Exemple #1
0
def individual_analysis(bids_path, ID):

    raw_intensity = read_raw_bids(bids_path=bids_path, verbose=False)

    # Convert signal to haemoglobin and resample
    raw_od = optical_density(raw_intensity)
    raw_haemo = beer_lambert_law(raw_od)
    raw_haemo.resample(0.3)

    # Cut out just the short channels for creating a GLM repressor
    sht_chans = get_short_channels(raw_haemo)
    raw_haemo = get_long_channels(raw_haemo)

    # Create a design matrix
    design_matrix = make_first_level_design_matrix(raw_haemo, stim_dur=5.0)

    # Append short channels mean to design matrix
    design_matrix["ShortHbO"] = np.mean(sht_chans.copy().pick(picks="hbo").get_data(), axis=0)
    design_matrix["ShortHbR"] = np.mean(sht_chans.copy().pick(picks="hbr").get_data(), axis=0)

    # Run GLM
    glm_est = run_GLM(raw_haemo, design_matrix)

    # Define channels in each region of interest
    # List the channel pairs manually
    left = [[4, 3], [1, 3], [3, 3], [1, 2], [2, 3], [1, 1]]
    right = [[6, 7], [5, 7], [7, 7], [5, 6], [6, 7], [5, 5]]
    # Then generate the correct indices for each pair
    groups = dict(
        Left_Hemisphere=picks_pair_to_idx(raw_haemo, left, on_missing='ignore'),
        Right_Hemisphere=picks_pair_to_idx(raw_haemo, right, on_missing='ignore'))

    # Extract channel metrics
    cha = glm_to_tidy(raw_haemo, glm_est, design_matrix)
    cha["ID"] = ID  # Add the participant ID to the dataframe

    # Compute region of interest results from channel data
    roi = pd.DataFrame()
    for idx, col in enumerate(design_matrix.columns):
        roi = roi.append(glm_region_of_interest(glm_est, groups, idx, col))
    roi["ID"] = ID  # Add the participant ID to the dataframe

    # Contrast left vs right tapping
    contrast_matrix = np.eye(design_matrix.shape[1])
    basic_conts = dict([(column, contrast_matrix[i])
                        for i, column in enumerate(design_matrix.columns)])
    contrast_LvR = basic_conts['Tapping/Left'] - basic_conts['Tapping/Right']
    contrast = compute_contrast(glm_est, contrast_LvR)
    con = glm_to_tidy(raw_haemo, contrast, design_matrix)
    con["ID"] = ID  # Add the participant ID to the dataframe

    # Convert to uM for nicer plotting below.
    cha["theta"] = [t * 1.e6 for t in cha["theta"]]
    roi["theta"] = [t * 1.e6 for t in roi["theta"]]
    con["effect"] = [t * 1.e6 for t in con["effect"]]

    return raw_haemo, roi, cha, con
Exemple #2
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def test_GLM_system_test():
    fnirs_data_folder = mne.datasets.fnirs_motor.data_path()
    fnirs_raw_dir = os.path.join(fnirs_data_folder, 'Participant-1')
    raw_intensity = mne.io.read_raw_nirx(fnirs_raw_dir).load_data()
    raw_intensity.resample(1.0)
    new_des = [des for des in raw_intensity.annotations.description]
    new_des = ['Control' if x == "1.0" else x for x in new_des]
    new_des = ['Tapping/Left' if x == "2.0" else x for x in new_des]
    new_des = ['Tapping/Right' if x == "3.0" else x for x in new_des]
    annot = mne.Annotations(raw_intensity.annotations.onset,
                            raw_intensity.annotations.duration, new_des)
    raw_intensity.set_annotations(annot)
    raw_intensity.annotations.crop(35, 2967)
    raw_od = mne.preprocessing.nirs.optical_density(raw_intensity)
    raw_haemo = mne.preprocessing.nirs.beer_lambert_law(raw_od)
    short_chs = get_short_channels(raw_haemo)
    raw_haemo = get_long_channels(raw_haemo)
    design_matrix = make_first_level_design_matrix(raw_intensity,
                                                   hrf_model='spm',
                                                   stim_dur=5.0,
                                                   drift_order=3,
                                                   drift_model='polynomial')
    design_matrix["ShortHbO"] = np.mean(
        short_chs.copy().pick(picks="hbo").get_data(), axis=0)
    design_matrix["ShortHbR"] = np.mean(
        short_chs.copy().pick(picks="hbr").get_data(), axis=0)
    glm_est = run_GLM(raw_haemo, design_matrix)
    df = glm_to_tidy(raw_haemo, glm_est, design_matrix)
    df = _tidy_long_to_wide(df)
    a = (df.query('condition in ["Control"]').groupby(['condition', 'Chroma'
                                                       ]).agg(['mean']))
    # Make sure false positive rate is less than 5%
    assert a["Significant"].values[0] < 0.05
    assert a["Significant"].values[1] < 0.05
    a = (df.query('condition in ["Tapping/Left", "Tapping/Right"]').groupby(
        ['condition', 'Chroma']).agg(['mean']))
    # Fairly arbitrary cutoff here, but its more than 5%
    assert a["Significant"].values[0] > 0.7
    assert a["Significant"].values[1] > 0.7
    assert a["Significant"].values[2] > 0.7
    assert a["Significant"].values[3] > 0.7

    left = [[1, 1], [1, 2], [1, 3], [2, 1], [2, 3], [2, 4], [3, 2], [3, 3],
            [4, 3], [4, 4]]
    right = [[5, 5], [5, 6], [5, 7], [6, 5], [6, 7], [6, 8], [7, 6], [7, 7],
             [8, 7], [8, 8]]

    groups = dict(Left_ROI=picks_pair_to_idx(raw_haemo, left),
                  Right_ROI=picks_pair_to_idx(raw_haemo, right))

    df = pd.DataFrame()
    for idx, col in enumerate(design_matrix.columns[:3]):
        df = df.append(glm_region_of_interest(glm_est, groups, idx, col))

    assert df.shape == (12, 8)
Exemple #3
0
# ---------------------------
#
# Or alternatively we can summarise the responses across regions of interest
# for each condition. And you can plot it with your favorite software.

left = [[1, 1], [1, 2], [1, 3], [2, 1], [2, 3],
        [2, 4], [3, 2], [3, 3], [4, 3], [4, 4]]
right = [[5, 5], [5, 6], [5, 7], [6, 5], [6, 7],
         [6, 8], [7, 6], [7, 7], [8, 7], [8, 8]]

groups = dict(Left_ROI=picks_pair_to_idx(raw_haemo, left),
              Right_ROI=picks_pair_to_idx(raw_haemo, right))

df = pd.DataFrame()
for idx, col in enumerate(design_matrix.columns[:3]):
    df = df.append(glm_region_of_interest(glm_est, groups, idx, col))


###############################################################################
#
# Compute contrasts
# -----------------
#
# We can also define a contrast as described in
# `Nilearn docs <http://nilearn.github.io/auto_examples/04_glm_first_level/plot_localizer_surface_analysis.html>`_
# and plot it.
# Here we contrast the response to tapping on the left hand with the response
# from tapping on the right hand.

contrast_matrix = np.eye(design_matrix.shape[1])
basic_conts = dict([(column, contrast_matrix[i])