ABSTRACT:
The chemical analysis of flowers has been studied for some crops. In coffee trees, the flower tissue analysis could anticipate the nutritional diagnosis. This study aimed to: (i) compare the mineral composition of coffee flowers and leaves; and to (ii) generate reference values for nutritional diagnosis of coffee trees, based on flower and leaf analysis. Nutrient content of flowers and leaves and coffee productivity were evaluated in 26 commercial farms located in Manhuaçu, MG, Brazil throughout three years. The critical nutrient content range in flowers are respectively: 2.78 - 3.17, 0.23 - 0.28, 2.80 - 3.12, 0.30 - 0.37, 0.24 - 0.30, 0.15 - 0.18 dag kg-1 of N, P, K, Ca, Mg, and S; and 17 - 21, 12 - 18, 52 - 80, 26 - 43, and 28 - 48 mg kg-1 of Zn, Cu, Mn, Fe, and B. For leaves, the critical nutrient ranges are respectively: 2.63 - 2.86, 0.13 - 0.14, 2.13 - 2.33, 1.04 - 1.22, 0.27 - 0.33, 0.15 - 0.18 dag kg-1 of N, P, K, Ca, Mg, and S; and 9 - 14, 15 - 23, 80 - 115, 99 - 148, and 31 - 37 mg kg-1 of Zn, Cu, Mn, Fe, and B. The nutritional diagnosis of coffee trees for N, P, Ca, Fe, Cu, and Mn can be anticipated using flower analysis.
Key words: Coffea arabica L.; leaf analysis; flower analysis; coffee tree nutrition.
RESUMO:
A análise química de flores tem sido estudada em algumas culturas. Para o cafeeiro, a análise do tecido floral possibilitaria a antecipação do diagnóstico nutricional das lavouras. O estudo objetivou (i) comparar a composição mineral de flores e de folhas de cafeeiros (ii) e gerar normas para diagnose nutricional do cafeeiro com base na análise de tecidos de flores e folhas das plantas. Para isso, foram avaliados os teores de nutrientes em flores e folhas e a produtividade de café em 26 lavouras comerciais na região de Manhuaçu, MG, durante três anos. As faixas críticas de nutrientes determinadas em flores são: 2,78 - 3,17; 0,23 - 0,28; 2,80 - 3,12; 0,30 - 0,37; 0,24 - 0,30; 0,15 - 0,18 dag kg-1 de N, P, K, Ca, Mg e S, e 17 - 21; 12 - 18; 52 - 80; 26 - 43 e 28 - 48 mg kg-1 para Zn, Cu, Mn, Fe e B, respectivamente. As faixas críticas de nutrientes em folhas foram: 2,63 - 2,86; 0,13 - 0,14; 2,13 - 2,33; 1,04 - 1,22; 0,27 - 0,33; 0,15 - 0,18 dag kg-1 de N, P, K, Ca, Mg e S, e 9 - 14; 15 - 23; 80 - 115; 99 - 148 e 31 - 37 mg kg-1 para Zn, Cu, Mn, Fe e B, respectivamente. A diagnose nutricional do cafeeiro, quanto aos nutrientes N, P, Ca, Fe, Cu e Mn, pode ser antecipada por meio da análise de flores.
Palavras-chave: Coffea arabica L.; análise foliar; análise de flores; nutrição do cafeeiro.
INTRODUCTION:
Leaf analysis is one of the principal tools to assess the nutritional status of agricultural and forest crops. If properly adopted, those analyses allow detecting deficiencies or excess of mineral nutrients in plants and supporting nutrient management programs based on soil analysis (DEUS et al., 2018; NOWAKI et al., 2017; RAGOZO et al., 2014).
A great effort has been made to properly adopt this type of analysis for coffee trees. A significant part of this effort is associated with studies aiming to define reference values for coffee tree diagnosis (BARBOSA et al., 2006; FARNEZI et al., 2010; SILVA, et al., 2015). These standards must consider the portion of the tree to be analyzed, the sampling season, and the number of sub-samples to obtain a representative composite sample (MARTINEZ et al., 2004).
Flower mineral content assessment for plant nutritional diagnosis was proposed more recently than leaf analysis (SANZ et al., 1993). In Europe, more studies using this technique have been performed for fruit species like peach (IGARTUA et al., 2000; SANZ & MONTAÑÉS, 1995), pear (SANZ et al., 1993), and orange trees (PESTANA et al., 2004). Few studies; however, have been conducted in Brazil.
The advantage of flower analysis for coffee trees is anticipating the nutritional diagnosis when compared with leaf analysis (MARTINEZ et al 2003a), currently performed during the beginning of the fruit development. Thus, the flower analysis may be useful for adjusting the fertilization program at the beginning of the growing season, before irreversible productivity losses occur (MARTINEZ et al 2003a). However, it is still necessary to establish flower collection protocols for a nutritional diagnosis of coffee trees, in addition to a validation process under different farming conditions.
This study aimed to: (i) compare the mineral composition of coffee tree flowers and leaves, and (ii) design reference values for nutritional analyses of coffee trees, based on flower and leaf tissue analyses.
MATERIALS AND METHODS:
Defining the flower collection protocol
This study was performed in the city of Manhuaçu, located in the Matas de Minas region (area of Brazilian Atlantic Forest in the east of Minas Gerais) at an average altitude of 750 m. The soils of the region are predominantly Oxisols, the average rainfall is 1,466 mm/year, and the average temperature is 21.2 °C.
In the first stage, this study compared the chemical composition of flowers located in different positions of adult trees plagiotropic branches. This procedure was performed to establish a flower collection protocol for nutritional analysis. A completely randomized experiment was conducted with the rosette position in plagiotropic branches composing the treatments. Complete flower rosettes were collected from the first to the sixth positions from the branch apex. The collection was performed using a zigzag pattern throughout an adult farm populated by 5,555 trees per hectare without dying lower branches, collecting flowers on all sides of cardinal exposure. Four repetitions were performed for each treatment. The obtained vegetable material was chemically analyzed to determine the concentration of macro and micronutrients.
Before the chemical analysis, the flowers were rinsed using deionized water, drought using a forced-air oven at 70 °C for 72 hours, and ground in a Wiley mill. The N content was determined after a sulfuric acid digestion using the Nessler colorimetric method (JACKSON, 1958). Subsequently, the material was submitted to nitric-perchloric acid digestion to determine P, K, Ca, Mg, S, Zn, Cu, Fe, and Mn contents (JOHNSON & ULRICH, 1959) and dry ash digestion at 550 °C for 3 hours to determine the B content (MALAVOLTA et al., 1997). The P content was measured by reducing phosphomolybdate using vitamin C (BRAGA & DEFELIPO, 1974); the K content by flame emission spectrophotometry (MALAVOLTA et al., 1997); the S content by turbidimetry (JACKSON, 1958); and the Ca, Mg, Zn, Cu, Fe, and Mn contents by atomic absorption spectrophotometry (AOAC, 1975). The B content was determined by the azomethine-H method (MALAVOLTA et al., 1997).
Data collection for comparing flowers and leaves analyses, and the elaboration of reference values for interpreting plant tissue analyses
In the second stage of this study, the nutrient content of flowers and leaves were compared, and reference values for a nutritional diagnosis based on flower analysis and the traditional method (leaf analysis) were established. Twenty-six commercial stands of Coffea arabica L. cv. Catuaí at the productive stage were selected in different farms. The coffee stands were selected based on the coffee productivity history over three years, before collecting plant material.
Thirteen out of twenty-six stands were considered lowly productive with an average production below 30 bags ha-1, and the other 13 as highly productive with an average production above 40 bags ha-1. The planting densities adopted in the farms ranged between 4 and 6 thousand plants ha-1. In each coffee stand, three lines containing ten plants were selected, and the flower and leaf samples of the five central plants were collected along with the 2005/2006, 2006/2007, and 2007/2008 harvests.
Flower samples were collected during the flowering stage, which coincided between late September and early October along the three years when this study was conducted; leaf samples were collected 60 days after flowering, during the early fruit development stage (green cherries stage). Flowers were collected from a complete floral rosette on the fourth node from the branch apex, from 20 branches per parcel located on the middle portion of both the free sides of the tree canopies. Leaf samples were collected from the fourth node from the branch apex (MALAVOLTA et al., 1997). Macro and micronutrient contents were determined at the second stage of this study through the same procedures of the first stage.
A manual harvest was performed when the fruits were at the harvest point (about 80 to 90% of fruits at the cherry stage) in the five selected plants from the parcel, to evaluate the production and estimate the productivity. The fruits were dried under the sunlight until constant humidity was reached (13.5%), and the peels and grains were weighed to estimate productivity, expressed as bags of processed coffee per hectare.
Data analysis
The data obtained during the first stage to quantify nutrient content in flowers from different positions of the branch were compared using the F-test at 5 % of significance. In the second stage, the data obtained each year in the more productive stands (≥ 40 bags ha-¹ of processed coffee) were separated from those obtained less productive stands, composing populations with high and low productivity in which the average productivity was respectively 78.90 and 15.66 bags ha-¹. Subsequently, the confidence interval was calculated for the nutrient content of coffee tree flowers and leaves to compare highly and lowly productive farms, and among the years. Regression analyses were also performed to study the relationship between the nutrient contents of coffee flowers and leaves. All statistical analyses were performed through the «Genes» genetics and statistic application (CRUZ, 1997).
The critical ranges (CR) for nutrient contents in flowers and leaves were calculated using the equation CR= X ± (SX) k, where X is the reference concentration of the nutrient in each analyzed part, obtained from the highly productive population, SX is the standard deviation of the mean, and k is a constant (k = 1 for nutrients with a coefficient of variation CV < 20%, k = 0.8 for nutrients with 20% ≤ CV ≤ 40%, and k = 0.6 for nutrients with a CV > 40% to avoid wide ranges caused by the high coefficient of variation of some nutrients (MARTINEZ et al., 2003b).
RESULTS AND DISCUSSION
Nutrient content of flowers located in different positions of the coffee tree branch
There was no difference between macro and micronutrient contents in flowers from the first and sixth rosettes of coffee branches (Table 1); therefore, samples can be collected indistinctly for nutritional diagnosis purposes.
It is known that there may be an influence of the flower and leaf collection position on the nutrient content (AMARAL et al., 2002; LIMA et al., 2007). However, we were unable to find similar studies about the effect of the collection procedure on the nutritional diagnosis of coffee flowers. Based on this study, a higher stability of nutrient contents can be found in flower tissues when compared to leaves. In this sense, mistakes related to location of flower samples would present less influence on the coffee trees’ nutritional diagnosis.
Farm productivity and the relationship between coffee flowers and leaves nutritional content
The statistical procedures (F-test and t-test) confirmed productivity differences among farms composing the highly and lowly productive groups of this study (Table 2 and Table 3). Furthermore, the reference population (highly productive farms) productivity was less biennial. The coefficient of variation of the harvests along the years was an average of 34.7% in highly productive farms compared with 66.8% in lowly productive farms. These results also indicated that the farms selected for the reference population were, in fact, nutritionally balanced once it is expected that better-nourished plants present a higher production stability over time (VALADARES et al., 2013).
The N, P, Cu, Fe, and Mn content in flowers varied similarly to the content in leaves (organ traditionally used for plant tissue analysis) collected 60 days after flowering, with higher correlations for P, Fe, and Mn (Table 3). In lowly productive farms, however, there was a direct and significant relationship for Ca and Fe only.
A similar behavior between nutrient contents in flowers and leaves was also observed in several studies about different crops (BELKHODJA et al., 1998; JIMÉNEZ et al., 2004; SANZ & MONTAÑÉS, 1995) including coffee trees (MARTINEZ et al., 2003a).
Similarly to MARTINEZ et al. (2003a), who conducted a study under different management conditions, this study evidenced the possibility of using flowers to anticipate the diagnosis of deficiencies and excess of nutrients in coffee trees.
Critical nutrient concentration ranges in coffee flowers and leaves
The critical macro and micronutrient ranges for nutritional diagnose of coffee trees based on flowers and leaves analyses are presented in table 4. The critical ranges for interpreting flower tissue analyses obtained in this study were compared to those obtained by MARTINEZ et al. (2003b) in the city of Viçosa, MG, Brazil. In our study, the adequate values for N, K, Ca, Mg, Zn, Cu, and B were higher than those determined by MARTINEZ et al. (2003b) while similar for P, S, Fe, and Mn. An important aspect is that the average productivity used in this study was higher than in the farms studied by MARTINEZ et al. (2003b). The critical ranges for leaf analysis interpretation were also different from those defined for other regions (FARNEZI et al., 2009; MARTINEZ et al., 2003b). Those differences indicated that the reference values for plant tissue interpretation need to be regionalized as much as possible (MARTINEZ et al., 2003b), since the plant nutritional conditions change along with the farming environment.
CONCLUSION:
Flowers between the first and sixth flower rosette from the branch apex can be indistinctly collected to diagnose the nutritional status of coffee trees.
Flower analysis is sensitive to the nutritional status of coffee trees and may stand as a complementary technique to diagnose using leaf analysis.
The nutritional diagnosis of coffee trees can be anticipated using flower analysis for N, P, Ca, Fe, Cu, and Mn.
ACKNOWLEDGEMENTS
This study was financed in part by the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - Brasil (CAPES) - Finance Code 001”
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Publication Dates
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Publication in this collection
12 Apr 2021 -
Date of issue
2021
History
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Received
10 Oct 2019 -
Accepted
09 Nov 2020 -
Reviewed
02 Feb 2021