omnideconv: a unifying framework for using and benchmarking single-cell-informed deconvolution of bulk RNA-seq data
Technical University of Munich · Universität Innsbruck · +6 more institutions
Abstract
In silico cell-type deconvolution from bulk transcriptomics data is a powerful technique to gain insights into the cellular composition of complex tissues. While first-generation methods used precomputed expression signatures covering limited cell types and tissues, second-generation tools use single-cell RNA sequencing data to build custom signatures for deconvoluting arbitrary cell types, tissues, and organisms. This flexibility poses significant challenges in assessing their deconvolution performance.
Here, we comprehensively benchmark second-generation tools, disentangling different sources of variation and bias using a diverse panel of real and simulated data. Our results reveal substantial differences in accuracy, scalability, and robustness across methods, depending on factors such as cell-type similarity, reference composition, and dataset origin.
Citation impact
- FWCI
- 37.62
- Percentile
- 99%
- References
- 79
Authors
11Topics & keywords
- Deconvolution
- Complementarity (molecular biology)
- Benchmarking
- Blind deconvolution
- Wiener deconvolution
- Convolution (computer science)
- Life in Land
Funding
- ECEuropean Cooperation in Science and TechnologyAward: CA20117
- DFDeutsche ForschungsgemeinschaftAward: 422216132
- BFBundesministerium für Bildung und ForschungAward: W-de.NBI-001, W-de.NBI-004, W-de.NBI-008, W-de.NBI-010, W-de.NBI-013, W-de.NBI-014, W-de.NBI-016, W-de.NBI-022
- ASAustrian Science FundAward: F7804-B and I5184
- TUTechnische Universität München