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RSS FeedsSHARP: hyperfast and accurate processing of single-cell RNA-seq data via ensemble random projection [METHOD] (Genome Research)

 
 

20 february 2020 20:01:11

 
SHARP: hyperfast and accurate processing of single-cell RNA-seq data via ensemble random projection [METHOD] (Genome Research)
 


To process large-scale single-cell RNA-sequencing (scRNA-seq) data effectively without excessive distortion during dimension reduction, we present SHARP, an ensemble random projection-based algorithm that is scalable to clustering 10 million cells. Comprehensive benchmarking tests on 17 public scRNA-seq data sets show that SHARP outperforms existing methods in terms of speed and accuracy. Particularly, for large-size data sets (more than 40,000 cells), SHARP runs faster than other competitors while maintaining high clustering accuracy and robustness. To the best of our knowledge, SHARP is the only R-based tool that is scalable to clustering scRNA-seq data with 10 million cells.


 
208 viewsCategory: Bioinformatics, Genetics, Genomics
 
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