scPANDA:带有千万单细胞图谱的 PAN 血液数据注释器。

Q2 Medicine
Chang-Xiao Li, Can Huang, Dong-Sheng Chen
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引用次数: 0

摘要

目的:单细胞RNA测序(scRNA-seq)的最新进展彻底改变了细胞异质性的研究,特别是在血液系统中。然而,由于免疫细胞的复杂性,准确地注释细胞类型仍然具有挑战性。为了应对这一挑战,我们开发了一种PAN-blood单细胞数据注释器(scPANDA),它利用全面的1000万个细胞图谱来提供精确的细胞类型注释。方法:该图谱由16项研究的数据组成,采用严格的质量控制、预处理和整合步骤,以确保注释的高质量参考。scPANDA利用三层推理方法,逐步将细胞类型从广泛的隔室细化到特定的集群。在整个分析过程中,采用迭代聚类和协调过程来保持细胞类型的纯度。此外,在三个外部数据集上对scPANDA的性能进行了评估。结果:图谱呈分层结构,包括16个区室,54个类,4个‍460个低水平簇(pd_cc_cl_tfs)和611个高水平簇(pmid_cts)。该工具在注释不同的免疫scRNA-seq数据集、分析肾细胞癌中免疫肿瘤共存簇以及识别跨物种的保守细胞簇方面表现出了强大的性能。结论:scPANDA是大规模图谱的有效参考制图,提高了血细胞类型鉴定的准确性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
scPANDA: PAN-Blood Data Annotator with a 10-Million Single-Cell Atlas

Objective

Recent advancements in single-cell RNA sequencing (scRNA-seq) have revolutionized the study of cellular heterogeneity, particularly within the hematological system. However, accurately annotating cell types remains challenging due to the complexity of immune cells. To address this challenge, we develop a PAN-blood single-cell Data Annotator (scPANDA), which leverages a comprehensive 10-million-cell atlas to provide precise cell type annotation.

Methods

The atlas, constructed from data collected in 16 studies, incorporated rigorous quality control, preprocessing, and integration steps to ensure a high-quality reference for annotation. scPANDA utilizes a three-layer inference approach, progressively refining cell types from broad compartments to specific clusters. Iterative clustering and harmonization processes were employed to maintain cell type purity throughout the analysis. Furthermore, the performance of scPANDA was evaluated in three external datasets.

Results

The atlas was structured hierarchically, consisting of 16 compartments, 54 classes, 4,460 low-level clusters (pd_cc_cl_tfs), and 611 high-level clusters (pmid_cts). Robust performance of the tool was demonstrated in annotating diverse immune scRNA-seq datasets, analyzing immune-tumor coexisting clusters in renal cell carcinoma, and identifying conserved cell clusters across species.

Conclusion

scPANDA exemplifies effective reference mapping with a large-scale atlas, enhancing the accuracy and reliability of blood cell type identification.
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来源期刊
Chinese Medical Sciences Journal
Chinese Medical Sciences Journal Medicine-Medicine (all)
CiteScore
2.40
自引率
0.00%
发文量
1275
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