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Deep autoencoder enables interpretable tissue-adaptive deconvolution and cell-type-specific gene analysis
Yanshuo Chen; Yixuan Wang; Yuelong Chen; Yuqi Cheng; Yumeng Wei; Yunxiang Li; Jiuming Wang; Yingying Wei; Ting-Fung Chan; Yu Li.
Afiliação
  • Yanshuo Chen; Tsinghua University
  • Yixuan Wang; Harbin Institute of Technology
  • Yuelong Chen; The Chinese University of Hong Kong
  • Yuqi Cheng; Weill Cornell Medicine
  • Yumeng Wei; The Chinese University of Hong Kong
  • Yunxiang Li; The Chinese University of Hong Kong
  • Jiuming Wang; The Chinese University of Hong Kong
  • Yingying Wei; The Chinese University of Hong Kong
  • Ting-Fung Chan; The Chinese University of Hong Kong
  • Yu Li; The Chinese University of Hong Kong
Preprint em En | PREPRINT-BIORXIV | ID: ppbiorxiv-465846
ABSTRACT
Single-cell RNA-sequencing has become a powerful tool to study biologically significant characteristics at explicitly high resolution. However, its application on emerging data is currently limited by its intrinsic techniques. Here, we introduce Tissue-AdaPtive autoEncoder (TAPE), a deep learning method connecting bulk RNA-seq and single-cell RNA-seq to achieve precise deconvolution in a short time. By constructing an interpretable decoder and training under a unique scheme, TAPE can predict cell-type fractions and cell-type-specific gene expression tissue-adaptively. Compared with popular methods on several datasets, TAPE has a better overall performance and comparable accuracy at cell type level. Additionally, it is more robust among different cell types, faster, and sensitive to provide biologically meaningful predictions. Moreover, through the analysis of clinical data, TAPE shows its ability to predict cell-type-specific gene expression profiles with biological significance. We believe that TAPE will enable and accelerate the precise analysis of high-throughput clinical data in a wide range.
Licença
cc_by_nd
Texto completo: 1 Coleções: 09-preprints Base de dados: PREPRINT-BIORXIV Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2021 Tipo de documento: Preprint
Texto completo: 1 Coleções: 09-preprints Base de dados: PREPRINT-BIORXIV Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2021 Tipo de documento: Preprint