netSmooth
Gene network smooter
Improves single cell RNA-seq data by smoothing out noise using prior information from gene interaction networks
netSmooth: A Network smoothing based method for Single Cell RNA-seq imputation
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Language: HTML
last commit: 6 months ago
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bioinformaticsgenomicssingle-cell
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