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Open Access Journal of Sports Medicine logoLink to Open Access Journal of Sports Medicine
. 2019 Oct 17;10:145–160. doi: 10.2147/OAJSM.S180408

Block periodization of endurance training – a systematic review and meta-analysis

Knut Sindre Mølmen 1,*, Sjur Johansen Øfsteng 1,✉,*, Bent R Rønnestad 1
PMCID: PMC6802561  PMID: 31802956

Abstract

Background

Block periodization (BP) has been proposed as an alternative to traditional (TRAD) organization of the annual training plan for endurance athletes.

Objective

To our knowledge, this is the first meta-analysis to evaluate the effect BP of endurance training on endurance performance and factors determinative for endurance performance in trained- to well-trained athletes.

Methods

The PubMed, SPORTdiscus and Web of Science databases were searched from inception to August 2019. Studies were included if the following criteria were met: 1) the study examined a block-periodized endurance training intervention; 2) the study had a one-, two or multiple group-, crossover- or case-study design; 3) the study assessed at least one key endurance variable before and after the intervention period. A total of 2905 studies were screened, where 20 records met the eligibility criteria. Methodological quality for each study was assessed using the PEDro scale. Six studies were pooled to perform meta-analysis for maximal oxygen uptake (VO2max) and maximal power output (Wmax) during an incremental exercise test to exhaustion. Due to a lower number of studies and heterogenous measurements, other performance measures were systematically reviewed.

Results

The meta-analyses revealed small favorable effects for BP compared to TRAD regarding changes in VO2max (standardized mean difference, 0.40; 95% CI=0.02, 0.79) and Wmax (standardized mean difference, 0.28; 95% CI=0.01, 0.54). For changes in endurance performance and workload at different exercise thresholds BP generally revealed moderate- to large-effect sizes compared to TRAD.

Conclusion

BP is an adequate, alternative training strategy to TRAD as evidenced by superior training effects on VO2max and Wmax in athletes. The reviewed studies show promising effects for BP of endurance training; however, these results must be considered with some caution due to small studies with generally low methodological quality (mean PEDro score =3.7/10).

Keywords: block training, traditional training, high-intensity training

Introduction

Historically, the block periodization (BP) training approach appeared for the first time in the early 1980s and has since then been popular and widely used among high-performance coaches.1 BP was at that time and even today, an alternative to traditional periodization (TRAD). TRAD is simultaneously developing different training abilities throughout the annual training season, where BP has highly concentrated training blocks targeting and developing selected abilities in sequences of 1–4 weeks.1,2 The BP approach was conceptualized to overcome the suggested limitations of TRAD, which has been criticized for conflicting physiological responses to multi-targeted training, resulting in 1) excessive fatigue, 2) insufficient training stimulation and 3) inability to provide multi-peak performances over the season.1,3 However, the effectiveness of BP and its methodological theories have also been criticized for not being sufficiently founded in empirical research literature.46

Several successful examples of BP training have been proposed during the last decades, with the first English written report, a single-case study, published in the mid-1990s.7 However, the first English written studies comparing BP and TRAD were not published before the year 2010.8,9 Subsequently, several studies have been published and with the growing literature in the field, there is a need to evaluate the current pooled evidence for the effect of BP of endurance training in trained athletes. Vladimir Issurin, one of the pioneers fronting BP training, states that BP has taken different forms according to the positions and experiences of those who presented them.10 He himself defines BP training as 2–4 week mesocycles with highly concentrated workloads directed at targeted training abilities, carried out in a specific order (“accumulation”, focusing on basic abilities; “transmutation”, focusing on sport-specific abilities; “realization”; focusing on recovery and peaking toward competition).10 Each of these blocks will then build off the physiological adaptations of the prior training block. On the other hand, others define shorter training blocks (~1 week, ie, microcycles) as BP training and have generally a slightly different approach to the concept.11,12 The main difference between Issurin’s and the alternative BP model is that, roughly speaking, Issurin focuses on concurrently developing a small selection of abilities in each mesocycle. In contrast to Issurin’s model has the alternative model a more unidirectional focus on one specific ability in each microcycle, which has similarities to the model introduced by Professor Verkhoshansky in the 1970s.13

In this paper, we define BP training as either one or more blocks with ≥1 week duration of concentrated training focus with either a uni- or multitargeted approach, which means that both BP models are included. The purpose of this paper was therefore to: 1) systematically evaluate the current evidence for the effect BP of endurance training has on endurance performance and factors determinative for endurance performance in trained- to well-trained athletes; 2) conduct meta-analyses to pool and evaluate the existing effects and 3) to address the methodological quality, strengths and limitations of the current literature on this topic. To our knowledge, this is the first published meta-analysis to evaluate the effect of BP of endurance training.

Methods

Literature search

This systematic review and meta-analysis followed the guidelines established by the PRISMA statement,14 except for the descriptive results from the literature search which in this paper is mentioned in this chapter (ie, optimized PRISMA).

A PubMed, SPORTdiscus and Web of Science literature search from inception to August 6, 2019, was conducted. The search terms included “periodization” OR “periodized” OR “periodisation” OR “periodised” OR “block” OR “blocked” OR “blocking” AND “training” OR “exercise” AND “endurance” OR “concurrent” OR “traditional”. Two independent observers reviewed the studies and then individually decided whether inclusion was appropriate. Results were compared, discrepancies between reviewers were discussed and a consensus-based decision was taken. A flowchart of the search strategy and study selection is shown in Figure 1. Two independent reviewers assessed the methodological quality and risk of bias for each study using the PEDro scale from 1 to 10. Studies with scores >6 were considered “high-quality”, studies with scores 4–5 were considered to be “medium-quality” and studies that scored below 4 were considered to be “low-quality”.15

Figure 1.

Figure 1

Flowchart of the search strategy and study selection.

Studies were included in the review with the following criteria: 1) the study examined a BP of endurance training intervention; 2) the study had a one-, two or multiple group-, crossover- or case-study design; 3) the study assessed at least one key endurance variable or factor before and after the intervention period.

Data extraction

We extracted the following characteristics from each eligible trial: authors; year of publication; groups; training status; sample size; sex; mean baseline age and body weight; exercise modality; training period and frequency; training session protocol including work intensity and duration; if sessions were supervised or not. If applicable, the following variables with mean and variance measures were retrieved for baseline-, post- and change-values: maximal oxygen uptake (VO2max; mL⋅min−1⋅kg−1) and maximal power output (Wmax) during an incremental exercise test to volitional exhaustion; workloads at different exercise thresholds (workload at second ventilatory threshold, onset of blood lactate accumulation or 2, 3 or 4 mmol⋅L−1 capillary lactate concentration); work economy; gross efficiency; endurance performance variables (closed-end tests, time to exhaustion-tests, Yo-Yo-tests). For data only described in figures or graphs, we used Fiji software16 to read the data. Some of the data were obtained through personal contact with the authors.

Results from database search

The database search identified 2900 potentially relevant journal articles (Figure 1). Five studies were additionally included and identified through contact with the study authors, resulting in a total of 2905 records. Screening of titles and abstracts for inclusion criteria revealed 60 eligible articles for full-text review. Of these, a total of 20 records were included in this study.

The 20 studies in this review were published between the years 1993–2019. Characteristics of studies, participants and training interventions are summarized in Table 1. One of the included studies had a three groups-comparison design (1 week intervention),17 six had a two groups-comparison design (5.8±3.8 weeks intervention, range: 1.6–12 weeks),8,1822 five had a one group-design (47.3±74.0 weeks intervention, range: 1.9–176 weeks),2327 three were crossover studies (12.0±7.8 weeks intervention, range: 3–17 weeks)9,12,28 and five were case-studies (26.2±27.1 weeks intervention, range: 1–58 weeks).7,2932

Table 1.

Characteristics of the studies and participants

Groups Participants Training intervention Endurance training
Authors Exp. groups Matched? Sport Sex Training level Exercise form Training Duration (weeks) Avg. freq./week Exercise intensity Duration/session Additional/replacement Supervision Outcomes
Pyne and Touretski (1993)
[case study]
Block periodization Swimming Male Athlete Swimming Week 1: LIT focus Week 2: Anaerobic threshold focus Week 3: HIT focus. 3 n/a (61–69 km/week) LIT, MIT and HIT n/a Replacement n/a Blood lactate responses
Garcia-Pallarés et al (2009)
[one group-design]
1. Block periodization 11 Kayakers Male Athletes Kayaking and resistance exercises 3 blocks (1. VT2-focus, 5 weeks. 2. VO2max-focus, 5 weeks. 3. Competition pace-focus, 2 weeks.). 12 12.5 70–100% VO2max 20–120 mins Replacement Yes VO2max, maximal paddling speed, VT2, 1RM, muscle power assessments
Breil et al (2010)
[two group-design]
Meta: YES
1. HIT block periodization No 13 Alpine skiers Mixed Athletes Bicycling and obstacle running 3x3 days with HIT blocks (5 HIT sessions per block). 1.6 9.6 90–95% HRmax 16 mins HIT Replacement (resistance training in addition) Yes VO2max, Wmax, TTE @ 90% pre-Wmax, VT1, VT2, SJ, CMJ
2. Control training 8 Alpine skiers Mixed Athletes n/a Continued normal training. 1.6 n/a n/a n/a n/a
Garcia-Pallarés et al (2010)
[crossover design]
1. Block periodization No 10 Kayakers Male Athletes Kayaking and resistance exercises 3 blocks (1. VT2-focus, 5 weeks. 2. VO2max-focus, 5 weeks. 3. Competition pace-focus, 2 weeks.). 12 n/a 70–100% VO2max 20–120 mins Replacement Yes VO2max, maximal paddling speed and power, VT2
2. Traditional periodization Kayaking and resistance exercises 3 blocks (1. VT2-focus, 12 weeks. 2. VO2max-focus, 6 weeks. 3. Competition pace-focus, 4 weeks.). 22 n/a 70–100% VO2max 20–120 mins Replacement Yes
Mallo (2011)
[one group-design]
Block periodization 1 Soccer team Male Athletes Running, resistance exercises, flexibility 4 consecutive seasons where each season was structured into three training stages which were further subdivided into three training blocks. 4 seasons á 309±10 days n/a LIT and HIT n/a Replacement n/a Points obtained in matches, table position
Mallo (2012)
[one group-design]
Block periodization 22 Soccer players Male Athletes Running, resistance exercises, flexibility One season that was structured into five training stages which were further subdivided into three training blocks. 44 n/a LIT and HIT n/a Replacement n/a Yo-Yo-test, CMJ, 10-m sprint
Støren et al (2012)
[case study]
Increased HIT volume and reduced total training volume (with HIT blocking) 1 Cyclist Male Athlete Running and bicycling ~4 months preseason training: 3 HIT sessions/week +2 HIT blocks á 14 sessions in 9 days. 52 (~17 weeks with experimental training) ~4.4 90–95% HRmax 16 mins HIT Replacement of HIT, reduced total training volume n/a VO2max, lactate threshold, cycling economy, TT performance
Wahl et al (2013)
[two group-design]
HIT block periodization with active recovery Yes, by HIT volume 8 triathletes Mixed Athletes Bicycling, running and swimming 3x3 days with HIT blocks (4–5 HIT sessions per block) +1 extra day with two HIT sessions. Active rest periods between intervals. 2 7.5 90–95% HRmax ~15 mins HIT Replacement Yes VO2max, Wmax, VT1, VT2, TT performance, Wingate, Hbmass
HIT block periodization with passive recovery 8 triathletes Mixed Athletes Bicycling, running and swimming 3x3 days with HIT blocks (4–5 HIT sessions per block) +1 extra day with two HIT sessions. Passive rest periods between intervals. 2 7.5 90–95% HRmax ~15 mins HIT Replacement Yes
Rønnestad et al (2014)
[two group-design]
Meta: YES
1. HIT block periodization Yes, by total and intensity-specific training volume 10 Cyclists Male Athletes Bicycling 5 HIT sessions in week 1, thereafter 1 HIT session/week in week 2–4. 4 2 88–100% HRmax 30 mins HIT Replacement of HIT training n/a VO2max, Wmax, power @ 2mmol/L [La], cycling economy, gross efficiency
2. Traditional organization 9 Cyclists Male Athletes Bicycling 2 HIT sessions/week. 4 2 88–100% HRmax 30 mins HIT Replacement of HIT training n/a
Rønnestad et al (2014)
[two group-design]
Meta: YES
1. HIT block periodization Yes, by total and intensity-specific training volume 8 Cyclists Male Athletes Bicycling 3 blocks á 4 weeks. Each block with 5 HIT sessions in week 1, thereafter 1 HIT session/week in week 2–4. 12 2 88–100% HRmax 30 mins HIT Replacement of HIT training n/a VO2max, Wmax, power @ 2mmol/L [La], 40min all-out test, gross efficiency, Hbmass
2. Traditional organization 7 Cyclists Male Athletes Bicycling 2 HIT sessions/week. 12 2 88–100% HRmax 30 mins HIT Replacement of HIT training n/a
Wahl et al (2014)
[one group-design]
HIT block periodization 12 Soccer players Male Athletes Running, dribbling tracks and small-sided games 4×2–3 days with HIT blocks (2–4 HIT sessions per block). 1.9 6.5 90-95% HRmax 16 mins HIT Additional n/a Yo-Yo-test, RSA test, CMJ
Clark et al (2014)
[three group-design] Meta: YES
Short sprints block Yes, by total and HIT volume 9 Cyclists Male Athletes Cycling Short sprints, 5–20 s. 7 consecutive days. 1 7 All-out 15 mins sprinting Replacement Yes VO2max, Wmax, power @ OBLA, gross efficiency, TT performance
Long sprints block 10 Cyclists Male Athletes Cycling Long sprints, 15–45 s. 7 consecutive days. 1 7 All-out 15 mins sprinting Replacement Yes
Control 9 Cyclists Male Athletes Cycling Continued normal training. Same amount of total training as exp. groups. n/a
Fernandez-Fernandez et al (2015)
[one group-design]
HIT block periodization 12 Tennis players Male Athletes Tennis-specific HIT sessions 5×2–3 days with HIT blocks (2–3 HIT sessions per block). 2.4 5.4 90–95% HRmax or VIFT ~15 mins HIT Additional Yes 30:15 intermittent fitness test, RSA test, CMJ, 20-m sprint
Rønnestad et al (2016)
[two group-design] Meta: YES
HIT block periodization Yes, by total and intensity-specific training volume 10 XC-skiers Mixed Athletes Uphill cross-country skiing 5, 1, 3, 1, 1 HIT sessions/week in week 1–5. 5 2.2 88–100% HRmax 30 mins HIT Replacement of HIT training n/a VO2max, Wmax, power @ 4mmol/L [La], fractional utilization of VO2max, work economy
Traditional organization 9 XC-skiers Mixed Athletes Uphill cross-country skiing 2, 2, 3, 2, 2 HIT sessions/week in week 1–5. 5 2.2 88–100% HRmax 30 mins HIT Replacement of HIT training n/a
Rønnestad et al (2016) [case study] HIT block 1 Cyclist Male Athlete Cycling 7 consecutive days with 3 sets of 9.5 mins of 30 swork intervals interspersed with 15 s recovery. 1 7 Highest possible average power output 28.5 mins HIT Replacement n/a VO2max, Wmax, power @ 2mmol/L [La], maximal voluntary torque, SJ
Manchado et al (2017)
[crossover design]
Block periodization Yes, by total endurance training volume 11 Handball players Female Athletes Running, handball-specific endurance exercises and resistance exercises ACC (5 weeks)-, TRA (5 weeks)-, and REA (6 weeks) period focusing on maximal three physical abilities/period. 16 3/2 endurance sessions (ACC/TRA period, resp.) 85–95% HRmax 25–30 mins Replacement n/a VO2max, throwing velocity, SJ, CMJ, maximal strength, 20-m sprint
Traditional organization GP (4 weeks)-, SP (4 weeks)-, and C (8 weeks) period focusing on mixed, multitargeted training. 16 3/2 endurance sessions (GP/SP period, resp.) 70–85% HRmax 25–40 mins Replacement n/a
McGawley et al (2017)
[crossover design]
Block periodization Yes, by total and intensity-specific training volume 20 XC-skiers Mixed Athletes Cross country skiing, running and resistance exercises 9 HIT sessions in week 2 (0 in week 1 and 3), 4 and 5 LIT sessions in week 1 and 3 (0 in week 2), 3 resistance training sessions in week 1 and 3 (0 in week 2). 3 6 60–100% HRmax 20 mins HIT sessions, 58–127 min LIT sessions Replacement Yes VO2max, work economy, TT performance, muscle characteristic (capillary density, fiber area, fiber type distribution, oxidative and glycolytic enzymes activity)
Evenly-distributed training 3 HIT sessions/week, 2–3 LIT sessions/week and 2 resistance training sessions/week. 3 5.3 60–100% HRmax 20 mins HIT sessions, 58–127 min LIT sessions Replacement Yes
Rønnestad et al (2018)
[two group-design] Meta: YES
HIT and resistance training block periodization Yes, by total and intensity-specific training volume 8 Ice hockey players Male Athletes Bicycling and resistance exercises HIT-focus in week 2 and 5 (5 sessions/week) and focus on resistance training the other weeks (1 HIT session/week). 6 2.3 “Maximal sustainable work intensity” 28.5 mins HIT Replacement of HIT and resistance training Yes VO2max, Wmax, Wingate, maximal torque, SJ
Traditional periodization 8 Ice hockey players Male Athletes Bicycling and resistance exercises 2–3 HIT sessions and 5–6 resistance training sessions each week. 6 2.3 “Maximal sustainable work intensity” 28.5 mins HIT Replacement of HIT and resistance training Yes
Rønnestad et al (2018)
[case study]
Block periodization 1 Cyclist Male Athlete Bicycling and resistance exercises Training blocks lasting 1–2 weeks focusing on LIT, MIT and HIT separately, while maintaining the others. 58 n/a (~12hrs/
week)
60–100% HRmax 16–420 mins Replacement n/a VO2max, Wmax, power @ 3mmol/L [La]
Strøm Solli et al (2019)
[case study]
Block periodization Season 2005–2006 1 Cross country skier Female Athlete Skiing, running, cycling, resistance exercises Block periodization of HIT training: 7 HIT blocks of 7–11 days including 8–13 HIT sessions. 121% higher total HIT volume than TRAD. 52 157 HIT sessions in total 60–100% HRmax n/a Replacement n/a World Cup victories and ranking
Traditional periodization Season 2014–2015 Ibid. Female Athletes Skiing, running, cycling, resistance exercises Traditional periodization. 15% and 70% higher LIT ant MIT volume than BP. 52 77 HIT sessions in total 60–100% HRmax n/a Replacement n/a

Abbreviations: “, “the same as above”; HIT, high-intensity training; MIT, moderate-intensity training; LIT, low-intensity training; VO2max, maximal oxygen uptake; Wmax, peak power output; TTE, time to exhaustion; VT1, first ventilatory threshold; VT2, second ventilatory threshold; SJ, squat jump height; CMJ, counter movement jump height; 1RM, one-repetition maximum; HRmax, maximal heart rate; [La], capillary lactate concentration; Hbmass, hemoglobin mass; TT, time trial; VIFT, velocity obtained in the intermittent fitness test; RSA, repeated sprint ability; XC-skiers, cross-country skiers; ACC, accumulation; TRA, transformation; REA, realization; GP, general preparation; SP, specific preparation; C, competition; OBLA, onset of blood lactate accumulation.

Six of the 20 studies were eligible for meta-analysis (ie, parallel-design studies comparing BP with TRAD). Average length of these training interventions was 4.9±4.0 weeks (range: 1–12). Four of the studies were conducted on male participants, while the remaining two studies included both males and females. The studies were performed on cyclists in three occasions11,17,22 and on cross-country skiers,20 hockey players21 and alpine skiers8 in the other three studies. According to De Pauw et al’s33 guidelines to classify subject groups in sport-science research were all experimental groups classified as trained or well-trained (performance level ≥3) at baseline for absolute peak power output (all groups >339 W). This was the same for relative VO2max (performance level ≥3; >55 mL⋅min−1⋅kg−1), except for one study8 where the subjects were classified as recreationally trained (performance level 2; 53 mL⋅min−1⋅kg−1).

PEDro scores for included parallel design-studies are shown in Table 2. The 10 included studies achieved a mean PEDro score of 3.7/10. Six of the studies achieved a rating of moderate quality, while the remaining four studies were of low quality.

Table 2.

PEDro scores

Authors PEDro Scale: item number Total Rating
1 2 3 4 5 6 7 8 9 10 11 score
Breil et al (2009) Yes 0 0 0 0 0 0 1 0 1 1 3 Low
Garcia-Pallarés et al (2010) No 0 0 1 0 0 0 0 0 1 1 3 Low
Rønnestad et al (2014) No 0 0 1 0 0 0 1 0 1 1 4 Medium
Rønnestad et al (2014) No 0 0 1 0 0 0 1 0 1 1 4 Medium
Wahl et al (2013) No 0 0 0 0 0 0 1 0 1 1 3 Low
Clark et al (2014) Yes 0 0 1 0 0 0 1 0 1 1 4 Medium
Rønnestad et al (2016) No 1 0 1 0 0 0 1 0 1 1 5 Medium
Manchado et al (2017) No 0 0 1 0 0 0 0 0 1 1 3 Low
McGawley et al (2017) No 1 0 0 0 0 0 1 0 1 1 4 Medium
Rønnestad et al (2018) No 1 0 0 0 0 0 1 0 1 1 4 Medium

Calculation of effect sizes for meta-analysis

VO2max and Wmax were evaluated in the meta-analysis since these two are considered to be the most important predictors of endurance performance33 and were the most common reported variables across studies. Other variables were not highlighted in the meta-analysis considering the test protocols being to heterogenetic for comparison in a meta-analysis (ie, measures of anaerobic threshold).

Standardized mean difference estimates with their corresponding sampling variance were computed for VO2max and Wmax for BP and TRAD groups in each study with eq. (1),

graphic file with name M1.gif (1)

where Inline graphic and Inline graphic are the means of BP and TRAD’s pretest and posttest and SDpre is the standard deviation of the pretest scores. Inline graphic is a bias-correction factor for adjustment of small samples.34 The sampling variance for the standardized mean difference was computed with the formula eq. (2),

graphic file with name M5.gif (2)

where Inline graphic is the unbiased standardized mean change and Inline graphic is the estimate of the pre-post test correlation for group j of study i. The difference in the two standardized mean change scores was then calculated with eq. (3),

graphic file with name M8.gif (3)

where Inline graphic and Inline graphic are the BP and TRAD group, respectively. The calculation of standardized mean difference and sampling variance were computed based on equations from Becker34 and Morris35 using the metafor package for R.36

Statistical analysis

Meta-analysis was fitted using a random-effect model threating variation between studies as a random effect and variation between BP and TRAD groups as random effects nested within studies.35,37 Model parameters (amount of heterogeneity) were estimated by the Paule-Mandel-estimator with a Knapp and Hartung adjustment.37,38 Studies were weighted by the inverse of the sampling variance. The heterogeneity among studies was explored using Inline graphic and Inline graphic, with values of 20%, 50% and 75% indicating low, moderate and high heterogeneity, respectively.39 The meta-analysis was modulated using the metafor package for R.36 Due to the limited number of studies which in turn reduces the overall power for the models, moderator or sub-groups analysis were not performed.39 If a study had three comparison groups, the intervention groups were combined as recommended by the Cochrane handbook.39 The criteria to interpret the magnitude of the effect size (ES) were the following: 0.0–0.2 trivial, 0.2–0.6 small, 0.6–1.2 moderate, 1.2–2.0 large and >2.0 very large.40 ESs (Cohen’s d) for endurance performance, exercise economy/efficiency and workloads at different exercise thresholds are presented as calculated in the original articles.

Results

Meta-analyses

The VO2max and Wmax analyses comprised 107 subjects, nested within 6 studies. Figures 2 and 3 show a summary of the data and each study`s standardized mean difference as well as the pooled size.

Figure 2.

Figure 2

Forest plot of studies comparing the changes in maximal oxygen consumption (mL⋅min−1⋅kg−1) between block and traditional periodization training. The data shown as standardized mean difference (SMD) are mean [95% CI]. Weight=statistical weight of each study.

Figure 3.

Figure 3

Forest plot of studies comparing the changes in maximal power output (Wmax) between block and traditional periodization training. The data shown as standardized mean difference (SMD) are mean [95% CI]. Weight=statistical weight of each study.

Maximal oxygen uptake

The overall ES for VO2max of 0.40 (95% CI=0.02, 0.79) shows a small favor for BP compared to TRAD and the null hypothesis was rejected (t=2.7, p=0.04). The prediction interval (95% CI=−0.32, 1.12) implied that the true effect in 95% of study settings is uncertain. The T2=0.06 and I2=48.4% implies low-to-moderate variance among the true effect.

Maximal power output

Wmax showed an overall ES of 0.28 (95% CI=0.01, 0.54) which elucidates a small favor of BP compared to TRAD and the null hypothesis is rejected (t=2.6, p=0.04). The prediction interval (95% CI=−0.18, 0.73) states that the true effect in 95% of study settings is uncertain. The T2=0.02 and I2=34.0% implies low-to-moderate variance among the true effect.

Systematic review

Endurance performance was assessed in eight of the examined studies

Measures of closed-end cycling performances was conducted in five studies11,12,17,19,29. Rønnestad et al11 observed an increased mean power output during 40 mins cycling in both groups (BP: 8.2±5.7%, TRAD: 4.1±3.1%). This revealed a moderate ES in favor of BP training compared to TRAD (ES=0.89), although the difference in relative changes between the two groups was not significant (p=0.12). Wahl et al19 did also find a superior mean power output in 20 mins cycling performance after 2 weeks BP. Interestingly, the group that did passive recovery between high-intensity training (HIT) interval bouts tended to increase more than the group performing active recovery (passive recovery, +27±10 W; active recovery, +14±18 W; p=0.09). A shorter block of 7 days with consecutive maximal intensity sprinting sessions did also augment time trial performance (computer-simulated 20 km) were long sprints (15–45 s) gave the same improvement in mean power output as shorter sprints (5–20 secs; +6.8±5.8% and +4.6±4.4%, respectively),17 which was significantly different from the TRAD group (−3.3±4.2%; p<0.01, ES=0.67–0.82). In the case study of Støren et al,29 a 15% improvement was evident on their ~23-km indoor-bike time trial. In contrast to this, time trial performance (600-m treadmill rollerski time trial at 6° gradient) was only improved after TRAD of HIT (−3±5 s; p<0.05, ES=0.44) and not after BP of HIT (−1±6 s) in cross-country skiers.12 The changes were however not statistically different between groups.

One study8 conducted a time-to-exhaustion test at a workload corresponding to 90% of the athletes’ pre-intervention Wmax for evaluation of endurance performance. However, neither BP nor TRAD enhanced the performance (p>0.05). On the other hand, 13 days of BP in soccer players revealed a large improvement in Yo-Yo Intermittent Recovery Test Level 2 (from 407±43 m to 507±57 m, p<0.05; ES=1.92).26 The same was evident in Mallo et al’s25 seasonal monitoring (Yo-Yo Intermittent Recovery Test Level 1, from 2037±264 m to 2676±255 m; p<0.01) and after a comparable BP intervention were the players improved their maximal speed during the 30–15 Intermittent Fitness Test by 6.5±2.9% (p<0.001).27

Workloads at different exercise thresholds

Cyclists have revealed tendencies to greater improvements of power output at 2 mmol·L−1 lactate concentration following both 422 and 12 weeks11 with BP. The 4-week intervention gave a 10±12% increase in BP, while no changes were observed in TRAD, with no statistically significant differences between the groups, but the ES was in favor of BP (ES=0.71). For the 12-week study, the relative improvements were 22±14% and 10±7% for BP and TRAD, respectively. This revealed an even larger ES of BP compared to TRAD (p=0.054; ES=1.12). In another study, a 1-week training block enhanced power output at onset of blood lactate accumulation with ~7% (ES=0.53–0.60) compared to volume-matched TRAD, regardless if the block training was performed as long or short sprints (p<0.05).17 In a study comparing BP with either passive or active recovery between HIT interval bouts only the group that did passive recovery improved power output at second ventilatory threshold.19 A greater difference in change was also present compared to active recovery (p<0.05; ES=0.52). In long-term case-studies, 58 and 17 weeks of BP revealed a 36% improvement in power output at 3 mmol·L−1 lactate concentration and 14% increase in power output at lactate threshold, respectively.29,31 BP and TRAD were equally effective in improving paddling power at second ventilatory threshold (+10% vs +11%, respectively) in rowers,9 while in cross-country, skiers were BP superior to TRAD in improving power output at 4 mmol·L−1 lactate concentration (11±10% and 2±4%, respectively; p<0.01; ES=1.26) after a 5-week training period.20

Exercise efficiency and economy

Rønnestad et al11 observed a non-significant improvement in gross efficiency for their BP training group (from 20.3% to 20.9%; p=0.12). The relative improvement corresponded to a moderate ES in advantage of BP compared to TRAD training (ES=1.10; TRAD, from 19.6% to 19.5%). Quite similar results were present in Clark et al17 where none of the groups changed gross efficiency significantly (p>0.05; 5.1±3.9%, 3.2±2.4% and 1.5±4.3% improvement for BP with long sprints, BP with short sprints and TRAD training, respectively). However, the relative improvement of gross efficiency for short and long sprints revealed small to moderate ESs compared to TRAD (ES=0.26 and 0.65, respectively).17 Similarly, neither BP nor TRAD changed skiing economy following 5 weeks of HIT-training,20 whereas McGawley et al,12 on the other hand, showed improvement in skiing economy in TRAD only.

Discussion

The present study investigated the effects of BP on factors determinative for endurance performance and endurance performance measurements based on systematic analyses of pooled data from the existing literature. The meta-analyses revealed evidence for beneficial effects of BP compared to TRAD regarding VO2max and Wmax in trained athletes. Due to a lack of studies and heterogeneity between the tests used to evaluate endurance performance measures, workloads at different exercise thresholds and exercise efficiency/economy, meta-analyses were not performed for these factors. However, the vast majority of these data revealed either beneficial or similar effects for BP compared to TRAD. The findings emphasize that BP, as defined in the present paper, is an adequate, alternative strategy with potentially greater training effects than TRAD for trained to well-trained athletes. Nonetheless, the number of eligible studies are quite small (n=10) and they achieved only low-to-moderate PEDro scores. Some methodological considerations when interpreting the efficacy of BP are therefore important to address.

Meta-analysis of VO2max and Wmax

The included studies in the meta-analyses comprised young (25±7 years), trained athletes with average VO2max of 60±4 mL⋅min−1⋅kg−1 and Wmax of 367±33 W. The selection of participants requires that several aspects need to be elucidated regarding the external validity of these results. From an applied point of view, these results indicate that trained individuals, within a relatively short duration of time (4.9 weeks average study length; range, 1–12 weeks) can benefit from BP by a more efficient improvement of VO2max and Wmax compared to TRAD. The pooled ES of BP on VO2max was 0.40 (t=2.7, p=0.04) and Wmax was 0.28 (t=2.6, p=0.04). Although this per se is considered small effects,40 this may actually be an important effect considering that the athletes included in these analyses have performed a substantial training volume over a number of years before inclusion. For this reason, substantial improvements are not commonly observed in this population.41 With this in mind, BP seems to be a beneficial training strategy that successfully can enhance an athlete`s VO2max and Wmax further, at least in the short term. BP gave approximately the same ES for VO2max and Wmax, which is quite reasonable since they are previously shown to be closely related.42

The included studies were conducted in the preseason and lasted ≤12 weeks. Therefore, the effect of BP during the competitive season or in the longer term is not adequately explored. Nonetheless, some evidence is available for a beneficial effect of BP training also in a long-term perspective. Two single-case studies of elite cyclists revealed an increased VO2max and Wmax of 10–20% following 58 and 17 weeks of BP performed in training cycles of ~1–2 weeks.29,31 However, a female elite cross-country skier, who trained two seasons with either a BP or TRAD focus, showed no difference in the number of World Cup victories or ranking, indicating successful utilization of both training models.32 The latter is not surprising since years of TRAD is a well-established and efficient training strategy to enhance performance, as previously shown in case studies.43,44 Two studies have also compared the effects of BP and TRAD in two consecutive seasons with a cross-over design. Both of these showed a favor of BP in terms of similar or greater increases in VO2max with either a volume-matched approach28 or with performing fewer sessions and a shorter training intervention9 compared to TRAD in elite kayakers and handball players, respectively. These findings indicate that BP can be an alternative to TRAD for elite athletes also in a longer training perspective, even though general methodological weaknesses regarding single-case studies must be considered.

Endurance performance

Clark et al17 is the only study that observed a statistical improvement after BP compared to TRAD. The positive effects observed in the other studies have either been stated as non-significant superior improvements for BP11 or have lacked an appropriate control group to evaluate interaction effects.19 Accordingly, no interaction effects between BP and TRAD were either evidenced for a 600-m cross-country skiing time trial12 or a time to exhaustion test in cycling.8 Conversely, large improvements have been observed in endurance performance following 13 and 17 days of BP in soccer and tennis players measured as increased distance covered in Yo-Yo-test and speed at 30–15 test.26,27 There have also been shown improved time during a 23 km time trial in an elite cyclist following a year using BP.29 In addition, Mallo25 displayed an increased Yo-Yo-test performance after a 44-week season following a BP program in professional soccer players. However, all these latter results must be considered with caution due to the lack of control groups2527 and the use of case-study design.29 These somewhat inconsistent findings in endurance performance make it a bit more difficult to interpret the implications of BP. However, the ESs in the studies have generally shown moderate to large effects of BP vs TRAD on endurance performance11,17,19,25,26 although one has shown a small positive effect of TRAD.12 Overall, independent of sport discipline or performance assessment, it is pretty consistent that BP seems to improve rather than impair endurance performance.

Workloads at different exercise thresholds, exercise efficiency and economy

BP and TRAD increased power output at a definite exercise threshold in all included studies, except for the TRAD group in Rønnestad et al.22 Improvements were larger for BP compared to TRAD in cyclists17 and cross-country skiers20 at onset of blood lactate accumulation. In contrast, equal improvements of power output at a definite exercise threshold have been observed in kayakers,9 whereas one study observed a tendency in favor of BP11 and another study observed a within-change for BP, but not for TRAD and no significant change between groups.22 Again, implication of BP is divergent. Interestingly, Garcia-Pallarés et al9 trained approximately half of the volume in BP compared to TRAD (12 vs 22 weeks) and increased power output at second ventilatory threshold to the same extent. This can support the feasibility of concentrated stimuli for enhancing exercise threshold, in addition to the general moderate to large ESs in favor of BP.11,17,20,22 Moreover, considering the case-studies with their limitations, long-term effect of BP shows substantial improvements of 14% and 36% in exercise threshold power output.29,31 When it comes to exercise efficiency and economy, there are too few studies to make a discussion of them. Furthermore, taken the relatively short intervention period in the included studies and the high training status of the athletes, non or only minor changes in this variable would be expected.4547

To BP, or not to BP

The somewhat divergent results reviewed in this paper and the uncertainty with statistical models complicate the interpretation of the efficacy of BP. We suggest that BP should be considered in a holistic perspective, meaning that training history, training goals and everyday life situation among other factors should be evaluated before BP is integrated as a part of an athlete training program. There is consensus among researchers that variation and progression in training stimulus is necessary to augment physiological adaptations and to continuously develop endurance performance.44 In this context might both Issurin’s and the alternative model of BP display an advantage; TRAD induces smaller variations between mesocycles/microcycles than BP. However, within a microcycle/mesocycle TRAD will induce larger variations than BP. In response to this, the highly concentration of specific training in BP seems to be an advantage for inducing adaptations in well-trained athletes. Nevertheless, whether the enhancement of VO2max, Wmax or endurance performance is related to changes in training stimulus or BP per se is still difficult to elucidate. Rønnestad et al20 tried to accommodate this question by implementing variations of HIT stimuli (two and three sessions per week) within a mesocycle of TRAD. In this volume-matched HIT and low-intensity training design, BP was superior in developing Wmax and power output corresponding to 4 mmol·L−1 blood lactate concentration.

Regardless of whether the superior training effects of BP are related to BP itself or just a variation in stimuli, they both are closely intertwined. Training variation in the long-term planning is systematically applied in both the BP and TRAD model.6 So, in the long-term training plan both models aim to dynamically balance training with the purpose of avoiding dilution of training effects and the negative effects of monotony.5,6 Therefore, in the lack of an universally accepted definition of periodization,6 it might in some cases be difficult to distinguish between the two distinct models since they both are using some sort of variation in the organization of (long-term) training. The included studies are generally characterized by introduction of specific block(s) subsequent to a period with TRAD. This might just be a way of manipulating training to achieve a variation in training stimuli to optimize endurance improvements within the annual periodization plan. However, the long-term effects of this organization may not directly be answered by the relatively short-term studies conducted so far in the literature. The direction of future research should be emphasized to investigate the long-term effects of several blocks throughout a whole season, compared to the TRAD model, on performance, physiological and biological performance determinants.

The cross-over- and case-studies included have generally implemented multitargeted BP programs.9,2325,28,31 They are characterized by a prolonged nature, conducted over one training season or consecutive seasons. We should not underrate these study designs since these studies demonstrate greater ecological validity due to a more real-world setting. These studies have mainly employed the Issurin model of BP with three specific mesocycles; accumulation, transmutation and realization, whereby a minimum of different physiological abilities, eg, Wmax and maximal muscle strength,9 have been focused in a particular mesocycle. This is to a certain extent different to the alternative BP model were a specific ability is focused (ie, VO2max) in each microcycle, while other abilities are maintained (ie, muscular strength) with typically one session.11,21 Independent of the two BP models the existing evidence displays that both models are successful promotors of training adaptations and efficient training strategies both for team and individual sports, although the effect in team sports is less explored.

Overall, the reviewed studies displayed low to medium quality according to the PEDro scale. More or less all studies are at a higher risk of bias, mostly because of lack of blinding of testers and specifying randomization (Table 2). Furthermore, all except two studies8,17 did not provide eligibility criteria for the study participants. It may therefore be a question whether selection bias has occurred. In addition, the definite direction of the effects and the magnitude of such training have to be interpreted with some caution when considering the 95% prediction interval in the meta-analyses. The prediction interval, which addresses the actual dispersion of the true ES48 is again wider for VO2max (95% CI=−0.32, 1.12) as compared to Wmax (95% CI=−0.18, 0.73). Both prediction intervals overlap coverage of the confidence intervals for the point estimates, which suggests that the true effect might fall beyond the confidence intervals for each respective point estimate and therefore reveals an uncertainty for the true effect of BP.

Regarding the small number of available data used in the meta-analyses, the estimated between-study variance can be particularly inaccurate. We controlled for this factor by using the Knapp and Hartung adjustment36 together with the Paule–Mandel heterogeneity estimator, which are suggested to be more robust and produce less bias when sample size and study number is low.37,38 Heterogeneity scores for both models showed low-to-moderate heterogeneity considering the I2 and T2 scores (Figures 2 and 3), which implies that the models are valid.37 It is also important to examine the potential for publication bias. According to Sterne et al,49 interpretation of a funnel plot asymmetry should not be emphasized when there are <10 studies in a meta-analysis due to a lack of test power making it difficult to distinguish chance (ie, false positive findings) from real asymmetry. To accommodate the concern of asymmetry both a fixed- and random-effect model was fitted for both VO2max and Wmax, indicating the same magnitude of the effects between the models.

Conclusion

Irrespective of the BP models used, the meta-analyses showed favorable effects of BP for VO2max and Wmax, and the consistency in moderate-to-large ESs displayed for both workload at different exercise thresholds and endurance performance measurements in BP suggests also superior adaptations compared to TRAD. In general, these results seem promising, but since majority of the reviewed studies are small and of low methodological quality, the results must be considered with this in mind.

Disclosure

The authors report no conflicts of interest in this work.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Data Citations

  1. PEDro scale. Physiotherapy evidence database. 1999. Available from: https://www.pedro.org.au/english/downloads/pedro-scale/ Accessed September4, 2019.

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