xenial (1) htseq-count.1.gz

Provided by: python-htseq_0.5.4p3-2_amd64 bug

NAME

       htseq-count - Count the number of reads in a SAM alignment file that map to GFF features

       Given  a file with aligned sequencing reads and a list of genomic features, a common task is to count how
       many reads map to each feature.

       A feature is here an interval (i.e., a range of positions) on a chromosome or a union of such intervals.

       In the case of RNA-Seq, the features are typically genes, where each gene is considered here as the union
       of  all  its exons. One may also consider each exon as a feature, e.g., in order to check for alternative
       splicing.  For comparative ChIP-Seq, the features might be binding region from a pre-determined list.

       Special care must be taken to decide how to deal with reads that  overlap  more  than  one  feature.  The
       htseq-count script allows to choose between three modes. Of course, if none of these fits your needs, you
       can write your own script with HTSeq. See the chapter tour for a step-by-step guide on how to do so.

       The three overlap resolution modes of htseq-count work as follows. For each position i in the read, a set
       S(i)  is  defined  as  the set of all features overlapping position i. Then, consider the set S, which is
       (with i running through all position within the read)

       • the union of all the sets S(i) for mode union.

       • the intersection of all the sets S(i) for mode intersection-strict.

       • the intersection of all non-empty sets S(i) for mode intersection-nonempty.

       If S contains precisely one feature, the read is counted for this feature. If it contains more  than  one
       feature, the read is counted as ambiguous (and not counted for any features), and if S is empty, the read
       is counted as no_feature.

       The following figure illustrates the effect of these three modes: [image]

USAGE

       After you have installed HTSeq (see install), you can run htseq-count from the command line:

          htseq-count [options] <sam_file> <gff_file>

       If the file htseq-qa is not in your path, you can, alternatively, call the script with

          python -m HTSeq.scripts.count [options] <sam_file> <gff_file>

       The <sam_file> contains the aligned reads in the SAM format. (Note that the SAMtools contain Perl scripts
       to  convert  most  alignment  formats to SAM.)  Make sure to use a splicing-aware aligner such as TopHat.
       HTSeq-count makes full use of the information in the CIGAR field.

       To read from standard input, use - as <sam_file>.

       If you have paired-end data, you have to sort the SAM file by read name first.   (If  your  sorting  tool
       cannot handle big files, try e.g. Ruan Jue's msort, available from the SOAP web site.)

       The <gff_file> contains the features in the GFF format.

       The  script  outputs  a table with counts for each feature, followed by the special counters, which count
       reads that were not counted for any feature for various reasons, namely:

       • no_feature: reads which could not be assigned to any feature (set S as described above was empty).

       • ambiguous: reads which could have been assigned to more than one feature and hence were not counted for
         any of these (set S had mroe than one element).

       • too_low_aQual: reads which were not counted due to the -a option, see below

       • not_aligned: reads in the SAM file without alignment

       • alignment_not_unique: reads with more than one reported alignment.  These reads are recognized from the
         NH optional SAM field tag.  (If the aligner does not set this field, multiply  aligned  reads  will  be
         counted multiple times.)

       Important:  The  default  for  strandedness  is  yes.  If  your  RNA-Seq  data  has  not been made with a
       strand-specific protocol, this causes half of the reads to be lost.  Hence, make sure to set  the  option
       --stranded=no unless you have strand-specific data!

   Options
       -m <mode>, --mode=<mode>
              Mode  to  handle  reads  overlapping  more than one feature. Possible values for <mode> are union,
              intersection-strict and intersection-nonempty (default: union)

       -s <yes, no or reverse>, --stranded=<yes, no, or reverse>
              whether the data is from a strand-specific assay (default: yes)

              For stranded=no, a read is considered overlapping with a  feature  regardless  of  whether  it  is
              mapped  to the same or the opposite strand as the feature.  For stranded=yes and single-end reads,
              the read has to be mapped to the same strand as the feature. For paired-end reads, the first  read
              has  to  be  on the same strand and the second read on the opposite strand.  For stranded=reverse,
              these rules are reversed.

       -a <minaqual>, --a=<minaqual>
              skip all reads with alignment quality lower than the given minimum value (default: 0)

       -t <feature type>, --type=<feature type>
              feature type (3rd column in GFF file) to be used, all features of other type are ignored (default,
              suitable for RNA-Seq and Ensembl GTF files: exon)

       -i <id attribute>, --idattr=<id attribute>
              GFF  attribute  to  be  used  as  feature  ID.  Several GFF lines with the same feature ID will be
              considered as parts of the same feature. The feature ID is used to  identity  the  counts  in  the
              output table. The default, suitable for RNA-SEq and Ensembl GTF files, is gene_id.

       -o <samout>, --samout=<samout>
              write  out all SAM alignment records into an output SAM file called <samout>, annotating each line
              with its assignment to a feature or a special counter (as an optional field with tag 'XF')

       -q, --quiet
              suppress progress report and warnings

       -h, --help
              Show a usage summary and exit

AUTHOR

       Simon Anders

       2010, Simon Anders