Topological identification and interpretation for single-cell gene regulation elucidation across multiple platforms using scMGCA

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Abstract

Single-cell RNA sequencing provides high-throughput gene expression information to explore cellular heterogeneity at the individual cell level. A major challenge in characterizing high-throughput gene expression data arises from challenges related to dimensionality, and the prevalence of dropout events. To address these concerns, we develop a deep graph learning method, scMGCA, for single-cell data analysis. scMGCA is based on a graph-embedding autoencoder that simultaneously learns cell-cell topology representation and cluster assignments. We show that scMGCA is accurate and effective for cell segregation and batch effect correction, outperforming other state-of-the-art models across multiple platforms. In addition, we perform genomic interpretation on the key compressed transcriptomic space of the graph-embedding autoencoder to demonstrate the underlying gene regulation mechanism. We demonstrate that in a pancreatic ductal adenocarcinoma dataset, scMGCA successfully provides annotations on the specific cell types and reveals differential gene expression levels across multiple tumor-associated and cell signalling pathways.

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Yu, Z., Su, Y., Lu, Y., Yang, Y., Wang, F., Zhang, S., … Li, X. (2023). Topological identification and interpretation for single-cell gene regulation elucidation across multiple platforms using scMGCA. Nature Communications, 14(1). https://doi.org/10.1038/s41467-023-36134-7

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