Fourteen years of cellular deconvolution: methodology, applications, technical evaluation and outstanding challenges

Author:

Nguyen Hung1ORCID,Nguyen Ha1ORCID,Tran Duc2,Draghici Sorin34ORCID,Nguyen Tin1ORCID

Affiliation:

1. Department of Computer Science and Software Engineering, Auburn University , Auburn, AL, USA

2. Department of Medicine, Washington University School of Medicine , St. Louis, MO, USA

3. Department of Computer Science, Wayne State University , Detroit, MI, USA

4. Advaita Bioinformatics , Ann Arbor, MI, USA

Abstract

Abstract Single-cell RNA sequencing (scRNA-Seq) is a recent technology that allows for the measurement of the expression of all genes in each individual cell contained in a sample. Information at the single-cell level has been shown to be extremely useful in many areas. However, performing single-cell experiments is expensive. Although cellular deconvolution cannot provide the same comprehensive information as single-cell experiments, it can extract cell-type information from bulk RNA data, and therefore it allows researchers to conduct studies at cell-type resolution from existing bulk datasets. For these reasons, a great effort has been made to develop such methods for cellular deconvolution. The large number of methods available, the requirement of coding skills, inadequate documentation, and lack of performance assessment all make it extremely difficult for life scientists to choose a suitable method for their experiment. This paper aims to fill this gap by providing a comprehensive review of 53 deconvolution methods regarding their methodology, applications, performance, and outstanding challenges. More importantly, the article presents a benchmarking of all these 53 methods using 283 cell types from 30 tissues of 63 individuals. We also provide an R package named DeconBenchmark that allows readers to execute and benchmark the reviewed methods (https://github.com/tinnlab/DeconBenchmark).

Funder

National Cancer Institute

National Institute of General Medical Sciences

National Science Foundation

Publisher

Oxford University Press (OUP)

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