Evaluation of a Nutrition Model in Predicting Performance of Vietnamese Cattle

Article information

Asian-Australas J Anim Sci. 2012;25(9):1237-1247
1Faculty of Animal Sciences, Hue University of Agriculture and Forestry, Hue City, Vietnam.
2Department of Animal Science, Texas A&M University, College Station, TX 77843-2471, USA.
*Corresponding Author: David Parsons. Tel: +61-3-6226-2610, Fax: +61-3-6226-2642, E-mail: dparsons@utas.edu.au
Tasmanian Institute of Agriculture and School of Agricultural Science, University of Tasmania, Sandy Bay 7001, Australia
Received 2012 January 17; Accepted 2012 May 03; Revised 2012 June 18.

Abstract

The objective of this study was to evaluate the predictions of dry matter intake (DM) and average daily gain (ADG) of Vietnamese Yellow (Vang) purebred and crossbred (Vang with Red Sindhi or Brahman) bulls fed under Vietnamese conditions using two levels of solution (1 and 2) of the large ruminant nutrition system (LRNS) model. Animal information and feed chemical characterization were obtained from five studies. The initial mean body weight (BW) of the animals was 186, with standard deviation ±33.2 kg. Animals were fed ad libitum commonly available feedstuffs, including cassava powder, corn grain, Napier grass, rice straw and bran, and minerals and vitamins, for 50 to 80 d. Adequacy of the predictions was assessed with the Model Evaluation System using the root of mean square error of prediction (RMSEP), accuracy (Cb), coefficient of determination (r2), and mean bias (MB). When all treatment means were used, both levels of solution predicted DMI similarly with low precision (r2 of 0.389 and 0.45 for level 1 and 2, respectively) and medium accuracy (Cb of 0.827 and 0.859, respectively). The LRNS clearly over-predicted the intake of one study. When this study was removed from the comparison, the precision and accuracy considerably increased for the level 1 solution. Metabolisable protein was limiting ADG for more than 68% of the treatment averages. Both levels differed regarding precision and accuracy. While level 1 solution had the least MB compared with level 2 (0.058 and 0.159 kg/d, respectively), the precision was greater for level 2 than level 1 (0.89 and 0.70, respectively). The accuracy (Cb) was similar between level 1 and level 2 (p = 0.8997; 0.977 and 0.871, respectively). The RMSEP indicated that both levels were on average under- or over-predicted by about 190 g/d, suggesting that even though the accuracy (Cb) was greater for level 1 compared to level 2, both levels are likely to wrongly predict ADG by the same amount. Our analyses indicated that the level 1 solution can predict DMI reasonably well for this type of animal, but it was not entirely clear if animals consumed at their voluntary intake and/or if the roughness of the diet decreased DMI. A deficit of ruminally-undegradable protein and/or a lack of microbial protein may have limited the performance of these animals. Based on these evaluations, the LRNS level 1 solution may be an alternative to predict animal performance when, under specific circumstances, the fractional degradation rates of the carbohydrate and protein fractions are not known.

INTRODUCTION

Proper ration formulation is required to ensure satisfactory animal performance (e.g. meat, milk, egg production), to adequately plan for long-term financial stability, and competitiveness in the agriculture market. Therefore, decision support systems (DSS) that allow for ration formulation and evaluation are needed (Tedeschi et al., 2005b). Furthermore, adequate testing of the DSS is necessary to verify that the tool will work satisfactorily under the desired production conditions (Tedeschi, 2006).

Cattle production in Vietnam has increased significantly during the last decade, with annual cattle population growth of around 6.3% (General Statistics Office, 2010). Cattle are mainly kept by smallholder farmers with herd sizes of 3 to 4 animals. The dominant feeding system is grazing of native grass on common land (uncultivated land or harvested crop fields with native grasses), often supplemented with crop by-products and cut-and-carry sown or native grasses (Ba et al., 2008c; Von et al., 2009). Recently, with increasing demand for beef, some farmers are finishing their beef cattle for several months before selling. With this system, beef cattle are fed concentrate supplements in addition to a basal diet of forages and crop by-products. A series of experiments and on-farm testing of supplementary feeding strategies for cattle finishing in Vietnam (Ba et al., 2008a, b; Van et al., 2008) indicated there is potential to improve growth rates of local beef cattle and efficiency of feed utilisation by formulating concentrate mixes, implementing more consistent feeding practices, and feeding greater amounts of supplement. An economic analysis of these strategies revealed increased profit for farmers, compared with their traditional practices.

Feed resource planning for ruminant livestock production involves: knowing how much and what type of feeds are likely to be available; having information on their nutritive characteristics; understanding the animal’s nutrient requirements for particular purposes; and using this information to design feeding strategies (Doyle et al., 2008). Although feed planning principles are commonly applied in temperate agriculture (e.g. to design diets for confinement production systems, to set carrying capacity, or to decide on calving times in grazing systems), such principles are poorly understood and not currently applied in Vietnam or numerous other countries in South East Asia. In addition, seasonal climate variation and its effect on feed availability is a big challenge for farmers interested in designing effective cattle feeding strategies. For these reasons, there is a need for DSS to help researchers, extension personnel, and farmers to make successful feed management decisions. Such a DSS needs to be based on a well functioning nutrition model that can adequately predict intake and growth of yellow cattle offered typical available feeds.

Therefore, the objective of this paper was to evaluate the ability of a mechanistic nutrition model to predict the dry matter intake (DMI) and average daily gain (ADG) of Vietnamese Yellow (Vang) cattle fed under specific Vietnamese conditions.

MATERIALS AND METHODS

Database description and calculations

A database was built based on the information from five studies in which adequate feed and animal characterizations were available. A summary of the studies used in our evaluation is shown in Table 1. Feed and concentrate mix samples of these studies were analysed by a commercial laboratory (Cumberland Valley Analytical Services, Hagerstown, MD) for dry matter (DM; AOAC, 2000; method 930.15), ash (AOAC, 2000; method 942.05), crude protein (CP; AOAC, 2000; method 990.03), lignin (sa) determined by solubilisation of cellulose with sulphuric acid, neutral detergent fibre (aNDF; Van Soest et al., 1991), acid-detergent insoluble protein (ADIP; Licitra et al., 1996) and neutral-detergent insoluble protein (NDIP; Licitra et al., 1996), and ether extract (EE; AOAC, 2006; method 2003.05). The characterization for commonly-fed feeds is detailed in Table 2. The large ruminant nutrition system (LRNS) version 1.0.17 (http://nutritionmodels.tamu.edu/lrns.htm) was used to predict animal intake and performance. The LRNS is based on the Cornell Net Carbohydrate and Protein System (CNCPS) version 5.0.40 (Fox et al., 2004). The fractional degradation rates (kd) and other feed characterization needed for the level 2 solution of the LRNS were obtained from similar feeds available in the feed library of the LRNS as documented by Tedeschi et al. (2002). Table 3 lists the animal parameters used to simulate the studies.

Summary of studies used for evaluating the large ruminant nutrition system for Vietnamese Yellow (Vang) purebred and crossbred cattle fed under Vietnamese conditions

Feed quality values for selected samples from the five studies used to evaluate the large ruminant nutrition system model

Input variables and their values used to simulate five studies used to evaluate the large ruminant nutrition system (LRNS) model

The energy and protein requirements for ADG are computed based on the composition of the body of the animals. The LRNS uses a scaling factor as described by Tylutki et al. (1994) to compute the net energy (NE) for growth. However, to perform this body weight (BW) scaling and to compute the equivalent BW, the body composition (i.e. fat) of the target cattle at a given BW is needed. One of the earliest and most comprehensive reports on fat distribution in bovine carcass of different BW ranges was reported by Johnson et al. (1972). They concluded that there was the need for precise definition of fat distribution patterns in breeds and types of cattle in order that carcasses of optimum composition could be produced. Later, Berg et al. (1978a, b) found that although partitioning differences occurred among different biological types, fat deposition followed a common pattern among genetic types of cattle and, at equal amounts of total carcass fat, differences in fat distribution are minor. This concept is supported by the studies of Jones et al. (1980) and Belk et al. (1991). More recently, other studies (McPhee et al., 2008; Wang et al., 2009; Fernandes et al., 2010) have indicated the generally reported ratio of 1 kg of subcutaneous fat to 1.6 kg of intermuscular fat and a deposit of 720 to 760 g/kg of body fat in the carcass of beef cattle equates to about 50 g/kg of physically separated fat at approximately 230 kg live BW. Using the equation proposed by Guiroy et al. (2001) and adding 45 kg to account for extended periods at slow rates of gain (National Research Council, 2000), the adjusted final shrunk BW calculated was 532 kg for the Vietnamese Yellow (Vang) cattle with 220 g/kg of empty body fat.

Level 1 and level 2 solutions of the LRNS model were used to predict DMI and the metabolisable energy (ME) and protein (MP) allowable gain. The first limiting factor (either ME or MP allowable gain) was used in our evaluations. As discussed by Tedeschi et al. (2005a) the level 1 of the LRNS uses a summative empirical equation (Conrad et al., 1984; Weiss et al., 1992; Weiss, 1993) to compute total digestible nutrients (TDN), ME supply, and NE for maintenance (NEm) and growth (NEg), and MP supply is estimated using the level 1 equation recommended by the NRC (2000). The level 2 of the LRNS uses feed carbohydrate and protein fractions and their predicted gastro-intestinal tract digestion (rumen and intestinal digestions) to estimate TDN and subsequently dietary ME and NEm and NEg. The MP supply is computed using the protein fractions and their digestibility. Ruminal digestion is computed using the fractional rate of degradation and passage (kp) for each fraction of each feed. The prediction of DMI was based on the empirical equation developed by the NRC (2000).

Study description

Study 1 (Ba et al., 2010a) evaluated the levels of dietary CP on animal performance and digestibility. The study was conducted on 24 intact male Vietnamese Yellow (Vang) cattle, 17 months old, and 150±11.8 kg of initial BW in a randomized complete block design with 4 treatments and 6 blocks. Treatments were 101; 132; 169 and 202 g/kg CP in the concentrate, respectively for 91; 107; 126 and 143 g/kg CP in the diets. Concentrate composed of rice bran, maize, cassava powder, fish meal, urea, salt, and vitamin-mineral premix. Animals were offered a daily concentrate allowance of 15 g/kg of BW and 5 kg Bermuda grass (Cynodon dactylon L. Pers.) during the day and rice straw was provided ad libitum during the night. The experiment lasted for 74 d during which time the DMI was measured daily.

Study 2 (Ba et al., 2010b) involved different levels of a concentrate fed to Vang cattle for 60 d. The 4 treatments were defined by concentrate offered as a percentage of BW (10, 14, 18, and 22 g/kg). Six animals were used per treatment. Twenty four intact male cattle, 16 months old and averaging 145±9.8 kg of initial BW, were used in a randomized complete block design with 6 blocks. The concentrate (CP 157 g/kg) was a mixture of rice bran, maize, cassava powder, fish meal, urea, salt, and vitamin-mineral premix. Similar to study 1, rice straw was fed ad libitum at night and Bermuda grass was restricted at 5 kg/d.

Study 3 (Ba et al., 2008a) was similar to study 2; fifteen intact male cattle, 16 months old and averaging 142±15.7 kg of initial BW were divided into 5 treatments (3 animals per treatment) based on five levels of a concentrate mix (0, 3.3, 6.6, 13.2, and 19.8 g/kg of BW as DMI). Cattle were fed Bermuda grass at 12.5 g/kg of BW during the day and rice straw ad libitum at night. The concentrate mix contained 174 g/kg CP. The study lasted for 49 d.

In study 4 as described by Ba et al. (2008b), the effects of different levels of cassava powder containing 20 g/kg urea on the performance of Vang×Red Sindhi crossbred cattle (Laisind) were investigated for 88 days. Five treatments (0, 3.3, 6.6, 13.2, and 19.8 g/kg of BW as DMI of a concentrate mix) plus ad libitum rice straw at night and 12.5 g/kg of BW of DMI of Napier grass were used. Twenty intact male Laisind cattle, 16 months old and with an average initial BW of 164±19.1 kg were assigned to the five treatments (4 animals per treatment).

Study 5 (Van et al., 2012) was conducted with sixteen intact Vang×Brahman crossbred (Laibrahman) males, 22 months old with an average initial BW of 224±32.3 kg. Animals were assigned into 4 treatment groups in a completely randomized design, conducted for 84 d. Animals were fed Napier grass (Pennisetum purpureum Shumach.) ad libitum, and offered different concentrate mixtures at 15 g/kg BW according to the treatment. Concentrate ingredients for treatment 1 were rice bran 490 g/kg, corn powder 300 g/kg, cassava powder 200 g/kg, and salt 10 g/kg; treatment 2 was comprised of rice bran 200 g/kg, corn powder 485 g/kg, cassava powder 200 g/kg, fish meal 100 g/kg, salt 50 g/kg, and urea 10 g/kg; treatment 3 was comprised of rice bran 200 g/kg, corn powder 390 g/kg, cassava powder 200 g/kg, and fish meal 210 g/kg. Cattle in treatment 4 were fed an industry concentrate (Lai Thieu Company, Vietnam) which consisted of corn, rice bran, peanut cake, cassava, fish meal, shell powder, methionine, lysine, minerals, vitamins, and enzymes. The crude protein in the concentrate of treatment 1 was 94 g/kg, while in the other concentrates it was about 155 g/kg.

Model evaluation

The Model Evaluation System (MES; Tedeschi, 2006; http://nutritionmodels.tamu.edu/mes.htm) was used to test for LRNS adequacy as discussed by Tedeschi (2006) in which model-predicted and observed treatment mean values were analysed for accuracy and precision using several statistics. These statistics included the mean square error of prediction (MSEP) and its components, the root of MSEP (RMSEP), concordance correlation coefficient (CCC), accuracy (Cb), coefficient of determination (r2) of the linear regression between observed and model-predicted values, and mean bias (MB). Briefly, the CCC is the multiplication of the correlation coefficient between observed and predicted values by the Cb, which is computed based on the standard deviation and mean of observed and predicted values as shown in Equation (1) (Tedeschi, 2006). The CCC, r, and Cb statistics vary from 0 to 1.

CCC=r×CbCb=2×(s1s2+s2s1+(x¯1x¯2s1×s2)2)1 (1)

Where CCC is concordance correlation coefficient; r is the correlation coefficient between observed and predicted values; Cb is the bias correction (accuracy); s1 and s2 are the standard deviation for observed and predicted values, respectively; and x1 and x2 are the mean for observed and predicted values, respectively.

The MSEP also assess the accuracy of the model predictability and it is calculated as the average of the squared differences between observed and predicted values whereas the MB is the difference between the means of the observed and predicted values. Predictions with level 1 and 2 were also compared using the delta Akaike’s information criterion (ΔAIC), which is the difference between 2 AIC statistics. The ΔAIC is used to identify which model is more likely to be correct through a probability calculation (Tedeschi, 2006).

RESULTS

Table 4 contains the descriptive and adequacy statistics comparing observed and model-predicted DMI and ADG using levels 1 and 2 of the Large Ruminant Nutrition System.

Descriptive and adequacy statistics of observed (Obs) versus first-limiting model-predicted average daily gain (ADG, kg/d) and observed versus model-predicted dry matter intake (DMI, kg/d) using level 1 (L1) or level 2 (L2) solutions of the large ruminant nutrition system

Dry matter intake

Figure 1 depicts the observed versus model-predicted DMI for levels of solution 1 and 2. As presented in Table 4, when all treatment means were used, both levels of solution predicted DMI similarly with low precision (r2 of 0.39 and 0.45 for level 1 and 2, respectively) and medium accuracy (Cb of 0.83 and 0.86, respectively). The errors of the MSEP were fairly evenly divided among MB, systematic bias, and random errors, with no clear pattern. On average, the level 1 and 2 solutions overpredicted DMI by 0.49 and 0.37 kg/d. Figure 1 shows that animals in study 5 consumed less than predicted, decreasing the adequacy of the LRNS. When this study, which had larger cattle, was removed from the comparison (Table 4), the precision and accuracy drastically increased for the level 1 solution. Even though the level 2 solution improved slightly, it was inferior to the level 1 solution. For either solution, the MSEP decreased by more than half when study 5 was removed. Zhao et al. (2008) reported a greater precision (r2 = 0.82) for DMI prediction by the CNCPS model than our study for a similar type of animal. Similarly, Du et al. (2010) indicated the CNCPS model can accurately predict DMI of crossbred bulls under a traditional confined feeding system in China.

Figure 1

Relationships between observed and model-predicted dry matter intake (DM) using level 1 (A) or level 2 (B) solutions of the Large Ruminant Nutrition System. Symbols are studies 1 (⋄), 2 (■), 3 (A), 4 (+), and 5 (✳). Solid line is the Y = X and the dotted line is the linear regression.

Average daily gain

Using the level 1 solution, 16 out of 22 ADG predictions were limited by MP rather than ME. For level 2 prediction, 15 out of 22 ADG predictions were limited by MP. These results suggest that for more than 68% of the treatment averages, MP was limiting ADG. Figure 2 shows that for studies 1, 2, and 3, average RNB was consistently positive between level 1 and 2 solutions; whereas for study 5 RNB was slightly negative for both solutions. The RNB for study 4 was positive for the level 1 solution, but negative for the level 2 solution, likely due to the fast fractional degradation rate of cassava.

Figure 2

Model-predicted ruminal nitrogen balance using level 1 (dotted bars) or level 2 (hashed bars) solutions of the Large Ruminant Nutrition System for each study, averaged across treatments.

Figure 3 depicts the relationship between observed and the first-limiting model-predicted ADG. The first-limiting factor is the least between model-predicted ME- and MP-allowable ADG using level 1 and level 2 solutions. Both levels differed regarding precision and accuracy. While level 1 solution had a lower MB than level 2 (0.058 and 0.16 kg/d, respectively), the precision was greater for level 2 than level 1 (0.86 and 0.70, respectively) (Table 1). The accuracy (Cb) was similar between level 1 and level 2 (p = 0.8997; 0.98 and 0.87, respectively). The AIC was less for level 2 than level 1 (−92.2 and −75.7, respectively), indicating that level 2 is more than 3,800 times more likely to minimize information loss, and therefore have better goodness of fit than level 1 (likelihood probability of 99.7%). Most of the errors in level 1 were associated with random errors (71%) whereas for level 2 they are associated with MB (67%) (Table 4). This suggests that the predictions of level 2 could be adjusted to remove the observed MB. In fact, level 2 MB was 24.8% greater than the average observed ADG. The linear regression shown in Figure 3B indicated that the slope did not differ from unity (p = 0.821) whereas the slope in Figure 3A is different from unity (p = 0.0278). This is in agreement with the composition of the MSEP (Table 4) in which systematic bias account for only 0.085% of the total MSEP for the level 2 solution.

Figure 3

Relationships between observed and first-limiting model-predicted average daily gain (ADG) using level 1 (A) or level 2 (B) solutions of the Large Ruminant Nutrition System. Symbols are studies 1 (⋄), 2 (■), 3 (A), 4 (+), and 5 (✳). Solid line is the Y = X and the dotted line is the linear regression.

Even though level 1 had approximately 3 times less MB (Table 4), the RMSEP indicated that both levels were on average under- or over-predicted by about 190 g/d (RMSEP of 191 and 193 kg/d for level 1 and 2, respectively), suggesting that even though the accuracy (Cb) was greater for level 1 compared to level 2, both levels are likely to wrongly predict ADG by the same amount because the RMSEP were identical.

DISCUSSION

Dry matter intake

Our analyses indicated that the level 1 solution over-predicted DMI with low to moderate precision (r2 between 0.39 and 0.63) for this type of animal and selection of feeds. In the LRNS, DMI for growing cattle is predicted based on metabolic shrunk BW (SBW) and diet NEm content (Fox et al., 2004). The discrepancy between observed and model-predicted DMI for study 5 was likely due to the heavier BW of the animals. Despite their greater BW, their DMI was comparable to the DMI of animals from the other studies (Figure 1). In addition, animals from study 5 received more than 650 g/kg (DM basis) of their intake as concentrate. There are several factors that might have caused this discrepancy in the DMI prediction. In studies 1, 2, 3 and 4, the animals in each treatment were fed some concentrates and had ad libitum access to fresh grass and rice straw. On the other hand, all animals in study 5 regardless of treatment group, were fed the same level (1.5% body weight) of different kinds of concentrates and elephant grass ad libitum. Digestibility trials showed that the total ration in study 5 was of much higher quality than the other experiments. The theoretical expectation was that there would have been a much higher rate of nutrient passage from the abomasum and less retention time in the rumen, thus making the animals want to consume more of the feed - higher dry matter intake. However, the DMI was lower than predicted in study 5 animals contrary to expectation. The major reason for this observation lies in the high levels and energy density of the concentrates which led to a high turn-over rate and synthesis of volatile fatty acids that quickly met the satiety requirements of the animals. That way, by consuming a little of the feed, the animals were satisfied, hence the observed lower dry matter intake than predicted. This is in agreement with the observations of Vu Duy Giang et al. (2008) in Vietnamese cattle when they were fed excess concentrates and their rumen produced excess volatile fatty acids resulting in decreased palatability and feed intake.

All diets had physically effective NDF (peNDF) between 300 and 750 g/kg of NDF. The LRNS does not limit DMI based on peNDF even though it is known that particle size impacts the particle flow out of the rumen (Offer and Dixon, 2000) likely due to an increase of the time for rumination and comminution of particles, affecting the retention time, the pattern of passage (Vieira et al., 2008a, b), and consequently the intake. For high-producing dairy cows, DMI is positively related with the ratio of non-fibre carbohydrate to NDF (Zebeli et al., 2006) because of the rumen physical fill effect. A dietary peNDF above 190 to 220 g/kg NDF (Mertens, 1997; Zebeli et al., 2006) is also important to maintain the ruminal pH above 6.0 in high-producing dairy cows. Information for growing animals is scarcer than for dairy cattle, but the ruminal dynamics would be similar in the sense that larger particle size would require a longer time to escape the rumen and reduce the fill effect on voluntary intake.

Another factor that affects DMI for this type of animal is the adequate supply of ammonia-N and amino-N (i.e. a positive ruminal N balance, RNB) because it would be essential to enhance fibre fermentation and microbial growth in the rumen (Tedeschi et al., 2000). Figure 2 suggests that RNB might have been negative for study 5, which could explain the lower observed DMI compared to model expected DMI.

Even though the predictions of DMI were similar for most studies, the DMI prediction should be used as an indication only, as DMI can vary tremendously depending on environment, animal, and diet characteristics.

Average daily gain

Despite the disagreement relating to the RNB of study 4, on average across the studies these treatments had a positive RNB, but MP limited their growth. Therefore, a deficit of ruminally-undegradable protein (RUP) and/or a lack of microbial protein may have limited the performance of these animals. Even though most of these animals were not fed starch-rich diets, adding some source of starch and an adequate level of non-protein N might increase the microbial yield in the rumen (Harmon, 2009) and therefore increase the amount of microbial protein escaping the rumen. Another solution may be the addition of RUP.

There has been some indication the theoretical equation proposed by Weiss et al. (1992) may underpredict the TDN value of tropical feeds (Detmann et al., 2008). In fact, when we used the empirical equations devised by Detmann et al. (2008) for growing and finishing cattle, the ADG using the first limiting between ME and MP was 0.66 kg/d compared to the original prediction of 0.58 kg/d for level 1. Even though the mean bias decreased from 0.058 to −0.018 kg/d, precision (r2 = 0.69) and CCC (0.829) were almost identical.

Because the precision was greater for level 2 than level 1 and because we can adjust the predictions for a known MB, level 2 should be used to predict ADG of Vietnamese Yellow cattle under the feeding conditions examined in this paper, but an adjustment would have to be made. Conversely, the use of level 1 using the equations suggested by Detman et al. (2008) could also provide some insights of the animal performance without the need to use level 2. These findings are in agreement with those reported by Tedeschi et al. (2005a). In their evaluations, when MP was first limiting, the level 2 also had a greater precision than level 1 and the RMSEP was about 110 g/d for confined animals. Others have also reported acceptable predictions by the CNCPS model under confinement conditions in China (Du et al., 2010). Similarly, Zhao et al. (2008) concluded the CNCPS model was able to satisfactorily predict ADG of Chinese beef breeds with an overall MB of 0.08 (under-prediction) and RMSEP of 0.08 kg/d.

There are a number of potential reasons why ADG was on average under-predicted by the LRNS model when level 2 was used. From the supply side, Vieira et al. (1997) suggested that compartmental models, such as those discussed by Ellis et al. (1994) and Vieira et al. (2008a, b), may have a better fit for degradation of Pennisetum purpureum Schum. in the rumen using in situ technique. These compartmental models usually increase the mean retention time of particulate matter in the rumen compared to the exponential model used by the LRNS to obtain the kd. Therefore, it is possible the kd of tropical feeds may be slower than used in our simulations. If a slower kd is used, it is possible the amount of energy from the feed would increase. Concurrently, from the requirement side, energy required for maintenance might have been overestimated for these animals or they could have a greater efficiency of use of ME for maintenance likely due to compensatory growth (Tedeschi et al., 2010). Even though physical activity can account for as much as 20% (Tedeschi et al., 2004) of maintenance energy expenditure, it seems these animals have minimal requirements for physical activity.

CONCLUSIONS

Under specific circumstances when the kd of the carbohydrate and protein fractions needed by level 2 of the LRNS are not known, the LRNS level 1 solution may be an alternative to predict animal performance. However, given the results of our evaluation in which the kd were assumed to be those listed in the feed library (Tedeschi et al., 2002), the LRNS level 2 predictions of ADG were satisfactory and better than those of level 1. Even though our analyses indicated the LRNS might be able to predict ADG when DMI is known, few studies under Vietnamese conditions that had enough information to perform the simulations we used. Therefore, a more comprehensive evaluation is suggested.

ACKNOWLEDGEMENTS

We would like to thank the staff and students who were involved in the feeding trials used for this study. This study was funded by the Australian Centre for International Agricultural Research (ACIAR), and the feeding trials used for the analyses were funded by ACIAR and the Norwegian Programme for Development, Research and Education (NUFU).

References

AOAC. 2000. Official methods of analysis of AOAC International 17th ednth ed. Association of Official Analytical Chemists. Arlington, VA:
AOAC. 2006. Official methods of analysis of AOAC International 18th ednth ed. Association of Official Analytical Chemists. Arlington, VA:
Ba NX, Van NH, Ngoan LD, Leddin CM, Doyle PT. 2008a;Effects of amount of concentrate supplement on forage intake, diet digestibility and live weight gain in Yellow cattle in Vietnam. Asian-Aust. J Anim Sci 21:1736–1744.
Ba NX, Van NH, Ngoan LD, Leddin CM, Doyle PT. 2008b;Amount of cassava powder fed as supplement affects feed intake and live weight gain in Laisind cattle in Vietnam. Asian-Aust. J Anim Sci 21:1143–1150.
Ba NX, Dung DV, Van NH, Phung LD, Ngoan LD, Cuong VC. 2010a;Effects of crude protein levels in concentrate on meat yield and quality of Vietnamese Yellow cattle. Journal of Animal Husbandry Sciences and Technics 11:22–27.
Ba NX, Dung DV, Van NH, Phung LD, Ngoan LD, Cuong VC. 2010b;Effects of amount of concentrate supplement on live weight gain and meat quality of Vietnamese Yellow cattle. Journal of Science and Technology 27:37–44.
Ba NX, Van NH, Phung LD, Phuoc LV, Dung DV, Nguyen NH, Tuan BQ. 2008c;Effects of some factors on the use of agricultural by-products for ruminants in Quang Ngai province. Hue University Journal of Science 46:17–25.
Belk KE, Tatum JD, Williams FL Jr. 1991;Deposition and distribution of carcass fat for steers differing in frame size and muscle thickness. J Anim Sci 69:609–616.
Berg RT, Andersen BB, Liboriussen T. 1978a;Growth of bovine tissues 1. Genetic influences on growth patterns of muscle, fat and bone in young bulls. Anim Sci 26:245–258.
Berg RT, Andersen BB, Liboriussen T. 1978b;Growth of bovine tissues 3. Genetic influences on patterns of fat growth and distribution in young bulls. Anim Sci 27:63–69.
Conrad HR, Weiss WP, Odwongo WO, Shockey WL. 1984;Estimating net energy lactation from components of cell solubles and cell walls. J Dairy Sci 67:427–436.
Detmann E, Valadares Filho SC, Pina DS, Henriques LT, Paulino MF, Magalhães KA, Silva PA, Chizzotti ML. 2008;Prediction of the energy value of cattle diets based on the chemical composition of the feeds under tropical conditions. Anim Feed Sci Technol 143:127–147.
Doyle PT, Stockdale CR, Ba NX, Van NH, Ngoan LD. 2008;Understanding interactions between forages and concentrates is important for formulating feeding strategies for growing cattle in central. Vietnam Aust J Exp Agric 48:821–824.
Du J, Liang Y, Xin H, Xue F, Zhao J, Ren L, Meng Q. 2010;Evaluation of dry matter intake and average daily gain predicted by the Cornell Net Cabohydrate and Protein System in crossbred growing bulls kept in a traditionally confined feeding system in China. Asian-Aust J Anim Sci 23:1445–1454.
Ellis WC, Matis JH, Hill TM, Murphy MR. 1994. Methodology for estimating digestion and passage kinetics of forages. Forage quality, evaluation, and utilization In : Fahey GC Jr, Collins M, Mertens DR, Moser LE, eds. American Society of Agronomy. Madison, WI: p. 682–756.
Fernandes HJ, Tedeschi LO, Paulino MF, Paiva LM. 2010;Determination of carcass and body fat compositions of grazing crossbred bulls using body measurements. J Anim Sci 88:1442–1453.
Fox DG, Tedeschi LO, Tylutki TP, Russell JB, Van Amburgh ME, Chase LE, Pell AN, Overton TR. 2004;The Cornell Net Carbohydrate and Protein System model for evaluating herd nutrition and nutrient excretion. Anim Feed Sci Technol 112:29–78.
General Statistics Office. 2010. Statistical yearbook of Vietnam 2009 Statistical Publishing House. Hanoi, Vietnam:
Guiroy PJ, Fox DG, Tedeschi LO, Baker MJ, Cravey MD. 2001;Predicting individual feed requirements of cattle fed in groups. J Anim Sci 79:1983–1995.
Harmon DL. 2009;Understanding starch utilization in the small intestine of cattle. Asian-Aust J Anim Sci 22:915–922.
Johnson H, Butterfield R, Pryor W. 1972;Studies of fat distribution in the bovine carcass: 1. The partition of fatty tissues between depots. Aust J Agric Res 23:381–388.
Jones SDM, Price MA, Berg RT. 1980;Fattening patterns in cattle: 2. Fat distribution among the wholesale cuts. Can J Anim Sci 60:851–856.
Licitra G, Hernandez TM, Van Soest PJ. 1996;Standardization of procedures for nitrogen fractionation of ruminant feeds. Anim Feed Sci Technol 57:347–358.
McPhee MJ, Oltjen JW, Fadel JG, Perry D, Sainz RD. 2008;Development and evaluation of empirical equations to interconvert between twelfth-rib fat and kidney, pelvic, and heart fat respective fat weights and to predict initial conditions of fat deposition models for beef cattle. J Anim Sci 86:1984–1995.
Mertens DR. 1997;Creating a system for meeting the fiber requirements of dairy cows. J Dairy Sci 80:1463–1481.
National Research Council. 2000. Nutrient requirements of beef cattle 7th ednth ed. National Academy Press. Washington, DC, USA:
Offer NW, Dixon J. 2000;Factors affecting outflow rate from the reticulo-rumen. Nutrition Abstracts and Reviews. Series B: Livestock Feeds and Feeding 70:833–844.
Tedeschi LO. 2006;Assessment of the adequacy of mathematical models. Agric Syst 89:225–247.
Tedeschi LO, Fox DG, Russell JB. 2000;Accounting for the effects of a ruminal nitrogen deficiency within the structure of the Cornell net carbohydrate and protein system. J Anim Sci 78:1648–1658.
Tedeschi LO, Fox DG, Guiroy PJ. 2004;A decision support system to improve individual cattle management. 1. A mechanistic, dynamic model for animal growth. Agric Syst 79:171–204.
Tedeschi LO, Fox DG, Doane PH. 2005a;Evaluation of the tabular feed energy and protein undegradability values of the National Research Council nutrient requirements of beef cattle. Prof Anim Scient 21:403–415.
Tedeschi LO, Fox DG, Carstens GE, Ferrell CL. 2010. The partial efficiency of use of metabolizable energy to net energy for growth in ruminants 3rd International Symposium on Energy and Protein Metabolism and Nutrition. In : Crovetto GM, ed. Wageningen Academic Publishers; p. 519–529.
Tedeschi LO, Fox DG, Pell AN, Lanna DPD, Boin C. 2002;Development and evaluation of a tropical feed library for the Cornell Net Carbohydrate and Protein System model. Scientia Agricola 59:1–18.
Tedeschi LO, Fox DG, Sainz RD, Barioni LG, Medeiros SR, Boin C. 2005b;Using mathematical models in ruminant nutrition. Scientia Agricola 62:76–91.
Tylutki TP, Fox DG, Anrique RG. 1994;Predicting net energy and protein requirements for growth of implanted and nonimplanted heifers and steers and nonimplanted bulls varying in body size. J Anim Sci 72:1806–1813.
Van NH, Nguyen NH, Ba NX. 2012;Study on utilization of high protein concentrates for Brahman crossed beef during fattening period. Hue University Journal of Science 71:319–332.
Van NH, Ba NX, Ngoan LD, Doyle PT. 2008. On-farm testing of supplementary feeding strategies for cattle finishing in Vietnam In : Proceedings of the XIII AAAP Animal Science Congress. Animal Husbandry Association of Vietnam (AHAV); p. 70.
Van Soest PJ, Robertson JB, Lewis BA. 1991;Methods for dietary fiber, neutral detergent fiber, and nonstarch polysaccharides in relation to animal nutrition. J Dairy Sci 74:3583–3597.
Vieira RAM, Tedeschi LO, Cannas A. 2008a;A generalized compartmental model to estimate the fibre mass in the ruminoreticulum: 1. Estimating parameters of digestion. J Theor Biol 255:345–356.
Vieira RAM, Tedeschi LO, Cannas A. 2008b;A generalized compartmental model to estimate the fibre mass in the ruminoreticulum: 2. Integrating digestion and passage. J Theor Biol 255:357–368.
Von NT, Van NH, Ba NX, Ai TN, Huong DT. 2009;The results of an investigation of current situation of cattle production in Quang Tri province. Journal of Agriculture and Rural Development 3:72–75.
Wang YH, Bower NI, Reverter A, Tan SH, De Jager N, Wang R, McWilliam SM, Cafe LM, Greenwood PL, Lehnert SA. 2009;Gene expression patterns during intramuscular fat development in cattle. J Anim Sci 87:119–130.
Weiss WP. 1993;Predicting energy values of feeds. J Dairy Sci 76:1802–1811.
Weiss WP, Conrad HR, Pierre NRSt. 1992;A theoretically-based model for predicting total digestible nutrient values of forages and concentrates. Anim Feed Sci Technol 39:95–110.
Zebeli Q, Tafaj M, Steingass H, Metzler B, Drochner W. 2006;Effects of physically effective fiber on digestive processes and milk fat content in early lactating dairy cows fed total mixed rations. J Dairy Sci 89:651–668.
Zhao JS, Zhou ZM, Ren LP, Xiong YQ, Du JP, Meng QX. 2008;Evaluation of dry matter intake and daily weight gain predictions of the Cornell Net Carbohydrate and Protein System with local breeds of beef cattle in China. Anim Feed Sci Technol 142:231–246.

Article information Continued

Figure 1

Relationships between observed and model-predicted dry matter intake (DM) using level 1 (A) or level 2 (B) solutions of the Large Ruminant Nutrition System. Symbols are studies 1 (⋄), 2 (■), 3 (A), 4 (+), and 5 (✳). Solid line is the Y = X and the dotted line is the linear regression.

Figure 2

Model-predicted ruminal nitrogen balance using level 1 (dotted bars) or level 2 (hashed bars) solutions of the Large Ruminant Nutrition System for each study, averaged across treatments.

Figure 3

Relationships between observed and first-limiting model-predicted average daily gain (ADG) using level 1 (A) or level 2 (B) solutions of the Large Ruminant Nutrition System. Symbols are studies 1 (⋄), 2 (■), 3 (A), 4 (+), and 5 (✳). Solid line is the Y = X and the dotted line is the linear regression.

Table 1

Summary of studies used for evaluating the large ruminant nutrition system for Vietnamese Yellow (Vang) purebred and crossbred cattle fed under Vietnamese conditions

Study Breed N Initial SBW2 (kg) Initial age (Months) Period fed (d) Variable treatment Number of treatments Ref.3
1 Vang 24 150±11.8 17 74 Levels of CP2 4 1
2 Vang 24 145±9.8 16 60 Concentrate levels 4 2
3 Vang 15 142±15.7 16 49 Concentrate levels 5 3
4 Laisind1 20 164±19.1 16 88 Concentrate levels 5 4
5 Laibrahman1 16 224±32.3 22 84 Type of concentrate 4 5
1

Laisind = Vietnamese Yellow cattle×Red Sindhi crossbred and Laibrahman = Vietnamese Yellow cattle×Brahman crossbred.

2

Shrunk body weight (mean±standard deviation) and CP = Crude protein.

Table 2

Feed quality values for selected samples from the five studies used to evaluate the large ruminant nutrition system model

Items Unit Bermuda grass Napier grass Rice straw Rice bran Cassava powder Corn powder Mixed concentrate
Dry matter % 19.2 18.1 89.1 87.3 88.6 86.0 87.2
Crude protein % DM 8.1 11.1 5.9 15.8 2.3 9.1 22.1
Soluble protein % CP 21.7 25.8 19.8 23.4 26.1 16.9 41.1
ADF insoluble protein % DM 0.82 1.39 1.53 1.41 0.41 0.67 1.16
NDF insoluble protein % DM 4.29 4.48 2.52 2.02 0.58 1.09 1.80
Acid detergent fibre % DM 39.3 36.8 54.2 8.2 5.5 3.4 5.8
Neutral detergent fibre % DM 60.8 64.0 73.1 18.7 9.3 11.4 11.9
Lignin % DM 3.64 4.99 6.66 3.24 1.61 1.09 1.71
Sugar % DM 7.3 1.4 0.7 3.1 1.5 1.2 1.5
Starch % DM 3.4 7.1 2.6 32.2 78.6 70.9 46.6
Crude fat % DM 2.4 1.9 1.5 15.9 0.3 3.3 7.1
Ash % DM 13.0 11.4 16.7 8.9 2.9 1.7 12.5
Calcium % DM 0.44 0.44 0.54 0.09 0.10 0.03 1.46
Phosphorus % DM 0.35 0.25 0.13 1.95 0.09 0.24 1.20
Magnesium % DM 0.18 0.30 0.13 0.98 0.10 0.10 0.40
Potassium % DM 3.33 2.98 1.83 1.72 0.57 0.43 0.92
Sulphur % DM 0.17 0.76 0.09 0.23 0.05 0.13 0.26
Sodium % DM 0.021 0.286 0.029 0.013 0.030 0.007 0.690
Iron PPM 188 234 309 177 371 81 431
Manganese PPM 19 201 489 151 22 7 61
Zinc PPM 30 46 30 79 16 31 52
Copper PPM 8 9 2 3 3 2 6
Chloride ion % DM 0.68 0.66 0.18 0.07 0.04 0.06 1.06

Table 3

Input variables and their values used to simulate five studies used to evaluate the large ruminant nutrition system (LRNS) model

LRNS inputs1 Study
1 2 3 4 5
Sex Bull Bull Bull Bull Bull
Body condition score (1 to 9) 5 5 5 5 5
Breeding system Straight bred Straight bred Straight bred Straight bred Straight bred
Breed selection in LRNS Gir Gir Gir Brahman Brahman
Body fat endpoint (g/kg) 220 220 220 220 220
Wind speed (km/h) 0 0 0 0 0
Previous temperature (°C) 20 20 27 27 23
Previous relative humidity (%) 75 75 86 86 86
Current temperature (°C) 24 24 25 25 22
Current relative humidity (%) 80 80 89 89 89
Hours in sunlight 0 0 0 0 0
Hair depth (cm) 0.5 0.5 0.5 0.5 0.5
Mud depth (cm) 0 0 0 0 0
Hide thin thin thin thin Thin
Hair coat no mud no mud no mud no mud no mud
Cattle panting none none none none none
Min night temperature (°C) 21 21 21 21 21
Time spent standing (h/d) 12 12 12 12 12
Daily body position changes 6 6 6 6 6
Flat distance walked (m/d) 0 0 0 0 0
Sloped distance walked (m/d) 0 0 0 0 0
1

Values were based on measured values during the experimentation period and by expert estimation.

Table 4

Descriptive and adequacy statistics of observed (Obs) versus first-limiting model-predicted average daily gain (ADG, kg/d) and observed versus model-predicted dry matter intake (DMI, kg/d) using level 1 (L1) or level 2 (L2) solutions of the large ruminant nutrition system

Statistics1 DMI
ADG
Complete
Without study 5
Obs L1 L2 Obs L1 L2 Obs L1 L2
N 22 22 22 18 18 18 22 22 22
Mean (kg/d) 4.50 5.00 4.87 4.36 4.58 4.44 0.64 0.58 0.48
Variance (kg2/d2) 0.52 0.85 1.1 0.51 0.089 0.28 0.68 0.12 0.081
Median (kg/d) 4.74 4.75 4.75 4.45 4.70 4.69 0.68 0.67 0.47
r2 - 0.39 0.45 - 0.63 0.48 - 0.70 0.86
Root MSEP (kg/d) - 0.87 0.85 - 0.55 0.51 - 0.19 0.19
MSEP (kg2/d2) - 0.76 0.72 - 0.30 0.26 - 0.037 0.037
 % Mean bias - 31.4 19.1 - 16.9 2.77 - 9.09 67.18
 % Systematic bias - 28.4 43.0 - 22.5 0.33 - 19.95 0.085
 % Random errors - 40.1 37.8 - 60.5 96.9 - 71.0 32.8
Mean bias (kg/d) - −0.49 −0.37 - −0.084 −0.23 - 0.058 0.16
CCC - 0.47 0.58 - 0.66 0.52 - 0.82 0.81
 Cb - 0.83 0.86 - 0.95 0.65 - 0.98 0.87
AIC - −21.6 −23.9 - −20.2 −25.9 - −75.7 −92.2
1

MSEP = Mean square error of prediction, CCC = Concordance correlation coefficient, Cb = Accuracy, and AIC = Akaike’s information criterion.