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Article

Climatic Conditions Influence the Nutritive Value of Wheat as a Feedstuff for Broiler Chickens

1
School of Life and Environmental Sciences, Faculty of Science, The University of Sydney, Sydney, NSW 2006, Australia
2
Sydney Institute of Agriculture, Faculty of Science, The University of Sydney, Sydney, NSW 2006, Australia
3
Complete Feed Solutions, Howick, Auckland 2145, New Zealand
4
Poultry Research Foundation, The University of Sydney, Camden, NSW 2570, Australia
5
Sydney School of Veterinary Science, The University of Sydney, Sydney, NSW 2006, Australia
*
Author to whom correspondence should be addressed.
Submission received: 8 March 2024 / Revised: 16 April 2024 / Accepted: 16 April 2024 / Published: 22 April 2024
(This article belongs to the Section Crop Production)

Abstract

:
Forty wheat samples of ten wheat varieties harvested from optimal or late sowings in 2019 and 2020 were evaluated for nutrient composition. This included crude protein (CP), starch, amino acids, minerals, phytate-phosphorus (phytate-P) and non-starch polysaccharides (NSPs). The objective was to investigate the impact of high temperature on wheat grain quality as a feedstuff for broiler chickens. Growth performance and economic impact of such changes were predicted by the Emmans, Fisher and Gous broiler growth model. On average, 2019 was 1 °C hotter than 2020 during the growing season (Narrabri, NSW 2390, Australia). The wheat harvested in 2019 had higher concentrations of CP, phytate-P, total P and calcium. In 2019, late sowing increased average protein concentrations from 166.6 to 190.2 g/kg, decreased starch concentration from 726 to 708 g/kg and increased total NSPs from 693 to 73.9 g/kg. Unlike the 2019 harvest, the late sowing in 2020 had no impact on CP concentrations in almost all wheat varieties. The 2019 varieties had higher concentrations of 16 assessed amino acids (p < 0.001) compared to the 2020 harvest. The largest difference was in lysine (19.2%), and the smallest difference was in proline (11.1%). It was predicted that broiler diets formulated from 2019 wheat varieties would have better efficiency of feed conversion with an advantage of 2.53% (1.539 versus 1.579) than 2020 varieties to 35 days post-hatch. This would translate to a cost saving of approximately AUD 16.45 per tonne of feed, much of which would represent additional profit.

1. Introduction

Wheat is the dominant feed grain in Australia for chicken meat production. Locally, the apparent metabolisable energy (AME) of wheat ranges from 10.35 to 15.9 MJ/kg for broiler chickens [1,2], and the protein content varies from 103 to 205 g/kg [3,4]. Typical wheat–soybean-meal-based broiler diets contain 550-650 g/kg wheat, which provides approximately one-third of dietary protein and two-thirds of dietary energy [3]. However, variations in wheat characteristics influence the nutritional value of wheat as a feedstuff for broiler chickens. Climate-related factors including drought, heat and elevated carbon dioxide levels may further increase variations in the yield and quality parameters in wheat grains [5,6,7]. The impacted quality parameters include grain size, grain number and weight along with many other factors such as mineral contents, protein and starch quantity and quality [4,7,8,9].
Ben Mariem et al. [5] concluded that heat stress may reduce starch synthesis by shortening both the duration of photosynthetic tissue and the grain growth period, thus reducing final grain weight; similarly, drought is expected to limit starch synthesis by reducing the production of photoassimilates and decreasing enzyme activity during starch synthesis in the endosperm. Consequently, protein content and certain mineral concentrations in grains are expected to increase as a percentage of the total grain dry mass [5]. Interestingly, heat stress and drought increase phytate concentrations, in contrast to the impact of increased CO2 levels [10]. Soluble non-starch polysaccharides (SNSPs) are an important anti-nutritive factor in wheat [11], and phytate is ubiquitous in all feed ingredients [12,13]. Presently, NSPs and phytate-degrading enzymes are routinely included in wheat-based poultry diets. However, published information on how heat stress influences NSP content in wheat and their economic consequences is limited. Therefore, the primary purpose of this study was to evaluate changes in nutrient composition in ten wheat varieties, sampled from two sowing times in 2019 and 2020. Typically, late-sown wheat is exposed to warmer temperatures in mid to late spring. The hypothesis is that year of harvest, sowing time and variety will all impact on the nutrient composition in wheat, and the impact of sowing time in 2019 would be greater than 2020 due to the hotter and drier weather experienced in 2019.

2. Materials and Methods

2.1. Wheat Sample Selection

The grain of 10 wheat varieties from the optimal (May) and late (June) sowing of the Plant Breeding Institute at the University of Sydney (Narrabri, NSW 2390, Australia) in both 2019 and 2020 (40 samples in total) was used for this study. Irrigation was applied to limit the confounding effects of moisture stress and to achieve as close to the long-term average for the location as possible. This eliminated the drought-stress factor so that only the high-temperature treatment is in effect. Minimum tillage was used to maintain soil integrity. Soil deficiencies or nutrient imbalances were not evident from annual soil nutrient testing. The experimental sites were fallowed over the summer months and rotated with a legume crop (chickpea) during alternate years to minimise disease outbreaks and to maintain soil integrity. Seasonal pests and diseases were rigorously controlled based on NSW Department of Primary Industries recommendations. The predominant soil type at the experimental site was a black Vertosol cracking clay with high water retention. The crops were adequately fertilised with urea [46% N] at 100 kg/ha and Cotton Sustain [5% N, 10% P, 21% K, 1% Z] at 80 kg/ha pre-planting. The details of crop management for heat-tolerant wheats are described in Ullah et al. [14]. The crop field experiment was an alpha lattice design (or simplified as a randomised complete block design) with two replicates. Table 1 summarises the 10 varieties and their heat tolerance rating, while Figure 1 shows the seasonal temperatures in different years and harvests.

2.2. Physico-Chemical Analyses

All wheat grains used for analysis were milled to a fine flour using a cyclone sample mill (UD Corporation, Boulder, CO, USA) and sieved through a 0.5 mm screen.
The Cielab L*, a* and b* values for the colour of the wheat grain were determined using a Minolta CR-310 Colorimeter (Minolta Co., Ltd., Osaka, Japan), and measurements were expressed as Commission Internationale de l’Eclairage L*, a* and b* (CIELAB) values [16].
The L* value is indicative of white as opposed to black, the a* value is indicative of red as opposed to green and the b* value is indicative of yellow as opposed to blue. The CIELAB colour test was completed in triplicate.
Chemical analyses were completed in duplicate except for analyses of NSPs and amino acids; all results are reported on a dry-matter basis.
Nitrogen in feed was determined by combustion analysis of an approximate 0.5 g sample in a combustion analyser (Leco model FP-2000 N Analyzer, Leco Corp., St. Joseph, MI, USA) using EDTA as a calibration standard, and CP content was calculated by multiplying nitrogen concentration by 6.25. The total starch content of the samples was analysed by using a method derived from Megazyme (Megazyme International Ireland Ltd., Wicklow, Ireland) and described in Mahasukhonthachat et al. [17]. Total fibre content was determined using a Megazyme test kit [18]. Phytate was analysed by the ferric chloride precipitation method as described in Miller et al. [19].
Minerals were analysed using inductively coupled plasma optical emission spectrometry (ICP-OES). Approx. 0.5 g of the sample was accurately weighed into a clean Teflon microwave digestion vessel. Then, 5 mL of concentrated analytical-grade nitric acid was added, and the sample was allowed to sit for 10 min. The vessel was then sealed, and the mixture was digested using a MAR S6 microwave digestion unit (CEM Co, Charlotte, NC, USA). The sample was heated to 180 °C for 20 min. After cooling to ambient temperature, the vessel was opened carefully and the contents washed into a 50 mL volumetric flask and made up to volume. This solution was then analysed by ICP-OES.
Amino acid concentrations in wheat were determined via 24 h liquid hydrolysis at 110 °C in 6 M HCl followed by analysis of 16 amino acids using the Waters AccQ•Tag Ultra Column on a Waters Acquity ultra-performance liquid chromatograph (UPLC; Waters Corporation, Milford, MA, USA).
The NSP composition was determined by gas chromatography (GC; Varian analytical instrument, Palo Alto, CA, USA) according to the method described by Englyst and Cummings [20] and reported on a dry-matter basis.
Starch-pasting profiles were determined by rapid visco-analysis (RVA) using an RVA-4 analyser (Newport Scientific, Warriewood, Australia) in a manner similar to that described by Beta and Corke [21]. Ground wheat grain (4.2 g) was mixed with deionised water (23.8 g) in a programmed heating and cooling cycle of 13 min. The slurry was held at a temperature of 50 °C for 1 min and then heated to 95 °C and held for 2.5 min prior to cooling the slurry to 50 °C and holding that temperature for 2 min. The speed of the mixing paddle was 960 rpm for 10 s and then 160 rpm for the remainder of the cycle. Peak viscosity, holding viscosity, final viscosity, breakdown viscosity (peak-holding) and setback viscosity (final-peak) were recorded as well as peak time and pasting temperature.
The Emmans, Fisher and Gous (EFG) broiler growth model (version 5.1, Stellenbosch, South Africa) was used to predict the growth performance of birds offered diets based on either 2019- or 2020-harvested wheats and formulated to meet 2022 Aviagen nutrient specifications for Ross 308 broiler chickens [22,23].

2.3. Statistical Analyses

The experimental data were analysed by two-way analysis of variance using the JMP® Pro 14.0 software package (SAS Institute Inc., JMP Software. Cary, NC, USA). The data were analysed using two-way analysis of variance (ANOVA) for each year. Variety and sowing time were considered as independent variables for the analysis of CP, crude fibre, starch, phytate-P, minerals and RVA-pasting properties. Two-way ANOVA was then used to analyse the combined dataset, where variety and year of harvest were considered as independent variables, to investigate differences among wheat colours and amino acid concentrations. One-way ANOVA was conducted using 2019 data, where both variety and year of harvest were considered independent variables separately, to study the difference in NSPs. Pearson correlations were then determined between colour and chemical compositions, and significance was considered at 5% by Tukey’s HSD test.

3. Results

The impacts of variety and year on wheat colour scores are reported in Table 2. There were significant differences between varieties (p < 0.001) for all three CIELAB colour scores. The 2020 wheats had lower a* (2.55 versus 2.33; p < 0.001) and b* (14.00 versus 13.66; p = 0.026) scores than 2019 wheat, but there was no difference in L* scores. Interaction between variety and year was not observed. Zanzibar wheat had the lowest L* (81.67) and highest a* (3.20) value compared to all other wheat varieties (p < 0.001). Coolah, Cutlass, EGA-Gregory, Trojan and Zanzibar had statistically higher b* than Borlaug, Livingston and Mitch (p < 0.001).
Table 3 shows the impacts of cultivar and sowing time on CP, crude fibre, starch, phytate-P and concentrations of nine minerals in 2019-harvested wheats. Overall, concentrations of CP, crude fibre, starch and phytate-P averaged 178.4 g/kg (151.4 to 195.1), 15.0 g/kg (10.8 to 17.9), 716.9 g/kg (659.3 to 774.6) and 4.0 g/kg (2.7 to 4.6), respectively, with the ranges shown in parentheses. Significant interactions between cultivar and sowing time were observed for all parameters determined, other than starch and copper concentrations.
Significant differences in CP between optimal and late sowings were detected in all varieties except Zanzibar. On average, late sowing significantly increased CP concentrations by 23.6 g/kg (190.2 versus 166.6 g/kg), with the largest increase of 43.1 g/kg (194.5 versus 151.4 g/kg) observed in EGA-Gregory.
Significant increases in crude fibre contents under late sowing were observed in EGA-Gregory (12.0 versus 14.1 g/kg), Lancer (11.9 versus 13.3 g/kg) and Mitch (16.0 versus 17.9 g/kg).
There was no treatment interaction for starch content; however, late sowing significantly decreased starch concentrations from 725.8 to 708.0 g/kg. Regardless of sowing time, Coolah generated the highest starch content (761.1 g/kg), and Lancer the lowest (677.2 g/kg).
Late sowing significantly increased phytate-P concentrations only in Coolah (2.7 versus 3.9 g/kg,) and Livingston (3.3 versus 4.2 g/kg). Late sowing significantly increased total P concentrations in Cutlass, Dart, EGA-Gregory, Lancer, Livingston, Mitch and Zanzibar. The largest increase in total P concentrations (3.65 versus 4.72 g/kg) from late sowing was observed in Livingston.
Late sowing significantly increased calcium (Ca) concentrations in all wheat varieties except Coolah, Lancer and Zanzibar, where late sowing decreased Ca concentrations in Coolah (0.815 versus 0.724 g/kg) but did not influence Ca concentrations in Lancer and Zanzibar. The largest increase (0.584 versus 0.745 g/kg) in Ca concentration under late sowing was detected in Borlaug.
Late sowing decreased ferrous (Fe) concentrations in Coolah wheat and increased Fe concentrations in Cutlass, EGA-Gregory and Zanzibar wheats. Late sowing increased potassium (K) concentrations in all wheat varieties except Coolah, Mitch and Zanzibar, and the largest increase was observed in Dart (2.47 versus 3.30 g/kg). Similarly, late sowing significantly increased magnesium (Mg) concentrations in all wheat varieties except Coolah, Lancer and Mitch. Late sowing increased manganese (Mn) concentrations in all varieties except Coolah, with the largest increase (27.0%) observed for Zanzibar (0.055 versus 0.070 g/kg).
Late sowing consistently increased sodium (Na) concentrations in all wheat varieties except Coolah, Cutlass and Lancer, to significant extents, and the largest increase (0.132 versus 0.213 g/kg) was observed for Livingston.
Late sowing decreased zinc (Zn) concentrations in Coolah (0.027 versus 0.020 g/kg) but increased Zn in all other varieties (p < 0.001).
There was no treatment interaction for copper (Cu) concentrations, but wheat variety significantly influenced Cu concentration. Borlaug had the highest Cu concentration (0.010 g/kg), and Trojan and Livingstone had the lowest (0.006 g/kg).
Table 4 summarises the impact of variety and sowing period on crude protein, crude fibre, starch, phytate and mineral concentrations of samples harvested in 2020.
Significant treatment interactions were observed for all parameters assessed other than starch. Cooler temperature prevailed in 2020 in comparison to 2019. The time of sowing did not influence CP concentrations in all wheat varieties other than Zanzibar, where late sowing significantly decreased CP content from (170.5 versus 141.2 g/kg). Late sowing significantly increased fibre content in Coolah, EGA-Gregory and Lancer but did not influence phytate and starch content in any of the varieties.
In 2020, late sowing significantly reduced Ca concentrations in Borlaug (0.613 versus 0.508 g/kg), Coolah (0.824 versus 0.636 mg/kg), Mitch (0.665 versus 0.531 g/kg) and Zanzibar (0.650 versus 0.514 g/kg) but did not influence Ca concentrations in other wheats. Late sowing significantly reduced the concentrations of Fe, Na, P and Zn in Coolah (p < 0.001). However, late sowing significantly increased Fe concentrations in Borlaug, EGA-Gregory, Lancer, Trojan and Zanzibar; K concentrations in Borlaug, EGA-Gregory, Lancer and Trojan; Mg concentrations in EGA-Gregory, Livingston and Trojan; Mn concentrations in EGA-Gregory and Livingston; Na concentrations in Cutlass, Dart, Trojan and Zanzibar; and P concentrations in Dart, EGA-Gregory, Lancer, Livingston, and Trojan (p < 0.001). Late sowing significantly increased Zn concentrations in all wheats except Coolah, Dart and Mitch.
The effects of variety and sowing time on RVA starch-pasting properties are presented in Table 5. Again, significant treatment interactions between variety and sowing time were observed for all RVA starch-pasting parameters in both years. In 2019, late sowing significantly reduced pasting temperature in Borlaug. Late sowing significantly increased peak viscosities in Coolah and Mitch, but decreases were observed in Cutlass, EGA-Gregory and Trojan. Late sowing significantly increased final viscosities in Dart, EGA-Gregory, Livingston and Trojan.
In 2020, late sowing significantly increased pasting temperatures in Cutlass and Zanzibar, but a decrease was observed in Dart. Peak viscosities were significantly elevated by late sowing in Borlaug, Dart and Mitch but were decreased in Coolah, EGA-Gregory and Livingston. Late sowing significantly increased final viscosities in Borlaug, Coolah, Lancer, Mitch and Trojan wheats, but decreases were observed in Dart and Livingston.
The impact of variety and sowing period on NSP and sugar concentrations in 2019-harvested wheats is shown in Table 6. Wheat variety significantly influenced all assessed parameters with the exceptions of total galactose and soluble xylose. In contrast, significant effects of sowing period were confined to total NSPs, arabinose and xylose concentrations.
Soluble NSP (SNSP) concentrations were lowest in Livingstone (9.2 g/kg) and Borlaug (9.9 g/kg), and both Coolah (13.8 g/kg) and Dart (13.9 g/kg) were significantly higher. The remaining wheats contained intermediate amounts of SNSPs. Dart had the highest total NSP concentration (77.6 g/kg) and Trojan the lowest (65.2 g/kg). Compared to early sowing, late sowing significantly increased total NSPs (69.3 versus 73.9 g/kg) but did not influence total SNSP content (p > 0.75).
The overall impact of the year of harvest on the composition and RVA profiles of wheat is shown in Table 7. Overall, 2019 was a much hotter year than 2020, and 2019 wheats had higher concentrations of CP (178.4 versus 150.2 g/kg, p < 0.001), phytate-P (3.9 versus 3.7 g/kg, p = 0.033), Ca (0.722 versus 0.650 g/kg, p < 0.001), Fe (0.045 versus 0.041 g/kg, p = 0.020), Mg (1.45 versus 1.36 g/kg), Na (0.153 versus 0.145 g/kg, p = 0.036), P (4.37 versus 4.15 g/kg, p = 0.023), Zn (0.032 versus 0.026 mg/kg, p < 0.001) and Cu (0.0074 versus 0.0066 g/kg, p < 0.001). In contrast, 2020-harvested wheats contained higher concentrations of starch content (742.4 versus 716.9 g/kg, p < 0.001), K (3.27 versus 3.04 g/kg; p = 0.012) and Mn (0.054 versus 0.051 g/kg, p = 0.033) than 2019 wheats. Significant differences in RVA profiles were confined to final viscosity, where 2020 wheats were higher (1860 versus 1778 cP; p = 0.040), and peak time, where 2020 wheats had shorter peak times (5.27 versus 5.32 min; p = 0.039).
The influence of variety and year on essential amino acid concentrations is shown in Table 8, where variety had no statistical effects and treatment interactions were not observed. Predictably, the 2019-harvested wheats had higher concentrations of essential amino acids than 2020 (p < 0.001). In descending order, the 2019 wheats contained 20.7% more phenylalanine, 18.8% isoleucine, 17.9% leucine, 16.5% threonine, 16.3% valine, 15.8% histidine, 15.0% arginine, 14.5% methionine and 12.3% lysine than 2020 wheats.

4. Discussion

Pearson correlations of selected parameters in all wheat varieties from both harvest years are shown in Table 9. Crude protein concentrations were positively correlated with phytate-P (r = 0.548; p < 0.001) and total P (r = 0.605; p < 0.001) and negatively correlated with starch (r = −0.571; p < 0.001). Starch was negatively correlated with total P (r = −0.487; p = 0.001), and phytate-P was positively correlated with total P (r = 0.582); p < 0.001). The inverse relationship between CP and starch is predictable. The positive relationship between CP and phytate-P is of interest to starch. Raboy et al. [24] reported that protein and phytate content in winter wheat were highly correlated; in contrast, Ma et al. [25] found this was not the case in Chinese winter wheats. In the present study, the linear regression equation was y= 1.969 + 0.0014 X CP, and the relationship between CP and phytate-P was highly significant (p = 0.000253). One possible implication is that the breeding of low-phytate wheat cultivars could compromise their protein contents. Again, the positive relationship between phytate-P and total P was anticipated and has been previously reported by Selle et al. [26]
Globally, wheat is the second most commonly used feed grain for livestock and poultry, and in Australia, wheat is dominant in chicken meat production. Thus, differences in protein and amino acid contents in wheat could have economic consequences as imported soybean meal, the key source of protein/amino acids, is an expensive commodity in Australia. To illustrate the potential economic impact, starter, grower, finisher and withdrawal diets based on 2019- or 2020-harvested wheats were formulated to meet 2022 Ross 308 nutrient specifications as shown in Table 10. The EFG broiler growth model was used to predict the broiler growth performance that these diets would support.
The predicted growth performance at 29, 35, 42 and 49 days post-hatch are reported in Table 11. Importantly there was a four-point advantage in FCR at 35 days post-hatch in favour of the 2019 wheats when mean predicted body weight was 2644 g/bird, which is close to the average live body weight of birds processed in Australia. The advantage of four points in FCR can be expressed as an improvement of 2.53% (1.539 versus 1.579) in FCR. Given that the landed cost of a broiler diet at a grow-out facility in the order of AUD 650 per tonne, an FCR improvement of 2.53% translates to a saving of AUD 16.45 per tonne of feed. Moreover, as feed cost represents a substantial proportion of total costs, much of this saving becomes additional profit.

5. Conclusions

In conclusion, there were significant impacts of climate-induced factors on the nutritive properties of wheat where high temperature is more likely to increase CP and amino acid content, decrease starch concentration and increase phytate and total NSP levels, but not the soluble NSP content. There was no obvious trend that heat-tolerant wheat varieties are more resilient to the impact of environmental temperatures on nutrient compositions. More inter-disciplinary research between nutritionists and plant breeders is required to optimise yield and quality.

Author Contributions

S.Y.L. and D.K.Y.T. were the principal investigators of the relevant project, and S.Y.L. is the corresponding author. A.K. contributed to experimental design, sample selection, editing, supervision, nutrient and data analyses. V.M. contributed to nutrient analyses. D.K.Y.T. contributed to sample selection, experimental design and validation. P.V.C. contributed to broiler model prediction and economic analysis. R.A.C. contributed to phytate analyses. M.T. contributed to experimental design and NSP analyses. R.T. (Richard Trethowan) and R.T. (Rebecca Thistlethwaite) contributed to experiment design, wheat sample collection and selection. S.M. contributed to nutrient analyses. Y.B. contributed to crop field weather data collection. P.H.S. contributed to experimental design, data analyses and editing the original manuscript. S.Y.L. contributed to experimental design, data analyses and drafting original manuscript. All authors have read and agreed to the published version of the manuscript.

Funding

The research and APC was funded by School of Life and Environmental Sciences, Faculty of Science, The University of Sydney.

Institutional Review Board Statement

Not applicable.

Data Availability Statement

The raw data supporting the conclusions of this article will be made available by the authors on request.

Acknowledgments

We would like to thank the 2021 School of Life and Environmental Sciences for supporting this project.

Conflicts of Interest

Author Peter V. Chrystal was employed by the company Complete Feed Solutions. The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Abbreviations

Non-starch polysaccharides (NSPs); soluble non-starch polysaccharides (SNSPs); feed conversion ratio (FCR); apparent metabolisable energy (AME); thousand kernel weight (TKW); inductively coupled plasma optical emission spectrometry (ICP-OES); ultra-performance liquid chromatography (UPLC); gas chromatography (GC); rapid visco-analysis (RVA); analysis of variance (ANOVA); phytate-phosphorus (phytate-P); calcium (Ca); ferrous (Fe); copper (Cu); zinc (Zn); phosphorus (P); sodium (Na); manganese (Mn); magnesium (Mg); crude protein (CP); amylase trypsin inhibitors (ATI).

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Figure 1. Temperatures and time of sowing (TOS) for Narrabri in 2019 and 2020. TOS1: third week of May 2019 and 2020; TOS2: second and third week of July 2019 and 2020.
Figure 1. Temperatures and time of sowing (TOS) for Narrabri in 2019 and 2020. TOS1: third week of May 2019 and 2020; TOS2: second and third week of July 2019 and 2020.
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Table 1. The summary of wheat variety, thousand kernel weight (TKW), pollen viability and heat tolerance rating [15].
Table 1. The summary of wheat variety, thousand kernel weight (TKW), pollen viability and heat tolerance rating [15].
VarietyField YieldChamber YieldThousand Kernel Weight (TKW)ScreeningsPollen ViabilityHeat Tolerance Rating
BorlaugHighNo dataHighModerateNo dataMedium
CoolahHighModerateLowModerateLowMedium
Cutlass ModerateLowModerateLowHighMedium
DartHighModerateModerateLowModerateTolerant
EGA-GregoryModerateNo dataHighModerateNo dataMedium
LancerLowModerateModerateLowModerateMedium
LivingstonModerateNo dataModerateLowNo dataMedium
MitchModerateNo dataHighModerateNo dataMedium
TrojanModerateModerateModerateHighLowSensitive
ZanzibarLowHighLowHighHighSensitive
Table 2. The effect of variety and year on wheat colour (L*, a* and b*).
Table 2. The effect of variety and year on wheat colour (L*, a* and b*).
VarietyYearL*a*b*
Borlaug201985.772.3613.21
Borlaug202085.602.1112.96
Coolah201984.852.8914.60
Coolah202085.552.4013.87
Cutlass 201984.662.6415.09
Cutlass 202084.072.3914.95
Dart201985.882.3514.12
Dart202086.112.0113.14
EGA-Gregory201985.472.6414.78
EGA-Gregory202084.752.4314.91
Lancer201986.252.2313.52
Lancer202085.272.4113.78
Livingston201985.592.3913.15
Livingston202086.532.0911.76
Mitch201985.912.4412.91
Mitch202086.082.1912.42
Trojan201985.442.2314.40
Trojan202084.662.3114.93
Zanzibar201981.263.3914.17
Zanzibar202082.083.0013.86
Standard Error of the Mean (SEM) 0.3860.1250.334
Main effect (variety)
Borlaug 85.69 a2.24 c13.09 cde
Coolah 85.20 ab2.64 b14.24 ab
Cutlass 84.37 b2.51 bc15.02 a
Dart 85.99 a2.18 b13.63 bcd
EGA-Gregory 85.11 ab2.53 bc14.85 a
Lancer 85.76 a2.32 bc13.65 bcd
Livingston 86.06 a2.24 bc12.46 e
Mitch 86.00 a2.31 bc12.67 de
Trojan 85.05 ab2.27 bc14.66 ab
Zanzibar 81.67 c3.20 a14.02 abc
Year
2019 85.112.55 a14.00 a
2020 85.072.33 b13.66 b
P-Value
Variety <0.001<0.001<0.001
Year 0.823<0.0010.026
Variety × Year 0.0970.2270.146
Twenty treatments = 10 varieties × 2 years of harvest; number of replications = 4. Means followed by the same letter within a column are not significantly different at p = 0.05.
Table 3. The impacts of variety and sowing period on crude fibre, protein, starch, phytate and minerals from the 2019 wheat harvest.
Table 3. The impacts of variety and sowing period on crude fibre, protein, starch, phytate and minerals from the 2019 wheat harvest.
VarietySowing g/kg
Crude ProteinCrude FiberStarchPhytate-PCaFeKMgMnNaPZnCu
BorlaugEarly167.9 fg15.6 efg715.44.0 abcde0.584 i0.051 bc2.37 h1.33 fg0.044 hi0.124 i4.08 ghi0.029 g0.010
BorlaugLate192.1 abc16.4 bcde673.33.5 ef0.745 cde0.054 b3.04 defg1.54 bcd0.055 cd0.145 efgh4.64 cde0.038 bc0.009
CoolahEarly152.0 h15.7 defg747.62.7 g0.815 abc0.040 fgh3.16 cdefg1.49 cde0.050 efg0.135 ghi3.95 hi0.027 ghi0.008
CoolahLate185.2 abcd15.3 fg774.63.9 bcdef0.724 def0.035 i3.23 cde1.26 g0.047 gh0.133 ghi4.00 ghi0.020 k0.007
Cutlass Early160.8 gh15.7 defg746.13.8 bcdef0.744 de0.043 ef2.92 g1.38 efg0.051 def0.133 ghi4.25 fg0.034 ef0.008
Cutlass Late183.2 bcde16.6 bcd739.03.9 bcde0.816 ab0.049 c3.34 c1.56 bcd0.061 b0.143 fgh4.85 bc0.040 ab0.008
DartEarly167.1 fg14.7 gh772.43.8 cdef0.776 bcd0.042 efg2.47 h1.31 g0.045 hi0.148 efg3.95 hi0.029 g0.008
DartLate190.4 abcd15.6 defg734.14.4 abc0.854 a0.045 de3.30 cd1.60 bc0.052 cde0.170 bcd4.55 de0.033 f0.008
EGA-GregoryEarly151.4 h12.0 j726.13.8 cdef0.646 ghi0.035 i2.49 h1.27 g0.043 i0.144 fgh3.83 ij0.025 hij0.007
EGA-GregoryLate194.5 b14.1 hi719.64.2 abcd0.778 bcd0.042 efg3.20 cdef1.58 bcd0.053 cde0.165 bcd4.65 cde0.035 def0.008
LancerEarly179.8 de11.9 j695.24.0 abcde0.622 ghi0.047 cd2.64 h1.54 bcd0.053 cde0.160 cde4.39 ef0.028 gh0.007
LancerLate195.1 a13.3 i659.34.5 ab0.688 efg0.050 bc2.94 fg1.66 ab0.064 b0.157 def5.03 b0.041 a0.007
LivingstonEarly172.7 ef16.1 cdef715.33.3 fg0.664 fgh0.037 hi2.55 h1.28 g0.048 fgh0.132 hi3.65 j0.024 j0.006
LivingstonLate193.8 ab16.8 bc702.24.2 abcd0.833 ab0.039 fghi3.29 cd1.54 bcd0.056 c0.213 a4.72 cd0.041 a0.007
MitchEarly163.1 fg16.0 cdef737.73.9 bcdef0.681 efgh0.038 ghi2.95 fg1.25 g0.036 j0.142 fgh3.93 hij0.025 ij0.007
MitchLate193.4 ab17.9 a685.44.5 ab0.771 bcd0.042 efg3.20 cdef1.35 fg0.047 gh0.180 b4.55 de0.033 ef0.008
TrojanEarly164.5 fg10.8 k721.13.7 def0.672 fgh0.042 efg2.98 efg1.25 g0.043 i0.138 ghi3.89 hij0.026 hij0.006
TrojanLate182.5 cde11.7 jk712.83.9 bcdef0.780 bcd0.045 de3.8 a1.45 def0.051 efg0.167 bcd4.14 fgh0.036 cde0.006
ZanzibarEarly187.2 abcd16.7 bc680.74.3 abcd0.626 ghi0.051 bc3.37 bc1.51 cde0.055 cd0.158 def4.77 bcd0.037 cd0.007
ZanzibarLate192.1 abc17.3 ab679.24.6 a0.612 hi0.063 a3.64 ab1.78 a0.070 a0.176 bc5.54 a0.040 ab0.008
Standard Error of the Mean (SEM) 0.1730.01891.4830.01212.320.76647.924.70.7132.7350.60.4560.380
Main effect (variety)
Borlaug 180.016.0694.4 bc3.70.6650.0522.711.440.0490.1354.360.0340.009 a
Coolah 168.615.5761.1 a3.30.7690.0373.201.380.0480.1343.980.0240.007 bc
Cutlass 172.016.1742.6 ab3.90.7800.0463.131.470.0560.1384.550.0370.008 ab
Dart 178.715.2753.2 a4.10.8150.0432.891.450.0490.1594.250.0310.008 b
EGA-Gregory 173.013.1722.8 abc4.00.7120.0392.851.420.0480.1554.240.0300.008 bc
Lancer 187.512.6677.2 c4.20.6550.0492.791.600.0590.1584.710.0340.007 bc
Livingston 183.216.4708.8 abc3.70.7480.0382.921.410.0520.1724.180.0330.007 bc
Mitch 178.216.9711.5 abc4.20.7260.0403.071.300.0420.1614.240.0290.007 bc
Trojan 173.511.3717.0 abc3.80.7260.0443.391.350.0470.1524.020.0310.006 c
Zanzibar 189.617.0679.9 c4.50.6190.0573.501.650.0620.1675.150.0390.008 bc
Sowing period
Early 166.614.5725.8 a3.70.6830.0432.791.360.0470.1414.070.0290.007
Late 190.215.5708.0 b4.20.7600.0463.301.530.0550.1654.670.0360.007
p-Value
Variety <0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001
Sowing period <0.001<0.0010.014<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.0010.679
Variety × Year <0.001<0.0010.297<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.0010.178
Twenty treatments = 10 varieties × 2 sowings; number of replications = 2. Means followed by the same letter within a column are not significantly different at p = 0.05.
Table 4. The impact of variety and sowing period on crude fibre, protein, starch, phytate and minerals from the 2020 wheat harvest.
Table 4. The impact of variety and sowing period on crude fibre, protein, starch, phytate and minerals from the 2020 wheat harvest.
VarietySowing g/kg
Crude ProteinCrude FibreStarchPhytateCaFeKMgMnNaPZnCu
BorlaugEarly153.8 bcd16.00 abc734.93.5 cdef0.613 ghi0.046 cd2.47 i1.23 ghij0.052 def0.126 i3.91 gh0.027 efg0.007 abcd
BorlaugLate151.8 bcde16.10 abc743.83.8 abcdef0.508 k0.052 a2.96 h1.36 defg0.057 abcd0.126 i4.11 efgh0.030 bc0.007 abc
CoolahEarly146.8 def14.25 ef703.73.6 bcdef0.824 a0.041 fgh2.97 h1.32 efgh0.050 efg0141 efg4.24 def0.03 3a0.007 abcd
CoolahLate146.5 def15.98 abc722.53.6 abcdef0.636 fgh0.032 k3.06 fgh1.26 fghi0.051 ef0.131 hi3.59 ij0.017 k0.006 abcde
CutlassEarly144.4 efg15.45 bcde751.94.0 abc0.774 abc0.041 fgh3.51 bcde1.41 bcde0.057 bcd0.135 gh4.3 cdef0.029 cde0.007 abcd
CutlassLate152.1 bcde15.35 cde778.93.6 abcdef0.793 ab0.042 defg3.41 cdef1.42 bcde0.062 ab0.160 bc4.55 abcd0.025 fgh0.007 abcd
DartEarly151.6 bcde16.04 abc762.14.1 ab0.739 bcd0.046 cde2.91 h1.49 abcd0.055 cde0.129 i4.31 cdef0.030 cd0.008 ab
DartLate160.3 b16.79 a747.13.9 abcde0.726 bcde0.043 def2.96 h1.60 a0.058 abc0.137 fgh4.71 a0.029 cde0.008 a
EGA-GregoryEarly146.0 def12.85 gh715.23.6 abcdef0.681 defg0.032 k3.06 gh1.32 efgh0.047 fgh0.158 cd3.92 gh0.024 hi0.006 abcde
EGA-GregoryLate148.6 cdef14.50 def686.13.4 ef0.703 cdef0.039 ghi3.49 bcde1.51 abc0.055 cde0.152 d4.37 bcde0.027 def0.007 abc
LancerEarly159.7 b10.41 j710.64.0 abcd0.550 ijk0.044 def2.99 h1.42 bcde0.060 ab0.146 e4.22 efg0.025 gh0.007 abcde
LancerLate159.4 b13.49 fg716.64.2 a0.586 hij0.051 ab3.38 defg1.51 abc0.061 ab0.145 e4.69 ab0.033 a0.007 abcd
LivingstonEarly154.2 bcd16.05 abc780.43.8 abcdef0.553 ijk0.036 ij2.91 h1.12 j0.053 de0.127 i3.59 ij0.020 j0.006 cde
LivingstonLate156.1 bc16.59 abc747.44.0 abcde0.620 ghi0.039 ghi3.20 efgh1.55 ab0.062 a0.131 hi4.58 abc0.026 fgh0.006 abcde
MitchEarly135.8 g16.65 ab763.23.6 bcdef0.665 defg0.034 jk3.54 bcde1.23 ghij0.044 h0.164 ab4.11 efgh0.025 fgh0.007 abcde
MitchLate139.6 fg16.28 abc763.53.4 def0.531 jk0.034 jk3.26 efgh1.17 ij0.046 gh0.158 bcd3.81 hi0.025 fgh0.007 abcde
TrojanEarly143.4 efg11.02 ij750.33.3 f0.662 efg0.038 hij3.78 b1.18 hij0.051 efg0.143 ef3.47 j0.021 j0.005 e
TrojanLate142.3 fg11.99 hi756.63.3 f0.670 defg0.042 defg4.16 a1.38 cdef0.054 cde0.155 cd4.03 fgh0.026 fgh0.006 bcde
ZanzibarEarly170.5 a1..69 abcd752.54.0 abc0.650 fgh0.048 bc3.76 bc1.41 bcde0.059 abc0.168 a4.36 cde0.033 ab0.007 abcde
ZanzibarLate141.2 fg15.93 abc760.84.2 a0.514 jk0.042 efg3.66 bcd1.38 cdef0.055 cde0.160 bc4.13 efg0.021 ij0.005 de
Standard Error of the Mean (SEM) 0.1610.02261.6730.01013.070.64362.724.70.9042.1455.10.4580.300
Main effect (variety)
Borlaug 152.816.05739.3 ab3.60.5610.0492.711.300.0540.1264.010.0280.007
Coolah 146.715.12713.1 ab3.60.7300.0373.011.290.0510.1363.920.0250.007
Cutlass 148.215.40765.4 a3.80.7840.0423.461.410.0590.1484.420.0270.007
Dart 156.016.41754.6 ab4.00.7320.0452.931.540.0560.1334.510.0290.008
EGA-Gregory 147.313.68700.7 b3.50.6920.0363.271.410.0510.1554.140.0250.007
Lancer 159.511.95713.6 ab4.10.5680.0473.181.470.0600.1454.450.0290.007
Livingston 155.116.32763.9 a3.90.5860.0383.051.330.0570.1294.090.0230.006
Mitch 137.716.46763.4 a3.50.5980.0343.401.200.0450.1613.960.0250.007
Trojan 142.811.51753.4 ab3.30.6670.0403.971.280.0520.1493.750.02350.006
Zanzibar 155.815.81756.6 ab4.10.5820.0453.711.400.0570.1644.250.0270.006
Sowing period
Early 150.614.44742.53.80.6710.0413.1891.310.0530.1444.040.0270.007
Late 149.815.30742.33.70.6290.0423.3541.410.0560.1454.260.0260.007
p-Value
Variety <0.001<0.0010.003<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001
Sowing period 0.267<0.0010.9850.850<0.0010.001<0.001<0.001<0.0010.091<0.0010.0120.296
Variety × Year <0.001<0.0010.7100.039<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.0010.033
Twenty treatments = 10 varieties × 2 sowings; number of replications = 2. Means followed by the same letter within a column are not significantly different at p = 0.05.
Table 5. The impact of variety and sowing period on RVA starch-pasting properties from the 2019 and 2020 wheat harvests.
Table 5. The impact of variety and sowing period on RVA starch-pasting properties from the 2019 and 2020 wheat harvests.
2019 Harvest2020 Harvest
Pasting Temp.Starch Viscosity (cP)Peak TimePasting Temp.Starch Viscosity (cP)Peak Time
VarietySowing°CPeakTroughBreakdownFinalSetback(min)°CPeakTroughBreakdownFinalSetback(min)
BorlaugEarly86.4 a1075 fg798 efgh277 f1735 de937 cdef5.29 bcd74.3 bc940 j741 fg284 hij1459 l863 h4.91 d
BorlaugLate63.0 b1160 f884 bcde277 f1824 cd940 cdef5.23 d68.6 cd1211 fg803 ef408 f1762 ghij957 cdefgh5.29 abc
CoolahEarly81.6 ab1465 d911 bc554 cd1910 bc999 abc5.24 cd84.4 ab1665 b862 de803 a1805 fghi943 defgh5.32 abc
CoolahLate80.3 ab1597 bc911 bc686 b1822 cd911 defg5.38 abcd84.8 ab1450 de914 cd546 de2014 abc1051 abc5.32 abc
Cutlass Early75.4 ab1510 cd953 b576 cd1957 b988 bcd5.38 abcd63.3 cde1432 de928 cd509 e1995 bcd1072 ab5.29 abc
Cutlass Late69.8 ab1347 e895 bcd452 e1852 bcd957 bcde5.25 cd84.0 ab1459 cd904 cd601 cd1924 cdef1015 abcdef5.25 abc
DartEarly88.0 a1071 fg878 bcde204 fghi1837 bcd1009 abc5.42 abcd87.6 a649 k396 h253 ijk1852 efgh586 i5.12 cd
DartLate86.4 a1024 gh770 ghi254 fg1638 ef868 fgh5.22 d58.4 de1151 gh811 ef345 fgh1643 jk882 gh5.15 bc
EGA-GregoryEarly69.5 ab1897 a1067 a830 a2099 a1032 ab5.51 a84.4 ab1868 a1032 a836 a2069 ab1037 abcd5.42 a
EGA-GregoryLate74.2 ab1471 d853 cdefg618 bc1729 de876 efgh5.31 abcd84.0 ab1598 b951 abc648 bc1964 bcde1014 abcdef5.35 ab
LancerEarly79.5 ab990 ghi773 fghi123 i1654 ef932 cdef5.49 ab88.1 a1091 ghi879 cde212 jk1873 defg974 bcdefg5.32 abc
LancerLate83.9 ab1005 gh840 cdefgh218 fgh1846 bcd1006 abc5.39 abcd87.6 a1103 ghi897 cd209 jk2004 abc1022 abcde5.42 a
LivingstonEarly86.9 a996 ghi786 fghi210 fgh1685 e900 efgh5.29 bcd87.6 a1323 ef937 bcd386 fg2007 abc1070 ab5.37 a
LivingstonLate86.7 a895 ij707 i188 ghi1536 f829 h5.25 cd86.1 ab1022 hij801 ef221 jk1722 ij921 fgh5.22 abc
MitchEarly70.3 ab822 j698 i125 i1529 f831 gh5.29 bcd87.3 a930 j748 fg182 k1652 jk904 gh5.32 abc
MitchLate86.4 a1032 gh819 defgh223 fgh1683 e874 fgh5.24 cd84.1 ab1197 fg961 abc236 jk2085 ab1095 a5.29 abc
TrojanEarly87.1 a1634 b1070 a564 cd2145 a1075 a5.25 cd83.0 ab1590 bc942 bcd648 bc1939 cde1057 ab5.25 abc
TrojanLate85.2 ab1342 e861 cdef531 de1742 de881 efgh5.22 d55.6 e1687 b1015 ab692 b2128 a1083 a5.22 abc
ZanzibarEarly88.0 a957 hi811 defgh161 hi1724 de914 def5.45 abc51.5 e1018 ij687 g319 ghi1571 hij878 gh5.27 abc
ZanzibarLate69.0 ab1022 gh760 hi258 fg1627 ef888 efgh5.35 abcd86.1 ab1058 hij803 ef249 ijk1732 ij937 efgh5.35 ab
Standard Error of the Mean (SEM) 3.9618.615.614.922.614.30.0382.2323.115.013.921.917.10.037
Main effect (variety)
Borlaug 74.7111784127717799395.2671.4107577234616109105.10
Coolah 81.0153191162018669555.3184.6155788867519099975.32
Cutlass 72.6142892451419049725.3273.61445916555195910435.27
Dart 87.2104882422917379385.3273.090060429917487345.14
EGA-Gregory 71.8168496072419149545.4184.21733991742201610255.38
Lancer 81.799880617017509695.4487.8109788821019389985.37
Livingston 86.894574619916108645.2786.9117386930418649955.29
Mitch 78.392775817416068525.2685.7106385420918699995.30
Trojan 86.1148896654819439785.2369.31638978670203310705.23
Zanzibar 78.598978520916769015.4068.8103874528416519075.31
Sowing period
Early 81.3124187436218279615.3679.1125081544318229385.26
Late 78.5118983037017309035.2877.9129388641518989975.28
p-Value
Variety 0.004<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001
Sowing period 0.130<0.001<0.0010.237<0.001<0.001<0.0010.241<0.001<0.001<0.001<0.001<0.0010.120
Variety × Year 0.004<0.001<0.001<0.001<0.001<0.0010.013<0.001<0.001<0.001<0.001<0.001<0.001<0.001
Twenty treatments = 10 varieties × 2 sowings; number of replications = 2. Means followed by the same letter within a column are not significantly different at p = 0.05.
Table 6. The main effect of variety and sowing period on NSP and sugar concentrations from the 2019 wheat harvest (g/kg).
Table 6. The main effect of variety and sowing period on NSP and sugar concentrations from the 2019 wheat harvest (g/kg).
TotalSoluble
VarietyTotal NSPs Total SNSPsFree SugarRiboseArabinoseXyloseMannoseGalactoseRiboseArabinoseXyloseMannoseGalactose
Borlaug70.7 ab9.9 b21.1 ab0.25 abc23.8 ab28.8 b2.63.10.25 abc3.1 c3.21.3 bc1.9 b
Coolah73.9 ab13.8 a21.4 ab0.27 ab25.8 ab34.3 a2.13.00.27 abc4.7 a6.71.2 bc1.7 bcd
Cutlass69.9 ab10.6 ab20.5 b0.16 bc24.0 ab30.4 ab1.93.10.16 bc3.7 abc4.80.8 c1.7 bcd
Dart77.6 a13.9 a21.5 ab0.28 a26.6 a34.2 a2.62.40.28 ab4.8 a4.61.9 a2.4 a
Lancer68.2 ab11.8 ab26.2 a0.33 a 25.3 ab29.8 ab2.03.00.33 a4.4 ab4.91.0 c1.8 bc
Livingston72.7 ab9.2 b19.8 b0.15 c24.9 ab30.7 ab2.13.00.15 c2.9 c3.90.9 c1.4 d
Mitch75.3 a10.4 ab20.4 b0.29 a26.8 a31.9 ab2.23.10.29 a3.6 bc3.91.2 bc1.7 bcd
Trojan65.2 b11.1 ab20.3 b0.34 a22.9 b28.7 b2.13.20.34 a4.0 abc4.21.1 bc1.7 bcd
Zanzibar70.9 ab11.8 ab23.2 ab0.15 bc24.1 ab32.0 ab3.02.90.15 c3.8 abc5.31.5 ab1.5 cd
Sowing period
Early69.3 a11.521.10.2324.0 a30.1 a2.22.90.233.94.71.21.7
Late73.9 b11.322.20.2625.8 b32.3 b2.43.00.363.94.61.21.8
p-Value
Variety0.0190.0060.0280.0350.0110.0090.3760.2150.0350.0020.0990.003<0.001
Sowing period0.0030.7980.1270.2480.0010.0040.5080.3560.2480.7720.8130.8510.148
Eighteen treatments = 9 varieties × 2 sowing periods; number of replications = 2. There was not enough quantity to conduct analyses on all 10 varieties, and there is no significant treatment interaction; hence, only main effects are shown. Means followed by the same letter within a column are not significantly different at p = 0.05.
Table 7. The overall impact of year on chemical compositions in wheat.
Table 7. The overall impact of year on chemical compositions in wheat.
YearCrude ProteinCrude FibreStarchPhytate-PCaFeKMgMnNa
g/kgg/kgg/kgg/kgg/kgg/kgg/kgg/kgg/kgg/kg
2019178.4 a150.1716.9 b3.9 a0.722 a0.045 a3.04 b1.45 a0.051 b0.153 a
2020150.2 b148.7742.4 a3.7 b0.650 b0.041 b3.27 a1.36 b0.054 a0.145 b
Standard Error of the Mean (SEM)0.1890.3110.5160.00613.740.99662.123.01.0462.84
p-value<0.0010.762<0.0010.033<0.0010.0200.0120.0140.0330.036
PZnCuPasting Temp.Starch viscosity (cP)Peak Time
g/kgg/kgg/kg°CPeakTroughBreakdownFinalSetback(min)
20194.37 a0.032 a0.0074 a79.912158523661778 b9325.32 a
20204.15 b0.026 b0.0066 b78.512728504291860 a 9685.27 b
Standard Error of the Mean (SEM)66.70.8610.1321.6847.519.333.327.515.10.017
p-value0.023<0.001<0.0010.570.4040.9530.1850.0400.0980.039
Means followed by the same letter within a column are not significantly different at p = 0.05.
Table 8. The effect of variety and year on total amino acid concentrations in wheat (g/kg).
Table 8. The effect of variety and year on total amino acid concentrations in wheat (g/kg).
VarietyYearHistidineIsoleucineLeucineLysineMethionineValinePhenylalanineThreonineArginine
Borlaug20194.225.8911.074.331.936.868.164.557.09
Borlaug20203.664.979.453.841.755.906.793.946.19
Coolah20193.885.3110.023.991.686.217.104.086.53
Coolah20203.474.668.843.701.515.576.133.695.83
Cutlass 20193.995.6710.644.391.916.717.704.507.19
Cutlass 20203.374.668.843.871.685.626.273.816.26
Dart20194.195.6110.684.271.856.677.594.497.15
Dart20203.785.049.593.941.676.036.764.046.29
EGA-Gregory20194.135.6710.534.281.876.647.894.367.12
EGA-Gregory20203.574.758.943.781.625.716.393.776.08
Lancer20194.236.0611.184.302.106.948.114.557.36
Lancer20203.695.199.653.931.896.106.894.066.63
Livingston20194.025.8311.024.261.896.847.874.497.02
Livingston20203.705.209.943.961.686.206.944.046.53
Mitch20194.015.6610.744.321.906.677.744.507.01
Mitch20203.154.368.333.521.565.255.823.555.63
Trojan20194.005.5910.544.061.906.537.934.336.96
Trojan20203.434.638.813.571.635.566.433.705.98
Zanzibar20194.426.1811.794.601.957.178.714.617.70
Zanzibar20203.674.919.393.971.605.896.863.896.34
SEM 0.1740.2780.5210.1710.0860.2990.4190.1980.344
Main effect (variety)
Borlaug 3.945.4310.264.081.84 ab6.387.474.256.64
Coolah 3.684.989.433.841.60 b5.896.613.896.18
Cutlass 3.685.169.744.131.79 ab6.176.984.156.73
Dart 3.985.3210.134.101.76 ab6.357.174.276.72
EGA-Gregory 3.855.219.734.031.75 ab6.187.144.076.60
Lancer 3.965.6310.414.111.99 a6.527.504.316.99
Livingston 3.865.5110.484.111.78 ab6.527.414.266.78
Mitch 3.585.019.543.921.73 ab5.966.784.026.32
Trojan 3.725.119.683.811.76 ab6.057.184.026.47
Zanzibar 4.045.5410.594.291.78 ab6.537.784.257.02
Year
2019 4.11 a5.75 a10.82 a4.28 a1.90 a6.72 a7.88 a4.45 a7.11 a
2020 3.55 b4.84 b9.18 b3.81 b1.66 b5.78 b6.53 b3.85 b6.18 b
p-Value
Variety 0.1730.2700.2850.2360.0380.3070.2470.4520.339
Year <0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001<0.001
Variety × Year 0.9090.9200.9100.9000.9720.9230.9270.9450.959
Twenty treatments = 10 varieties × 2 years of harvest; number of replications = 4. Means followed by the same letter within a column are not significantly different at p = 0.05.
Table 9. The pairwise correlations between wheat physio-chemical compositions.
Table 9. The pairwise correlations between wheat physio-chemical compositions.
Crude ProteinCrude FibreStarchPhytate-PTotal P
Crude proteinr = 1
p =
Crude fibrer = 0.1571
p = NS
Starchr = −0.5710.0671
p = <0.001NS
Phytate-Pr = 0.5480.281−0.2941
p = <0.001NSNS
Total Pr = 0.6050.294−0.4870.5821
p = <0.001NS<0.001<0.001
Peason correlation and significance at p = 0.05. NS = non-significant; phytate-P = phytate phosphorus.
Table 10. The diet composition and calculated nutrient specifications based on wheats harvested in 2019 and 2020.
Table 10. The diet composition and calculated nutrient specifications based on wheats harvested in 2019 and 2020.
Ingredients (g/kg)StarterGrowerFinisherWithdrawal
Wheat576626667689
Soybean meal (48%)269215172153
Faba (horse) beans50505050
Field pea50505050
Canola meal1.68
Canola seed 16.9728.3729.04
Soy oil11.049.745.585.38
DL-methionine3.492.952.542.26
L-lysine HCl3.573.092.822.60
L-threonine1.571.240.980.81
L-Valine0.430.16
Mono-Dicalcium Phosphate9.796.283.642.82
Limestone 38 Flour13.549.918.507.62
Choline chloride 75% L0.800.600.500.40
Salt1.471.701.831.93
Sodium bicarbonate3.752.662.472.33
Premix 14.303.803.302.80
Estimated cost (AUD)646.00598.00552.00533.00
Nutrient specifications20192020201920202019202020192020
AMEn kcal/kg2967 3062 3108 3132
Arginine1.481.361.341.221.231.121.181.07
Asparagine1.461.331.321.191.211.091.161.03
Avail. phosphorus0.50 0.42 0.36 0.34
Calcium0.95 0.75 0.65 0.60
Crude fat2.351.952.942.533.022.633.042.66
Crude protein23.6520.2921.9118.7220.6017.5419.9216.92
Cysteine0.390.320.370.310.360.300.360.30
Glycine0.430.370.450.390.470.410.480.41
Glycine equivalents1.03 1.00 0.98 0.96
Glycine + serine1.30 1.24 1.20 1.18
Histidine0.570.520.530.480.500.450.490.43
Isoleucine0.960.860.880.780.820.730.780.70
Leucine1.631.461.501.341.401.251.351.21
Lysine1.441.301.291.161.171.061.111.00
Methionine0.650.640.580.570.530.510.490.48
Methionine + cystine1.040.960.950.880.890.820.850.78
Phenyl. + tyrosine1.791.621.631.461.501.351.441.29
Phenylalanine1.100.991.010.910.950.850.910.82
Serine1.070.930.980.850.920.790.880.77
Threonine0.960.850.860.760.780.690.730.65
Tryptophan0.300.260.280.240.270.230.260.22
Tyrosine0.690.620.610.550.550.490.520.47
Valine1.080.960.970.860.900.800.870.77
1 Vitamin-trace mineral premix supplied per tonne of feed; [million international units, MIU] retinol 12, cholecalciferol 5, [g] tocopherol 50, menadione3, thiamine 3, riboflavin 9, pyridoxine 5, cobalamin 0.025, niacin 50, pantothenate 18, folate 2, biotin 0.2, copper 20, iron 40 manganese 110, cobalt 0.25, iodine 1, molybdenum 2, zinc 90, selenium 0.3.
Table 11. The predicted growth performance based on the EFG broiler growth model 1.
Table 11. The predicted growth performance based on the EFG broiler growth model 1.
Weight Gain (g/bird)Feed Intake (g/bird)
28 d35 d42 d49 d28 d35 d42 d49 d
2019 wheat diet17912644352543432480389654997207
2020 wheat diet18182676356143812564404756827414
FCR (g/g)
2019 wheat diet1.4561.5391.6101.679
2020 wheat diet1.4821.5791.6481.714
1 Estimation based on Ross 308 2019 genetics, Aviagen management guide, male:female = 50:50, male mortality 5%, female mortality 3% and 5% feed wastage.
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Khoddami, A.; Tan, D.K.Y.; Messina, V.; Chrystal, P.V.; Thistlethwaite, R.; Caldwell, R.A.; Trethowan, R.; Toghyani, M.; Macelline, S.; Bai, Y.; et al. Climatic Conditions Influence the Nutritive Value of Wheat as a Feedstuff for Broiler Chickens. Agriculture 2024, 14, 645. https://0-doi-org.brum.beds.ac.uk/10.3390/agriculture14040645

AMA Style

Khoddami A, Tan DKY, Messina V, Chrystal PV, Thistlethwaite R, Caldwell RA, Trethowan R, Toghyani M, Macelline S, Bai Y, et al. Climatic Conditions Influence the Nutritive Value of Wheat as a Feedstuff for Broiler Chickens. Agriculture. 2024; 14(4):645. https://0-doi-org.brum.beds.ac.uk/10.3390/agriculture14040645

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Khoddami, Ali, Daniel K. Y. Tan, Valeria Messina, Peter V. Chrystal, Rebecca Thistlethwaite, Robert A. Caldwell, Richard Trethowan, Mehdi Toghyani, Shemil Macelline, Yunlong Bai, and et al. 2024. "Climatic Conditions Influence the Nutritive Value of Wheat as a Feedstuff for Broiler Chickens" Agriculture 14, no. 4: 645. https://0-doi-org.brum.beds.ac.uk/10.3390/agriculture14040645

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