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geneBasis: an iterative approach for unsupervised selection of targeted gene panels from scRNA-seq

Alsu Missarova, Jaison Jain, Andrew Butler, Shila Ghazanfar, Tim Stuart, Maigan Brusko, Clive Wasserfall, Harry S. Nick, Todd M. Brusko, Mark A. Atkinson, Rahul Satija, John C. Marioni

2021Genome biology52 citationsDOIOpen Access PDF

Abstract

scRNA-seq datasets are increasingly used to identify gene panels that can be probed using alternative technologies, such as spatial transcriptomics, where choosing the best subset of genes is vital. Existing methods are limited by a reliance on pre-existing cell type labels or by difficulties in identifying markers of rare cells. We introduce an iterative approach, geneBasis, for selecting an optimal gene panel, where each newly added gene captures the maximum distance between the true manifold and the manifold constructed using the currently selected gene panel. Our approach outperforms existing strategies and can resolve cell types and subtle cell state differences.

Topics & Concepts

BiologySelection (genetic algorithm)Human geneticsComputational biologyGenome BiologyEvolutionary biologyGene selectionGeneGenomicsGeneticsGenomeMachine learningComputer scienceGene expressionMicroarray analysis techniquesSingle-cell and spatial transcriptomicsCRISPR and Genetic EngineeringGene Regulatory Network Analysis
geneBasis: an iterative approach for unsupervised selection of targeted gene panels from scRNA-seq | Litcius