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Perform PCA, identify significant dimensions, and reverse the rotation using only significant dimensions.
smooth_via_pca( x, elbow_th = 0.025, dims_use = NULL, max_pc = 100, do_plot = FALSE, scale. = FALSE )
Smoothed data
A data matrix with genes as rows and cells as columns
The fraction of PC sdev drop that is considered significant; low values will lead to more PCs being used
Directly specify PCs to use, e.g. 1:10
Maximum number of PCs computed
Plot PC sdev and sdev drop
Boolean indicating whether genes should be divided by standard deviation after centering and prior to PCA
# \donttest{ vst_out <- vst(pbmc) y_smooth <- smooth_via_pca(vst_out$y, do_plot = TRUE) # }
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