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Exposure Instability Analysis of Signature Exposures with Bootstrapping
sig_fit_bootstrap_batch(
catalogue_matrix,
methods = c("QP"),
n = 100L,
min_count = 1L,
p_val_thresholds = c(0.05),
use_parallel = FALSE,
seed = 123456L,
job_id = NULL,
result_dir = tempdir(),
...
)
a numeric matrix V
with row representing components and
columns representing samples, typically you can get nmf_matrix
from sig_tally()
and
transpose it by t()
.
a subset of c("LS", "QP", "SA")
.
the number of bootstrap replicates.
minimal exposure in a sample, default is 1. Any patient has total exposure less than this value will be filtered out.
a vector of relative exposure threshold for calculating p values.
if TRUE
, use parallel computation based on furrr package.
random seed to reproduce the result.
a job ID, default is NULL
, can be a string. When not NULL
, all bootstrapped results
will be saved to local machine location defined by result_dir
. This is very useful for running
more than 10 times for more than 100 samples.
see above, default is temp directory defined by R.
other common parameters passing to sig_fit_bootstrap, including sig
, sig_index
,
sig_db
, db_type
, mode
, etc.
a list
of data.table
.
# NOT RUN {
W <- matrix(c(1, 2, 3, 4, 5, 6), ncol = 2)
colnames(W) <- c("sig1", "sig2")
W <- apply(W, 2, function(x) x / sum(x))
H <- matrix(c(2, 5, 3, 6, 1, 9, 1, 2), ncol = 4)
colnames(H) <- paste0("samp", 1:4)
V <- W %*% H
V
if (requireNamespace("quadprog")) {
z10 <- sig_fit_bootstrap_batch(V, sig = W, n = 10)
z10
}
# }
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