Пример #1
0
def scan_to_table(input_table, genome, data_dir, scoring, pwmfile=None):
    threshold = check_threshold(data_dir, genome, scoring)

    config = MotifConfig()

    if pwmfile is None:
        pwmfile = config.get_default_params().get("motif_db", None)
        if pwmfile is not None:
            pwmfile = os.path.join(config.get_motif_dir(), pwmfile)

    if pwmfile is None:
        raise ValueError("no pwmfile given and no default database specified")

    df = pd.read_table(input_table, index_col=0)
    regions = list(df.index)
    s = Scanner()
    s.set_motifs(pwmfile)
    s.set_genome(genome)

    scores = []
    if scoring == "count":
        for row in s.count(regions, cutoff=threshold):
            scores.append(row)
    else:
        for row in s.best_score(regions):
            scores.append(row)

    motif_names = [m.id for m in read_motifs(open(pwmfile))]
    return pd.DataFrame(scores, index=df.index, columns=motif_names)
Пример #2
0
def scan_to_table(input_table, genome, data_dir, scoring, pwmfile=None):
    threshold = check_threshold(data_dir, genome, scoring)
    
    config = MotifConfig()
    
    if pwmfile is None:
        pwmfile = config.get_default_params().get("motif_db", None)
        if pwmfile is not None:
            pwmfile = os.path.join(config.get_motif_dir(), pwmfile)

    if pwmfile is None:
        raise ValueError("no pwmfile given and no default database specified")

    df = pd.read_table(input_table, index_col=0)
    regions = list(df.index)
    s = Scanner()
    s.set_motifs(pwmfile)
    s.set_genome(genome)

    scores = []
    if scoring == "count":
        for row in s.count(regions, cutoff=threshold):
            scores.append(row)
    else:
        for row in s.best_score(regions):
            scores.append(row)
   
    motif_names = [m.id for m in read_motifs(open(pwmfile))]
    return pd.DataFrame(scores, index=df.index, columns=motif_names)
Пример #3
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def command_scan(inputfile, pwmfile, nreport=1, fpr=0.01, cutoff=None, 
        bed=False, scan_rc=True, table=False, score_table=False, moods=False, 
        pvalue=None, bgfile=None, genome=None, ncpus=None, normalize=False):
    motifs = read_motifs(pwmfile)
    
    fa = as_fasta(inputfile, genome)
    
    # initialize scanner
    s = Scanner(ncpus=ncpus)
    s.set_motifs(pwmfile)
    
    if genome:
        s.set_genome(genome=genome)

    if genome or bgfile:
        s.set_background(genome=genome, fname=bgfile, length=fa.median_length())

    if not score_table:
        s.set_threshold(fpr=fpr, threshold=cutoff)
    
    if table:
        it = scan_table(s, inputfile, fa, motifs, cutoff, bgfile, nreport, scan_rc, pvalue, moods)
    elif score_table:
        it = scan_score_table(s, fa, motifs, scan_rc, normalize=normalize) 
    else:
        it = scan_normal(s, inputfile, fa, motifs, cutoff, bgfile, nreport, scan_rc, pvalue, moods, bed, normalize=normalize)
    
    for row in it:
        yield row
Пример #4
0
    def get_PWMScore(self, fin_regions_fa):
        """ Scan motif in every peak.

        Arguments:
            fin_regions_fa {[type]} -- [input fasta file]

        Returns:
            [type] -- [pfmscorefile]
        """
        pfmscorefile = NamedTemporaryFile(mode="w", dir=mytmpdir(), delete=False)
        seqs = [s.split(" ")[0] for s in as_fasta(fin_regions_fa, genome=self.genome).ids]

        s = Scanner(ncpus=self.ncore)
        s.set_motifs(self.pfmfile)
        s.set_threshold(threshold=0.0)
        s.set_genome(self.genome)

        with open(self.pfmfile) as f:
            motifs = read_motifs(f)

        chunksize = 10000
        # Run 10k peaks one time.

        with tqdm(total=len(seqs)) as pbar:
            for chunk in range(0, len(seqs), chunksize):
                chunk_seqs = seqs[chunk : chunk + chunksize]
                # print(chunk, "-", chunk + chunksize, "enhancers")
                pfm_score = []
                it = s.best_score(chunk_seqs, zscore=True, gc=True)
                # We are using GC-normalization for motif scan because many sequence is GC-enriched.
                # GimmeMotif develop branch already include GC-normalization option now.
                for seq, scores in zip(chunk_seqs, it):
                    for motif, score in zip(motifs, scores):
                        pfm_score.append([motif.id, seq, score])
                    pbar.update(1)
                pfm_score = pd.DataFrame(pfm_score, columns=["motif", "enhancer", "zscore"])
                pfm_score = pfm_score.set_index("motif")

                # print("\tCombine")
                pfm_score["zscoreRank"] = minmax_scale(rankdata(pfm_score["zscore"]))
                # When we built model, rank and minmax normalization was used.
                cols = ["enhancer", "zscore", "zscoreRank"]
                write_header = False
                if chunk == 0:
                    write_header = True
                pfm_score[cols].to_csv(pfmscorefile, sep="\t", header=write_header)
                # pbar.update(chunk + chunksize)

        return pfmscorefile.name
Пример #5
0
def scan_to_table(input_table,
                  genome,
                  data_dir,
                  scoring,
                  pwmfile=None,
                  ncpus=None):
    config = MotifConfig()

    if pwmfile is None:
        pwmfile = config.get_default_params().get("motif_db", None)
        if pwmfile is not None:
            pwmfile = os.path.join(config.get_motif_dir(), pwmfile)

    if pwmfile is None:
        raise ValueError("no pwmfile given and no default database specified")

    logger.info("reading table")
    if input_table.endswith("feather"):
        df = pd.read_feather(input_table)
        idx = df.iloc[:, 0].values
    else:
        df = pd.read_table(input_table, index_col=0, comment="#")
        idx = df.index

    regions = list(idx)
    s = Scanner(ncpus=ncpus)
    s.set_motifs(pwmfile)
    s.set_genome(genome)
    nregions = len(regions)

    scores = []
    if scoring == "count":
        logger.info("setting threshold")
        s.set_threshold(fpr=FPR, genome=genome)
        logger.info("creating count table")
        for row in s.count(regions):
            scores.append(row)
        logger.info("done")
    else:
        s.set_threshold(threshold=0.0)
        logger.info("creating score table")
        for row in s.best_score(regions):
            scores.append(row)
        logger.info("done")

    motif_names = [m.id for m in read_motifs(open(pwmfile))]
    logger.info("creating dataframe")
    return pd.DataFrame(scores, index=idx, columns=motif_names)
Пример #6
0
def moap(
    inputfile,
    method="hypergeom",
    scoring=None,
    outfile=None,
    motiffile=None,
    pfmfile=None,
    genome=None,
    fpr=0.01,
    ncpus=None,
    subsample=None,
    zscore=True,
    gc=True,
):
    """Run a single motif activity prediction algorithm.

    Parameters
    ----------
    inputfile : str
        :1File with regions (chr:start-end) in first column and either cluster
        name in second column or a table with values.

    method : str, optional
        Motif activity method to use. Any of 'hypergeom', 'lasso',
        'lightningclassification', 'lightningregressor', 'bayesianridge',
        'rf', 'xgboost'. Default is 'hypergeom'.

    scoring:  str, optional
        Either 'score' or 'count'

    outfile : str, optional
        Name of outputfile to save the fitted activity values.

    motiffile : str, optional
        Table with motif scan results. First column should be exactly the same
        regions as in the inputfile.

    pfmfile : str, optional
        File with motifs in pwm format. Required when motiffile is not
        supplied.

    genome : str, optional
        Genome name, as indexed by gimme. Required when motiffile is not
        supplied

    fpr : float, optional
        FPR for motif scanning

    ncpus : int, optional
        Number of threads to use. Default is the number specified in the config.

    zscore : bool, optional
        Use z-score normalized motif scores.

    gc : bool optional
        Use GC% bins for z-score.

    Returns
    -------
    pandas DataFrame with motif activity
    """

    if scoring and scoring not in ["score", "count"]:
        raise ValueError("valid values are 'score' and 'count'")

    if inputfile.endswith("feather"):
        df = pd.read_feather(inputfile)
        df = df.set_index(df.columns[0])
    else:
        # read data
        df = pd.read_table(inputfile, index_col=0, comment="#")

    clf = Moap.create(method, ncpus=ncpus)

    if clf.ptype == "classification":
        if df.shape[1] != 1:
            raise ValueError("1 column expected for {}".format(method))
    else:
        if np.dtype("object") in set(df.dtypes):
            raise ValueError("columns should all be numeric for {}".format(method))

    if motiffile is None:
        if genome is None:
            raise ValueError("need a genome")

        pfmfile = pfmfile_location(pfmfile)
        try:
            motifs = read_motifs(pfmfile)
        except Exception:
            sys.stderr.write("can't read motifs from {}".format(pfmfile))
            raise

        # initialize scanner
        s = Scanner(ncpus=ncpus)
        s.set_motifs(pfmfile)
        s.set_genome(genome)
        s.set_background(genome=genome)

        # scan for motifs
        motif_names = [m.id for m in read_motifs(pfmfile)]
        scores = []
        if method == "classic" or scoring == "count":
            logger.info("motif scanning (scores)")
            scores = scan_to_table(
                inputfile,
                genome,
                "count",
                pfmfile=pfmfile,
                ncpus=ncpus,
                zscore=zscore,
                gc=gc,
            )
        else:
            logger.info("motif scanning (scores)")
            scores = scan_to_table(
                inputfile,
                genome,
                "score",
                pfmfile=pfmfile,
                ncpus=ncpus,
                zscore=zscore,
                gc=gc,
            )
        motifs = pd.DataFrame(scores, index=df.index, columns=motif_names)

    elif isinstance(motiffile, pd.DataFrame):
        motifs = motiffile
    else:
        motifs = pd.read_table(motiffile, index_col=0, comment="#")

    if outfile and os.path.exists(outfile):
        out = pd.read_table(outfile, index_col=0, comment="#")
        ncols = df.shape[1]
        if ncols == 1:
            ncols = len(df.iloc[:, 0].unique())

        if out.shape[0] == motifs.shape[1] and out.shape[1] == ncols:
            logger.warn("%s output already exists... skipping", method)
            return out

    if subsample is not None:
        n = int(subsample * df.shape[0])
        logger.debug("Subsampling %d regions", n)
        df = df.sample(n)

    motifs = motifs.loc[df.index]

    if method == "lightningregressor":
        outdir = os.path.dirname(outfile)
        tmpname = os.path.join(outdir, ".lightning.tmp")
        clf.fit(motifs, df, tmpdir=tmpname)
        shutil.rmtree(tmpname)
    else:
        clf.fit(motifs, df)

    if outfile:
        with open(outfile, "w") as f:
            f.write("# maelstrom - GimmeMotifs version {}\n".format(__version__))
            f.write("# method: {} with motif {}\n".format(method, scoring))
            if genome:
                f.write("# genome: {}\n".format(genome))
            if isinstance(motiffile, str):
                f.write("# motif table: {}\n".format(motiffile))
            f.write("# {}\n".format(clf.act_description))

        with open(outfile, "a") as f:
            clf.act_.to_csv(f, sep="\t")

    return clf.act_
Пример #7
0
def scan_to_table(
    input_table, genome, scoring, pfmfile=None, ncpus=None, zscore=True, gc=True
):
    """Scan regions in input table with motifs.

    Parameters
    ----------
    input_table : str
        Filename of input table. Can be either a text-separated tab file or a
        feather file.

    genome : str
        Genome name. Can be either the name of a FASTA-formatted file or a
        genomepy genome name.

    scoring : str
        "count" or "score"

    pfmfile : str, optional
        Specify a PFM file for scanning.

    ncpus : int, optional
        If defined this specifies the number of cores to use.

    Returns
    -------
    table : pandas.DataFrame
        DataFrame with motif ids as column names and regions as index. Values
        are either counts or scores depending on the 'scoring' parameter.s
    """
    config = MotifConfig()

    if pfmfile is None:
        pfmfile = config.get_default_params().get("motif_db", None)
        if pfmfile is not None:
            pfmfile = os.path.join(config.get_motif_dir(), pfmfile)

    if pfmfile is None:
        raise ValueError("no pfmfile given and no default database specified")

    logger.info("reading table")
    if input_table.endswith("feather"):
        df = pd.read_feather(input_table)
        idx = df.iloc[:, 0].values
    else:
        df = pd.read_table(input_table, index_col=0, comment="#")
        idx = df.index

    regions = list(idx)
    if len(regions) >= 1000:
        check_regions = np.random.choice(regions, size=1000, replace=False)
    else:
        check_regions = regions

    size = int(
        np.median([len(seq) for seq in as_fasta(check_regions, genome=genome).seqs])
    )
    s = Scanner(ncpus=ncpus)
    s.set_motifs(pfmfile)
    s.set_genome(genome)
    s.set_background(genome=genome, gc=gc, size=size)

    scores = []
    if scoring == "count":
        logger.info("setting threshold")
        s.set_threshold(fpr=FPR)
        logger.info("creating count table")
        for row in s.count(regions):
            scores.append(row)
        logger.info("done")
    else:
        s.set_threshold(threshold=0.0)
        msg = "creating score table"
        if zscore:
            msg += " (z-score"
            if gc:
                msg += ", GC%"
            msg += ")"
        else:
            msg += " (logodds)"
        logger.info(msg)
        for row in s.best_score(regions, zscore=zscore, gc=gc):
            scores.append(row)
        logger.info("done")

    motif_names = [m.id for m in read_motifs(pfmfile)]
    logger.info("creating dataframe")
    return pd.DataFrame(scores, index=idx, columns=motif_names)
Пример #8
0
def moap(inputfile, method="classic", scoring="score", outfile=None, motiffile=None, pwmfile=None, genome=None, cutoff=0.95):
    """ Run a single motif activity prediction algorithm.
    
    Parameters
    ----------
    
    inputfile : str
        File with regions (chr:start-end) in first column and either cluster 
        name in second column or a table with values.
    
    method : str, optional
        Motif activity method to use. Any of 'classic', 'ks', 'lasso', 
        'lightning', 'mara', 'rf'. Default is 'classic'. 
    
    scoring:  str, optional
        Either 'score' or 'count'
    
    outfile : str, optional
        Name of outputfile to save the fitted activity values.
    
    motiffile : str, optional
        Table with motif scan results. First column should be exactly the same
        regions as in the inputfile.
    
    pwmfile : str, optional
        File with motifs in pwm format. Required when motiffile is not 
        supplied.
    
    genome : str, optional
        Genome name, as indexed by gimme. Required when motiffile is not
        supplied
    
    cutoff : float, optional
        Cutoff for motif scanning
    
    Returns
    -------
    
    pandas DataFrame with motif activity
    """

    if scoring not in ['score', 'count']:
        raise ValueError("valid values are 'score' and 'count'")
    
    config = MotifConfig()

    m2f = None
    
    # read data
    df = pd.read_table(inputfile, index_col=0)

    if method in CLUSTER_METHODS:
        if df.shape[1] != 1:
            raise ValueError("1 column expected for {}".format(method))
    else:
        if np.dtype('object') in set(df.dtypes):
            raise ValueError(
                    "columns should all be numeric for {}".format(method))
        if method not in VALUE_METHODS:
            raise ValueError("method {} not valid".format(method))

    if motiffile is None:
        if genome is None:
            raise ValueError("need a genome")
        # check pwmfile
        if pwmfile is None:
            pwmfile = config.get_default_params().get("motif_db", None)
            if pwmfile is not None:
                pwmfile = os.path.join(config.get_motif_dir(), pwmfile)
        
        if pwmfile is None:
            raise ValueError("no pwmfile given and no default database specified")

        if not os.path.exists(pwmfile):
            raise ValueError("{} does not exist".format(pwmfile))

        try:
            motifs = read_motifs(open(pwmfile))
        except:
            sys.stderr.write("can't read motifs from {}".format(pwmfile))
            raise

        base = os.path.splitext(pwmfile)[0]
        map_file = base + ".motif2factors.txt"
        if os.path.exists(map_file):
            m2f = pd.read_table(map_file, index_col=0)

        # initialize scanner
        s = Scanner()
        sys.stderr.write(pwmfile + "\n")
        s.set_motifs(pwmfile)
        s.set_genome(genome)

        # scan for motifs
        sys.stderr.write("scanning for motifs\n")
        motif_names = [m.id for m in read_motifs(open(pwmfile))]
        scores = []
        if method == 'classic' or scoring == "count":
            for row in s.count(list(df.index), cutoff=cutoff):
                scores.append(row)
        else:
            for row in s.best_score(list(df.index)):
                scores.append(row)

        motifs = pd.DataFrame(scores, index=df.index, columns=motif_names)
    else:
        motifs = pd.read_table(motiffile, index_col=0)   

    motifs = motifs.loc[df.index]
    
    clf = None
    if method == "ks":
        clf = KSMoap()
    if method == "mwu":
        clf = MWMoap()
    if method == "rf":
        clf = RFMoap()
    if method == "lasso":
        clf = LassoMoap()
    if method == "lightning":
        clf = LightningMoap()
    if method == "mara":
        clf = MaraMoap()
    if method == "more":
        clf = MoreMoap()
    if method == "classic":
        clf = ClassicMoap()

    clf.fit(motifs, df)
    
    if outfile:
        with open(outfile, "w") as f:
            f.write("# maelstrom - GimmeMotifs version {}\n".format(GM_VERSION))
            f.write("# method: {} with motif {}\n".format(method, scoring))
            if genome:
                f.write("# genome: {}\n".format(genome))
            if motiffile:
                f.write("# motif table: {}\n".format(motiffile))
            f.write("# {}\n".format(clf.act_description))
        
        with open(outfile, "a") as f:
            clf.act_.to_csv(f, sep="\t")

    return clf.act_
Пример #9
0
def calc_stats_iterator(
    fg_file=None,
    bg_file=None,
    fg_table=None,
    bg_table=None,
    motifs=None,
    stats=None,
    genome=None,
    zscore=True,
    gc=True,
    ncpus=None,
):
    """Calculate motif enrichment metrics.

    Parameters
    ----------
    fg_file : str, optional
        Filename of a FASTA, BED or region file with positive sequences.

    bg_file : str, optional
        Filename of a FASTA, BED or region file with negative sequences.

    fg_table : str, optional
        Filename of a table with motif scan results of positive sequences.

    bg_table : str, optional
        Filename of a table with motif scan results of negative sequences.

    motifs : str, list or Motif instance, optional
        A file with motifs in pfm format, a list of Motif instances or a
        single Motif instance. If motifs is `None`, the default motif
        database is used.

    genome : str, optional
        Genome or index directory in case of BED/regions.

    stats : list, optional
        Names of metrics to calculate. See gimmemotifs.rocmetrics.__all__
        for available metrics.

    ncpus : int, optional
        Number of cores to use.

    Returns
    -------
    result : dict
        Dictionary with results where keys are motif ids and the values are
        dictionary with metric name and value pairs.
    """
    if not stats:
        stats = rocmetrics.__all__

    if fg_table is None:
        if fg_file is None:
            raise ValueError("Need either fg_table or fg_file argument")
    elif fg_file is not None:
        raise ValueError("Need either fg_table or fg_file argument, not both")

    if bg_table is None:
        if bg_file is None:
            raise ValueError("Need either bg_table or bg_file argument")
    elif bg_file is not None:
        raise ValueError("Need either bg_table or bg_file argument, not both")

    if fg_table is not None or bg_table is not None:
        remove_stats = []
        for s in stats:
            func = getattr(rocmetrics, s)
            if func.input_type == "pos":
                remove_stats.append(s)
        if len(remove_stats) != 0:
            logger.warn(
                "Cannot calculate stats that require position from table of motif scores."
            )
            logger.warn(f"Skipping the following statistics: {', '.join(remove_stats)}")
            stats = [s for s in stats if s not in remove_stats]

    if isinstance(motifs, Motif):
        all_motifs = [motifs]
    else:
        if type([]) == type(motifs):
            all_motifs = motifs
        else:
            motifs = pfmfile_location(motifs)
            all_motifs = read_motifs(motifs, fmt="pwm")
    if fg_table is not None or bg_table is not None:
        filtered_motifs = pd.read_csv(
            fg_table, sep="\t", index_col=0, nrows=1, comment="#"
        ).columns
        filtered_motifs = filtered_motifs.intersection(
            pd.read_csv(bg_table, sep="\t", index_col=0, nrows=1, comment="#").columns
        )
        all_motifs = [m for m in all_motifs if m.id in filtered_motifs]

    if ncpus is None:
        ncpus = int(MotifConfig().get_default_params()["ncpus"])

    if fg_file is not None or bg_file is not None:
        if zscore or gc:
            # Precalculate mean and stddev for z-score calculation
            s = Scanner(ncpus=ncpus)
            s.set_motifs(all_motifs)
            s.set_genome(genome)
            s.set_meanstd(gc=gc)

    chunksize = 240
    for i in range(0, len(all_motifs), chunksize):
        result = {}
        logger.debug(
            "chunk %s of %s", (i / chunksize) + 1, len(all_motifs) // chunksize + 1
        )
        motifs = all_motifs[i : i + chunksize]

        if fg_table is None:
            fg_total = scan_to_best_match(
                fg_file, motifs, ncpus=ncpus, genome=genome, zscore=zscore, gc=gc
            )
        else:
            fg_total = pd.read_csv(
                fg_table, sep="\t", usecols=[m.id for m in motifs], comment="#"
            ).to_dict(orient="list")
            for m in fg_total:
                fg_total[m] = [(x, None) for x in fg_total[m]]

        if bg_table is None:
            bg_total = scan_to_best_match(
                bg_file, motifs, ncpus=ncpus, genome=genome, zscore=zscore, gc=gc
            )
        else:
            bg_total = pd.read_csv(
                bg_table, sep="\t", usecols=[m.id for m in motifs], comment="#"
            ).to_dict(orient="list")
            for m in bg_total:
                bg_total[m] = [(x, None) for x in bg_total[m]]

        logger.debug("calculating statistics")

        if ncpus == 1:
            it = _single_stats(motifs, stats, fg_total, bg_total)
        else:
            it = _mp_stats(motifs, stats, fg_total, bg_total, ncpus)

        for motif_id, s, ret in it:
            if motif_id not in result:
                result[motif_id] = {}
            result[motif_id][s] = ret
        yield result
Пример #10
0
def scan_to_table(input_table, genome, scoring, pwmfile=None, ncpus=None):
    """Scan regions in input table with motifs.

    Parameters
    ----------
    input_table : str
        Filename of input table. Can be either a text-separated tab file or a
        feather file.
    
    genome : str
        Genome name. Can be either the name of a FASTA-formatted file or a 
        genomepy genome name.
    
    scoring : str
        "count" or "score"
    
    pwmfile : str, optional
        Specify a PFM file for scanning.
    
    ncpus : int, optional
        If defined this specifies the number of cores to use.
    
    Returns
    -------
    table : pandas.DataFrame
        DataFrame with motif ids as column names and regions as index. Values
        are either counts or scores depending on the 'scoring' parameter.s
    """
    config = MotifConfig()
    
    if pwmfile is None:
        pwmfile = config.get_default_params().get("motif_db", None)
        if pwmfile is not None:
            pwmfile = os.path.join(config.get_motif_dir(), pwmfile)

    if pwmfile is None:
        raise ValueError("no pwmfile given and no default database specified")

    logger.info("reading table")
    if input_table.endswith("feather"):
        df = pd.read_feather(input_table)
        idx = df.iloc[:,0].values
    else:
        df = pd.read_table(input_table, index_col=0, comment="#")
        idx = df.index
    
    regions = list(idx)
    s = Scanner(ncpus=ncpus)
    s.set_motifs(pwmfile)
    s.set_genome(genome)
    s.set_background(genome=genome)
    
    nregions = len(regions)

    scores = []
    if scoring == "count":
        logger.info("setting threshold")
        s.set_threshold(fpr=FPR)
        logger.info("creating count table")
        for row in s.count(regions):
            scores.append(row)
        logger.info("done")
    else:
        s.set_threshold(threshold=0.0)
        logger.info("creating score table")
        for row in s.best_score(regions, normalize=True):
            scores.append(row)
        logger.info("done")
   
    motif_names = [m.id for m in read_motifs(pwmfile)]
    logger.info("creating dataframe")
    return pd.DataFrame(scores, index=idx, columns=motif_names)
Пример #11
0
def moap(inputfile,
         method="hypergeom",
         scoring=None,
         outfile=None,
         motiffile=None,
         pwmfile=None,
         genome=None,
         fpr=0.01,
         ncpus=None):
    """Run a single motif activity prediction algorithm.
    
    Parameters
    ----------
    inputfile : str
        :1File with regions (chr:start-end) in first column and either cluster 
        name in second column or a table with values.
    
    method : str, optional
        Motif activity method to use. Any of 'hypergeom', 'lasso', 
        'lightningclassification', 'lightningregressor', 'bayesianridge', 
        'rf', 'xgboost'. Default is 'hypergeom'. 
    
    scoring:  str, optional
        Either 'score' or 'count'
    
    outfile : str, optional
        Name of outputfile to save the fitted activity values.
    
    motiffile : str, optional
        Table with motif scan results. First column should be exactly the same
        regions as in the inputfile.
    
    pwmfile : str, optional
        File with motifs in pwm format. Required when motiffile is not 
        supplied.
    
    genome : str, optional
        Genome name, as indexed by gimme. Required when motiffile is not
        supplied
    
    fpr : float, optional
        FPR for motif scanning
    
    ncpus : int, optional
        Number of threads to use. Default is the number specified in the config.
    
    Returns
    -------
    pandas DataFrame with motif activity
    """

    if scoring and scoring not in ['score', 'count']:
        raise ValueError("valid values are 'score' and 'count'")

    config = MotifConfig()

    m2f = None

    if inputfile.endswith("feather"):
        df = pd.read_feather(inputfile)
        df = df.set_index(df.columns[0])
    else:
        # read data
        df = pd.read_table(inputfile, index_col=0, comment="#")

    clf = Moap.create(method, ncpus=ncpus)

    if clf.ptype == "classification":
        if df.shape[1] != 1:
            raise ValueError("1 column expected for {}".format(method))
    else:
        if np.dtype('object') in set(df.dtypes):
            raise ValueError(
                "columns should all be numeric for {}".format(method))

    if motiffile is None:
        if genome is None:
            raise ValueError("need a genome")
        # check pwmfile
        if pwmfile is None:
            pwmfile = config.get_default_params().get("motif_db", None)
            if pwmfile is not None:
                pwmfile = os.path.join(config.get_motif_dir(), pwmfile)

        if pwmfile is None:
            raise ValueError(
                "no pwmfile given and no default database specified")

        if not os.path.exists(pwmfile):
            raise ValueError("{} does not exist".format(pwmfile))

        try:
            motifs = read_motifs(open(pwmfile))
        except:
            sys.stderr.write("can't read motifs from {}".format(pwmfile))
            raise

        base = os.path.splitext(pwmfile)[0]
        map_file = base + ".motif2factors.txt"
        if os.path.exists(map_file):
            m2f = pd.read_table(map_file, index_col=0, comment="#")

        # initialize scanner
        s = Scanner(ncpus=ncpus)
        sys.stderr.write(pwmfile + "\n")
        s.set_motifs(pwmfile)
        s.set_genome(genome)

        # scan for motifs
        sys.stderr.write("scanning for motifs\n")
        motif_names = [m.id for m in read_motifs(open(pwmfile))]
        scores = []
        if method == 'classic' or scoring == "count":
            s.set_threshold(fpr=fpr)
            for row in s.count(list(df.index)):
                scores.append(row)
        else:
            for row in s.best_score(list(df.index)):
                scores.append(row)

        motifs = pd.DataFrame(scores, index=df.index, columns=motif_names)
    else:
        motifs = pd.read_table(motiffile, index_col=0, comment="#")

    if outfile and os.path.exists(outfile):
        out = pd.read_table(outfile, index_col=0, comment="#")
        ncols = df.shape[1]
        if ncols == 1:
            ncols = len(df.iloc[:, 0].unique())

        if out.shape[0] == motifs.shape[1] and out.shape[1] == ncols:
            logger.warn("%s output already exists... skipping", method)
            return out

    motifs = motifs.loc[df.index]

    if method == "lightningregressor":
        outdir = os.path.dirname(outfile)
        tmpname = os.path.join(outdir, ".lightning.tmp")
        clf.fit(motifs, df, tmpdir=tmpname)
        shutil.rmtree(tmpname)
    else:
        clf.fit(motifs, df)

    if outfile:
        with open(outfile, "w") as f:
            f.write(
                "# maelstrom - GimmeMotifs version {}\n".format(GM_VERSION))
            f.write("# method: {} with motif {}\n".format(method, scoring))
            if genome:
                f.write("# genome: {}\n".format(genome))
            if motiffile:
                f.write("# motif table: {}\n".format(motiffile))
            f.write("# {}\n".format(clf.act_description))

        with open(outfile, "a") as f:
            clf.act_.to_csv(f, sep="\t")

    return clf.act_
Пример #12
0
def moap(inputfile,
         method="classic",
         scoring="score",
         outfile=None,
         motiffile=None,
         pwmfile=None,
         genome=None,
         cutoff=0.95):
    """ Run a single motif activity prediction algorithm.
    
    Parameters
    ----------
    
    inputfile : str
        File with regions (chr:start-end) in first column and either cluster 
        name in second column or a table with values.
    
    method : str, optional
        Motif activity method to use. Any of 'classic', 'ks', 'lasso', 
        'lightning', 'mara', 'rf'. Default is 'classic'. 
    
    scoring:  str, optional
        Either 'score' or 'count'
    
    outfile : str, optional
        Name of outputfile to save the fitted activity values.
    
    motiffile : str, optional
        Table with motif scan results. First column should be exactly the same
        regions as in the inputfile.
    
    pwmfile : str, optional
        File with motifs in pwm format. Required when motiffile is not 
        supplied.
    
    genome : str, optional
        Genome name, as indexed by gimme. Required when motiffile is not
        supplied
    
    cutoff : float, optional
        Cutoff for motif scanning
    
    Returns
    -------
    
    pandas DataFrame with motif activity
    """

    if scoring not in ['score', 'count']:
        raise ValueError("valid values are 'score' and 'count'")

    config = MotifConfig()

    m2f = None

    # read data
    df = pd.read_table(inputfile, index_col=0)

    if method in CLUSTER_METHODS:
        if df.shape[1] != 1:
            raise ValueError("1 column expected for {}".format(method))
    else:
        if np.dtype('object') in set(df.dtypes):
            raise ValueError(
                "columns should all be numeric for {}".format(method))
        if method not in VALUE_METHODS:
            raise ValueError("method {} not valid".format(method))

    if motiffile is None:
        if genome is None:
            raise ValueError("need a genome")
        # check pwmfile
        if pwmfile is None:
            pwmfile = config.get_default_params().get("motif_db", None)
            if pwmfile is not None:
                pwmfile = os.path.join(config.get_motif_dir(), pwmfile)

        if pwmfile is None:
            raise ValueError(
                "no pwmfile given and no default database specified")

        if not os.path.exists(pwmfile):
            raise ValueError("{} does not exist".format(pwmfile))

        try:
            motifs = read_motifs(open(pwmfile))
        except:
            sys.stderr.write("can't read motifs from {}".format(pwmfile))
            raise

        base = os.path.splitext(pwmfile)[0]
        map_file = base + ".motif2factors.txt"
        if os.path.exists(map_file):
            m2f = pd.read_table(map_file, index_col=0)

        # initialize scanner
        s = Scanner()
        sys.stderr.write(pwmfile + "\n")
        s.set_motifs(pwmfile)
        s.set_genome(genome)

        # scan for motifs
        sys.stderr.write("scanning for motifs\n")
        motif_names = [m.id for m in read_motifs(open(pwmfile))]
        scores = []
        if method == 'classic' or scoring == "count":
            for row in s.count(list(df.index), cutoff=cutoff):
                scores.append(row)
        else:
            for row in s.best_score(list(df.index)):
                scores.append(row)

        motifs = pd.DataFrame(scores, index=df.index, columns=motif_names)
    else:
        motifs = pd.read_table(motiffile, index_col=0)

    clf = None
    if method == "ks":
        clf = KSMoap()
    if method == "mwu":
        clf = MWMoap()
    if method == "rf":
        clf = RFMoap()
    if method == "lasso":
        clf = LassoMoap()
    if method == "lightning":
        clf = LightningMoap()
    if method == "mara":
        clf = MaraMoap()
    if method == "more":
        clf = MoreMoap()
    if method == "classic":
        clf = ClassicMoap()

    clf.fit(motifs, df)

    if outfile:
        with open(outfile, "w") as f:
            f.write(
                "# maelstrom - GimmeMotifs version {}\n".format(GM_VERSION))
            f.write("# method: {} with motif {}\n".format(method, scoring))
            if genome:
                f.write("# genome: {}\n".format(genome))
            if motiffile:
                f.write("# motif table: {}\n".format(motiffile))
            f.write("# {}\n".format(clf.act_description))

        with open(outfile, "a") as f:
            clf.act_.to_csv(f, sep="\t")

    return clf.act_