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Proceeding Paper

Mineral Quantification of Triticum aestivum L. Enriched in Zinc—Correlation between Minerals in Soils and Whole Wheat Flours †

by
Inês Carmo Luís
1,2,*,
Cláudia Campos Pessoa
1,2,
Diana Daccak
1,2,
Ana Coelho Marques
1,2,
Ana Rita F. Coelho
1,2,
Manuel Patanita
2,3,
José Dôres
3,
Ana Sofia Almeida
2,4,
Maria Manuela Silva
2,5,
Maria Fernanda Pessoa
1,2,
Fernando H. Reboredo
1,2,
Manuela Simões
1,2,
Paulo Legoinha
1,2,
Carlos Galhano
1,2,
Isabel P. Pais
2,6,
Paula Scotti Campos
2,6,
José C. Ramalho
2,7 and
Fernando C. Lidon
1,2
1
Earth Sciences Department, Faculdade de Ciências e Tecnologia, Universidade Nova de Lisboa, Campus Caparica, 2829-516 Caparica, Portugal
2
GeoBioTec Research Center, Faculdade de Ciências e Tecnologia, Universidade Nova de Lisboa, Campus Caparica, 2829-516 Caparica, Portugal
3
Escola Superior Agrária, Instituto Politécnico de Beja, R. Pedro Soares S/N, 7800-295 Beja, Portugal
4
Instituto Nacional de Investigação Agrária e Veterinária, I.P. (INIAV), Estrada de Gil Vaz 6, 7351-901 Elvas, Portugal
5
ESEAG-COFAC, Avenida do Campo Grande 376, 1749-024 Lisboa, Portugal
6
Instituto Nacional de Investigação Agrária e Veterinária, I.P. (INIAV), Avenida da República, Quinta do Marquês, 2780-157 Oeiras, Portugal
7
PlantStress & Biodiversity Labotary, Centro de Estudos Florestais (CEF), Instituto Superior Agronomia (ISA), Universidade de Lisboa (ULisboa), Quinta do Marquês, Av. República, 2784-505 Oeiras, Portugal
*
Author to whom correspondence should be addressed.
Presented at the 2nd International Electronic Conference on Plant Sciences—10th Anniversary of Journal Plants, 1–15 December 2021; Available online: https://iecps2021.sciforum.net/.
Biol. Life Sci. Forum 2022, 11(1), 32; https://doi.org/10.3390/IECPS2021-11952
Published: 30 November 2021

Abstract

:
Triticum aestivum L. is one of the most produced staple crops worldwide in which its zinc biofortification is of the utmost importance to diminish malnutrition. In addition, the pronounced increase in the human population demands higher food production within quality standards. Zinc plays an important role, not only in promoting the maintenance of human health, but is also linked with plant growth. Under this framework, a zinc agronomic biofortification of Triticum aestivum L. was implemented in an experimental field with two varieties (Paiva and Roxo) in Beja, Portugal. This itinerary comprised two ZnSO4 foliar sprayings along the plant cycle with three different concentrations (control—0; 8.1 and 18.2 kg ha−1). Soil analyses (moisture, organic matter, pH, electrochemical conductivity and mineral quantification) and atomic absorption with the mineral quantification (Ca, K, Mg, P, Fe, Cu and Zn) of whole wheat flours were carried out. Zinc foliar spraying enhanced the Zinc content in both varieties in the flours in which no significant differences between ZnSO4 treatments were observed. P and K presented higher values in the flours, contrasting with Ca and Mg. In general, there were no significant differences between the soil samples in the respective analyses. It was concluded that wheat flour biofortified in zinc can be used as a product to help overcome malnutrition.

1. Introduction

The world’s population is expected to increase to more than 8 billion by 2030 [1]. Thereby, according to [2], food production will have to increase approximately 60% by 2050, in a sustainable way while keeping quality standards. Triticum aestivum L. is one of the most produced staple crops worldwide. Thus, it is estimated to reach a production of 776.7 million tons by 2021/2022 [3]. Zinc (Zn) plays an important role (in the function, structure and regulation level) not only in promoting the maintenance of human health but it is also linked with plant growth [4,5]. Biofortification is likely to diminish malnutrition figures, provided that an essential nutrient in the edible part of staple crops is enhanced and becomes bioavailable [6,7]. This paper aims to analyze the correlations between the minerals present in the sample soils collected from the experimental field which were subjected to a Zn biofortification workflow. A further study was also conducted as a means of investigating the interactions between the minerals present in the whole bread wheat flours of two varieties of Triticum aestivum L.

2. Materials and Methods

2.1. Experimental Field

Triticum aestivum L. Roxo and Paiva varieties were cultivated in an experimental field at 37°57′09.68″ N; 7°30′26.82″ W, in Beja (Portugal). The last days of December 2018 brought the sowing of the bread wheat field; whereas the harvest season fell by the end of June 2019. The sowing was conducted in a randomized block design with four repetitions. This field was divided into 24 plots, each one with an area of 12 m2 (10 m × 1.2 m), comprising 3 m between repetitions and 0.4 m between plots. NPK fertilization and 50 kg Zn·ha−1 were applied in the field beforehand. The Zn biofortification comprised ZnSO4 foliar spraying at booting and heading stages, in late April 2019, with three different concentrations applied (0—control (T0), 8.1 (T1) and 18.2 (T2) kg·ha−1) and 46% of urea. The total rainfall accumulation was about 5.43 mm, with a daily maximum of 1.85 mm, during the plant life cycle.

2.2. Soil Analyses of the Experimental Field

The soil samples were processed and the determination of moisture content, organic matter content, pH and electrical conductivity were conducted according to [8] with the minor change of using a rectangular grid of 23 × 22 m. An XRF analyzer (model XL3t 950 He GOLDD+) was used to measure the mineral content of the soil samples, under a helium atmosphere [9].

2.3. Mineral Quantification of Whole Bread Wheat Flours through Atomic Absorption Spectrometry

Whole bread wheat flour samples were analyzed according to the method of [10] using the Perkin Elmer Instruments AAnalyst 200 Atomic Absorption Spectrophotometer, with AA WinLab software. Initially, about 1 g of each sample was weighed, placed in a 50 mL Erlenmeyer flask, and 10 mL of nitric acid was added (acid digestion). Then, it was heated between 100 and 150 °C until total evaporation occurred and a solution of HNO3:HClO4 (2:3 mL) was added. Afterwards, the whole procedure was repeated, and the precipitate was dissolved in a 2% HCl solution, being filtered with Whatman paper nº 4 into a 50 mL volumetric flask. A standard solution of 2% HCl was prepared and the absorbances of the flour samples were measured in the spectrophotometer.

2.4. Statistical Analyses

Software R (version 3.6.3) was used to statistically analyze data. Such analyses comprised of one way ANOVA (p ≤ 0.05) to evaluate the differences between the samples of different varieties and treatments. Considering a 95% confidence level, Tukey’s test for mean comparison was performed. Furthermore, this software permitted the obtainment of the correlation matrix of Spearman’s and Pearson’s coefficients for the minerals present in the soils and in the whole bread wheat flours.

3. Results

Soil analyses pH, electrical conductivity, organic matter and moisture contents and the values of calcium (Ca), iron (Fe) and Zn did not show significant differences among the different soil samples (Table 1). The values of pH were slightly above 7 and the electrical conductivity varied between 412 and 568 µS·cm−1. Potassium (K) showed lower values when compared to Ca (almost twice the values of K). The minerals quantification demonstrated higher levels of Fe, followed by Zn and copper (Cu) (Cu and Zn showed similar values). The minerals Mg and P presented values lower than 1500 and 200 mg·kg−1, respectively. There was a strong and positive correlation between the minerals: K and Fe for samples A and B; K and Zn for samples A and C; and Fe and Zn for sample C (Table 2). By contrast, there was a strong and negative correlation between the minerals: Cu and Zn for samples A and C; Fe and Ca for sample A; and Fe and Cu for sample C.
No significant differences were observed between ZnSO4 treatments for both varieties in the minerals magnesium (Mg), phosphor (P), Ca and Cu (Table 3). Relatively to the minerals, P and K presented higher values in the flours, contrasting with Mg and Ca. While assessing the values of the microelements, Cu presented lower values than Zn and Fe. When comparing control samples (T0), it was found that the Paiva variety presented a higher mineral content for all the minerals. Zinc foliar spraying enhanced the Zn content in the Paiva and Roxo varieties in the flours. After applying Zn fertilizer in Paiva, a decrease in mineral content for Fe, K, Ca and Mg was observed. In contrast, considering Roxo, an increase in the mineral content for the minerals P, K, Mg, Fe, Zn and Cu regarding control samples, was observed. A strong and positive correlation was presented between the minerals: Zn and Ca, and K and Zn for samples PT0, RT0 and RT1; K and P for samples PT0, PT1 and RT1; K and Mg, Mg and Zn and Mg and Ca for samples PT0, PT1, RT0 and RT1; P and Mg for samples PT0, PT1, PT2 and RT1; K and Ca for samples PT0, PT1, PT2, RT0, RT1 and RT2; Zn and Cu, K and Cu, and Mg and Cu for samples PT1, RT0, and RT1; Zn and P and Cu and P for samples PT1 and RT1; Fe and Ca and Fe and K for samples PT1 and PT2; Fe and Mg and P and Fe for samples PT1 and RT2; Fe and Cu for sample PT1; Cu and Ca for samples RT0 and RT1; and P and Ca for samples RT1 and RT2 (Table 4). Conversely, there was a strong and negative correlation between the minerals: Fe and Cu for sample PT0; Zn and P for samples PT2, RT0 and RT2; Cu and P for samples RT0 and RT2; K and Mg for samples PT2 and RT2; K and P and P and Ca for samples PT2 and RT0; P and Ca, and P and Mg for sample RT0; P and Fe, Fe and Mg, and Mg and Ca for sample PT2; and Zn and Fe, Cu and Ca, Zn and Ca, and K and Cu for the sample RT2.

4. Discussion

Since all the soil analyses (except for the minerals K and Cu) did not present significant differences, we can presume that the experimental field is homogeneous. The mineral K plays an important role in plants’ metabolism, for example, in the regulation of the opening and closing of stomates, the activation of some enzymes and balancing the use of N. This mineral has an antagonist effect on absorbing Ca, Mg and P [11]. According to [12,13], K presents a synergetic interaction with Fe. Moreover, K moves in soils by diffusion and is mobile in the plant [12,13]. The minerals Mg, Ca, Fe, Cu and Zn move in the soil by mass flow, whereas the minerals P and Fe, move in the soil by diffusion [13]. Regarding the mineral’s mobility in the plant, the minerals are P (mobile), and the minerals are Mg (relatively immobile), Ca, Fe, Cu and Zn (immobile) [12,13].
One of the functions of Ca is to be a cofactor of various enzymes of ATP. The mineral has an antagonist interaction with Cu, Fe and Zn, but also interacts with Cu and Zn in a synergetic way [8,13]. Magnesium is a component of chlorophyll and functions as an enzyme activator in plants. This mineral interacts with Cu, Fe and Zn in an antagonist way, however, presents a synergetic interaction with Zn [12,13]. The mineral P is an important constituent of nucleic acids, proteins, metabolic substrates and coenzymes. This mineral has both antagonist and synergetic interactions with Cu, Fe and Zn [12,13]. Iron plays an important role in plants in chlorophyll synthesis and also in enzyme electron transfer. Iron presents an antagonist interaction with Ca, Mg and P, whereas it only interacts with P in a synergetic way [13]. The mineral Cu is part of a diversity of enzymes and works as a catalyst for respiration. Copper interacts with Ca and P in both antagonist and synergetic ways and only presents an antagonist interaction with Mg [13]. Zinc has a myriad of functions in plants, such as being a part of the enzymes from regulation and has both antagonist and synergetic interactions with Ca, Mg and P [12,13].
Taking everything into account, most of the results obtained were not in line with what was said by the authors [13], as most of the minerals presented strong positive correlations in the whole wheat flours, thus, the majority of the minerals showed a synergetic interaction.

5. Conclusions

In general, there were no significant differences between the soil samples in the various parameters analyzed. Considering macroelements, Ca presented higher values in the soils. Conversely, Fe was the dominant microelement. In the soil samples, it was observed that only the minerals K, Fe and Zn were strongly and positively correlated, however, the minerals Fe, Cu, Ca (only with Fe) and Zn (only with Cu) had a strong and negative correlation. When compared to Roxo, the Paiva variety presented a higher mineral content for all the minerals in the flours of the control samples (P0 and R0). When applying Zn fertilizer in Paiva, a decrease in mineral content for Fe, K, Ca and Mg, was observed. Nevertheless, an increase in the mineral content for the minerals P, K, Mg, Fe, Zn and Cu regarding control samples, was observed in Roxo. Furthermore, Zn foliar spraying enhanced Zn content in both varieties. Thus, wheat flour biofortified in zinc can be used as a product to help overcome malnutrition. Regarding whole bread wheat flours, it was observed that, in general, the minerals were strongly and positively correlated, although in some cases, the minerals also had a strong negative correlation.

Author Contributions

Conceptualization, I.C.L., M.P., M.M.S. and F.C.L.; methodology, M.P., P.L., C.G. and F.C.L.; software, I.C.L.; formal analysis, I.C.L., C.C.P., D.D., A.C.M., A.R.F.C., A.S.A., M.F.P., F.H.R., M.S., I.P.P., P.S.C. and J.C.R.; investigation, I.C.L., C.C.P., D.D., A.C.M., A.R.F.C. and F.C.L.; resources, M.P., J.D., P.L. and C.G.; writing—original draft preparation, I.C.L.; writing—review and editing, I.C.L. and F.C.L.; supervision, M.P., M.M.S. and F.C.L.; project administration, F.C.L. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by PDR2020, grant number 101-030835.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

The authors thanks is given to Sociedade Agrícola Saramago de Brito, Instituto Politécnico de Beja and Associação de Agricultores do Baixo Alentejo for technical assistance and for facilities regarding the Triticum aestivum L. experimental field. Furthermore, we also thank the research center (GeoBioTec) UIDB/04035/2020 for use of their lab facilities.

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or in the decision to publish the results.

Abbreviations

The following abbreviations are used in this manuscript:
PTriticum aestivum L. Paiva variety;
RTriticum aestivum L. Roxo variety;
T0control;
T1corresponds to the foliar spray of ZnSO4 with a concentration of 8.1 kg·ha−1;
T2corresponds to the foliar spray of ZnSO4 with a concentration of 18.2 kg·ha−1;

References

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Table 1. Soil analyses (samples collected at 0–30 cm deep) of Triticum aestivum L. experimental field (n = 3 for pH, electrical conductivity, organic matter and moisture contents; and n = 9 for mineral quantification of K, Ca, Fe, Cu, Zn). Letters a, b indicates significant differences in each parameter, considering different samples (statistical analysis using the single factor ANOVA test, p < 0.05). Mg and P presented values lower than the detection limit of the equipment.
Table 1. Soil analyses (samples collected at 0–30 cm deep) of Triticum aestivum L. experimental field (n = 3 for pH, electrical conductivity, organic matter and moisture contents; and n = 9 for mineral quantification of K, Ca, Fe, Cu, Zn). Letters a, b indicates significant differences in each parameter, considering different samples (statistical analysis using the single factor ANOVA test, p < 0.05). Mg and P presented values lower than the detection limit of the equipment.
SamplespH (H2O)Electrical ConductivityOrganic
Matter
MoistureKCaFeCuZnMgP
µS·cm−1%mg·kg−1
A7.70 ± 0.05 a543 ± 44 a6.92 ± 0.02 a22.52 ± 0.17 a0.652 ± 0.008 a1.26 ± 0.11 a38,136 ± 278 a43.45 ± 2.31 b59.11 ± 1.20 a<1500<200
B7.57 ± 0.10 a412 ± 19 a6.71 ± 0.07 a22.62 ± 0.16 a0.643 ± 0.029 ab1.01 ± 0.05 a39,390 ± 257 a44.56 ± 1.057 ab60.36 ± 1.00 a
C7.73 ± 0.08 a568 ± 47 a6.95 ± 0.12 a22.29 ± 0.38 a0.572 ± 0.020 b1.23 ± 0.12 a38,806 ± 1065 a52.70 ± 3.591 a59.96 ± 1.78 a
Table 2. The correlation matrix of Spearman’s (the top of the diagonal) and Pearson’s (the bottom of the diagonal) and the coefficients of the minerals Ca, K, Fe, Cu and Zn of soil samples A (a), B (b) and C (c) for the experimental field.
Table 2. The correlation matrix of Spearman’s (the top of the diagonal) and Pearson’s (the bottom of the diagonal) and the coefficients of the minerals Ca, K, Fe, Cu and Zn of soil samples A (a), B (b) and C (c) for the experimental field.
(a) (b) (c)
ACaKFeCuZnBCaKFeCuZnCCaKFeCuZn
Ca1−0.033−0.450.217−0.2Ca10.5170.517−0.10.517Ca10.517−0.5170.367−0.467
K−0.36410.85−0.5830.717K0.39710.917−0.3670.4K0.3110.35−0.450.4
Fe−0.8370.7811−0.6670.633Fe0.6680.9321−0.3170.267Fe−0.510.6521−0.750.95
Cu0.345−0.671−0.6531−0.8Cu−0.238−0.349−0.35210.317Cu0.574−0.518−0.9141−0.817
Zn−0.2890.7420.612−0.9131Zn0.3320.0930.2350.4991Zn−0.3850.710.967−0.8391
Table 3. Mean mineral contents of whole wheat flour of Triticum aestivum L. (cvs. Paiva and Roxo) (n = 3) after foliar spraying. Letters a, b, c indicates significant differences in each parameter, considering different samples (statistical analysis using the single factor ANOVA test, p < 0.05).
Table 3. Mean mineral contents of whole wheat flour of Triticum aestivum L. (cvs. Paiva and Roxo) (n = 3) after foliar spraying. Letters a, b, c indicates significant differences in each parameter, considering different samples (statistical analysis using the single factor ANOVA test, p < 0.05).
VarietyTreatmentMgPKCaFeCuZn
%mg·kg−1
Paiva
(P)
T08.87 ± 0.03 a115 ± 3.00 a65.54 ± 5.32 b1.87 ± 0.13 a5.71 ± 0.10 a0.241 ± 0.002 a0.653 ± 0.013 b
T18.78 ± 0.30 a138 ± 6.50 a63.47 ± 1.39 a1.04 ± 0.12 a0.58 ± 0.17 ab0.276 ± 0.013 a0.739 ± 0.035 a
T28.32 ± 0.44 a118 ± 11.6 a63.89 ± 4.88 b1.19 ± 0.30 a1.44 ± 0.99 c0.239 ± 0.006 a1.143 ± 0.099 a
Roxo
(R)
T08.56 ± 0.13 a98.1 ± 6.20 a59.41 ± 5.97 b1.31 ± 0.26 a3.33 ± 0.06 bc0.225 ± 0.021 a0.638 ± 0.145 b
T19.04 ± 0.14 a111 ± 3.20 a69.73 ± 1.14 ab1.58 ± 0.055 a4.13 ± 0.10 ab0.263 ± 0.003 a1.177 ± 0.018 a
T28.92 ± 0.03 a118 ± 2.80 a60.92 ± 4.95 b1.24 ± 0.10 a3.970 ± 0.10 ab0.257 ± 0.001 a1.175 ± 0.011 a
Table 4. Correlation matrix of Spearman’s (the top of the diagonal) and Pearson’s (the bottom of the diagonal) and coefficients of the minerals Zn, Cu, Fe, Ca, K, P and Mg of Triticum aestivum L. (cvs Roxo and Paiva) whole bread wheat flours for the experimental field. With the foliar application of ZnSO4: T0 = control (a, d); T1 corresponds to 8.1 (b, e) and T2 to 18.2 kg·ha−1 (c, f).
Table 4. Correlation matrix of Spearman’s (the top of the diagonal) and Pearson’s (the bottom of the diagonal) and coefficients of the minerals Zn, Cu, Fe, Ca, K, P and Mg of Triticum aestivum L. (cvs Roxo and Paiva) whole bread wheat flours for the experimental field. With the foliar application of ZnSO4: T0 = control (a, d); T1 corresponds to 8.1 (b, e) and T2 to 18.2 kg·ha−1 (c, f).
(a) (b) (c)
Paiva T0ZnCuFeCaKPMgPaiva T1ZnCuFeCaKPMgPaiva T2ZnCuFeCaKPMg
Zn1−0.50.510.50.50.5Zn110.50.50.510.5Zn10.50.50.50.5−0.5−0.5
Cu−0.5141−1−0.50.50.50.5Cu0.96810.50.50.510.5Cu0.3431−0.5−0.5−0.50.50.5
Fe0.645−0.98710.5−0.5−0.5−0.5Fe0.5210.7191110.51Fe0.486−0.654111−1−1
Ca0.982−0.3420.48710.50.50.5Ca0.2030.4430.941110.51Ca0.635−0.5080.98411−1−1
K0.8310.050.1110.922111K0.6680.8340.9830.86410.51K0.695−0.4370.9660.9971−1−1
P0.5470.436−0.2870.6970.9211P0.9270.9920.8030.5560.89910.5P−0.7210.403−0.956−0.993−0.99911
Mg0.8230.0640.0960.91610.9261Mg0.8950.9780.8470.6190.930.9971Mg−0.6970.434−0.965−0.997−10.9991
(d) (e) (f)
Roxo T0ZnCuFeCaKPMgRoxo T1ZnCuFeCaKPMgRoxo T2ZnCuFeCaKPMg
Zn10.50.50.51−10.5Zn10.5-0.50.50.510.5Zn10.5−1−0.50.5−0.5−0.5
Cu0.9711−0.510.5−0.51Cu0.87310.5110.51Cu0.6991−0.5−1−0.5−10.5
Fe0.4520.2251−0.50.5−0.5−0.5Fe−0.4620.0310.50.5−0.50.5Fe−0.835−0.19210.5−0.50.50.5
Ca0.7840.91−0.19910.5−0.51Ca0.9420.986−0.138110.51Ca−0.761−0.9960.27910.51−0.5
K10.9730.4430.791−10.5K0.9350.989−0.119110.51K−0.29−0.887−0.2830.84210.5−1
P−0.999−0.96−0.488−0.758−0.9991−0.5P0.9950.821−0.5470.9050.89610.5P−0.994−0.7740.770.8280.3941−0.5
Mg0.80.92−0.17410.806−0.7751Mg0.8170.9940.1350.9630.9680.7561Mg−0.4540.3190.869−0.232−0.720.3531
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Luís, I.C.; Pessoa, C.C.; Daccak, D.; Marques, A.C.; Coelho, A.R.F.; Patanita, M.; Dôres, J.; Almeida, A.S.; Silva, M.M.; Pessoa, M.F.; et al. Mineral Quantification of Triticum aestivum L. Enriched in Zinc—Correlation between Minerals in Soils and Whole Wheat Flours. Biol. Life Sci. Forum 2022, 11, 32. https://doi.org/10.3390/IECPS2021-11952

AMA Style

Luís IC, Pessoa CC, Daccak D, Marques AC, Coelho ARF, Patanita M, Dôres J, Almeida AS, Silva MM, Pessoa MF, et al. Mineral Quantification of Triticum aestivum L. Enriched in Zinc—Correlation between Minerals in Soils and Whole Wheat Flours. Biology and Life Sciences Forum. 2022; 11(1):32. https://doi.org/10.3390/IECPS2021-11952

Chicago/Turabian Style

Luís, Inês Carmo, Cláudia Campos Pessoa, Diana Daccak, Ana Coelho Marques, Ana Rita F. Coelho, Manuel Patanita, José Dôres, Ana Sofia Almeida, Maria Manuela Silva, Maria Fernanda Pessoa, and et al. 2022. "Mineral Quantification of Triticum aestivum L. Enriched in Zinc—Correlation between Minerals in Soils and Whole Wheat Flours" Biology and Life Sciences Forum 11, no. 1: 32. https://doi.org/10.3390/IECPS2021-11952

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