Motivation: Gene expression imputation has been an essential step of the single-cell RNA-Seq data analysis workflow. Among several deep-learning methods, the debut of scGNN gained substantial recognition in 2021 for its superior performance and the ability to produce a cell-cell graph. However, the implementation of scGNN was relatively time-consuming and its performance could still be optimized. Results: The implementation of scGNN 2.0 is significantly faster than scGNN thanks to a simplified close-loop architecture. For all eight datasets, cell clustering performance was increased by 85.02% on average in terms of adjusted rand index, and the imputation Median L1 Error was reduced by 67.94% on average. With the built-in visualizations, users can quickly assess the imputation and cell clustering results, compare against benchmarks and interpret the cell-cell interaction. The expanded input and output formats also pave the way for custom workflows that integrate scGNN 2.0 with other scRNA-Seq toolkits on both Python and R platforms.
CITATION STYLE
Gu, H., Cheng, H., Ma, A., Li, Y., Wang, J., Xu, D., & Ma, Q. (2022). scGNN 2.0: a graph neural network tool for imputation and clustering of single-cell RNA-Seq data. Bioinformatics, 38(23), 5322–5325. https://doi.org/10.1093/bioinformatics/btac684
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