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Variety identification of wheat using mass spectrometry with neural networks and the influence of mass spectra processing prior to neural network analysis

机译:使用神经网络质谱仪进行小麦品种鉴定以及神经网络分析之前质谱处理的影响

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The performance of matrix-assisted laser desorption/ionisation time-of-flight mass spectrometry with neural networks in wheat variety classification is further evaluated.(1) Two principal issues were studied: (a) the number of varieties that could be classified correctly; and (b) various means of preprocessing mass spectrometric data. The number of wheat varieties tested was increased from 10 to 30. The main pre-processing method investigated was based on Gaussian smoothing of the spectra, but other methods based on normalisation procedures and multiplicative scatter correction of data were also used. With the final method, it was possible to classify 30 wheat varieties with 87% correctly classified mass spectra and a correlation coefficient of 0.90. Copyright (C) 2002 John Wiley Sons, Ltd. [References: 31]
机译:进一步评估了基于神经网络的基质辅助激光解吸/电离飞行时间质谱在小麦品种分类中的性能。(1)研究了两个主要问题:(a)可以正确分类的品种数量; (b)各种预处理质谱数据的方法。测试的小麦品种数量从10个增加到30个。研究的主要预处理方法是基于光谱的高斯平滑,但也使用了其他基于归一化程序和数据的分散散射校正的方法。使用最终方法,可以对30个小麦品种进行分类,质谱正确分类率为87%,相关系数为0.90。版权所有(C)2002 John Wiley Sons,Ltd. [引用:31]

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