Litcius/Paper detail

Optimal marker gene selection for cell type discrimination in single cell analyses

Bianca Dumitrascu, Soledad Villar, Dustin G. Mixon, Barbara E. Engelhardt

2021Nature Communications115 citationsDOIOpen Access PDF

Abstract

Single-cell technologies characterize complex cell populations across multiple data modalities at unprecedented scale and resolution. Multi-omic data for single cell gene expression, in situ hybridization, or single cell chromatin states are increasingly available across diverse tissue types. When isolating specific cell types from a sample of disassociated cells or performing in situ sequencing in collections of heterogeneous cells, one challenging task is to select a small set of informative markers that robustly enable the identification and discrimination of specific cell types or cell states as precisely as possible. Given single cell RNA-seq data and a set of cellular labels to discriminate, scGeneFit selects gene markers that jointly optimize cell label recovery using label-aware compressive classification methods. This results in a substantially more robust and less redundant set of markers than existing methods, most of which identify markers that separate each cell label from the rest. When applied to a data set given a hierarchy of cell types as labels, the markers found by our method improves the recovery of the cell type hierarchy with fewer markers than existing methods using a computationally efficient and principled optimization.

Topics & Concepts

Cell typeComputer scienceSet (abstract data type)Identification (biology)Computational biologyCellData setHierarchySelection (genetic algorithm)Artificial intelligencePattern recognition (psychology)BiologyGeneticsMarket economyProgramming languageEconomicsBotanySingle-cell and spatial transcriptomicsGene expression and cancer classificationAdvanced biosensing and bioanalysis techniques