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scPower accelerates and optimizes the design of multi-sample single cell transcriptomic studies

Biology

scPower accelerates and optimizes the design of multi-sample single cell transcriptomic studies

K. T. Schmid, B. Höllbacher, et al.

Dive into the transformative world of single-cell RNA sequencing with scPower, a novel statistical framework that empowers researchers to optimize their multi-sample transcriptomic experiments. Developed by distinguished authors including Katharina T. Schmid and Fabian J. Theis, this tool offers invaluable insights for enhancing power analysis in transcriptomics, paving the way for groundbreaking discoveries in the field.

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Abstract
Single cell RNA-seq has revolutionized transcriptomics by providing cell type resolution for differential gene expression and expression quantitative trait loci (eQTL) analyses. However, efficient power analysis methods for single cell data and inter-individual comparisons are lacking. Here, we present scPower; a statistical framework for the design and power analysis of multi-sample single cell transcriptomic experiments. We model the relationship between sample size, the number of cells per individual, sequencing depth, and the power of detecting differentially expressed genes within cell types. We systematically evaluated these optimal parameter combinations for several single cell profiling platforms, and generated broad recommendations. In general, shallow sequencing of high numbers of cells leads to higher overall power than deep sequencing of fewer cells. The model, including priors, is implemented as an R package and is accessible as a web tool. scPower is a highly customizable tool that experimentalists can use to quickly compare a multitude of experimental designs and optimize for a limited budget.
Publisher
Nature Communications
Published On
Nov 16, 2021
Authors
Katharina T. Schmid, Barbara Höllbacher, Cristiana Cruceanu, Anika Böttcher, Heiko Lickert, Elisabeth B. Binder, Fabian J. Theis, Matthias Heinig
Tags
single cell RNA-seq
power analysis
transcriptomics
differential expression
scPower
R package
multi-sample experiments
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