The goal of tpSVG
is to detect and visualize spatial variation in the
gene expression for spatially resolved transcriptomics data analysis.
Specifically, tpSVG
introduces a family of count-based models, with
generalizable parametric assumptions such as Poisson distribution or
negative binomial distribution. In addition, comparing to
crmarkdown::pandoc_version()urrently available count-based model for
spatially resolved data analysis, the tpSVG
models improves
computational time, and hence greatly improves the applicability of
count-based models in SRT data analysis.
You can install the development version of tpSVG from GitHub with:
#' Install devtools package if not already installed
if (!required(devtools)) install.packages(package_name)
devtools::install_github("boyiguo1/tpSVG")
If you have R version before v4.4 and would like to install tpSVG, you can follow
if (!require("devtools")) install.packages("devtools")
devtools::install_github("boyiguo1/tpSVG@pre-R4.4")
WARNING: The purpose of having the branch pre-R4.4 is to allow users to use escheR before the formal release of R 4.4 and during the early stage of R 4.4 release. This branch will not be update with any further development beyond escheR v0.99.1. We recommend users to update their R versions up to date.
The package is currently submitted to Bioconductor for
review.
Once the package is accepted by Bioconductor, you can install the latest
release version of tpSVG
from Bioconductor via the following code.
Additional details are shown on the Bioconductor page.
# NOTE: The package is under-review with bioconductor.
# The following code section will work once the package is accepted.
if (!require("BiocManager", quietly = TRUE)) {
install.packages("BiocManager")
}
BiocManager::install("tpSVG")
The latest development version can also be installed from the devel
version of Bioconductor or from GitHub following
BiocManager::install(version = "devel")
Please find an end-to-end tutorial at https://boyi-guo.com/tpSVG/articles/intro_to_tpSVG.html.
Implementation Questions
-
What are the data structures that
tpSVG
current supports?As of
tpSVG v0.99.1
, the data structuretpSVG
supports includesSpatialExperiments
(and packages extendingSpatialExperiments
, e.g.SpatialFeatureExperiments
) anddata.frame
. Please find example via supported_data_structure. Due to limited resources, we regret that we won’t provides direct accessibility to other pipelines, e.g.suerat
. -
What types of spatially-resolved transcriptomics (SRT) data that
tpSVG
supports?Both sequenced-based SRT and image-based SRT data are supported by
tpSVG
. For more details, please refer to the vignette supported_data_structure. -
Can I use other scale factor as offset in the count-model?
Yes, just remember to take log for the offset term. In the vignettes, the offset of the model is default to library size, i.e. the total number of molecular in a spot/cell, but the count models should be compatible to other definition of scale factor in theory.
Theoretical Questions
-
What is the difference between modeling log transformed data and count data?
Count data is the natural form of gene expression data when it is collected and quantified. While log-transformation providess shortcuts to model (normalized) count data using well-studied Gaussian distribution, it distorts the lowly expressed gene and causes analytic biases.