Computational approaches for interpreting scRNA-seq data

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Abstract

The recent developments in high-throughput single-cell RNA sequencing technology (scRNA-seq) have enabled the generation of vast amounts of transcriptomic data at cellular resolution. With these advances come new modes of data analysis, building on high-dimensional data mining techniques. Here, we consider biological questions for which scRNA-seq data is used, both at a cell and gene level, and describe tools available for these types of analyses. This is an exciting and rapidly evolving field, where clustering, pseudotime inference, branching inference and gene-level analyses are particularly informative areas of computational analysis.

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Rostom, R., Svensson, V., Teichmann, S. A., & Kar, G. (2017, August 1). Computational approaches for interpreting scRNA-seq data. FEBS Letters. Wiley Blackwell. https://doi.org/10.1002/1873-3468.12684

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