Systematic comparison of high-throughput single-cell RNA-seq methods for immune cell profiling

用于免疫细胞分析的高通量单细胞 RNA 测序方法的系统比较

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作者:Tracy M Yamawaki #, Daniel R Lu #, Daniel C Ellwanger, Dev Bhatt, Paolo Manzanillo, Vanessa Arias, Hong Zhou, Oh Kyu Yoon, Oliver Homann, Songli Wang, Chi-Ming Li

Background

Elucidation of immune populations with single-cell RNA-seq has greatly benefited the field of immunology by deepening the characterization of immune heterogeneity and leading to the discovery of new subtypes. However, single-cell

Conclusion

Overall, our characterization of immune cell mixtures provides useful metrics, which can guide selection of a high-throughput single-cell RNA-seq method for profiling more complex immune-cell heterogeneity usually found in vivo.

Results

Here, we systematically benchmarked seven high-throughput single-cell RNA-seq methods. We prepared 21 libraries under identical conditions of a defined mixture of two human and two murine lymphocyte cell lines, simulating heterogeneity across immune-cell types and cell sizes. We evaluated methods by their cell recovery rate, library efficiency, sensitivity, and ability to recover expression signatures for each cell type. We observed higher mRNA detection sensitivity with the 10x Genomics 5' v1 and 3' v3 methods. We demonstrate that these methods have fewer dropout events, which facilitates the identification of differentially-expressed genes and improves the concordance of single-cell profiles to immune bulk RNA-seq signatures.

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