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denoise-pyro: Denoise and dereplicate single-end pyrosequencesΒΆ

Docstring:

Usage: qiime dada2 denoise-pyro [OPTIONS]

  This method denoises single-end pyrosequencing sequences, dereplicates them,
  and filters chimeras.

Inputs:
  --i-demultiplexed-seqs ARTIFACT SampleData[SequencesWithQuality]
                          The single-end demultiplexed pyrosequencing
                          sequences (e.g. 454, IonTorrent) to be denoised.
                                                                    [required]
Parameters:
  --p-trunc-len INTEGER   Position at which sequences should be truncated due
                          to decrease in quality. This truncates the 3' end of
                          the of the input sequences, which will be the bases
                          that were sequenced in the last cycles. Reads that
                          are shorter than this value will be discarded. If 0
                          is provided, no truncation or length filtering will
                          be performed                              [required]
  --p-trim-left INTEGER   Position at which sequences should be trimmed due
                          to low quality. This trims the 5' end of the of the
                          input sequences, which will be the bases that were
                          sequenced in the first cycles.          [default: 0]
  --p-max-ee NUMBER       Reads with number of expected errors higher than
                          this value will be discarded.         [default: 2.0]
  --p-trunc-q INTEGER     Reads are truncated at the first instance of a
                          quality score less than or equal to this value. If
                          the resulting read is then shorter than `trunc-len`,
                          it is discarded.                        [default: 2]
  --p-max-len INTEGER     Remove reads prior to trimming or truncation which
                          are longer than this value. If 0 is provided no
                          reads will be removed based on length.  [default: 0]
  --p-pooling-method TEXT Choices('independent', 'pseudo')
                          The method used to pool samples for denoising.
                          "independent": Samples are denoised independently.
                          "pseudo": The pseudo-pooling method is used to
                          approximate pooling of samples. In short, samples
                          are denoised independently once, ASVs detected in at
                          least 2 samples are recorded, and samples are
                          denoised independently a second time, but this time
                          with prior knowledge of the recorded ASVs and thus
                          higher sensitivity to those ASVs.
                                                      [default: 'independent']
  --p-chimera-method TEXT Choices('consensus', 'none', 'pooled')
                          The method used to remove chimeras. "none": No
                          chimera removal is performed. "pooled": All reads
                          are pooled prior to chimera detection. "consensus":
                          Chimeras are detected in samples individually, and
                          sequences found chimeric in a sufficient fraction of
                          samples are removed.          [default: 'consensus']
  --p-min-fold-parent-over-abundance NUMBER
                          The minimum abundance of potential parents of a
                          sequence being tested as chimeric, expressed as a
                          fold-change versus the abundance of the sequence
                          being tested. Values should be greater than or equal
                          to 1 (i.e. parents should be more abundant than the
                          sequence being tested). This parameter has no effect
                          if chimera-method is "none".          [default: 1.0]
  --p-allow-one-off / --p-no-allow-one-off
                          Bimeras that are one-off from exact are also
                          identified if the `allow-one-off` argument is True.
                          If True, a sequence will be identified as bimera if
                          it is one mismatch or indel away from an exact
                          bimera.                             [default: False]
  --p-n-threads NTHREADS  The number of threads to use for multithreaded
                          processing. If 0 is provided, all available cores
                          will be used.                           [default: 1]
  --p-n-reads-learn INTEGER
                          The number of reads to use when training the error
                          model. Smaller numbers will result in a shorter run
                          time but a less reliable error model.
                                                             [default: 250000]
  --p-hashed-feature-ids / --p-no-hashed-feature-ids
                          If true, the feature ids in the resulting table
                          will be presented as hashes of the sequences
                          defining each feature. The hash will always be the
                          same for the same sequence so this allows feature
                          tables to be merged across runs of this method. You
                          should only merge tables if the exact same
                          parameters are used for each run.    [default: True]
  --p-retain-all-samples / --p-no-retain-all-samples
                          If True all samples input to dada2 will be retained
                          in the output of dada2, if false samples with zero
                          total frequency are removed from the table.
                                                               [default: True]
Outputs:
  --o-table ARTIFACT FeatureTable[Frequency]
                          The resulting feature table.              [required]
  --o-representative-sequences ARTIFACT FeatureData[Sequence]
                          The resulting feature sequences. Each feature in
                          the feature table will be represented by exactly one
                          sequence.                                 [required]
  --o-denoising-stats ARTIFACT SampleData[DADA2Stats]
                                                                    [required]
Miscellaneous:
  --output-dir PATH       Output unspecified results to a directory
  --verbose / --quiet     Display verbose output to stdout and/or stderr
                          during execution of this action. Or silence output
                          if execution is successful (silence is golden).
  --example-data PATH     Write example data and exit.
  --citations             Show citations and exit.
  --help                  Show this message and exit.

Import:

from qiime2.plugins.dada2.methods import denoise_pyro

Docstring:

Denoise and dereplicate single-end pyrosequences

This method denoises single-end pyrosequencing sequences, dereplicates
them, and filters chimeras.

Parameters
----------
demultiplexed_seqs : SampleData[SequencesWithQuality]
    The single-end demultiplexed pyrosequencing sequences (e.g. 454,
    IonTorrent) to be denoised.
trunc_len : Int
    Position at which sequences should be truncated due to decrease in
    quality. This truncates the 3' end of the of the input sequences, which
    will be the bases that were sequenced in the last cycles. Reads that
    are shorter than this value will be discarded. If 0 is provided, no
    truncation or length filtering will be performed
trim_left : Int, optional
    Position at which sequences should be trimmed due to low quality. This
    trims the 5' end of the of the input sequences, which will be the bases
    that were sequenced in the first cycles.
max_ee : Float, optional
    Reads with number of expected errors higher than this value will be
    discarded.
trunc_q : Int, optional
    Reads are truncated at the first instance of a quality score less than
    or equal to this value. If the resulting read is then shorter than
    `trunc_len`, it is discarded.
max_len : Int, optional
    Remove reads prior to trimming or truncation which are longer than this
    value. If 0 is provided no reads will be removed based on length.
pooling_method : Str % Choices('independent', 'pseudo'), optional
    The method used to pool samples for denoising. "independent": Samples
    are denoised independently. "pseudo": The pseudo-pooling method is used
    to approximate pooling of samples. In short, samples are denoised
    independently once, ASVs detected in at least 2 samples are recorded,
    and samples are denoised independently a second time, but this time
    with prior knowledge of the recorded ASVs and thus higher sensitivity
    to those ASVs.
chimera_method : Str % Choices('consensus', 'none', 'pooled'), optional
    The method used to remove chimeras. "none": No chimera removal is
    performed. "pooled": All reads are pooled prior to chimera detection.
    "consensus": Chimeras are detected in samples individually, and
    sequences found chimeric in a sufficient fraction of samples are
    removed.
min_fold_parent_over_abundance : Float, optional
    The minimum abundance of potential parents of a sequence being tested
    as chimeric, expressed as a fold-change versus the abundance of the
    sequence being tested. Values should be greater than or equal to 1
    (i.e. parents should be more abundant than the sequence being tested).
    This parameter has no effect if chimera_method is "none".
allow_one_off : Bool, optional
    Bimeras that are one-off from exact are also identified if the
    `allow_one_off` argument is True. If True, a sequence will be
    identified as bimera if it is one mismatch or indel away from an exact
    bimera.
n_threads : Threads, optional
    The number of threads to use for multithreaded processing. If 0 is
    provided, all available cores will be used.
n_reads_learn : Int, optional
    The number of reads to use when training the error model. Smaller
    numbers will result in a shorter run time but a less reliable error
    model.
hashed_feature_ids : Bool, optional
    If true, the feature ids in the resulting table will be presented as
    hashes of the sequences defining each feature. The hash will always be
    the same for the same sequence so this allows feature tables to be
    merged across runs of this method. You should only merge tables if the
    exact same parameters are used for each run.
retain_all_samples : Bool, optional
    If True all samples input to dada2 will be retained in the output of
    dada2, if false samples with zero total frequency are removed from the
    table.

Returns
-------
table : FeatureTable[Frequency]
    The resulting feature table.
representative_sequences : FeatureData[Sequence]
    The resulting feature sequences. Each feature in the feature table will
    be represented by exactly one sequence.
denoising_stats : SampleData[DADA2Stats]