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Kharchenko, 2021 - Google Patents

The triumphs and limitations of computational methods for scRNA-seq

Kharchenko, 2021

Document ID
13807618152585735884
Author
Kharchenko P
Publication year
Publication venue
Nature methods

External Links

Snippet

The rapid progress of protocols for sequencing single-cell transcriptomes over the past decade has been accompanied by equally impressive advances in the computational methods for analysis of such data. As capacity and accuracy of the experimental techniques …
Continue reading at www.nature.com (other versions)

Classifications

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