Applied Plant and Soil Biology, Faculty of Biology, University of Vigo, 36310 Vigo, Spain.
J Plant Physiol. 2010 Jan 1;167(1):23-7. doi: 10.1016/j.jplph.2009.07.007. Epub 2009 Aug 28.
In this work, we compared the unique artificial neural networks (ANNs) technology with the usual statistical analysis to establish its utility as an alternative methodology in plant research. For this purpose, we selected a simple in vitro proliferation experiment with the aim of evaluating the effects of light intensity and sucrose concentration on the success of the explant proliferation and finally, of optimizing the process taking into account any influencing factors. After data analysis, the traditional statistical procedure and ANNs technology both indicated that low light treatments and high sucrose concentrations are required for the highest kiwifruit microshoot proliferation under experimental conditions. However, this particular ANNs software is able to model and optimize the process to estimate the best conditions and does not need an extremely specialized background. The potential of the ANNs approach for analyzing plant biology processes, in this case, plant tissue culture data, is discussed.
在这项工作中,我们将独特的人工神经网络 (ANNs) 技术与常用的统计分析进行了比较,以确定其作为植物研究替代方法的实用性。为此,我们选择了一个简单的体外增殖实验,目的是评估光照强度和蔗糖浓度对外植体增殖成功率的影响,最终考虑到任何影响因素对该过程进行优化。数据分析后,传统的统计程序和人工神经网络技术都表明,在实验条件下,低光照处理和高蔗糖浓度有利于猕猴桃微芽的最高增殖。然而,这种特殊的人工神经网络软件能够建模和优化该过程,以估计最佳条件,并且不需要极其专业的背景。讨论了人工神经网络方法在分析植物生物学过程(在这种情况下为植物组织培养数据)中的潜力。