DISSECT: deep semi-supervised consistency regularization for accurate cell type fraction and gene expression estimation
Robin Khatri, Pierre Machart, Stefan Bonn
Abstract
Cell deconvolution is the estimation of cell type fractions and cell type-specific gene expression from mixed data. An unmet challenge in cell deconvolution is the scarcity of realistic training data and the domain shift often observed in synthetic training data. Here, we show that two novel deep neural networks with simultaneous consistency regularization of the target and training domains significantly improve deconvolution performance. Our algorithm, DISSECT, outperforms competing algorithms in cell fraction and gene expression estimation by up to 14 percentage points. DISSECT can be easily adapted to other biomedical data types, as exemplified by our proteomic deconvolution experiments.
Topics & Concepts
DeconvolutionRegularization (linguistics)BiologyComputational biologyArtificial intelligenceGene expressionConsistency (knowledge bases)Fraction (chemistry)GenePattern recognition (psychology)Gene regulatory networkCell typeComputer scienceAlgorithmMachine learningCellGeneticsChemistryOrganic chemistrySingle-cell and spatial transcriptomicsGene expression and cancer classificationCell Image Analysis Techniques