Article (Scientific journals)
Systematic evaluation of transcriptomics-based deconvolution methods and references using thousands of clinical samples.
Nadel, Brian B.; Oliva, Meritxell; Shou, Benjamin L. et al.
2021In Briefings in Bioinformatics
Peer Reviewed verified by ORBi
 

Files


Full Text
BriefingBioinformatics_OCR.doc
Publisher postprint (2.49 MB)
Download

All documents in ORBi are protected by a user license.

Send to



Details



Keywords :
benchmarking; cell type deconvolution; cell type quantification; gene expression
Abstract :
[en] Estimating cell type composition of blood and tissue samples is a biological challenge relevant in both laboratory studies and clinical care. In recent years, a number of computational tools have been developed to estimate cell type abundance using gene expression data. Although these tools use a variety of approaches, they all leverage expression profiles from purified cell types to evaluate the cell type composition within samples. In this study, we compare 12 cell type quantification tools and evaluate their performance while using each of 10 separate reference profiles. Specifically, we have run each tool on over 4000 samples with known cell type proportions, spanning both immune and stromal cell types. A total of 12 of these represent in vitro synthetic mixtures and 300 represent in silico synthetic mixtures prepared using single-cell data. A final 3728 clinical samples have been collected from the Framingham cohort, for which cell populations have been quantified using electrical impedance cell counting. When tools are applied to the Framingham dataset, the tool Estimating the Proportions of Immune and Cancer cells (EPIC) produces the highest correlation, whereas Gene Expression Deconvolution Interactive Tool (GEDIT) produces the lowest error. The best tool for other datasets is varied, but CIBERSORT and GEDIT most consistently produce accurate results. We find that optimal reference depends on the tool used, and report suggested references to be used with each tool. Most tools return results within minutes, but on large datasets runtimes for CIBERSORT can exceed hours or even days. We conclude that deconvolution methods are capable of returning high-quality results, but that proper reference selection is critical.
Disciplines :
Genetics & genetic processes
Author, co-author :
Nadel, Brian B.
Oliva, Meritxell
Shou, Benjamin L.
Mitchell, Keith
Ma, Feiyang
Montoya, Dennis J.
Mouton, Alice  ;  Université de Liège - ULiège > Département des sciences de la vie > Laboratoire de génétique de la conservation
Kim-Hellmuth, Sarah
Stranger, Barbara E.
Pellegrini, Matteo
Mangul, Serghei
Language :
English
Title :
Systematic evaluation of transcriptomics-based deconvolution methods and references using thousands of clinical samples.
Publication date :
2021
Journal title :
Briefings in Bioinformatics
ISSN :
1467-5463
eISSN :
1477-4054
Publisher :
Oxford University Press, United Kingdom
Peer reviewed :
Peer Reviewed verified by ORBi
Commentary :
© The Author(s) 2021. Published by Oxford University Press. All rights reserved. For Permissions, please email: journals.permissions@oup.com.
Available on ORBi :
since 27 December 2021

Statistics


Number of views
158 (6 by ULiège)
Number of downloads
87 (2 by ULiège)

Scopus citations®
 
9
Scopus citations®
without self-citations
6
OpenCitations
 
4

Bibliography


Similar publications



Contact ORBi