DWLS - Gene Expression Deconvolution Using Dampened Weighted Least
Squares
The rapid development of single-cell transcriptomic
technologies has helped uncover the cellular heterogeneity
within cell populations. However, bulk RNA-seq continues to be
the main workhorse for quantifying gene expression levels due
to technical simplicity and low cost. To most effectively
extract information from bulk data given the new knowledge
gained from single-cell methods, we have developed a novel
algorithm to estimate the cell-type composition of bulk data
from a single-cell RNA-seq-derived cell-type signature.
Comparison with existing methods using various real RNA-seq
data sets indicates that our new approach is more accurate and
comprehensive than previous methods, especially for the
estimation of rare cell types. More importantly,our method can
detect cell-type composition changes in response to external
perturbations, thereby providing a valuable, cost-effective
method for dissecting the cell-type-specific effects of drug
treatments or condition changes. As such, our method is
applicable to a wide range of biological and clinical
investigations. Dampened weighted least squares ('DWLS') is an
estimation method for gene expression deconvolution, in which
the cell-type composition of a bulk RNA-seq data set is
computationally inferred. This method corrects common biases
towards cell types that are characterized by highly expressed
genes and/or are highly prevalent, to provide accurate
detection across diverse cell types. See:
<https://www.nature.com/articles/s41467-019-10802-z.pdf> for
more information about the development of 'DWLS' and the
methods behind our functions.