探索未知:如何改进非模式生物的单细胞 RNAseq 细胞类型注释?

IF 2.2 3区 生物学 Q1 ZOOLOGY
Kevin H Wong, Natalia Andrade Rodriguez, Nikki Traylor-Knowles
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引用次数: 0

摘要

单细胞 RNA 测序(scRNAseq)是描述动物界多细胞生物体细胞类型的强大工具。在标准 scRNAseq 分析管道中,具有相似转录特征的细胞群会根据标记基因被赋予细胞类型标签,从而推断出专门的已知特征。由于这些分析是为人类和小鼠等模式生物设计的,因此在尝试标记具有独特或不同细胞类型的远缘非模式物种的细胞类型时会出现问题。因此,在使用 scRNAseq 时,这导致对新物种特异性细胞类型的发现有限,并有可能对非模式物种的细胞类型进行错误标注。为了解决这个问题,我们讨论了最近发表的有助于注释任何非模式生物的 scRNAseq 簇的方法。我们首先建议,根据细胞系的进化背景进行注释将有助于发现新型细胞类型,并提供一种无标记的方法来比较远缘物种的细胞类型。其次,机器学习极大地改进了生物信息分析,因此我们重点介绍一些使用无参考方法注释细胞群的开源程序。最后,我们建议使用未注释基因作为非模式生物的潜在细胞标记,因为许多非模式生物没有完整注释的基因组,这些数据往往被忽视。改进单细胞注释将有助于发现新的细胞类型,并在细胞水平上增进我们对非模式生物的了解。通过统一注释非模式生物细胞类型的方法,我们可以提高细胞注释标签转移的可信度和发现新型细胞类型的灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring the Unknown: How Can We Improve Single-cell RNAseq Cell Type Annotations in Non-model Organisms?

Single-cell RNA sequencing (scRNAseq) is a powerful tool to describe cell types in multicellular organisms across the animal kingdom. In standard scRNAseq analysis pipelines, clusters of cells with similar transcriptional signatures are given cell type labels based on marker genes that infer specialized known characteristics. Since these analyses are designed for model organisms, such as humans and mice, problems arise when attempting to label cell types of distantly related, non-model species that have unique or divergent cell types. Consequently, this leads to limited discovery of novel species-specific cell types and potential mis-annotation of cell types in non-model species while using scRNAseq. To address this problem, we discuss recently published approaches that help annotate scRNAseq clusters for any non-model organism. We first suggest that annotating with an evolutionary context of cell lineages will aid in the discovery of novel cell types and provide a marker-free approach to compare cell types across distantly related species. Secondly, machine learning has greatly improved bioinformatic analyses, so we highlight some open-source programs that use reference-free approaches to annotate cell clusters. Lastly, we propose the use of unannotated genes as potential cell markers for non-model organisms, as many do not have fully annotated genomes and these data are often disregarded. Improving single-cell annotations will aid the discovery of novel cell types and enhance our understanding of non-model organisms at a cellular level. By unifying approaches to annotate cell types in non-model organisms, we can increase the confidence of cell annotation label transfer and the flexibility to discover novel cell types.

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来源期刊
CiteScore
4.70
自引率
7.70%
发文量
150
审稿时长
6-12 weeks
期刊介绍: Integrative and Comparative Biology ( ICB ), formerly American Zoologist , is one of the most highly respected and cited journals in the field of biology. The journal''s primary focus is to integrate the varying disciplines in this broad field, while maintaining the highest scientific quality. ICB''s peer-reviewed symposia provide first class syntheses of the top research in a field. ICB also publishes book reviews, reports, and special bulletins.
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