コード例 #1
0
def to_json_file(conn, result_dir, output_dir):
    ratios = read_ratios(result_dir)
    cursor = conn.cursor()
    cursor.execute("select max(iteration) from row_members")
    iteration = cursor.fetchone()[0]
    cursor.execute("select distinct cluster from row_members where iteration=?", [iteration])
    clusters = [row[0] for row in cursor.fetchall()]
    result = {}
    for cluster in clusters:
        cursor.execute(
            "select name from row_names rn join row_members rm on rn.order_num=rm.order_num where cluster=? and iteration=?",
            [cluster, iteration],
        )
        genes = [row[0] for row in cursor.fetchall()]
        cursor.execute(
            "select name from column_names cn join column_members cm on cn.order_num=cm.order_num where cluster=? and iteration=?",
            [cluster, iteration],
        )
        cluster_conds = [row[0] for row in cursor.fetchall()]
        cluster_data = ratios.loc[genes, cluster_conds]
        values = [
            {"gene": gene, "condition": cond, "value": cluster_data.values[rindex, cindex]}
            for rindex, gene in enumerate(genes)
            for cindex, cond in enumerate(cluster_conds)
        ]
        result[str(cluster)] = values

    buffer = json.dumps(result)
    with open(os.path.join(output_dir, "cluster_expressions.json"), "w") as out:
        out.write(buffer)
コード例 #2
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def generate_plots(session, result_dir, output_dir):
    ratios = read_ratios(result_dir)

    iteration = session.query(func.max(cm2db.RowMember.iteration))
    clusters = [r[0] for r in session.query(cm2db.RowMember.cluster).distinct().filter(
        cm2db.RowMember.iteration == iteration)]

    figure = plt.figure(figsize=(6,3))
    for cluster in clusters:
        plt.clf()
        plt.cla()
        genes = [r.row_name.name for r in session.query(cm2db.RowMember).filter(
            and_(cm2db.RowMember.cluster == cluster, cm2db.RowMember.iteration == iteration))]
        cluster_conds = [c.column_name.name for c in session.query(cm2db.ColumnMember).filter(
            and_(cm2db.ColumnMember.cluster == cluster, cm2db.ColumnMember.iteration == iteration))]
        all_conds = [c[0] for c in session.query(cm2db.ColumnName.name).distinct()]
        non_cluster_conds = [cond for cond in all_conds if not cond in set(cluster_conds)]

        cluster_data = ratios.loc[genes, cluster_conds]
        non_cluster_data = ratios.loc[genes, non_cluster_conds]
        min_value = ratios.min()
        max_value = ratios.max()
        for gene in genes:
            values = [normalize_js(val) for val in cluster_data.loc[gene,:].values]
            values += [normalize_js(val) for val in non_cluster_data.loc[gene,:].values]
            plt.plot(values)

        # plot the "in"/"out" separator line
        cut_line = len(cluster_conds)
        plt.plot([cut_line, cut_line], [min_value, max_value], color='red',
                 linestyle='--', linewidth=1)
        plt.savefig(os.path.join(output_dir, "exp-%d" % cluster))
    plt.close(figure)
コード例 #3
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def to_json_file(conn, result_dir, output_dir):
    ratios = read_ratios(result_dir)
    cursor = conn.cursor()
    cursor.execute('select max(iteration) from row_members')
    iteration = cursor.fetchone()[0]
    cursor.execute(
        'select distinct cluster from row_members where iteration=?',
        [iteration])
    clusters = [row[0] for row in cursor.fetchall()]
    result = {}
    for cluster in clusters:
        cursor.execute(
            'select name from row_names rn join row_members rm on rn.order_num=rm.order_num where cluster=? and iteration=?',
            [cluster, iteration])
        genes = [row[0] for row in cursor.fetchall()]
        cursor.execute(
            'select name from column_names cn join column_members cm on cn.order_num=cm.order_num where cluster=? and iteration=?',
            [cluster, iteration])
        cluster_conds = [row[0] for row in cursor.fetchall()]
        cluster_data = ratios.loc[genes, cluster_conds]
        values = [{
            'gene': gene,
            'condition': cond,
            'value': cluster_data.values[rindex, cindex]
        } for rindex, gene in enumerate(genes)
                  for cindex, cond in enumerate(cluster_conds)]
        result[str(cluster)] = values

    buffer = json.dumps(result)
    with open(os.path.join(output_dir, 'cluster_expressions.json'),
              'w') as out:
        out.write(buffer)
コード例 #4
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ファイル: export.py プロジェクト: izzi-13/cmonkey2
def cluster_expressions_to_json_file(session, result_dir, output_dir):
    ratios = read_ratios(result_dir)

    iteration = session.query(func.max(cm2db.RowMember.iteration))
    clusters = [
        r[0] for r in session.query(cm2db.RowMember.cluster).distinct().filter(
            cm2db.RowMember.iteration == iteration)
    ]

    result = {}
    for cluster in clusters:
        genes = [
            r.row_name.name for r in session.query(cm2db.RowMember).filter(
                and_(cm2db.RowMember.cluster == cluster,
                     cm2db.RowMember.iteration == iteration))
        ]
        cluster_conds = [
            c.column_name.name
            for c in session.query(cm2db.ColumnMember).filter(
                and_(cm2db.ColumnMember.cluster == cluster,
                     cm2db.ColumnMember.iteration == iteration))
        ]
        cluster_data = ratios.loc[genes, cluster_conds]
        values = [{
            'gene': gene,
            'condition': cond,
            'value': cluster_data.values[rindex, cindex]
        } for rindex, gene in enumerate(genes)
                  for cindex, cond in enumerate(cluster_conds)]
        result[str(cluster)] = values

    buffer = json.dumps(result)
    with open(os.path.join(output_dir, 'cluster_expressions.json'),
              'w') as out:
        out.write(buffer)
コード例 #5
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def generate_plots(conn, result_dir, output_dir):
    ratios = read_ratios(result_dir)

    cursor = conn.cursor()
    cursor.execute('select max(iteration) from row_members')
    iteration = cursor.fetchone()[0]

    cursor.execute(
        'select distinct cluster from row_members where iteration=?',
        [iteration])
    clusters = [row[0] for row in cursor.fetchall()]
    figure = plt.figure(figsize=(6, 3))
    for cluster in clusters:
        plt.clf()
        plt.cla()
        cursor.execute(
            'select distinct name from row_members rm join row_names rn on rm.order_num=rn.order_num where cluster=? and iteration=?',
            [cluster, iteration])
        genes = [row[0] for row in cursor.fetchall()]

        cursor.execute(
            'select distinct name from column_members cm join column_names cn on cm.order_num=cn.order_num where cluster=? and iteration=?',
            [cluster, iteration])
        cluster_conds = [row[0] for row in cursor.fetchall()]

        cursor.execute('select distinct name from column_names')
        all_conds = [row[0] for row in cursor.fetchall()]
        non_cluster_conds = [
            cond for cond in all_conds if not cond in set(cluster_conds)
        ]

        cluster_data = ratios.loc[genes, cluster_conds]
        non_cluster_data = ratios.loc[genes, non_cluster_conds]
        min_value = ratios.min()
        max_value = ratios.max()
        for gene in genes:
            values = [
                normalize_js(val) for val in cluster_data.loc[gene, :].values
            ]
            values += [
                normalize_js(val)
                for val in non_cluster_data.loc[gene, :].values
            ]
            plt.plot(values)

        # plot the "in"/"out" separator line
        cut_line = len(cluster_conds)
        plt.plot([cut_line, cut_line], [min_value, max_value],
                 color='red',
                 linestyle='--',
                 linewidth=1)
        plt.savefig(os.path.join(output_dir, "exp-%d" % cluster))
    plt.close(figure)
コード例 #6
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def generate_plots(session, result_dir, output_dir):
    ratios = read_ratios(result_dir)

    iteration = session.query(func.max(cm2db.RowMember.iteration))
    clusters = [
        r[0] for r in session.query(cm2db.RowMember.cluster).distinct().filter(
            cm2db.RowMember.iteration == iteration)
    ]

    figure = plt.figure(figsize=(6, 3))
    for cluster in clusters:
        plt.clf()
        plt.cla()
        genes = [
            r.row_name.name for r in session.query(cm2db.RowMember).filter(
                and_(cm2db.RowMember.cluster == cluster,
                     cm2db.RowMember.iteration == iteration))
        ]
        cluster_conds = [
            c.column_name.name
            for c in session.query(cm2db.ColumnMember).filter(
                and_(cm2db.ColumnMember.cluster == cluster,
                     cm2db.ColumnMember.iteration == iteration))
        ]
        all_conds = [
            c[0] for c in session.query(cm2db.ColumnName.name).distinct()
        ]
        non_cluster_conds = [
            cond for cond in all_conds if not cond in set(cluster_conds)
        ]

        cluster_data = ratios.loc[genes, cluster_conds]
        non_cluster_data = ratios.loc[genes, non_cluster_conds]
        min_value = ratios.min()
        max_value = ratios.max()
        for gene in genes:
            values = [
                normalize_js(val) for val in cluster_data.loc[gene, :].values
            ]
            values += [
                normalize_js(val)
                for val in non_cluster_data.loc[gene, :].values
            ]
            plt.plot(values)

        # plot the "in"/"out" separator line
        cut_line = len(cluster_conds)
        plt.plot([cut_line, cut_line], [min_value, max_value],
                 color='red',
                 linestyle='--',
                 linewidth=1)
        plt.savefig(os.path.join(output_dir, "exp-%d" % cluster))
    plt.close(figure)
コード例 #7
0
ファイル: export.py プロジェクト: baliga-lab/cmonkey2
def cluster_expressions_to_json_file(session, result_dir, output_dir):
    ratios = read_ratios(result_dir)

    iteration = session.query(func.max(cm2db.RowMember.iteration))
    clusters = [r[0] for r in session.query(cm2db.RowMember.cluster).distinct().filter(
        cm2db.RowMember.iteration == iteration)]

    result = {}
    for cluster in clusters:
        genes = [r.row_name.name for r in session.query(cm2db.RowMember).filter(
            and_(cm2db.RowMember.cluster == cluster, cm2db.RowMember.iteration == iteration))]
        cluster_conds = [c.column_name.name for c in session.query(cm2db.ColumnMember).filter(
            and_(cm2db.ColumnMember.cluster == cluster, cm2db.ColumnMember.iteration == iteration))]
        cluster_data = ratios.loc[genes, cluster_conds]
        values = [{'gene': gene, 'condition': cond, 'value': cluster_data.values[rindex, cindex]}
                  for rindex, gene in enumerate(genes) for cindex, cond in enumerate(cluster_conds)]
        result[str(cluster)] = values

    buffer = json.dumps(result)
    with open(os.path.join(output_dir, 'cluster_expressions.json'), 'w') as out:
        out.write(buffer)
コード例 #8
0
def generate_plots(conn, result_dir, output_dir):
    ratios = read_ratios(result_dir)

    cursor = conn.cursor()
    cursor.execute('select max(iteration) from row_members')
    iteration = cursor.fetchone()[0]

    cursor.execute('select distinct cluster from row_members where iteration=?', [iteration])
    clusters = [row[0] for row in cursor.fetchall()]
    figure = plt.figure(figsize=(6,3))
    for cluster in clusters:
        plt.clf()
        plt.cla()
        cursor.execute('select distinct name from row_members rm join row_names rn on rm.order_num=rn.order_num where cluster=? and iteration=?', [cluster, iteration])
        genes = [row[0] for row in cursor.fetchall()]

        cursor.execute('select distinct name from column_members cm join column_names cn on cm.order_num=cn.order_num where cluster=? and iteration=?', [cluster, iteration])
        cluster_conds = [row[0] for row in cursor.fetchall()]

        cursor.execute('select distinct name from column_names')
        all_conds = [row[0] for row in cursor.fetchall()]
        non_cluster_conds = [cond for cond in all_conds if not cond in set(cluster_conds)]

        cluster_data = ratios.loc[genes, cluster_conds]
        non_cluster_data = ratios.loc[genes, non_cluster_conds]
        min_value = ratios.min()
        max_value = ratios.max()
        for gene in genes:
            values = [normalize_js(val) for val in cluster_data.loc[gene,:].values]
            values += [normalize_js(val) for val in non_cluster_data.loc[gene,:].values]
            plt.plot(values)

        # plot the "in"/"out" separator line
        cut_line = len(cluster_conds)
        plt.plot([cut_line, cut_line], [min_value, max_value], color='red',
                 linestyle='--', linewidth=1)
        plt.savefig(os.path.join(output_dir, "exp-%d" % cluster))
    plt.close(figure)