AI Article Synopsis

  • - The study focuses on improving the cellular deconvolution of bulk RNA-seq data using single-cell RNA-seq data to estimate cell type composition in diverse tissues, particularly in the human brain.
  • - Researchers created a detailed multi-assay dataset from 22 postmortem human brain samples, employing various RNA-seq methods and comparing estimated cell proportions with actual measurements from other techniques.
  • - The analysis identified specific deconvolution algorithms that performed best, revealing that factors like cell size and differences in gene quantification can impact the accuracy of these methods in reflecting true tissue composition.

Article Abstract

Background: Cellular deconvolution of bulk RNA-sequencing (RNA-seq) data using single cell or nuclei RNA-seq (sc/snRNA-seq) reference data is an important strategy for estimating cell type composition in heterogeneous tissues, such as human brain. Computational methods for deconvolution have been developed and benchmarked against simulated data, pseudobulked sc/snRNA-seq data, or immunohistochemistry reference data. A major limitation in developing improved deconvolution algorithms has been the lack of integrated datasets with orthogonal measurements of gene expression and estimates of cell type proportions on the same tissue sample. Deconvolution algorithm performance has not yet been evaluated across different RNA extraction methods (cytosolic, nuclear, or whole cell RNA), different library preparation types (mRNA enrichment vs. ribosomal RNA depletion), or with matched single cell reference datasets.

Results: A rich multi-assay dataset was generated in postmortem human dorsolateral prefrontal cortex (DLPFC) from 22 tissue blocks. Assays included spatially-resolved transcriptomics, snRNA-seq, bulk RNA-seq (across six library/extraction RNA-seq combinations), and RNAScope/Immunofluorescence (RNAScope/IF) for six broad cell types. The method, implemented in the R package, was developed for selecting cell type marker genes. Six computational deconvolution algorithms were evaluated in DLPFC and predicted cell type proportions were compared to orthogonal RNAScope/IF measurements.

Conclusions: and were the most accurate methods, were robust to differences in RNA library types and extractions. This multi-assay dataset showed that cell size differences, marker genes differentially quantified across RNA libraries, and cell composition variability in reference snRNA-seq impact the accuracy of current deconvolution methods.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10888823PMC
http://dx.doi.org/10.1101/2024.02.09.579665DOI Listing

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