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Using multivariate analysis to predict carcass characteristics of lambs in grazing and supplemented with different levels of non-protein nitrogen

Published online by Cambridge University Press:  30 May 2024

Francisca Fernanda da Silva Roberto
Affiliation:
Department of Animal Science, Federal University of Mato Grosso do Sul, Campo Grande, Mato Grosso do Sul, Brazil
Neila Lidiany Ribeiro*
Affiliation:
Department of the National Semi-Arid Institute, Campina Grande, Paraíba, Brazil
Gelson dos Santos Difante
Affiliation:
Department of Animal Science, Federal University of Mato Grosso do Sul, Campo Grande, Mato Grosso do Sul, Brazil
Diego Gomes Freire Guidolin
Affiliation:
Department of Animal Science, Federal University of Mato Grosso do Sul, Campo Grande, Mato Grosso do Sul, Brazil
Luís Carlos Vinhas Ítavo
Affiliation:
Department of Animal Science, Federal University of Mato Grosso do Sul, Campo Grande, Mato Grosso do Sul, Brazil
Camila Celeste Brandão Ferreira Ítavo
Affiliation:
Department of Animal Science, Federal University of Mato Grosso do Sul, Campo Grande, Mato Grosso do Sul, Brazil
Jéssica Gomes Rodrigues
Affiliation:
Department of Animal Science, Federal University of Mato Grosso do Sul, Campo Grande, Mato Grosso do Sul, Brazil
Marislayne de Gusmão Pereira
Affiliation:
Department of Animal Science, Federal University of Mato Grosso do Sul, Campo Grande, Mato Grosso do Sul, Brazil
Roberto Germano Costa
Affiliation:
Department of Animal Science, Federal University of Paraíba, Areia, Paraíba, Brazil
*
Corresponding author: Neila Lidiany Ribeiro; Email: neilalr@hotmail.com
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Abstract

The aim of this study is to assess the effects of substituting soybean meal with extruded urea in the diet of crossbred Texel x no defined racial pattern lambs under continuous grazing on Brachiaria ssp., focusing on both their productive and nutritional performance. 60 Texel crossbred lambs (12 animals for each treatment) were used, with an average initial weight of 20.7 ± 0.87 kg and an average age of 2.5 ± 0.70 months, fed treatments with increasing levels of UE (Urea extruded Amireia® 200S): 0; 6; 12; 18 and 24 grams of EU 100/kg of body weight, with trial period was 5 months, using the multivariate technique. The data were subjected to principal component and canonical discriminant analysis to check possible differences between the evaluated treatments and identify the variables that best discriminate and use these variables to create a discriminant function that represents the differences between treatments. Of the 12 variables initially used, we observed that 9 were used by the main components, but 6 were those that presented the greatest discriminatory power for the study. Main component 1 was characterized by biometric measurements and showed the greatest power of variation in the study (60%), followed by main component 2, represented by slaughter weight and empty body weight (13%). These correlations indicate that biometric measurements can serve as reliable indirect indicators for estimating carcass traits in sheep, offering a practical alternative to visual assessments.

Type
Animal Research Paper
Copyright
Copyright © The Author(s), 2024. Published by Cambridge University Press

Introduction

Over the years, technologies have been developed to increase productivity, reduce production cycles, enhance carcass quality, and strengthen the sheep production chain (Possamai et al., Reference Possamai, Zervoudakis, Hatamoto-Zervoudakis, Freiria, Silva and Melo2017). Among these, protein supplementation stands out as a widely used technique to stimulate the consumption of low-quality forage and improve the nutritional value of diets according to the needs of different animal categories, thereby increasing protein and energy intake (Euclides et al., Reference Euclides, Carpejani, Montagner, Nascimento Junior, Barbosa and Difante2018). However, high-quality protein ingredients such as oilseed meal can escalate diet costs. Therefore, the use of non-protein nitrogen (NPN) presents an option for optimizing ruminant production on pasture while reducing expenses (Xu et al., Reference Xu, Li, Moraes, Shen, Yu and Zhu2019). Ruminants possess the unique ability to convert plant material and NPN into high-biological-value protein, such as meat and milk, for human consumption and other products (Xu et al., Reference Xu, Li, Moraes, Shen, Yu and Zhu2019), thanks to the symbiotic relationship between them and the ruminal microbiome. This results in a significant portion of beef production occurring in cultivated and/or native pastures.

Among the NPN sources currently used in cattle farming (Ítavo et al., Reference Ítavo, Ítavo, Dias, Franco, Pereira, Leal, Araújo and Souza2016; Moraes et al., Reference Moraes, Ítavo, ítavo, Dias, Niwa, Leal, Kozerski, Costa, Mata and Inada2019), extruded urea (Amireia) offers advantages such as slow urea release, reduced ammonia toxicity and improved accetability (Bartley and Deyoe, Reference Bartley and Deyoe1975). The extrusion of components (starch, urea and sulphur) enables better nutrition for the ruminal microbiota, microbial growth, and the synthesis of sulphur-containing amino acids, aiming to mitigate issues related to urea utilization (Ítavo et al., Reference Ítavo, Ítavo, Dias, Franco, Pereira, Leal, Araújo and Souza2016; Carvalho et al., Reference Carvalho, Silva, Silva, Netto, Medeiros, Araujo Filho, Agostini, Oliveira, Mazzetto, Kotzebue, Oliveira and Oliveira2019). However, there is still limited knowledge regarding the use of extruded urea in the nutrition and production of sheep, necessitating further research to elucidate its effects and recommended levels of inclusion in the diet of lambs kept under continuous grazing on Brachiaria ssp. pastures, considering both nutritional and performance aspects.

Carcass evaluation is typically performed considering a large number of characteristics, some of which may be redundant, making interpretation challenging through univariate analyses (Barbosa et al., Reference Barbosa, Lopes, Regazzi, Guimarães and Torres2005). Therefore, multivariate analysis techniques prove efficient when multiple pieces of information stem from an experiment and need to be combined to associate or predict biological phenomena based on a set of variables crucial for experimental design development (Dillon and Goldstein, Reference Dillon and Goldstein1984). Consequently, a more comprehensive data interpretation can be achieved through these techniques, which are better suited for studying a set of correlated variables and their relationships with nutritional, management and genetic factors.

Hence, the objective of this study is to assess the effects of substituting soybean meal with extruded urea (0; 6; 12; 18 and 24 grams of EU 100/kg of body weight) in the diet of crossbred Texel x no defined racial pattern lambs under continuous grazing on Brachiaria ssp., focusing on both their productive and nutritional performance and the carcass. Additionally, this study aims to identify the key variables that influence carcass characteristics through canonical discriminant analysis.

Materials and methods

Ethical considerations and experimental location

The study received approval and was conducted in accordance with the Ethics Committee on Animal Use (CEUA) of the Federal University of Mato Grosso do Sul (UFMS), under protocol number 0862/2017.

The experiment took place at the experimental area of the Sheep Farming Sector within the School Farm of the Federal University of Mato Grosso do Sul – UFMS, situated in the municipality of Terenos – MS (20°26’34.31” S and 54°50’27.86” W), at an altitude of 530.7 metres. The experimental period spanned from December 2018 to April 2019, corresponding to the rainy season in the region, with a cumulative precipitation of 780.9 mm and an average temperature of 25.4°C.

Study area, sample and experimental treatments

The pasture area consisted of a mixed pasture of Brachiaria spp. (Marandu and Basilisk cultivars) covering 2.15 hectares, subdivided into five paddocks of approximately 0.43 hectares each. Continuous stocking was the grazing method adopted, and the grazing areas were equipped with water troughs, feeders, and sheltered areas with free access.

A total of 60 lambs were utilized for the study, with 12 animals assigned to each treatment, ensuring an equal distribution of both sexes (0.50 each). These lambs were crossbred Texel, with an initial average weight of 20.7 ± 0.87 kg and an average age of 2.5 ± 0.70 months. The treatments corresponded to increasing levels of extruded urea (Amireia® 200S): 0; 6; 12; 18; and 24 grams of extruded urea per 100/kg of body weight (BW). The supplements were formulated to contain 0.21 crude protein and to meet the nutritional requirements for a daily average gain of 200 g, following NRC (2007) recommendations (Table 1). The animals were provided with the supplement daily at a fixed rate of 0.016 of their body weight.

Table 1. Percentage of ingredients in experimental diets (%) based on the natural matter and chemical composition of the supplement with extruded urea (Amireia® 200s) at increasing levels replacing soybean meal

*Amireira® 200S; **Composition (per kg of product): Na-1470 g; Ca-1200 g; P-87,0 g; S-18,0 g; Zn- 3800,0 mg; Fe-18000,0 mg; Mn-1300,0 mg; monensin sodium-1300,0 mg; F-8700 mg; Cu-5900 mg; Mo-3000 mg; I-80,0 mg; Co-40,0 mg; Cr-20,0 mg; Se-15,0 mg. BW, body weight; NM, Natural matter; DM, Dry matter; NDF, Neutral detergent fibre.

Animal performance

To assess the evolution of the lambs’ weight and body condition, weighing and evaluations were conducted every 14 days. Weighing took place at 8:00 AM using an analogue scale located in the handling centre. Additionally, biometrics were employed every 28 days, in the animal, to measure the following variables: anterior height (AH), posterior height (PH), leg circumference (LC), chest width (CW), rump width (RW), thoracic perimeter (TP), and barrel perimeter (BP). Measurements were conducted using a height gauge and a measuring tape, following the descriptions by Yañes et al. (Reference Yánez, Resende, Ferreira, Medeiros, Silva Sobrinho, Pereira Filho, Teizeira and Artoni2004).

Anterior height was defined as the distance between the withers region and the distal end of the front limb, while posterior height was defined as the distance between the sacral tuberosity and the distal end of the hind limb. Leg circumference was measured in the middle part of the leg, above the femorotibial-tibiotarsal joint. Chest width was defined as the distance between the lateral sides of the scapulohumeral joints, and rump width was defined as the distance between the greater trochanters of the femurs. Thoracic perimeter was measured at the axillary region, and barrel perimeter was defined as the external circumference of the abdominal cavity at the line of the umbilical scar.

Pre-slaughter management

When the lambs reached an average body weight of 37.3 ± 5.6 kg and an average age of 6.5 ± 0.71 months, pre-slaughter management was initiated. This management involved the measurement of the slaughter weight (SW), which was carried out using a precision digital scale. After the slaughter and dressing procedure, the carcasses were identified and weighed to obtain the hot carcass weight (HCW, kg).

The empty body weight (EBW) was obtained by summing the weight of the carcass and empty non-carcass components. Subsequently, the carcasses were chilled at 2 ± 2°C for 24 h. The calculation of the hot carcass yield (HCY) was performed using the equation HCY = (HCW, kg/SW, kg), and the true yield (TY) was calculated using the equation TY = (HCW, kg/EBW, kg), following Osório and Osório (Reference Osório and Osório2001).

The loin eye area (LEA) was determined using tracing paper and a permanent marker to outline the area of the Longissimus lumborum (LL) muscle. The maximum width (A) and maximum depth (B) were measured with a ruler and used in the formula: LEA = (A/2 * B/2)π, as described by Silva Sobrinho (Reference Silva Sobrinho1999).

Statistical analysis

The results were submitted to analysis of variance, the variables relating to performance and biometrics were evaluated by regression using PROC REG in SAS (2001), and the effect of sex on the variables was compared by Tukey (General Linear Models) and their interaction, both tests had a significance level of 5%, and averages between 0.05% and 0.10% were considered as a trend. Correlation analysis was carried out using PROC CORR in SAS (2001) and the multivariate analyses were carried out using Statistica 8.0 software.

Pearson's simple correlation analysis was adopted. Pearson's correlation coefficient is a technique for measuring whether two variables are linearly related.

The data was subjected to principal component analysis (PCA) with the aim of synthetically describing the number of variables and obtaining the components, which are the underlying dimensions that can be identified and named. The analysis was based on the correlation matrix of the original variables.

To assess potential differences among the evaluated treatments and identify the variables that best discriminate between them, the data underwent canonical discriminant analysis. For this purpose, the mathematical model D(x) = L’.x = [x 1x 2]'S¹.x was employed, where D(x) represents the Fisher's linear discriminant function, L is the estimate of the discriminant vector, x 1 is the sample mean of population p, and x is the sample mean of population p.

The selection of variables with the highest discriminatory power was carried out using the stepwise method, which combines the addition of variables with the greatest discriminatory power and eliminates those with lesser contributions, based on the F-statistic or Wilks’ lambda value. The primary objective of this procedure is to identify the best set of variables to compose the discriminant function.

Results

There was no significant effect (P > 0.05) for body weight at slaughter (BWS), with an average of 37.3 ± 2.37 kg BW, which demonstrates that even replacing true protein with NPN, in form of extruded urea, the animals maintained the weight gains expected for slaughter. Also, no interaction (P > 0.05) was observed between the levels tested and the sexes of the animals for the variables BWS and body condition score at slaughter (BCSS), however a trend effect was observed for BWS, indicating that the level of 24 g/100 kg BW of EU provides lower average BWS, consequently lower BCSS. Males had a higher mean BWS than females, reflecting physiological and hormonal processes corresponding to each sex (Table 2).

Table 2. Performance and biometrics of sheep supplemented with extruded urea at increasing levels in Brachiaria spp. pastures

Means followed by different letters in the line differ from each other using the Tukey test at 5% probability; SEM, standard error of the mean; *orthogonal contrast = Control vs. Extruded urea levels; Body weight at slaughter = BWS; Body condition score slaughter = BCSS. ¹Y = 40,91-0,15x (P = 0,0048; R2 = 0,71); 2Y = 56,86-0,09x (P = 0,0121; R2 = 0,62). BL, body length; LL, leg length; LC, leg circumference; AA, anterior height; PH, posterior height; CW, chest width; RW, rump width; TP, thoracic perimeter and BP, barrel perimeter.

For the biometric variables of the lambs (Table 2), no significant effect was observed for TP between the EU levels tested (P = 0.6400) and sexes (P = 0.0661). There was an interaction (P = 0.0065) between levels and sex for the BL of the animals, where males that received 0 g/100 kg BW of EU of extruded urea had higher means for this measurement. Levels of extruded urea influenced LC (P = 0.0188) and PH (P = 0.0240) responding linearly.

CW (P = 0.0122) and RW (P = 0.0040) changed depending on the level of urea extruded in sheep feed, animals in groups that received 0 g/100 kg BW of EU had the highest measurements and 6 g/100 kg BW of EU the smallest. When comparing biometric measurements between the sexes, it can be observed that for BL (P = 0.0188), AA (P = 0.004) and PH (P = 0.0094) males stood out with the largest measurements.

Table 3 presents the means, standard deviations, minimum and maximum values of the variables related to the weight and body measurements of the evaluated animals.

Table 3. Mean, standard deviation, minimum, and maximum values of key variables in the study

Positive correlations were observed between carcass variables and the biometric measurements of the animals (Table 4). Slaughter weight and HCW showed correlations above 0.50 with anterior height (AH), posterior height (PH), thoracic perimeter (TP) and barrel perimeter (BP). On the other hand, EBW exhibited correlations above 0.50 only with AH, PH and TP. HCY displayed correlations above 0.50 with AH, PH, chest width (CW), TP and BP. The LEA had a low correlation with CW (0.40) and did not show a significant correlation with the other variables.

Table 4. Pearson correlation of carcass variables and biometric measurements of the animals

Significative P < 0.05; LC, leg circumference; AH, anterior height; PH, posterior height; CW, chest width; RW, rump width; TP, thoracic perimeter; BP, barrel perimeter.

The results of the PCA indicated that the biometric measurements (chest width, rump width, thoracic perimeter and barrel perimeter) were responsible for the most significant variation in the study, accounting for 60% of discriminative power (PC1). Slaughter weight and EBW also contributed significantly, representing 13% of the variation (PC2). Together, the two principal components accounted for 73% of the data variation. Out of the initial 12 variables, only 9 were utilized by the principal components, with 6 of them demonstrating greater discriminative power for the study. The variables with the most influence on PC1 were leg circumference, anterior height, posterior height, chest width, rump width, thoracic perimeter, and barrel perimeter. In contrast, PC2 was most influenced by slaughter weight and EBW (Table 5).

Table 5. Factor loadings of principal components (PC)

The equations formed and the discriminative power of each variable for each treatment demonstrate that some variables have an inverse relationship with others. Specifically, EBW, posterior height (PH), chest width (CW), rump width (RW), and barrel perimeter (BP) are inversely related to slaughter weight, leg circumference (LC), and anterior height (AA) (Table 6).

Table 6. Classification of functions for treatments

The groups exhibit similarities, as shown in Table 7. Each group consists of nine animals, but it was observed that only five animals in the group supplemented with 0 g/100 kg BW of UE exhibit similar behaviour, representing 0.55 of the group. The same pattern was observed for the group supplemented with 12 g/100 kg BW of UE, where five animals displayed similarity, with two in the 0 g/100 kg BW group and one in each of the 18 and 24 g/100 kg BW groups. The groups of animals supplemented with 6, 18, and 24 g/100 kg BW of UE had 0.77 of their animals within their respective groups, with seven animals in each of these groups.

Table 7. Classification of the matrix

With these biometric measurements, mathematical equations can be used to predict the values of carcass measurements, such as HCW and HCY, which can be predicted with 52% accuracy using thoracic perimeter. This is an important response because animals do not need to be slaughtered to obtain this information (Table 8).

Table 8. Equations for carcass variables based on biometric measurements

SEM, standard error of the mean; AH, anterior height; TP, thoracic perimeter.

Discussion

The use of extruded urea (Amireia® 200S) as an alternative source of protein ingredients in food supplementation, reference levels and their implications for animal performance and carcass quality, as well as carcass variables with greater discriminating power in beef sheep farming in Brachiaria spp. pastures, is necessary knowledge to maximize production in this livestock sector.

The BWS was similar to other EU levels, which demonstrates that it can be used in the diet of beef sheep in the growth and finishing phases, without compromising the slaughter weight, which is generally 30 to 35 kg, a preferable weight by the consumer market, due to the characteristics of carcass yield, meat quality and organoleptic characteristics. Similar performances were found in studies that evaluated the replacement of conventional urea with extruded urea in the diet of ruminants (Pires et al., Reference Pires, Oliveira Junior, Fernandes, Susin, Santos, Araújo and Goulart2004; Quintão et al., Reference Quintão, Pérez, Salvador, Siqueira and Geraseev2009). Complementary data are found in the article by Roberto et al. (Reference Roberto, Difante, Costa, Ítavo, Ítavo, Gomes, Dias, Rodrigues, Pereira, Ribeiro, Gurgel, Monteiro, Brixner, Véras, Higano, Santana, Costa and Surita2023). The variables BCSS, LC and PH behaved in a linearly decreasing manner, with animals that consumed 24 g/100 kg BW of EU presenting the lowest means for these variables. Therefore, as there is greater energy expenditure in the urea cycle to avoid poisoning due to excess ammonia, there is a reduction in tissue deposition and less weight gain is observed (Mortimer et al., Reference Mortimer, Hatcher, Fogarty, van der Werf, Brown, Swan, Greeff, Refshauge, Edwards and Hocking Gaunt2017). Therefore, as there is a greater energy cost in the urea cycle in order to avoid poisoning due to excess ammonia, there is a reduction in tissue deposition and less weight gain is observed (Mortimer et al., Reference Mortimer, Hatcher, Fogarty, van der Werf, Brown, Swan, Greeff, Refshauge, Edwards and Hocking Gaunt2017).

The EU levels did not compromise the BL of the animals between treatments and sexes, being a good indication, as a greater BL will result in a greater loin length, and when associated with height and weight, these measurements can reveal the conformation of the animal carcass after slaughter (Soares et al., Reference Soares, Souza, Lourenço Junior, Maciel e Silva, Ávila, Kuss, Andrade, Raiol and Colodo2012; Silva et al., Reference Silva, Costa, Medeiros, Gonzaga Neto, César and Cavalcanti2016). The levels of extruded urea did not influence the characteristics, AA, TP and BP, characteristics that indicate the potential of an animal for cutting ability. However, males stood out in the characteristics, AA and TP, which can be explained by sexual dimorphism and hormonal action, generating faster bone growth in males (Souza et al., Reference Souza, Difante, Emerenciano Neto, Lana, Roberto and Ribeiro2019).

Lambs with lower average body weight presented lower mean values for the variables, LC and RW, characteristics that are related to body weight values, since these measurements are directly influenced by the nutritional status of the animals and their stage of development (Souza et al., Reference Souza, Difante, Emerenciano Neto, Lana, Roberto and Ribeiro2019). As the PT increased, an increase in the animal's weight gain capacity could be observed, since the thoracic perimeter is related to a greater respiratory and ingestive capacity of MS, which can make this variable a good indicator for body weight (Silva et al., Reference Silva, Braga, Pontes, Lima Júnior, Costa, Chaves, Amâncio and Braga2015).

The uniformity observed between batches and sexes, according to Souza et al. (Reference Souza, Difante, Emerenciano Neto, Lana, Roberto and Ribeiro2019), for these body development variables that culminate in carcass finishing and finishing rates, they are important, as in addition to demonstrating a positive indication of diet quality, animal gene expression and management quality, it also strengthens the use of biometric measurements as a tool to assist meat sheep production systems, as they are capable of accurately predicting the body weight of animals and the productive capacity of their carcasses through equations.

Regarding the results presented in Table 3, Pereira et al. (Reference Pereira, Oliveira, Santos, Carvalho, Araújo, Souza, Neto and Cartaxo2018), who evaluated slaughter weight in beef sheep supplemented with different NPN sources, observed lower mean slaughter weights within the range of 22.15 kg to 49.50 kg. These results are lower than those reported by Bonin et al. (Reference Bonin, Ítavo, Ítavo, Gomes, Souza, Difante, Arco, Ferelli, Soares, Gurgel and Surita2023), who observed an average slaughter weight of 41.90 kg and 45 kg for groups control and treatment, respectively.

Regarding EBW, the results obtained in this study are similar to those reported by Bonin et al. (Reference Bonin, Ítavo, Ítavo, Gomes, Souza, Difante, Arco, Ferelli, Soares, Gurgel and Surita2023) who also evaluated EBW in sheep supplemented with different NPN sources.

As for HCW, the averages obtained in this study (12.91 kg) align with the results reported by like Pereira et al. (Reference Pereira, Oliveira, Santos, Carvalho, Araújo, Souza, Neto and Cartaxo2018). The HCY, with an average of 34.06% in this study, is lower than the results obtained by Bonin et al. (Reference Bonin, Ítavo, Ítavo, Gomes, Souza, Difante, Arco, Ferelli, Soares, Gurgel and Surita2023) which found comparable values ranging from 50.77% to 51.64% and 44.7% to 45.0%, respectively.

Regarding LEA, Bonin et al. (Reference Bonin, Ítavo, Ítavo, Gomes, Souza, Difante, Arco, Ferelli, Soares, Gurgel and Surita2023) obtained similar results to those in the present study, ranging from 14.1 cm2 to 14.6 cm2. The similarities with previous studies reinforce the consistency of the results found in the present study concerning the evaluated traits in sheep raised on pasture and supplemented with different NPN sources, providing a solid foundation for understanding the effects of these dietary interventions on the production of beef sheep.

Biometric measurements play a significant role in predicting quantitative meat characteristics and are useful in establishing appropriate selection criteria (Tesema et al., Reference Tesema, Tilahun, Zegeye and Yizengaw2019; Macena et al., Reference Macena, Costa, souse, Cartaxo, Arandas, Ribeiro and Ribeiro2024). These measurements can be used as an indirect approach to estimate body weight and carcass characteristics, overcoming many of the issues associated with visual assessment (Macena et al., Reference Macena, Costa, Souza, Cartaxo, Ribeiro, Arandas and Ribeiro2022; Reference Macena, Costa, souse, Cartaxo, Arandas, Ribeiro and Ribeiro2024). In Table 4, Pearson correlation coefficients between biometric measurements and carcass variables indicated significant relationships between measures such as full shoulder length, anterior height, posterior height, neck length, withers width, thoracic perimeter, and mouth perimeter with slaughter weight, EBW, HCW and HCY. These results suggest that biometric measurements can serve as indirect indicators for estimating carcass-related traits in goats and sheep, providing a viable alternative to visual assessment (Abdel-Mageed and Ghanem, Reference Abdel-Mageed and Ghanem2013; Bautista Diaz et al., Reference Bautista-Diaz, Salazar-Cuytun, Chay-Canul, Herrera, Piñeiro-Vázquez, Monforte, Tedeschi, Cruz-Hernández and Gómez-Vázquez2017; Tesema et al., Reference Tesema, Tilahun, Zegeye and Yizengaw2019; Macena et al., Reference Macena, Costa, Souza, Cartaxo, Ribeiro, Arandas and Ribeiro2022; Reference Macena, Costa, souse, Cartaxo, Arandas, Ribeiro and Ribeiro2024). However, LEA did not prove to be a good predictor of these carcass variables (Ricardo et al., Reference Ricardo, Roça, Lambe, Seno, Fuzikawa and Fernandes2016; Bautista Diaz et al., Reference Bautista-Diaz, Salazar-Cuytun, Chay-Canul, Herrera, Piñeiro-Vázquez, Monforte, Tedeschi, Cruz-Hernández and Gómez-Vázquez2017; Macena et al., Reference Macena, Costa, Souza, Cartaxo, Ribeiro, Arandas and Ribeiro2022).

Regarding slaughter weight and EBW, a strong positive loading is observed in CP2 (Table 5). This indicates that these two variables are highly correlated and are important for the observed variation in the data. When considering biometric measurements such as leg circumference, anterior height, posterior height, chest width, rump width, thoracic perimeter and barrel perimeter, it is possible to observe a distribution of positive loadings in both principal components (CP1 and CP2). This suggests that these biometric variables are involved in the overall data variation, contributing to different degrees of influence. The high loadings in CP1 indicate that these biometric measurements are more related to each other than to other variables and may represent general morphological characteristics of the studied sheep. This result is consistent with the analysis of Guedes et al. (Reference Guedes, Ribeiro and Carvalho2018) and Elsaid and Elnahas (Reference Elsaid and Elnahas2017), where a high association between biometric measurements in sheep carcass studies was observed. On the other hand, the high loadings in CP2 indicate a more specific association between biometric measurements and carcass characteristics. These loadings suggest a greater contribution of biometric measurements to the observed variation in slaughter weight and EBW. These results corroborate the findings of Guedes et al. (Reference Guedes, Ribeiro and Carvalho2018) and Elsaid and Elnahas (Reference Elsaid and Elnahas2017), where significant associations were found between biometric measurements and carcass characteristics in sheep.

Regarding slaughter weight and EBW, there is a decreasing trend as urea levels increase (Table 6) where a negative effect of urea treatments on slaughter weight and EBW in sheep was also observed. When considering biometric measurements, different patterns in response to different urea levels can be observed. For instance, leg circumference and rump width tend to decrease as urea levels increase, while anterior height, posterior height and thoracic perimeter show a gradual increase with increasing urea levels.

Observing Table 7, it is possible to notice that the classification matrix reflects the sample distribution regarding the different levels of urea used in the treatments. For example, for the urea level of 0 g/100 kg body weight, the percentage of correctly classified samples was 55.56%, indicating a moderate rate of accuracy in classification. Analysing the individual cells of the classification matrix, variations in results can be observed according to different urea levels. These results show that, in some cases, different urea levels can influence the classification of carcass traits in sheep. However, it is important to note that the classification matrix has some cells with low values, indicating a lower degree of accuracy in classification for certain urea levels. For example, for the urea level of 12 g/100 kg body weight, the cell representing the correct classification of samples with the same urea level had a value of 5, indicating lower precision in classification. These variations in results can be attributed to different factors, such as the complexity of carcass traits in sheep and possible interactions with other factors not considered in this analysis. The results suggest that different levels of urea can influence the classification of carcass traits in sheep, although there are variations in the results across different studies (Alves et al., Reference Alves, Pedreira, Moreira, Freire, Lima and Santos-Cruz2014; Pereira et al., Reference Pereira, Oliveira, Santos, Carvalho, Araújo, Souza, Neto and Cartaxo2018; Bonin et al., Reference Bonin, Ítavo, Ítavo, Gomes, Souza, Difante, Arco, Ferelli, Soares, Gurgel and Surita2023). These variations can be explained by factors such as the complexity of carcass traits and possible interactions with other factors not considered in this analysis.

Equation 1 for slaughter weight (SW) (Table 8) shows a strong positive association with anterior height (AH), indicating that an increase in AH is related to an increase in SW. The same occurs for EBW and AH, as the equation indicates a significant positive association between both traits. Equation 2 for body weight at slaughter (SW) involves both anterior height (AH) and thoracic perimeter (TP). A moderate positive association between SW and AH is observed, as well as a weaker positive association with TP.

The equations for HCW, HCY and LEA reveal a positive association among these characteristics and thoracic perimeter (TP) (Table 8). However, it is important to note that associations may vary depending on the sheep breed, genetic lineage and management conditions.

Conclusions

The study revealed a significant correlation between biometric measurements and carcass variables. These correlations indicate that biometric measurements can serve as reliable indirect indicators for estimating carcass traits in sheep, offering a practical alternative to visual assessments.

Canonical discriminant analysis demonstrated that certain biometric measurements, such as leg circumference, anterior height, posterior height, chest width, rump width, thoracic perimeter and barrel perimeter, played crucial roles in explaining the overall variation in the data. These measurements were more closely related to one another than to other variables, indicating that they collectively represented general morphological characteristics of the studied sheep.

Additionally, the equations derived from the analysis provided valuable tools for predicting lamb carcass traits based on biometric measurements. These equations can be utilized to estimate lamb carcass characteristics without the need for slaughter, which is particularly advantageous for producers seeking non-invasive methods for evaluation.

Acknowledgements

We are grateful to the Federal University of Paraíba and the Federal University of Mato Grosso do Sul, through their Post Graduate Programs in Animal Science. This work was carried out with the support of the Coordination for the Improvement of Higher Education Personnel – Brazil (CAPES) – Financing Code 001, National Council for Scientifc and Technological Development – (CNPq) and the Foundation for the Support of the Development of Teaching, Science and Technology of the State of Mato Grosso do Sul (FUNDECT).

Author contributions

F.F.S.R., G.S.D. and R.G.C. conceived and designed the study. F.F.S.R., N.L.R., D.G.F.G., L.C.V.I., C.C.B.F., J.G.R. and M.G.P. conducted data gathering. F.F.S.R., N.L.R. and G.F.D. performed statistical analyses and prepared graphics. F.F.S.R., G.S.D., R.G.C. and N.L.R. wrote the article. N.L.R. supervised the work.

Funding statement

This work was supported by Coordination for the Improvement of Higher Education Personnel – (CAPES) – Financing Code 001, National Council for Scientific and Technological Development – (CNPq), and the Foundation for the Support of the Development of Teaching, Science and Technology of the State of Mato Grosso do Sul (FUNDECT).

Competing interests

None.

Ethical standards

The study was approved and conducted in accordance with the Ethics Committee on the Use of Animals – CEUA of the Federal University of Mato Grosso do Sul (UFMS), under protocol No. 0862/2017.

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Figure 0

Table 1. Percentage of ingredients in experimental diets (%) based on the natural matter and chemical composition of the supplement with extruded urea (Amireia® 200s) at increasing levels replacing soybean meal

Figure 1

Table 2. Performance and biometrics of sheep supplemented with extruded urea at increasing levels in Brachiaria spp. pastures

Figure 2

Table 3. Mean, standard deviation, minimum, and maximum values of key variables in the study

Figure 3

Table 4. Pearson correlation of carcass variables and biometric measurements of the animals

Figure 4

Table 5. Factor loadings of principal components (PC)

Figure 5

Table 6. Classification of functions for treatments

Figure 6

Table 7. Classification of the matrix

Figure 7

Table 8. Equations for carcass variables based on biometric measurements