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Clustering 16S rRNA for OTU prediction: a method of unsupervised Bayesian clustering

机译:用于OTU预测的16S rRNA聚类:无监督贝叶斯聚类的方法

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摘要

>Motivation: With the advancements of next-generation sequencing technology, it is now possible to study samples directly obtained from the environment. Particularly, 16S rRNA gene sequences have been frequently used to profile the diversity of organisms in a sample. However, such studies are still taxed to determine both the number of operational taxonomic units (OTUs) and their relative abundance in a sample.>Results: To address these challenges, we propose an unsupervised Bayesian clustering method termed Clustering 16S rRNA for OTU Prediction (CROP). CROP can find clusters based on the natural organization of data without setting a hard cut-off threshold (3%/5%) as required by hierarchical clustering methods. By applying our method to several datasets, we demonstrate that CROP is robust against sequencing errors and that it produces more accurate results than conventional hierarchical clustering methods.>Availability and Implementation: Source code freely available at the following URL: , implemented in C++ and supported on Linux and MS Windows.>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:随着下一代测序技术的发展,现在有可能研究直接从环境中获得的样品。特别是,16S rRNA基因序列已经常用于描述样品中生物的多样性。但是,仍然需要对此类研究进行费力确定样本中的操作分类单位(OTU)的数量及其相对丰度。>结果:为解决这些挑战,我们提出了一种无监督贝叶斯聚类方法,称为聚类OTU预测(CROP)的16S rRNA。 CROP可以根据数据的自然组织来查找群集,而无需设置分层群集方法所需的硬性阈值(3%/ 5%)。通过将我们的方法应用于多个数据集,我们证明了CROP可以抵抗测序错误,并且比传统的层次聚类方法更准确。>可用性和实现:可从以下URL免费获得源代码: ,以C ++实现,并在Linux和MS Windows上受支持。>联系方式: >补充信息:可从在线生物信息学获得。

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