Login / Signup

Evaluation of genetic demultiplexing of single-cell sequencing data from model species.

Joseph F CardielloAlberto Joven ArausSarantis GiatrellisClement HelsensAndrás SimonNicholas D Leigh
Published in: Life science alliance (2023)
Single-cell sequencing (sc-seq) provides a species agnostic tool to study cellular processes. However, these technologies are expensive and require sufficient cell quantities and biological replicates to avoid artifactual results. An option to address these problems is pooling cells from multiple individuals into one sc-seq library. In humans, genotype-based computational separation (i.e., demultiplexing) of pooled sc-seq samples is common. This approach would be instrumental for studying non-isogenic model organisms. We set out to determine whether genotype-based demultiplexing could be more broadly applied among species ranging from zebrafish to non-human primates. Using such non-isogenic species, we benchmark genotype-based demultiplexing of pooled sc-seq datasets against various ground truths. We demonstrate that genotype-based demultiplexing of pooled sc-seq samples can be used with confidence in several non-isogenic model organisms and uncover limitations of this method. Importantly, the only genomic resource required for this approach is sc-seq data and a de novo transcriptome. The incorporation of pooling into sc-seq study designs will decrease cost while simultaneously increasing the reproducibility and experimental options in non-isogenic model organisms.
Keyphrases
  • single cell
  • rna seq
  • high throughput
  • genome wide
  • randomized controlled trial
  • endothelial cells
  • gene expression
  • electronic health record
  • gram negative
  • copy number
  • big data
  • stem cells
  • clinical trial
  • machine learning