Key words
body composition. DXA - team game - indirect methods
Introduction
Soccer is a team sport in which the physical stresses of training and competitive
matches across a season modulate players’ body composition [1]
[2]
[3]. There is considerable variation in the number of matches played per season in different
professional soccer leagues, but of all of the players of the different leagues, the
international soccer players played significantly more matches during the season than
those who were not international-level [4]. Nevertheless, Carling and Orhant [5] showed that the relationship between matches played and body composition did not
demonstrate any significant association in professional soccer players but suggested
that variations in body composition across the season are perhaps more likely to be
linked to the density or importance of matches. In particular, it is the international
soccer players who present a greater density and importance of matches, especially
at the end of the season, than those who are not international-level [4].
The body fat mass (FM) and fat-free mass (FFM) assessed by dual-energy X-ray absorptiometry
(DXA) are probably the most evaluated body composition components in soccer [1]
[2]
[3]
[6]
[7]
[8]
[9]
[10]
[11]
[12]. A recent study showed that during a season, FM was not different between squads,
whereas FFM was greater in elite professional players compared with elite young players
[3]. There is evidence of FFM positional differences between goalkeepers and outfield
players [3], but no differences between the specific positions were apparent when considering
FFM in outfield players [2]
[3]. Therefore, an adequate relative FFM in outfield elite soccer players is needed
to satisfactorily execute the high-intensity movement patterns demanded during matches
and training. Multiple studies have assessed FFM using DXA in young [3]
[7] and professional soccer players [1]
[2]
[3], but we have no evidence of the existence of studies of international soccer players.
DXA provides a reliable method for assessing FFM in elite professional soccer players
[1]
[2]
[3], but its high costs do not allow frequent use [10]. In soccer it is therefore more common to use lower-cost methods such as bioelectrical
impedance analysis (BIA) and anthropometric measurements (circumference, skinfold,
and breadth) to estimate FFM [7]. Few studies have used anthropometric equations in professional players to predict
FFM [5]
[13], but only one, which compared its data with DXA, has determined which method is
more effective in elite youth male soccer players [7]. As far as we know, we have no record of the application of these methods to international
soccer players. Consequently, the aims of this study were determine which field method
has the best correlation with DXA FFM data, and to develop an equation to estimate
FFM using the field anthropometric data in international soccer players.
Materials and Methods
Subjects
Seventeen international soccer players participated in this study. The mean±SD age,
height, body mass and body mass index were 29.3±3.1 years, 1.84±0.06 m, 78.8±4.7 kg,
and 23.1±1.1, respectively. All players evaluated had played in the entire last season
with their respective senior national teams. Data were collected during the end of
the domestic competition (i. e., Serie A, Italy). The study procedures were approved
by the Ethics Committee of the institutions involved, and meet the ethical standards
of the journal [14].
Procedure
This was a cross-sectional validation study in which the height, body mass, FFM (BIA),
skinfolds, circumferences, breadths, and FFM (DXA) of the participants were measured
using standardized procedures in the aforementioned order. The FFM estimations from
BIA measurements and anthropometric equations were compared against DXA to determine
the validity of these practical methods for use in international soccer players. A
multiple regression analysis was used to generate an FFM prediction equation in international
soccer players. Participants were instructed to follow their standard food and fluid
protocol, present in a rested, fasted and hydrated state, finish their last meal at
least 2.5 h before the measurement, and arrive with an empty bladder [15]. Likewise they should avoid strenuous exercise, alcohol, stimulants, or depressants
for 24 h prior to testing [7]. Each participant undertook an identical assessment session for 30–45 minutes on
different days.
Bioelectrical impedance analysis (BIA)
Before BIA measurement, the participants’ palms and soles were wiped with an electrolyte
tissue. The BIA measurements were taken using Tanita MC-180 MAIII (Tanita Corp., Tokyo,
Japan) devices. The body mass was measured with the players standing with their soles
in contact with the foot electrodes of the Tanita MC-180 MAIII scales. Participants
grasped the hand grips while placing their fingers in the standard location. The analysis
of the FFM started when the participant was immobile in the position described previously.
The mean of two measures was used for analysis.
Anthropometry
Stature was measured with a stadiometer (seca 213; seca, Hamburg, Germany) with an
accuracy of 0.5 cm. Body mass was measured with an electronic scale (OHAUS Corp.,
Florham Park, NJ, USA) with an accuracy of 0.1 kg. The formula for the body mass index
(BMI) was body mass (kg) / height (m2). Six circumferences (calf, thigh, waist, hip, relaxed arm and flexed arm), eight
skinfold thicknesses (medial calf, anterior thigh, iliac crest, abdominal, subscapular,
supraspinale, biceps, and triceps), and two bone biepicondylar breadths (femur and
humerus) were measured with a tape, skinfold calliper, and calliper (Holtain, Crymych,
United Kingdom), respectively. All anthropometric measurements were taken according
to standard methods [16]. The mean of two measures of each anthropometric variable was used for analysis.
Ten equations were used to estimate the percentage of FM [8]
[17]
[18]
[19]
[20]
[21]
[22]
[23]
[24]
[25]. The Siri equation [10] was used to estimate the percentage of body fat when the body density was calculated
from an equation. FM was subtracted from body mass to obtain FFM (0.1 kg).
Dual-energy X-ray absorptiometry (DXA)
A DXA scanner (Hologic QDR Series, Delphi A model; Bedford, MA, USA) with software
(Hologic APEX software version 13.3:3) was used to calculate FFM in accordance with
the DXA best-practice guidelines described previously [26]. The participants were in a supine position with hands level with the hips and feet
slightly apart. FFM was obtained by the sum of the lean soft tissue mass and bone
mineral content, and was calculated from whole-body scans without the head. The FFM
coefficient of variation for repeated measures was<3.3% [27].
Statistical analyses
Descriptive statistics were calculated for each variable. Relative and absolute technical
error of the measurements were calculated [28]. The normality of the distribution of the data was verified by the Shapiro-Wilk
test. To compare FFM between DXA, BIA data and skinfold equations, the paired t-test,
Pearson correlation (±90% CI), bias, limits of agreement, standardized differences
(±90% CI), and qualitative differences were used. Correlation coefficients were qualitatively
ranked by magnitude as follows: trivial, r<0.1; small, 0.1<r<0.3; moderate, 0.3<r<0.5;
large, 0.5<r<0.7; very large, 0.7<r<0.9; almost perfect, 0.9<r<1.0; and perfect r=1.0
[29]. The effect size of the standardized differences in FFM was determined by Cohen’s
d statistic, and Hopkin’s scale was used to determine the magnitude of the effect
size, where 0–0.2=trivial, 0.2–0.6=small, 0.6–1.2=moderate, 1.2–2.0=large, and>2.0=very
large [29]. The probability of a true difference between methods was qualitatively classified
as almost certainly not,<0.5%; very unlikely, 0.5–5%; unlikely, 5–25%; possibly, 25–75%;
likely, 75–95%; very likely, 95–99.5%; and almost certainly,>99.5%. A substantial
effect was set at>75% [30]. If the chance that the true value is>25% beneficial and>0.5% chance that it is
harmful, the clinical effect was considered as unclear.
The Statistical Package for the Social Sciences (SPSS 2010, IBM SPSS Statistics 19
Core System User’s Guide; SPSS, Inc., Chicago, IL, USA) was used to perform the stepwise
regression analyses. FFM (DXA) as the dependent variable and the anthropometric variables
that significantly correlated with FFM (DXA) were introduced as the predictor variables
to obtain the best model for predicting FFM in an international soccer-specific equation.
Significance was set at p<0.05.
Results
The physical characteristics of the participants are shown in [Table 1]. The technical errors of measurements were ≤2.78% for skinfold measurement and ≤0.52%
for circumferences and bone breadths ([Table 2]).
Table 1 Physical characteristics of the participants (n=17).
|
Mean
|
SD
|
Age (y)
|
29.3
|
3.1
|
Weight (kg)
|
78.8
|
4.7
|
Height (cm)
|
184
|
6
|
BMI (kg/m2)
|
23.3
|
1.1
|
%FM by DXA with head
|
13.6
|
1.8
|
FFM by DXA without head
|
68.1
|
4
|
Skinfolds (mm)
|
|
|
Triceps
|
7.1
|
2.1
|
Subscapular
|
8.2
|
0.9
|
Biceps
|
3.1
|
0.4
|
Iliac crest
|
8.4
|
1.6
|
Supraspinale
|
5.7
|
0.8
|
Abdominal
|
4.8
|
0.9
|
Anterior thigh
|
7.4
|
1.7
|
Medial calf
|
6
|
0.9
|
Circumferences (cm)
|
|
|
Arm relaxed
|
28.9
|
1.7
|
Arm flexed
|
30.7
|
1.5
|
Waist
|
76.6
|
2.4
|
Hip
|
94.9
|
1.7
|
Thigh
|
53.9
|
1.5
|
Breadths (cm)
|
|
|
Humerus
|
6.31
|
0.74
|
Femur
|
7.66
|
0.36
|
BMI=body mass index; %BF=percentage of body fat; FFM=fat-free mass; DXA=dual X-ray
absorptiometry.
Table 2 Coefficient of variation, absolute and relative technical error of measurement for
anthropometric variables in international-level elite soccer players (n=17).
|
Absolute (mm)
|
Relative (%)
|
Skinfolds
|
|
|
Triceps
|
0.14
|
1.64
|
Subscapular
|
0.12
|
3.95
|
Biceps
|
0.12
|
2.06
|
Iliac crest
|
0.19
|
2.25
|
Supraspinale
|
0.13
|
2.66
|
Abdominal
|
0.22
|
2.99
|
Anterior thigh
|
0.22
|
3.73
|
Medial calf
|
0.22
|
3.73
|
Circumferences (cm)
|
|
|
Arm relaxed
|
0.26
|
0.91
|
Arm flexed
|
0.16
|
0.53
|
Waist
|
|
|
Hip
|
0.21
|
0.27
|
Thigh
|
0.23
|
0.42
|
Breadths (cm)
|
|
|
Humerus
|
0.03
|
0.54
|
Femur
|
0.04
|
0.55
|
BMI=body mass index; %BF=percentage of body fat; FFM=fat-free mass; DXA=dual X-ray
absorptiometry.
Correlations; biases; limits of agreement; systematic, standardized, and qualitative
differences between DXA FFM; and other practical estimates of FFM for international
soccer players are shown in [Table 3]. All skinfold equations and BIA FFM data showed a positive correlation (r from 0.90–0.96)
with DXA. Only one set of equations showed no standardized or substantial differences
compared with DXA and had the lowest bias [18].
Table 3 Cross-sectional validity between criterion (DXA) fat-free mass and other practical
estimates of fat-free mass in international-level elite soccer players (n=17).
Estimates of fat-free mass
|
Correlation (90% CI)
|
Bias (±LoA)
|
Standardised differences (90% CL)
|
Qualitative assessment
|
BIA Tanita
|
0.93 (0.85;0.97)
|
7.59*(±3.34)
|
1.74 (0.15)
|
Almost certainly
|
100/0/0
|
Slater et al.
|
0.96 (0.90;0.98)
|
–16.48*(±2.73)
|
–4.65 (0.12)
|
Almost certainly
|
0/0/100
|
Oliver et al.
|
0.95 (0.89;0.98)
|
9.38*(±2.62)
|
2.13 (0.10)
|
Almost certainly
|
100/0/0
|
Durnin et al.
|
0.95 (0.89;0.98)
|
6.21*(±2.62)
|
1.44 (0.11)
|
Almost certainly
|
100/0/0
|
Faulkner et al.
|
0.95 (0.90;0.98)
|
7.45*(±2.79)
|
1.72 (0.13)
|
Almost certainly
|
100/0/0
|
Carter et al.
|
0.94 (0.87;0.98)
|
10.24*(±2.98)
|
2.31 (0.14)
|
Almost certainly
|
100/0/0
|
Deurenberg et al.
|
0.90 (0.78;0.96)
|
0.53 (±3.46)
|
0.13 (0.18)
|
Unclear
|
0/100/0
|
Withers et al.
|
0.95 (0.89;0.98)
|
9.17*(±2.65)
|
2.09 (0.12)
|
Almost certainly
|
100/0/0
|
Lohman et al.
|
0.94 (0.87;0.98)
|
10.32*(±3.04)
|
2.33 (0.13)
|
Almost certainly
|
100/0/0
|
Reilly et al.
|
0.95 (0.88;0.98)
|
8.06*(±2.80)
|
1.85 (0.13)
|
Almost certainly
|
100/0/0
|
Yuhasz et al.
|
0.95 (0.87;0.98)
|
9.26*(±2.89)
|
2.11 (0.13)
|
Almost certainly
|
100/0/0
|
Significant differences between criterion (DXA) fat-free mass and others practical
estimates of fat-free mass using paired t-test*. CI=confidence interval; LoA=level
of agreement; CL=confidence level; BIA=bioelectrical impedance analysis.
Only the relaxed arm, flexed arm, hip circumferences, and humerus breadth showed a
significantly large to very large positive correlation with DXA-derived FFM (r from
0.53 to 0.71; all p<0.05) ([Table 4]). All skinfolds and all sums of skinfolds showed no correlation with DXA-derived
FFM. The different models for the stepwise linear regression analysis are shown in
[Table 5]. The main predictor of FFM was relaxed arm circumference. An equation including
relaxed arm and hip circumference showed an adjusted R2 value of 0.65 (p<0.05). The developed equation is as follows: FFM (kg)=–66.388+(1.121
x relaxed arm circumference)+(1.029 × hip circumference), where circumferences are
expressed in centimetres.
Table 4 The relationship between criterion (DXA) whole-body fat-free mass and the different
anthropometric variables in elite youth male soccer players (n=17).
|
Correlation
|
P value
|
Skinfolds
|
|
|
Triceps
|
−0.18
|
0.485
|
Subscapular
|
0.14
|
0.570
|
Biceps
|
0.07
|
0.769
|
Iliac crest
|
−0.05
|
0.842
|
Supraspinale
|
0.07
|
0.771
|
Abdominal
|
−0.25
|
0.327
|
Anterior thigh
|
0.09
|
0.726
|
Medial calf
|
−0.25
|
0.316
|
Σ4 skinfolds (triceps, subscapular, supraspinale, abdominal)
|
−0.10
|
0.691
|
Σ4 skinfolds (triceps, subscapular, biceps, iliac crest)
|
−0.08
|
0.748
|
Σ4 skinfolds (triceps, abdominal, anterior thigh, medial calf)
|
−0.14
|
0.576
|
Σ5 skinfolds
|
0.03
|
0.892
|
Σ6 skinfolds
|
−0.08
|
0.756
|
Σ7 skinfolds
|
−0.08
|
0.751
|
Σ8 skinfolds
|
−0.07
|
0.762
|
Circumferences (cm)
|
|
|
Arm relaxed
|
0.70
|
0.002
|
Arm flexed
|
0.57
|
0.017
|
Waist
|
0.07
|
0.789
|
Hip
|
0.68
|
0.003
|
Thigh
|
0.39
|
0.112
|
Breadths (cm)
|
|
|
Humerus
|
0.51
|
0.037
|
Femur
|
0.06
|
0.813
|
Σ5 skinfolds=triceps, subscapular, biceps, iliac crest, anterior thigh; Σ6 skinfolds=subscapular,
triceps, supraspinale, abdominal, anterior thigh, medial calf; Σ7 skinfolds=biceps,
subscapular, triceps, supraspinale, abdominal, anterior thigh, medial calf; Σ8 skinfolds=biceps,
subscapular, triceps, iliac crest, supraspinale, abdominal, anterior thigh, medial
calf.
Table 5 Stepwise regression analysis predicting fat-free mass (DXA without head) from anthropometric
variables in international-level elite soccer players (n=17).
Model
|
R
|
R2
|
Adjusted R2
|
SEE
|
R2 change
|
F
|
F change
|
Significant F change
|
1
|
0.697
|
0.485
|
0.451
|
2.893
|
0.485
|
14.149
|
14.149
|
0.002
|
2
|
0.807
|
0.652
|
0.602
|
2.463
|
0.166
|
13.102
|
6.689
|
0.022
|
Model 1: relaxed arm circumference. Model 2: relaxed arm circumference, hip circumference.
R2=coefficient of determination; SEE=standard error of the estimate.
Discussion
The aims of this study were to determine which field method has the best correlation
with DXA FFM data, and to develop an equation to estimate FFM using the field anthropometric
data in international soccer players. The main findings of this study were as follows:
1) the adult equation developed by Deurenberg et al. [18] applied to international soccer players was accurate and highly correlated with
DXA FFM data; 2) the data obtained by Deurenberg equations was the least biased compared
to other field methods; 3) the relaxed arm circumference was the best predictor of
FFM in our cohort; and 4) relaxed arm and hip circumference variables were included
in the equation to estimate FFM in international soccer players.
Skinfold thickness equations and BIA data were similar predictors of DXA-derived FFM
but underestimated FFM compared with DXA-derived FFM in international soccer players.
However, it seems relevant to emphasize that these equations were developed from data
collected on more heterogeneous samples with a low range of FFM. All field estimations
of FFM used in this study showed almost perfect correlation values with DXA FFM data,
but the biases indicate that we should be cautious when using them for FFM estimates
in international soccer players. Similar results were obtained in an analysis of youth
male soccer players [7] in which three skinfold equations were suggested to assess FFM. Our findings suggest
that the equation proposed by Deurenberg et al. [18] is a more valid practical method for use in international soccer players. Skinfolds
do not seem to be appropriate to predict FFM in international soccer players because
they were not included in the equation proposed by Deurenberg et al. [18] or our international soccer-specific prediction equation. The FFM in international
soccer players was better determined by other anthropometric parameters, most likely
because this population is characterized by low FM [3]
[10]
[31] and tends to remain relatively FM-stable throughout the inter-season [5]
[32].
Hip, relaxed and flexed arm circumferences, and humerus breadths showed large significant
correlations with DXA FFM data. The statistical relationships from circumferences
can be explained because they are influenced by the conditioning and training received
by soccer players during the season’s phases [2]. Milanese et al. [2] argued that the maximal strength training and endurance strength conditioning focused
on the lower limbs during the pre-season, but limited changes in lower limbs and significantly
increased FFM in the trunk and upper limbs were found at mid- and end-season time
points. Despite being a relatively stable sample in terms of its anthropometric variables
[31]
[32], it could be possible that the time chosen for the anthropometric measurement (i. e.
mid- and end-season) could have influenced the data obtained [2]
[5].
The relative FFM values in the lower limbs, trunk, and upper limbs in soccer players,
are very important to execute the locomotor activities, jumps, kicks and flight that
the game demands [16]
[31]. Nevertheless, only relaxed arm and hip circumference variables were included in
the equation to estimate FFM in international soccer players. This equation explains
more than 65% of the variance in DXA FFM, although additional research is needed to
reduce errors and increase accuracy in estimating FFM in this population.
The present study does have several limitations. DXA FFM assessment has some limiting
factors because it does not provide information about muscle water or glycogen content,
which may influence the estimation of FFM. We instructed the participants to arrive
in a standardized condition to minimize the influence of these variables on the determination
of FFM. This study was limited to a single valuation of FFM, so it is necessary to
perform longitudinal studies to determine if the deposits found are sensitive to changes
in FFM throughout the season.
Conclusion
The BIA and all equations used in this study to estimate FFM showed high correlation
values with DXA data , but only the equation developed by Deurenberg et al. [18] did not underestimate FFM compared with the FFM obtained by DXA. In addition, the
study provided a valid and accurate equation to estimate FFM specifically in international
soccer players.