Exemple #1
0
new_ukbb = new_ukbb.drop(columns=['20016-2.0'], errors='ignore')

# Random splitting of data to train our model
X_train, X_test, y_train, y_test = train_test_split(new_ukbb,
                                                    y,
                                                    test_size=0.5,
                                                    random_state=0)

X_train = X_train.dropna(subset=['21003-2.0'])
X_test = X_test.dropna(subset=['21003-2.0'])

merged_data = pd.read_csv(path_to_merge_brain, usecols=columns)

dmriDict = collections.OrderedDict(
    chain(brain_dmri_fa.items(), brain_dmri_icvf.items(),
          brain_dmri_isovf.items(), brain_dmri_l1.items(),
          brain_dmri_l2.items(), brain_dmri_l3.items(), brain_dmri_md.items(),
          brain_dmri_mo.items(), brain_dmri_od.items()))
dmriDict.update({'eid': 'eid'})
dmri = pd.DataFrame(merged_data, columns=dmriDict.keys())
dmri = dmri.dropna()


def load_combine_data(X_split, merged_data, dmri):
    data_frame = []
    connectomes = []
    eids = []
    for e_id in X_split.eid:
        this_eid_data = merged_data[merged_data['eid'] == e_id]
        this_path = os.path.join(path_to_matrices,
y = ukbb[['eid', '20016-2.0']].dropna()
new_ukbb = pd.DataFrame(ukbb, index=y.index)

new_ukbb = new_ukbb.drop(columns=['20016-2.0'], errors='ignore')

# Random splitting of data to train our model
X_train, X_test, y_train, y_test = train_test_split(
    new_ukbb, y, test_size=0.5, random_state=0)

X_train = X_train[['eid', '20127-0.0']].dropna()
X_test = X_test[['eid', '20127-0.0']].dropna()

merged_data = pd.read_csv(path_to_merge_brain, usecols=columns)

dmriDict = collections.OrderedDict(chain(brain_dmri_fa.items(),
                                         brain_dmri_icvf.items(),
                                         brain_dmri_isovf.items(),
                                         brain_dmri_l1.items(),
                                         brain_dmri_l2.items(),
                                         brain_dmri_l3.items(),
                                         brain_dmri_md.items(),
                                         brain_dmri_mo.items(),
                                         brain_dmri_od.items()))
dmriDict.update({'eid': 'eid'})
dmri = pd.DataFrame(merged_data, columns=dmriDict.keys())
dmri = dmri.dropna()


def load_combine_data(X_split, merged_data, dmri):
    data_frame = []
    eids = []