## ----message=FALSE, warning=FALSE, include=FALSE------------------------------ library(kableExtra) library(dplyr) library(nQuack) ## ----eval=FALSE, include=TRUE------------------------------------------------- # # Download all data files # SetupBasicExample(overwrite = FALSE) ## ----eval=FALSE, include=TRUE------------------------------------------------- # library(nQuack) # library(dplyr) # library(kableExtra) ## ----eval=FALSE, include=TRUE------------------------------------------------- # # Set in and out paths of files # inpath <- "../inst/extdata/01_raw/" # outpath <- "../inst/extdata/02_prepared/" # # # List files in the inpath and remove their ending # filelist <- list.files(path = inpath, pattern = "*.bam" ) # filelist <- gsub(".bam", "", filelist) # # for( i in 1:length(filelist)){ # prepare_data(filelist[i], inpath, outpath) # } # ## ----eval=FALSE, include=TRUE------------------------------------------------- # inpathtext <- "../inst/extdata/02_prepared/" # newfilelist <- list.files(path = inpathtext, pattern = "*.txt" ) # # for(i in 1:length(newfilelist)){ # samp <- newfilelist[i] # temp <- process_data(paste0(inpathtext, samp), # min.depth = 10, # max.depth.quantile.prob = 1, # error = 0.01, # trunc = c(0.15,0.85)) # # # write.csv(temp, # file = paste0("../inst/extdata/03_processed/", gsub(".txt", "", samp), ".csv"), # row.names = FALSE) # } # ## ----eval=FALSE, include=TRUE------------------------------------------------- # samples <- c("MLG013", "MLG014", "MLG015") # # for(i in 1:length(samples)){ # temp <- as.matrix(read.csv(paste0("../inst/extdata/03_processed/", samples[i], ".csv"))) # out1 <- quackNormal(xm = temp, # samplename = samples[i], # cores = 10, # parallel = TRUE) # out2 <- quackBeta(xm = temp, # samplename = samples[i], # cores = 10, # parallel = TRUE) # out3 <- quackBetaBinom(xm = temp, # samplename = samples[i], # cores = 10, # parallel = TRUE) # allout <- rbind(out1, out2, out3) # write.csv(allout, # file = paste0("../inst/extdata/04_output/", samples[i], ".csv"), # row.names = FALSE) # } # ## ----echo=FALSE, message=FALSE, warning=FALSE, fig.align='center'------------- recordtime <- read.csv(file = "../inst/extdata/04_output/modeltime.csv") recordtime$normal <- round(abs(recordtime$normal), 2) recordtime$beta <- round(abs(recordtime$beta), 2) recordtime$beta.binomial <- round(abs(recordtime$beta.binomial), 2) kableExtra::kbl(recordtime) %>% kable_paper("hover", full_width = F) %>% footnote("Time in seconds.") ## ----eval=FALSE, message=FALSE, warning=FALSE, include=TRUE------------------- # inpathtext <- "../inst/extdata/04_output/" # samples <- c("MLG013", "MLG014", "MLG015") # # for(i in 1:length(samples)){ # temp <- read.csv(paste0(inpathtext, samples[i], ".csv")) # summary <- quackit(model_out = temp, # summary_statistic = "BIC", # mixtures = c("diploid", "triploid", "tetraploid")) # write.csv(summary, # file = paste0("../inst/extdata/05_interpret/", samples[i], ".csv"), # row.names = FALSE) # } # ## ----eval=TRUE, message=FALSE, warning=FALSE, fig.align='center'-------------- # Create key key <- data.frame(sample = c("MLG013", "MLG014", "MLG015"), ploidal.level = c("diploid", "tetraploid", "triploid")) # Read in quackit() output dfs <- lapply(list.files("../inst/extdata/05_interpret/", full.names = TRUE ), read.csv) alloutput <- do.call(rbind, dfs) # Combined alloutputcombo <- dplyr::left_join(alloutput, key) # Check the accuracy alloutputcombo <- alloutputcombo %>% dplyr::mutate(accuracy = ifelse(winnerBIC == ploidal.level, 1, 0)) ## What distribution and model type should we use? sumcheck <- alloutputcombo %>% group_by(Distribution, Type) %>% summarize(total = n(), correct = sum(accuracy)) kbl(sumcheck) %>% kable_paper("hover", full_width = F) ## ----eval=FALSE, include=TRUE------------------------------------------------- # samples <- c("MLG013", "MLG014", "MLG015") # out <- c() # # for(i in 1:length(samples)){ # temp <- as.matrix(read.csv(paste0("../inst/extdata/03_processed/", samples[i], ".csv"))) # out[[i]] <- bestquack(temp, # distribution = "normal", # type = "fixed", # uniform = 1, # mixtures = c("diploid", "triploid", "tetraploid"), # samplename = samples[i]) # } # ## ----eval=FALSE, include=TRUE------------------------------------------------- # samples <- c("MLG013", "MLG014", "MLG015") # bout <- c() # # for(i in 1:length(samples)){ # temp <- as.matrix(read.csv(paste0("../inst/extdata/03_processed/", samples[i], ".csv"))) # bout[[i]] <- quackNboots(temp, # nboots = 100, # distribution = "normal", # type = "fixed", # uniform = 1, # mixtures = c("diploid", "triploid", "tetraploid"), # samplename = samples[i]) # } # write.csv(bout[[1]], file = "../inst/extdata/06_boots/MLG013-boots.csv", row.names = FALSE) # write.csv(bout[[2]], file = "../inst/extdata/06_boots/MLG014-boots.csv", row.names = FALSE) # write.csv(bout[[3]], file = "../inst/extdata/06_boots/MLG015-boots.csv", row.names = FALSE) ## ----------------------------------------------------------------------------- MLG013boot <- read.csv("../inst/extdata/06_boots/MLG013-boots.csv") MLG013boot ## ----eval=FALSE, include=TRUE------------------------------------------------- # temp <- as.matrix(read.csv("../inst/extdata/06_boots/MLG129.csv")) # check <- quackNboots(temp, # nboots = 1000, # distribution = "normal", # type = "fixed", # uniform = 1, # mixtures = c("diploid", "triploid", "tetraploid"), # samplename = "MLG129") # # write.csv(check, file = "../inst/extdata/06_boots/MLG129-boots.csv", row.names = FALSE) ## ----------------------------------------------------------------------------- MLG129boot <- read.csv("../inst/extdata/06_boots/MLG129-boots.csv") MLG129boot