Publication | Open Access
matchSCore: Matching Single-Cell Phenotypes Across Tools and Experiments
10
Citations
34
References
2018
Year
Unknown Venue
EngineeringGeneticsAbstract Single-cell TranscriptomicsMultiomicsTranscriptomics TechnologyGenomicsGene Expression ProfilingSingle Cell SequencingPhenotype InferenceTranscriptomicsCell ClusteringStatistical GeneticsSingle-cell GenomicsOmicsSingle-cell AnalysisFunctional GenomicsCell BiologyBioinformaticsSingle-cell BiologyComputational BiologySystems BiologyMedicine
Abstract Single-cell transcriptomics allows the identification of cellular types, subtypes and states through cell clustering. In this process, similar cells are grouped before determining co-expressed marker genes for phenotype inference. The performance of computational tools is directly associated to their marker identification accuracy, but the lack of an optimal solution challenges a systematic method comparison. Moreover, phenotypes from different studies are challenging to integrate, due to varying resolution, methodology and experimental design. In this work we introduce matchSCore ( https://github.com/elimereu/matchSCore ) , an approach to match cell populations fast across tools, experiments and technologies. We compared 14 computational methods and evaluated their accuracy in clustering and gene marker identification in simulated data sets. We further used matchSCore to project cell type identities across mouse and human cell atlas projects. Despite originating from different technologies, cell populations could be matched across data sets, allowing the assignment of clusters to reference maps and their annotation.
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