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Assessing the measurement transfer function of single-cell RNA sequencing

Authors :
Jennifer M. Spaethling
Wilberg A
Tae Kyung Kim
Ming-Yi Lin
James Eberwine
Adrian Camarena
Robert H. Chow
Wei Wang
Reymundo Dominguez
Sean McGroty
Kun Zhang
James A. Knowles
Jae Mun Kim
Bo Ding
Neeraj Salathia
Oleg V. Evgrafov
Rizi Ai
Tade Souaiaia
Christopher P Walker
Hernstein Js
Mack Wj
Kai Wang
Jian-Bing Fan
Hannah Dueck
Rui Liu
Jae Mun ‘Hugo’ Kim
John D. Nguyen
Stephen A. Fisher
Jamie Shallcross
Lina Zheng
Jingshu Wang
Publication Year :
2016
Publisher :
Cold Spring Harbor Laboratory, 2016.

Abstract

Recently, measurement of RNA at single cell resolution has yielded surprising insights. Methods for single-cell RNA sequencing (scRNA-seq) have received considerable attention, but the broad reliability of single cell methods and the factors governing their performance are still poorly known. Here, we conducted a large-scale control experiment to assess the transfer function of three scRNA-seq methods and factors modulating the function. All three methods detected greater than 70% of the expected number of genes and had a 50% probability of detecting genes with abundance greater than 2 to 4 molecules. Despite the small number of molecules, sequencing depth significantly affected gene detection. While biases in detection and quantification were qualitatively similar across methods, the degree of bias differed, consistent with differences in molecular protocol. Measurement reliability increased with expression level for all methods and we conservatively estimate the measurement transfer functions to be linear above ~5-10 molecules. Based on these extensive control studies, we propose that RNA-seq of single cells has come of age, yielding quantitative biological information.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....4351c7d08130b9504d3d1c760f791f22
Full Text :
https://doi.org/10.1101/045450