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Ensemble deep learning of embeddings for clustering multimodal single-cell omics data
[article]
2023
bioRxiv
pre-print
AbstractMotivationRecent advances in multimodal single-cell omics technologies enable multiple modalities of molecular attributes, such as gene expression, chromatin accessibility, and protein abundance, to be profiled simultaneously at a global level in individual cells. While the increasing availability of multiple data modalities is expected to provide a more accurate clustering and characterisation of cells, the development of computational methods that are capable of extracting information
doi:10.1101/2023.02.22.529627
fatcat:iw2cxhwudraiflfq52dmijuxgq