Abstracts
One of the main risks associated to transgenic crops expressing Bacillus thuringiensis (Bt) toxins is the evolution of pest resistance. The adoption of Bt crops requires environmental risk assessment that includes resistance risk estimation, useful for definition of resistance management strategies aiming to delay resistance evolution. In this context, resistance risk is defined as the probability of the Bt toxin resistance allele frequency (RFreq) exceeding a critical value (CriticalFreq). Mathematical simulation models have been used to estimate (RFreq) over pest generations. In 1998, Caprio developed a deterministic simulation model with few parameters that can be used to obtain RFreq point estimates from point information about model parameters and decision variables involved in that process. In this work, the resistance risk was estimated using Caprio´s model, by incorporating uncertainty to the resistance allele initial frequency (InitialFreq). The main objective was to evaluate the influence of different probability distribution functions on the risk estimates. The simulation results showed that the influence of InitialFreq input distributions on the risk estimates changes along pest generations. The risk estimates considering input Normal distribution for InitialFreq are similar to those ones obtained considering Triangular distribution if their variances are equal. The use of Uniform distribution instead the Normal or Triangular due to the lack of information about InitialFreq leads to an overestimation of risk estimates for the initial generations and sub estimation for the generations after the one for which the critical frequency is achieved.
Bacillus thuringiensis; Bt crops; modeling; uncertainty analysis
Um dos principais riscos associados às culturas inseticidas que expressam toxinas da bactéria Bacillus thuringiensis (Bt) é a evolução de resistência em pragas alvo. A adoção das culturas Bt requer avaliações prévias de impacto ambiental que incluem quantificação desse risco, informação útil para definição de estratégias de manejo para retardar o processo de evolução da resistência. O risco de resistência é definido como a probabilidade de a freqüência do alelo de resistência à toxina Bt (RFreq) na população da praga alvo ser superior a um valor crítico (CriticalFreq). Modelos matemáticos de simulação têm sido utilizados para estimar RFreq ao longo das gerações da praga. Em 1998, Caprio desenvolveu um modelo determinístico, com poucos parâmetros, que produz estimativas pontuais de RFreq a partir de informações também pontuais sobre os parâmetros e variáveis de decisão envolvidos no processo. Neste trabalho, o risco de resistência foi estimado utilizando o modelo de Caprio, incorporandose incerteza ao parâmetro freqüência inicial do alelo de resistência (InitialFreq). Avaliouse o efeito de diferentes distribuições de InitialFreq sobre as estimativas de risco. Observouse que essas estimativas são afetadas pela distribuição de InitialFreq de modo diferenciado ao longo das gerações. As estimativas obtidas considerando a distribuição Normal são similares àquelas considerando a distribuição Triangular quando as referidas distribuições têm a mesma variância. O uso da distribuição Uniforme, em vez da Normal ou Triangular, leva à superestimação das estimativas de risco de resistência nas gerações iniciais e subestimação nas gerações subseqüentes àquela em que a CriticalFreq é atingida.
Bacillus thuringiensis; culturas Bt; modelagem; análise de incertezas
CROP SCIENCE
Probabilistic tools for assessment of pest resistance risk associated to insecticidal transgenic crops
Métodos probabilísticos para quantificação de risco de resistência de pragas a culturas transgênicas inseticidas
Aline de Holanda Nunes Maia^{I}; Durval Dourado NetoII, ^{*} * Corresponding author < dourado@esalq.usp.br>
^{I}Embrapa Meio Ambiente, C.P. 69  13820000  Jaguariúna, SP  Brasil
^{II}USP/ESALQ, Depto de Produção Vegetal, C.P. 9  13418900  Piracicaba, SP  Brasil
ABSTRACT
One of the main risks associated to transgenic crops expressing Bacillus thuringiensis (Bt) toxins is the evolution of pest resistance. The adoption of Bt crops requires environmental risk assessment that includes resistance risk estimation, useful for definition of resistance management strategies aiming to delay resistance evolution. In this context, resistance risk is defined as the probability of the Bt toxin resistance allele frequency (RFreq) exceeding a critical value (CriticalFreq). Mathematical simulation models have been used to estimate (RFreq) over pest generations. In 1998, Caprio developed a deterministic simulation model with few parameters that can be used to obtain RFreq point estimates from point information about model parameters and decision variables involved in that process. In this work, the resistance risk was estimated using Caprio´s model, by incorporating uncertainty to the resistance allele initial frequency (InitialFreq). The main objective was to evaluate the influence of different probability distribution functions on the risk estimates. The simulation results showed that the influence of InitialFreq input distributions on the risk estimates changes along pest generations. The risk estimates considering input Normal distribution for InitialFreq are similar to those ones obtained considering Triangular distribution if their variances are equal. The use of Uniform distribution instead the Normal or Triangular due to the lack of information about InitialFreq leads to an overestimation of risk estimates for the initial generations and sub estimation for the generations after the one for which the critical frequency is achieved.
Key words:Bacillus thuringiensis, Bt crops, modeling, uncertainty analysis
RESUMO
Um dos principais riscos associados às culturas inseticidas que expressam toxinas da bactéria Bacillus thuringiensis (Bt) é a evolução de resistência em pragas alvo. A adoção das culturas Bt requer avaliações prévias de impacto ambiental que incluem quantificação desse risco, informação útil para definição de estratégias de manejo para retardar o processo de evolução da resistência. O risco de resistência é definido como a probabilidade de a freqüência do alelo de resistência à toxina Bt (RFreq) na população da praga alvo ser superior a um valor crítico (CriticalFreq). Modelos matemáticos de simulação têm sido utilizados para estimar RFreq ao longo das gerações da praga. Em 1998, Caprio desenvolveu um modelo determinístico, com poucos parâmetros, que produz estimativas pontuais de RFreq a partir de informações também pontuais sobre os parâmetros e variáveis de decisão envolvidos no processo. Neste trabalho, o risco de resistência foi estimado utilizando o modelo de Caprio, incorporandose incerteza ao parâmetro freqüência inicial do alelo de resistência (InitialFreq). Avaliouse o efeito de diferentes distribuições de InitialFreq sobre as estimativas de risco. Observouse que essas estimativas são afetadas pela distribuição de InitialFreq de modo diferenciado ao longo das gerações. As estimativas obtidas considerando a distribuição Normal são similares àquelas considerando a distribuição Triangular quando as referidas distribuições têm a mesma variância. O uso da distribuição Uniforme, em vez da Normal ou Triangular, leva à superestimação das estimativas de risco de resistência nas gerações iniciais e subestimação nas gerações subseqüentes àquela em que a CriticalFreq é atingida.
Palavraschave:Bacillus thuringiensis, culturas Bt, modelagem, análise de incertezas
INTRODUCTION
Over the last few decades, genes originating from the soil bacteria Bacillus thuringiensis (Bt), which encodes the synthesis of insecticidal proteins, have been incorporated by genetic engineering into cultivated species such as maize, cotton, canola and potato. Plants modified by the insertion of such genes are known as insecticidal transgenic plants (Andow & Hutchison, 1998). One of the main environmental risks associated with insecticidal transgenic crops is the evolution of resistance in target pests. Pest resistance is defined as the evolved capacity of an organism to survive in response to selective pressure from exposure to a pesticide (ILSI/HESI, 1998). Pest resistance evolution to Bt toxins expressed in transgenic plants is affected by many interrelated bioecological factors (ILSI/HESI, 1998). Because of the complexity of this process, field experiments to investigate largescale resistance are virtually impossible (Peck et al., 1999). Simulation models are one of the few sound scientific approaches that allow the integration of bioecological knowledge available for assessing risk of resistance evolution.
Models that simulate pest resistance evolution to crops expressing Bt toxins are based on operational factors, target pest ecology and population genetics. Operational factors comprise traits of the Bt crop and crop management practices, including pest management options.
Refuge strategy is the core management option proposed for delaying resistance evolution in Bt crops (Andow & Hutchison, 1998; ILSI/HESI, 1998). The refuges are constituted by non Bt host plants areas for habitation and immigration of susceptible target pests (Whalon & Norris, 1999). Such strategy may be an effective way to reduce selection pressure on the pest population.
The deterministic Caprio´s model requires information on parameters such as initial frequency of resistance alleles (InitialFreq), gene expression and fitness of the different pest genotypes. Since the information about those parameters has a high level of associated uncertainty, a realistic approach to that process requires tools that incorporate the stochastic character of such information.
Spatially explicit stochastic models have been developed to simulate the evolution of resistance (Caprio, 1998b; Peck et al., 1999). In these models, the simulation is carried out considering an area subdivided into patches. The events related to the target pest biology and ecology, such as oviposition and dispersal, are treated as stochastic events in each patch. If little information is available about the spatial processes involved, mainly those ones related to detailed spatial characterization of dispersal, the use of such models is not feasible. Even simple parsimonious deterministic models still require information about parameters that, depending on the stage of knowledge about the pest, can be extremely imprecise. The resistance allele initial frequency in the target pest population (InitialFreq) is one of the key parameters for the models that simulate the evolution of resistance: the process will take place more rapidly when the InitialFreq is high, although this relation is not linear. Recent studies suggest that, at least in some species of Lepidoptera, the InitialFreq ranges from 10^{4} to 10^{3} (Gould et al., 1997; Bourguet et al., 2003).
Probabilistic risk assessment requires tools that allow incorporation of parameters' stochasticity into deterministic models. Uncertainty analysis can be used to take into account such stochastic character (Abrahamsson, 2002). Briefly, uncertainty analysis comprises a set of stochastic input parameters characterized by input probability distributions, a model that integrates the information about the processes modeled and their interrelations. Probability distributions of output variables are produced through interactive methods (Iman & Conover, 1982), (Anderson & Hattis, 1999; Frey & Burmaster, 1999; Hoffman & Kaplan, 1999). The output distributions are used to describe the set of possible values for a particular output variable (Y) and allow estimation of probabilistic functions, such as Y distribution percentiles or probability of Y exceed previously stated critical values.
The purposes of this study were: to demonstrate how uncertainty analysis can be used in the context of resistance risk assessment and, to investigate the influence of different InitialFreq input probability distributions on resistance risk estimates.
MATERIAL AND METHODS
Caprio's deterministic model was chosen for uncertainty incorporation (Caprio, 1998a) and was developed to simulate resistance evolution considering a simplified approach, with a small number of parameters when compared to the stochastic spatial model (Caprio, 1998b) approach. Caprio (2001) discuss the use of both stochastic and deterministic Caprio´s models.
Due to its simplicity and parsimony, the deterministic model allows rapid simulation of scenarios for a high number of combinations of parameter values. This model requires information related to the Bt toxin expression in the transgenic plant, the target pest bioecology and the pest management strategy to be adopted (Table 1). Different scenarios can be constructed by varying parameter and/or decision variables values. Decision variables are related to operational factors influencing the evolution of resistance.
The main decision variable in this model is the proportion of the total crop area occupied used as refuge (RefugeArea). Other decision variables such as spraying of insecticides in the refuge and its spatial arrangement are implicitly incorporated into the survival and dispersal indexes. The target pest survivorship during its immature phase in the refuge area depends on the efficiency of the insecticide applied when this strategy is adopted. The spatial arrangement of the refuge will allow a higher or lower dispersal during the phases before and after mating, measured by dispersal indexes.
For all scenarios (Table 2), it was assumed that the spatial arrangement of the refuge is such that the dispersal rate before and after mating are maximum (DispPRErand=1, DispPOSrand=1). The EndCoef value was set to zero.
The number of generations up to the critical frequency is reached (Nger*) and the RFreq values for the generation following the Nger* were estimated for scenarios I, II and II using a version of Caprio's deterministic model implemented with the RRiskBt software, developed by the authors in the Visual Basic language.
Sensitivity analysis of the RFreq estimates was performed to indicate the main parameter to be treated as random variable in the uncertainty analysis. The response of RFreq estimates at the end of each generation and and Nger* to variations in InitialFreq and functional dominance of resistance (DFRes) values was quantified.
The parameters related to the survival of the target pest depend on the DFRes that has already been taken into account in the sensitivity analysis. The dispersal indexes (DispPRErand and DispPOSrand) are more related to operational factors (size and arrangement of the refuge), and therefore they were not taken into account in this analysis.
The effect of the probability distribution used for characterizing the parameter uncertainty indicated by the sensitivity analysis on the resistance risk estimates were evaluated in situations where the transgenic crop expresses the Bt toxin at a high dose for the target pest under consideration. The resistance risk in the target pest population was estimated for different scenarios by varying the size of the refuge area.
The probability distributions used for the characterization of the uncertainty associated with InitialFreq were Uniform, Symmetrical Triangular and Symmetrical Truncated Normal. Those distributions have been chosen for their ease of parameterization based on subjective information.
Based on theoretical assumptions regarding the balance between mutation and selection, Bourguet et al. (2003) estimated the probability of InitialFreq to exceed 10^{3} in a given population as ranging between 40 and 70%. Considering that information, the range for InitialFreq was set to (0.2 ´ 10^{3}), common to all distributions. As all distributions considered were symmetrical, the mean (µ=1.0 ´ 10^{3}) is equal to the median, and therefore the probability of InitialFreq being less than 10^{3} is 50%, what is consistent with the 4070% interval.
For the Uniform and Triangular Symmetrical distributions, the values of standard deviation (std) are 0.5773 ´ 10^{3} and 0.4082 ´ 10^{3}, respectively. For both distributions the std is function of the previously chosen distribution domain bounds a and b. For the Truncated Normal distribution, the standard deviation was set to a value similar to that one used for Triangular distribution.
The following steps were followed to estimate resistance risk over generations in each scenario: (i) thousand values of InitialFreq were sampled from the Uniform distribution (a,b); (ii) for each value of InitialFreq sampled, the RFreq at the end of each pest generation was estimated using the deterministic model; considering the input data presented in Table 2; and (iii) the probability of RFreq to exceed the critical frequency of 0.50 by the end of each pest generation  a measure that quantifies the risk of resistance  was estimated using the respective RFreq empirical probability distributions. The same process was repeated for the Symmetrical Triangular and Symmetrical Truncated Normal distributions.
The sensitivity and uncertainty analysis were performed using specific algorithms implemented into the RRiskBt software.
RESULTS AND DISCUSSION
Deterministic model
In the scenarios I (0% refuge), II (5% refuge) and III (20% refuge) and insecticide application (III), RFreq exceeded the value 0.50 up to 4, 43 and 41 generations of the target pest (Nger*), respectively. The RFreq estimates for these generations were 0.9759, 0.7477, and 0.6889. For generations immediately prior to Nger*, the estimates were 0.1964, 0.3070, and 0.2644, respectively. The RFreq estimates corresponding to the Nger* obtained by using the deterministic model are closely related to the empirical RFreq medians obtained with the probabilistic model. All these predictions are valid for the specified set of parameters and decision variables used and depend on the adequacy of simulation model assumptions.
The sensitivity analysis of the Caprio' s deterministic model showed that the RFreq and NGer* predictions are highly influenced by variations in InitialFreq and DFRres. Similar results were also reported by Ru et al. (2002) and Storer et al. (2003). Comparisons among point predictions obtained from different models are possible only when similar scenarios are considered. Hence, to compare models performance, it would be necessary to develop comparative studies specifically planned for this purpose. Also, comparison among sensitivity of the predictions coming from different models is often methodologically not feasible due to the diversity of scenarios used. The sensitivity of model outputs to variations of a particular parameter is influenced by the fixed values set for the other parameters. Because of that, the use of multiple sensitivity analysis (Abrahamssom, 2002) is recommended, because it allows taking interactions into account.
Sensitivity analysis of Caprio's deterministic model (1998a) pointed out that RFreq and NGer* estimates are more sensitive to variations in InitialFreq than the ones in DFres, considering the ranges established for those parameters. Therefore, the incorporation of uncertainty into the model was performed treating the InitialFreq parameter as a random variable.
Resistance risk estimates in different scenarios
The curves describing the target pest resistance risk over generations for the scenarios I, II and III, considering the Uniform (UN), Symmetrical Triangular (ST) and Symmetrical Truncated Normal (STN) distributions, are presented in Figure 1. The curves corresponding to Triangular Symmetric and Normal input distributions are quite similar. For Uniform distribution, the risk is overestimated in relation to the other distributions up to the NGer* generation. For the subsequent generations, the relation is inversed.
For the UN distribution, the probability associated with upper tail of the InitialFreq input distribution is greater than the one for the STN or ST distributions. This leads to a high proportion of high InitialFreq values in the sample taken from the input distribution considered for uncertainty analysis. Thus, in the model runs corresponding to those upper tail InitialFreq values, the CriticalFreq is reached in few generations. This results in a high proportion of RFreq values greater than CriticalFreq and consequently resistance risk estimates for the first generations when using UN distribution are higher than the ones for St or STN distributions. On the other hand, for generations subsequent to NGer*, the high probability associated to the InitialFreq distribution upper tail in the Uniform distribution results in risk estimates lower than those obtained when STN or ST distributions were used. After the generation where RFreq estimate for UN distribution is superior to 0.99, all risk estimates become equal regardless the InitialFreq input distribution.
The type of distribution used to characterize the uncertainty associated with model parameters is crucial in risk estimation, since the probabilities associated to distribution tails strongly influence risk estimates. Parameters characterized by distributions with similar measures of central tendency, but different shapes, may result in very unlike risk estimates.
A relevant characteristic of this approach is that the uncertainty associated with a given parameter can be based on expert opinion. Advances in knowledge about the model parameters can be incorporated into the analysis by changing the input probability distribution functions. This is particularly important for the risk resistance evolution to Bt toxins in situations where there are considerable knowledge gaps on model parameters for most of key target pests.
The approach we are proposing allows risk quantification differently from the one based on using deterministic models only. Such estimates are expressed as the probability of RFreq exceeding a critical frequency; by using deterministic models, only point RFreq estimates can be obtained. Using these tools, pest resistance management strategies can be established aiming to minimize the risk of resistance evolution.
CONCLUSIONS
The use of the Uniform distribution, instead of Normal or Triangular due to the lack of information on InitialFreq, leads to the overestimation of resistance risk estimates for the beginning generations and underestimation in generations after the critical frequency is reached.
The uncertainty analysis allows estimation of the pest generation for which the resistance risk is over 0.99, regardless the distribution used to characterize the uncertainty associated with InitialFreq.
Received October 02, 2003
Accepted August 02, 2004
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Publication Dates

Publication in this collection
21 Sept 2004 
Date of issue
Oct 2004
History

Accepted
02 Aug 2004 
Received
02 Oct 2003