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scID Uses Discriminant Analysis to Identify Transcriptionally Equivalent Cell Types across Single-Cell RNA-Seq Data with Batch Effect

Katerina Boufea, Sohan Seth, Nizar N. Batada

2020iScience82 citationsDOIOpen Access PDF

Abstract

The power of single-cell RNA sequencing (scRNA-seq) stems from its ability to uncover cell type-dependent phenotypes, which rests on the accuracy of cell type identification. However, resolving cell types within and, thus, comparison of scRNA-seq data across conditions is challenging owing to technical factors such as sparsity, low number of cells, and batch effect. To address these challenges, we developed scID (Single Cell IDentification), which uses the Fisher's Linear Discriminant Analysis-like framework to identify transcriptionally related cell types between scRNA-seq datasets. We demonstrate the accuracy and performance of scID relative to existing methods on several published datasets. By increasing power to identify transcriptionally similar cell types across datasets with batch effect, scID enhances investigator's ability to integrate and uncover development-, disease-, and perturbation-associated changes in scRNA-seq data.

Topics & Concepts

Computational biologyLinear discriminant analysisRNASingle-cell analysisRNA-SeqCellBiologyComputer scienceTranscriptomeGeneticsArtificial intelligenceGene expressionGeneSingle-cell and spatial transcriptomicsExtracellular vesicles in diseaseBiosensors and Analytical Detection