单细胞数据拟时序分析-destiny

作者: 生信编程日常 | 来源:发表于2019-12-22 17:36 被阅读0次

    单细胞数据分析常用到建立trajectory和pseudoTime,拟时序分析可以用 Diffusion( Destiny R package)

    #Diffusion PseudoTime  Analysis
    library(destiny) # 加载 destiny...
    data(guo_norm) # 测试用的data
    class(guo_norm)
    
    image.png
    dm <- DiffusionMap(ct,k = 3)
    plot(dm)
    
    image.png

    给每个细胞添加注释信息,如这个细胞的类型或者属于的类群

    palette(cube_helix(6)) #用cube_helix创建连续的颜色
    #palette(hue_pal()(6))#也可以用ggplot2里面的默认颜色
    plot(dm, pch = 20, # pch for prettier points
    col_by = 'num_cells', # or “col” with a vector or one color
    legend_main = 'Cell stage')
    
    image.png
    #2D plot
    plot(dm, 1:2, pch = 20, col_by = 'num_cells',
    legend_main = 'Cell stage')
    
    image.png
    #3D plot
    library(rgl)
    plot3d(eigenvectors(dm)[, 1:3],
    col = log2(guo_norm$num_cells),
    type = 's', radius = .01)
    view3d(theta = 10, phi = 30, zoom = .8)
    # now use your mouse to rotate the plot in the window
    rgl.close()
    
    image.png

    同样可以用ggplot画出来

    qplot(DC1, DC2, data = dm, colour = factor(num_cells)) +
    scale_color_cube_helix()
    
    image.png
    # or alternatively:
    dif<-fortify(dm)#转化为data.frame
    ggplot(dif, aes(DC1, DC2, color = factor(num_cells)))+geom_point()
    
    image.png
    #plot 特征值
    plot(eigenvalues(dm), ylim = 0:1, pch = 20,
    xlab = 'Diffusion component (DC)', ylab = 'Eigenvalue')
    
    image.png

    detiny的数据输入格式为Biobase包建立的ExpressionSet格式的文件,如果我们的数据是表达矩阵,则数据需要转化成这个格式,如seurat包里面的数据Seurat.object可以这样转化:

    library(Biobase)
    ct <-GetAssayData(object = Seurat.object)
    ct<-ct[VariableFeatures(Seurat.object),]
    ct <- as.ExpressionSet(as.data.frame(t(ct)))
    #添加注释信息
    #. Annotations can be accessed directly via ct$column and ct[['column']]. 
    ct$celltype <- DPT@meta.data[,c("integrated_merge_cluster")]
    dm <- DiffusionMap(ct,k = 10)
    palette(cube_helix(4)) # configure color palette
    plot(dm, pch = 20, # pch for prettier points
    col_by = "celltype")
    
    image.png

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    image.png

    参考:
    [http://10.30.30.253:8787/help/library/destiny/doc/Diffusion-Maps.pdf]
    [https://bioconductor.org/packages/release/bioc/vignettes/destiny/inst/doc/DPT.pdf]
    https://broadinstitute.github.io/2019_scWorkshop/functional-pseudotime-analysis.html

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