注意差距:非模式物种基因型输入的神经网络框架。

IF 5.5 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Katia Bougiouri
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引用次数: 0

摘要

减少代表性测序(RRS)已被证明是一种具有成本效益的解决方案,用于非模式物种基因组亚群的大规模研究。然而,RRS方法的目标特性通常会引入大量缺失数据,导致下游分析中的统计能力降低和估计偏差。基因型推断是对基因组缺失位点的统计推断,是克服缺失位点相关警告的一种强有力的替代方法。通常,基因型插入需要单倍型参考面板的存在,然而,这对于非模式物种并不总是可行的。在本期的《分子生态资源》中,Mora-Márquez等人(2024)开发了gtImputation,这是一种带有交互式GUI的无监督机器学习imputation工具,它利用底层数据结构本身的信息,而不需要参考面板。他们展示了他们的方法表现得同样好,甚至超过了现有的单倍型聚类和无监督机器学习算法,特别是对于具有低次要等位基因频率(MAF)的站点和具有强大潜在种群结构的数据集。这种创新的框架增加了对非模式物种的适用性的持续努力,提供了应用需要密集标记集的各种类型分析的机会,同时也保持了较低的测序成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mind the Gap: A Neural Network Framework for Imputing Genotypes in Non-Model Species

Reduced representation sequencing (RRS) has proven to be a cost-effective solution for sequencing subsets of the genome in non-model species for large-scale studies. However, the targeted nature of RRS approaches commonly introduces large amounts of missing data, leading to reduced statistical power and biased estimates in downstream analyses. Genotype imputation, the statistical inference of missing sites across the genome, is a powerful alternative to overcome the caveats associated with missing sites. Typically, genotype imputation requires the presence of a reference panel of haplotypes, however, this is not always feasible for non-model species. In this issue of Molecular Ecology Resources, Mora-Márquez et al. (2024) develop gtImputation, an unsupervised machine learning imputation tool with an interactive GUI, which leverages information from the underlying data structure itself, without the need for a reference panel. They showcase that their method performs equally well and even surpasses existing haplotype-clustering and unsupervised machine learning algorithms, particularly for sites with low minor allele frequency (MAF) and for data sets with strong underlying population structure. This innovative framework adds to the ongoing efforts to expand the applicability of imputation to non-model species, offering the opportunity to apply varied types of analyses requiring dense sets of markers, while also maintaining lower sequencing costs.

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来源期刊
Molecular Ecology Resources
Molecular Ecology Resources 生物-进化生物学
CiteScore
15.60
自引率
5.20%
发文量
170
审稿时长
3 months
期刊介绍: Molecular Ecology Resources promotes the creation of comprehensive resources for the scientific community, encompassing computer programs, statistical and molecular advancements, and a diverse array of molecular tools. Serving as a conduit for disseminating these resources, the journal targets a broad audience of researchers in the fields of evolution, ecology, and conservation. Articles in Molecular Ecology Resources are crafted to support investigations tackling significant questions within these disciplines. In addition to original resource articles, Molecular Ecology Resources features Reviews, Opinions, and Comments relevant to the field. The journal also periodically releases Special Issues focusing on resource development within specific areas.
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