美文网首页Science相关 杂
一篇单细胞数据挖掘文章的图表复现

一篇单细胞数据挖掘文章的图表复现

作者: 小洁忘了怎么分身 | 来源:发表于2022-05-19 17:13 被阅读0次

    前言

    看到一篇单细胞数据挖掘的文章,题为:Establishment of a Prognostic Model of Lung Adenocarcinoma Based on Tumor Heterogeneity

    遂打算拿里面的数据跑一跑,这个数据可以在GSE117570的补充文件里直接下载到。

    1.批量读取数据

    虽然不是标准10X的三个文件,但也可以搞,直接读取为数据框,转换为矩阵,自行创建Seurat对象就可以啦。

    rm(list = ls())
    library(stringr)
    library(Seurat)
    library(dplyr)
    f = dir("GSE117570_RAW/");f
    ## [1] "GSM3304007_P1_Tumor_processed_data.txt.gz"
    ## [2] "GSM3304011_P3_Tumor_processed_data.txt.gz"
    ## [3] "GSM3304013_P4_Tumor_processed_data.txt.gz"
    s = str_split(f,"_",simplify = T)[,1];s
    ## [1] "GSM3304007" "GSM3304011" "GSM3304013"
    

    原本是8个文件来着,这篇文章是只拿了其中3个。

    批量读取,顺便把线粒体基因超过5%的细胞过滤掉了。

    scelist = list()
    for(i in 1:length(f)){
      tmp = read.table(paste0("GSE117570_RAW/",f[[i]]),
                     check.names = F)
      tmp = as.matrix(tmp)
    
      scelist[[i]] <- CreateSeuratObject(counts = tmp, 
                               project = s[[i]], 
                               min.cells = 3, 
                               min.features = 50)
      print(dim(scelist[[i]]))
      scelist[[i]][["percent.mt"]] <- PercentageFeatureSet(scelist[[i]], pattern = "^MT-")
      scelist[[i]] <- subset(scelist[[i]], subset = percent.mt < 5)
      print(dim(scelist[[i]]))
    }
    ## [1] 6611 1832
    ## [1] 6611 1466
    ## [1] 3211  328
    ## [1] 3211  116
    ## [1] 7492 1423
    ## [1] 7492  281
    names(scelist)  = s
    

    过滤的还挺狠的奥

    2.多样本的整合

    然后用CCA方法完成多个样本的整合,我把nfeatures参数设置的大了一些,不然整合完了只剩下2000个基因。

    for (i in 1:length(scelist)) {
      scelist[[i]] <- NormalizeData(scelist[[i]], verbose = FALSE)
      scelist[[i]] <- FindVariableFeatures(scelist[[i]],verbose = FALSE,nfeatures = 8000)
    }
    features <- SelectIntegrationFeatures(object.list = scelist,nfeatures = 8000)
    sce.anchors <- FindIntegrationAnchors(object.list = scelist,anchor.features = features)
    sce.integrated <- IntegrateData(anchorset = sce.anchors)
    
    DefaultAssay(sce.integrated) <- "integrated"
    sce.all = sce.integrated
    

    看看三个经典指标

    VlnPlot(sce.all, features = c("nFeature_RNA", "nCount_RNA", "percent.mt"), ncol = 3)
    
    FeatureScatter(sce.all, feature1 = "nCount_RNA", feature2 = "nFeature_RNA")
    
    sce.all <- FindVariableFeatures(sce.all, nfeatures = 1500)
    top10 <- head(VariableFeatures(sce.all), 10)
    plot1 <- VariableFeaturePlot(sce.all)
    plot2 <- LabelPoints(plot = plot1, points = top10, repel = TRUE)
    plot2
    

    关于高变基因这一步呢,还是有点不得劲的。虽然原文里有这个图,作者也说是用vst方法挑出来的,但是seurat官方教程里整合数据后是不做normalize和找高变化基因的,直接就是scaleData了。而且整合后的数据不是count矩阵,用不了vst。细节没有太多描述,就这样继续做呗。

    3. 降维聚类分群啦

    跑PCA,选择多少个主成分用于后续分析

    all.genes <- rownames(sce.all)
    sce.all <- ScaleData(sce.all, features = all.genes)
    sce.all[["integrated"]]@scale.data[30:34,1:3]
    ##        AAACCTGGTACAGACG-1_1 AAACGGGGTAGCGCTC-1_1 AAACGGGGTCCTCTTG-1_1
    ## CTSD              0.4832165            0.1260508           -0.8700229
    ## MT1X              1.0439902            0.7763393           -0.5553776
    ## FCGR3A            0.8605570           -0.5830022           -0.5830022
    ## TIMP1             0.3118005            2.1084136           -0.7909911
    ## KRT8             -0.2545172           -0.2545172           -0.2545172
    sce.all <- RunPCA(sce.all, npcs = 30)
    DimPlot(sce.all, reduction = "pca")
    
    ElbowPlot(sce.all)
    
    sce.all <- JackStraw(sce.all, num.replicate = 100)
    sce.all <- ScoreJackStraw(sce.all, dims = 1:20)
    JackStrawPlot(sce.all, dims = 1:20)
    

    跑tsne

    sce.all <- RunTSNE(sce.all,  dims = 1:15)
    sce.all <- FindNeighbors(sce.all,dims = 1:15)
    sce.all <- FindClusters(sce.all, resolution = 0.6) #分辨率
    ## Modularity Optimizer version 1.3.0 by Ludo Waltman and Nees Jan van Eck
    ## 
    ## Number of nodes: 1863
    ## Number of edges: 62779
    ## 
    ## Running Louvain algorithm...
    ## Maximum modularity in 10 random starts: 0.8709
    ## Number of communities: 11
    ## Elapsed time: 0 seconds
    length(levels(Idents(sce.all)))
    ## [1] 11
    table(sce.all@active.ident) 
    ## 
    ##   0   1   2   3   4   5   6   7   8   9  10 
    ## 384 377 207 184 169 149 146  94  72  50  31
    p1 = DimPlot(sce.all,reduction = "tsne",group.by =  "orig.ident") 
    p2 = DimPlot(sce.all,reduction = "tsne",label=T ) 
    p1+p2
    

    细胞不按照样本聚集,看起来糊在一起就对了。

    SingleR注释

    celldex的数据还要下载,碗束十分感人,还是不要下载了。我随便搜了一下:

    如此敷衍的关键词也没问题哈哈哈哈。于是技能树的讲师通过搜索,获得了技能树本树的帮助。你点进去看看就知道ref_Hematopoietic.RData这个数据是怎么来的啦!

    library(celldex)
    library(SingleR)
    #ref <- celldex::HumanPrimaryCellAtlasData()
    ref <- get(load("ref_Hematopoietic.RData"))
    library(BiocParallel)
    pred.scRNA <- SingleR(test = sce.all@assays$integrated@data, 
                          ref = ref,
                          labels = ref$label.main, 
                          clusters = sce.all@active.ident)
    pred.scRNA$pruned.labels
    ##  [1] "Monocytes"       "CD4+ T cells"    "CD8+ T cells"    "Dendritic cells"
    ##  [5] "Monocytes"       "Erythroid cells" "B cells"         "B cells"        
    ##  [9] "Monocytes"       "HSCs"            "HSCs"
    plotScoreHeatmap(pred.scRNA, clusters=pred.scRNA@rownames, fontsize.row = 9,show_colnames = T)
    
    new.cluster.ids <- pred.scRNA$pruned.labels
    names(new.cluster.ids) <- levels(sce.all)
    levels(sce.all)
    ##  [1] "0"  "1"  "2"  "3"  "4"  "5"  "6"  "7"  "8"  "9"  "10"
    sce.all <- RenameIdents(sce.all,new.cluster.ids)
    levels(sce.all)
    ## [1] "Monocytes"       "CD4+ T cells"    "CD8+ T cells"    "Dendritic cells"
    ## [5] "Erythroid cells" "B cells"         "HSCs"
    TSNEPlot(object = sce.all, pt.size = 0.5, label = TRUE)
    

    搞掂~

    我的本职工作是生信入门和数据挖掘线上直播课程讲师,如果想要系统学习搞定生信数据分析,可以发邮件或者来生信星球公号找到我,有缘分的话你迟早会来的~

    其实我转移到了别的平台,简书很久才看一次,评论看到的时候基本已经过去很多天,另外平时工作繁忙,很少有功夫回复。如果是跟我的教程学习,有卡住的情况,迫切需要我帮助的问题,请参考生信星球公号的答疑公告(因简书不允许外链,所以无法放链接),把问题描述的图文并茂、表达清楚自己的意思,发邮件到我的邮箱xjsun1221@163.com,野生博主,佛系回复,请礼貌提问,不要催我,也不要问我别人的代码错在了哪里哦。

    相关文章

      网友评论

        本文标题:一篇单细胞数据挖掘文章的图表复现

        本文链接:https://www.haomeiwen.com/subject/bzhtprtx.html