Will Townes proposes a new, simpler way to analyze scRNA-seq data with unique

molecular identifiers (UMIs). Observing that such data is not zero-inflated,

Will has designed a PCA-like procedure inspired by generalized linear models

(GLMs) that, unlike the standard PCA, takes into account statistical

properties of the data and avoids spurious correlations (such as one or more

of the top principal components being correlated with the number of non-zero

gene counts).

Also check out Will’s paper for a feature selection algorithm based on

deviance, which we didn’t get a chance to discuss on the podcast.

Links:

Feature selection and dimension reduction for single-cell RNA-Seq based on a multinomial model (F. William Townes, Stephanie C. Hicks, Martin J. Aryee, Rafael A. Irizarry)

GLM-PCA for R

GLM-PCA for Python

scry: an R package for feature selection by deviance (alternative to highly variable genes)

Droplet scRNA-seq is not zero-inflated (Valentine Svensson)

If you enjoyed this episode, please consider supporting the podcast on Patreon.

Podden och tillhörande omslagsbild på den här sidan tillhör Roman Cheplyaka. Innehållet i podden är skapat av Roman Cheplyaka och inte av, eller tillsammans med, Poddtoppen.