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Single-cell assignment using multiple-adversarial domain adaptation network with large-scale references

Pengfei Ren, Xiaoying Shi, Zhiguang Yu, Xin Dong, Xuanxin Ding, Jin Wang, Liangdong Sun, Yilv Yan, Junjie Hu, Peng Zhang, Qianming Chen, Jing Zhang, Taiwen Li, Chenfei Wang

2023Cell Reports Methods12 citationsDOIOpen Access PDF

Abstract

The rapid accumulation of single-cell RNA-seq data has provided rich resources to characterize various human cell populations. However, achieving accurate cell-type annotation using public references presents challenges due to inconsistent annotations, batch effects, and rare cell types. Here, we introduce SELINA (single-cell identity navigator), an integrative and automatic cell-type annotation framework based on a pre-curated reference atlas spanning various tissues. SELINA employs a multiple-adversarial domain adaptation network to remove batch effects within the reference dataset. Additionally, it enhances the annotation of less frequent cell types by synthetic minority oversampling and fits query data with the reference data using an autoencoder. SELINA culminates in the creation of a comprehensive and uniform reference atlas, encompassing 1.7 million cells covering 230 distinct human cell types. We substantiate its robustness and superiority across a multitude of human tissues. Notably, SELINA could accurately annotate cells within diverse disease contexts. SELINA provides a complete solution for human single-cell RNA-seq data annotation with both python and R packages.

Topics & Concepts

AnnotationComputer scienceDomain adaptationArtificial intelligenceAutoencoderData miningInformation retrievalClassifier (UML)Machine learningDeep learningSingle-cell and spatial transcriptomicsExtracellular vesicles in diseaseCancer Genomics and Diagnostics
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