Пример #1
0
def loop_show_asymmetry(prefix,
                        grouping_keys=['Gender', 'FDH_23_Handedness_Prtcpnt'],
                        xaxis_key='Age_At_IMGExam',
                        plots='regressions'):
    """ Loop over all properties to show asymmetry."""
    data = get_all_data()
    data.filter(lambda k, v: 'fuzzy' not in k)  # Remove 'fuzzy'
    data.filter([partial(lambda k, v, p: (k.startswith(p) or
                                          k in grouping_keys or
                                          k == xaxis_key),
                         p=p)
                 for p in prefix])

    # Process & plot the data.
    stats = []
    regressions = []
    group_samples = []
    measure_keys = data.get_twohemi_keys()
    for pi, key in enumerate(sorted(measure_keys)):
        print("Comparing %d (%s)..." % (pi, key))
        gn, ss, rv, gs = compare_group_asymmetry(data.data_dict, xaxis_key=xaxis_key,
                                                 yaxis_key=key, plots=plots,
                                                 grouping_keys=grouping_keys,
                                                 measure_key=key)
        stats.append(ss)
        regressions.append(rv)
        group_samples.append(gs)

    if 'regression_stats' in plots:
        dump_regressions_csv(regressions,
                             group_names=gn,
                             measure_names=measure_keys)

        plot_regressions_scatter(regressions,
                                 group_names=gn, 
                                 measure_names=measure_keys)

    if 'stat_distributions' in plots:
        plot_stat_distributions(stats, group_names=gn)

    plt.show()
Пример #2
0
"""
import sys
from functools import partial

from export import EXPORTED_PING_SPREADSHEET
from ping.apps import PINGSession
from ping.data import PINGData
from research.data import get_all_data


if len(sys.argv) > 1:
    # Someone told us about an existing csv
    csv_file = sys.argv[1]

else:
    # We will build a csv on the fly.
    csv_file = EXPORTED_PING_SPREADSHEET
    filter_fns = [partial(lambda k, v: k.startswith(p), p=p)
                  for p in PINGData.IMAGING_PREFIX]

    data = get_all_data(filter_fns=filter_fns)
    data.export(out_file=csv_file)

    for key in sorted(data.data_dict.keys()):
        print(key)

# Upload the new spreadsheet.
sess = PINGSession()
sess.login()
sess.upload_user_spreadsheet(csv_file)
Пример #3
0
elif len(sys.argv) > 6:
    do_usage(sys.argv, "Too many arguments.")

elif len(sys.argv) < 4:
    do_usage(sys.argv, "Too few keys.")

else:

    prefix, x_key, y_key = sys.argv[1:4]
    prefix = prefix.split(',')
    y_key = y_key.split(',')
    size_key = None if len(sys.argv) < 5 else sys.argv[4].split(',')
    color_key = None if len(sys.argv) < 6 else sys.argv[5].split(',')

    # Get prefix
    prefix_filter_fn = lambda k, v: np.any([k.startswith(p) for p in prefix])

    # Load the data (should group, but ... later.)
    data = get_all_data().filter(prefix_filter_fn)

    size_label = ' Marker size indicates\n %s %s' % (
        compute_scatter_label(size_key, part='key_type').lower(),
         ', '.join([prefix2text(p).lower() for p in prefix]))
    ax = plot_scatter_4D(data, x_key=x_key, y_key=y_key, size_key=size_key, color_key=color_key,
                         size_label=size_label, add_marker_text=False) 
#x_label='Asymmetry Index (mean)', y_label='Asymmetry Index (std)',

    ax.get_figure().suptitle(', '.join([prefix2text(p) for p in prefix]), fontsize=24)
    plt.show()