ABSTRACT
Increasing soybean yield in the MATOPIBA region can be attributed to fertility management, which is crucial to achieving maximum agronomic efficiency. Therefore, the proper management begins with the assessment of plant nutrition. This study aimed to evaluate soybean nutritional status in western Bahia using the Diagnosis and Recommendation Integrated System (DRIS). Database comprised 153 samples from commercial fields located in the research area. To carry out the evaluation using the DRIS method, the database contained information on nutritional levels and leaf productivity of the sampled areas. Database was divided into high-productivity populations (reference population) and low-productivity populations, based on the inflection point value of the cumulative cubic function of yield. The DRIS method allowed for evaluating the potential response to fertilization; however, this method was inefficient in recommending fertilizer doses in both subpopulations. For the sufficiency levels proposed by DRIS, the nutrients N, K, Ca, Mg and S had their maximum and minimum limits reduced, while Cu, Fe and Zn had their ranges of sufficiency expanded, when compared with ranges proposed by other authors. In addition, Zn and Mn were more limiting due to lack for the high-yield subpopulation, and P and Mn for the low-yield subpopulation. The most limiting nutrients due to excess were P and Zn for the high-yield, while K and S were limiting for the low yield subpopulation.
Keywords
plant nutrition; Glycine max L. Merril; nutritional balance; foliar diagnosis
INTRODUCTION
Brazil is responsible for around 40 % of all soybean production in the world, with approximately 154 million tons harvested in the 2022/2023 season (FAO, 2023Food and agriculture organization of the United Nations - FAO. Faostat - Crop production data. Rome: FAO; 2023 [cited 2023 Oct 27]. Available from: http://www.fao.org/faostat/en/#data/QCL.
http://www.fao.org/faostat/en/#data/QCL...
; Conab, 2023Companhia Nacional de Abastecimento - Conab. Acompanhamento da Safra Brasileira de Grãos v.10 – Safra 2022/2023 – Oitavo levantamento. Brasília, DF: Conab; 2023. Available from: https://www.conab.gov.br/info-agro/safras/graos/boletim-da-safra-de-graos.
https://www.conab.gov.br/info-agro/safra...
). Among the productive and promising regions for cropping in Brazil there is the MATOPIBA region, composed of the states of Maranhão, Tocantins, Piauí and Bahia, which are part of the Cerrado biome. From this region, the state of Bahia stands out, producing 7.71 million tons and being responsible for 5 % of the national production, raised in 1.9 million hectares (Conab, 2023). Cerrado biome is characterized by a tropical climate, with weathered soils, poor natural fertility, and highly mechanized due to the low slope (Schenfert et al., 2020Schenfert TA, Ratke RF, Casarin V, Barbosa JM, Chaves DV, Holanda Neto MR, Roque CG, Carlos HCV. Lime and gypsum in the implantation no-till system promote the nutrition and yield of soybean. J Plant Nutr. 2020;43:641-54. https://doi.org/10.1080/01904167.2019.1701028
https://doi.org/10.1080/01904167.2019.17...
). Soils in the croplands of Bahia State are classified as poor due to low levels of available nutrients for plants, such as N, P and K; also, the organic matter content is low in this area (Lopes and Guilherme, 2016Lopes AS, Guilherme LRG. A career perspective on soil management in the Cerrado region of Brazil. Adv Agron. 2016;137:1-72. https://doi.org/10.1016/bs.agron.2015.12.004
https://doi.org/10.1016/bs.agron.2015.12...
). Another limiting factor of production in the region is the natural soil pH, which increases the availability of manganese to toxic levels for soybean development (Fageria and Stone, 2008Fageria NK, Stone LF. Micronutrient deficiency problems in South America. In: Alloway BJ, editor. Micronutrient in global crop production. Dordecht: Springer; 2008. p. 245-66.).
Increases in soybean yield in the MATOPIBA region can be attributed to fertility management, which is crucial to achieve maximum agronomic efficiency. Application of fertilizers can reduce the gap between average yield and potential yield (Hochman and Horan, 2018Hochman Z, Horan H. Causes of Wheat yield gaps and opportunities to advance the water-limited yield frontier in Australia. Field Crop Res. 2018;228:20-30. https://doi.org/10.1016/j.fcr.2018.08.023
https://doi.org/10.1016/j.fcr.2018.08.02...
). Therefore, the proper management begins with the assessment of plant nutrition. Among existing methods is tissue analysis, which uses leaf samples to determine nutrient levels. Tissue analysis is an efficient and economical strategy to assist in the management of crops and the assessment of nutritional status (Labaied et al., 2018Labaied MB, Ademar PS, Mehdi BM. Establishment of nutrients optimal range for nutritional diagnosis of mandarins based on DRIS and CND methods. Commun Soil Sci Plan. 2018;49:2557-70. https://doi.org/10.1080/00103624.2018.1526944
https://doi.org/10.1080/00103624.2018.15...
). The possibility of diagnosing nutritional deficiencies before the appearance of visual symptoms makes leaf analysis a useful tool. Assessment of the plant nutritional concentration can identify deficiencies that can reduce productivity before the appearance of severe symptoms (Rozane et al., 2016Rozane DE, Parent LE, Natale W. Evolution of the predictive criteria for the tropical fruit tree nutritional status. Científica. 2016;44:102-12. https://doi.org/10.15361/1984-5529.2016v44n1p102-112
https://doi.org/10.15361/1984-5529.2016v...
).
Among the methods of interpreting nutritional status by analyzing the plant tissue, the Diagnosis and Recommendation Integrated System (DRIS) developed by Beaufils in 1973Beaufils ER. Diagnosis and recommendation integrated system (DRIS). Pietermaritzburg, South Africa: Department of Soil Science and Agro-Meteorology, Natal University; 1973. (Bulletin, 1)., can assess the nutritional status of the plant from the binary relationships between the concentration of nutrients. This method is more adequate to diagnose nutritional imbalance than univariate methods because it considers the possible nutritional interactions in the plant tissue (Rozane et al., 2016Rozane DE, Parent LE, Natale W. Evolution of the predictive criteria for the tropical fruit tree nutritional status. Científica. 2016;44:102-12. https://doi.org/10.15361/1984-5529.2016v44n1p102-112
https://doi.org/10.15361/1984-5529.2016v...
).
Univariate assessments neglect that biochemical functions in the plant do not occur independently, and it is important to understand these relationships for any diagnosis (Ali et al., 2016Ali AM, Ibrahim SM, Sayed ASA. Evaluation of nutritional balance in wheat using compositional nutrient diagnosis model in Sahl El-Tina, Egypt. Alex Sci Exch J. 2016;37:581-92. https://doi.org/10.21608/ASEJAIQJSAE.2016.2532
https://doi.org/10.21608/ASEJAIQJSAE.201...
). The DRIS method and other bivariate or multivariate methods consider environmental aspects in their assessment. The reference standard will be determined within the database itself, and is subjected to external interferences such as climatic, management and environmental conditions (Urano et al., 2006Urano EOM, Kurihara CH, Maeda S, Vitorino ACT, Gonçalves MC, Marchetti ME. Avaliação do estado nutricional da soja. Pesq Agropec Bras. 2006;41:1421-8. https://doi.org/10.1590/S0100-204X2006000900011
https://doi.org/10.1590/S0100-204X200600...
). Therefore, to be reliable in the diagnosis, the evaluated areas must be under similar edaphoclimatic conditions, generating more regionalized and less universal reference patterns (Rozane et al., 2016Rozane DE, Parent LE, Natale W. Evolution of the predictive criteria for the tropical fruit tree nutritional status. Científica. 2016;44:102-12. https://doi.org/10.15361/1984-5529.2016v44n1p102-112
https://doi.org/10.15361/1984-5529.2016v...
). Application of this methodology on a smaller scale increases the level of reliability when compared to general standards, since local characteristics are considered (Gott et al., 2016Gott RM, Aquino LA, Clemente JM, Santos LPD, Carvalho AMX, Xavier FO. Foliar diagnosis indexes for corn by methods diagnosis and recommendation integrated system (DRIS) and Nutritional Composition (CND). Commun Soil Sci Plant Anal. 2016;48:11-9. https://doi.org/10.1080/00103624.2016.1253714
https://doi.org/10.1080/00103624.2016.12...
).
DRIS standards for soybean cultivation have been established over the years considering different cultivars and cultivation locations: Hanson (1981)Hanson RG. DRIS evaluation of N, P, K status of determinants soybeans in Brazil. Commun Soil Sci Plant Anal. 1981;12:933-48. https://doi.org/10.1080/00103628109367206
https://doi.org/10.1080/0010362810936720...
, Vigier et al. (1989)Vigier B, Mackenzie AF, Chen Z. Evaluation of diagnosis and recommendation integrated system (DRIS) on early maturing soybeans. Commun Soil Sci Plan. 1989;20:685-93. https://doi.org/10.1080/00103628909368108
https://doi.org/10.1080/0010362890936810...
; Bell et al. (1995)Bell PF, Hallmark WB, Sabbe WE, Dombeck DG. Diagnosing nutrient deficiencies in soybean, using M‐DRIS and critical nutrient level procedures. Agron J. 1995;87:859-65. https://doi.org/10.2134/agronj1995.00021962008700050013x
https://doi.org/10.2134/agronj1995.00021...
, Urano et al. (2006Urano EOM, Kurihara CH, Maeda S, Vitorino ACT, Gonçalves MC, Marchetti ME. Avaliação do estado nutricional da soja. Pesq Agropec Bras. 2006;41:1421-8. https://doi.org/10.1590/S0100-204X2006000900011
https://doi.org/10.1590/S0100-204X200600...
, 2007)Urano EOM, Kurihara CH, Maeda S, Vitorino ACT, Gonçalves MC, Marchetti ME. Determinação de teores ótimos de nutrientes em soja pelos métodos chance matemática, sistema integrado de diagnose e recomendação e diagnose da composição nutricional. Rev Bras Cienc Solo. 2007;31:63-72. https://doi.org/10.1590/S0100-06832007000100007
https://doi.org/10.1590/S0100-0683200700...
, Kurihara et al. (2013)Kurihara CH, Alvarez V VHA, Neves JCL, Novais RF, Staut LA. Faixas de suficiência para teores foliares de nutrientes em algodão e em soja, definidas em função de índices DRIS. Rev Ceres. 2013;60:412-9. https://doi.org/10.1590/S0034-737X2013000300015
https://doi.org/10.1590/S0034-737X201300...
, Wenneck et al. (2022)Wenneck GS, Saath R, Rezende R, Andrade Gonçalves AC, Lourenço de Freitas PS. Nutritional status of soybean in different agricultural succession systems in the Midwestern Paraná, Brazil. J Plant Nutr. 2022;45:2850-8. https://doi.org/10.1080/01904167.2022.2058544
https://doi.org/10.1080/01904167.2022.20...
, Souza et al. (2023)Souza HAD, Rozane DE, Vieira PFDMJ, Sagrilo E, Leite LFC, Brito LCRD, Ferreira ACM. Accuracy of DRIS and CND methods and nutrient sufficiency ranges for soybean crops in the Northeast of Brazil. Acta Sci-Agron. 2023;45:e59006. https://doi.org/10.4025/actasciagron.v45i1.59006
https://doi.org/10.4025/actasciagron.v45...
. Despite the vast research on soybean, there are no reports on the nutritional diagnosis of soybean raised in the western state of Bahia. This study aimed to assess the nutritional status and establish DRIS standards for soybean cultivated in the western region of Bahia based on commercial field crop assessments.
MATERIALS AND METHODS
To determine the DRIS standards for soybeans, leaf tissue samples were collected from 153 commercial crops, in the direct planting system (SPD), with soybean - corn - cotton rotation, without irrigation, during the 2017/2018 and 2018/2019 harvests in the municipalities of Barreiras, Formosa do Rio Preto, Luís Eduardo Magalhães and Riachão das Neves, located in the western region of Bahia (Figure 1). The predominant soil in the region is classified as Latossolo (Santos et. al., 2018Santos HG, Jacomine PKT, Anjos LHC, Oliveira VA, Lumbreras JF, Coelho MR, Almeida JA, Araújo Filho JC, Oliveira JB, Cunha TJF. Sistema brasileiro de classificação de solos. 5. ed. rev. ampl. Brasília, DF: Embrapa; 2018.; Soil Survey Staff, 1999Soil Survey Staff. Soil taxonomy: a basic system of soil classification for making and interpreting soil surveys. 2nd ed. Washington, DC: United States Department of Agriculture, Natural Resources Conservation Service; 1999. (Agricultural Handbook, 436).), classified into the sandy loam, sandy texture classes (Clemente et al., 2019Clemente EDP, Viana JHM, Fontana A. Estudos morfométricos de camadas adensadas de Latossolos sob diferentes usos na região oeste do Estado da Bahia. Rev Dep Geogr. 2019;380:95-109. https://doi.org/10.11606/rdg.v38i1.156363
https://doi.org/10.11606/rdg.v38i1.15636...
). Predominant climate in the region is classified as Aw according to the Köppen-Geiger classification system (Alvares et al., 2013Alvares CA, Stape JL, Sentelhas PC, Gonçalves JLM, Sparovek G. Köppen’s climate classification map for Brazil. Meteorol Z. 2013;22:711-28. https://doi.org/10.1127/0941-2948/2013/0507
https://doi.org/10.1127/0941-2948/2013/0...
), characterized by a defined dry season during winter and abundant rains during summer, with an elevation between 460 and 720 m above sea level.
A composite sample was collected in each evaluated field, consisting of 30 complete leaves (limbus with petiole) chosen randomly. The collected diagnostic leaf was the third or fourth full developed leaf from the apex of the plant, during the initial or full flowering stage “R1” or “R2” (Oliveira Júnior et al., 2020Oliveira Júnior A, Castro C, Oliveira FA, Klepker D. Fertilidade do solo e estado nutricional da soja. In: Seixas CDS, Neumaier N, Balbinot Júnior AA, Krzyzanowski FC, Leite RMVBC, editors. Tecnologias de produção de soja. Londrina, PR: Embrapa Soja; 2020. p. 133-84.). Collected leaves were washed in the sequence: running water, deionized water with neutral detergent (0.1 %), deionized water with hydrochloric acid (0.3 %) and finally rinsed with deionized water. The drying was carried out in a forced ventilation oven at 65 °C, until the samples reached constant mass. After drying, the samples were ground in a Willey mill with a 20 mesh (0.841 mm) sieve to determine the nutritional concentration of nitrogen (N), phosphorus (P), potassium (K), calcium (Ca), magnesium (Mg), sulfur (S), boron (B), copper (Cu), iron (Fe), zinc (Zn) and manganese (Mn).
Nutrient contents were analyzed according to the methodology of Bataglia et al. (1983)Bataglia OC, Furlani AMC, Teixeira JPF, Furlan PR, Gallo JR. Métodos de análises químicas de plantas. Campinas: Instituto Agronômico; 1983. (Boletim técnico, 78)., with determinations methods: N by micro-Kjeldahl, P and S by colorimetry, B also by colorimetry after calcined for 3 h at 600 °C. The K, Ca, Mg, Cu, Fe, Zn and Mn cations were determined by atomic absorption spectrophotometry, after digestion with a solution of nitric acid and perchloric acid. The yield of each field was determined by dividing the total grain mass produced in the field by its area, at 13 % moisture content in the grains.
Using nutrient levels in the leaf tissue and yield (kg ha-1) of the sampled fields, the identification and exclusion of extreme values (outliers) from the database was performed when the value was less than 1 % (p<0.01) in the χ² test based on the Mahalanobis distance (D²) as indicated by Parent et al. (2009)Parent LE, Natale W, Ziadi N. Compositional nutrient diagnosis of corn using the Mahalanobis distance as nutrient imbalance index. Can J Soil Sci. 2009;89:383-90. https://doi.org/10.4141/cjss08050
https://doi.org/10.4141/cjss08050...
. Then the DRIS standards for soybean were determined from the bivariate relationships of the transformed logs, as proposed by Beverly (1987)Beverly RB. Comparison of DRIS and alternative nutrient diagnostic methods for soybean. J Plant Nutr. 1987;10:901-20. https://doi.org/10.1080/01904168709363619
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.
The database without the outliers was submitted to the Shapiro-Wilk test to assess the normality of yield. For the division of the database, fields with a yield equal to or greater than the inflection point of the cumulative cubic function of yield were classified as “subpopulation of reference” or “high-yield subpopulation”, while the other fields, the ones with a yield below the inflection point of the function, were considered “low-yield”, as proposed by Khiari et al. (2001)Khiari L, Parent LE, Tremblay N. Critical compositional nutrient indexes for sweet corn at early growth stage. Agron J. 2001;93:809-14. https://doi.org/10.2134/agronj2001.934809x
https://doi.org/10.2134/agronj2001.93480...
.
Reference values of the indices of the high-yield subpopulation were obtained by the arithmetic means and standard deviations between the nutritional dual relationships (Y / X, Y / Z, ..., Y / W) and their inverse relationships (X / Y, Z / Y, ..., W / Y), transformed by the Neperian logarithm. The index for each nutrient was determined using equation 1, proposed by Beverly (1987)Beverly RB. Comparison of DRIS and alternative nutrient diagnostic methods for soybean. J Plant Nutr. 1987;10:901-20. https://doi.org/10.1080/01904168709363619
https://doi.org/10.1080/0190416870936361...
.
in which: IY is the index of a given nutrient; Y / Xn is the ratio between two nutrients contained in the plant sample; Y is the evaluated nutrient; and Xn the other evaluated nutrients; Pri and Prd are the means of the direct Y / Xn and indirect Xn / Y logarithmic ratios, respectively; k is a constant sensitivity value equal to 1; σrd and σri are the respective standard deviation of the reference subpopulation (high-yield) of direct and indirect relationships; and Nrd and Nri are the numbers of direct and indirect relationships.
Nutrient balance index (IBN) was determined by the sum of the indices of each nutrient in module, from each sample (Walworth and Summer, 1987Walworth JL, Sumner ME. The diagnosis and recommendation integrated system (DRIS). Adv Soil Sci. 1987;6:149-88. https://doi.org/10.1007/978-1-4612-4682-4_4
https://doi.org/10.1007/978-1-4612-4682-...
). Average nutritional balance index (IBNm) was calculated by dividing the IBN value by the total number of nutrients, as proposed by Wadt (2005)Wadt PGS. Relationships between soil class and nutritional status of coffee plantations. Rev Bras Cienc Solo. 2005;29:227-34. https://doi.org/10.1590/S0100-06832005000200008
https://doi.org/10.1590/S0100-0683200500...
. Nutritional sufficiency ranges were established by the critical level of the nutrient in the leaf ± 2/3 standard deviation to determine the lower and upper limits of the range, as indicated for the soybean culture by Kurihara et al. (2013)Kurihara CH, Alvarez V VHA, Neves JCL, Novais RF, Staut LA. Faixas de suficiência para teores foliares de nutrientes em algodão e em soja, definidas em função de índices DRIS. Rev Ceres. 2013;60:412-9. https://doi.org/10.1590/S0034-737X2013000300015
https://doi.org/10.1590/S0034-737X201300...
. Indices obtained by the DRIS methodology were interpreted based on the potential response to fertilization (PRA), divided into five classes of response: positive (p), positive or null (pz), null (n), null or negative (nz) or negative (n), as indicated by Wadt et al. (1998)Wadt PGS, Novais RF, Alvarez V VH, Fonseca S, Barros NF. Valores de referência para macronutrientes em eucalipto obtidos pelos métodos DRIS e chance matemática. Rev Bras Cienc Solo. 1998;22:685-92. https://doi.org/10.1590/S0100-06831998000400014
https://doi.org/10.1590/S0100-0683199800...
. Chi-square statistical analysis (χ²), (p<0.05), was used to assess whether the observed frequencies (FO) of each nutrient in the response classes satisfied the hypothesis that there were no statistical differences with the expected frequencies (FE). Intervals obtained were later compared with values found in the literature.
RESULTS AND DISCUSSIONS
Database submitted to the verification of outlier data by D² was reduced from 153 to 117 samples, so, 36 data points were identified as outliers and removed to avoid distortions. Shapiro-Wilk test (n = 117) indicated the yield data was normal (W = 0.89079; p = 0.09234). The inflection point of the cumulative function of yield (Figure 2) indicated fields with a yield equal to or greater than 3972 kg ha-1 comprised the high-yield subpopulation, with 41 samples (35 %), while the low subpopulation was composed of 76 samples (65 %). Table 1 presents the descriptive statistics (mean, standard deviation and coefficient of variation, variance) of the leaf nutrient contents and productivity evaluated in the high and low productivity subpopulations. Sulfur was the macronutrient with the greatest variability in both the high-productivity population (38.75 %) and the low-productivity population (34.79 %). This variation, in part, is attributed to differences in management, including the application of agricultural gypsum. Regarding micronutrients, Cu had the highest coefficient of variation in the high-productivity population (116.34 %) and in the low-productivity population (179.41 %), which may also be related to defensive management. Areas classified as high-productivity subpopulations showed higher productivity than the average for the western region of Bahia, estimated at 4,020 kg ha-1 (AIBA, 2023Associação de Agricultores e Irrigantes da Bahia - AIBA. Boletins de Safra AIBA. Barreiras, BA: AIBA; 2023. Available from: https://aiba.org.br/boletins-safra/.
https://aiba.org.br/boletins-safra/...
).
Mean, standard deviation, coefficient of variation (CV) and variance of leaf nutrient contents and productivity of subpopulations of high and low soybean productivity in the western region of the state of Bahia
Conversion of dual relations by the Neperian logarithm reduces the kurtosis effect in the normal data distribution curve, increasing the method’s sensitivity (Beverly, 1987Beverly RB. Comparison of DRIS and alternative nutrient diagnostic methods for soybean. J Plant Nutr. 1987;10:901-20. https://doi.org/10.1080/01904168709363619
https://doi.org/10.1080/0190416870936361...
). The greater the kurtosis, the greater the result of infrequent extreme deviations (or outliers), as opposed to frequent deviations from the assessed database. Table 2 shows the averages of the dual ratios and their respective standard deviations of the high-yield subpopulation used to establish the DRIS norms for soybeans. Among the relationships evaluated, those with the highest averages, using their respective absolute values, were those with nutrients S, Fe and P, while the relationships with K, Cu and Mn had the lowest averages, demonstrating the intensity of the nutritional imbalance in the evaluated samples.
Means and standard deviations (σ) of the quotients between nutrient content in soybean leaves, in the high yield subpopulation, transformed by Neperian logarithmic function, in samples collected in the western region of the state of Bahia
The exclusion of outliers by D² increased the coefficient of determination (R²) of the average nutritional balance index (IBNm) with productivity from 0.14 (n = 153) to 0.32 (n = 117) with p<0.05, which means the nutritional balance of this database can explain 32 % of the variation in production, the remaining 68 % were influenced by other factors not linked to plant nutrition (Figure 3). Correlating the leaf content of the evaluated nutrients with their respective indexes (Table 3), null indexes of each equation were established to determine the critical values of nutrient content in the tissue analysis, in which the value of the nutritional index equal to zero indicates the nutritional balance. The nutrients P, K, Ca, S, B, Cu, Fe, Mn and Zn had a strong correlation between their content in the leaf and their respective nutritional indices (R² >0.7), and only the nutrients N and Mg had moderate coefficients (0.4< R² <0.6), which corroborates the classifications of Dancey and Reidy (2013)Dancey CP, Reidy J. Estatística sem matemática para psicologia: Usando SPSS para Windows. 5 ed. Porto Alegre: Artmed; 2013..
Relationship between productivity and the average nutritional balance index (IBNm) of commercial soybean plots in western Bahia.
Statistical models, determination coefficient (R2) and critical level of nutrients determined by the DRIS standard for soybean in western Bahia (n = 117)
The equations of the statistical models were chosen according to their significance and the highest R². Equating the indexes of each equation to zero, the critical level of the evaluated nutrient was obtained. Sufficiency ranges were determined by adding or subtracting 2/3 of the standard deviation of the respective indices. Comparing the nutritional ranges determined by DRIS with the ranges proposed by the literature (Table 4), it is evident that the levels of N, K, Ca, Mg, S and Mn had their lower and upper limits reduced, indicating the need to work with narrower ranges for high yield populations. The ranges of the micronutrients Cu, Fe, and Zn have been expanded, indicating greater variability in the levels than those presented in the literature.
Adequate range of nutrients in soybean leaf obtained by DRIS for western Bahia in relation to the findings of other authors for the Cerrado region
To avoid inconsistencies in the chi-square test (χ²), the fertilizer response classes were grouped into limitation due to lack (p + pz) and limitation due to excess (n + nz). When grouping the classes, in both subpopulations, it was observed (Table 5) that for the subpopulation of high-yield, the order of limiting excess nutrients was P > Zn > K = Ca = Mn > N = B = Fe > Cu = S > Mg; limiting due to lack the order was Zn = Mn > K > Cu > P > Ca > S > B > N = Fe > Mg. For the low-yield subpopulation, the excess limiting order was K > S = Mn > Ca > Zn > Mg > N > Cu > B > Fe > P; limiting due to lack of the order was P > Mn = B > Cu > Fe > Zn > S > Ca > Mg > N > K.
Observed frequency (%) of samples classified according to the potential for response to fertilization (PRA) in the high and low-yield subpopulations proposed by the DRIS method for soybean
By classifying the samples according to the PRA, it was possible to reject the hypothesis that the observed frequencies are statistically similar to the expected frequencies for all classes because the calculated χ² value was higher than the tabulated (Table 6), therefore, the PRA was considered inefficient for the recommendation of fertilizers.
Frequencies of nutrients limiting by excess (n and nz), by lack (p and pz) and non-limiting (z), categorized by PRA and chi-square (χ²) for the high and low yield soybean subpopulations
The most limiting nutrients for excess in the high-yield subpopulation were P, Zn and K. The samples categorized with an excess of P had their average levels (3.3 g kg-1) close to the upper limit of 2.9 g kg-1 determined by the DRIS method for soybeans in the region of the research. Average levels of K and Mn were also observed in samples classified as LE, with values above the upper limit of the appropriate range. Nutrients classified as lacking for the high-yield subpopulation were Zn, Mn and K. Both Zn and K were classified as limiting due to lack and excess; this indicates heterogeneity in the management of the areas, or that environmental factors in addition to the availability of the nutrient in the soil may be affecting their availability to the plants.
For the low-yield subpopulation, the nutrients K, S and Mn were the most limiting due to excess, result different from that obtained by Serra et al. (2010)Serra AP, Marchetti ME, Virotino ACT, Novelino JO, Camacho MA. Desenvolvimento de normas DRIS e CND e avaliação do estado nutricional da cultura do algodoeiro. Rev Bras Cienc Solo. 2010;34:97-104. https://doi.org/10.1590/S0100-06832010000100010
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, that the evaluation by the DRIS method for cotton cultivated in the same region indicated K and Mn as the most limiting due to lack.
Potassium limitation in the soil of the region has already been evidenced by Lopes and Guilherme (2016)Lopes AS, Guilherme LRG. A career perspective on soil management in the Cerrado region of Brazil. Adv Agron. 2016;137:1-72. https://doi.org/10.1016/bs.agron.2015.12.004
https://doi.org/10.1016/bs.agron.2015.12...
, demonstrating grain production is highly dependent on the addition of K through fertilization. The areas evaluated by the DRIS method have shown fertilization is being applied excessively, increasing costs and reducing efficiency. This indicates fertilization imbalance is occurring, and the management needs to be changed to increase the efficiency of the use of inputs on the farm. It is also important to consider in the management of K fertilization that light soils have a low capacity to retain this nutrient (Sharma and Sharma, 2013Sharma V, Sharma KN. Influence of accompanying anions on potassium retention and leaching in potato growing alluvial soils. Pedosphere. 2013;23:464-71. https://doi.org/10.1016/S1002-0160(13)60039-9
https://doi.org/10.1016/S1002-0160(13)60...
). Manganese has its availability for plants affected by soil pH, and unlike K, its natural availability is high, which can be toxic to soybeans, so the proper management of soil pH can control this excess (Fernández and Brown, 2013Fernández V, Brown PH. From plant surface to plant metabolism: The uncertain fate of foliar-applied nutrients. Front Plant Sci. 2013;4:289. https://doi.org/10.3389/fpls.2013.00289
https://doi.org/10.3389/fpls.2013.00289...
; Mayanna et al., 2015Mayanna S, Peacock CL, Schäffner F, Grawunder A, Merten D, Kothe E, Büchel G. Biogenic preciptation of manganese oxides and enrichment of heavy metals at acidic soil pH. Chem Geol. 2015;40:6-17. https://doi.org/10.1016/j.chemgeo.2015.02.029
https://doi.org/10.1016/j.chemgeo.2015.0...
). Sulfur is present in several fertilizers, such as single superphosphate (8 % S) and ammonium sulfate (24 % S), thus, the addition of S occurs indirectly when other nutrients are being applied, resulting in an over S application in the field.
Phosphorus was considered the most limiting nutrient due to lack in the low yield subpopulation, and no samples indicated limitation by excess. In tropical soils, P has low natural availability because the rocks that originated the soils of the region have a low content of this nutrient. Therefore, P is the main limiting nutrient for agricultural production in the region (Silva et al., 2019Silva FF, Gonçalves DHJ, Cruz GS, Lima WN, Lima RCA, Lima MAS. Phosphate fertilization efficiency in soybean cultivars indicated for cerrado tropical soil region. Cienc Agr. 2019;17:45-51. https://doi.org/10.28998/rca.v17i3.7803
https://doi.org/10.28998/rca.v17i3.7803...
). The study by Hanson (1981)Hanson RG. DRIS evaluation of N, P, K status of determinants soybeans in Brazil. Commun Soil Sci Plant Anal. 1981;12:933-48. https://doi.org/10.1080/00103628109367206
https://doi.org/10.1080/0010362810936720...
showed soybean yield had a direct relationship with the P index and the most productive samples were those in which the P index was close to the neutral balance (equal to zero). Important functions are performed in the plant by P, such as a constituent of cell membranes and energy storage in the form of ATP (Dechen and Nachtigall, 2007Dechen AR, Nachtigall GR. Elementos requeridos à nutrição de plantas. In: Novais RF, Alvarez V VH, Barros NF, Fontes RLF, Cantarutti RB, Neves JCL, editors. Fertilidade do Solo. Viçosa, MG: Sociedade Brasileira de Ciência do Solo; 2007. p. 91-132.). Phosphorus limitation for plant may reflect a reduction in the viable number of pods, which, according to Alcântara Neto et al. (2011)Alcântara Neto FA, Gravina GA, Monteiro MMS, Morais FB, Petter FA, Albuquerque JAA. Análise de trila de rendimento de grãos de soja na microrregião do Alto Médio Gurgueia. Comun Sci. 2011;2:107-12. https://doi.org/10.14295/cs.v2i2.74
https://doi.org/10.14295/cs.v2i2.74...
, is the main component of soybean yield.
An experiment conducted by Nowaki et al. (2017)Nowaki RHD, Parent SE, Filho ABC, Rozane DE, Meneses NB, Silva JAS, Natale W, Parent LE. Phosphorus over-fertilization and nutrient misbalance of irrigated tomato crop in Brazil. Front Plant Sci. 2017;6:825. https://doi.org/10.3389/fpls.2017.00825
https://doi.org/10.3389/fpls.2017.00825...
showed the yield response with fertilization can vary depending on the water availability for the crop; therefore, in soils with low water retention capacity, periods of drought can cause or increase nutritional deficiency in the crop, even with adequate nutrient levels in the soil.
Urano et al. (2006)Urano EOM, Kurihara CH, Maeda S, Vitorino ACT, Gonçalves MC, Marchetti ME. Avaliação do estado nutricional da soja. Pesq Agropec Bras. 2006;41:1421-8. https://doi.org/10.1590/S0100-204X2006000900011
https://doi.org/10.1590/S0100-204X200600...
, studying soybean crops in the Midwest of Brazil, using the same methodology, found Zn, P and Fe as the most limiting nutrients due to their lack, and Mg and Mn the most limiting by excess. In this case, the relationships were very similar to those found for soybeans in Bahia, meaning the crop showed similar responses to the management system even in another region. More than assessing which elements are in excess or missing, the DRIS method aims to relate the physiological responses of plants and the imbalance between the elements, whether derived from antagonistic or synergistic relationships.
CONCLUSIONS
Sufficiency ranges proposed by the DRIS method for soybeans in western Bahia, for nutrients N, K, Ca, Mg, S and Mn have reduced upper and lower limits, while the micronutrients Cu, Fe and Zn have greater amplitudes in sufficiency ranges when compared to the ranges proposed by other authors. The PRA method is inefficient in recommending fertilization in both subpopulations. In the high-yield subpopulation, Zn and Mn are the most limiting nutrients due to deficiency, while P and Mn are the most limiting nutrients in the low-yield subpopulation. Manganese and Cu, in both subpopulations, are among the most limiting nutrients due to lack. Nutritional ranges obtained in the present study can be used by soybean producers in western Bahia, allowing greater precision in the nutritional diagnosis of the crop in current production bases.
ACKNOWLEDGMENTS
To the College Arnaldo Horácio Ferreira for the availability of the laboratory, the Comitê Estratégico Soja Brasil for the financial support, and the producers for permission to collect the nutritional and yield data used in this study.
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How to cite: Ferreira E, Medeiros FC, Rozane DE, Lindsey L, Amadori C, Rocha CS. Assessment of nutritional status of soybean by the DRIS method in western of Bahia State. Rev Bras Cienc Solo. 2024;48:e0230099 https://doi.org/10.36783/18069657rbcs20230099
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Publication Dates
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Publication in this collection
22 Apr 2024 -
Date of issue
2024
History
-
Received
29 Aug 2023 -
Accepted
15 Feb 2024