Powerful and accurate detection of temporal gene expression patterns from multi-sample multi-stage single-cell transcriptomics data with TDEseq
Yue Fan, Lei Li, Shiquan Sun
Abstract
We present a non-parametric statistical method called TDEseq that takes full advantage of smoothing splines basis functions to account for the dependence of multiple time points in scRNA-seq studies, and uses hierarchical structure linear additive mixed models to model the correlated cells within an individual. As a result, TDEseq demonstrates powerful performance in identifying four potential temporal expression patterns within a specific cell type. Extensive simulation studies and the analysis of four published scRNA-seq datasets show that TDEseq can produce well-calibrated p-values and up to 20% power gain over the existing methods for detecting temporal gene expression patterns.
Topics & Concepts
SmoothingBiologyComputational biologyExpression (computer science)Statistical powerParametric statisticsComputer scienceData miningStatisticsMathematicsProgramming languageSingle-cell and spatial transcriptomicsCancer-related molecular mechanisms researchMicroRNA in disease regulation