mcxarray(1) | USER COMMANDS | mcxarray(1) |
mcxarray - Transform array data to MCL matrices
mcxarray [options]
mcxarray [-data fname (input data
file)]
[-imx fname (input matrix file)]
[-co num ((absolute) cutoff for output values
(required))]
[-skipr <num> (skip <num> data rows)]
[-skipc <num> (skip <num> data columns)]
[-o fname (output file fname)]
[--text-table (write output in full text table format)]
[-write-tab <fname> (write row labels to file)]
[-l <num> (take labels from column
<num>)]
[--pearson (use Pearson correlation
(default))]
[--spearman (use Spearman rank correlation)]
[--dot (use dot product)]
[--cosine (use cosine (similarity))]
[--slow-cosine (use cosine(0.5 alpha) (similarity))]
[--angle (use angle between vectors (note: a metric
distance))]
[--acute-angle (use acute angle between vectors)]
[--angle-norm (use normalised angle between vectors (by
pi))]
[--acute-angle-norm (use normalised acute angle between
vectors (by pi/2))]
[--sine (use sine (note: a metric distance))]
[--slow-sine (use sine(0.5 alpha) (note: a metric
distance))]
[--euclid (use Euclidean distance between vectors)]
[--max (use L-oo, aka Chebyshev distance)]
[--taxi (use L-1, aka taxi, aka city-block distance)]
[-minkowski <num> (use Minkowski distance with power
<num>)]
[-fp <mode> (use fingerprint measure)]
[-digits <num> (output precision)]
[--write-binary (write output in binary format)]
[-t <int> (use <int> threads)]
[-J <intJ> (a total of <intJ> jobs are used)]
[-j <intj> (this job has index <intj>)]
[-start <int> (start at column <int>
inclusive)]
[-end <int> (end at column <int> EXclusive)]
[--transpose-data (work with the transposed data matrix)]
[--rank-transform (rank transform the data first)]
[-tf spec (transform result network)]
[-table-tf spec (transform input table before
processing)]
[-n mode (normalize input)]
[--zero-as-na (treat zeroes as missing data)]
[--sparse (do not store zero values)]
[-write-data <fname> (write data to file)]
[-write-na <fname> (write NA matrix to file)]
[--job-info (print index ranges for this job)]
[--help (print this help)]
[-h (print this help)]
[--version (print version information)]
mcxarray can either read a flat file containing array data (-data) or a matrix file satisfying the mcl input format (-imx). In the former case it will by default work with the rows as the data vectors. In the latter case it will by default work with the columns as the data vectors (note that mcl matrices are presented as a listing of columns). This can be changed for both using the --transpose-data option.
The input data may contain missing data in the form of empty columns, NA values (not available/applicable), or NaN values (not a number). The program keeps track of these, and when computing the correlation between two rows or columns ignores all positions where any one of the two has missing data.
-data fname (input data file)
Specify the data file containing the expression values. It should be
tab-separated.
-imx fname (input matrix file)
The expression values are read from a file in mcl matrix format.
--pearson (use Pearson correlation (default))
--spearman (use Spearman rank correlation)
--cosine (use cosine)
--slow-cosine (use cosine(0.5 alpha) (similarity))
--dot (use the dot product)
All these measures express the level of similarity or correlation between two
vectors. Note that the dot product is not normalised and should only be used
with very good reason. A few more similarity measures are provided by the
fingerprint option -fp described below.
-fp <mode> (specify fingerprint measure)
Fingerprints are used to define an entity in terms of it having or not having
certain traits. This means that a fingerprint can be represented by a
boolean vector, and a set of fingerprints can be represented by an array of
such vectors. In the presence of many traits and entities the dimensions of
such a matrix can grow large. The sparse storage employed by MCL-edge is
ideally suited to this, and mcxarray is ideally suited to the computation of
all pairwise comparisons between such fingerprints. Currently mcxarray
supports five different types of fingerprint, described below. Given two
fingerprints, the number of traits unique to the first is denoted by
a, the number unique to the second is denoted by b, and the
number that they have in common is denoted by c.
hamming
The Hamming distance, defined as a+b.
tanimoto
The Tanimoto similarity measure, c/(a+b+c).
cosine
The cosine similarity measure,
c/sqrt((a+c)*(b+c)).
meet
Simply the number of shared traits, identical to c.
cover
A normalised and non-symmetric similarity measure, representing the fraction
of traits shared relative to the number of traits by a single entity. This
gives the value c/(a+c) in one direction, and the value
c/(b+c) in the other.
--sine (use sine (note: a metric distance))
--slow-sine (use sine(0.5 alpha) (note: a metric distance))
--angle (use angle between vectors (note: a metric distance))
--acute-angle (use acute angle between vectors)
--angle-norm (use normalised angle between vectors (by pi))
--acute-angle-norm (use normalised acute angle between vectors (by
pi/2))
--euclid (use Euclidean distance between vectors)
--max (use L-oo, aka Chebyshev distance)
--taxi (use L-1, aka taxi, aka city-block, aka Manhattan
distance)
-minkowski <num> (use Minkowski distance with power
<num>)
All these measures express the level of dissimilarity or distance between two
vectors.
-skipr <num> (skip <num> data rows)
Skip the first <num> data rows.
-skipc <num> (skip <num> data columns)
Ignore the first <num> data columns.
-l <num> (take labels from column <num>)
Specifies to construct a tab of labels from this data column. The tab can be
written to file using -write-tab fname.
-write-tab <fname> (write row labels to file)
Write a tab file. In the simple case where the labels are in the first data
column it is sufficient to issue -skipc 1. If more data
columns need to be skipped one must explicitly specify the data column to
take labels from with -l l.
-t <int> (use <int> threads)
-J <intJ> (a total of <intJ> jobs are used)
-j <intj> (this job has index <intj>)
Computing all pairwise correlations is time-intensive for large input. If you
have multiple CPUs available consider using as many threads. Additionally it
is possible to spread the computation over multiple jobs/machines. These
three options are described in the clmprotocols manual page. The
following set of options, if given to as many commands, defines three jobs,
each running four threads.
-t 4 -J 3 -j 0 -o out.0 -t 4 -J 3 -j 1 -o out.1 -t 4 -J 3 -j 2 -o out.2
The output can then be collected with
mcx collect --add-matrix -o out.all out.[0-2]
--job-info (print index ranges for this job)
-start <int> (start at column <int> inclusive)
-end <int> (end at column <int> EXclusive)
--job-info can be used to list the set of column ranges to be processed
by the job as a result of the command line options -t, -J, and
-j. If a job has failed, this option can be used to manually split
those ranges into finer chunks, each to be processed as a new sub-job
specified with -start and -end. With the latter two options,
it is impossible to use parallelization of any kind (i.e. any of the
-t, -J, and -j options).
-o fname (output file fname)
Output file name.
--text-table (write output in full text table format)
The output will be written in tabular format rather than native
mcl-edge format.
-digits <num> (output precision)
Specify the precision to use in native interchange format.
--write-binary (write output in binary format)
Write output matrices in native binary format.
-co num ((absolute) cutoff for output values)
Output values of magnitude smaller than num are removed (set to zero).
Thus, negative values are removed only if their positive counterpart is
smaller than num.
--transpose-data (work with the transpose)
Work with the transpose of the input data matrix.
--rank-transform (rank transform the data first)
The data is rank-transformed prior to the computation of pairwise measures.
-write-data <fname> (write data to file)
This writes the data that was read in to file. If --spearman is
specified the data will be rank-transformed.
-write-na <fname> (write NA matrix to file)
This writes all positions for which no data was found to file, in native mcl
matrix format.
--zero-as-na (treat zeroes as missing data)
This option can be useful when reading data with the -imx option, for
example after it has been loaded from label input by mcxload. An
example case is the processing of a large number of probe rankings, where
not all rankings contain all probe names. The rankings can be loaded using
mcxload with a tab file containing all probe names. Probes that are
present in the ranking are given a positive ordinal number reflecting the
ranking, and probes that are absent are implicitly given the value zero.
With the present option mcxarray will handle the correlation computation in
a reasonable way.
--sparse (do not store zero data value)
With this option internal calculations are performed on compressed data where
zeroes are not stored. This can be useful when the input data is very large.
-n mode (normalization mode)
If mode is set to z the data will be normalized based on
z-score. No other modes are currently supported.
-tf spec (transform result network)
-table-tf spec (transform input table before processing)
The transformation syntax is described in mcxio(5).
--help (print help)
-h (print help)
--version (print version information)
Stijn van Dongen.
mcl(1), mclfaq(7), and mclfamily(7) for an overview of all the documentation and the utilities in the mcl family.
9 Oct 2022 | mcxarray 22-282 |