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Modelling molecular and inorganic data of Amanita ponderosa mushrooms using artificial neural networks

机译:使用人工神经网络对美国鹅膏菌蘑菇的分子和无机数据进行建模

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摘要

Wild edible mushrooms Amanita ponderosa Malen double dagger on and Heim are very appreciated in gastronomy, with high export potential. This species grows in some microclimates, namely in the southwest of the Iberian Peninsula. The results obtained demonstrate that A. ponderosa mushrooms showed different inorganic composition according to their habitat and the molecular data, obtained by M13-PCR, allowed to distinguish the mushrooms at species level and to differentiate the A. ponderosa strains according to their location. Taking into account, on the one hand, that the characterisation of different strains is essential in further commercialisation and certification process and, on the other hand, the molecular studies are quite time consuming and an expensive process, the development of formal models to predict the molecular profile based on inorganic composition comes to be something essential. In the present work, Artificial Neural Networks (ANNs) were used to solve this problem. The ANN selected to predict molecular profile based on inorganic composition has a 6-7-14 topology. A good match between the observed and predicted values was observed. The present findings are wide potential application and both health and economical benefits arise from this study.
机译:野生食用菌鹅膏菌(Amanita藏人黄粉虫)马林双匕首和海姆(Heim)在美食界非常受欢迎,具有很高的出口潜力。该物种在一些微气候中生长,即在伊比利亚半岛的西南部。获得的结果表明,美国黄蘑菇蘑菇根据其栖息地表现出不同的无机组成,并且通过M13-PCR获得的分子数据允许在物种水平上区分蘑菇并根据其位置区分美国黄蘑菇菌株。一方面考虑到不同菌株的表征对于进一步的商业化和认证过程至关重要,另一方面,分子研究非常耗时且过程昂贵,因此开发正式模型来预测基于无机成分的分子轮廓变得必不可少。在目前的工作中,人工神经网络(ANN)用于解决此问题。选择用于基于无机成分预测分子轮廓的ANN具有6-7-14拓扑。观测值和预测值之间的匹配良好。本研究结果具有广泛的潜在应用价值,这项研究既带来健康益处,也带来经济利益。

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