Sonia Y Liu1,2, Victor D Naranjo3, Peter V Chrystal1,2,4, Johan Buyse5, Peter H Selle1. 1. Poultry Research Foundation, Faculty of Science, The University of Sydney, Camden NSW, Australia. 2. School of Life and Environmental Sciences, Faculty of Science, The University of Sydney, Sydney NSW, Australia. 3. Evonik Nutrition and Care, Essen, Germany. 4. Baiada Poultry Pty Limited, Pendle Hill, NSW, Australia. 5. Laboratory of Livestock Physiology, Department of Biosystems, KU Leuven, Leuven, Belgium.
Abstract
A Box-Behnken designed study was completed to predict growth performance, carcass characteristics and plasma hormone and metabolite levels as influenced by dietary energy, amino acid densities and starch to lipid ratios in male broiler chickens. The design comprised three dietary energy densities (11.25, 12.375 and 13.5 MJ/kg), three digestible lysine concentrations (9.2, 10.65 and 12.1 g/kg) and three starch to lipid ratios (4.5, 12.25 and 20.0) in broiler diets based on maize and soybean meal. Each of thirteen dietary treatments was offered to 10 replicates of 15 birds per replicate floor pen or a total of 1,950 Ross 308 male broiler chickens from 21 to 35 days post-hatch. Increasing dietary energy decreased feed intake with a quadratic relationship between feed intake and dietary standardised ileal digestible (SID) Lys concentrations, where increasing SID Lys initially increased and then depressed feed intake. Increasing dietary amino acid density increased body weight gain and carcass weight; however, dietary energy did not influence body weight gain, carcass and breast meat weight. Feed efficiency was positively influenced by energy and amino acid densities but negatively influenced by starch to lipid ratios and energy and amino acids had more pronounced impacts than starch to lipid ratios. This study indicated that both energy and amino acid densities regulate feed intakes in broiler chickens. Body weight gain of modern broiler chickens is more responsive to amino acid densities; nevertheless, dietary energy density continues to play an important role in protein utilisation, as reflected in significantly reduced plasma uric acid levels.
A Box-Behnken designed study was completed to predict growth performance, carcass characteristics and plasma hormone and metabolite levels as influenced by dietary energy, amino acid densities and starch to lipid ratios in male broiler chickens. The design comprised three dietary energy densities (11.25, 12.375 and 13.5 MJ/kg), three digestible lysine concentrations (9.2, 10.65 and 12.1 g/kg) and three starch to lipid ratios (4.5, 12.25 and 20.0) in broiler diets based on maize and soybean meal. Each of thirteen dietary treatments was offered to 10 replicates of 15 birds per replicate floor pen or a total of 1,950 Ross 308 male broiler chickens from 21 to 35 days post-hatch. Increasing dietary energy decreased feed intake with a quadratic relationship between feed intake and dietary standardised ileal digestible (SID) Lys concentrations, where increasing SIDLys initially increased and then depressed feed intake. Increasing dietary amino acid density increased body weight gain and carcass weight; however, dietary energy did not influence body weight gain, carcass and breast meat weight. Feed efficiency was positively influenced by energy and amino acid densities but negatively influenced by starch to lipid ratios and energy and amino acids had more pronounced impacts than starch to lipid ratios. This study indicated that both energy and amino acid densities regulate feed intakes in broiler chickens. Body weight gain of modern broiler chickens is more responsive to amino acid densities; nevertheless, dietary energy density continues to play an important role in protein utilisation, as reflected in significantly reduced plasma uric acid levels.
Satisfactory muscle protein deposition requires both glucose and amino acids because glucose is the primary energy source to promote the incorporation of amino acids into protein [1]. Liu and Selle [2] considered starch and protein digestive dynamics and proposed that glucose and amino acids should be made available in appropriately balanced quantities at sites of protein synthesis for efficient growth performance. Modern broiler chickens are selected for optimal growth rate, feed conversion efficiency and breast meat yield and are very responsive to both energy and amino acid dietary densities [3-5]. This emphasises the importance of energy and amino acid densities in the formulation of practical broiler chicken diets where these densities are usually considered in tandem. However, nutritionists may choose different approaches, which includes either keeping standardised ileal digestible (SID) lysine (Lys) constant or, alternatively, varying energy and amino acids individually in order to take better advantage of so-called ‘least-cost’ feed formulations. Additionally, the influence of proportions of the two major energy sources, including starch and lipid, gained very little attention in the literature. Our recent study [6] considered the former approach where broiler chickens were offered diets containing consistent digestible lysine to metabolisable energy ratios and the influence of starch to lipid ratios and dietary energy densities on growth performance was investigated. Other recent publications also investigated the influence of dietary protein to energy ratios on growth performance and efficiency of protein utilisation in chickens [5, 7]. However, there is a lack of recent studies investigating the interactive influence of energy and amino acids in broiler chickens when energy and amino acids are manipulated separately.Moreover, Liu et al. [8] provided male broiler chickens with the choice of three diets containing 17.5 g/kg SIDlysine and three levels of energy densities (11.04, 12.58 and 14.12 MJ/kg). All the other essential amino acids were balanced to constant ratios of SIDLys and the three diets were offered to broiler chickens simultaneously or sequentially (one at a time). From day 10 to 31 days post-hatch, simultaneously fed birds exhibited an 8.3% significantly lower feed conversion ratio (FCR) than those offered diets sequentially (1.217 versus 1.327, P < 0.0001) and consumed the high energy diet (14.12 MJ/kg) most in order to balance the high dietary amino acid density. This preliminary study led to our interest in exploring the impact of energy and amino acid separately on growth performance of broilers in order to enhance feed conversion efficiency and muscle protein deposition in broiler chickens to greater extents.Energy density is usually the most expensive component of poultry diets and tremendous efforts have been made to describe and quantify energy more precisely via different systems [9, 10]. However, the influence of different energy sources, which are mainly starch and lipid in diets for mono-gastric animals, is seldom investigated. Starch is the most abundant macronutrient in typical broiler diets and lipid has been reported to influence feed intake [7] due to its impacts on pellet quality [11] and/or rate of gastric emptying [12]. Therefore, in comparison to our previous study [6], the present study evaluated the influence of dietary energy, amino acid densities and starch to lipid ratios on growth performance, carcass characteristics and plasma metabolites in broiler chickens during the grower phase. In order to study all the three factors at three different levels simultaneously, the multivariate optimization Box-Behnken response surface design was adopted in the present study.
Materials and methods
Experimental design
A 3-factor, 3-level Box-Behnken design (BBD) including 13 dietary treatments was used to determine the impact of energy (nitrogen-corrected apparent metabolisable energy, AMEn 11.25, 12.38, 13.50 MJ/kg), amino acid density (SIDLys, 9.20, 10.65, 12.10 g/kg) and starch to lipid ratio (S:L, 4.50, 12.25, 20.00 g/g) on growth and carcass parameters of male broilers from 21 to 35 days post-hatch. The independent variables and their low, medium, and high levels used in the Box-Behnken response surface design are shown in Table 1 and dietary treatments are listed in Table 2. The values of the centre points for each factor were 10.65 g/kg SIDLys, 12.38 MJ/kg AMEn and 12.25 S:L ratio as described for treatment 7. The evaluated responses (dependent variables) were parameters of growth performance and metabolites data in blood, including feed intake, weight gain, feed conversion ratio (FCR) and blood plasma concentrations of corticosterone, triacylglycerols, glucose, non-esterified fatty acids (NEFA), uric acid and insulin.
Table 1
Experimental factors and levels used in the Box-Behnken design.
Factors
Level (-)
Level (0)
Level (+)
X1: Digestible lysine concentration (g/kg)
9.2
10.65
12.1
X2: Energy density (AMEn MJ/kg)
11.25
12.375
13.5
X3: Starch: lipid ratios (g/g)
4.5
12.25
20.0
Table 2
The list of experimental treatments for broiler chickens from 21–35 days post-hatch.
Treatment
Code
Digestible lysine concentration (g/kg)
AMEn
Starch:lipid
(MJ/kg)
(g/g)
1
− − 0
9.2
11.250
12.25
2
− 0 −
9.2
12.375
4.50
3
− 0 +
9.2
12.375
20.00
4
− + 0
9.2
13.500
12.25
5
0 − −
10.65
11.250
4.50
6
0 − +
10.65
11.250
20.00
7
0 0 0
10.65
12.375
12.25
8
0 + −
10.65
13.500
4.50
9
0 + +
10.65
13.500
20.00
10
+ - 0
12.1
11.250
12.25
11
+ 0 -
12.1
12.375
4.50
12
+ 0 +
12.1
12.375
20.00
13
+ + 0
12.1
13.500
12.25
Diet preparation
Experimental diets were based on maize, soyabean meal and wheat middlings with varying additions of maize gluten meal, soy protein concentrate and maizestarch (Table 2). From 0 to 20 days post-hatch, all broilers were offered one common nutritionally adequate diet. Diets were formulated on SID basis and for each SIDLys level the ratios of other essential amino acid were balanced. Main ingredients were analysed for total amino acids, proximate chemical compositions in order to predict their AMEn by using WPSA equations [13]; then the estimated values were used for diet formulation. The formulation and calculated nutrient specifications of the experimental diets are shown in Tables 3 and 4. Experimental diets were pelleted and pellet durability index (PDI) was determined using the Holmen tester. Experimental diets did not contain prophylactic anti-microbial additives or enzymes in order to avoid confounding factors.
Table 3
Dietary formulations in experimental diets for broiler chickens from 21–35 days post-hatch.
Treatment (g/kg)
1
2
3
4
5
6
7
8
9
10
11
12
13
Maize
497
505
365
95
415
131
699
621
271
522
508
336
127
Soyabean meal, 48% CP
234
238
291
193
218
276
228
244
-
254
262
302
187
Wheat middlings
142
133
-
-
193
118
-
-
-
85
74
-
-
Maize starch
51
-
292
535
-
369
-
-
450
29
-
296
494
Maize gluten meal, 60% CP
-
-
-
50
-
-
-
-
73
-
-
-
50
Soy protein concentrate
-
-
-
50
-
-
-
-
130
-
-
-
50
Filler
30
30
3.9
-
80
50
11
21
-
50
50
5.2
-
Dicalcium phosphate 19
17
17
19
20
17
19
18
19
19
18
18
19
20
Limestome
8.1
8.0
6.8
6.8
8.3
7.0
7.8
7.6
8.1
7.8
7.7
6.7
6.9
Premix poultry
5.0
5.0
5.0
5.0
5.0
5.0
5.0
5.0
5.0
5.0
5.0
5.0
5.0
Soybean oil
5.0
52.5
5.0
28.7
43.5
5.0
8.9
63.7
9.9
5.0
51.8
5.0
26.8
Salt (NaCl)
2.9
3.0
3.4
2.4
2.2
2.7
2.3
2.4
1.0
1.9
2.0
2.4
1.1
Sodium bicarbonate
2.7
2.6
2.0
3.4
3.8
3.1
3.6
3.4
5.3
4.1
4.0
3.5
5.2
DL- Methionine
2.3
2.3
2.6
2.7
3.6
4.1
3.4
3.5
3.8
4.4
4.4
4.8
4.9
L-Lysine-HCl, 78%
1.3
1.2
0.7
2.0
3.6
3.0
3.6
3.3
6.0
4.6
4.5
4.1
5.9
L-Threonine
0.6
0.5
0.5
0.8
1.8
1.9
1.7
1.6
2.2
2.3
2.3
2.3
2.7
Potassium carbonate
0.4
0.4
2.0
3.8
0.4
1.6
2.1
2.1
6.0
0.7
0.7
1.8
3.8
Choline Cloride 60%
0.2
0.2
0.4
1.0
0.3
0.5
0.4
0.4
1.4
0.2
0.2
0.4
1.0
L-Valine
0.2
0.1
0.2
0.5
1.7
1.9
1.5
1.4
2.2
2.3
2.2
2.4
2.9
L-Isoleucine
-
-
-
-
1.4
1.3
1.2
1.1
1.8
1.8
1.8
1.7
2.1
L-Arginine
-
-
-
-
1.0
0.8
1.3
1.1
3.4
1.9
1.8
1.7
3.2
L- Tryptophen
-
-
-
-
-
-
-
-
0.5
-
-
-
0.3
Table 4
Calculated nutrient specifications in experimental diets for broiler chickens from 21–35 days post-hatch.
Treatment (g/kg)
1
2
3
4
5
6
7
8
9
10
11
12
13
AMEn, MJ/kg
11.25
12.38
12.38
13.50
11.25
11.25
12.38
13.50
13.50
11.25
12.38
12.38
13.50
Crude protein
180
180
180
180
180
180
180
180
180
195
195
195
195
Lipid
32.5
79.8
24.1
42.3
69.8
21.1
37
89.4
28.2
31.3
77.1
23.3
41.2
Crude fiber
32.2
31.7
19.5
12.1
34
23.8
24.3
23
11.8
28.5
27.5
19.2
12.5
Starch
398
359
482
518
314
422
453
402
563
383
347
467
505
Starch:lipid
12.2
4.5
20.0
12.2
4.5
20.0
12.2
4.5
20.0
12.2
4.5
20.0
12.2
Total Lys
10.2
10.2
10.1
10.1
11.6
11.6
11.5
11.5
11.4
13.1
13.1
13.1
13.0
Total Met
4.9
4.8
5.0
5.2
6.0
6.2
6.0
6.0
6.3
7.0
7.0
7.1
7.3
Total M+C
7.6
7.6
7.6
7.6
8.7
8.7
8.6
8.6
8.7
9.8
9.8
9.7
9.8
Total Thr
7.0
7.0
6.9
6.9
8.0
7.9
7.9
7.9
7.7
8.9
8.9
8.9
8.8
Total Trp
2.2
2.2
2.1
1.9
2.2
2.2
1.9
2.0
2.0
2.2
2.2
2.2
2.2
Total Arg
11.5
11.6
11.6
10.5
12.2
12.1
11.9
11.9
11.9
13.6
13.6
13.5
13.5
Total Ile
7.2
7.2
7.4
7.2
8.2
8.2
8.1
8.1
8.0
9.2
9.2
9.2
9.2
Total Val
8.4
8.4
8.3
8.3
9.5
9.5
9.4
9.4
9.3
10.7
10.7
10.6
10.6
SID Lys1
9.2
9.2
9.2
9.2
10.7
10.7
10.7
10.7
10.7
12.1
12.1
12.1
12.1
SID Met
4.6
4.6
4.8
4.9
5.8
6.0
5.8
5.8
6.1
6.8
6.8
6.9
7.1
SID M+C
6.9
6.9
6.9
6.9
8.0
8.0
8.0
8.0
8.0
9.1
9.1
9.1
9.1
SID Thr
6.0
6.0
6.0
6.0
6.9
6.9
6.9
6.9
6.9
7.9
7.9
7.9
7.9
SID Trp
1.9
1.9
1.9
1.7
1.9
1.9
1.7
1.7
1.7
1.9
1.9
1.9
1.9
SID Arg
10.5
10.6
10.8
9.7
11.2
11.2
11.2
11.2
11.2
12.7
12.7
12.7
12.7
SID Ile
6.4
6.5
6.7
6.4
7.5
7.5
7.5
7.5
7.5
8.5
8.5
8.5
8.5
SID Val
7.4
7.4
7.4
7.4
8.5
8.5
8.5
8.5
8.5
9.7
9.7
9.7
9.7
Ca
8.5
8.5
8.5
8.5
8.5
8.5
8.5
8.5
8.5
8.5
8.5
8.5
8.5
Avail. P
4.2
4.2
4.2
4.2
4.2
4.2
4.2
4.2
4.2
4.2
4.2
4.2
4.2
Na
2.0
2.0
2.0
2.0
2.0
2.0
2.0
2.0
2.0
2.0
2.0
2.0
2.0
Cl
2.5
2.5
2.5
2.5
2.5
2.5
2.5
2.5
2.5
2.5
2.5
2.5
2.5
K
7.7
7.7
7.7
7.7
7.7
7.7
7.7
7.7
7.7
7.7
7.7
7.7
7.7
1 standardised ideal digestible
1 standardised ideal digestible
Bird management
All experimental procedures involving animals were approved by the Animal Ethics Committee of the University of Leuven (Trial number 15 53 16003). A total of 1,950 d-old commercial strain male Ross 308 broilers were obtained from a commercial hatchery and randomly assigned to 13 dietary treatments with 10 replicates of 15 birds per replicate pen. Five animal houses were used but complete randomised block design was conducted to include two replicates per dietary treatment or 26 pens per house. Fresh wood shavings were added to floor pens prior to the beginning of the feeding study. A common starter diet was offered to all the broiler chickens from 0 to 20 days post-hatch. At day 21, birds were allocated into floor pens on the basis of bodyweight to ensure the average initial body weights within each floor pen were nearly identical. Broiler chickens were offered the experimental diets from 21 to 35 days post-hatch. Birds were housed in an environmentally-controlled facility with unlimited access to feed and water. Lighting and environmental temperature programs strictly followed the 2014 Ross 308 bird management guidelines. Birds and feed were weighed again to determine weekly intake and FCR at 28 and 35 days post-hatch. Birds were checked daily and the incidence of dead or culled birds was recorded daily and their body-weights were used to adjust FCR calculations. FCR was calculated from feed intake divided by weight gain for the corresponding experimental period. Little score was evaluated at day 30 with the following five categories (score 0, dry and granular; score 1, dry and compact; score 2, wet and compact; score 3, completely wet and compact; score 3+, wet and sticky). All the assessment of growth performance and sample collection followed the order of pen number.
Sample collection and chemical analysis
On 35 days post-hatch, 4 birds per pen were selected based on average pen weight for carcass measurements. Birds were individually weighed to obtain the coefficient of variation (CV) of each pen as the indicator of flock uniformity. Subsequently, birds were slaughtered and processed in a commercial processing plant and carcasses were weighed, breast muscle (Pectoralis major), wings and leg quarters were removed and weighed. Another 5 birds per pen were selected based on average pen weight. Blood was taken from a wing vein with a heparinized syringe and collected into iced tubes. After centrifugation, plasma was carefully removed and stored frozen (-70°C) until analysis for concentrations of corticosterone, triglycerides, glucose, NEFA, uric acid and insulin. The plasma corticosterone concentrations were measured using a Double Antibody Corticosterone 125 I RIA kit (MP Biomedicals, LLC, Orangeburg, NY 10962, USA). Plasma insulin concentrations were determined by using the Mercodia MouseInsulin ELISA kit (Mercodia AB, SE-754 50 Uppsala, Zweden). Plasma metabolite concentrations were measured spectrophotometrically by using commercially available kits: glucose (LabAssay Glucose from Wako Pure Chemical Industries, Ltd., Osaka, Japan), triglycerides (Randox Triglycerides GPO-PAP Method, Randox Laboratories Ltd., Crumlin, United Kingdom), NEFA (NEFA-HR(2) ACS-ACOD Method, Wako Chemicals GmbH, 41468 Neuss, Duitsland), uric acid (Randox Uric Acid, Randox Laboratories Ltd., Crumlin, United Kingdom).
Statistical analysis
The calculation of number of replicates was conducted by using Library dae in R 3.1.3 as described in Demetrio et al. [14]. The common variance of FCR according to our previous studies was expected to be 0.012. The number of replicates required to achieve a power of 0.8273, with a significance level of 0.05 in detecting a minimum difference of 0.16 in FCR is 10. Data were analyzed according to a 3-factor, 3-level BBD function using each pen of birds as the experimental unit. Response surfaces were fitted by first and second degree polynomial regressions in R 3.1.3. Akaike Information Criterion (AIC) was used for model comparison and selection. In the predicted model, the non-significant coefficients were excluded for recalculations of the reduced equations for each response variable. The primary experimental outcomes are growth performance including FCR and weight gain and the secondary experimental outcomes are plasma metabolites and carcass traits.
Results
Growth performance
The mortality rate during the experimental period was 0.87% which was not influenced by dietary treatment (P > 0.60). This mortality rate is extremely low comparing to industry practice and no adverse events were observed in the present study. The influence of dietary treatments on weight gain, feed intake and FCR from 21–35 days post-hatch is shown in Table 5 (S1 Table). The overall average FCR from 21–35 days post-hatch was superior to 2014 Ross 308 performance objectives by 1.8% (1.699 versus 1.731, P < 0.01) on the basis of one sample t-test. There was no significant influence on flock uniformity and litter score by changing starch to lipid ratios, energy and amino acid densities in broiler diets. Therefore, no coefficients and models were reported in Table 6 to predict flock uniformity (CV) and litter score. Table 6 shows the coefficient estimates and summary statistics of growth performance in response to dietary treatments. The response of feed intake (y) was described by the following equation,
Table 5
Effects of dietary treatment on growth performance from 21–35 days post-hatch and flock uniformity and litter score at 35 days post-hatch.
Treatment
SID Lys
AMEn
S:L
Weight gain
Feed intake
FCR
CV
Litter score1
(g/kg)
(MJ/kg)
(g/g)
g/bird
g/bird
g/g
(%)
(1–3)
1
9.2
11.25
12.25
1111
2133
1.928
8.9
2.2
2
9.2
12.375
4.5
1186
2084
1.761
7.3
2.1
3
9.2
12.375
20
1117
1979
1.777
7.0
2.1
4
9.2
13.5
12.25
1157
1905
1.648
7.9
2.2
5
10.65
11.25
4.5
1247
2200
1.766
7.8
2.2
6
10.65
11.25
20
1141
2143
1.879
7.8
2.0
7
10.65
12.375
12.25
1188
2056
1.736
7.3
2.1
8
10.65
13.5
4.5
1256
1972
1.571
7.2
2.0
9
10.65
13.5
20
1125
1812
1.612
7.8
2.2
10
12.1
11.25
12.25
1179
2062
1.750
8.5
2.1
11
12.1
12.375
4.5
1307
2049
1.568
6.6
2.3
12
12.1
12.375
20
1211
1923
1.588
6.7
2.3
13
12.1
13.5
12.25
1215
1817
1.497
7.3
2.1
SEM
18.90
19.90
0.0213
0.60
0.13
1 score 1, dry and compact; score 2, wet and compact; score 3, moist and compact; score 3+, moist and sticky
Table 6
ANOVA, coefficient estimates and summary statistics of growth performance in response to digestible lysine concentration (SID Lys), energy density (AMEn) and starch to lipid ratios (S:L) in broiler chickens from 21–35 days post-hatch.
Feed intake
Weight gain
FCR
Variables1
Coefficient
P-Value
Coefficient
P-Value
Coefficient
P-Value
First order
X1
533.94
1.55×10−5
29.371
4.72×10−9
0.26898
0.041
X2
-
-
-
-
-0.11074
< 2×10−16
X3
-
-
-18.209
1.02×10−4
0.01579
0.004
Second order
X1
-20.266
3.88×10−4
-
-
-0.0155
0.0123
X2
-
-
-
-
-0.5198×10−3
0.016
X3
-
-
0.479
9.45×10−3
-
-
Interactions
X1:X2
-10.008
< 2×10−16
-
-
-
-
X2:X3
-0.5948
1.13×10−12
-
-
-
-
X1:X3
-
-
-
-
-
-
Intercept
58.063
0.926
1008.5
< 2×10−16
1.887
0.008
R2
0.766
0.446
0.774
R2adj
0.759
0.433
0.765
P-value
<0.001
<0.001
<0.001
1X: SID Lys (g/kg); X: AMEn (MJ/kg); X: S:L
1 score 1, dry and compact; score 2, wet and compact; score 3, moist and compact; score 3+, moist and sticky1X: SIDLys (g/kg); X: AMEn (MJ/kg); X: S:LWhere x1 is the SIDLys concentration, x2 is the dietary AMEn (MJ/kg) and x3 is the S:L ratio. The response surface and contour plots for feed intake are illustrated in Fig 1. Increasing S:L ratios and dietary energy reduced feed intake; however, dietary energy density has more pronounced impact on feed intake than S:L ratios (Fig 1 right). There was a quadratic relationship between feed intake and dietary SIDLys concentrations, where increasing SIDLys first increased feed intake and then depressed feed intake (Fig 1 left and middle).
Fig 1
Response surface and contour plots describing relationships between feed intake (g/bird) and digestible lysine concentration (SID Lys), energy density (AMEn) and starch to lipid ratios (S:L) in broiler chickens from 21–35 days post-hatch.
The response of weight gain (y) was described by the following equation,There were no interactions between the dietary variables nor dietary energy on weight gain from 21–35 days post-hatch. The response surface and contour plots for weight gain are illustrated in Fig 2. Increasing dietary SIDLys concentrations and decreasing S:L ratios increased weight gain in broiler chickens and dietary SIDLys concentrations had a more pronounced impact on weight gain than S:L ratios in broiler diets. Similar to feed intake, FCR was influenced by all the three dietary factors, and was predicted as,
Fig 2
Response surface and contour plots describing relationships between weight gain (g/bird) and digestible lysine concentration (SID Lys) and starch to lipid ratios (S:L) in broiler chickens from 21–35 days post-hatch.
There were no interactions between dietary S:L ratios, SIDLys and energy concentrations on weight gain or FCR. Increasing dietary energy or increasing SIDLys concentrations improved feed efficiency or reduced FCR (Fig 3 left). However, although increasing S:L ratios slightly increased FCR (Fig 3 middle), its impact on FCR was much less noticeable than dietary Lys and energy concentrations (Fig 3 middle and right).
Fig 3
Response surface and contour plots describing relationships between FCR (g/g) and digestible lysine concentration (SID Lys), energy density (AMEn) and starch to lipid ratios (S:L) in broiler chickens from 21–35 days post-hatch.
Carcass yields
The influence of dietary treatments on weights and yields of carcass, leg quarters, breasts and wings was tabulated in Table 7. The average live body weights (BW) following feed withdrawal was 2.272 kg/bird. The average weights of carcass, leg quarters, breasts and wings were 1357, 530, 476 and 133 g/bird, respectively; whereas, the average yields of carcass, leg quarters, breasts and wings were 64.5, 25.2, 22.6 and 6.3% of BW, respectively. Table 8 shows the coefficient estimates and summary statistics of carcass weights and yield data in response to dietary treatments. Carcass weight was only influenced by dietary Lys and S:L ratios and it was predicted as,
Table 7
Effects of dietary treatment on slaughter live body weight (BW) and carcass traits in broiler chickens at 35 days post-hatch.
Treatment
SID Lys
AMEn
S:L
Live BW
Weight (g/bird)
Yield (% Live BW)
(g/kg)
(MJ/kg)
(g/g)
(kg/bird)
Carcass
Leg quarters
Breasts
Wings
Carcass
Leg quarters
Breasts
Wings
1
9.2
11.25
12.25
2.174
1315
506
455
136
64.2
24.7
22.2
6.6
2
9.2
12.375
4.5
2.228
1315
516
462
121
63.0
24.7
22.1
5.8
3
9.2
12.375
20
2.156
1292
508
439
133
64.1
25.2
21.8
6.6
4
9.2
13.5
12.25
2.211
1319
513
473
117
64.1
24.9
22.4
5.5
5
10.65
11.25
4.5
2.273
1384
544
477
142
64.6
25.4
22.2
6.6
6
10.65
11.25
20
2.203
1344
517
492
120
63.2
24.3
23.1
5.7
7
10.65
12.375
12.25
2.272
1377
542
479
145
64.5
25.4
22.4
6.8
8
10.65
13.5
4.5
2.272
1364
529
491
124
64.3
25.0
23.2
5.9
9
10.65
13.5
20
2.672
1347
538
449
143
64.8
25.9
21.6
6.9
10
12.1
11.25
12.25
2.207
1350
518
491
123
65.0
24.9
23.7
5.9
11
12.1
12.375
4.5
2.366
1441
568
498
146
65.2
25.7
22.5
6.6
12
12.1
12.375
20
2.243
1393
532
501
132
65.2
24.9
23.4
6.2
13
12.1
13.5
12.25
2.260
1399
554
480
145
65.9
26.1
22.6
6.8
SEM
0.1287
11.0
5.3
5.8
1.6
0.67
0.34
0.30
0.17
Table 8
ANOVA, coefficient estimates and summary statistics of carcass traits (g/bird) in response to digestible lysine concentration (SID Lys), energy density (AMEn) and starch to lipid ratios (S:L) in broiler chickens.
Carcass weight
Leg quarters
Breasts
Wings
Variables1
Coefficient
P-Value
Coefficient
P-Value
Coefficient
P-Value
Coefficient
P-Value
First order
X1
29.3823
< 2×10−16
-
-
-
-
3.4074
5.19×10−10
X2
-
-
-
-
-
-
-
-
X3
-2.0664
6.3×10−5
-7.4804
0.0995
-10.575
< 2×10−16
-
-
Second order
X1
-
-
-2.6708
0.0010
-
-
-
-
X2
-
-
-2.9177
2.74×10−6
-
-
-
-
X3
-
-
-
-
-
-
-
-
Interactions
X1:X2
-
-
6.092
1.22×10−5
-
-
-
-
X2:X3
-
-
-0.6048
0.0110
-
-
-
-
X1:X3
-
-
1.0467
0.0006
0.9224
6.96×10−16
-
-
Intercept
1069.3
< 2×10−16
493.97
< 2×10−16
485.1
< 2×10−16
96.6441
< 2×10−16
R2
0.2034
0.2103
0.1298
0.0723
R2adj
0.2003
0.2010
0.1264
0.0705
P-value
< 2×10−16
< 2×10−16
3.041*10−16
5.19×10−10
1X: SID Lys (g/kg); X: AMEn (MJ/kg); X: S:L
1X: SIDLys (g/kg); X: AMEn (MJ/kg); X: S:LAs shown in Fig 4, dietary Lys had more impact on carcass weights than dietary S:L ratios and increasing SIDLys concentrations or decreasing S:L ratios increased carcass weights. Breast meat weights were not influenced by dietary energy density and it was predicted as,
Fig 4
Response surface and contour plot describing relationships between carcass weight (g/bird) and digestible lysine concentration (SID Lys) and starch to lipid ratios (S:L) in broiler chickens.
Fig 5 illustrates response surface and contour plots describing relationships between breast weight (g/bird) and SIDLys concentrations and S:L ratios in broiler chickens. There were interactions between dietary Lys and S:L ratios where the response to dietary amino acid densities depended on S:L ratios in the diet. When S:L ratio was low, increasing Lys concentrations slightly decreased breast meat weights, whereas when S:L ratio was high increasing Lys concentrations dramatically increased breast meat weights. The weights of leg quarters was predicted to be influenced by all the three dietary factors and the equation was,
Fig 5
Response surface and contour plots describing relationships between breast weight (g/bird) and digestible lysine concentration (SID Lys) and starch to lipid ratios (S:L) in broiler chickens.
Fig 6 illustrates response surface and contour plots describing relationships between leg quarter weights (g/bird) and the three dietary variables in broiler chickens. There were interactions between the three dietary factors. Broiler chickens offered diets containing high energy and SIDLys concentrations were predicted to have higher leg quarter weights (Fig 6 left). Dietary S:L ratios had no obvious impact on leg quarter weights in diets containing low Lys concentrations; whereas in diets containing high Lys concentrations, decreasing S:L ratios was predicted to increase leg quarter weights (Fig 6 middle). In diets containing high S:L ratios, increasing dietary energy increased leg quarter weights; whereas in diets containing low S:L ratios, increasing dietary energy reduced leg quarter weights (Fig 6 right). The weights of wings were only influenced by dietary Lys concentrations where increasing SIDLys concentrations increased weights of wings. The prediction of the influence of dietary variables on carcass yields data as percentages of BW is reported in Table 9. There were only first order linear relationships between relative carcass yield and SIDLys. For example, carcass yield was positively correlated with dietary SIDLys concentrations (R2 = 0.2267, P = 0.0022). Relative leg quarters yield was positively correlated with dietary SIDLys and energy concentrations (R2 = 0.2165, P = 0.0124). Relative breast meat yield was positively correlated with dietary SIDLys concentrations (R2 = 0.2441, P = 0.0014). However, the relative yield of wings were not influenced by dietary treatments.
Fig 6
Response surface and contour plots describing relationships between leg quarters weight (g/bird) and digestible lysine concentration (SID Lys), energy density (AMEn) and starch to lipid ratios (S:L) in broiler chickens.
Table 9
ANOVA, coefficient estimates and summary statistics of carcass yields (% of live BW) in response to digestible lysine concentration (SID Lys), energy density (AMEn) and starch to lipid ratios (S:L) in broiler chickens.
Carcass
Leg quarters
Breasts
Wings
Variables1
Coefficient
P-Value
Coefficient
P-Value
Coefficient
P-Value
Coefficient
P-Value
First order
X1
5.115
0.00218
1.8103
0.0482
3.1609
0.0014
-
-
X2
-
-
0.2741
0.0216
-
-
-
-
X3
-
-
-
-
-
-
-
-
Intercept
59.027
< 2×10−16
19.8393
8.73×10−14
19.19
< 2×10−16
-
-
R2
0.2267
0.2165
0.2441
-
-
P-value
0.0022
0.0124
0.0014
-
-
1X: SID Lys (g/kg); X: AMEn (MJ/kg); X: S:L
1X: SIDLys (g/kg); X: AMEn (MJ/kg); X: S:L
Blood metabolites
The influence of dietary treatments on blood concentrations of corticosterone, triglycerides, glucose, NEFA, uric acid and insulin are shown in Table 10 and their relationships with dietary SIDLys, energy and S:L ratios are shown in Table 11. There was no dietary influence on concentrations of plasma corticosterone, triglycerides and insulin. Blood glucose concentration was negatively correlated (P = 0.007) with amino acid densities and positively correlated (P = 0.009) with energy density (Fig 7). NEFA concentrations in plasma was negatively correlated with S:L ratios in the diet (R2 = 0.076, P = 0.002) and uric acid in the plasma was negatively correlated with energy density where increasing dietary energy density decreased plasma uric acid concentrations (R2 = 0.076, P = 0.002).
Table 10
Effects of dietary treatment on blood parameters in broiler chickens at 35 days post-hatch.
Treatment
SID Lys
AMEn
S:L
Corticosterone
Triglycerides
Glucose
NEFA
Uric acid
Insulin
(g/kg)
(MJ/kg)
(g/g)
(ng/ml)
(mg/dl)
(mg/dl)
(mM)
(mg/dl)
(ng/ml)
1
9.2
11.25
12.25
2.067
42.30
229.62
0.190
4.44
0.752
2
9.2
12.375
4.5
2.279
47.49
241.24
0.314
4.46
0.716
3
9.2
12.375
20
2.280
44.59
246.65
0.212
4.21
0.791
4
9.2
13.5
12.25
4.873
38.76
268.03
0.250
4.40
0.620
5
10.65
11.25
4.5
2.428
37.54
233.35
0.258
4.20
0.653
6
10.65
11.25
20
4.777
42.05
230.26
0.241
6.12
0.756
7
10.65
12.375
12.25
4.464
41.89
241.43
0.303
4.28
0.690
8
10.65
13.5
4.5
3.288
57.02
232.24
0.252
3.79
0.694
9
10.65
13.5
20
2.683
53.69
249.42
0.163
4.05
0.765
10
12.1
11.25
12.25
2.379
38.09
228.95
0.132
5.02
0.638
11
12.1
12.375
4.5
2.281
49.19
221.08
0.311
5.38
0.695
12
12.1
12.375
20
2.759
42.95
230.11
0.167
3.57
0.694
13
12.1
13.5
12.25
2.486
46.43
237.32
0.181
3.95
0.657
SEM
0.7225
4.695
8.755
0.0323
0.409
0.1079
Table 11
ANOVA, coefficient estimates and summary statistics of blood parameters in response to digestible lysine concentration (SID Lys), energy density (AMEn) and starch to lipid ratios (S:L) in broiler chickens at 35 days post-hatch.
Glucose
NEFA
Uric acid
Variables1
Coefficient
P-Value
Coefficient
P-Value
Coefficient
P-Value
First order
X1
-5.825
0.007
-
-
-
-
X2
7.294
0.009
-
-
-0.434
0.002
X3
-
-
-0.0051
0.002
-
-
Intercept
209.5
<0.001
0.291
<0.001
9.802
<0.001
R2
0.104
0.076
0.076
R2adj
0.090
0.068
0.068
P-value
<0.001
0.002
0.002
1X: SID Lys (g/kg); X: AMEn (MJ/kg); X: S:L
Fig 7
Response surface and contour describing relationships between blood glucose concentrations with dietary energy density and digestible lysine in broiler chickens.
1X: SIDLys (g/kg); X: AMEn (MJ/kg); X: S:L
Discussion
Before discussing the influence of dietary factors on feed intake, it is noteworthy that feed intake was positively correlated with pellet durability index (Fig 8 left, R2 = 0.78, P < 0.05) in the present study. However, there was no correlation between dietary S:L ratios and pellet durability index (Fig 8 right) which indicated the variations of dietary lipid content did not influence pellet durability. The importance of ‘pellet quality’ should not be overlooked as increasing pellet breaking force has been shown to improve weight gain and FCR in broiler chickens [15].
Fig 8
Linear regression between feed intake and pellet durability index (left) and the lack of correlation between dietary S:L ratios and pellet durability (right).
Linear regression between feed intake and pellet durability index (left) and the lack of correlation between dietary S:L ratios and pellet durability (right).The conventional view is that the feed intake of broilers is regulated by the energy density of the diet [16], a flawed concept that is still held by many nutritionists. In the present study, feed intake was depressed by increasing energy and amino acids densities but there were interactions between dietary energy and amino acids densities, S:L ratios and energy densities (Fig 1). Over recent decades, the enhancement of productive traits in broiler chickens generated by genetic progress has been exponential [17]. Selection for increased growth rates, fuelled by increased feed intakes, has given birds the capacity to process increasing amount of nutrients. Classen [18] completed a series of studies where special attention was paid to confounding factors that usually overlooked in evaluations of the impact of dietary energy and amino acid levels on performance, including in-vivo energy measurements, consistent energy sources and pellet quality. This researcher concluded that energy levels did not influence feed intakes and that dietary energy levels need to be determined relative to the anticipated protein accretion of the bird [19]. Indeed, in the present study, feed intake was not influenced by energy density per se but there were interactions between dietary energy density and SIDLys concentration, dietary energy and S:L ratios (Table 6). In support of these findings, Gous et al. [5] reported a broken-stick response to protein to energy ratios in efficiency of protein utilisation and suggested animals often respond to the first limiting nutrient; hence, broilers exhibit an energy-dependent phase when high-protein feeds are offered or vice versa. Similarly, Gous [20] concluded birds are more likely to overconsume energy to meet other limiting nutrient(s) but their capacity to do so will depend on the degree to which nutrient/s are limiting and their ability to store the excess energy as body lipid and/or to increase heat production [21].In the present study, increasing dietary S:L ratios slightly depressed feed intakes but their impact was less pronounced than dietary amino acid concentrations and, to a lesser extent, to the interaction between dietary energy and SIDLys and S:L (Fig 1). However, Khoddami et al. [6] reported that increasing dietary S:L ratios significantly increased feed intake. The possible explanation for this inconsistency may be differences in diet compositions and crude fibre concentrations. The formulated dietary fibre concentration ranged from 22.8 to 73.3 g/kg in the Khoddami et al. [6] study because diets were based on maize and oats, and crude fibre concentrations increased with decreasing dietary S:L ratios. However, the crude fibre concentration ranged only from 11.8 to 34 g/kg in the present study. Therefore, it is possible that broiler chickens offered diets containing high fibre content and low dietary S:L ratios had depressed feed intake as observed in Khoddami et al. [6] which was not the case in the present study. This may have been due to poor pellet quality resulting from higher crude fibre contents in the earlier study.Despite the correlation between weight gain and feed intake (r = 0.275, P = 0.002), feed intake only explains about 7.5% of the variation in weight gain. Fig 2 shows that weight gain was influenced by dietary amino acid density and S:L ratios but not influenced by energy density and for a similar pattern exists for carcass yields (Fig 4). Increasing dietary S:L ratios decreased weight gain in broiler chickens in the present study which is not consistent with the Khoddami et al. [6]. However, as discussed, the difference may be due to the various impacts of dietary crude fiber and PDI on feed intake.Feed conversion ratio was influenced by all three dietary factors where increasing energy and amino acid densities decreased FCR or enhanced feed efficiency. This is consistent with Khoddami et al. [6] where diets containing similar protein to energy ratios (0.87 g digestible lysine/MJ energy) but different nutrient densities (11.25, 12.38 and 13.50 MJ/kg) were offered to broiler chickens. Increasing dietary nutrient densities significantly reduced FCR from 1.533 to 1.298 in broilers from 7–27 days post-hatch. Similarly, in two earlier studies [7, 22], when iso-energetic diets were offered to broiler chickens, dietary protein had a pronounced impact on weight gain and FCR and increasing dietary protein concentrations reduced FCR in broiler chickens. However, in practice, the cost of feeding high density diets needs to be considered and balanced in order to assure profitability. In addition, it is important to note that high density diets may generate excessive metabolic stresses resulting in high mortality rates in broiler chickens. Liu et al. [8] reported a significantly higher mortality rate in simultaneously fed birds in comparison to sequentially fed birds (11% versus 0%) as the simultaneously fed birds consumed diets containing high energy and high amino acid densities to greater extents. As shown in Fig 3, the impact of dietary S:L ratios on FCR was relatively small in comparison to energy and amino acid densities which agrees with previous finding in Khoddami et al. [6] where dietary S:L did not influence FCR (P = 0.794) in broiler chickens from 7–27 days post-hatch.Carcass weights were only influenced by dietary amino acid densities and S:L ratios, which was similar to body weight gain responses. Both increasing amino acid densities and decreasing S:L ratios enhanced carcass weights, but the impact of amino acid densities was more pronounced than that of dietary S:L ratios. Modern broiler chickens are genetically selected for growth rate and lean body mass gain, which demands routine updates of the amino acid requirements [23]. A number of studies have shown that broiler chickens are very responsive to variations in amino acid concentrations [3, 24, 25]. Reimer et al. [26] compared sexual maturation status at 21 weeks in broiler breeder pullets and reported that fat pad, as a percentage of total body weight, was 2.9, 4.5, 4.9 and 2.0% in the 2015, 1997, 1978 and 1957 strains, respectively (P < 0.001). This concluded that broiler chickens are genetically selected for lean body mass gain and the more recent strain has less body fat and higher lean body mass. Liu et al. [7] measured carcass composition by drying and grinding the whole carcass and found that the total fat carcass concentration was largely determined by the total protein intake, rather than the sum of starch and lipid intakes. Therefore, the higher proportion of lean body tissue in the more recent broiler strains may explain why body weight gain and carcass weight were influenced by amino acid densities but not energy. This is supported by Fig 5 which illustrates that breast meat weight was only influenced by amino acid densities and dietary S:L ratios.In the present study, dietary treatment did not influence plasma triglyceride concentrations, which is considered to be an indicator of the hepatic de novo lipogenesis and fat deposition. Swennen et al. [27] found in broiler chickens offered low-protein diets that feed intake was increased to meet the protein requirements, leading to an involuntary overconsumption of energy (‘luxus’ energy consumption) compared to protein. Elevated plasma triglyceride concentrations are often observed because animals dealt with this excess energy intake by increasing de novo lipogenesis and fat deposition. Plasma uric acid concentrations are thought to indicate efficiency of protein utilisation (e.g. due to less protein/amino acid oxidation) and, in the present study, increasing dietary energy densities reduced plasma uric acid concentrations (P = 0.002), suggesting better protein utilisation in these broiler chickens. This observation supports the hypothesis that whilst dietary energy did not contribute directly to body weight gain (Fig 2) and breast meat weight (Fig 5), it is still pivotal for efficient protein utilisation. Increasing dietary energy densities with a concomitant increase in SIDLys and increase in S:L decreased feed intake and enhanced protein utilisation, thus improved feed efficiency as illustrated in Fig 3. The level of NEFA in the circulation is the net result of lipolysis on the one hand and, on the other, cellular uptake of NEFA for energy yield [28]. In the present study, increasing dietary S:L ratio decreased plasma NEFA concentrations (P = 0.002). Diets with high S:L ratios contained less lipid and may have led to lower lipid intake; therefore, the reduction of the net result between cellular fatty acid uptake and lipolysis was observed. Plasma glucose was reduced by dietary amino acid densities (P = 0.007) and increased dietary energy (P = 0.009) despite no direct influence of S:L ratios on glucose concentration (Fig 7). Swennen et al. [29] reported that when iso-energetic diets were offered, carbohydrate is the preferred energy source in comparison to lipid in broiler chickens offered low protein diets. However, dietary energy levels varied in the present study and this may have masked the influence of dietary S:L ratios on plasma glucose concentration. Response surface BBD and the interactive influence of protein, energy and sources of energy may have implications in other monogastric livestock animals; however, because of the physiological differences between human and poultry, outcomes from the present study may have limited relevance to human despite the importance of energy and amino acid nutrition in human.
Conclusions
The interactions between dietary energy densities, amino acid and the energy source in respect of feed intake indicate that regulation of feed intake involves all three factors. This is different from the conventional view that energy is the sole influential factor for feed intake. In the present study, weight gain, carcass weight and breast meat were found to be influenced by amino acid concentrations but not energy density. This suggests that modern broiler chickens are more responsive to amino acid densities due to their increased lean body tissue composition as a consequence of selective breeding. However, plasma uric acid concentrations were reduced by increasing the energy concentration in the diet which indicated energy plays an important role in enhancing the efficiency of protein utilisation.
Authors: Sonia Y Liu; Peter H Selle; David Raubenheimer; David J Cadogan; Stephen J Simpson; Aaron J Cowieson Journal: Br J Nutr Date: 2017-01-16 Impact factor: 3.718
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