Raw Bioelectrical Impedance Analysis (BIA) Variables and Physical
Fitness in Semi-Professional Basketball Players
Giada Ballarin
1
, Fabiana Monfrecola
1
, Paola Alicante
1
, Ada Di Gregorio
1
, Maurizio Marra
2
,
Anna Maria Sacco
1
and Luca Scalfi
1
1
Department of Public Health, Federico II University of Naples, Via S. Pansini 5, Naples, Italy
2
Department of Clinical Medicine and Surgery, Federico II University of Naples, Via S. Pansini 5, Naples, Italy
Keywords: Basketball, Physical Fitness, Body Composition, BIA, Phase Angle, Impedance Ratio.
Abstract: Body composition (BC) and physical performance are routinely assessed in athletes. Incomplete data are
available on BC and its relationships with physical fitness in basketball players. Our study aimed to evaluate
differences in raw BIA variables such as impedance ratio=IR and phase angle=PhA, and their relationships
with physical fitness in semi-professional male basketball players compared to controls. Fourteen basketball
players (age 21.9±5.3 years, body weight 84.6±11.3 kg, body mass index=BMI 24.6±2.0 kg/m²) and fifty-
seven control men (age 22.6±2.0 years, body weight 75.1±9.4 kg, BMI 24.1±2.3 kg/m²) participated in the
study. BC was assessed using bioelectrical impedance analysis (BIA) and physical fitness using handgrip
strength (HGS), long jump (L-J), squat jump (SQ-J) and counter-movement jump (CM-J). PhAs were higher
and IRs were lower in basketball players for the whole body and limbs. Differences in HGS between groups
did not persist after adjusting for body weight, whereas L-J (+32.6%), SQ-J (+35.4%) and CM-J (+28.7%)
were clearly higher in the basketball group. HGS, L-J, SQ-J and CM-J significantly correlated with both IRs
and PhAs (whole body and limbs). In conclusion, this study shows that raw BIA variables were significantly
different in semi-professional basketball players compared to controls and also exhibit significant
relationships with physical fitness.
1 INTRODUCTION
The evaluation of physical fitness and body
composition (BC) is crucial in assessing athletes’
performance. In basketball players VO
2
max, long
jump and shuttle-run test have been evaluated with
the aim to identify talents or design training programs
(Tsunawake et al. 2003; Calleja González et al. 2018).
For instance, a difference has been observed in BC,
aerobic fitness, anaerobic power, and vertical jump
among positional roles (Ostojic et al. 2006; Ponce-
González et al. 2015). Indeed, there is some
conflicting evidence (Mancha-Triguero et al. 2019):
vertical jump height was around or greater than 60 cm
in the study by Ostojic et al. (2006), but much lower
in other studies (Ponce-González et al. 2015).
As far as BC is concerned, previous papers have
shown high fat-free mass (FFM) and low fat mass
(FM) in both male and female basketball players
(Fields et al. 2018a). FM was similar in high school
and elite female players (Tsunawake et al. 2003),
whereas female adolescents practicing basketball or
other team sports had more lean body mass and less
FM than controls (Ubago-Guisado et al. 2017). No
significant seasonal differences were observed, but
male players showed an increase in FFM across years
(Fields et al. 2018b) and female players a reduced
body fat (Stanforth et al. 2014). A low percentage of
body fat was found at higher playing levels and a wide
variability of skinfold thickness was observed among
different playing positions (Vaquera et al. 2015).
BC has been evaluated in basketball players with
different techniques such as DXA, air pletismo-
graphy and hydrostatic weighing. (Hoare 2000;
Vaquera et al. 2015; Fields et al. 2018b; Raymond-
Pope et al. 2020). Skinfold thickness measurement
and bioelectrical impedance analysis (BIA) are the
most commonly technique used in the field . On the
other hand, only few studies evaluated BC in
basketball players using bioimpedance analysis=BIA
(Nescolarde et al. 2011; Gerodimos et al. 2017). Our
interest was further stimulated by the fact that raw
BIA variables such as impedance ratio (IR as ratio
between impedance=Z at high frequency and Z at low
Ballarin, G., Monfrecola, F., Alicante, P., Di Gregorio, A., Marra, M., Sacco, A. and Scalfi, L.
Raw Bioelectrical Impedance Analysis (BIA) Variables and Physical Fitness in Semi-Professional Basketball Players.
DOI: 10.5220/0010066101330138
In Proceedings of the 8th International Conference on Sport Sciences Research and Technology Support (icSPORTS 2020), pages 133-138
ISBN: 978-989-758-481-7
Copyright
c
2020 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved
133
frequency) or phase angle (PhA) may be considered
as promising markers of muscle quality. As a matter
of fact, these raw BIA variables have been related to
muscle structure (body cell mass=BCM) and the ratio
between extracellular water=ECW and intracellular
water=ICW in different pathophysiological
conditions (Lukaski et al. 2017) and also in athletes
(Di Vincenzo et al. 2019). In addition, IR and PhA
have been associated with muscle function in various
diseases (de Blasio et al. 2019; Mundstock et al.
2019), but not in athletes (Di Vincenzo et al. 2019).
Finally, the relationship between physical fitness
and BC has been evaluated in few previous studies in
male athletes: no or a weak correlation emerged
between vertical jump or standing broad jump
performance and stature (Davis et al. 2003; Sidhu
2018), whereas there was a stronger relationship
between vertical jump and lower percentage of body
fat (Davis et al. 2003; Aouadi et al. 2012). No data are
available on the association between physical fitness
and raw BIA variables.
Based on previous literature, basketball training
might be expected to influence muscle quality. It
might be supposed that raw BIA variables differ
between semiprofessional basketball players and
controls and that there are significant relationships
between these variables and physical fitness.
Facing this background, we aimed to evaluate in
semi-professional basketball players vs. controls: 1)
differences in raw BIA variables (whole body and
limbs); 2) differences in physical fitness; 3)
relationships between physical fitness and raw BIA
variables.
2 METHODS
This cross-sectional study included fourteen male
semi-professional basketball athletes (age 21.9±5.3
years, stature 185.1±7.1 cm, body weight 84.6±11.3
kg, BMI 24.6±2.0 kg/m²) and fifty-seven control men
(age 22.6±2.0 years, stature 176.1±7.7 cm, body
weight 75.1±9.4 kg, BMI 24.1±2.3 kg/m²). Basketball
players were semi-professional athletes (A.S.D.
Folgore Nocera basketball team), who competed in
the Italian fifth division championship (C-silver).
Athletes trained at least six hours a week in three
sessions and played a match every week. Every
training session lasted at least 120 minutes and can be
considered as a moderately hard training program.
Controls were recruited among the students attending
the Federico II University of Naples. Controls did not
practice sport and did less than 100 minutes of
moderate-vigorous activity. All subjects were
otherwise healthy.
The participants avoided physical exercise for 24
hours before the measurement session, being studied
by the same operator following standard procedures.
Body weight was measured to the nearest 0.1 kg using
a platform beam scale and stature to the nearest 0.5
cm using a stadiometer (Seca, Hamburg, Germany).
Body mass index=BMI was then calculated as body
weight (kg)/stature² (m²).
Concerning BIA, Z and PhA were measured at
frequencies between 5 and 300 kHz (HUMAN IM
TOUCH analyser, DS MEDICA, Milano), in
standardized conditions: ambient temperature
between 23-25 °C, fast >3 h, empty bladder, and
supine position for 10 min. BIA data for the whole
body and separately for upper limbs and lower limbs
were taken into consideration with respect to: 1)
bioimpedance index=BI index, calculated as stature²
divided by Z at 5 or 300 kHz, as marker of ECW and
total body water=TBW or FFM, respectively; 2) IR
between Z at high frequency and Z at low frequency
(three ratios: Z 50 kHz/Z 5 kHz, Z 100 kHz/Z 5 kHz,
and Z 300 kHz/Z 5 kHz); 3) PhA measured at 50 kHz.
In all cases, mean values for right and left body sides
were considered for statistical analysis.
FFM was estimated using the Sun equation, which
included stature, body weight and resistance (very
close to Z) as predictors (Sun et al. 2003). Fat mass
(FM) was calculated as body weight minus FFM.
2.1 Fitness Tests
Selected physical fitness tests were performed
according to standard procedures with respect to:
1) Handgrip strength (HGS) to measure isometric
strength of upper limbs (Dynex dynamometer, MD
systems Inc., Ohio USA). Maximum values of six
attempts on preferred and non-preferred sides of the
body were used for statistical analysis.
2) Long jump (L-J) to assess lower body muscle
strength. Participants performed a two foot take-off
and landing. The swinging of the arms and flexing of
the knees are permitted to provide forward drive. The
subject attempts to jump as far as possible, landing on
both feet without falling backwards. Length was
measured to the nearest point of contact on the
landing. Two attempts were performed and the best
value was used for analysis.
3) Squat jump (SQ-J) and countermovement jump
(CM-J) (OptoJump device, MicroGate, Italy) to
assess the explosive power of lower limbs. Subjects
performed SQ-J with hands placed on the hips, while
CM-J has been performed with arm swinging. In both
icSPORTS 2020 - 8th International Conference on Sport Sciences Research and Technology Support
134
cases, the highest of three jumps was used for
statistical analysis.
2.2 Statistical Analysis
Results are expressed as mean±standard deviation.
Statistical significance was pre-determined as
p<0.05. All statistical analyses were performed using
the Statistical Package for Social Sciences (SPSS Inc,
Chicago, IL, USA) version 24.
Shapiro-Wilk test was applied to assess normality
of the sample. The general linear model was used to
assess differences after controlling for body weight.
One-way ANOVA was performed to assess
differences between the two groups. Partial
correlations were employed to evaluate association
between variables after controlling for group and age.
3 RESULTS
The general characteristics of the study groups are
reported in Table 1. As expected, basketball players
were taller and heavier than controls, with no
statistical difference for age and BMI. They also
exhibited higher FFM (from BIA, p<0.01), but there
was no difference after adjusting for body weight.
Table 1: Individual characteristics and body composition in
14 basketball players and 57 controls.
Basketball
players
Controls
Age yrs 21.9 ±5.3 22.6±2.0
Body weight kg 84.6 ±11.3
75.1±9.4
a
Stature cm 185.1 ±7.1
176.1±7.7
a
Body mass index kg/m
2
24.6 ±2.0 24.1±2.3
Fat-free mass kg 66.8 ±6.3 60.5±6.7
a
Fat mass kg 17.8 ±6.5 14.8±5.0
Fat mass % 20.5 ±5.5
19.4±4.9
mean±standard deviation.
a=p<0.05 between groups.
As far as raw BIA variables are concerned (Table
2), BI indexes at 5, 50, 100 and 300 kHz were
significantly higher in the basketball group than in the
control group (+7.6%, +9.2%, +9.9% and +10.6%,
respectively); no differences persisted after
adjustment for body weight.
On the other hand, in basketball players PhAs were
higher for the whole body, upper limbs and lower
limbs (+9.8%, +8.8% and +9.2% respectively) (Table
3).
Table 2: Bioimpedance indexes calculated for the whole
body in 14 basketball players and 57 controls.
Bioimpedance (BI) index
(cm
2
/kHz)
Basketball
players
Controls
5 kHz 59.2±6.0
55.0±6.8
a
50 kHz 70.3±6.6
64.4±8.3
a
100 kHz 75.5±7.0
68.7±9.0
a
300 kHz 83.7±7.4 75.7±9.9
a
mean±standard deviation.
a=p<0.05 between groups.
In the opposite direction, significant lower IRs
were observed in the basketball group compared to
the control group for the whole body and lower limbs
(p<0.10 for upper limbs). This was true for each of
the three ratios considered (data shown for IR Z 300
kHz/Z 5 kHz).
Focusing on physical fitness, HGS was well
correlated (p<0.05) with L-J (r=0.505) SQ-J
(r=0.613) and CM-J (r=0.641). HGS was
significantly higher in the basketball group (Table 3),
but the difference was reduced after adjusting for
body weight (adjusted means 48.7 kg vs 46.4 kg). On
the contrary, a clear difference emerged between
groups in L-J (+32.6% in basketball players), SQ-J
(+35.4%) and CM-J (+28.7%).
Table 3: Phase angle at 50 kHz and impedance ratio Z 300
kHz/Z 5 kHz measured for the whole body and limbs in 14
basketball players and 57 controls.
Basketball
players
Controls
Impedance ratio
Whole body 0.707±0.025 0.727±0.022
a
Upper limbs 0.713±0.028 0.727±0.025
Lower limbs 0.713±0.025
0.736±0.024
a
Phase angle (degrees)
Whole body 7.52±0.82
6.85±0.67
a
Upper limbs 6.58±1.00
6.05±0.74
a
Lower limbs 8.46±0.76
7.75±0.70
a
mean±standard deviation. PhA=phase angle.
a=p<0.05 between groups.
The relationships of physical fitness with selected
variables of interest were first evaluated by partial
correlation (after adjusting for group and age). Table
5 shows that HGS, L-J, SQ-J and CM-J substantially
correlated with IRs (each of the three ratios) and PhA
measured on the whole body; similar results also
come out in most cases for upper or lower limbs (data
Raw Bioelectrical Impedance Analysis (BIA) Variables and Physical Fitness in Semi-Professional Basketball Players
135
not shown). Actually, physical fitness variables were
more strictly correlated with raw BIA variables than
with stature, body weight or BMI.
.
4 DISCUSSION
This study shows that raw BIA variables such as IR
and PhA were significantly different in semi-
professional basketball players compared to controls
(suggesting improved muscle structure) and also
exhibit significant relationships with physical fitness.
Table 4: Physical fitness tests performed in 14 basketball
players and 57 controls.
Performance Tests
Basketball
players
Controls
Handgrip strength kg 51.4±10.4
45.9±8.2
a
Long jump cm 221.8±23.6
167.3±29.6
a
Squat jump cm 32.9±8.2
24.3±5.7
a
Countermovement jump cm 30.5±8.7
23.7±4.8
a
mean±standard deviation.
a=p<0.05 between groups.
There have been a number of studies on BC in
basketball players, showing high FFM, low FM,
differences depending on playing levels or playing
position, etc. (Tsunawake et al. 2003; Stanforth et al.
2014; Vaquera et al. 2015; Ubago-Guisado et al.
2017; Fields et al. 2018a; Fields et al. 2018b).
BIA is a widely used, non-invasive and portable
technique to assess body composition, which has
been used only by few studies in basketball players
(Nescolarde et al. 2011; Gerodimos et al. 2017).
In this study BIA was performed in semi-
professional basketball players and controls to
evaluate body composition compartments and raw
BIA variables.
First, FFM was estimated by means of predictive
equations that include BIA variables, age, stature and
body weight (Sun et al. 2003). After adjusting for
confounders, no major impact of training on FFM or
FM emerged, possibly because of the characteristics
of the training program.
Then, raw BIA variables such as BI index, IR and
PhA were considered. BI index is not widely
mentioned in the literature, although its relationships
with ECW (at low frequencies) and TBW or FFM (at
high frequencies) are well known. In this study
whole-body BI indexes were higher in the basketball
players, with a larger difference between groups at
300 kHz than 5 kHz, suggesting significant
differences in body water compartments.
Table 5: Partial correlation of physical fitness with
impedance ratio (IR=Z 300 kHz/Z 5 kHz) and phase angle.
Physical fitness tests IR* Phase angle
r p r p
Handgrip strength -0.375 0.002
0.418 <0.001
Long jump -0.349 0.005
0.335 0.008
Squat jump -0.522 <0.001
0.530 <0.001
Countermovement jump -0.467 <0.001
0.480 <0.001
Results for the whole body (adjusted for age and group)
*Similar findings for IR 50 kHz/5 kHz or 100 kHz/5 kHz
As primary aim of the study, the attention was
focused on those raw BIA variables (IR and PhA) that
are markers of cell integrity and quite possibly of
muscle structure and quality (Lukaski et al. 2017a; Di
Vincenzo et al. 2019), being also associated with
muscle strength and physical activity (de Blasio et al.
2019; Mundstock et al. 2019). Overall, evidence on
IR and PhA is still lacking in athletes (Di Vincenzo et
al. 2019).
PhA is believed to be a proxy of BCM (and
inversely related to the ratio between ECW and ICW).
PhA was significantly higher in basketball players
than controls (+9.8% for the whole body), with a
similar difference between groups for upper limbs
and lower limbs. These observations were reinforced
by data on IR, which is a proxy of the ratio between
ECW and ICW (and inversely related to BCM). To
the best of our knowledge, there is no consistent
information on the IR of athletes. There is also no
agreement on the frequencies to be used for
calculating IR. For calculating IRs we selected three
high frequencies (50, 100 and 300 kHz) and one low
frequency (5 kHz). Our results were similar for the
three ratios considered, indicating that IRs were
significantly lower in the basketball players for the
whole body and lower limbs (less clearly for upper
limbs). At first glance, the differences in IRs appear
negligible in percentage terms; actually, they should
be considered in view of the very small standard
deviations observed for these variables. For instance,
the difference in IR Z 300 kHz/Z 5 kHz for the whole
body was 0.020, which was close to the pooled SD of
0.024.
Overall, evidence on IR and PhA suggests
different effects of training on distinct limb muscles
with a more marked improvement in raw BIA
variables for the lower limbs.
As further point, we evaluated physical fitness
focusing on the domain of strength. Previous studies
have already assessed physical performance, for
instance VO
2
max, in basketball players (Mancha-
icSPORTS 2020 - 8th International Conference on Sport Sciences Research and Technology Support
136
Triguero et al. 2019). We select physical fitness
variables that can be measured in both basketball
players and controls. Unlike HGS, L-J, SQ-J and CM-
J, which are all markers of lower limb strength, were
clearly higher in the basketball players, with a similar
relative difference between groups.
Finally, another aim of the study was to
demonstrate a relationship between function and
body composition as explored by raw BIA variables.
As far as we know, in athletes there are no
consistent data on this topic (Di Vincenzo et al. 2019).
Based on our results, the variables of physical fitness
considered were all significantly correlated with IRs
and PhA. It should be noted that the associations with
L-J, SQ-J and CM-J were stronger for lower-limb
than upper-limb IRs or PhA, while the opposite was
seen for HGS. Thus, raw BIA variables might be used
for a more effective evaluation of muscle quality in
terms of both muscle structure and strength.
In conclusion, this preliminary study gives some
information about the use of raw BIA variables in
assessing the athletes’ nutritional status. Actually,
raw BIA variables such as IR and PhA were
significantly different in semi-professional basketball
players, suggesting higher BCM, and also exhibit
significant relationships with physical fitness. More
information may be given by segmental BIA of upper
and lower limbs, which can be further useful for a
better evaluation of the relationships between
physical fitness and BC.
Large cross-sectional studies and, possibly,
longitudinal studies are needed to confirm that the
concurrent use of BIA and physical fitness tests is
valuable in assessing muscle quality, and to assess
differences due to gender, training volume, playing
position, playing levels, etc.
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