2023
DOI: 10.1101/2023.07.28.550985
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ISMI-VAE: A Deep Learning Model for Classifying Disease Cells Using Gene Expression and SNV Data

Abstract: Various studies have linked several diseases, including cancer and Covid-19, to single nucleotide variations (SNV). Although scRNA-seq technology can provide SNV and gene expression data, few studies have integrated and analyzed these multimodal data. To address this issue, this paper introduces Interpretable Single-cell Multimodal Data Integration Based on Variational Autoencoder (ISMI-VAE). ISMI-VAE leverages latent variable models that utilize the characteristics of SNV and gene expression data to overcome … Show more

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