使用Python包Alfie对COI DNA条形码数据进行免对齐分类

C. Nugent, S. Adamowicz
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引用次数: 9

摘要

从环境DNA样本和大量元条形码数据中描述生物多样性的特性受到脱靶序列的阻碍,这些脱靶序列可能混淆有关感兴趣的分类群的结论。现有的分离目标序列的方法依赖于与现有参考条形码的比对,但这可能会使结果对新的遗传变异产生偏差。通过将后续分析限制在可用数据的相关子集中,有效地从脱靶噪声中解析目标DNA条形码数据,提高了生物多样性估计和生物学结论的质量。在这里,我们提出了Alfie,一个Python包,用于细胞色素c氧化酶亚基I (COI) DNA条形码序列到分类王国的无对齐分类。该软件包确定DNA序列的k-mer频率,频率作为神经网络分类器的输入,该分类器使用约58,000个公开可用的COI序列进行训练和测试。通过一系列测试对分类器进行设计和优化,以选择最优的DNA k-mer特征集和最优的机器学习算法。神经网络分类器以超过99%的准确率快速将不同长度的COI序列分配给王国,并且显示出有效的泛化并对以前未见过的分类类的数据做出准确的预测。该软件包包含一个应用程序编程接口,允许将Alfie软件包的功能扩展到不同的DNA序列分类任务,以满足用户的需要,包括对不同基因和条形码的分类,以及对不同分类水平的分类。Alfie是免费的,可以通过GitHub (https://github.com/CNuge/alfie)和Python包索引(https://pypi.org/project/alfie/)公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Alignment-free classification of COI DNA barcode data with the Python package Alfie
Characterization of biodiversity from environmental DNA samples and bulk metabarcoding data is hampered by off-target sequences that can confound conclusions about a taxonomic group of interest. Existing methods for isolation of target sequences rely on alignment to existing reference barcodes, but this can bias results against novel genetic variants. Effectively parsing targeted DNA barcode data from off-target noise improves the quality of biodiversity estimates and biological conclusions by limiting subsequent analyses to a relevant subset of available data. Here, we present Alfie, a Python package for the alignment-free classification of cytochrome c oxidase subunit I (COI) DNA barcode sequences to taxonomic kingdoms. The package determines k-mer frequencies of DNA sequences, and the frequencies serve as input for a neural network classifier that was trained and tested using ~58,000 publicly available COI sequences. The classifier was designed and optimized through a series of tests that allowed for the optimal set of DNA k-mer features and optimal machine learning algorithm to be selected. The neural network classifier rapidly assigns COI sequences of varying lengths to kingdoms with greater than 99% accuracy and is shown to generalize effectively and make accurate predictions about data from previously unseen taxonomic classes. The package contains an application programming interface that allows the Alfie package’s functionality to be extended to different DNA sequence classification tasks to suit a user’s need, including classification of different genes and barcodes, and classification to different taxonomic levels. Alfie is free and publicly available through GitHub (https://github.com/CNuge/alfie) and the Python package index (https://pypi.org/project/alfie/).
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来源期刊
Metabarcoding and Metagenomics
Metabarcoding and Metagenomics Agricultural and Biological Sciences-Animal Science and Zoology
CiteScore
5.40
自引率
0.00%
发文量
25
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