Bioscience Journal | 2023 | vol. 39, e39062 | ISSN 1981-3163 1 Rosario SALAZAR-CUYTUN1 , José HERRERA-CAMACHO2 , Ricardo A. GARCÍA-HERRERA2 , Dixam POZO-LEYVA3 , Antonio Leandro Chaves GURGEL4 , Luís Carlos Vinhas ÍTAVO5 , Geraldo Tadeu DOS SANTOS4 , Alfonso J. CHAY-CANUL1 1 Academic Division of Agricultural Sciences, Universidad Juárez Autónoma de Tabasco, Villahermosa, Tabasco , Mexico. 2 Universidad Michoacana de San Nicolás de Hidalgo, Morelia, Michoacán, Mexico. 3 Campus Tecnológico Nacional de Mexico I.T. de la Zona Maya, Quintana Roo, Mexico. 4 Department of Animal Science, Universidade Estadual de Maringá, Maringá, Paraná, Brazil. 5 Faculty of Veterinary Medicine and Animal Science, Universidade Federal do Mato Grosso do Sul, Campo Grande, Mato Grosso do Sul, Brazil. Corresponding author: Antonio Leandro Chaves Gurgel antonioleandro09@gmail.com How to cite: SAZALAR-CUYTUN, R., et al. Relationships between body mass index, ultrasound measurements and, internal body fat depots in pelibuey sheep. Bioscience Journal. 2023, 39, e39062. https://doi.org/10.14393/BJ-v39n0a2023-67626 Abstract The objective of this study was to evaluate the relationship between body mass index (BMI), ultrasound measurements (USM), and internal fat (IF) in hair sheep. The BMI and USM were determined 24 hours before laughter in 35 animals finished in intensive fattening. At slaughter, the IF (inner adipose tissue) was dissected, weighed, and grouped as mesenteric, omental, or perirenal fat; these three depots were summed to obtain their total weight. The relationship of the variables was evaluated through Pearson's correlation coefficient (r) using the CORR procedure and by regression models using the REG procedure of SAS ver. 9.3. The IF and BMI presented r= 0.75 (P <.0001), while the IF and USM presented an r that varied from 0.70 to 0.80 (P <.0001). Among the internal fat deposits, the perirenal was the one that presented minor correlation coefficients with BMI (r = 0.55), subcutaneous fat thickness (0.55), and thoracic Longissimus dorsi area) (r = 0.33), and for this, the last correlation was not significant (P>0.05). The regression equation between IF and BMI had a coefficient of determination (r2) of 0.67 (P <.0001). The inclusion of the subcutaneous fat thickness together with the BMI improved the r2 with a range of 0.77. The BMI and the subcutaneous fat thickness could be used to predict the weight of the internal fat in hair sheep. Keywords: Body mass index. Body fat. Energy reserves. Ultrasound measurements. 1. Introduction The determination of the size and distribution of body energy reserves, mainly fat deposits, is necessary to calculate the nutritional needs of animals (Oliveira et al. 2017; Morales-Martínez et al. 2019). Internal body fat (IF) is positively related to total body energy, which is often used in energy balance experiments and calculations (Chay-Canul et al. 2019; Morales-Martínez et al. 2019). In addition, due to the large amount of energy stored by farm animals in the IF, it is crucial that non-invasive methods that allow the estimation of these fat deposits during different physiological states are developed (Härter et al. 2014; Morales-Martínez et al. 2019). RELATIONSHIPS BETWEEN BODY MASS INDEX, ULTRASOUND MEASUREMENTS AND, INTERNAL BODY FAT DEPOTS IN PELIBUEY SHEEP https://orcid.org/0000-0001-7911-1325 https://orcid.org/0000-0002-0207-3313 https://orcid.org/0000-0003-2456-4727 https://orcid.org/0000-0002-3139-8512 https://orcid.org/0000-0001-5911-369X https://orcid.org/0000-0001-6895-8483 https://orcid.org/0000-0003-3720-5790 https://orcid.org/0000-0003-4412-4972 Bioscience Journal | 2023 | vol. 39, e39062 | https://doi.org/10.14393/BJ-v39n0a2023-67626 2 Relationships between body mass index, ultrasound measurements and, internal body fat depots in pelibuey sheep The body mass index (BMI) is a tool that associates body weight with measures such as body compression and hip height (Vaz et al. 2022), allowing a better understanding of the dynamics of tissue deposition in the empty body of animals. In this sense, the BMI has recently been related to body condition, body energy reserves, and body composition in adult Pelibuey ewes and growing lambs, showing a moderate potential for the estimation of these variables (Chavarría-Aguilar et al. 2016; Salazar- Cuytun et al. 2020a; Salazar-Cuytun et al. 2020b; Salazar-Cuytun et al. 2022). The use of ultrasound measurements (USM) seems to be a viable option (Morales-Martínez et al. 2019) to complement and improve the prediction of internal fat deposits through BMI. Real-time ultrasound images have a high correlation with carcass muscle and fat composition, which is easily measured in the Longissimus lumborum muscle between the 12th and 13th thoracic vertebrae (Gomes et al. 2021). As observed by Morais et al. (2016), the association of in vivo measurement and fasting body weight provides accurate estimates of body fat in feedlot-finished Texel sheep. However, under field conditions, it is not known how BMI, MUS, and FI are related to each other. We hypothesised that combining ultrasonic measurements with BMI could generate accurate models to predict internal fat deposits in sheep. Finally, the objective of the present study determines the relationship between BMI, MUS, and IF depots in Pelibuey sheep. 2. Material and Methods Experimental site and animals The animals included in the present study were managed in compliance with the ethical guidelines and regulations for animal experimentation of División Académica de Ciencias Agropecuarias at Universidad Juárez Autónoma de Tabasco (approval code: UJAT- DACA-2015-IA-02). All methods were performed according to in vivo animal research guidelines: ARRIVE 2.0 (Sert et al. 2020). The experiment was carried out at the Southeastern Centre for Ovine Integration (Centro de Integración Ovina del Sureste [CIOS]; 17° 78" N, 92° 96" W; 10 masl) located at 25 + 3 km of the Villahermosa-Teapa road in the town of Alvarado Santa Irene 2nd Section in the state of Tabasco, Mexico. Twenty-eight male fattening Pelibuey sheep at six months of age with an average (± SD) body weight (BW) of 39.36 ± 5.14 kg and BCS of 3.5 ± 0.5 points were used. The sheep were finished in a raised-slatted floor cage system. The diet consisted of 80% concentrate and 20% forage, with an estimated 15% of crude protein (AFRC 1993). The dietary ingredients were cereal grains (maize or sorghum), soybean meal, tropical grass hay, vitamins, and minerals. Ultrasound measurements The USM were taken 24 h before slaughter. The subcutaneous fat thickness (SFT) and thoracic Longissimus dorsi area (LDMA) were determined using Chison® B-mode real-time ultrasound equipment (Medical Imaging Co., Ltd.; Wuxi, Jiangsu, China) with a 5-MHz linear probe. Previously, the sheep had been shaved between the 12th and 13th thoracic vertebrae and the 3rd and 4th lumbar vertebrae as described by Aguilar-Hernández et al. (2016) and Chay-Canul et al. (2016). Additionally, the maximum length of the Longissimus muscle (A) and the maximum depth of the Longissimus muscle (B) were measured as described by Härter et al. (2014). The LDMA was then calculated using the equation LMA cm 2 = ([A /2 × B/ 2] × π), according to Costa et al. (2012). The sheep were manually immobilised and an acoustic gel was used to create good contact between the probe and the skin of the animals. The pressure over the transducer head was kept to a minimum to avoid compression of the subcutaneous fat (Chay-Canul et al. 2019). All measurements were taken on the right side of the sheep. The USM was recorded for all animals by the same operator, as previously described (Chay-Canul et al. 2019). After the USM, the animals were weighed and body width and height at the cross were measured, considering the anatomical references described by Bautista-Diaz et al. (2020). The BMI was calculated using the formula presented by Tanaka et al. (2012): BMI = (BW (kg)/ height at the cross (m)/ body width (m))/10. Bioscience Journal | 2023 | vol. 39, e39062 | https://doi.org/10.14393/BJ-v39n0a2023-67626 3 SAZALAR-CUYTUN, R., et al. Slaughter of animals and body fat depot measurements Twenty hours before slaughter, feed and water were withdrawn. The animals were slaughtered according to the Mexican Official Standard NOM-033-SAG/ZOO-2014 for the humane slaughter of animals. Data recorded at slaughter included carcass and non-carcass components (viscera). The IF (inner adipose tissue) was dissected, weighed, and grouped as mesenteric (MF), omental (OF), or perirenal fat (PF); these three depots were summed to obtain their total weight (TIF). Data analyses A descriptive statistical analysis was performed using the PROC MEANS procedure in SAS (SAS Inst. Inc., Cary, NC, 2010). In the same software, correlation coefficients among variables were also estimated using the PROC CORR procedure (SAS Ver. 9.3, 2010), and regressions were carried out using the PROC REG procedure (SAS Ver. 9.3, 2010). The STEPWISE and Mallow’s Cp options were used in the SELECTION statement to select the variables included in the model. 3. Results The descriptive statistics of measurements performed, BMI, ultrasound, and IF deposits resulted in means, data amplitude, and variability represented by the standard deviation being obtained (Table 1). Table 1. Descriptive analyses of the data measured in live fattening Pelibuey sheep (n = 35). Variable Description Mean ± SD Maximum Minimum BMI Body mass index (kg/cm2) 12.62 ± 1.63 15.49 8.87 SFT Subcutaneous fat thickness (cm) 0.25 ± 0.07 0.39 0.10 LDMA Thoracic L. dorsi area (cm2) 7.20 ± 1.26 9.73 4.40 MF Mesenteric fat (kg) 0.64 ± 0.24 0.99 0.16 OF Omental fat (kg) 1.21 ± 0.58 2.10 0.12 PF Perirenal fat (kg) 0.74 ± 0.43 1.50 0.03 TIF Total internal fat (kg) 2.61 ± 1.16 4.30 0.30 SD = Standard deviation. Positive correlations were observed between the internal OF deposit with the BMI (r=0.77), SFT (r=0.77), and LDMA (r=0.76) (Table 2). Three equations were obtained to predict the OF (Table 3). The BMI explained 66% of the variation in the OF. However, USM (SFT and LDMA) provided an increase in r2 and a reduction in RMSE (Equation 3). Table 2. Pearson's correlations between BMI, USM, and IF in Pelibuey sheep. SFT LDMA OF MF PF TIF BMI 0.72* 0.71* 0.77* 0.70* 0.55* 0.81* SFT 0.57* 0.77* 0.69* 0.55* 0.81* LDMA 0.76* 0.64* 0.33ns 0.70* BMI: body mass index; OF: omental fat; MF: mesenteric fat; PF: pelvic fat; TIF: total internal fat; SFT: subcutaneous fat thi ckness; (cm); LDMA: Longissimus dorsi muscle area (cm2) *: P<0.05; ns: non-significative. The MF is positively correlated with the BMI (r = 0.70), SFT (r = 0.69) and LDMA (r = 0.64). The BMI was responsible for 49% of the FM variation. The inclusion of the SFT in the second step of the stepwise procedure to estimate the amount of MF provided an increase in the coefficient of determination from 0.49 to 0.56. In addition, the LDMA did not reach a level of significance to be inserted into the equation (Table 3). Among the internal fat deposits, the PF was the one that presented minor correlation coefficients with the BMI (r = 0.55), SFT (0.55), and LDMA (r = 0.33), and for this, the last correlation was not significant (Table 2). For the PF, an equation was generated in which SFT was the only significant measure; it explained 30% of the variation of PF (Table 3). Bioscience Journal | 2023 | vol. 39, e39062 | https://doi.org/10.14393/BJ-v39n0a2023-67626 4 Relationships between body mass index, ultrasound measurements and, internal body fat depots in pelibuey sheep 4. Discussion The measures evaluated in this research were influenced by environmental factors such as race, sexual status, age, and nutritional management (Oliveira et al. 2017; Gurgel et al. 2020; Vaz et al. 2022), which justifies the variability observed in the data from this study. It should be noted that a diversified database is desirable to improve the predictive capacity and comprehensiveness of the generated equations (Menezes et al. 2015; Gomes et al. 2021; Gurgel et al. 2021). Table 3. Regression equations between BMI, USM and IF in Pelibuey. No. Equation r2 MSE RMSE P Omental fat (OF) 1 OF (kg) = -1.71 (±0.46**) + 0.23 (±0.03***) × BMI 0.60 0.09 0.30 <.0001 2 OF (kg) = -1.26 (±0.44*) + 0.13 (±0.04**) × BMI+ 2.97 (±1.05**) × SFT 0.70 0.07 0.26 <.0001 3 OF (kg) = -1.33 (±0.40*) + 0.06 (±0.05**) × BMI+ 2.70 (±0.95**) × SFT+ 0.14 (±0.05**) × LDMA 0.76 0.06 0.24 <.0001 Mesenteric fat (MF) 4 MF (kg) = -0.36 (±0.20*) + 0.08 (±0.01***) × BMI 0.49 0.019 0.14 <.0001 5 (MF kg) = -0.21 (±0.20*) + 0.04 (±0.02*) × BMI+ 1.01 (±0.49*) × SFT 0.56 0.017 0.13 <.0001 Perirenal fat (PF) 6 PF (kg) = 0.19 (±0.19 *) + 2.42 (±0.71***) × SFT 0.30 0.07 0.26 0.0021 Total internal fat (TIF) 7 TIF (kg) = -2.60 (±0.73***) + 0.42 (±0.05***) × BMI 0.67 0.24 0.49 <.0001 8 TIF (kg) = -1.80 (±0.66*) + 0.25 (±0.07***) × BMI + 5.23 (±1.58***) × SFT 0.77 0.17 0.41 <.0001 BMI: body mass index; SFT: subcutaneous fat thickness; (cm); LDMA: Longissimus dorsi muscle area (cm2); P-value: ***P<0.001; ** P<0.01; * P<0.05; MSE: mean square error; RMSE: Root MSE. The BMI has been widely used to estimate the percentage of fat in production animals and helps in the development of nutritional strategies to increase their productive and reproductive rates (Morley and Murray 2014; Urrutia-Morales et al. 2016; Vaz et al. 2022). In sheep, USM are also used to estimate carcass characteristics (Aguilar-Hernández et al. 2016; Chay-Canul et al. 2019) and body fat deposits (Chay-Canul et al. 2016; Morales -Martínez et al. 2019). However, with this study, we propose the association of BMI with USM, aiming at more precise and accurate estimates of internal fat deposits. To the best of our knowledge, the present study is the first to report the use of USM associated with BMI as a tool to predict fat deposits in sheep. Accordingly, Morales-Martínez et al. (2019) observed that about 61% of the variation in OF was explained by BW. In addition, when empty BW was associated with the thickness of renal fat measured by ultrasound, there was an increase of 17% in r2 of the equation. To predict the pelvic fat of Pelibuey sheep, Morales-Martínez et al. (2019) used only the measure of the thickness of renal fat measured via ultrasound, The authors reported weak correlations between the LDMA and PF (R = 0.41). The low correlation between the amount of PF with USM and BMI is partially due to the dynamics of fat deposition in sheep, which follows a sequence: first internal fat, followed by intermuscular, subsequently by subcutaneous and finally intramuscular fat (Pethick et al. 2004; Chay-Canul et al. 2011). Furthermore, the first place where fat reaches maturity is around the kidneys (perirenal), followed by the intermuscular, subcutaneous, and, finally, intramuscular fat (Burin 2016). Therefore, it is possible to have greater PF deposits even in animals with low BMI and with early-stage subcutaneous fat deposits. Thus, measures such as the thickness of renal fat measured by ultrasound, and more, provide more accurate estimates of PF. Similarly, LDMA has not been used to estimate MF in sheep (Morales- Martínez et al., 2019), goats (Härter et al. 2014) or cattle (Ribeiro and Tedeschi 2012). TIF and BMI presented a correlation coefficient of 0.75 (P<.0001), similar to that reported by Chavarría-Aguilar et al. (2016) (r = 0.73); These same authors indicate that this type of study enables the study of BMI and its relationship with body composition and health and reproduction parameters in small ruminants. Here, the IF and the USM presented an r that varied from 0.7 to 0.8 (P<.0001) (Table 2). The regression equation between TIF and BMI had a coefficient of determination of 0.54 (P <.0001). The inclusion of SFT along with BMI improved r2 from 0.56 to 0.74. This indicates that the thickness of the subcutaneous fat and the BMI could explain the variation in the internal fat of Pelibuey sheep. In past studies, the use of USM has been reported as an accurate and non-invasive method to monitor different Bioscience Journal | 2023 | vol. 39, e39062 | https://doi.org/10.14393/BJ-v39n0a2023-67626 5 SAZALAR-CUYTUN, R., et al. fat deposits (Ribeiro and Tedeschi 2012; Härter et al. 2014; Raschka et al. 2016; Morales-Martínez et al. 2019). However, in the present study, the SFT was used as the only predictor of inaccurate TIF. This confirms our hypothesis that the combination of USM with BMI could generate accurate models to predict internal fat deposits in sheep. 5. Conclusions The BMI and USM presented a good relationship with the IF. The BMI and the thickness of subcutaneous fat in the thoracic region could be used to predict the weight of the internal fat in hair sheep. Authors' Contributions: SAZALAR-CUYTUN, R.: conception and design, acquisition of data, analysis and interpretation of data, and drafting the article; HERRERA-CAMACHO, J.: acquisition of data, analysis and interpretation of data, and drafting the article; GARCÍA -HERRERA, R.A.: analysis and interpretation of data and drafting the article; POZO-LEYVA, D.: analysis and interpretation of data and drafting the article; GURGEL, A.L. C.: analysis and interpretation of data and drafting the article; TAVO, L.C.V.: drafting the article; BARRETO, L .M.G.: drafting the article; SANTOS, G.T: conception and design, acquisition of data, analysis and interpretation of data, and drafting the article; CHAY-CANUL, A.J.: conception and design, acquisition of data, analysis and interpretation of data, and drafting the article. All authors have r ead and approved the final version of the manuscript. Conflicts of Interest: The authors declare no conflicts of interest. 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Tropical Animal Health and Production. 2022, 54(3), 168. https://doi.org/10.1007/s11250-022-03108-8 Received: 25 November 2022 | Accepted: 3 January 2023 | Published: 31 March 2023 This is an Open Access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. http://dx.doi.org/10.1071/AN14282 https://doi.org/10.1590/S1519-99402015000400011 https://doi.org/10.5433/1679-0359.2016v37n2p1081 https://doi.org/10.1016/j.smallrumres.2019.106031 https://doi.org/10.1016/j.jevs.2014.04.001 https://doi.org/10.5433/1679-0359.2017v38n1p391 https://doi.org/10.1071/EA02165 https://doi.org/10.2527/jas2015-0103 https://doi.org/10.2527/jas.2011-4697 https://doi.org/10.19136/era.a7n2.2474 https://doi.org/10.19136/era.a7n2.2515 https://doi.org/10.22358/jafs/150005/2022 https://doi.org/10.1371/journal.pbio.3000410 https://doi.org/10.1016/s0378-4320(02)00091-x https://doi.org/10.1016/j.smallrumres.2016.02.016 https://doi.org/10.1007/s11250-022-03108-8