遗传学
核糖体RNA
系统发育树
DNA测序
序列分析
序列(生物学)
序列比对
作者
Dattatray S. Mongad,Nikeeta S. Chavan,Nitin Narwade,Kunal Dixit,Yogesh S. Shouche,Dhiraj P. Dhotre
出处
期刊:Genomics
[Elsevier BV]
日期:2021-08-24
卷期号:113 (6): 3635-3643
标识
DOI:10.1016/j.ygeno.2021.08.016
摘要
Abstract The 16S rRNA gene amplicon sequencing is a popular technique that provides accurate characterization of microbial taxonomic abundances but does not provide any functional information. Several tools are available to predict functional profiles based on 16S rRNA gene sequence data that use different genome databases and approaches. As variable regions of partially-sequenced 16S rRNA gene cannot resolve taxonomy accurately beyond the genus level, these tools may give inflated results. Here, we developed ‘MicFunPred’, which uses a novel approach to derive imputed metagenomes based on a set of core genes only, thereby minimizing false-positive predictions. On simulated datasets, MicFunPred showed the lowest False Positive Rate (FPR) with mean Spearman's correlation of 0.89 (SD = 0.03), while on seven real datasets the mean correlation was 0.75 (SD = 0.08). MicFunPred was found to be faster with low computational requirements and performed better or comparable when compared with other tools.
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