| Literature DB >> 25826402 |
Rodolfo Jaffé1, Nathaniel Pope2, Airton Torres Carvalho3, Ulysses Madureira Maia3, Betina Blochtein4, Carlos Alfredo Lopes de Carvalho5, Gislene Almeida Carvalho-Zilse6, Breno Magalhães Freitas7, Cristiano Menezes8, Márcia de Fátima Ribeiro9, Giorgio Cristino Venturieri8, Vera Lucia Imperatriz-Fonseca10.
Abstract
Stingless bees are an important asset to assure plant biodiversity in many natural ecosystems, and fulfill the growing agricultural demand for pollination. However, across developing countries stingless beekeeping remains an essentially informal activity, technical knowledge is scarce, and management practices lack standardization. Here we profited from the large diversity of stingless beekeepers found in Brazil to assess the impact of particular management practices on productivity and economic revenues from the commercialization of stingless bee products. Our study represents the first large-scale effort aiming at optimizing stingless beekeeping for honey/colony production based on quantitative data. Survey data from 251 beekeepers scattered across 20 Brazilian States revealed the influence of specific management practices and other confounding factors over productivity and income indicators. Specifically, our results highlight the importance of teaching beekeepers how to inspect and feed their colonies, how to multiply them and keep track of genetic lineages, how to harvest and preserve the honey, how to use vinegar traps to control infestation by parasitic flies, and how to add value by labeling honey containers. Furthermore, beekeeping experience and the network of known beekeepers were found to be key factors influencing productivity and income. Our work provides clear guidelines to optimize stingless beekeeping and help transform the activity into a powerful tool for sustainable development.Entities:
Mesh:
Year: 2015 PMID: 25826402 PMCID: PMC4380461 DOI: 10.1371/journal.pone.0121157
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Histograms showing the frequency distribution of nine continuous indicators of productivity and income.
Red bars represent the means, while blue bars show the median values. Extreme values of some variables were excluded to improve clarity (see S3 Table for full summary statistics).
Fig 2Proportional representation of the main species kept by 246 Brazilian stingless beekeepers (See S4 Table for sample sizes and the complete species list).
Best models describing whether beekeepers multiply colonies, sell colonies or sell honey.
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| 203 | Number of colonies, Meliponiculture course, Native vegetation, and Supplementary feeding | Main species | Colony multiplication is more frequent among beekeepers that have more colonies, did a course in meliponiculture, keep their bees within 3 Km of native vegetation, and feed their colonies. These trends hold across the main species kept. |
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| 206 | Sells honey?, Number of known beekeepers, and Supplementary feeding | Main species | Selling colonies is more frequent among beekeepers that sell honey, know a larger number of other beekeepers, and feed their colonies. These trends hold across the main species kept. |
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| 198 | Sells colonies?, Years keeping bees, Meliponiculture course, Education level, Crops, and Property type | Main species | Selling honey is more frequent among beekeepers that sell colonies, have more years of experience keeping bees, did a course in meliponiculture, have a lower level of education, have crops on their property, and have a rural property. These trends hold across the main species kept. |
The number of observations included in each model is provided (N) along with the model structure and its biological interpretation. All models are generalized linear mixed models (GLMM) with a Bernoulli distributed response variable (logistic regressions). Regression coefficients, p-values, and confidence intervals for all models are summarized in S5 Table.
Best models describing nine different indicators of productivity and income (response variables).
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| 187 | LMM | Years keeping bees, Number of known beekeepers, Native vegetation, Use of vinegar, and Supplementary feeding | Main species | Beekeepers with more years of experience that know a larger number of other beekeepers, use vinegar to control parasitic flies and feed their colonies, have more colonies. The number of colonies is also higher in locations that have native vegetation within 3 Km. These effects hold across the main species kept. |
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| 195 | LMM | Years keeping bees, and Number of known beekeepers | Main species | Beekeepers with more years of experience that know a larger number of other beekeepers, have more colonies of the principal species. These effects hold across the main species kept. |
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| 126 | LMM | Number of colonies, Number of known beekeepers, Supplementary feeding, and Property ownership | Main species | Beekeepers with more colonies, that know a larger number of other beekeepers, and feed their colonies, manage to multiply a larger number of colonies per year. Property owners multiply fewer colonies per year than not-owners. These effects hold across the main species kept. |
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| 70 | LMM | Selective breeding | Main species | Honey production per colony is higher among beekeepers that multiply their colonies selectively. This effect holds across the main species kept. |
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| 86 | GLMM | Inspection frequency and Honey harvest method | Individual, Main species | Beekeepers that inspect their colonies less frequently and harvest honey by flipping the boxes lose more colonies. These effects hold across the main species kept. |
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| 60 | LMM | Years keeping bees | Main species | Beekeepers with more years of experience keeping bees, sell more colonies per year. This effect holds across the main species kept. |
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| 64 | LMM | Number of colonies of main species, Years keeping bees, and Honey conservation method | Years keeping bees, and Main species | Beekeepers with more colonies of the main species, more years of experience keeping bees, and using an established honey conservation method, sell more honey per year. These effects hold across the main species kept, although the magnitude of the relationship between Years keeping bees and Liters of honey sold varies. |
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| 75 | LM | Number of colonies, Labeling of honey containers, Honey conservation method and the interaction Number of colonies-Labeling of honey containers | - | Beekeepers with more colonies that label honey containers and use an established honey conservation method, have higher yearly earnings. The influence of the number of colonies on earnings is more pronounced among beekeepers that label honey containers. These effects do not vary across the main species kept. |
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| 132 | LM | Number of colonies, Education level, Feeding frequency, Age, and the interaction Feeding frequency-Age | - | Yearly costs increase with the number of colonies, the level of education, the feeding frequency, and the age of beekeepers. Older beekeepers spend more money regardless how frequently they feed their colonies. These effects not vary across the main species kept. |
The number of observations included in each model is provided (N) along with the model type, the model structure and its biological interpretation. Regression coefficients, p-values, and confidence intervals for all models are summarized in S5 Table.
a Linear model (LM), linear mixed model (LMM), or Generalized linear mixed model (GLMM).
b Number of lost colonies per year standardized by the total number of colonies kept (used as an offset). GLMM with a Poisson distribution. Overdispersion accounted for by including individual as a random effect.
c Main species kept was excluded as a random effect since its variance approached zero in a mixed model.
Fig 3Influence of the years of experience keeping bees on the number of colonies kept, the number of colonies sold and the liters of honey sold (A), and influence of the number of known beekeepers on the number of colonies kept and the number of multiplied colonies (B).
Response variables are detrended to show the correct relationship between response and particular predictor variables (the effect of the other predictor variables has been subtracted out). Blue lines represent fitted curves while gray areas show 95% confidence intervals.
Fig 4Influence of supplementary feeding on the number of colonies and the number of multiplied colonies (A), and influence of the honey conservation method on the liters of honey sold and yearly earnings (B).
Established methods include freezing, pasteurization, maturation and dehumidification. Response variables are detrended to show the correct relationship between response and particular predictor variables (the effect of the other predictor variables has been subtracted out). Median values are represented by the lines inside boxes, which span the first and third quartiles. Dots show all observations outside these quartiles, and sample sizes are provided in brackets.
Fig 5Influence of colony inspection frequency on the number of colonies lost (A), influence of the honey harvest method on the number of colonies lost (B), influence of the use of vinegar on the number of colonies (C), and influence of selective breeding on the liters of honey produced per colony (D).
Response variables are detrended to show the correct relationship between response and particular predictor variables (the effect of the other predictor variables has been subtracted out). In A, the blue line represents the fitted curve while the gray area shows the 95% confidence interval. In B, C and D, median values are represented by the lines inside boxes, which span the first and third quartiles. Dots show all observations outside these quartiles, and sample sizes are provided in brackets.
Fig 6Influence of the number of colonies on yearly earnings, among beekeepers that label and do not label honey containers (A), and influence of the beekeeper’s age on yearly costs, among beekeepers that feed their colonies with varying frequencies (B).
Response variables are detrended to show the correct relationship between response and particular predictor variables (the effect of the other predictor variables has been subtracted out). Lines represent fitted curves.
Fig 7Proportional representation of the main problems affecting stingless beekeeping in Brazil, as identified by 230 beekeepers.
Fig 8Proportional representation of other bee products commercialized by 13% (32) of all interviewed beekeepers.