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HiDeF: identifying persistent structures in multiscale ‘omics data

Fan Zheng, She Zhang, Christopher Churas, Dexter Pratt, İvet Bahar, Trey Ideker

2021Genome biology51 citationsDOIOpen Access PDF

Abstract

In any 'omics study, the scale of analysis can dramatically affect the outcome. For instance, when clustering single-cell transcriptomes, is the analysis tuned to discover broad or specific cell types? Likewise, protein communities revealed from protein networks can vary widely in sizes depending on the method. Here, we use the concept of persistent homology, drawn from mathematical topology, to identify robust structures in data at all scales simultaneously. Application to mouse single-cell transcriptomes significantly expands the catalog of identified cell types, while analysis of SARS-COV-2 protein interactions suggests hijacking of WNT. The method, HiDeF, is available via Python and Cytoscape.

Topics & Concepts

BiologyGenome BiologyHuman geneticsComputational biologyOmicsEvolutionary biologyComputational genomicsGenomicsData scienceBioinformaticsGeneticsGenomeComputer scienceGeneBioinformatics and Genomic NetworksGene expression and cancer classificationMetabolomics and Mass Spectrometry Studies
HiDeF: identifying persistent structures in multiscale ‘omics data | Litcius