snifter 1.10.0
snifter provides an R wrapper for the openTSNE implementation of fast interpolated t-SNE (FI-tSNE). It is based on basilisk and reticulate. This vignette aims to provide a brief overview of typical use when applied to scRNAseq data, but it does not provide a comprehensive guide to the available options in the package.
It is highly advisable to review the documentation in snifter and the openTSNE documentation to gain a full understanding of the available options.
We will illustrate the use of snifter by generating some toy data. First, we’ll load the needed libraries, and set a random seed to ensure the simulated data are reproducible (note: it is good practice to ensure that a t-SNE embedding is robust by running the algorithm multiple times).
library("snifter")
library("ggplot2")
theme_set(theme_bw())
set.seed(42)
n_obs <- 500
n_feats <- 200
means_1 <- rnorm(n_feats)
means_2 <- rnorm(n_feats)
counts_a <- replicate(n_obs, rnorm(n_feats, means_1))
counts_b <- replicate(n_obs, rnorm(n_feats, means_2))
counts <- t(cbind(counts_a, counts_b))
label <- rep(c("A", "B"), each = n_obs)
The main functionality of the package lies in the fitsne
function. This function returns a matrix of t-SNE co-ordinates. In this case,
we pass in the 20 principal components computed based on the
log-normalised counts. We colour points based on the discrete
cell types identified by the authors.
fit <- fitsne(counts, random_state = 42L)
ggplot() +
aes(fit[, 1], fit[, 2], colour = label) +
geom_point(pch = 19) +
scale_colour_discrete(name = "Cluster") +
labs(x = "t-SNE 1", y = "t-SNE 2")
The openTNSE package, and by extension snifter, also allows the embedding of new data into an existing t-SNE embedding. Here, we will split the data into “training” and “test” sets. Following this, we generate a t-SNE embedding using the training data, and project the test data into this embedding.
test_ind <- sample(nrow(counts), nrow(counts) / 2)
train_ind <- setdiff(seq_len(nrow(counts)), test_ind)
train_mat <- counts[train_ind, ]
test_mat <- counts[test_ind, ]
train_label <- label[train_ind]
test_label <- label[test_ind]
embedding <- fitsne(train_mat, random_state = 42L)
Once we have generated the embedding, we can now project
the unseen test
data into this t-SNE embedding.
new_coords <- project(embedding, new = test_mat, old = train_mat)
ggplot() +
geom_point(
aes(embedding[, 1], embedding[, 2],
colour = train_label,
shape = "Train"
)
) +
geom_point(
aes(new_coords[, 1], new_coords[, 2],
colour = test_label,
shape = "Test"
)
) +
scale_colour_discrete(name = "Cluster") +
scale_shape_discrete(name = NULL) +
labs(x = "t-SNE 1", y = "t-SNE 2")
sessionInfo()
#> R version 4.3.0 RC (2023-04-13 r84269)
#> Platform: x86_64-pc-linux-gnu (64-bit)
#> Running under: Ubuntu 22.04.2 LTS
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#> attached base packages:
#> [1] stats graphics grDevices utils datasets methods base
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#> other attached packages:
#> [1] ggplot2_3.4.2 snifter_1.10.0 BiocStyle_2.28.0
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#> loaded via a namespace (and not attached):
#> [1] sass_0.4.5 utf8_1.2.3 generics_0.1.3
#> [4] lattice_0.21-8 digest_0.6.31 magrittr_2.0.3
#> [7] evaluate_0.20 grid_4.3.0 bookdown_0.33
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#> [13] Matrix_1.5-4 BiocManager_1.30.20 fansi_1.0.4
#> [16] scales_1.2.1 jquerylib_0.1.4 cli_3.6.1
#> [19] rlang_1.1.0 basilisk.utils_1.12.0 munsell_0.5.0
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#> [28] dplyr_1.1.2 colorspace_2.1-0 filelock_1.0.2
#> [31] basilisk_1.12.0 here_1.0.1 reticulate_1.28
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