Resting Energy Expenditure in Elite Female Athletes of Different
Sports
Olivia Di Vincenzo
1
, Maurizio Marra
1
, Delia Morlino
1
, Enza Speranza
1
, Rosa Sammarco
1
,
Iolanda Cioffi
1
and Luca Scalfi
2
1
Department of Clinical Medicine and Surgery, Federico II University of Naples,
Via S. Pansini 5, 80131, Naples, Italy
2
Department of Public Health, Federico II University of Naples, Via S. Pansini 5, 80131, Naples, Italy
Keywords: Athletes, Resting Energy Expenditure, Body Composition, Bioimpedance.
Abstract: An optimal balance between energy intake and energy expenditure is essential for athlete performance,
therefore, measuring Resting Energy Expenditure (REE) in athletes might help for providing adequate
energy needs. This study aimed to evaluate REE measured with indirect calorimetry in elite female athletes
practicing ballet dance, volleyball and swimming and if REE varied among the three sport groups after
adjustment for fat-free mass (FFM). Elite female athletes aged 18-35 years who train for at least 16/18 hours
per week were recruited. Anthropometry, indirect calorimetry and bioimpedance analysis were performed.
Ballet dancers had the lowest FFM and FM in both absolute and percentage values (p<0.05) compared to
other athletes. REE was lower in ballet dancers than in volleyball players (REE:1320±139 kcal/die vs.
1538±124 kcal/die, p=0.001) even after adjustment for age. After adjustment for FFM and for both FFM
and age, REE was lower in ballet dancers than volleyball players but did not achieve statistical significance.
Our study showed that REE in sport is mostly influenced by age and body composition and confirmed that
FFM is the major determinant of REE. Further valuations are needed to evaluate if REE could also be
influenced by dietary habits as well as by age in which athletes start sport activity.
1 INTRODUCTION
Resting Energy Expenditure (REE) is the amount of
energy spent at rest in a fasted state at a
thermoneutral condition and it represents more than
60% of total energy expenditure in normal-weight
healthy adults (Trexler 2014, Marra 2015).
Generally, indirect calorimetry (IC) is the criterion
method for measuring REE (McClave 1992),
alternatively, REE is estimated by predictive
equations and the Harris and Benedict formula
(Harris and Benedict 1918), has been the most
popular equation used in healthy participants.
Elite athletes have higher energy needs than non-
athletic subjects for training and recovery. Since an
optimal balance between energy intake and energy
expenditure is essential for athlete performance,
measuring their REE might help for determining
properly their energy requirements. In fact, the
under- or overestimation of athlete’s energy needs
might result in a loss of fat-free mass (FFM),
increased fat mass, impaired performance and
increased risk of injuries (Loucks 2004; Rodriguez
2009; ten Haaf 2014).
REE is known to be influenced by sex, weight as
well as body composition. In fact, the major
determinant of REE is FFM. Consequently, the
assessment of FFM is of great importance in
evaluating REE in athletes.
From a practical point of view, bioelectrical
impedance analysis (BIA) is a widely used, non-
invasive field method for assessing body
composition in athletes. Even more, raw BIA
variables such as phase angle (PhA) have been
shown to be significantly associated with muscle
strength and physical activity (Moon 2013;
Mundstock 2019) and to be higher in athletes than
general population (Di Vincenzo 2019; Di Vincenzo
2020).
To the best of our knowledge, very little is
known regarding REE of female athletes, which can
widely vary depending on the sport type. Ballet
dance, volleyball and swimming are the most
popular sports among females. These are different
sport specialties and the type of physical exercise,
144
Di Vincenzo, O., Marra, M., Morlino, D., Speranza, E., Sammarco, R., Cioffi, I. and Scalfi, L.
Resting Energy Expenditure in Elite Female Athletes of Different Sports.
DOI: 10.5220/0010107701440147
In Proceedings of the 8th International Conference on Sport Sciences Research and Technology Support (icSPORTS 2020), pages 144-147
ISBN: 978-989-758-481-7
Copyright
c
2020 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved
the different trophism, and therefore, body
composition of the athletes, varies among these
disciplines. To date, REE has not been previously
compared between these three different sports.
Therefore, based on this background, the first
aim of the study was to evaluate REE measured with
indirect calorimetry in elite female athletes
practicing ballet dance, volleyball and swimming.
Additionally, we aimed to evaluate if REE could
vary among the three sport groups after adjustment
for FFM.
2 METHODS
Inclusion criteria of the present study were: elite
female athletes aged 18-35 years who train for a
minimum of 16/18 hours per week. Subjects affected
by overt metabolic and/or endocrine diseases and/or
regularly taking any medications affecting energy
metabolism, were excluded.
All measurements were performed early in the
morning after an overnight fast according to
standardized conditions, abstention from vigorous
physical activity for 24 hours prior to the
assessment.
Body weight and stature were measured to the
nearest 0.1 kg and 0.5 cm, respectively, using a
platform beam scale with a built-in stadiometer
(Seca 709; Seca, Hamburg Germany). Body Mass
Index (BMI, kg/m²) was calculated as body weight
(kg) divided by squared stature (m).
BIA was performed at 50 kHz (Human Im Plus
II, DS Medica). Measurements were carried out on
the nondominant side of the body, in the post-
absorptive state, after voiding and with the subject in
the supine position for 20 minutes, with a leg
opening of 45° from the median line of the body and
the upper limbs, 30° apart from the trunk (Kyle
2004). The BIA variables considered were resistance
(R), reactance (Xc), and PhA. FFM was estimated
using the Sun equation (Sun et al. 2003). Fat mass
(FM) was calculated as the difference between body
weight and FFM.
REE was measured by indirect calorimetry
(McClave 1992) using a canopy system (V max29,
Sensor Medics, Anaheim, U.S.A.).
Measurement conditions for IC were defined
following the suggestions made by Compher et al.
(Compher 2006) and Fullmer et al. (Fullmer 2015).
REE was measured at an ambient temperature of 22-
25 °C with the subjects fasting (12-14 hours) and
laying down, but awake, on a bed in a quiet
environment. REE was assessed during the
postmenstrual phase to avoid any potential effects of
the menstrual cycle. After a 15-minute adaptation
period, oxygen consumption and carbon dioxide
production were measured for 45 minutes. Energy
expenditure was calculated using the abbreviated
Weir’s formula, neglecting protein oxidation (Weir
1949). Data were excluded from analysis if the
respiratory quotient was outside the expected range
(0.71-1.00) and when measured REE was ±3
standard deviations outside the mean REE (Marra
2019).
Statistical Analysis
Statistical analyses were performed using IBM SPSS
(version 20). All data are presented as
mean±standard deviations (SD), unless otherwise
specified. Comparisons between groups were
conducted by analysis of variance (ANOVA) and
Tukey post hoc test for multiple comparisons was
adopted. Significance was defined as p <0.05.
3 RESULTS
Forty elite female athletes (age=27.5±10.9 years;
weight=56.6±7.6 kg; stature=166±5 cm;
BMI=20.4±2.0 kg/m²) were selected for this study.
Anthropometric characteristics of the subjects
divided according to sport specialty are summarized
in Table 1.
Table 1: Subject’s characteristics.
Ballet
dancers
(n =10)
Volleyball
Players
(n =15)
Swimmers
(n =15)
Age (years)
Weight (kg)
Stature (cm)
BMI
(kg/m
2
)
18.6±0.9 22.4±2.7 41.4±6.6*
47.7±4.4§ 62.7±4.6 59.2±3.0
163±5° 169±5 166±3
17.9±1.0§ 21.8±1.1 21.4±1.0
Data are reported as mean±standard deviation; BMI=body
mass index.
p<0.05 *=vs all; §=vs all; °=vs volleyball players.
Swimmers were significatively older than other
athletes whereas ballet dancers had the lowest
weight, stature and, consequently, BMI (p<0.05).
Table 2 shows REE, body composition and PhA
data of the three groups. Ballet dancers had the
lowest FFM and both FM and FM% (p<0.05).
Otherwise, similar PhA values were observed among
the groups.
Resting Energy Expenditure in Elite Female Athletes of Different Sports
145
REE was lower in ballet dancers than in
volleyball players (-14.2%, p=0.001) (Table 2) even
after adjustment for age (-14.5%, p= 0.001) (Table
3). Otherwise, after adjustment for FFM and for both
FFM and age, REE was lower (-7.0% and -7.6%,
respectively) in ballet dancers than volleyball
players but did not achieve statistical significance as
showed in Table 3.
Table 2: Resting energy expenditure, body composition,
bioelectrical impedance phase angle.
Ballet
dancers
(n =10)
Volleyball
Players
(n =15)
Swimmers
(n =15)
REE
(kcal/day)
RQ
FFM (kg)
FM (kg)
FM (%)
PhA (degrees)
1320±139° 1538±124 1451±63
0.81±0.01 0.83±0.60 0.81±0.59
40.4±3.8§ 47.8±3.6 45.6±2.0
7.2±1.6§ 15.0±1.2 13.6±1.2
15.1±2.8§ 23.8±0.9 23.0±1.1
6.95±0.46 6.92±0.38 6.53±0.46
Data are reported as mean±standard deviation; REE=resting
energy expenditure; RQ=respiratory quotient; FFM=fat-free
mass; FM=fat mass; PhA=phase angle.
p<0.05 °=vs volleyball players; §=vs all.
Table 3: Resting energy expenditure adjusted for FFM and
for age.
Ballet
dancers
(n =10)
Volleybal
l Players
(n =15)
Swimmers
(n =15)
REE adj. age
(kcal/day)
1310±64° 1533±48 1465±89
REE adj. FFM
(kcal/day)
1385±44 1489±41 1436±35
REE adj. FFM
and age
(kcal/day)
1362±62 1474±51 1473±81
Data are reported as mean±standard deviation; REE=resting
energy expenditure; adj.=adjusted for.
p<0.05 °=vs volleyball players.
4 DISCUSSION
As primary outcome, this study aimed to evaluate
REE measured with IC in elite female athletes
practicing ballet dance, volleyball and swimming.
Our results showed that measured REE differed
between the three groups. Specifically, it was
significantly lower in ballet dancers than in
volleyball players, probably due to lower weight (-
23.9%) and FFM (-15.5%). The difference in REE
persisted when it was adjusted for age (-14.5%, p=
0.001) and even for FFM (-7.0%) and for both FFM
and age (-7.6%) but in the latter without achieving a
statistical significance.
The reduced REE assessed in ballet dancers
could be due to a different energy intake, the high
performance and because of body image issues (Di
Vincenzo 2020). Another explanation is potentially
related to the start of the physical preparation in pre-
pubertal age because the intense training
significantly modifies body composition
components (Marra 2019). Additionally, considering
that professional ballet dancers have biomechanical
changes and functional performance related to
intense dance training, they developed a metabolic
adaptation at the physical activity, (Yin 2018).
However, it should be noted that these results could
be affected by the low number of participants among
sport groups and by the absence of a control group.
In conclusion our study showed that REE in
sport is mostly influenced by age and body
composition and confirmed that the major
determinant of REE is FFM.
Further valuations are needed to evaluate if REE
could be also influenced by dietary habits and the
age in which athletes start sport activity.
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