Last updated: 2020-03-18
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Knit directory: scFLASH/
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File | Version | Author | Date | Message |
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Rmd | e308747 | Jason Willwerscheid | 2020-03-18 | wflow_publish(“analysis/prior_type_pbmc.Rmd”) |
I redo my previous analysis of prior families using the PBMC 3k dataset. Fits were produced by adding 20 “greedy” factors and backfitting. The code can be viewed here.
source("./code/utils.R")
pbmc <- readRDS("./data/10x/pbmc.rds")
pbmc <- preprocess.pbmc(pbmc)
res <- readRDS("./output/prior_type/priortype_fits_pbmc.rds")
format.t <- function(t) {
return(sapply(t, function(x) {
hrs <- floor(x / 3600)
min <- floor((x - 3600 * hrs) / 60)
sec <- floor(x - 3600 * hrs - 60 * min)
if (hrs > 0) {
return(sprintf("%02.fh%02.fm%02.fs", hrs, min, sec))
} else if (min > 0) {
return(sprintf("%02.fm%02.fs", min, sec))
} else {
return(sprintf("%02.fs", sec))
}
}))
}
t.greedy <- sapply(lapply(res, `[[`, "t"), `[[`, "greedy")
t.backfit <- sapply(lapply(res, `[[`, "t"), `[[`, "backfit")
niter.backfit <- sapply(lapply(res, `[[`, "output"), function(x) x$Iter[nrow(x)])
t.periter.b <- t.backfit / niter.backfit
time.df <- data.frame(format.t(t.greedy), format.t(t.backfit),
niter.backfit, format.t(t.periter.b))
rownames(time.df) <- c("Point-normal", "Scale mixture of normals",
"Semi-nonnegative (NN cells)", "Semi-nonnegative (NN genes)")
knitr::kable(time.df[c(1, 2, 4, 3), ],
col.names = c("Greedy time", "Backfit time",
"Backfit iter", "Backfit time per iter"),
digits = 2,
align = "r")
Greedy time | Backfit time | Backfit iter | Backfit time per iter | |
---|---|---|---|---|
Point-normal | 53s | 12m52s | 55 | 14s |
Scale mixture of normals | 03m13s | 21m44s | 58 | 22s |
Semi-nonnegative (NN genes) | 06m34s | 21m48s | 32 | 40s |
Semi-nonnegative (NN cells) | 01m50s | 18m39s | 62 | 18s |
I show the ELBO after each of the last ten greedy factors have been added and after each backfitting iteration. snn.cell
denotes the semi-nonnegative fit that puts nonnegative priors on cell loadings, whereas snn.gene
puts nonnegative priors on gene loadings.
Results here are surprising: the snn.gene
fit easily achieves the highest ELBO, and both semi-nonnegative fits outperform the point-normal fit.
res$pn$output$Fit <- "pn"
res$ash$output$Fit <- "ash"
res$snn.cell$output$Fit <- "snn.cell"
res$snn.gene$output$Fit <- "snn.gene"
res$pn$output$row <- 1:nrow(res$pn$output)
res$ash$output$row <- 1:nrow(res$ash$output)
res$snn.cell$output$row <- 1:nrow(res$snn.cell$output)
res$snn.gene$output$row <- 1:nrow(res$snn.gene$output)
elbo.df <- rbind(res$pn$output, res$ash$output, res$snn.cell$output, res$snn.gene$output)
ggplot(subset(elbo.df, !(Factor %in% as.character(1:10))),
aes(x = row, y = Obj, color = Fit, shape = Type)) +
geom_point() +
labs(x = NULL, y = "ELBO (unadjusted)",
title = "Greedy factors 11-20 and all backfitting iterations") +
theme(axis.text.x = element_blank(), axis.ticks.x = element_blank())
I line up the point-normal and scale-mixture-of-normal factors so that similar factors are shown one on top of the other. Although many factors appear similar, the scale-mixture-of-normal fit looks much better to me: factor 6 does a better job at separating out dendritic cells, while factor 14 contains potentially useful information about CD19+ B cells.
pn.v.ash <- compare.factors(res$pn$fl, res$ash$fl)
plot.factors(res$pn, pbmc$cell.type, order(res$pn$fl$pve, decreasing = TRUE),
title = "Point-normal priors")
plot.factors(res$ash, pbmc$cell.type, pn.v.ash$fl2.k[order(res$pn$fl$pve, decreasing = TRUE)],
title = "Scale mixtures of normals")
For ease of comparison, I only consider the semi-nonnegative fit that puts nonnegative priors on gene loadings. As above, I line up similar factors. I denote a semi-nonnegative factor as “similar” to a point-normal factor if the gene loadings are strongly correlated (\(r \ge 0.7\)) with either the positive or the negative component of the point-normal gene loadings.
cor.thresh <- 0.7
pn.pos <- pmax(res$ash$fl$loadings.pm[[2]], 0)
pn.pos <- t(t(pn.pos) / apply(pn.pos, 2, function(x) sqrt(sum(x^2))))
pos.cor <- crossprod(res$snn.gene$fl$loadings.pm[[2]], pn.pos)
pn.neg <- -pmin(res$ash$fl$loadings.pm[[2]], 0)
pn.neg <- t(t(pn.neg) / apply(pn.neg, 2, function(x) sqrt(sum(x^2))))
pn.neg[, 1] <- 0
neg.cor <- crossprod(res$snn.gene$fl$loadings.pm[[2]], pn.neg)
is.cor <- (pmax(pos.cor, neg.cor) > cor.thresh)
pn.matched <- which(apply(is.cor, 2, any))
snn.matched <- unlist(lapply(pn.matched, function(x) which(is.cor[, x])))
# Duplicate factors where need be.
pn.matched <- rep(1:res$ash$fl$n.factors, times = apply(is.cor, 2, sum))
plot.factors(res$ash, pbmc$cell.type,
pn.matched, title = "Point-normal (matched factors)")
plot.factors(res$snn.gene, pbmc$cell.type,
snn.matched, title = "Semi-nonnegative (matched factors)")
The remaining factors do not have counterparts.
snn.unmatched <- setdiff(1:res$snn.gene$fl$n.factors, snn.matched)
pn.unmatched <- setdiff(1:res$ash$fl$n.factors, pn.matched)
plot.factors(res$ash, pbmc$cell.type,
pn.unmatched, title = "Point-normal (unmatched factors)")
plot.factors(res$snn.gene, pbmc$cell.type,
snn.unmatched, title = "Semi-nonnegative (unmatched factors)")
sessionInfo()
R version 3.5.3 (2019-03-11)
Platform: x86_64-apple-darwin15.6.0 (64-bit)
Running under: macOS Mojave 10.14.6
Matrix products: default
BLAS: /Library/Frameworks/R.framework/Versions/3.5/Resources/lib/libRblas.0.dylib
LAPACK: /Library/Frameworks/R.framework/Versions/3.5/Resources/lib/libRlapack.dylib
locale:
[1] en_US.UTF-8/en_US.UTF-8/en_US.UTF-8/C/en_US.UTF-8/en_US.UTF-8
attached base packages:
[1] stats graphics grDevices utils datasets methods base
other attached packages:
[1] flashier_0.2.4 ggplot2_3.2.0 Matrix_1.2-15
loaded via a namespace (and not attached):
[1] Rcpp_1.0.1 plyr_1.8.4 highr_0.8
[4] compiler_3.5.3 pillar_1.3.1 git2r_0.25.2
[7] workflowr_1.2.0 iterators_1.0.10 tools_3.5.3
[10] digest_0.6.18 evaluate_0.13 tibble_2.1.1
[13] gtable_0.3.0 lattice_0.20-38 pkgconfig_2.0.2
[16] rlang_0.4.2 foreach_1.4.4 parallel_3.5.3
[19] yaml_2.2.0 ebnm_0.1-24 xfun_0.6
[22] withr_2.1.2 stringr_1.4.0 dplyr_0.8.0.1
[25] knitr_1.22 fs_1.2.7 rprojroot_1.3-2
[28] grid_3.5.3 tidyselect_0.2.5 glue_1.3.1
[31] R6_2.4.0 rmarkdown_1.12 mixsqp_0.3-31
[34] irlba_2.3.3 reshape2_1.4.3 ashr_2.2-38
[37] purrr_0.3.2 magrittr_1.5 whisker_0.3-2
[40] MASS_7.3-51.1 codetools_0.2-16 backports_1.1.3
[43] scales_1.0.0 htmltools_0.3.6 assertthat_0.2.1
[46] colorspace_1.4-1 labeling_0.3 stringi_1.4.3
[49] pscl_1.5.2 doParallel_1.0.14 lazyeval_0.2.2
[52] munsell_0.5.0 truncnorm_1.0-8 SQUAREM_2017.10-1
[55] crayon_1.3.4