--- title: "Demo with scanpy" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{Demo with scanpy} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r, include = FALSE} knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ``` We've found that by using anndata for R, interacting with other anndata-based Python packages becomes super easy! ```{r check_on_cran, message=FALSE, warning=FALSE, echo=FALSE} on_cran <- !identical(Sys.getenv("NOT_CRAN"), "true") if (on_cran) { knitr::opts_chunk$set(eval = FALSE) knitr::asis_output(paste0( "**WARNING:** The outputs of this vignette are not rendered on CRAN due to package size limitations. ", "Please check the [Demo with scanpy](https://anndata.dynverse.org/articles/scanpy_demo.html) ", "vignette in the package documentation. " )) } ``` ### Set up To use another Python package (e.g. `scanpy`), you need to make sure that it is installed in the same ephemeral Python environment that `anndata` uses. You can let `reticulate` handle this for you by using the `py_require()` function: ```{r} library(anndata) library(reticulate) py_require("scanpy") ``` **TIP**: Check out the vignette on setting up Python package environments with reticulate: https://rstudio.github.io/reticulate/articles/python_packages.html. ### Download and load dataset Let's use a 10x dataset from the 10x genomics website. You can download it to an anndata object with scanpy as follows: ```{r} sc <- import("scanpy") url <- "https://cf.10xgenomics.com/samples/cell-exp/6.0.0/SC3_v3_NextGem_DI_CellPlex_CSP_DTC_Sorted_30K_Squamous_Cell_Carcinoma/SC3_v3_NextGem_DI_CellPlex_CSP_DTC_Sorted_30K_Squamous_Cell_Carcinoma_count_sample_feature_bc_matrix.h5" ad <- sc$read_10x_h5("dataset.h5", backup_url = url) ad ``` ## Preprocessing dataset The resuling dataset is a wrapper for the Python class but behaves very much like an R object: ```{r} ad[1:5, 3:5] dim(ad) ``` But you can still call scanpy functions on it, for example to perform preprocessing. ```{r} sc$pp$filter_cells(ad, min_genes = 200) sc$pp$filter_genes(ad, min_cells = 3) sc$pp$normalize_per_cell(ad) sc$pp$log1p(ad) ``` ## Analysing your dataset in R You can seamlessly switch back to using your dataset with other R functions, for example by calculating the rowMeans of the expression matrix. ```{r} library(Matrix) rowMeans(ad$X[1:10, ]) ```