G2S3
Gene imputation method
An imputation method that applies graph signal processing to extract gene structure from scRNA-seq data and recover true expression levels by borrowing information from adjacent genes.
G2S3 (Sparse and Smooth Signal of Gene Graph-based imputation)
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Language: MATLAB
last commit: almost 4 years ago
Linked from 1 awesome list
graphsignalprocessingscrna-imputation-methodsscrna-seq
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