xenial (1) gmod_bulk_load_gff3.pl.1p.gz

Provided by: chado-utils_1.23-5_all bug

NAME

       $0 - Bulk loads gff3 files into a chado database.

SYNOPSIS

         % $0 [options]
         % cat <gff-file> | $0 [options]

OPTIONS

        --gfffile         The file containing GFF3 (optional, can read
                            from stdin)
        --fastafile       Fasta file to load sequence from
        --organism        The organism for the data
                           (use the value 'fromdata' to read from GFF organism=xxx)
        --dbprofile       Database config profile name
        --dbname          Database name
        --dbuser          Database user name
        --dbpass          Database password
        --dbhost          Database host
        --dbport          Database port
        --analysis        The GFF data is from computational analysis
        --noload          Create bulk load files, but don't actually load them.
        --nosequence      Don't load sequence even if it is in the file
        --notransact      Don't use a single transaction to load the database
        --drop_indexes    Drop indexes of affected tables before starting load
                            and recreate after load is finished; generally
                            does not help performance.
        --validate        Validate SOFA terms before attempting insert (can
                            cause script startup to be slow, off by default)
        --ontology        Give directions for handling misc Ontology_terms
        --skip_vacuum     Skip vacuuming the tables after the inserts (default)
        --no_skip_vaccum  Don't skip vacuuming the tables
        --inserts         Print INSERT statements instead of COPY FROM STDIN
        --noexon          Don't convert CDS features to exons (but still create
                            polypeptide features)
        --recreate_cache  Causes the uniquename cache to be recreated
        --remove_lock     Remove the lock to allow a new process to run
        --save_tmpfiles   Save the temp files used for loading the database
        --random_tmp_dir  Use a randomly generated tmp dir (the default is
                            to use the current directory)
        --no_target_syn   By default, the loader adds the targetId in
                            the synonyms list of the feature. This flag
                            deactivate this.
        --unique_target   Trust the unicity of the target IDs. IDs are case
                            sensitive. By default, the uniquename of a new target
                            will be 'TargetId_PrimaryKey'. With this flag,
                            it will be 'TargetId'. Furthermore, the Name of the
                            created target will be its TargetId, instead of the
                            feature's Name.
        --dbxref          Use either the first Dbxref annotation as the
                            primary dbxref (that goes into feature.dbxref_id),
                            or if an optional argument is supplied, the first
                            dbxref that has a database part (ie, before the ':')
                            that matches the supplied pattern is used.
        --delete          Instead of inserting features into the database,
                            use the GFF lines to delete features as though
                            the CRUD=delete-all option were set on all lines
                            (see 'Deletes and updates via GFF below'). The
                            loader will ask for confirmation before continuing.
        --delete_i_really_mean_it
                          Works like --delete except that it does not ask
                            for confirmation.
        --fp_cv           Name of the feature property controlled vocabulary
                            (defaults to 'feature_property').
        --noaddfpcv       By default, the loader adds GFF attribute types as
                            new feature_property cv terms when missing.  This flag
                            deactivates it.
          ** dgg note: should rename this flag: --[no]autoupdate
                   for Chado tables cvterm, cv, db, organism, analysis ...

        --manual          Detailed manual pages
        --custom_adapter  Use a custom subclass adaptor for Bio::GMOD::DB::Adapter
                            Provide the path to the adapter as an argument
        --private_schema  Load the data into a non-public schema.
        --use_public_cv   When loading into a non-public schema, load any cv and
                            cvterm data into the public schema
        --end_sql         SQL code to execute after the data load is complete
        --allow_external_parent
                          Allow Parent tags to refer to IDs outside the current
                          GFF file

       Note that all of the arguments that begin 'db' as well as organism can be provided by default by
       Bio::GMOD::Config, which was installed when 'make install' was run.  Also note the the option dbprofile
       and all other db* options are mutually exclusive--if you supply dbprofile, do not supply any other db*
       options, as they will not be used.

DESCRIPTION

       The GFF in the datafile must be version 3 due to its tighter control of the specification and use of
       controlled vocabulary.  Accordingly, the names of feature types must be exactly those in the Sequence
       Ontology Feature Annotation (SOFA), not the synonyms and not the accession numbers (SO accession numbers
       may be supported in future versions of this script).

       Note that the ##sequence-region directive is not supported as a way of declaring a reference sequence for
       a GFF3 file.  The ##sequence-region directive is not expressive enough to define what type of thing the
       sequence is (ie, is it a chromosome, a contig, an arm, etc?).  If your GFF file uses a ##sequence-region
       directive in this way, you must convert it to a full GFF3 line.  For example, if you have this line:

         ##sequence-region chrI 1 9999999

       Then is should be converted to a GFF3 line like this:

         chrI  .       chromosome      1       9999999 .       .       .       ID=chrI

   How GFF3 is stored in chado
       Here is summary of how GFF3 data is stored in chado:

       Column 1 (reference sequence)
           The reference sequence for the feature becomes the srcfeature_id of the feature in the featureloc
           table for that feature.  That featureloc generally assigned a rank of zero if there are other
           locations associated with this feature (for instance, for a match feature), the other locations will
           be assigned featureloc.rank values greater than zero.

       Column 2 (source)
           The source is stored as a dbxref.  The chado instance must of an entry in the db table named
           'GFF_source'.  The script will then create a dbxref entry for the feature's source and associate it
           to the feature via the feature_dbxref table.

       Column 3 (type)
           The cvterm.cvterm_id of the SOFA type is stored in feature.type_id.

       Column 4 (start)
           The value of start minus 1 is stored in featureloc.fmin (one is subtracted because chado uses
           interbase coordinates, whereas GFF uses base coordinates).

       Column 5 (end)
           The value of end is stored in featureloc.fmax.

       Column 6 (score)
           The score is stored in one of the score columns in the analysisfeature table.  The default is
           analysisfeature.significance.  See the section below on analysis results for more information.

       Column 7 (strand)
           The strand is stored in featureloc.strand.

       Column 8 (phase)
           The phase is stored in featureloc.phase.  Note that there is currently a problem with the chado
           schema for the case of single exons having different phases in different transcripts.  If your data
           has just such a case, complain to gmod-schema@lists.sourceforge.net to find ways to address this
           problem.

       Column 9 (group)
           Here is where the magic happens.

           Assigning feature.name, feature.uniquename
               The values of feature.name and feature.uniquename are assigned according to these simple rules:

               If there is an ID tag, that is used as feature.uniquename
                   otherwise, it is assigned a uniquename that is equal to 'auto' concatenated with the
                   feature_id.

               If there is a Name tag, it's value is set to feature.name;
                   otherwise it is null.

                   Note that these rules are much more simple than that those that Bio::DB::GFF uses, and may
                   need to be revisited.

           Assigning feature_relationship entries
               All Parent tagged features are assigned feature_relationship entries of 'part_of' to their parent
               features.  Derived_from tags are assigned 'derived_from' relationships.  Note that parent
               features must appear in the file before any features use a Parent or Derived_from tags referring
               to that feature.

           Alias tags
               Alias values are stored in the synonym table, under both synonym.name and synonym.synonym_sgml,
               and are linked to the feature via the feature_synonym table.

           Dbxref tags
               Dbxref values must be of the form 'db_name:accession', where db_name must have an entry in the db
               table, with a value of db.name equal to 'DB:db_name'; several database names were preinstalled
               with the database when 'make prepdb' was run.  Execute 'SELECT name FROM db' to find out what
               databases are already available.  New dbxref entries are created in the dbxref table, and dbxrefs
               are linked to features via the feature_dbxref table.

           Gap tags
               Currently is mostly ignored--the value is stored as a featureprop, but otherwise is not used yet.

           Note tags
               The values are stored as featureprop entries for the feature.

           Any custom (ie, lowercase-first) tags
               Custom tags are supported.  If the tag doesn't already exist in the cvterm table, it will be
               created.  The value will stored with its associated cvterm in the featureprop table.

           Ontology_term
               When the Ontology_term tags are used, items from the Gene Ontology and Sequence Ontology will be
               processed automatically when the standard DB:accession format is used (e.g. GO:0001234).  To use
               other ontology terms, you must specify that mapping of the DB indentifiers in the GFF file and
               the name of the ontologies in the cv table as a comma separated tag=value pairs.  For example, to
               use plant and cell ontology terms, you would supply on the command line:

                 --ontology 'PO=plant ontology,CL=cell ontology'

               where 'plant ontology' and 'cell ontology' are the names in the cv table exactly as they appear.

           Target tags
               Proper processing of Target tags requires that there be two source features already available in
               the database, the 'primary' source feature (the chromosome or contig) and the 'subject' from the
               similarity analysis, like an EST, cDNA or syntenic chromosome.  If the subject feature is not
               present, the loader will attempt to create a placeholder feature object in its place.  If you
               have a fasta file the contains the subject, you can use the perl script, gmod_fasta2gff3.pl, that
               comes with this distribution to make a GFF3 file suitable for loading into chado before loading
               your analysis results.

           CDS and UTR features
               The way CDS features are represented in Chado is as an intersection of a transcript's exons and
               the transcripts polypeptide feature.  To allow proper translation of a GFF3 file's CDS features,
               this loader will convert CDS and UTR feature lines to corresponding exon features (and add a
               featureprop note that the exon was inferred from a GFF3 CDS and/or UTR line), and create a
               polypeptide feature that spans the genomic region from the start of translation to the stop.

               If your GFF3 file contains both exon and CDS/UTR features, then you will want to suppress the
               creation of the exon features and instead will only want a polypeptide feature to be created.  To
               do this, use the --noexon option.  In this case, the CDS and UTR features will still be converted
               to exon features as described above.

               Note that in the case where your GFF file contains CDS and/or UTR features that do not belong to
               'central dogma' genes (that is, that have a gene, transcript and CDS/exon features), none of the
               above will happen and the features will be stored as is.

   NOTES
       Loading fasta file
           When the --fastafile is provided with an argument that is the path to a file containing fasta
           sequence, the loader will attempt to update the feature table with the sequence provided.  Note that
           the ID provided in the fasta description line must exactly match what is in the feature table
           uniquename field.  Be careful if it is possible that the uniquename of the feature was changed to
           ensure uniqueness when it was loaded from the original GFF.  Also note that when loading sequence
           from a fasta file, loading GFF from standard in is disabled.  Sorry for any inconvenience.

       ##sequence-region
           This script does not use sequence-region directives for anything.  If it represents a feature that
           needs to be inserted into the database, it should be represented with a full GFF line.  This includes
           the reference sequence for the features if it is not already in the database, like a chromosome.  For
           example, this:

             ##sequence-region chr1 1      213456789

           should change to this:

             chr1  UCSC    chromosome      1       213456789       .       .       .       ID=chr1

       Transactions
           This application will, by default, try to load all of the data at once as a single transcation.  This
           is safer from the database's point of view, since if anything bad happens during the load, the
           transaction will be rolled back and the database will be untouched.  The problem occurs if there are
           many (say, greater than a 2-300,000) rows in the GFF file.  When that is the case, doing the load as
           a single transcation can result in the machine running out of memory and killing processes.  If
           --notranscat is provided on the commandline, each table will be loaded as a separate transaction.

       SQL INSERTs versus COPY FROM
           This bulk loader was originally designed to use the PostgreSQL COPY FROM syntax for bulk loading of
           data.  However, as mentioned in the 'Transactions' section, memory issues can sometimes interfere
           with such bulk loads.  In another effort to circumvent this issue, the bulk loader has been modified
           to optionally create INSERT statements instead of the COPY FROM statements.  INSERT statements will
           load much more slowly than COPY FROM statements, but as they load and commit individually, they are
           more more likely to complete successfully.  As an indication of the speed differences involved,
           loading yeast GFF3 annotations (about 16K rows), it takes about 5 times longer using INSERTs versus
           COPY on my laptop.

       Deletes and updates via GFF
           There is rudimentary support for modifying the features in an existing database via GFF.  Currently,
           there is only support for deleting.  In order to delete, the GFF line must have a custom tag in the
           ninth column, 'CRUD' (for Create, Replace, Update and Delete) and have a recognized value.  Currently
           the two recognized values are CRUD=delete and CRUD=delete-all.

           IMPORTANT NOTE: Using the delete operations have the potential of creating orphan features (eg, exons
           whose gene has been deleted).  You should be careful to make sure that doesn't happen. Included in
           this distribution is a PostgreSQL trigger (written in plpgsql) that will delete all orphan children
           recursively, so if a gene is deleted, all transcripts, exons and polypeptides that belong to that
           gene will be deleted too.  See the file modules/sequence/functions/delete-trigger.plpgsql for more
           information.

           delete
               The delete option will delete one and only one feature for which the name, type and organism
               match what is in the GFF line with what is in the database.  Note that feature.uniquename are not
               considered, nor are the coordinates presented in the GFF file.  This is so that updates via GFF
               can be done on the coordinants.  If there is more than one feature for which the name, type and
               organism match, the loader will print an error message and stop.  If there are no features that
               match the name, type and organism, the loader will print a warning message and continue.

           delete-all
               The delete-all option works similarly to the delete option, except that it will delete all
               features that match the name, type and organism in the GFF line (as opposed to allowing only one
               feature to be deleted).  If there are no features that match, the loader will print a warning
               message and continue.

       The run lock
           The bulk loader is not a multiuser application.  If two separate bulk load processes try to load data
           into the database at the same time, at least one and possibly all loads will fail.  To keep this from
           happening, the bulk loader places a lock in the database to prevent other gmod_bulk_load_gff3.pl
           processes from running at the same time.  When the application exits normally, this lock will be
           removed, but if it crashes for some reason, the lock will not be removed.  To remove the lock from
           the command line, provide the flag --remove_lock.  Note that if the loader crashed necessitating the
           removal of the lock, you also may need to rebuild the uniquename cache (see the next section).

       The uniquename cache
           The loader uses the chado database to create a table that caches feature_ids, uniquenames, type_ids,
           and organism_ids of the features that exist in the database at the time the load starts and the
           features that will be added when the load is complete.  If it is possilbe that new features have been
           added via some method that is not this loader (eg, Apollo edits or loads with XORT) or if a previous
           load using this loader was aborted, then you should supply the --recreate_cache option to make sure
           the cache is fresh.

       Sequence
           By default, if there is sequence in the GFF file, it will be loaded into the residues column in the
           feature table row that corresponds to that feature.  By supplying the --nosequence option, the
           sequence will be skipped.  You might want to do this if you have very large sequences, which can be
           difficult to load.  In this context, "very large" means more than 200MB.

           Also note that for sequences to load properly, the GFF file must have the ##FASTA directive (it is
           required for proper parsing by Bio::FeatureIO), and the ID of the feature must be exactly the same as
           the name of the sequence following the > in the fasta section.

       The ORGANISM table
           This script assumes that the organism table is populated with information about your organism.  If
           you are unsure if that is the case, you can execute this command from the psql command-line:

             select * from organism;

           If you do not see your organism listed, execute this command to insert it:

             insert into organism (abbreviation, genus, species, common_name)
                           values ('H.sapiens', 'Homo','sapiens','Human');

           substituting in the appropriate values for your organism.

       Parents/children order
           Parents must come before children in the GFF file.

       Analysis
           If you are loading analysis results (ie, blat results, gene predictions), you should specify the -a
           flag.  If no arguments are supplied with the -a, then the loader will assume that the results belong
           to an analysis set with a name that is the concatenation of the source (column 2) and the method
           (column 3) with an underscore in between.  Otherwise, the argument provided with -a will be taken as
           the name of the analysis set.  Either way, the analysis set must already be in the analysis table.
           The easist way to do this is to insert it directly in the psql shell:

             INSERT INTO analysis (name, program, programversion)
                          VALUES  ('genscan 2005-2-28','genscan','5.4');

           There are other columns in the analysis table that are optional; see the schema documentation and '\d
           analysis' in psql for more information.

           Chado has four possible columns for storing the score in the GFF score column; please use whichever
           is most appropriate and identifiy it with --score_col flag (significance is the default). Note that
           the name of the column can be shortened to one letter.  If you have more than one score associated
           with each feature, you can put the other scores in the ninth column as a tag=value pair, like
           'identity=99', and the bulk loader will put it in the featureprop table (provided there is a cvterm
           for identity; see the section above concerning custom tags).  Available options are:

           significance (default)
           identity
           normscore
           rawscore

           A planned addtion to the functionality of handling analysis results is to allow "mixed" GFF files,
           where some lines are analysis results and some are not.  Additionally, one will be able to supply
           lists of types (optionally with sources) and their associated entry in the analysis table.  The
           format will probably be tag value pairs:

             --analysis match:Rice_est=rice_est_blast, \
                        match:Maize_cDNA=maize_cdna_blast, \
                        mRNA=genscan_prediction,exon=genscan_prediction

       Grouping features by ID
           The GFF3 specification allows features like CDSes and match_parts to be grouped together by sharing
           the same ID.  This loader does not support this method of grouping.  Instead the parent feature must
           be explicitly created before the parts and the parts must refer to the parent with the Parent tag.

       External Parent IDs
           The GFF3 specification states that IDs are only valid within a single GFF file, so you can't have
           Parent tags that refer to IDs in another file.  By specificifying the "allow_external_parent" flag,
           you can relax this restriction.  A word of warning however: if the parent feature's uniquename/ID was
           modified during loading (to make it unique), this functionality won't work, as it won't beable to
           find the original feature correctly.  Actually, it may be worse than not working, it may attach child
           features to the wrong parent.  This is why it is a bad idea to use this functionality!  Please use
           with caution.

AUTHORS

       Allen Day <allenday@ucla.edu>, Scott Cain <scain@cpan.org>

       Copyright (c) 2011

       This library is free software; you can redistribute it and/or modify it under the same terms as Perl
       itself.