Single-cell RNA-seq has emerged as a powerful tool in diverse applications, from determining the cell-type composition of tissues to uncovering regulators of developmental programs. A near-universal step in the analysis of single-cell RNA-seq data is to hypothesize the identity of each cell. Often, this is achieved by searching for combinations of genes that have previously been implicated as being cell-type specific, an approach that is not quantitative and does not explicitly take advantage of other single-cell RNA-seq studies.
Researchers at Johns Hopkins University School of Medicine have developed a tool, SingleCellNet, which addresses these issues and enables the classification of query single-cell RNA-seq data in comparison to reference single-cell RNA-seq data. SingleCellNet compares favorably to other methods in sensitivity and specificity, and it is able to classify across platforms and species. The researchers highlight SingleCellNet’s utility by classifying previously undetermined cells, and by assessing the outcome of a cell fate engineering experiment.
Availability – The the code is accessible at Github: (http://github.com/pcahan1/singleCellNet/).