Publication | Open Access
scAlign: a tool for alignment, integration, and rare cell identification from scRNA-seq data
101
Citations
49
References
2019
Year
Rare Cell IdentificationEngineeringGeneticsTranscriptomics TechnologyGenomicsGene Expression ProfilingTrajectory AnalysisData ScienceSingle Cell SequencingComputational GenomicsData IntegrationLong Non-coding RnaScrna-seq Dataset IntegrationTranslational BioinformaticsDeep LearningGene ExpressionBioinformaticsFunctional GenomicsSingle-cell AnalysisCell BiologyScrna-seq DataComputational BiologySystems BiologyMedicineNon-coding Rna
scRNA-seq dataset integration occurs in different contexts, such as the identification of cell type-specific differences in gene expression across conditions or species, or batch effect correction. We present scAlign, an unsupervised deep learning method for data integration that can incorporate partial, overlapping, or a complete set of cell labels, and estimate per-cell differences in gene expression across datasets. scAlign performance is state-of-the-art and robust to cross-dataset variation in cell type-specific expression and cell type composition. We demonstrate that scAlign reveals gene expression programs for rare populations of malaria parasites. Our framework is widely applicable to integration challenges in other domains.
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