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首页> 外文期刊>Antonie van Leeuwenhoek: Journal of Microbiology and serology >Genus-wide Bacillus species identification through proper artificial neural network experiments on fatty acid profiles.
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Genus-wide Bacillus species identification through proper artificial neural network experiments on fatty acid profiles.

机译:通过适当的人工神经网络实验对脂肪酸谱进行全属芽孢杆菌属鉴定。

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摘要

Gas chromatographic fatty acid methyl ester analysis of bacteria is an easy, cheap and fast-automated identification tool routinely used in microbiological research. This paper reports on the application of artificial neural networks for genus-wide FAME-based identification of Bacillus species. Using 1,071 FAME profiles covering a genus-wide spectrum of 477 strains and 82 species, different balanced and imbalanced data sets have been created according to different validation methods and model parameters. Following training and validation, each classifier was evaluated on its ability to identify the profiles of a test set. Comparison of the classifiers showed a good identification rate favoring the imbalanced data sets. The presence of the Bacillus cereus and Bacillus subtilis groups made clear that it is of great importance to take into account the limitations of FAME analysis resolution for the construction of identification models. Indeed, as members of such a group cannot easily be distinguished from one another based upon FAME data alone, identification models built upon this data can neither be successful at keeping them apart. Comparison of the different experimental setups ultimately led to a few general recommendations. With respect to the routinely used commercial Sherlock Microbial Identification System (MIS, Microbial ID, Inc. (MIDI), Newark, Delaware, USA), the artificial neural network test results showed a significant improvement in Bacillus species identification. These results indicate that machine learning techniques such as artificial neural networks are most promising tools for FAME-based classification and identification of bacterial species.
机译:细菌的气相色谱脂肪酸甲酯分析是微生物研究中常规使用的一种简单,便宜且快速的鉴定工具。本文报道了人工神经网络在基于FAME属的芽孢杆菌属鉴定中的应用。使用1,071个FAME谱,涵盖477个菌株和82个物种的全属谱,根据不同的验证方法和模型参数创建了不同的平衡和不平衡数据集。经过训练和验证,对每个分类器进行识别测试集概况的能力的评估。分类器的比较显示出良好的识别率,有利于不平衡的数据集。蜡样芽孢杆菌和枯草芽孢杆菌组的存在清楚地表明,在构建识别模型时考虑到FAME分析分辨率的局限性非常重要。确实,由于不能仅基于FAME数据轻易地区分此类成员,因此基于此数据建立的识别模型也无法成功地将它们分开。不同实验设置的比较最终产生了一些一般性建议。对于常规使用的商业Sherlock微生物鉴定系统(MIS,Microbial ID,Inc.(MIDI),美国特拉华州纽瓦克),人工神经网络测试结果表明,芽孢杆菌属鉴定有了显着改善。这些结果表明,机器学习技术(例如人工神经网络)是用于基于FAME的细菌种类分类和识别的最有前途的工具。

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