Reproducibility across single-cell RNA-seq protocols for spatial ordering analysis.
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IF: 3.752
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Cited by: 4
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Abstract

As newer single-cell protocols generate increasingly more cells at reduced sequencing depths, the value of a higher read depth may be overlooked. Using data from three different single-cell RNA-seq protocols that lend themselves to having either higher read depth (Smart-seq) or many cells (MARS-seq and 10X), we evaluate their ability to recapitulate biological signals in the context of spatial reconstruction. Overall, we find gene expression profiles after spatial reconstruction analysis are highly reproducible between datasets despite being generated by different protocols and using different computational algorithms. While UMI-based protocols such as 10X and MARS-seq allow for capturing more cells, Smart-seq's higher sensitivity and read-depth allow for analysis of lower expressed genes and isoforms. Additionally, we evaluate trade-offs for each protocol by performing subsampling analyses and find that optimizing the balance between sequencing depth and number of cells within a protocol is necessary for efficient use of resources. Our analysis emphasizes the importance of selecting a protocol based on the biological questions and features of interest.

Keywords

Gene Expression
Spatial reconstruction

MeSH terms

Algorithms
Animals
Computer Simulation
Hepatocytes
Immunohistochemistry
Kinetics
Liver
Male
Mice
Mice, Inbred C57BL
RNA-Seq
Reproducibility of Results
Sensitivity and Specificity
Single-Cell Analysis
Spatial Analysis
Transcriptome

Authors

Seirup, Morten
Chu, Li-Fang
Sengupta, Srikumar
Leng, Ning
Browder, Hadley
Kapadia, Kevin
Shafer, Christina M
Duffin, Bret
Elwell, Angela L
Bolin, Jennifer M
Swanson, Scott
Stewart, Ron
Kendziorski, Christina
Thomson, James A
Bacher, Rhonda

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