knitr::opts_chunk$set(warning = FALSE, message = FALSE, fig.width = 7, fig.height = 7, cache = T) library(tidyverse) library(useful) library(taigr) library(cdsrbiomarker)
cdsrmodels contains modeling function created by the cancer data science team.
library(devtools) devtools::install_github("broadinstitute/cdsr_models")
The package can then be loaded by calling
library(cdsrmodels)
Compares binary features, such as lineage and mutation, running a t-test on the difference in mean response between cell lines with the feature and without it. Run on response vector y
and feature matrix X
cdsrmodels::discrete_test(X, y)
Compares continuous features, such as gene expression, calculating correlations between response and each feature. Run on feature matrix A
, response vector y
, and an optional matrix of confounders W
. Other parameters can also be tuned and are explained in the function documentation.
cdsrmodels::lin_associations(A, y, W=NULL)
Fits a random forest to a feature matrix X
and a response vector y
returning estimates of variable importance for each feature, as well as model level statistics such as R-squared. Other parameters can also be tuned and are explained in the function documentation.
cdsrmodels::random_forest(X, y)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.