Litcius/Paper detail

CSS: cluster similarity spectrum integration of single-cell genomics data

Zhisong He, Agnieska Brazovskaja, Sebastian Ebert, J. Gray Camp, Barbara Treutlein

2020Genome biology67 citationsDOIOpen Access PDF

Abstract

It is a major challenge to integrate single-cell sequencing data across experiments, conditions, batches, time points, and other technical considerations. New computational methods are required that can integrate samples while simultaneously preserving biological information. Here, we propose an unsupervised reference-free data representation, cluster similarity spectrum (CSS), where each cell is represented by its similarities to clusters independently identified across samples. We show that CSS can be used to assess cellular heterogeneity and enable reconstruction of differentiation trajectories from cerebral organoid and other single-cell transcriptomic data, and to integrate data across experimental conditions and human individuals.

Topics & Concepts

BiologyComputational biologySimilarity (geometry)GenomicsCluster (spacecraft)Representation (politics)Computer scienceData miningGenomeArtificial intelligenceGeneticsGeneImage (mathematics)Political scienceProgramming languageLawPoliticsSingle-cell and spatial transcriptomicsGene Regulatory Network AnalysisGene expression and cancer classification