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IDENTIFICATION AND QUANTIFICATION OF FOODBORNE PATHOGENS IN DIFFERENT FOOD MATRICES USING FTIR SPECTROSCOPY AND ARTIFICIAL NEURAL NETWORKS

机译:FTIR光谱和人工神经网络识别和定量不同食品基质中的食品致病菌

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FTIR absorbance spectra of four foodborne pathogens suspended in four common food matrices at three different concentrations were used with artificial neural networks (ANNs) for identification and quantification. The classification accuracy of the ANNs was 93.4% for identification and 95.1% for quantification when validated using a subset of the data set. The accuracy of the ANNs when validated for identification of the pathogens studied at four different concentrations using an independent data set had an accuracy range from 60% to 100% and was strongly influenced by background noise. The pathogens could be identified irrespective of the food matrix in which they were suspended, although the classification accuracy was reduced at lower concentrations. More sophisticated background noise filtration techniques are needed to further improve the predictions
机译:使用人工神经网络(ANN)将悬浮在四种常见食品基质中的四种食源性病原体以三种不同浓度的FTIR吸收光谱进行鉴定和定量。使用数据集的子集进行验证时,ANN的分类准确度为93.4%,定量为95.1%。当使用独立数据集对ANN的准确性进行验证以鉴定在四个不同浓度下研究的病原体时,其准确性范围为60%至100%,并且受到背景噪声的强烈影响。尽管在较低浓度下分类准确性会降低,但无论其悬浮在何种食物基质中,都可以识别出病原体。需要更复杂的背景噪声过滤技术来进一步改善预测

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