--- title: 【迁移】使用 JTK_CYCLE 算法分析生物节律 urlname: shi-yong--JTK-CYCLE--suan-fa-fen-xi-sheng-wu-jie-lv date: 2022-09-19 20:17:29 index_img: https://api.limour.top/randomImg?d=2022-09-19 20:17:29 tags: JTK_CYCLE --- JTK是一种非参数检测程序,能从芯片数据中检测循环转录本。除了计算每个转录本最佳的相位(LAG)、振幅(AMP)和周期(PER)外,JTK还计算了置换检验P值(ADJ.P)和Benjamini-Hochberg q值 (BH.Q)。与常规的周期检测算法相比,JTK具有更好的检验效能、更高的计算效率和更强的鲁棒性。R语言的**metacycle**包实现了**ARSER**、**JTK\_CYCLE**、**Lomb-Scargle**三种分析方法。 ## conda安装包 ```bash conda create -n metacycle -c conda-forge r-base=4.1.3 conda activate metacycle conda install -c conda-forge r-metacycle -y conda install -c conda-forge r-cosinor -y conda install -c conda-forge r-tidyverse -y conda install -c conda-forge r-irkernel -y Rscript -e "IRkernel::installspec(name='metacycle', displayname='r-metacycle')" install.packages('cosinor2') ``` ## 准备数据 通过[比对](/STAR--yi-jian-jiao-ben),得到的counts矩阵 ```R require(MetaCycle) require(tidyverse) tmp <- read.csv('zctcount.csv', row.names = 1) head(cycMouseLiverRNA[,1:5]) tmp <- tmp[c('ID','ZT16.con.1', 'ZT16.con.2', 'ZT16.con.3', 'ZT16.con.4', 'ZT28.con.1', 'ZT28.con.2', 'ZT28.con.3', 'ZT28.con.4')] write.csv(tmp, file="tmp.csv", row.names=FALSE) ``` [f\_counts2TMM](/Counts-ju-zhen-de-biao-zhun-hua-fang-fa--TMM-he-VST-RLOG) ```R tmp <- read.csv('tmp.csv', row.names = 1) tmp <- f_counts2TMM(tmp) tmp <- log2(tmp + 1) write.csv(tmp, file="tmp.csv") ``` ## 分析周期节律 ```R meta2d(infile="tmp.csv",filestyle="csv",outdir="example", cycMethod="JTK", timepoints=c(16,16,16,16,28,28,28,28),outRawData=TRUE) r1 <- read.csv('example/JTKresult_tmp.csv') r2 <- read.csv('example/meta2d_tmp.csv') ``` ## 绘制热图 ```R require(pheatmap) r1 <- read.csv('example/JTKresult_tmp.csv') r1 <- subset(r1, ADJ.P < 0.1) dat <- r1[-(1:6)] p3 <- pheatmap(dat, scale = "row", cluster_cols = F, border_color = NA, show_rownames = F,treeheight_row = 0) ``` ## 绘制某个基因的拟合曲线 ```R get_sin_lm <- function(PER, LAG, AMP, mean=0){ function(xvar){ -(AMP/2) * cos(2 * pi* ((xvar + LAG)/PER)) + mean } } dat <- r1[-(1:6)] dat <- as.data.frame(t(dat)) colnames(dat) <- r1$CycID index = 5 a <- get_sin_lm(r1$PER[[index]], r1$LAG[[index]], r1$AMP[[index]], mean = mean(unlist(r1[index,-(1:6)]))) mean(unlist(r1[index,-(1:6)])) dat1 <- dat[index] dat1$x <- c(16,16,16,16,28,28,28,28) names(dat1) <- c('y', 'x') ggplot(dat1, aes(x=x, y = y)) + stat_function(fun = a) + geom_point() ```