scRNA-seq data analysis method to improve analysis performance

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Abstract

With the development of single-cell RNA sequencing technology (scRNA-seq), we have the ability to study biological questions at the level of the individual cell transcriptome. Nowadays, many analysis tools, specifically suitable for single-cell RNA sequencing data, have been developed. In this review, the currently commonly used scRNA-seq protocols are discussed. The upstream processing flow pipeline of scRNA-seq data, including goals and popular tools for reads mapping and expression quantification, quality control, normalization, imputation, and batch effect removal is also introduced. Finally, methods to evaluate these tools in both cellular and genetic dimensions, clustering and differential expression analysis are presented.

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Lu, J., Sheng, Y., Qian, W., Pan, M., Zhao, X., & Ge, Q. (2023, May 1). scRNA-seq data analysis method to improve analysis performance. IET Nanobiotechnology. John Wiley and Sons Inc. https://doi.org/10.1049/nbt2.12115

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