Recognition of environmental and genetic effects on barley phenolic fingerprints by neural networks

Jan Gorodkin , Bodil Søgaard , Hanne Bay , Hans Doll , Per Kølster , Søren Brunak
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引用次数: 7

Abstract

Through computational analysis of high-performance liquid chromatography (HPLC) traces we find correlations between secondary metabolites and growth conditions of six varieties of barley. Using artificial neural networks, it was possible to classify chromatograms for which the varieties were fertilized by nitrogen and treated by fungicide. For each variety of barley we could also differentiate it from the others. Surprisingly, all these classification tasks could be solved successfully by a simple network with no hidden units. When adding to the methodology pruning of the network weights, we were able to reduce the set of peaks in the chromatograms and obtain a necessary subset from which the growth conditions and differentiation may be decided. In some instances, more complex networks with hidden units could lead to a further reduction of the number of peaks used. In most cases, far more than half of the peaks are redundant. We find that it requires fewer information-rich peaks to perform the variety differentiation tasks than to recognize any of the growth conditions. Analysis of the network weights reveals correlations between weighted combinations of peaks.

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用神经网络识别大麦酚类指纹的环境和遗传效应
通过高效液相色谱(HPLC)计算分析,发现6个大麦品种的次生代谢物与生长条件之间存在相关性。利用人工神经网络对施氮和杀菌剂处理品种的色谱图进行了分类。对于每一种大麦,我们也可以将其与其他品种区分开来。令人惊讶的是,所有这些分类任务都可以通过一个没有隐藏单元的简单网络成功解决。当添加到网络权重的方法修剪时,我们能够减少色谱中的峰集,并获得一个必要的子集,从中可以决定生长条件和分化。在某些情况下,带有隐藏单元的更复杂的网络可能会导致使用的峰值数量进一步减少。在大多数情况下,超过一半的峰值是冗余的。我们发现,与识别任何生长条件相比,执行品种区分任务所需的信息丰富峰更少。对网络权重的分析揭示了峰值加权组合之间的相关性。
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Instructions to authors Author Index Keyword Index Volume contents New molecular surface-based 3D-QSAR method using Kohonen neural network and 3-way PLS
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