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Schema: metric learning enables interpretable synthesis of heterogeneous single-cell modalities

Rohit Singh, Brian Hie, Ashwin Narayan, Bonnie Berger

2021Genome biology44 citationsDOIOpen Access PDF

Abstract

A complete understanding of biological processes requires synthesizing information across heterogeneous modalities, such as age, disease status, or gene expression. Technological advances in single-cell profiling have enabled researchers to assay multiple modalities simultaneously. We present Schema, which uses a principled metric learning strategy that identifies informative features in a modality to synthesize disparate modalities into a single coherent interpretation. We use Schema to infer cell types by integrating gene expression and chromatin accessibility data; demonstrate informative data visualizations that synthesize multiple modalities; perform differential gene expression analysis in the context of spatial variability; and estimate evolutionary pressure on peptide sequences.

Topics & Concepts

BiologySchema (genetic algorithms)ModalitiesHuman geneticsGenome BiologyComputational biologyMetric (unit)Artificial intelligenceMachine learningEvolutionary biologyComputer scienceGenomicsGeneticsGenomeGeneOperations managementSociologyEconomicsSocial scienceSingle-cell and spatial transcriptomicsCAR-T cell therapy researchT-cell and B-cell Immunology
Schema: metric learning enables interpretable synthesis of heterogeneous single-cell modalities | Litcius