Consensus prediction of cell type labels in single-cell data with popV

IF 31.7 1区 生物学 Q1 GENETICS & HEREDITY Nature genetics Pub Date : 2024-11-20 DOI:10.1038/s41588-024-01993-3
Can Ergen, Galen Xing, Chenling Xu, Martin Kim, Michael Jayasuriya, Erin McGeever, Angela Oliveira Pisco, Aaron Streets, Nir Yosef
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Abstract

Cell-type classification is a crucial step in single-cell sequencing analysis. Various methods have been proposed for transferring a cell-type label from an annotated reference atlas to unannotated query datasets. Existing methods for transferring cell-type labels lack proper uncertainty estimation for the resulting annotations, limiting interpretability and usefulness. To address this, we propose popular Vote (popV), an ensemble of prediction models with an ontology-based voting scheme. PopV achieves accurate cell-type labeling and provides uncertainty scores. In multiple case studies, popV confidently annotates the majority of cells while highlighting cell populations that are challenging to annotate by label transfer. This additional step helps to reduce the load of manual inspection, which is often a necessary component of the annotation process, and enables one to focus on the most problematic parts of the annotation, streamlining the overall annotation process. Popular Vote (popV) is a simple, ensemble popular vote approach for cell type annotation in single-cell omic data, flexibly incorporating various methods in an open-source Python framework. Across various challenging input datasets, popV offers consistent, accurate performance.

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利用 popV 对单细胞数据中的细胞类型标签进行共识预测
细胞类型分类是单细胞测序分析的关键步骤。人们提出了各种方法,将细胞类型标签从注释参考图集转移到未注释的查询数据集。现有的细胞类型标签转移方法缺乏对结果注释的不确定性估计,从而限制了可解释性和实用性。为了解决这个问题,我们提出了流行投票(popV),这是一种基于本体投票方案的预测模型集合。PopV 可实现准确的细胞类型标注,并提供不确定性分数。在多个案例研究中,popV 能自信地标注大多数细胞,同时通过标签转移突出标注具有挑战性的细胞群。这一额外步骤有助于减轻人工检查的负担(人工检查通常是注释过程的必要组成部分),并使人们能够专注于注释中最有问题的部分,从而简化整个注释过程。
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来源期刊
Nature genetics
Nature genetics 生物-遗传学
CiteScore
43.00
自引率
2.60%
发文量
241
审稿时长
3 months
期刊介绍: Nature Genetics publishes the very highest quality research in genetics. It encompasses genetic and functional genomic studies on human and plant traits and on other model organisms. Current emphasis is on the genetic basis for common and complex diseases and on the functional mechanism, architecture and evolution of gene networks, studied by experimental perturbation. Integrative genetic topics comprise, but are not limited to: -Genes in the pathology of human disease -Molecular analysis of simple and complex genetic traits -Cancer genetics -Agricultural genomics -Developmental genetics -Regulatory variation in gene expression -Strategies and technologies for extracting function from genomic data -Pharmacological genomics -Genome evolution
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