Accurate RNA velocity estimation based on multibatch network reveals complex lineage in batch scRNA-seq data

RNA velocity, as an extension of trajectory inference, is an effective method for understanding cell development using single-cell RNA sequencing (scRNA-seq) experiments. However, existing RNA velocity methods are limited by the batch effect because they cannot directly correct for batch effects in...

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Published inBMC biology Vol. 22; no. 1; pp. 290 - 16
Main Authors Huang, Zhaoyang, Guo, Xinyang, Qin, Jie, Gao, Lin, Ju, Fen, Zhao, Chenguang, Yu, Liang
Format Journal Article
LanguageEnglish
Published England BioMed Central Ltd 18.12.2024
BioMed Central
BMC
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Summary:RNA velocity, as an extension of trajectory inference, is an effective method for understanding cell development using single-cell RNA sequencing (scRNA-seq) experiments. However, existing RNA velocity methods are limited by the batch effect because they cannot directly correct for batch effects in the input data, which comprises spliced and unspliced matrices in a proportional relationship. This limitation can lead to an incorrect velocity stream. This paper introduces VeloVGI, which addresses this issue innovatively in two key ways. Firstly, it employs an optimal transport (OT) and mutual nearest neighbor (MNN) approach to construct neighbors in batch data. This strategy overcomes the limitations of existing methods that are affected by the batch effect. Secondly, VeloVGI improves upon VeloVI's velocity estimation by incorporating the graph structure into the encoder for more effective feature extraction. The effectiveness of VeloVGI is demonstrated in various scenarios, including the mouse spinal cord and olfactory bulb tissue, as well as on several public datasets. The results show that VeloVGI outperformed other methods in terms of metric performance.
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ISSN:1741-7007
1741-7007
DOI:10.1186/s12915-024-02085-8