- 1Facultad de Agronomia, Centro Universitario Regional Litoral Norte, Universidad de la Republica, Paysandu, Uruguay
- 2Faculdade de Ciencias Agrarias e Veterinarias, Programa de Pos-graduacão em Genetica e Melhoramento Animal, Universidade Estadual Paulista (UNESP), Jaboticabal, Brazil
- 3Department of Agricultural, Food and Nutritional Science, University of Alberta, Edmonton, AB, Canada
- 4Conselho Nacional de Desenvolvimento Científico e Tecnológico (CNPq), Brasília, Brazil
- 5Embrapa Gado de Leite, Rua Eugênio do Nascimento, Juiz de Fora, Brazil
- 6Faculdade de Ciencias Agrarias e Veterinarias Departamento de Zootecnia, Universidade Estadual Paulista (UNESP), Universidade Estadual Paulista, Jaboticabal, Brazil
Introduction: Dairy cattle with poor temperament can cause several inconveniences during milking, leading to labor difficulties, increasing the risk of accidents with animals and workers, and compromising milk yield and quality. This study aimed to estimate variance components and genetic parameters for milking temperament and its genetic correlations with milk yield in crossbred Holstein-Gyr cattle.
Methods: Data were collected at three commercial farms, resulting in 5,904 records from 1,212 primiparous and multiparous lactating cows. Milking temperament (MT), measured as the milking temperament of each cow, was assessed during pre-milking udder preparation (RP) and when fitting the milking cluster (RF) by ascribing scores from 1 (cow stands quietly) to 8 (the cow is very agitated, with vigorous movements and frequent kicking). The number of steps and kicks were also recorded during pre-milking udder preparation (SRP and KRP, respectively) and when fitting the milking cluster (SRF and KRF, respectively). Milk yield (MY) was obtained from each farm database. In two of them, MY was recorded during the monthly milk control (that could or could not coincide with the date when the milking temperament assessments were carried out) and in the remaining farm, MY was recorded on the same day that the milking temperament assessments were made. Genetic parameters were estimated using the THRGibbs1f90 program applying a threshold model, which included 89 contemporary groups as fixed effects, animal age at the assessment day and the number of days in milking as covariates, and direct additive genetic and residual effects as random effects.
Results and discussions: The heritability estimates were MT= 0.14 ± 0.03 (for both, MRP and MRF), MY= 0.11 ± 0.08, SRP= 0.05 ± 0.03, KRP= 0.14 ± 0.05, SRF= 0.10 ± 0.05, and KRF= 0.32 ± 0.16. The repeatability estimates were 0.38 ± 0.05, 0.42 ± 0.02, and 0.84 ± 0.006 for MTRP, MTRF, and MY, respectively; and 0.38 ± 0.02, 0.30 ± 0.07, 0.52 ± 0.02, and 0.46 ± 0.15 for SRP, KRP, SRF, and KRF, respectively. The estimates of most genetic correlation coefficients between MTRP-MTRF were all strong and positive (MTRR-MTRF= 0.63 ± 0.10, MTRP-SRP= 0.65 ± 0.12, MTRP-KRP= 0.56 ± 0.16, MTRF-SRF= 0.77 ± 0.06, and MTRF-KRF= 0.56 ± 0.34) except for MY (MTRP-MY= 0.26 ± 0.26 and MTRF-MY= 0.21 ± 0.23). Despite the low magnitude of MT heritability, it can be included as a selection trait in the breeding program of Holsteins-Gyr cattle, although its genetic progress will be seen only in the long term. Due to the low accuracy of the genetic correlation estimates between MT and MY and the high range of the 95% posterior density interval, it cannot be affirmed by this study that the selection of a milking temperament trait will infer on milk yield. More data is therefore needed per cow and more cows need to be observed and measured to increase the reliability of the estimation of these correlations to be able to accurately interpret the results.
1 Introduction
Individual variability has been observed in the behavior of dairy cattle in response to a stressor or environmental challenges, leading to considerable impacts on performance, reproduction, health, and animal welfare (Sutherland et al., 2012; Haskell et al., 2014; Friedrich et al., 2015; Hedlund and Løvlie, 2015; Marçal-Pedroza et al., 2021). Previous studies have suggested that calmer cows during milking facilitate handling procedures and have higher production rates and milking speed (Wickhman, 1979; Lawstuen et al., 1988; Cue et al., 1996; Samoré et al., 2010; Sewalem et al., 2011; Hedlund and Løvlie, 2015) in comparison to nervous cows. Breuer et al. (2000), working with Holstein cows, reported that special attention is required for animals showing a higher level of body and leg movements and kicks during milking, which inevitably leads to difficulties and increased labor time when carrying out the handling procedures. These variables have been used to characterize the level of stress during milking, and, consequently, are expected to accompany the inhibition of milk ejection and decreased milk yield (Breuer et al., 2000; Haskell et al., 2014). More recently, Marçal-Pedroza et al. (2021) reported that dairy cows’ temperament is also related to metabolic efficiency and enteric CH4 emissions, directly affecting the sustainability of this system.
As reviewed by Haskell et al. (2014) and Chang et al. (2020), milking temperament is low to moderately heritable and genetically correlated with milk production, workability, health, and reproductive traits. Low heritability estimates (0.07) for the milking temperament of Holstein cows were reported by Pryce et al. (2000) and Hiendleder et al. (2003) when applying a score from 1 (defined by the authors as “nervous/aggressive”) to 9 (“quiet/docile”). Sewalem et al. (2011), working with records of 1,940,092 Holstein cows and applying a score ranging from 1 (“very nervous”) to 5 (“very calm”), reported a heritability of 0.13. Similarly, Cue et al. (1996) reported heritability of 0.14 and 0.17 for the milking temperament of Holstein and Jersey cows, respectively, and a higher estimate (0.33) for Ayrshire cows. These authors used a scoring system that ranged from 1 (“vicious”) to 9 (“placid”). With a similar scoring system, ranging from 1 (“acceptable”) to 5 (“undesirable”), Visscher and Goddard (1995) estimated a heritability of 0.22 for Holstein (14,596 records) and 0.25 for Jersey (4,695 records) cows.
It is important to highlight that most of the estimations of variance and covariance components and genetic parameters for milking temperament have been carried out assessing Bos taurus cattle breeds, such as Holstein cows (Visscher and Goddard, 1995; Cue et al., 1996; Pryce et al., 2000; Hiendleder et al., 2003; Sewalem et al., 2011; Pires et al., 2013; Stephansen et al., 2018). Indeed, little has been done for Bos indicus breeds, such as Girolando or Gyr cows, regardless of the importance of using local breeds to improve profitability while reducing health and welfare issues. Thus, it is important to develop additional studies addressing Bos indicus breeds and their crosses.
The introduction of the milking temperament trait as a selection index in dairy production is a tool to select calmer animals and in the long term achieve a genetic change in the herd for this characteristic (Haskell et al., 2014; Chang et al., 2020). If we focus on genetic-environment interaction, the Bos indicus breeds are more adapted to tropical conditions, but their temperament is a concern for dairy producers since the cows are usually more reactive to the milking procedures and present a higher fear of human approach and less productivity (Fordyce et al., 1982; Paranhos da Costa et al., 2015). Crossing Bos indicus with Bos taurus animals is one strategy to address this problem, and in Brazil, the greater part (80%) of milk production is provided by crossing Holstein (Bos Taurus) and Gyr cattle (Bos indicus) (Ferreira et al., 2002; Madalena et al., 2012). To the best of our knowledge, there is no information available in the literature regarding the estimation of the genetic parameters for milking temperament for Girolando cattle. For this reason, the present study contributes a novel approach for Brazilian dairy producers and other dairy systems that use Bos taurus and Bos indicus crossbreed cattle. Thus, this study aimed to estimate the genetic and phenotypic parameters of milking temperament, as well as its genetic correlation with milk yield in crossbred Holstein-Gyr (HG) cattle raised in Brazil.
2 Materials and methods
The Committee of the Ethical Use of Animals of the Faculty of Agricultural and Veterinary Sciences, São Paulo State University (UNESP), Jaboticabal, SP, Brazil, approved this study (Protocol n. 005215/18).
2.1 Animals and housing conditions
The study was conducted at three commercial dairy farms associated with the Girolando Breeders Association (GIROLANDO) from April 2018 to May 2019, resulting in 5,904 records from 1,212 lactating Holstein-Gyr cows, daughters of 155 sires and 663 dams. The Girolando Breeders Association provided the pedigree data containing 19,531 sires and 349,222 dams.
On two farms (Farms 1 and 2), the cows were housed in a free stall housing environment, and on the remaining farm (Farm 3), they were kept in pastures. The cows were milked twice daily (in the mornings and afternoons). In Farms 2 and 3, they were milked in herringbone parlors with automatic cluster removal systems, while in Farm 1, they were milked in a rotary/carrousel parlor. On all farms, the cows are separated from the calves following calving before 24 hours and integrated within the milking herds. The replacement of animals in the dairy herd is from the calves themselves born on the farms.
All dairy cows evaluated in the present study were born between 2009 and 2017. Most of them were ¾ Holstein-Gyr (632, ~52%), followed by F1 Holstein-Gyr (513, ~42%), and only 67 (~6%) represented other Holstein-Gyr crosses. Around sixty-six per cent (803) cows were primiparous and 409 (~34%) were multiparous. Of the primiparous cows, 452 (~56%) were 3/4 Holstein-Gyr, 314 (~39%) were 1/2 Holstein-Gyr and 37 (~5%) were other Holstein-Gyr crosses; of the multiparous cows, 196 (~48%) were 1/2 Holstein-Gyr, 176 (~43%) were 3/4 Holstein-Gyr, and 37 (~9%) were other Holstein-Gyr crosses.
Cow birth seasons were classified as rainy (September to February) and dry (March to August). The average age at first calving was 32 ± 14 months (ranging from 21.8 to 61.3 months). Lactation days were calculated as the number of days in lactation that the cow was at the time of the milking temperament measurement, ranging from 9 to 305 days, with 408 cows at the beginning of lactation (9 to 100 days), 595 at the middle of lactation (100 to 200 days) and 209 cows at the end of lactation (200 to 305 days), with an average milk yield of 20.5 ± 6.3 L/day (ranging from 3.0 to 59.4 L/day).
After pre-milking udder preparation and before the commencement of the milking process, 298 (~25%) cows received an application of exogenous oxytocin and 914 (~75%) did not. Of the cows that received an injection of exogenous oxytocin, 159 (~53%) were primiparous and 139 (~47%) were multiparous; of those cows that did not receive an application of exogenous oxytocin, 644 (~70%) were primiparous and 270 (~30%) were multiparous.
2.2 Milking temperament assessment
From each farm, phenotypic data of milking temperament was collected as milking temperament scores during three consecutive days for three consecutive months, totaling nine measuring events for each cow during the first milking of the day. However, not all animals were available to be recorded nine times for reasons out of our control, such as health issues or other treatment, resulting in an unequal number of available measurements per cow. Of the total data collected, most animals (300 cows, ~25%) were evaluated only three times, 188 cows (~16%) had six measurement events, and 85 cows (~7%) had nine measurement events. Detailed information about this is shown in Table 1.
Table 1 The number of cows and respective percentages according to the number of records of milking temperament measurement events.
Milking temperament was scored during pre-milking udder preparation (MTRP) and when fitting the milking cluster (MTRF) by assigning one of the scores described in Table 2. The number of steps and kicks were also recorded during pre-milking udder preparation (SRP and KRP, respectively) and when fitting the milking cluster (SRF and KRF, respectively).
Table 2 Description of the milking temperament scores used to assess Holstein-Gyr cows’ milking temperament during pre-milking udder preparation and when fitting the milking cluster.
Milk yield (MY) was obtained from the farms’ database. In two of them, MYs were recorded during the monthly milk recording records (that could or could not coincide with the days on which the milking temperament assessments were carried out), and in the remaining farm, MYs were recorded on the same days that milking temperament assessments were made. These differences concerning the recording of MY may have contributed to errors in the genetic correlation estimates of MY with MTRP and MTRF.
2.3 Statistical analyses
In total, 89 contemporary groups (CG) were categorized by farm, year and season of cows’ birth, and genetic group (including mainly 3/4 Holstein-Gyr, 1/2 Holstein-Gyr cows, and other groups, including 1/4, 3/8, and 5/8 Holstein-Gyr cows). The THRGIBBS1F90 software (Misztal et al., 2015) was used to estimate the (co)variance components and genetic parameters by implementing a Bayesian inference using the Gibbs sampling algorithm. A multi-trait analysis was performed to estimate the variance components, heritability, and repeatability of milking temperament scores, and the number of steps and kicks during pre-milking preparation (MTRP, SRP and KRP, respectively) and when fitting the milking clusters (MTRF, SRF and KRF, respectively). Genetic and phenotypic correlations of MY with MTRP and MTRF were also estimated. Since MTRP and MTRF were categorical variables, the Bayesian threshold was the most appropriate method for conducting genetic analyses, which assumes that the number of levels is related to an underlying continuous scale containing fixed and random effects (Van Tassell et al., 1998). For MTRP data, scores from 1 to 7 were considered (score 8 was eliminated due to only having a few recorded instances, which were therefore included in score 7), while for MTRF data, all scores were considered (from 1 to 8). The number of steps and kicks during pre-milking udder preparation (SRP and KRP) and when fitting the milking cluster (SRF and KRF) and MY were considered continuous variables.
The animal model used included direct additive genetic and residual effects as random effects and CG as a fixed effect; the animal age at the time of milking temperament scoring (with linear and quadratic regressions), and the number of days in milk (linear regression) were included as covariates for all traits. The matrix presentation of the general model used is as as follows:
where: y is the vector of observations; β is the vector of fixed effects; a is the vector of the direct additive genetic effect of the animal; pe is the vector related to permanent environment random effects of the animal (each daily milking temperament measurement considered as repeated measurements on the cow); X, Z, and W are known incidence matrices relating β, a, and pe to y; and e is the vector of residuals.
It was assumed that E[y] = Xβ; Var(a) = A⊗G; Var(pe)= I⊗PE; Var(e) = I⊗R, where A is the relationship matrix among all animals in the pedigree file containing 19,531 sires and 349,222 dams, ⊗ is the direct product, G is the (co)variance matrix of direct additive genetic effects, PE is the (co)variance matrix of permanent environmental effects, I is the identity matrix, and R is the (co)variance matrix of residual effects.
The vectors β, a, and pe are location parameters from the conditional distribution. A uniform distribution of β was assumed a priori, which reflects a vague prior knowledge about this vector. For the (co)variance matrices of random effects, inverted Wishart distributions were defined as prior distributions. Thus, the distribution of y given the parameters of location and scale was assumed (Van Tassell and Van Vleck, 1996):
For analysis, chains of 1,200,000 iterations were generated, with samplings every 20 cycles. The first 300,000 iterations were discarded as fixed burn-in. Thus, 45,000 samples were used for parameter estimations.
Data convergence was checked through the criteria proposed by Geweke (1992) and Heidelberger and Welch (1983) using the R software, with the Bayesian Output Analysis (BOA) package in R 4.1.0 software (The R Development Core Team).
After obtaining the correctly converged variances, heritability (h2) and repeatability (R) for milking temperament, the number of steps (SRP, SRF) and kicks (KRP, KRF), and phenotypic (rP1P2) and genetic (rA1A2) correlations between milking temperament and milk yield during pre-milking udder preparation and when fitting the milking cluster were estimated as:
where: σ2a is additive genetic variance; σ2pe is permanent environmental variance (due to repeated measurements of milking temperament records per cow); σ2 is residual variance; Co(P1, P2) is phenotype co(variance) between two traits; Cov(A1, A2) is genetic co(variance) between two traits; σP1 and σP2 are phenotypes standard deviation of traits 1 and 2; and σA1 and σA2 are genetic standard deviations of traits 1 and 2.
3 Results and discussion
For all the phenotypic data collected, cows presented higher temperament scores during pre-milking udder preparation (MTRP: 4.33 ± 1.43) compared to when fitting the milking cluster (MTRF: 2.74 ± 1.47), with mode values of 5 and 1, respectively. In the same way, during udder preparation, there was a higher number of steps (SRP: 5.08 ± 3.69, ranging from 0 to 38) and kicks (KRP: 0.11 ± 0.63, ranging from 0 to 16) when compared to when fitting the milking cluster (SRF: 1.61 ± 2.05, ranging from 0 to 42, and KRF: 0.01 ± 0.23, ranging from 0 to 10). The high SD and CV (%) in the number of kicks during pre-milking udder preparation (KRP), and number of steps and kicks when fitting the milking cluster (SRF and KRF, respectively) indicate important individual differences in the way that cows react to these handling procedures (Table 3).
Table 3 Means, standard deviations (SD), mode, minimum (Min), and maximum (Max) values of the coefficients of variation (CV, %) for milking temperament, and number of steps and kicks during pre-milking udder preparation (MTRP, SRP, and KRP, respectively), and milking temperament, and the number of steps and kicks when fitting the milking cluster (MTRF, SRF, and KRF, respectively) and milk yield (MY) in the dataset of Holstein-Gyr cross cattle.
According to the convergence criteria applied in this study for all trait analyses, the number of remaining Markov chains (45,000) was adequate for obtaining the convergence of all parameters estimated. Table 4 shows the posterior means of additive genetic, permanent environment, and residual variances, and heritability and repeatability obtained for milking temperament-related traits and milk yield.
Table 4 Descriptive statistics of posterior density (95% highest posterior density intervals, HPD) of variance components, heritability (h2) and repeatability (R) estimates for milking temperament, number of steps and kicks, and milk yield of Holstein-Gyr cross cattle.
The posterior means of heritability for milking temperament during pre-milking udder preparation (MTRP) and when fitting the milking cluster (MTRF) were 0.14 ± 0.03. These results are in line with the values reported in the literature, which are like those estimated by Wickhman (1979); Lawstuen et al. (1988); Cue et al. (1996), and Sewalem et al. (2011) for Holstein cows (h2 ranging from 0.11 to 0.14). However, the heritability estimated in the present study was lower than that found by O’Bleness et al. (1960); Dickson et al. (1970), and Visscher and Goddard (1995) for Holstein cows (0.40, 0.47, and 0.22, respectively). The estimated mean heritability for the number of steps (0.05 ± 0.03) and kicks (0.14 ± 0.05) was estimated during pre-milking udder preparation, and the estimations for the number of steps and kicks when fitting the milking clusters were 0.10 ± 0.05 and 0.32 ± 0.16, respectively. It should be noted that the only literature currently available for discussion regarding the estimation of genetic parameters for milking temperament is based entirely on Bos taurus dairy cattle herds, while in this study results from Bos taurus x Bos indicus dairy crosses are presented.
The MY heritability in our study was of lower magnitude (0.11 ± 0.08) than that obtained in other studies with Holstein, Gyr, and Brown Swiss breeds (0.20, 0.22, and 0.24; Rennó et al., 2003; Lagrotta et al., 2010; Campos et al., 2015, respectively), as well as than the estimate reported by the national breeding program for Girolando cattle (h2MY = 0.29) (da Silva et al., 2020).
The repeatability estimates of this study were moderate for milking temperament and the number of steps and kicks during pre-milking udder preparation and when fitting the milking cluster, ranging from 0.30 to 0.52 (Table 5). Similar results were reported by Erf et al. (1992); Kramer et al. (2013), and Wethal and Heringstad (2019). These authors estimated values ranging from 0.32 to 0.56 in Holstein, Brown Swiss, and Norwegian Red cattle herds, respectively.
A strong, positive, and favorable genetic correlation (0.63 ± 0.10) was observed between MTRP and MTRF (Table 5). In the same way, genetic correlations between MTRP-SRP (0.65 ± 0.12), MTRP-KRP (0.56 ± 0.16), MRRF-SRF (0.77 ± 0.06), and MTRF-KRF (0.56 ± 0.34) were also high and positive. Thus, only one of these traits can be used to assess a Holstein-Gyr cow’s temperament during milking to implement a breeding program that includes milking temperament-related traits. It can be inferred in this study that the most reactive cows measured through milking temperament scores showed a greater expression of steps and kicks, and, in the inverse, cows with a lower milking temperament score expressed fewer steps and kicks. It is advisable to implement the counting of the number of steps during the different moments in the milking process; it is easy to measure and does not need any score for its measurement. These results confirm what was suggested by Breuer et al. (2000) when it was recommended that the number of steps and kicks should be counted as an alternative to measuring milking temperament in dairy herds.
Table 5 Posterior estimates of genetic (above diagonal) and phenotypic (below diagonal) correlations (mean ± standard deviation) and the highest posterior density interval containing 95% of the observations (inside brackets) between milking temperament, number of steps and kicks, and milk yield traits of Holstein-Gyr cross cattle.
The phenotypic and genetic correlation estimates between milking temperament, number of steps and kicks, and milk yield cannot allow the orientation and degree of the phenotypic and genetic correlations to be inferred, since the estimated value of the standard deviations and the highest posterior density interval containing 95% have a very high range, including the zero; therefore, the values of the correlations estimated can be negative, zero, or positive. Consequently, it cannot be affirmed by this study that the selection of a milking temperament trait will infer on milk yield. More data is therefore needed per cow, and more cows need to be measured to increase the reliability of the estimation of these correlations to be able to accurately interpret the results.
4 Conclusions
Although the heritability estimated for milking temperament and the number of steps and kicks during pre-milking udder preparation and when fitting the milking cluster reached low magnitude, there is a possibility that if the selection is made through this trait, long-term genetic progress can be seen. Thus, the estimations of heritability and repeatability for milking temperament justify the inclusion of this trait as a selection criteria trait for the Holstein-Gyr cross in Brazil.
This study confirms that milking temperament during pre-milking udder preparation has a positive and high genetic correlation with milking temperament when fitting the milking cluster. Furthermore, a positive genetic correlation also exists between milking temperament and counting the steps and kicks during pre-milking udder preparation and when fitting the milking cluster. Animals with high milking temperaments are known to express more steps and kicks during the milking process making handling difficult. Counting steps during milking is an appropriate measurement for including milking temperament in selection indexes for the Holstein-Gyr cross, because it is easy and inexpensive to measure, and it can be used to assess milking temperament objectively.
More records are needed to estimate the genetic and phenotypic correlations between milking temperament and milk yield more accurately since they could not be affirmed in this study due to the high standard errors of the estimates, as well as the high range of the 95% posterior density interval.
Data availability statement
The original contributions presented in the study are included in the article/supplementary materials. Further inquiries can be directed to the corresponding author/s.
Ethics statement
The animal study was reviewed and approved by Committee of the Ethical Use of Animals of the Faculty of Agricultural and Veterinary Sciences, São Paulo State University (UNESP), Jaboticabal, SP, Brazil (Protocol n. 005215/18). Written informed consent was obtained from the owners for the participation of their animals in this study.
Author contributions
MdC and TV contributed to the conception and design of the study. PB organized the database, performed the statistical analysis, and wrote the first draft of the manuscript. TV and MdS performed the statistical analysis. MC organized the database All authors contributed to the article and approved the submitted version.
Funding
This study was financed in part by the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - Brasil (CAPES) - Finance Code 001, which had no role in the study design, data collection and analysis, the decision to publish, or preparation of the manuscript.
Acknowledgments
The study was part of the doctoral thesis of the first author (Paula A. Batista Taborda), prepared for the Graduate Program in Genetics and Animal Breeding at São Paulo State University (UNESP), Faculty of Agricultural and Veterinary Sciences, Jaboticabal, SP, Brazil. Special appreciation is expressed to the owners or managers of the farms Santa Luzia (Mauricio Silveira Coelho), Calciolândia (Jordane Silva and Ronaldo Lazzarini Santiago), and Boa Fé (Jônadan Ma) and their staff for their support and making it possible to carry out this research.
Conflict of interest
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Publisher’s note
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Keywords: dairy cattle, genetic correlation, Girolando, heritability, reactivity, workability
Citation: Batista Taborda PA, Valente TS, de Lima Carvalhal MV, da Silva MVGB and Paranhos da Costa MJR (2023) Estimation of genetic parameters for milking temperament in Holstein-Gyr cows. Front. Anim. Sci. 4:1187273. doi: 10.3389/fanim.2023.1187273
Received: 15 March 2023; Accepted: 13 June 2023;
Published: 28 July 2023.
Edited by:
Francisco Javier Navas González, University of Cordoba, SpainReviewed by:
Bernice Mostert, Independent researcher, Bloemfontein, South AfricaLudmila Zavadilová, Institute of Animal Science, Czechia
Copyright © 2023 Batista Taborda, Valente, de Lima Carvalhal, da Silva and Paranhos da Costa. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
*Correspondence: Paula A. Batista Taborda, pabt2508@gmail.com