows:
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a) 6 versus 4 (6 × 4): Each team comprised six players on the court, though a
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numerical advantage was created for the offensive team (attack overload).
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The opposite team was allowed to maintain only four players on the
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defensive half of the court, and the other two players stayed in the attack
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half of the court, without participating in the defense. Furthermore, both
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teams had a substitute player who could replace one of the team players on
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the court at any time. The average duration of the two situations selected
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was 18 ± 4 minutes, and the complete HR recordings from the first 15
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minutes were analyzed, including the time spent for instructions and
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substitutions. The main instruction provided by the coach was to maintain
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ball possession for as long as possible while attacking. Both teams had
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similar chances to attack during the activity, and the coach instructed the
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players whenever he felt necessary.
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b) 4 versus 4 (4 × 4): Each team comprised four players and a goalkeeper on
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the court plus one substitute player who could replace one of the players on
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the court at any time. The average duration of the four situations selected
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was 21 ± 8 minutes, and the complete HR recordings from the first 15
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minutes were analyzed, including the time spent for instructions and
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substitutions. The focus of the instruction provided to the athletes in these
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activities was the attack movement. Both teams had similar opportunities to
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attack during the activity, and the coach instructed the players whenever he
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felt necessary.
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c) Match simulation (MS): This activity involved the same number of players
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as did the 4 × 4 activity (4 players and a goalkeeper on the court plus one
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substitute player). The differences between these two activities were mainly
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in the duration, rules and instruction. The simulations that were analyzed
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comprised two 10-minute half periods separated by 5 minutes; each athlete
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was evaluated during the 20 minutes of MS, including the moments when
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they were playing and when they were substituted. The rules were the same
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as those of an official match, and there was no interruption for instructions.
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In addition, no specific instruction about the aim of MS was provided to the
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athletes by the coach.
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Statistical analysis
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Kolmogorov-Smirnov tests were performed to test data normality. Because all data
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were normally distributed, they are presented as the mean ± SD. Comparisons of the
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weekly internal training load (i.e., TRIMP and sRPE) were performed using one-way
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analysis of variance (ANOVA). Post-hoc differences in TRIMP were assessed using the
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Hochberg test, and differences in sRPE were assessed using the Games-Howell test;
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both utilized a Bonferroni correction. To compare the average training intensity (i.e. %
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HRmax) among the playing positions (i.e. wingers, defenders and pivots), a one-way
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ANOVA was performed. To compare the training intensity distribution (i.e. below LT,
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between LT and RCP and above RCP) among the playing positions, a two-way
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ANOVA ([3] time in each training intensity zone × [3] playing position) was performed
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followed by Tukey´s post hoc test. Comparisons of the average intensity among the
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three training activities (i.e. 4 × 4, 6 × 4, MS) were assessed by repeated measures one-
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way ANOVA, and comparisons of the intensity distribution among these three activities
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were assessed by repeated measures two-way ANOVA ([3] time in training intensity
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zone × [3] activities). For these comparisons, data reliability was tested using both
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relative (intraclass correlation coefficient; ICC (3,3); 45) and absolute (standard error of
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measurement; SEM) indices, and the effect size was calculated using the omega index
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(ω). The associations between HR and RPE and between TRIMP and sRPE were
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assessed using Pearson’s correlation coefficients and classified according to Evans’
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criteria (0.00 to 0.19 – very weak; 0.20 to 0.39 – weak; 0.40 to 0.59 – moderate; 0.60 to
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0.79 – strong; above 0.80 – very strong) (19). The difference in the volumes of CHO
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and WAT consumed was tested using Student’s t-test. A significance level of p < 0.05
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was adopted. All of the analyses were performed using SPSS 17.0 software for
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Windows (SPSS Inc.).
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RESULTS
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The exercise intensities that corresponded to the players’ VT and RCP were 75.8 ±
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4.8% of HRmax (53.7 ± 8.6% of VO2max), and 89.8 ± 5.1% of HRmax (78.2 ± 9.6% of
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VO2max), respectively.
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Although the training sessions were not exclusively held on one court size, all of the
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training data were analyzed and presented together because no differences were found
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in the average intensities attained by the players on the different court sizes (36 × 20-m
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court: 74.1 ± 3.6% of HRmax; 31 × 19-m court: 73.7 ± 3.9% of HRmax and 25 × 15-m
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court: 70.5 ± 1.5% of HRmax; F (2,33) = 1.345, p = 0.274; ω = 0.269).
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The average training intensity was 73.7 ± 3.6% of HRmax, which corresponded to an
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energy expenditure of 846 ± 129 kcal or 9.3 ± 1.0 kcal.min-1. Analysis of the intensity
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distribution showed that the athletes exercised at intensities above the RCP for 20.4 ±
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7.8%, between the RCP and the VT for 28.2 ± 5.6% and below the VT for 51.4 ± 9.7%
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of the time during the training sessions. The number of monitored sessions per athlete
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was 23 ± 8, with a minimum of 13 and a maximum of 37 sessions per athlete. The
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average duration of the sessions was 90.8 ± 11.6 min, and the average environmental
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conditions were 27.3 ± 2.7°C and 23.0 ± 2.2°C for dry bulb temperature and WBGT,
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respectively.
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The average daily and average weekly TRIMP values over the 8 weeks were 153 ± 21
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arbitrary units (AU) and 531 ± 148 AU, respectively. As shown in Figure 1, no
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difference in the average daily TRIMP was found over the 8 weeks (minimum of 140 ±
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20 AU in week 5 and maximum of 173 ± 21 AU in week 6; F (7,31) = 1.350; p = 0.261; ω
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= 0.48). However, the weekly TRIMP was lower in the sixth week than in the eighth
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week of training (266 ± 139 in week 6 vs. 695 ± 105 in week 8; F
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0.001; ω = 0.96). Additionally, no difference in the daily sRPE was found between the
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weeks (minimum of 359 ± 58 AU in week 5 and maximum of 514 ± 54 AU in week 6;
(7,63)
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= 3.597; p =
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= 1.477; p = 0.212; ω = 0.52), though the main effect for weekly sRPE was
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significant (F (7,67) = 6.184; p < 0.001; ω = 0.99). sRPE in week 6 (869 ± 416) was lower
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than in weeks 1, 4, 7 and 8 (2273 ± 423, 2183 ± 804, 2332 ± 845 and 2399 ± 351,
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respectively; p < 0.001). The lower weekly TRIMP and sRPE observed in week 6 are
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likely because the team played two friendly matches but performed no other training
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activities, resulting in fewer sessions compared with the other weeks.
(7,31)
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During the technical-tactical period, no difference was observed in the average training
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intensity (i.e. %HRmax) among players of different positions (wingers: 76.3 ± 4.9% of
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HRmax, defenders: 74.4 ± 4.9% of HRmax and pivots: 76.4 ± 4.0% of HRmax; F
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2.032; p = 0.136; ω = 0.41). However, these similar average values resulted from
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different distributions within the intensity zones (Figure 2). The wingers spent more
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time in the high intensity zone than the pivots (33.6 ± 15.6% vs. 19.1 ± 8.5%; F (2,100) =
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12.122; p < 0.001; ω = 0.995) and defenders (25.1 ± 12.0%; p = 0.016; ω = 0.995). The
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pivots spent more time in the moderate intensity zone than the wingers and defenders
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(pivots 37.4 ± 7.9% vs. wingers 20.9 ± 8.7% vs. defenders 23.3 ± 7.2%; F
19
44.271; p < 0.001; ω = 1.00), and the defenders spent more time in the low intensity
20
zone than did the pivots (wingers 45.7 ± 11.5% vs. defenders 51.6 ± 15.4% vs. pivots
21
43.5 ± 10.4%; F (2,100) = 3.975; p = 0.019; ω = 0.70).
A C
22 23
(2,100)
=
C
EP T
10
Figure 2 about here
24
Copyright ª 2016 National Strength and Conditioning Association
(2,100)
=
16
1
The three training activities (4 × 4, 6 × 4 and MS) yielded similar average intensity
2
values (F (2,16) = 0.158; p = 0.855; ω = 0.07). The main effect for the two-way ANOVA
3
(activity x intensity zone) was not significant neither for activity (F (2,72) = 0.000047; p =
4
1.000; ω = 0.05) or the time spent in the different intensity zones (F
5
0.066; ω = 0.54). There was also no interaction between the activity and intensity zone
6
(F (4,72) = 0.876; p = 0.483; ω = 0.266) (Table 1).
= 2.824; p =
ED
(2,72)
7
Table 1 about here
8 9
A strong correlation was observed between TRIMP and sRPE (r = 0.70; r2 = 0.49; p