A LABORATORY TEST FOR THE EXAMINATION OF ALACTIC RUNNING PERFORMANCE
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1University of Kassel, Germany
2Memorial University of Newfoundland, Canada
| Received |
|
22 August 2005 |
| Accepted |
|
08
November 2005 |
| Published |
|
01
December 2005 |
©
Journal of Sports Science and Medicine (2005) 4, 572
- 582
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| ABSTRACT |
| A
new testing procedure is introduced to evaluate the alactic running
performance in a 10s sprint task with near-maximal movement velocity.
The test is performed on a motor-equipped treadmill with inverted
polarity that increases mechanical resistance instead of driving the
treadmill belt. As a result, a horizontal force has to be exerted
against the treadmill surface in order to overcome the resistant force
of the engine and to move the surface in a backward direction. For
this task, subjects lean with their hands towards the front safety
barrier of the treadmill railing with a slightly inclined body posture.
The required skill resembles the pushing movement of bobsleigh pilots
at the start of a race. Subjects are asked to overcome this mechanical
resistance and to cover as much distance as possible within a time
period of 10 seconds. Fifteen male students (age: 27.7 ± 4.1 years,
body height: 1.82 ± 0.46 m, body mass: 78.3 ± 6.7 kg) participated
in a study. As the resistance force was set to 134 N, subjects ran
35.4 ± 2.6 m on the average corresponding to a mean running velocity
of 3.52 ± 0.25 m·s-1. The validity of the new test was
examined by statistical inference with various measures related to
alactic performance including a metabolic equivalent to estimate alactic
capacity (2892 ± 525 mL O2), an estimate for the oxygen
debt (2662 ± 315 ml), the step test by Margaria to estimate alactic
energy flow (1691 ± 171 W), and a test to measure the maximal strength
in the leg extensor muscles (2304 ± 351 N). The statistical evaluation
showed that the new test is in good agreement with the theoretical
assumptions for alactic performance. Significant correlation coefficients
were found between the test criteria and the measures for alactic
capacity (r = 0.79, p < 0.01) as well as alactic power (r = 0.77,
p < 0.01). The testing procedure is easy to administer and it is
best suited to evaluate the alactic capacity for bobsleigh pilots
as well as for any other running discipline.
KEY
WORDS: Alactic capacity, alactic power, metabolic cost, treadmill
test, bobsleigh.
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| INTRODUCTION |
|
Maximal
performance in tasks with 10 to 15 seconds duration primarily depends
on the energy flow of the alactic anaerobic metabolism (Green, 1995;
Hultman et al., 1967;
Karlsson et al., 1972;
Keul et al., 1981).
However, corresponding metabolic measures are very difficult to
access. In the past, muscle biopsies and computerized nuclear magnetic
resonance systems (McCully et al., 1988)
as well as simplified metabolic models (Mader et al., 1981;
Thomson and Serresse et al., 1988)
have been used in order to evaluate the ATP- and CrP-content of
the muscle tissue. In contrast to these costly and invasive systems,
work and power values in various performance tests have been calculated
as numerical estimates of the alactic energy supply (for a review,
see Bouchard et al., 1991;
Foster et al., 1995;
Harman, 1995).
It has been suggested that the work done within a period of time
is used as an estimate for the capacity of an energy supply system
and that the work per unit of time (equals the power) is used as
an estimate for the rate of energy flow within an energy supply
system (Bouchard et al., 1991).
However, it has to be kept in mind that those estimates do not correspond
to one energy supply system only in a one-to-one relationship but
rather to all of those systems working in concert with one specific
system possibly contributing more energy than the others (Hill and
Smith, 1989;
Jacobs et al., 1983).
Although small amounts of oxygen are being consumed and muscle lactate
concentration is slightly increased, maximal performance tests are
denoted alactic if subjects cannot hold the given exercise intensity
for more than 10 to 20 seconds due to a depletion of the muscular
phosphagen stores (Cerretelli, 1992;
Gastin, 2001;
Keul et al., 1981).
Due to the near-maximal exercise intensities, alactic tests in the
laboratory should not require much intermuscular coordination and
therefore, can only incorporate simple motor activities. Such tests
are primarily administered on stationary cycle ergometers or on
isokinetic strength measurement devices (Bouchard et al., 1991;
Green, 1995;
Harman, 1995).
There are few studies reported in the literature with suggestions
for alactic running tests, since near-maximal muscle activities
should be required. To date, only two testing procedures are available
for the evaluation of alactic running performance. In a study by
DalMonte and coworkers (1978)
subjects were required to push against force plates attached to
the front safety railing of a treadmill with a very low treadmill
velocity setting throughout the test. Using the force recordings
in the horizontal plane and the treadmill velocity, DalMonte et
al. calculated the average power for a 10 second testing period.
Since subjects could not overcome the given treadmill velocity,
near-maximal muscle activities were achieved by the exertion of
near-maximal force levels. While the coordinative demands were low
in the DalMonte et al. study, the required skill was somewhat different
from running with a high movement frequency. In contrast, Lakomy
(1984;
1987)
reported a laboratory testing procedure with subjects running with
near-maximal running speed. This author employed a small electrical
generator, connected to a wheel of the treadmill, in conjunction
with a load cell, which was attached waist-high behind the subject,
for an evaluation of the horizontal propulsive power during sprint
running on a non-motorized treadmill. The subjects, rather than
the treadmill motor, propelled the treadmill surface. In order to
keep the subject from accelerating horizontally, a strap connecting
the runner to the load cell had to exert a horizontal force on the
runner equal in magnitude to and opposite in direction from the
force of the treadmill belt on the the runners feet. Horizontal
power output was calculated as the product of the force recordings
registered by the load cell and the treadmill velocity. There are
no reports, however, whether subjects were able to easily adjust
to the required skill. Moreover, this task may be considered to
match the maximal running speed in a 100 m dash when the runner
has already accelerated his speed to its maximum. While the testing
procedure by DalMonte and coworkers employed low movement frequencies
and high force levels, the opposite was true for the Lakomy test.
In the present paper, an alactic running test is introduced with
requirements in running velocity and force exertion settled between
the above two.
Our study aims to provide empirical evidence for the relationship
between the BST and other tests on short term performance. Based
on common physiological adaptations, BST values should correlate
with values for maximal strength (Schmidtbleicher, 1985),
with measures for alactic power (Margaria, 1966),
and with metabolic measures for the alactic capacity in order to
provide evidence for a construct validity. A metabolic model from
Mader el. (1981)
was used to show the assumed correspondence to the alactic capacity.
Moreover, the observed variance in the BST values should be explained
by the variances in the leg strength, the variance in an estimate
of alactic power and in the variance in an estimate of alactic capacity.
A multiple regression analysis was used to examine the assumed interrelations.
In short, rather than expressing the external validiy of the test
by comparable values for mechanical power and work done during the
test, we employed a correlational argument in order to provide evidence
for a construct validity (Baumgartner et al., 2003;
Thomas and Nelson, 2001)
of our testing procedure.
|
| METHODS |
|
Ten
male students majoring in sports science and five students majoring
in other subjects were examined in the study. All participants were
enrolled at the University of Freiburg, Germany (age: 27.7 ± 4.1
years, body height: 1.82 ± 0.46 m, body mass: 78.3 ± 6.7 kg). They
reported to be physically active in various sports at least twice
a week but they were not engaged in any kind of competitive sport.
The tests were administered on different days in order to ensure
that fatigue would not influence the test results. There was a time
frame of twenty days for which all testing procedures were administered.
Bob
start test
The bob start test can be executed with a slight modification in
the electrical connection of a normal treadmill by inverting the
polarity of the motor. The task resembles the requirements when
pushing a small car in order to turn the engine without a starter.
It is highly suitable for the examination of bobsleigh pilots for
their starting performance (Figure
1). Therefore, the test will be denoted as bob start test (BST).
While higher movement speeds than in the DalMonte et al. test are
required, coordinative demands are much lower than in the Lakomy
test. The BST is performed for 10 s in order to ensure that the
alactic metabolism contributes the most energy for the work required.
In our study, a regular running treadmill (Woodway S1-25 m·s-1,
Weil, Germany) was used for the BST. The polarity of the power supply
was inverted in order to have the engine function as a brake rather
than as an accelerator for the treadmill belt. A potentiometer was
installed to regulate the resistant force of the treadmill motor.
Horizontal forces beyond this resistant force will result in an
acceleration of the treadmill belt. In a series of pre-tests, resistant
forces between 90 and 150 N were evaluated in order to find a force
setting - which would ensure fatigue after approximately 10 s with
a running form close to normal. A suitable value was found at 134
N. Further tests were administered in order to provide evidence
that differences in body weight and in treadmill velocity would
not influence the resistant force. In these tests, an electronic
motor (model: MT3-OU4 48 by EAT, Freiburg, Germany) was used to
apply horizontal pulls (transducers type: U2A-1000kg by Hottinger-Baldwin,
Darmstadt, Germany) upon the treadmill belt. Various pulling velocities
and barbell loads (65 to 85 kg) were used in order to simulate running
velocities. These tests did not show any systematic influence by
weight or treadmill velocity on pulling force due to a very good
and near frictionless support system in the Woodway-treadmill. The
maximal difference in horizontal force between the different settings
was 2.9 N (< 1.7 percent of the pre-set resistant force).
For the BST, the testing procedure continued as follows: subjects
were asked to warm up thoroughly. After warm-up, the front support
bar at the treadmill railing was adjusted to body height so that
subjects could push the support at a chest-high elevation (see Figure
1). In addition, the area for the first contact of the foot
steps was marked on the body of the treadmill box right next to
the treadmill belt. The elevation of the front support bar and the
indication for the stepping area were matched to individual body
height so that the direction of the resultant reaction force was
similar for all subjects. The upper arms were aligned at the side
of the trunk while the hands were held in front of the chest. At
the start of the test, a resting position was required as in Figure
1. Before testing, all subjects were given enough time to adjust
to the required task. After a preparatory vocal signal by the experimenter,
the test was started with a beep by a computer analysis program.
An A/D-converter interface (DT2821 - DATA Translation, USA) was
used to record the velocity signal from the treadmill (frequency:
50 Hz). The test continued for 10 seconds and was terminated by
another beep from the computer. Three test repetitions were administered
with a 10-to- 15 minute rest period between tests. The best trial
was used for the subsequent statistical analysis. The running distance
during the 10 second testing period (BST10) was used as the test
criterion. In addition, the distance for the last three seconds
(BST03) was evaluated as an indication for fatique. Distance values
were calculated by an intregration procedure (trapezoidal rule)
on the velocity recording from the treadmill.
Leg
extension strength test
The examination of the subjects' leg extension strength (LES) was
achieved with a special leg press testing device developed at the
University of Freiburg (Figure
2). Testing guidelines have been described in Schmidtbleicher
(1985).
Maximal isometric contractions were evaluated for each leg separately
in order to receive estimates for maximal strength. Three trials
were evaluated for each leg. After warming up and stretching, subjects
were comfortably positioned lying on their backs with hip and knee
angles of approximately 80 degrees (see Figure
2). Following a preparatory signal from the experimenter, subjects
were asked to exert as much force as possible while performing an
explosive type of leg extension. The trial with the highest maximal
force level was used for the statistical inference analysis. The
values from all three trials were used for the reliability analysis.
Force analysis was achieved by separate force plates for the left
and right foot with four force sensors located in each corner (Kistler,
Winthertur, Switzerland). Force signals were recorded through an
A/D-converter (DT2821 - DATA Translation, USA) operating at 100
Hz input frequency. The maximal amplitude of the resulting force-time
curves was evaluated for the maximal force level. The sum of the
maximal forces in the right and in the left leg was used, for further
statistical analysis.
Margaria
step test
The Margaria Step Test (MST) is considered as a classical testing
procedure for the examination of alactic power in the lower extremities
(Bouchard et al., 1991;
Harman, 1995).
The test was developed by Margaria et al. (1966)
who demonstrated a strong correlation to alactic energy supply.
For the examination of our subjects, we used a variation of the
Margaria Step Test which was introduced by Kalamen (1968)
and described by Fox and coworkers (1988).
In this modification of the original test, subjects were asked to
run up to a stair from a distance of 6 m. The task was to take three
steps at a time as fast as possible. Switch mats were used on the
third and ninth step in order to record the time necessary to elevate
the body mass between these steps by 1.05 m. Three trials were examined
and power was calculated by the following formula:
MST
= m · g · h / T (1)
with
MST representing the power in the Margaria Step Test, m equals the
body mass, g equals the constant of gravity, h equals the elevation
measured (= 1.05 meters), and T equals the time necessary to elevate
the body mass from the third to the ninth step. The testing protocol
continued as follows: after thoroughly warming up and stretching,
subjects were asked to practise the run-ups in order to become confident
with the Step Test task. Three trials were administered for reliability
analysis. The individually best trials were used for further statistical
evaluations.
Alactic
capacity estimated by a metabolic model
In the past, various metabolic models have been introduced by researchers
in order to estimate the alactic capacity (Mader et al., 1981;
Thomson and Serresse et al., 1988).
For this study, we adapted a model by Mader et al. (1981).
The basic idea was to examine an exhaustive run on a treadmill for
which an estimate of the total energy demand was known and the metabolic
subcomponents for the lactic system and the O2-system
were estimated by measurements. Since running intensities were limited
because of coordinative demands for treadmill running, a running
velocity and a running duration were required which would ensure
a near maximal exhaustion of the alactic and the lactic energy supply
and which was also feasible for a treadmill running test. We pre-tested
for individual running velocities which subjects could tolerate
for approximately 60 s. This work intensity was thought to exhaust
the alactic energy supply (Cheetham et al., 1986;
Karlsson et al., 1975;
Katz et al., 1986;
Sahlin, 1986;
Withers et al., 1991)
and to provide a maximum estimate of glycolytic metabolism. For
each subject, a pre-test on an outdoor running track and two pre-tests
on a treadmill were performed in order to discover the individual
running velocity that could be tolerated for 60 s on a treadmill.
For this running velocity, the energy demand (expressed by oxygen
equivalents) was calculated by a method reported by Mader et al.
(1981):
VO2
(mL·kg-1·min-1) = 20 + 0.8 · v2.35
(2)
(v = running velocity in m·s-1)
The
formula was derived by Mader and co-workers according to preliminary
work by other authors (Cavagna et al., 1965;
Pugh, 1970;
Saltin, 1967)
and it estimates the total amount of energy per unit body mass (kg)
which is necessary to run at a given velocity (mL O2
Eq kg-1).
For the estimation of the alactic capacity, energy fractions have
to be subtracted from the estimated total energy demand - which
are contributed by the O2-system and by the lactate system
(Figure 3). While measuring
the O2-consumption directly with an Oxycon Sigma System
(Mijnhardt, Netherlands), we used maximal blood lactate concentrations
to evaluate the lactate metabolism and we transferred the lactate
values into O2-equivalents. We used a conversion rate
of 2.9 mL O2 per kg body mass for 1 mmol·L-1
lactate as published by Margaria and co-workers (1966).
The 60 s exhaustive run was performed on a motor driven treadmill
(Woodway, Model Weil, Germany) in the Department for Preventive
and Rehabilitative Sportsmedicine at the University Hospital in
Freiburg. After an intensive warm-up and stretching procedures,
subjects were asked to perform a warm-up run at 8 km·h-1
for two minutes. The last ten seconds were counted down before treadmill
acceleration continued within 3 seconds to the individually determined
running velocity. At the end of the run, subjects were asked to
remain standing on the treadmill surface for one minute in order
to take capillary blood samples from the ear lobe as well as to
analyse their post-exercise oxygen consumption. For the next minute,
subjects were allowed to slowly trot on the treadmill at a very
low velocity. Finally, subjects were asked to sit down for another
20 minutes for further measurements.
Throughout the run, the oxygen consumption was measured by an Oxycon
Sigma O2-analysis system in the mixed chamber mode. The
recordings for the oxygen consumption continued until one minute
after the end of the run in order to examine the early component
of the excess post-exercise oxygen consumption (eEPOC) as an indirect
estimation for the phosphagen resynthesis, in other words, alactic
capacity (Bangsbo et al., 1990;
DiPrampero and Margaria 1968;
Piiper et al., 1968).
In the past, the term EPOC (for a recent review see Boersheim and
Bahr, 2003)
has been used in exhange of the expression "oxygen-debt",
the continued elevation of oxygen consumption after exercise, outlined
by early muscle physiologists such as Hill (1924)
or Margaria and co-workers (1933).
Later on, the term "oxygen debt" received some critical
appraisal (Brooks 1971;
1991;
Gaesser and Brooks, 1984)
and was dropped in favour of the present denotation EPOC. The rationale
of our measurement was based on the suggested half-time for this
early component of EPOC in the order of 30 s (DiPrampero and Ferretti,
1999;
Margaria et al., 1933).
The sampling frequency for the gas analysis was set to 200 cycles
per second (with 12 bit resolution) with O2-samples analyzed
paramagnetically and corrected for breathing time, temperature,
and barometric pressure. In order to correct the oxygen consumption
during the running phase for the time-delay (Hughson and Morrissey,
1982)
in the oxygen kinetic in the warm-up phase, the mean level for the
oxygen consumption during warm-up was subtracted from each measurement
during the running test (this point will be further outlined in
the discussion). For the examination of the maximal blood lactate
concentration, blood samples were taken at 1, 3, 5, 7, 10, 15, 20,
25 and 30 minutes after the end of the run. The lactate samples
were immediately frozen and later analyzed by a photometric system
(Boehringer, Germany). The corresponding lactate values were fed
into an non-linear approximation algorithm (Procedure: Non-Linear
Regression in SPSS-V12.0) in order to find the maximum of the fitting
function F(t)=a1·(1-exp(-k1·t))+a2·(1-exp(-k2·t))+a0.
This function is related to a metabolic compartment-model developed
by Freund and Zouloumian (Freund and Zouloumian, 1981;
Zouloumian and Freund, 1981).
For the calculation of the alactic capacity, values for the blood
lactate concentration after warm-up were subtracted from the maximal
values originating from the exhaustive run. Eventually, the oxygen
consumption during the test as well as O2-equivalents
for the maximal blood lactate concentration were subtracted from
the estimated total energy demand given by the formula from Mader
et al. (1981).
This value was used as an estimate for the alactic running capacity
(mL O2 Equivalents). As before, a conversion factor was
used to calculate the CrP-concentration in the working muscles.
An O2-equivalent of 3.94 mL per mmol CrP was used for
an estimated muscle mass of 44 percent of the total body mass -
of which 80 percent of the latter is used for running (Mader et
al., 1981).
From the calculated O2-equivalent 6 mL O2
per kg muscle were subtracted to account for the stored O2-reserve
within the muscle (Jansson and Sylven, 1981).
For the further analysis, this value was denoted as the model value
for alactic capacity (AC).
Statistics
Mean values and standard deviations were calculated for descriptive
statistics. Test on skewness and excess were used in order to examine
the normal distribution of the test values (Easy-Stat: Müller and
Schweizer, Freiburg Germany). Intraclass correlations (rIC)
were calculated in order to examine the reliability of the test
values. For this purpose, three test repetitions were analyzed.
Best values were used for further tests on statistical inference
by Pearson correlation coefficients (r). Multiple correlation coefficients
(R) were calculated (SPSS-V12.0) in order to examine the amount
of the explained criterion variance by the variances in the leg
strength values, in the estimates for alactic power and for alactic
capacity on the BST.
|
| RESULTS |
|
All
the examined measures were normally distributed within the testing
sample. The group mean value for BST10 in the best trials was 35.4
± 2.6 m corresponding to a mean running velocity of 3.52 ± 0.25
m·s-1. The group mean value for BST03 in the best trials
was 12.9 ± 1.1 m. Intraclass correlations indicated high reliability
with values rIC = 0.93 for BST10 and rIC =
0.91 for BST03. The group mean value for the maximal force level
of the right leg was 1161 ± 179 N (intraclass correlation rIC
= 0.97) and for the left leg 1144 ± 186 N (intraclass correlation
rIC = 0.95). For the statistical analysis, the sum of
right and left leg for maximal leg extension strength was used (LES
with a group mean value: 2304 ± 351 N). For the MST, the group mean
time in between the third and the nineth step was 469 ± 28 ms for
the best trials resulting in an estimated power production of 1691
± 171 W. The reliability analysis demonstrated an intraclass correlation
rIC = 0.95. For the 60 s exhaustive test, the group mean
value for the total oxygen consumption was 3592 ± 490 mL. This value
corresponded to 45.9 mL·kg-1·min-1. For an
indirect estimation of phosphagen resynthesis, the early excess
post-exercise oxygen consumption (eEPOC), related to phosphate resynthesis,
resultet to a mean value of 2662 ± 315 ml. The group mean for the
maximal lactate concentration was 12.6 ± 1.5 mmol·L-1.
The group mean for the alactic capacity in O2-equivalents
was 2892 ± 525 mL O2. This value resulted in an estimated
CrP-concentration of 26.6 ± 3.7 mmoL per kg wet muscle and an estimated
25.0 ± 3.7 mmoL CrP per kg wet muscle when corrected for stored
O2-reserves in the muscle.
Statistical inference tests served as the main tool to demonstrate
the validity of the newly introduced laboratory test for alactic
running performance. The Pearson correlation coefficients between
the bob start test (BST10), the leg extension strength test (LES),
the Margaria step test (MST), and the test for evaluating alactic
capacity (AC) are shown in Table
1. The level of significance for two-tailed testing with a sample
size of N = 15 was r = 0.51 for p = 0.05, respectively r = 0.63
for p = 0.01. Significant and highly significant correlation coefficients
were found among BST10, MST, AC, and eEPOC. Even higher correlations
were observed between BST03 and MST (r = 0.85; p < 0.01) on one
side and AC (r = 0.90; p < 0.01) on the other. The correlation
coefficient for the relationship between BST10 and LES was found
non-significant (r = 0.41, p > 0.05). However, significant correlations
were found between the leg strength and the Margaria step test.
The Margaria test also correlated with the measure for the alactic
capacity (mL O2 Eq) and the early EPOC component.
Multiple
correlations between the criterion value and two or more predictors
did not prove to considerably increase the amount of explained variance
above what was achieved by one single predictor only. At best, the
multiple correlation between BST10 and combination of MST plus AC
was found to be R = 0.83 with explained criterion variance as much
as 68 percent (63 percent after correction for multiple predictors).
For BST03, a multiple correlation coefficient of R = 0.93 was observed
with 86 percent explained criterion variance (84 percent after correction
for multiple predictors).
|
| DISCUSSION |
|
The
goal of the present study was to introduce and evaluate a new laboratory
test for alactic running performance. The correlations between the
test measure (BST10) and other measures on alactic performance were
found in very good agreement with the theoretical predictions on
the relationship between the underlying physiological processes
and capacities. In particular, a very close relationship was observed
between the BST10 and the estimate for the alactic capacity, which
was derived from the metabolic measures in an exhaustive 60 s run.
This relationship was even closer, when the distance run in the
last third of the 10 s testing period was used as the test measure.
Therefore, we conclude that the bob start test is a suitable procedure
to evaluate alactic running performance. To our knowledge, there
is no other laboratory running test which would stress the alactic
capacity as well as require some coordinative skill for the running
performance. While the aforementioned treadmill test by DalMonte
and coworkers (1978)
does not require normal running skill with close to normal running
speed, other alactic tests are executed on stationary bicycles or
on isokinetic devices (Bouchard et al., 1991).
Therefore, the bob start test may be considered as a novel task
to examine alactic running performance. Moreover, the validity of
this test is based on the relationships between the testing outcome
and various other short-term tests. However, one may object that
our correlational data is a somewhat weak argument for the evaluation
of a new test. In fact, our main point not only refers to one correlation
but also to the very good agreement in the size of the different
correlation coefficients in general. For the next part of the discussion,
we will take a closer look at the correlational relationship of
the bob start test which each of the other tests performed.
Testing for short-term performance should usually involve motor
activities with near maximal muscle activation levels. Therefore,
it was reasonable to expect a close relationship with measures for
strength performance. Maximal isometric strength is considered a
major testing parameter to examine an individual's strength abilities
(Schmidtbleicher, 1985).
However, the correlation between BST10 and LES was only moderate
and failed to reach statistical significance. This moderate relationship
may be explained by the different types of intermuscular and intramuscular
coordination in the leg strength test as compared to the bob start
test. It was Mueller (1987)
who showed that the relationship between maximal isometric strength
and values for dynamic strength performance decreases with a reduction
of the load to be moved, while factors related to intermuscular
coordination become more dominant. In contrast, a significant correlation
was found between the leg strength and the Margaria step test. The
near maximal movement speed in the step test with a very short duration
(< 0.5 s) may have required muscle activation levels more related
to maximal isometric strength than for the bob start test (= 10
s). In fact, strength related factors contributed to the performance
in the Margaria step test independently from factors related to
the alactic capacity. This conclusion may be derived from the partial
correlation coefficient between MST and AC (rpc = 0.87;
p < 0.01) with LES as the control variable) which was found to
be slightly larger than the bivariate Pearson correlation coefficient
(see Table 1). In the literature,
the step test by Margaria is considered a classical testing procedure
for the evaluation of alactic power (in terms of energy flow per
unit time). Since energy flow is also a crucial factor for the BST,
the correlation with between MST verified the theoretical expectation.
Moreover, a strong correlation between the estimate for the alactic
capacity on the performance in the step test was found, indicating
that the alactic energy supply would also influence the step test
performance. Again, this relationship is in agreement with the theoretical
considerations. Indeed, the most surprising result of our study
was the strong correlation of the estimate for the alactic capacity
with the two tests for alactic performance (bob start test and Margaria
step test) as well as with the value for the early EPOC. Our estimate
for the alactic capacity was derived from a metabolic model applied
to an exhaustive 60 s running test, a task completely independent
from either of the alactic performance tests. Nevertheless, highly
significant correlations were found between this estimate and BST10
as well as BST03. Indeed, the strong correlation for BST03, rather
than for BST10, makes the distance for the last third of the bob
start test a very good predictor for alactic capacity. As much as
81 percent of the observed variance in AC may be explained by the
variance in BST03. This strong, statistical relationship remains
as well for the partial correlation coefficient (rpc
= 0.80; p < 0.01) with body weight as the control variable.
As for any other metabolic model, several assumptions were required
which are commonly valid only to some degree. Nevertheless, the
CrP-concentrations corresponding to the evaluated O2-
equivalents were found in strong agreement with values derived from
muscle biopsies between 20 and 30 mmoL CrP per kg wet muscle weight
as reported in the literature (Katz et al., 1986;
Karlsson et al., 1975;
Sahlin, 1986).
A major objection to this result may relate to the evaluation of
the oxygen consumed for the 60 s exhaustive test as well as to the
maximal lactate concentration for the anaerobic energy supply. First,
there is some controversy in the literature concerning the kinetics
of oxygen consumption after a warm-up phase. While some authors
(Hughson and Morrissey, 1982)
claimed a time delay between the oxygen uptake in the muscle and
the registered oxygen consumption, other researchers consider the
oxygen uptake to be accelerated (Davies et al., 1972;
DiPrampero et al. 1970)
or unaffected (Margaria et al., 1965)
by prior exercise. According to Hill and Smith (1992),
a 3 percent error in the calculation of the total energy consumption
in a high-intensity 30 s cycle test would evolve if no time delay
was accounted for the oxygen kinetic. In contrast, Morton (1987)
concluded, that problems in methodology are the most likely cause
for the contradictory results regarding the onset of oxygen consumption
after warm-up. We have not found any indication for a delay in the
oxyen consumption during our study. A close inspection of time markers,
which were manually set through the computer evaluation program
at the beginning and the end of the running period, did not exhibit
any time lags. However, we had to correct the oxygen consumption
data for the elevated values from the warm-up period. To solve this
issue, we examined the oxygen kinetics in two subjects with and
without a preceding warm-up phase. It has to be kept in mind that
a sudden increase in running velocity from rest to near maximal
is only possible with very experienced treadmill runners and after
several practise trials. As a result of this comparision, we found
that the oxygen consumed for the 60 s test may be estimated at best
by subtracting the mean level of oxygen consumption during the last
30 s during the warm-up phase from each oxygen measurement during
the exhaustive run (Figure 4,
data based on n=2).
For
the estimation of the lactate produced during the exhaustive run,
lactate concentrations (mean value: 1.63 ± 0.48 mmol·L-1)
after an additionally performed two-minute warm-up run were subtracted
from the measured maximum in the post-exercise lactate kinetics
for the 60 s exercise. The subtracted value was only slightly above
the mean lactate concentrations at rest (1.11 ± 0.20 mmol·L-1)
indicating only small errors, if at all, through the applied data
correction procedure. All in all, our model for the estimation of
energy fractions among the different metabolic systems showed that
alactic energy supply contributed 44 percent of the total energy
in the exhaustive run. The translation of the corresponding O2-equivalents
into estimated muscle CrP-concentrations proved to be very close
to corresponding value from muscle biopsies reported in the literature.
However, we may have slightly overestimated the alactic capacity.
While Luechtenberg (1982)
has found an alactic energy fraction of 35 percent using the same
metabolic model from Mader et al. (1981),
authors like Serresse and co-workers (1988) found an alactic energy
contribution of only 23 percent for 30 s exhaustive exercise. However,
it is questionable whether the model by Serresse and coworkers may
provide, in fact, comparable data at all. Translating their values
for alactic energy supply (between 4 to 5 kJ) into a CrP-concentration,
with the conversion factor used by Mader et al. (1981),
a CrP-depletion of only 7 to 9 mmol per kg muscle mass would result.
This value range is far below what is found in muscle biopsies in
the literature (Katz et al., 1986;
Karlsson et al., 1975;
Sahlin, 1986).
Nevertheless, our model may have somewhat underestimated the true
amount of alactic energy consumed. This effect may have been produced
by subtracting lactic and oxygen energy fractions from an estimated
total energy demand higher than what was actually the case. In fact,
we have assumed in our model that subjects would be running at the
individually given velocity from the first second on while treadmill
acceleration could only be achieved within 3 seconds. However, any
overestimation or underestimation would be only effective for a
correlational argument if it would have occurred in a non-systematic
manner. All in all, the estimation of the alactic capacity provides
some credible evidence for the amount of non-glycolytic energy that
is stored in the muscle for short- term use. This conclusion is
supported by the significant correlations with the early EPOC and
the Margaria step test. Taken together, all correlational data is
in very good agreement with the theoretical predictions on the contribution
of the different metabolic systems for short-term performance. In
particular, the results from the bob start test show strong correlations
with all the tests that were examined, except for leg strength,
where the level of statistical significance was not attained. While
mostly correlational data was used to support our argument for the
validity of the bob start test, it has to be emphasized, that only
randomly selected student subjects and no bobsleigh racers were
investigated in our study.
|
| CONCLUSIONS |
| In
summary, the results show that the newly introduced bob start test
may be a valuable alternative to other testing procedures on alactic
performance and for alactic running performance in general. The test
results show good statistical agreement with other tests on alactic
capacity and alactic power. Moreover, athletes and coaches can easily
understand the testing outcome which is given by a simple distance
measure. |
| KEY
POINTS |
- New
testing procedure for the evaluation of alactic running performance.
- 10s
treadmill sprint task with near-maximal movement velocity similar
to a bob sleigh start.
- Treadmill
motor is used with inverted polarity to establish mechanical resistance
rather than acceleration.
- Highly
significant correlations found between test criteria and alactic
performance measures.
|
| AUTHORS
BIOGRAPHY |
Armin KIBELE
Employment: Prof. in the Institute for Sports and Sport
Science at the Univ. of Kassel in Germany
Degree: PhD.
Research interests: Biomechanical testing of elite athletes,
to the physiology of strength and power performance as well
as to the fields of implicit motor learning and non-conscious
perception in sports.
E-mail: akibele@uni-kassel.de |
|
David BEHM
Employment: Prof. in the School of Human Kinetics and Recreation
at the Memorial University of Newfoundland, Canada.
Degree: PhD.
Research interests: Exercise physiology and fitness.
E-mail: dbehm@mun.ca |
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