Artificial Neural Networks in Bacteria Taxonomic Classification

M. Can, Osman Gursoy
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Abstract

In 1980s, the face of the microbiology dramatically changed with the rRNA-based phylogenetic classifications, by Carl Woese. He delineated the three main branches of life. He used the technique not only to explore microbial diversity but also as a method for bacterial annotation. Today, rRNA-based analysis remains a central method in microbiology. Many researchers followed this track, using several new generations of Artificial Neural Networks they obtained high accuracies using available datasets of their time. Recently the number of known bacteria increased enormously. In this article we used ANN's to annotate bacterial 16S rRNA gene sequences from five selected phylums in Greengenes database taxonomy: Proteobacteria, Firmicutes, Bacteroidetes, Actinobacteria, and Chloroflexi. 93% average accuracy is obtained in classif-ications. When we used the bundle testing technique, the average accuracy easily raised to 100%.
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人工神经网络在细菌分类中的应用
20世纪80年代,卡尔·沃斯提出了基于rrna的系统发育分类,微生物学的面貌发生了巨大的变化。他描绘了生命的三个主要分支。他不仅将该技术用于探索微生物多样性,还将其作为细菌注释的方法。今天,基于rrna的分析仍然是微生物学的核心方法。许多研究人员沿着这条轨道,使用了几代新一代的人工神经网络,他们利用当时可用的数据集获得了很高的精度。最近,已知细菌的数量急剧增加。本文采用人工神经网络对Proteobacteria、Firmicutes、Bacteroidetes、Actinobacteria和Chloroflexi这5个门类的细菌16S rRNA基因序列进行了标注,平均准确率达到93%。当我们使用集束测试技术时,平均精度很容易提高到100%。
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