Artificial Intelligence and Applications 2023
DOI: 10.5121/csit.2023.131802
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Data Smoothing Filling Method based on ScRNA-Seq Data Zero-Value Identification

Linfeng Jiang,
Yuan Zhu

Abstract: Single-cell RNA sequencing (scRNA-seq) determines RNA expression at single-cell resolution. It provides a powerful tool for studying immunity, regulation, and other life activities of cells. However, due to the limitations of the sequencing technique, the scRNA-seq data are represented with sparsity, which contains missing gene values, i.e., zero values, called dropout. Therefore, it is necessary to impute missing values before analyzing scRNA-seq data. However, existing imputation computation methods often on… Show more

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