CC BY-NC-ND 4.0 · Sports Med Int Open 2020; 4(01): E19-E26
DOI: 10.1055/a-1101-5750
Training & Testing
Eigentümer und Copyright ©Georg Thieme Verlag KG 2019

Cycling Performance in Short-term Efforts: Laboratory and Field-Based Data in XCO Athletes

Patrick Schneeweiss
1   Medical Clinic, Department of Sports Medicine, University of Tübingen, Tübingen, Germany
,
Philipp Schellhorn
1   Medical Clinic, Department of Sports Medicine, University of Tübingen, Tübingen, Germany
,
Daniel Haigis
1   Medical Clinic, Department of Sports Medicine, University of Tübingen, Tübingen, Germany
,
Andreas Niess
1   Medical Clinic, Department of Sports Medicine, University of Tübingen, Tübingen, Germany
,
Peter Martus
2   Institute for Clinical Epidemiology and Applied Biometry, University of Tübingen, Tübingen, Germany
,
Inga Krauss
1   Medical Clinic, Department of Sports Medicine, University of Tübingen, Tübingen, Germany
› Institutsangaben
Acknowledgements: We would like to thank all the volunteers who took part in this study that was supported by the Bundesinstitut für Sportwissenschaft (www.bisp.de) under grant [AZ 072041/16–17]. Furthermore we acknowledge support by Deutsche Forschungsgemeinschaft and Open Access Publishing Fund of University of Tübingen.
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Correspondence

Patrick Schneeweiss
Medical Clinic, Department of Sports Medicine, University of Tübingen
Hoppe-Seyler-Strasse 6
72076 Tübingen
Germany   
Telefon: +497071/2986496   

Publikationsverlauf

received 07. Oktober 2019
revised 16. Januar 2020

accepted 20. Januar 2020

Publikationsdatum:
27. März 2020 (online)

 

Abstract

Mountain bike cross-country Olympic has an intermittent performance profile, underlining the importance of short-term but high cycling power output. Previous findings indicate that power output during sprint tests differs between laboratory and field-based conditions and that cycling cadence rises with increasing workload. The aim was therefore to examine power output and cadence in short-term efforts under laboratory and field conditions. Twenty-three competitive athletes (17.9±3.7 years) performed a laboratory power profile test and a simulated race within one week. Power output and cadence during the power profile test were compared to corresponding short-term efforts during the race over durations of 10–300s (TT10–300). Differences were TT10+8%, TT30+7%, TT60–15% and TT300–12% for power output and+10%,+8%,+19%,+21% for cadence respectively. Compared to the race, we found higher power output during the power profile test for the shorter efforts but lower for TT60 and TT300. Confirming previous results, cadence was higher during the power profile test compared to the respective intervals of the race and increased with increasing workload or shorter time trial duration. Future research should take into account that compared to the field, a higher cadence is used in laboratory settings to produce similar power output.


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Introduction

Mountain bike cross-country Olympic (XCO) is one of four disciplines of mountain biking (MTB). XCO races get started with a mass start and are held over undulating circuits with technical descents, forest roads, rocky paths, and obstacles. Elite athletes have to finish 4–7 laps on a course, which is 4–6 km long, leading to race durations from 80 up to 100 min [1]. This cycling event is regarded as a highly intensive intermittent activity due to its large number of alternating climbs and descents [2] [3] [4] [5]. Because the race duration was shortened several times in recent years and the technical sections of the course continuously increased, the race profiles became physiologically more irregular and technically more demanding with regard to the athletes' requirements [1] [6]. Today, training in mountain biking is focused on performance-based training levels and modified high-intensity training zones to address short- and medium-term high-load events, especially in XCO racing [6] [7].

These physiological requirements should be reflected in performance tests to improve the training prescription and to evaluate the effectiveness of the training, especially in competitive athletes [8] [9]. Laboratory tests should assess a cyclist’s maximum capacity to produce power over durations that are typically encountered during races. Consequently, findings of specific laboratory tests can be directly compared to the cyclists’ performance during competition. However, laboratory conditions are standardised. In contrast, competitions can take place in a variety of environmental and tactical conditions, and during the competition it is not always required that a given cyclist provides maximal efforts across the range of durations assessed in the laboratory test. Thus, the power produced during laboratory tests may differ from those produced in competition. This may have led to studies using sprints or time-trails in field-based conditions instead of real competitions when comparing cyclists’ performance with data achieved during laboratory tests. Some earlier studies have concluded that, at least for longer time trails (lasting more than 20 min), the average power produced during laboratory tests is not different to the cycling power output (PO) produced during real cycling time trials in the field, and is therefore a valid predictor [10] [11] [12]. However, some recent studies investigating the difference in cycling performance during sprint tests under laboratory and field-based conditions led to inconsistent results. Quod et al. [13] compared laboratory PO and cycling cadence (CAD) data with road race data of ten male cyclists and found no maximum mean PO differences for durations of 60–600 s. In contrast, the authors reported normalized differences of 3–9% for 5, 15, and 30 s duration sprints. Although PO achieved in the lab and field were at least similar in this study, the self-selected CAD to produce these efforts was remarkably higher in the lab (7–27 rpm). Gardner et al. [14] reported neither PO nor CAD differences during laboratory 6 s “all-out” sprints and 65 m sprints in seven elite track cyclists, and therefore concluded that velodrome performance can be accurately modelled using laboratory-based data. Bertucci et al. [15] reported both higher (+6%, standing position) and lower (–4%, seated) PO records during field compared to stationary ergometer sprinting. Their results indicate that laterally oscillating the bike can improve performance during short sprint tests in a standing position because in this position a higher perpendicular force can be applied to the crank and thus a higher propulsive force is generated.

Whether cycling in the laboratory, under field conditions, or in competition, the highest PO is reached with optimal values of force and pedalling cadence [16] [17] [18] [19]. In order to achieve a certain PO, the athlete can choose either a high CAD and transfer a low force to the pedals, or vice versa. For many decades, researchers have been trying to find the optimal CAD in cycling. Most of them examined the effect of CAD on the economy, but other measures are also taken. The term "optimal cadence" has quite different meanings depending on whether it refers to the most economical, maximum power producing, less tiring, or most comfortable CAD [16] [17] [20]. Several factors, including age, PO, and gradient, have been shown to affect the choice of CAD in cycling to some extent [21]. It is long known that there is an optimal contraction rate for muscle contractions [22]. Whether this leads to a given “optimal cadence” at various workloads during cycling is not obvious because the efficiency of the entire muscle could change with different force-speed ratios [23].

A number of studies that examined the relationship between CAD and performance or cycling economy suggest that the most economical CAD in cycling rises with increasing workload [18] [20] [21] [23] [24] [25] [26]. However, they refer almost exclusively to low, moderate, or submaximal cycling intensities, and performance does not only depend on cycling economy but also in a large part on the maximum energy turnover rate. Therefore, the most economical CAD is not necessarily the optimal one, especially for short-term intervals as they frequently occur at XCO. Summarizing the findings through today, it can be assumed that a higher CAD (100–120 rpm) improves sprint cycling performance, because muscle force and neuromuscular fatigue are reduced and PO is maximised [16], whereas the most economical CAD for submaximal workloads seems to be much lower (~80 rpm) and rises with increasing workload. To the best of our knowledge, there are no comparable studies at XCO competitions.

Based on the aforementioned findings, the present study aimed to compare PO and CAD during short-term time trials (TT; 10–300 s) under laboratory and field conditions. In addition, we aimed to describe the relationship between PO and CAD when cycling at higher intensities. We hypothesised that i) PO during laboratory and field conditions is not significantly different, ii) CAD is higher in the laboratory setting, and iii) CAD increases with increasing workload in both laboratory and field conditions.


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Materials and Methods

Participants

The study meets the ethical standards required [27]. Ethical approval was received from the local ethics committee number 472/2016BO1 and the study was registered in the national database number PR020160800134. Suitable participants were recruited via trainers, clubs, and personal contacts within the MTB community. Following a telephone screening, 30 XCO athletes were invited to an initial visit [Fig. 1S]. All participants signed an informed consent and were examined for medical contraindications to exercise by a medical doctor.


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Procedures

Following the medical examination and anthropometric measures, all athletes performed a mountain bike-specific performance test (MTB-PT, [Fig. 1]), similar to the one elaborated by Ahrend et al. [28] and recently examined in XCO athletes [9]. The authors reported that the MTB-PT explained 57% (TT10), 72% (TT30), 70% (TT60), and 74% (TT300) of the variance in PO during an XCO race [9].

Zoom Image
Fig. 1 MTB-specific performance test (MTB-PT); TT10–300: time trials lasting 10–300 s (sprint/maximal effort); recovery: period of recovery at 1.2 W*kg-1 body mass

Within one week, this laboratory test was followed by a simulated XCO race (Race). The athletes were advised to avoid strenuous physical activity, alcohol, and other drugs for at least 24 h prior to the MTB-PT and the Race and to follow their usual preparation for competitions.


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Power Profile Test (PPT)

On a Cyclus2 ergometer (RBM elektronik-automation, Leipzig, Germany) a standard MTB frame was adjusted to the specific demands of the athlete (seat post, stem slope, handlebar, and pedal kit). Additionally, the MTB frame was equipped with an SRM training system which consists of a power meter (instrumented crank) and a power control (PC8; data logger and on-board data display; Schoberer Rad Messtechnik, Welldorf, Germany). Because of its high validity, reliability and sensitivity, the SRM is considered the gold standard in mobile power meters [29] [30]. PO, CAD, and heart rate of the athletes were continuously recorded by the PC8 via ANT + at 1 Hz. With the Cyclus2 ergometer's elastic suspension, lateral oscillations are possible, so the laboratory test feels more like riding in a real MTB.

After a graded exercise test (GXT), which started at 80 watts and was increased by 40 watts every 3 min until subjective exhaustion, athletes continued pedalling for 7 min (recovery period) and then proceeded with the Power Profile Test (PPT) that comprised: i) a 10-s all-out sprint (TT10); ii) a 3-min recovery period followed by a 30-s all-out sprint (TT30); iii) a 5-min recovery period followed by a 60-s maximal effort (TT60); iv) a 7-min recovery period followed by a 300-s maximal effort (TT300); and v) a final 5-min recovery period. During recovery periods, athletes were asked to pedal at a power output of 1.2 W*kg−1 body mass ([Fig. 1]). The PPT was run in the simulation mode of the Cyclus2 ergometer. Thus the athletes were able to do it with their own CAD and in a seated or standing position. The gear ratio could be selected individually by electronically simulated shifting. In order to ensure that the athletes exerted themselves to the maximum, the testing instructor motivated them verbally as much as possible. The highest mean PO (including the zero values) for all time sections (10, 30, 60 and 300 s) and the corresponding CAD were automatically calculated by the training software GoldenCheetah (www.goldencheetah.org; version 3.4). The level of recovery was not controlled, because a defined or even complete regeneration was neither necessary nor desirable.


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Simulated XCO race (Race)

The Race was arranged specifically for the participants during the off-season on a slightly modified official XCO racetrack of the Union Cycliste Internationale (UCI) in ( Albstadt, Germany ). The modified lap with a 130 m ascent and about 2100 m length started at 750 m above sea level. The track was almost dry, there was neither rain nor any relevant wind, and the average air temperature was about 14°C.

To account for age and gender differences in the given sample, races were performed separately for (a) female athletes and under-17 male athletes with 4 laps, and (b) male athletes over 17 years with 6 laps ([Table 1]). This resulted in mean race duration of 43.8 min (37.7–55.7 min) for race (a) and 54.8 min (50.3–60.5 min) for race (b), respectively, which is approximately the recommended national race duration for juniors (50–70 min).

Table 1 Classification of XCO athletes (mean±SD; n=22).

U17 [n]

U19, U23, Elite [n]

Race a) - 4 laps [n]

Race b) - 6 laps [n]

Age [years]

Female

2

4

6

0

16.8±1.8

Male

6

10

6

10

18.3±4.1

Total

8

14

12

10

17.9±3.7

U17/U19/U23: denotes athletes under 17/19/23 years of age.

For each race, the athletes were positioned in two starting rows by the coaches according to their previous racing performance in order to avoid disadvantages due to the starting position and also encouraged to finish the race as fast as possible. In order to achieve the best possible comparability between laboratory and field measurements, the original cranks of the athletes' bikes were replaced by SRM training systems that continuously recorded PO, CAD, heart rate, and location/altitude. Additionally, the lap times were recorded manually with a stopwatch. As well as in the PPT, during the Race the highest mean PO (including the zero values) for all time sections (10, 30, 60, and 300 s) and the corresponding CAD were automatically calculated by the training software GoldenCheetah (www.goldencheetah.org; version 3.4).

Immediately after the races, athletes were asked for possible interruptions of the race, such as falls or technical problems. Athletes with serious technical problems or severe health complaints during the races were excluded (n=1).


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Statistical analysis

Data were analysed with IBM SPSS Statistics version 25.0 (IBM Corp., Armonk, NY, USA). The distribution of data was checked using a Shapiro-Wilk test (p>0.05) and a visual inspection of their histograms, normal Q-Q plots and box plots [31]. Descriptive results are presented as mean±standard deviation (SD). The PO and CAD data of PPT and Race were compared with paired sample t-tests. The level of significance was set at α=0.05 (two-sided). Pearson’s correlation coefficient was used to correlate data of PTT and Race as well as PO and CAD. The coefficient was interpreted using a categorization proposed by Hinkle et al. [32]: 0.9–1.0 very high; 0.7–0.9 high; 0.5–0.7 moderate; 0.3–0.5 low; 0.0–0.3 negligible correlation. Mean differences between PTT and Race and the corresponding 95% limits of agreement (LoA) were calculated as mean±1.96*SD [33]. Additionally, the differences of PPT minus Race for each PO and CAD, respectively, were divided by their mean to make them comparable (normalized difference).


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Results

After the initial medical examination, 23 athletes who started in the current season in the national junior classes or the elite class were included in the study. Due to a technical defect, one athlete could not finish the XCO race Fig. 1S. Thus, in the end, 22 datasets were analysed ([Table 1]).

Cycling power output and cadence data during the PPT and Race are summarized in [Table 2] for these 22 athletes. Differences in PO data were normally distributed except for TT30 (TT10 =0.27, TT30=0.03, TT60=0.77, TT300 =0.91). With regard to the CAD data, all differences were normally distributed (TT10 =0.13, TT30=0.74, TT60=0.97, TT300 =0.51). Normalized differences of PO between the PPT and the Race are additionally presented in [Fig. 2] for each of the assessed test durations, but CAD data is not shown in graphs.

Zoom Image
Fig. 2 Normalized difference in power output between the Power Profile Test and the XCO race (PPT-Race); n=22 for each sprint/maximal effort. The dotted line represents the exact match (Y=0). The dashed line represents the mean bias and solid lines the 95% limits of agreement.

Table 2 Power Output and Cadence during Power Profile Test and XCO Race (n=22).

PPT

Race

LoA

LoA norm.n

r

Difference

Mean±SD

Mean±SD

Low

Up

Low

Up

Abs.

CI low

CI up

Norm.n

PO TT10 [W]

855±204

781±157

−171

319

−20

37

0.79*

74*

18

129

8%

PO TT30 [W]

588±129

549±119

−110

187

−17

31

0.82*

39*

5

72

7%

PO TT60 [W]

397±90

460±107

−179

53

−41

12

0.83*

−63*

−89

−37

−15%

PO TT300 [W]

261±55

293±54

−86

20

−32

7

0.88*

−33*

−45

−21

−12%

CAD TT10 [rpm]

122±17

111±12

−17

41

−14

34

0.55*

12*

5

18

10%

CAD TT30 [rpm]

109±12

100±8

−14

32

−13

30

0.41

9*

4

14

8%

CAD TT60 [rpm]

110±11

91±6

−3

42

−2

40

0.26

20*

15

25

19%

CAD TT300 [rpm]

103±5

84±5

7

32

7

35

0.22

20*

17

22

21%

PPT, Power Profile Test; PO, cycling power output; CAD, cadence/pedalling frequency; TT10–300, time trials lasting 10–300 s (sprint/maximal effort); LoA, lower/upper 95% limits of agreement; n, normalized values (PPT-Race)/((PPT+Race)/2) [%]; r, Pearson correlation coefficient; *=p<0.05; Abs., referring absolute values; CI, lower/upper 95% confidence interval of the difference.

Correlations of PO and CAD in total (aggregated data) were roughly moderate (r=0.45; p<0.01) for the PPT as well as for the Race (r=0.67; p<0.01) and are shown in [Fig. 3]. The separately calculated correlations of PO and CAD for each of the TT were negligible (r<0.00 to 0.27; p>0.05). A low but statistically significant correlation (r=0.42) of PO and CAD resulted only for TT300 during the race.

Zoom Image
Fig. 3 Correlation of aggregated power output and cadence; the lines represent the linear correlation for race data (Race) and the laboratory Power Profile Test (PPT); n=88 for each the Race and the PPT

#

Discussion

In this study we compared cycling power output as well as cycling cadence during short-term time trials under laboratory and field conditions. Furthermore, the relationship between PO and CAD when cycling at these high intensities was examined.

We partially rejected the hypothesis that PO in laboratory conditions (PPT) and during an XCO race is not significantly different because we found higher PO during the PPT for the shorter efforts (TT10 and TT30) but lower PO for TT60 and TT300 ([Table 2]). Some differences between laboratory and field data were to be expected especially for the short sprints, because for tactical reasons short sprints are usually not performed at their maximum in competitions. However due to the tactical nature and requirements of XCO racing, it is more likely that a rider will give a maximal effort across each of the durations examined in the PPT than would be the case for road racing. This should give increased relevance to the comparison of maximum efforts in the laboratory with XCO race data compared to road racing.

Bertucci et al. [15] reported both higher (+6%, standing position) and lower (–4%, seated) PO records during field-based sprint tests compared to stationary ergometer sprinting. Overall, these differences were slightly lower than in our measurements. However, in the study by Bertucci, measures were not performed in competition but in an isolated sprint test in a gymnasium with actual cycling from a static start. The authors attributed this difference in part to absent lateral oscillations of the bicycle ergometer and the associated reduction in the cyclists’ ability to apply a perpendicular force to the pedals. They suggest that it would be desirable to use an ergometer that allows these lateral oscillations, such as the Cyclus2 ergometer used in our study. Interestingly, summarizing the feedback of our athletes, it can be stated that more natural cycling was experienced compared to previous testing with other ergometers. Unfortunately, we did not determine the extent of lateral oscillations that occurred. Quod et al. [13] compared laboratory PO and CAD data with road race data of ten male cyclists. Because cyclists competed in multiple races, the highest individual PO for each of the assessed durations was analysed. In contrast to our results, the authors reported higher PO (normalized differences of 3–9%) during races for the short sprints (5–30 s) but found no PO differences for durations of 60–600 s. These different results could be related to both the setting of the laboratory PPT and the type of competition (simulated XCO vs. multiple road races). The PPT in our study was designed to quantify cycling performance during XCO typical load periods of 10–300 s [4] [5] [7]. Especially during very high intensity and maximal efforts (as demanded by the PPT), exercise capacity may also be limited by the amount of energy obtained from the anaerobic energy storage [34]. The GXT ahead of the PPT in our study could have affected the PO during the maximal efforts because athletes could not completely recuperate during the recovery periods, even though a substantial recovery in muscle function occurs within the first minutes after exercise termination [35]. By reason of increasing fatigue over time, the PO values of the sprints and maximal efforts are expected to be smaller than those seen without preloading. Despite all this, the PO values for TT10 and TT30 were higher during the PPT, although the highest PO over these time periods typically occurs at the start of the race and is predominated by anaerobic capacity. This indicates that it is possible to use the laboratory PPT to determine athletes’ power-producing capacities during XCO races. The series of load peaks during the PPT in the absence of complete regeneration corresponds to the requirements in XCO races but might be influenced by familiarisation and experience with the testing procedure. This test protocol in its entirety was validated with a good predictive power of the race performance in XCM [28] and XCO [9]. The authors reported that it explained 57% (TT10), 72% (TT30), 70% (TT60), and 74% (TT300) of the variance in PO during a XCO race [9].

As hypothesised, the self-selected CAD during the time trials differed remarkably and were statistically significant between the PPT and the Race ([Table 2]). Quod et al. [13] reported considerably higher CAD (7–27 rpm) during laboratory measurements compared to actual cycling for similar time durations and PO values. Therefore they suggested that performing the laboratory test isokinetically and limiting the CAD to 95–100 rpm could be an alternative. However, due to the huge variation in self-selected CAD between athletes, a fixed CAD does not seem to be a better-suited test method in our opinion. As well as Nimmerichter and Williams [36], Bertucci et al. [15] also found higher CAD during ergometer tests compared to sprint tests at actual cycling locomotion, confirming the overall state of research. During prolonged cycling, a decrease in the self-selected CAD associated with neuromuscular fatigue has previously been reported [19] [37] [38]. Even if the race duration in XCO is significantly shorter than in road races, this could play a role regarding the self-selected CAD. The partly remarkable lower CAD during the respective TT (Race) in our study could be due not only to economic aspects but also to the available gear ratio which is sometimes limited for (former) XCO typical 1x drivetrains. These and other external factors such as technical requirements or weather and track conditions remain as a difference between a real race and laboratory ergometer tests.

Most of the previous studies investigated the relationship between CAD and PO with distinctly lower PO values [18] [21] [23] [24] [25] [26] than measured during short high-intensity intervals at cycling competitions [13] [14] [15]. Thus, the best (e. g. maximum power-producing) CAD cannot be reliably predicted for power outputs of more than 400 W [23]. The reported phenomenon that the most economical CAD increases with increasing workload could partly explain the fact that trained cyclists tend to adopt a higher CAD than untrained individuals [20]. Experienced cyclists may select higher CAD to minimize local muscle stress [16], even if the metabolic cost is actually higher. As hypothesised, our results showed an increase of CAD with increasing workload – or decreasing time duration – for both the PPT (103–122 rpm) and the Race (84–111 rpm). The aggregated data ([Fig. 3]) showed moderate and statistically significant correlations of PO and CAD during PPT (r=0.45) and Race (r=0.67). For similar time durations and PO values, Quod et al. [13] reported an increase of CAD with an increasing workload of 102–119 during their laboratory PPT and 95–102 rpm during road races. Considering the different underlying cycling disciplines with more constant conditions for road cycling, these results should be comparable. The variable gradients and technical requirements during an XCO race may have a much greater impact on the self-selected CAD than has been reported in road races [39] [40]. The high self-selected CAD, especially under laboratory conditions, confirms the assumption that a higher PO also requires higher CAD. An athlete’s individual CAD, however, differs considerably in some cases.

In this study, heart rate was not examined as exercise training is inspired by power-based training levels and high-intensity training zones to account for the short- and medium-term high-load events, such as XCO competitions. Therefore it is inappropriate to control the intensity of such short intervals (10–300s) using heart rate, especially under different environmental conditions if the possibility of power-controlled training exists.

In conclusion, the variability of PO and the confounding influence of tactics and external conditions during XCO races limit the explanatory power of comparisons between PO data collected from laboratory tests and XCO races. Nevertheless, the results (r=0.79 to 0.88) of this study indicate that it is possible to use the laboratory PPT to determine athletes’ power-producing capacities during XCO races. However, the comparability of PO data from laboratory and field-based tests will always depend on the test method used. This must be taken into account when comparing results based on different study designs.

The findings confirm the past research regarding the increase of CAD with increasing workload. However, it must be assumed that the "optimal cadence" in terms of maximum PO for such short sprints and maximal efforts lasting 10–300 s is higher than that reported in most previous studies. In future investigations and for training purposes, it should be taken into account that compared to the field, a higher CAD is likely to be used in laboratory settings to produce similar power outputs.


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Contributorʼs Statement

None


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Conflict of Interest

The authors declare that they have no conflict of interest.

Supporting Information

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  • 27 Harriss DJ, MacSween A, Atkinson G. Ethical standards in sport and exercise science research: 2020 update. Int J Sports Med 2019; 40: 813-817 doi:10.1055/a-1015-3123
  • 28 Ahrend MD, Schneeweiss P, Martus P. et al. Predictive ability of a comprehensive incremental test in mountain bike marathon. BMJ Open Sport Exerc Med 2018; 4: e000293 doi:10.1136/bmjsem-2017-000293
  • 29 Gardner AS, Stephens S, Martin DT. et al. Accuracy of SRM and power tap power monitoring systems for bicycling. Med Sci Sports Exerc 2004; 36: 1252-1258 doi:10.1249/01.MSS.0000132380.21785.03
  • 30 Paton CD, Hopkins WG. Tests of cycling performance. Sports Med 2001; 31: 489-496 doi:10.2165/00007256-200131070-00004
  • 31 Ghasemi A, Zahediasl S. Normality tests for statistical analysis: A guide for non-statisticians. Int J Endocrinol Metab 2012; 10: 486-489 doi:10.5812/ijem.3505
  • 32 Hinkle DE, Wiersma W, Jurs S. Applied Statistics for the Behavioral Sciences, International Edition. 5th ed. Belmont, CA: Wadsworth; 2009
  • 33 Bland JM, Altman DG. Statistical methods for assessing agreement between two methods of clinical measurement. Lancet 1986; 1: 307-310 doi:10.1016/S0140-6736(86)90837-8
  • 34 Capelli C, Rittveger J, Bruseghini P. et al. Maximal aerobic power and anaerobic capacity in cycling across the age spectrum in male master athletes. Eur J Appl Physiol 2016; 116: 1395-1410 doi:10.1007/s00421-016-3396-9
  • 35 Froyd C, Millet GY, Noakes TD. The development of peripheral fatigue and short-term recovery during self-paced high-intensity exercise. J Physiol 2013; 591: 1339-1346 doi:10.1113/jphysiol.2012.245316
  • 36 Nimmerichter A, Williams CA. Comparison of power output during ergometer and track cycling in adolescent cyclists. J Strength Cond Res 2015; 29: 1049-1056 doi:10.1519/JSC.0000000000000723
  • 37 Jeukendrup AE, Moseley L, Mainwaring GI. et al. Exogenous carbohydrate oxidation during ultraendurance exercise. J Appl Physiol (1985) 2006; 100: 1134-1141 doi:10.1152/japplphysiol.00981.2004
  • 38 Lepers R, Hausswirth C, Maffiuletti N. et al. Evidence of neuromuscular fatigue after prolonged cycling exercise. Med Sci Sports Exerc 2000; 32: 1880-1886
  • 39 Lucia A, Hoyos J, Chicharro JL. Preferred pedalling cadence in professional cycling. Med Sci Sports Exerc 2001; 33: 1361-1366
  • 40 Vogt S, Schumacher YO, Roecker K. et al. Power output during the Tour de France. Int J Sports Med 2007; 28: 756-761 doi:10.1055/s-2007-964982

Correspondence

Patrick Schneeweiss
Medical Clinic, Department of Sports Medicine, University of Tübingen
Hoppe-Seyler-Strasse 6
72076 Tübingen
Germany   
Telefon: +497071/2986496   

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  • 30 Paton CD, Hopkins WG. Tests of cycling performance. Sports Med 2001; 31: 489-496 doi:10.2165/00007256-200131070-00004
  • 31 Ghasemi A, Zahediasl S. Normality tests for statistical analysis: A guide for non-statisticians. Int J Endocrinol Metab 2012; 10: 486-489 doi:10.5812/ijem.3505
  • 32 Hinkle DE, Wiersma W, Jurs S. Applied Statistics for the Behavioral Sciences, International Edition. 5th ed. Belmont, CA: Wadsworth; 2009
  • 33 Bland JM, Altman DG. Statistical methods for assessing agreement between two methods of clinical measurement. Lancet 1986; 1: 307-310 doi:10.1016/S0140-6736(86)90837-8
  • 34 Capelli C, Rittveger J, Bruseghini P. et al. Maximal aerobic power and anaerobic capacity in cycling across the age spectrum in male master athletes. Eur J Appl Physiol 2016; 116: 1395-1410 doi:10.1007/s00421-016-3396-9
  • 35 Froyd C, Millet GY, Noakes TD. The development of peripheral fatigue and short-term recovery during self-paced high-intensity exercise. J Physiol 2013; 591: 1339-1346 doi:10.1113/jphysiol.2012.245316
  • 36 Nimmerichter A, Williams CA. Comparison of power output during ergometer and track cycling in adolescent cyclists. J Strength Cond Res 2015; 29: 1049-1056 doi:10.1519/JSC.0000000000000723
  • 37 Jeukendrup AE, Moseley L, Mainwaring GI. et al. Exogenous carbohydrate oxidation during ultraendurance exercise. J Appl Physiol (1985) 2006; 100: 1134-1141 doi:10.1152/japplphysiol.00981.2004
  • 38 Lepers R, Hausswirth C, Maffiuletti N. et al. Evidence of neuromuscular fatigue after prolonged cycling exercise. Med Sci Sports Exerc 2000; 32: 1880-1886
  • 39 Lucia A, Hoyos J, Chicharro JL. Preferred pedalling cadence in professional cycling. Med Sci Sports Exerc 2001; 33: 1361-1366
  • 40 Vogt S, Schumacher YO, Roecker K. et al. Power output during the Tour de France. Int J Sports Med 2007; 28: 756-761 doi:10.1055/s-2007-964982

Zoom Image
Fig. 1 MTB-specific performance test (MTB-PT); TT10–300: time trials lasting 10–300 s (sprint/maximal effort); recovery: period of recovery at 1.2 W*kg-1 body mass
Zoom Image
Fig. 2 Normalized difference in power output between the Power Profile Test and the XCO race (PPT-Race); n=22 for each sprint/maximal effort. The dotted line represents the exact match (Y=0). The dashed line represents the mean bias and solid lines the 95% limits of agreement.
Zoom Image
Fig. 3 Correlation of aggregated power output and cadence; the lines represent the linear correlation for race data (Race) and the laboratory Power Profile Test (PPT); n=88 for each the Race and the PPT