GenomicSuperSignature facilitates interpretation of RNA-seq experiments through robust, efficient comparison to public databases.
Sehyun OhLudwig GeistlingerMarcel RamosDaniel BlankenbergMarius van den BeekJaclyn N TaroniVincent J CareyCasey S GreeneLevi WaldronSean DavisPublished in: Nature communications (2022)
Millions of transcriptomic profiles have been deposited in public archives, yet remain underused for the interpretation of new experiments. We present a method for interpreting new transcriptomic datasets through instant comparison to public datasets without high-performance computing requirements. We apply Principal Component Analysis on 536 studies comprising 44,890 human RNA sequencing profiles and aggregate sufficiently similar loading vectors to form Replicable Axes of Variation (RAV). RAVs are annotated with metadata of originating studies and by gene set enrichment analysis. Functionality to associate new datasets with RAVs, extract interpretable annotations, and provide intuitive visualization are implemented as the GenomicSuperSignature R/Bioconductor package. We demonstrate the efficient and coherent database search, robustness to batch effects and heterogeneous training data, and transfer learning capacity of our method using TCGA and rare diseases datasets. GenomicSuperSignature aids in analyzing new gene expression data in the context of existing databases using minimal computing resources.
Keyphrases
- rna seq
- single cell
- gene expression
- big data
- healthcare
- mental health
- electronic health record
- adverse drug
- endothelial cells
- case control
- oxidative stress
- machine learning
- genome wide
- copy number
- artificial intelligence
- antiretroviral therapy
- emergency department
- induced pluripotent stem cells
- gene therapy
- anaerobic digestion