Description Usage Arguments Details Value Examples
Drugs with the largest positive and negative cosine similarity are predicted to, respectively, mimic and reverse the query signature. Values range from +1 to -1.
1 2 3 | query_combos(query_genes, drug_info = c("cmap", "l1000"),
method = c("average", "ml"), include = NULL,
ncores = parallel::detectCores())
|
query_genes |
Named numeric vector of differentual expression values for
query genes. Usually 'meta' slot of |
drug_info |
Character vector specifying which dataset to query (either 'cmap' or 'l1000'). Can also provide a matrix of differential expression values for drugs or drug combinations (rows are genes, columns are drugs). |
method |
One of 'average' (default) or 'ml' (machine learning - see details and vignette). |
include |
Character vector of drug names for which combinations with all
other drugs will be predicted and queried. If |
ncores |
Integer, number of cores to use for method 'average'. Default is to use all cores. |
To predict and query all 856086 two-drug cmap combinations, the 'average'
method
can take as little as 10 minutes (Intel Core i7-6700). The 'ml'
(machine learning) method
takes two hours on the same hardware and
requires ~10GB of RAM but is slightly more accurate. Both methods will run
faster by specifying only a subset of drugs using the include
parameter.
To speed up the 'ml' method, the MRO+MKL distribution of R can help
substantially (link).
The combinations of LINCS l1000 signatures (~26 billion) can also be queried
using the 'average' method
. In order to compare l1000 results to those
obtained with cmap, only the same genes should be queried (see example).
Vector of cosine similarities between query and drug combination signatures.
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 | library(lydata)
library(crossmeta)
# location of data
data_dir <- system.file("extdata", package = "lydata")
# gather GSE names
gse_names <- c("GSE9601", "GSE15069", "GSE50841", "GSE34817", "GSE29689")
# load previous analysis
anals <- load_diff(gse_names, data_dir)
# perform meta-analysis
es <- es_meta(anals)
# get dprimes
dprimes <- get_dprimes(es)
# query combinations of metformin and all other cmap drugs
top_met_combos <- query_combos(dprimes$all$meta, include = 'metformin', ncores = 1)
# previous query but with machine learning method
# top_met_combos <- query_combos(dprimes$all$meta, method = 'ml', include = 'metformin')
# query all cmap drug combinations
# top_combos <- query_combos(dprimes$all$meta)
# query all cmap drug combinations with machine learning method
# top_combos <- query_combos(dprimes$all$meta, method = 'ml')
# query l1000 and cmap using same genes
# library(ccdata)
# data(cmap_es)
# data(l1000_es)
# cmap_es <- cmap_es[row.names(l1000_es), ]
# met_cmap <- query_combos(dprimes$all$meta, cmap_es, include = 'metformin')
# met_l1000 <- query_combos(dprimes$all$meta, l1000_es, include = 'metformin')
|
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.