Last active
March 5, 2024 21:23
This file contains hidden or bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
suppressPackageStartupMessages({ | |
library(Seurat) | |
library(Matrix) | |
library(ggplot2) | |
library(patchwork) | |
library(stringr) | |
library(pbapply) | |
}) | |
{ | |
base.path <- "/mnt/datadisk//avi/analyses/simon/OTD/outs/filtered_feature_bc_matrix/" | |
#base.path <- "/mnt/datadisk//avi/analyses/simon/OTT/outs/filtered_feature_bc_matrix/" | |
matrices <- Read10X(data.dir = base.path) | |
keep.cells <- intersect( | |
colnames(matrices$`Gene Expression`), | |
colnames(matrices$`Antibody Capture`) | |
) | |
length(keep.cells) | |
object <- CreateSeuratObject( | |
counts = matrices$`Gene Expression`, | |
min.cells = 10, min.features = 200 | |
) | |
object[["ADT"]] <- CreateAssayObject( | |
counts = matrices$`Antibody Capture`[-c(157:161), Cells(object)] | |
) | |
object[["HTO"]] <- CreateAssayObject( | |
counts = matrices$`Antibody Capture`[157:161, Cells(object)] | |
) | |
VlnPlot(object, features = c("nCount_RNA", "nFeature_RNA", | |
"nCount_ADT", "nFeature_ADT"), | |
log = TRUE, pt.size = 0.001, ncol = 4) | |
object | |
} | |
#saveRDS(object, "/mnt/datadisk/avi/analyses/simon/rds/OTT.rds") | |
object <- readRDS("/mnt/datadisk/avi/analyses/simon/rds/OTD.rds") | |
object | |
{ #RNA analyses | |
VlnPlot(object, features = c("nCount_RNA", "nFeature_RNA")) | |
object <- subset(object, subset = nCount_RNA < 20000 & nFeature_RNA < 4000) | |
VlnPlot(object, features = c("nCount_ADT", "nFeature_ADT")) | |
object <- subset(object, subset = nFeature_ADT > 120) | |
object | |
DefaultAssay(object) <- "RNA" | |
object <- SCTransform(object) | |
object <- RunPCA(object, npcs = 25) | |
print(object[["pca"]], dims = 1:5, nfeatures = 5) | |
VizDimLoadings(object, dims = 1:2, reduction = "pca") | |
DimHeatmap(object, dims=5, cells=500, balanced = T) | |
DimPlot(object, reduction = "pca") | |
object <- RunUMAP(object, dims = 1:25) | |
object <- FindNeighbors(object, dims = 1:25) | |
object <- FindClusters(object) | |
DimPlot(object, label = T) | |
FeaturePlot(object, features = c("CD19"), order = T, reduction = "umap") | |
} | |
{ #ADT analyses | |
DefaultAssay(object) <- "ADT" | |
object <- NormalizeData(object, normalization.method = "CLR", margin = 2) | |
VariableFeatures(object) <- rownames(object[["ADT"]]) | |
object <- ScaleData(object, assay = "ADT", verbose = F, do.scale = F) | |
object <- RunPCA(object, reduction.name = "apca", | |
reduction.key = "apca_", | |
npcs = 15) | |
object <- FindNeighbors(object, reduction = "apca", | |
dims = 1:15) | |
object <- FindClusters(object, verbose = T) | |
object <- RunUMAP(object, reduction.name = "aumap", | |
reduction.key = "aumap_", | |
dims = 1:15, reduction = "apca") | |
DimPlot(object, label = T) | |
FeaturePlot(object, features = c("rna_CD19"), order = T, reduction = "aumap") | |
} | |
{ #HTO | |
DefaultAssay(object) <- "HTO" | |
object <- NormalizeData(object, normalization.method = "CLR", margin = 2, verbose = F) | |
VariableFeatures(object) <- rownames(object[["HTO"]]@counts) | |
object <- ScaleData(object, assay = "HTO") | |
object <- HTODemux(object, assay = "HTO", positive.quantile = 0.99, verbose = F) | |
Idents(object) <- "HTO_classification.global" | |
VlnPlot(object, features = "nCount_HTO", pt.size = 0.1, log = TRUE) | |
object <- subset(object, idents = "Negative", invert = TRUE) | |
object <- RunPCA(object, reduction.name = "hto.pca", reduction.key = "HPC_", verbose = F) | |
object <- RunUMAP(object, reduction = "hto.pca", dims = 1:3, | |
reduction.name = "hto.umap", reduction.key = "HUMAP_", verbose = F) | |
DimPlot(object, reduction = "hto.umap", label = T, group.by = "hash.ID") | |
table(object$hash.ID) | |
rownames(object@assays$ADT) | |
FeaturePlot(object, features = paste0("adt_", c("CD16", "CD14.1", "CD11b", | |
"CD4.1", "CD8", "CD19.1")), | |
reduction = "aumap") | |
} | |
{ | |
objects <- c( | |
"otd" = readRDS("/mnt/datadisk/avi/analyses/simon/rds/OTD.rds"), | |
"ott" = readRDS("/mnt/datadisk/avi/analyses/simon/rds/OTT.rds") | |
) | |
p1 <- FeaturePlot(objects$otd, features = paste0("adt_", c("CD16", "CD14.1", "CD11b", | |
"CD4.1", "CD8", "CD19.1")), | |
reduction = "aumap") | |
p2 <- FeaturePlot(objects$ott, features = paste0("adt_", c("CD16", "CD14.1", "CD11b", | |
"CD4.1", "CD8", "CD19.1")), | |
reduction = "aumap") | |
p1 | p2 | |
} | |
Sign up for free
to join this conversation on GitHub.
Already have an account?
Sign in to comment