Litcius/Paper detail

XenoCell: classification of cellular barcodes in single cell experiments from xenograft samples

Stefano Cheloni, Roman Hillje, Lucilla Luzi, Pier Giuseppe Pelicci, Elena Gatti

2021BMC Medical Genomics27 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Single-cell sequencing technologies provide unprecedented opportunities to deconvolve the genomic, transcriptomic or epigenomic heterogeneity of complex biological systems. Its application in samples from xenografts of patient-derived biopsies (PDX), however, is limited by the presence of cells originating from both the host and the graft in the analysed samples; in fact, in the bioinformatics workflows it is still a challenge discriminating between host and graft sequence reads obtained in a single-cell experiment. RESULTS: We have developed XenoCell, the first stand-alone pre-processing tool that performs fast and reliable classification of host and graft cellular barcodes from single-cell sequencing experiments. We show its application on a mixed species 50:50 cell line experiment from 10× Genomics platform, and on a publicly available PDX dataset obtained by Drop-Seq. CONCLUSIONS: XenoCell accurately dissects sequence reads from any host and graft combination of species as well as from a broad range of single-cell experiments and platforms. It is open source and available at https://gitlab.com/XenoCell/XenoCell .

Topics & Concepts

Computational biologyEpigenomicsWorkflowBiologyGenomicsHost (biology)Computer scienceSingle-cell analysisBioinformaticsCellGenomeGeneticsDNA methylationGeneDatabaseGene expressionSingle-cell and spatial transcriptomicsCancer Genomics and DiagnosticsCell Image Analysis Techniques