Publication | Open Access
dropClust: efficient clustering of ultra-large scRNA-seq data
172
Citations
41
References
2018
Year
Cluster ComputingEngineeringSingle Cell TranscriptomicsSingle CellsTranscriptomics TechnologyGenomicsBioinformatics DatabaseData ScienceData MiningSingle Cell SequencingComputational GenomicsTranscriptomicsKnowledge DiscoverySingle-cell GenomicsUltra-large Scrna-seq DataSingle-cell AnalysisFunctional GenomicsBioinformaticsParallel ScreeningComputational BiologySingle-cell BiologySystems BiologyMedicine
Droplet based single cell transcriptomics has recently enabled parallel screening of tens of thousands of single cells. Clustering methods that scale for such high dimensional data without compromising accuracy are scarce. We exploit Locality Sensitive Hashing, an approximate nearest neighbour search technique to develop a de novo clustering algorithm for large-scale single cell data. On a number of real datasets, dropClust outperformed the existing best practice methods in terms of execution time, clustering accuracy and detectability of minor cell sub-types.
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