INVESTIGADORES
CHULZE Sofia Noemi
congresos y reuniones científicas
Título:
Predictive models: current knowledge and mycored contribution
Autor/es:
BATTILANI, P; BONDYOPADHYAY, R.; AMRA, R; CAMARDO LEGGIERI, M; CHULZE , S.N
Lugar:
Martina Franca
Reunión:
Congreso; ISM MycoRed International Conference Europe 2013. Global Mycotoxin Reduction Strategies; 2013
Institución organizadora:
International Society of Mycotoxicology
Resumen:
Good agricultural and management practices are recommended during pre- and post-harvest stages of production and processing of crops to avoid production exceeding the legal limits. However, these additional interventions involve additional costs, thereby reducing the profitability of the crop value chain. A sustainable approach would be based on the prediction of mycotoxin risk to optimise crop chain management and analytical efforts. A modelling perspective was followed as support for value chain improvement in MYCORED. Predictive models can be distinguished based on the approach followed for their development into mechanistic (or explanatory) and empirical (or descriptive). The former are drawn considering the cause-effect relationship among variables, while the latter describe the relation between the driving factors of the phenomena and are developed by statistical analyses of data collected in field. Mechanistic models commonly do need few or none adaptation when used in other conditions than those considered for model development. On the contrary, a model calibration is requested when empirical models are applied to other conditions, such as other geographic areas. Therefore, the mechanist approach was chosen in MYCORED because several countries, placed in different geographic areas, where involved in model development and validation. Several pathosystems and related mycotoxins were considered. Fusarium spp in wheat and deoxynivalenol, Fusarium verticillioides in maize and fumonisins, Aspergillus flavus in maize and aflatoxins, Aspergillus section Nigri in grapes and ochratoxin. Only one predictive model was available in literature for the former pathosystem; therefore, mechanistic models were developed for all the others during this study with the aim of predicting if the contamination at harvest is above the legal limit fixed by the European legislation. More than 500 wheat field samples, 500 maize field sample and 250 grape samples were collected, supported by cropping system data, mycotoxin contamination data and weather data from station placed in the neighbourhood of the fields, for model validation. The results were interesting, with a percentage of correct predictions between 60 and 90%, depending on the pathosystem and the year. Some lack of knowledge were highlighted, especially regarding the role of cropping system; filling these gaps would improve model performances. Besides, the joint use of different models was considered.