系统发育树
生物
DNA测序
环境DNA
概率逻辑
仿形(计算机编程)
系统发育学
计算生物学
分类等级
数据挖掘
计算机科学
生态学
生物多样性
遗传学
DNA
人工智能
分类单元
基因
操作系统
作者
Lenore Pipes,Rasmus Nielsen
出处
期刊:eLife
[eLife Sciences Publications, Ltd.]
日期:2024-08-15
卷期号:13
摘要
Environmental DNA (eDNA) is becoming an increasingly important tool in diverse scientific fields from ecological biomonitoring to wastewater surveillance of viruses. The fundamental challenge in eDNA analyses has been the bioinformatical assignment of reads to taxonomic groups. It has long been known that full probabilistic methods for phylogenetic assignment are preferable, but unfortunately, such methods are computationally intensive and are typically inapplicable to modern Next-Generation Sequencing data. We here present a fast approximate likelihood method for phylogenetic assignment of DNA sequences. Applying the new method to several mock communities and simulated datasets, we show that it identifies more reads at both high and low taxonomic levels more accurately than other leading methods. The advantage of the method is particularly apparent in the presence of polymorphisms and/or sequencing errors and when the true species is not represented in the reference database.
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