Publication | Open Access
CHETAH: a selective, hierarchical cell type identification method for single-cell RNA sequencing
36
Citations
47
References
2019
Year
Unknown Venue
EngineeringGeneticsPathologyTranscriptomics TechnologyGenomicsHigh Throughput SequencingTrajectory AnalysisTumor BiologyCell TypeTumor HeterogeneitySingle Cell SequencingCancer Cell BiologyTranscriptomicsMolecular DiagnosticsMolecular OncologyCancer ResearchSingle-cell Rna SequencingRna SequencingSingle-cell GenomicsGene ExpressionSingle-cell AnalysisSequencingFunctional GenomicsCell BiologyBioinformaticsNext-generation SequencingSingle-cell BiologyComputational BiologyCancer GenomicsSystems BiologyMedicineCell Development
ABSTRACT Cell type identification is essential for single-cell RNA sequencing (scRNA-seq) studies that are currently transforming the life sciences. CHETAH (CHaracterization of cEll Types Aided by Hierarchical clustering) is an accurate cell type identification algorithm that is rapid and selective, including the possibility of intermediate or unassigned categories. Evidence for assignment is based on a classification tree of previously available scRNA-seq reference data and includes a confidence score based on the variance in gene expression per cell type. For cell types represented in the reference data, CHETAH’s accuracy is as good as existing methods. Its specificity is superior when cells of an unknown type are encountered, such as malignant cells in tumor samples which it pinpoints as intermediate or unassigned. Although designed for tumor samples in particular, the use of unassigned and intermediate types is also valuable in other exploratory studies. This is exemplified in pancreas datasets where CHETAH highlights cell populations not well represented in the reference dataset, including cells with profiles that lie on a continuum between that of acinar and ductal cell types. Having the possibility of unassigned and intermediate cell types is pivotal for preventing misclassification and can yield important biological information for previously unexplored tissues.
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