Latent representation of single-cell transcriptomes enables algebraic operations on cellular phenotypes

Author:

Bhattacharya NamrataORCID,Rockstroh AnjaORCID,Deshpande Sanket Suhas,Thomas Sam Koshy,Chawla Smriti,Solomon Pierre,Fourgeux Cynthia,Ahuja GauravORCID,Hollier Brett G.,Kumar Himanshu,Roquilly Antoine,Poschmann Jeremie,Lehman Melanie,Nelson Colleen C.,Sengupta Debarka

Abstract

AbstractRobust characterization of cellular phenotypes from single-cell gene expression data is of paramount importance in understanding complex biological systems and diseases. Single-cell RNA-seq (scRNA-seq) datasets are inherently noisy due to small amounts of starting RNA. Over the last few years, several methods have been developed to make single-cell analysis fast and efficient. Most of these methods are based on statistical and machine learning principles. In the current work, we describe SCellBOW, which encodes single-cell expression vectors as documents, thereby enabling the application of powerful language models. Beyond the identification of robust cell type clusters, our algorithm provides a latent representation of single-cells in a manner that captures the ‘semantics’ associated with cellular phenotypes. These representations,akaembeddings, allow algebraic operations such as ‘+’ and ‘-’. We use this hitherto unexplored utility to stratify cancer clones in terms of their aggressiveness and contribution to disease prognosis. Further, the application of SCellBOW to a scRNA-seq dataset comprising human splenocytes and matched peripheral blood mononuclear cells (∼5000 cells) identifies unknown cell states that bear significance in advancing our understanding of spleen biology.

Publisher

Cold Spring Harbor Laboratory

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