import os import numpy as np import matplotlib.pyplot as plt from matplotlib.gridspec import GridSpec from matplotlib import colors, cm import mne import pickle all_tasks = ['facecat/female', 'facecat/male', 'facecat/blond', 'facecat/darkhaired', 'facecat/smiles', 'facecat/nosmile', 'facecat/old', 'facecat/young'] indir = './data/processed/' # N_SUBJECTS = 30 N_TASKS = len(all_tasks) # TRIALS_PER_TASK_SUBJECT = 280 # TOTAL_TRIALS = N_SUBJECTS * N_TASKS * TRIALS_PER_TASK_SUBJECT # 67200 N_CHANNELS = 32 # 32 channels N_TIMESTEPS = 1101 # 1101 time points [-0.2, 0.9]s with 1000Hz sampling rate if os.path.exists(f'./images/erpdata.pkl'): X, Y = pickle.load(open(f'./images/erpdata.pkl', 'rb')) else: task = None # task_id = 0 # task = all_tasks[task_id] data_path='./data/processed/' from utils import Dataset dataset = Dataset(data_path, cache=True, chs=N_CHANNELS, samples=N_TIMESTEPS, task=task) X, Y, ids = dataset.X, dataset.Y, dataset.ids print(f"Loaded data with shapes: X:{X.shape}, Y:{Y.shape}, ids:{ids.shape}") X = X.reshape(X.shape[0], N_CHANNELS, N_TIMESTEPS) Xs, Ys = [], [] for subject in range(30): for y in range(2): mask = (ids[:, 0] == subject) & (Y == y) Xs.append(X[mask].mean(axis=0)) Ys.append(Y[mask][0]) X = np.array(Xs) Y = np.array(Ys) pickle.dump((X, Y), open(f'./images/erpdata.pkl', 'wb')) # Define channel names and properties CHANNEL_NAMES = [ 'Fp1', 'Fp2', 'F7', 'F3', 'Fz', 'F4', 'F8', 'FC5', 'FC1', 'FC2', 'FC6', 'T7', 'C3', 'Cz', 'C4', 'T8', 'TP9', 'CP5', 'CP1', 'CP2', 'CP6', 'TP10', 'P7', 'P3', 'Pz', 'P4', 'P8', 'PO9', 'O1', 'Iz', 'O2', 'PO10' ] N_CHANNELS = len(CHANNEL_NAMES) SAMPLING_FREQ = 1000 # in Hz T_MIN, T_MAX = -0.2, 0.9 # Time window in seconds # ERP and Topoplot plotting settings ERP_CHANNEL = 'Pz' # Channel to display in the ERP plot TOPO_TIMES = [0.200, 0.300, 0.400, 0.500, 0.600] # Time points for topoplots in seconds # Output directory OUTPUT_DIR = "images" os.makedirs(OUTPUT_DIR, exist_ok=True) def process_eeg_data(X, Y, ch_names, sfreq): # Create an MNE Info object, which is required for all MNE functions. # It holds metadata like channel names, sampling rate, etc. info = mne.create_info(ch_names=ch_names, sfreq=sfreq, ch_types='eeg') # Set standard montage for plotting topographies montage = mne.channels.make_standard_montage('standard_1020') info.set_montage(montage, on_missing='ignore') # ignore channels not in montage # The event array needs to be in the format: [sample_index, 0, event_id] n_trials = X.shape[0] events = np.array([ [i * (T_MAX - T_MIN) * sfreq, 0, label] for i, label in enumerate(Y) ]).astype(int) event_id = {'non_target': 0, 'target': 1} # Create MNE Epochs object from the raw numpy array # The data must be in (trials, channels, time) and scaled to Volts epochs = mne.EpochsArray(X, info, events=events, tmin=T_MIN, event_id=event_id) # Perform baseline correction using the interval [-0.2s, 0s] # This subtracts the mean of the baseline period from each channel in each epoch. print("Applying baseline correction from -0.2s to 0s...") epochs.apply_baseline(baseline=(T_MIN, 0)) # Average the epochs for each condition to create Evoked objects evoked_target = epochs['target'].average() evoked_nontarget = epochs['non_target'].average() evokeds = {'Target': evoked_target, 'Non-Target': evoked_nontarget} return evokeds, epochs, info def plot_erp_with_shade(epochs_condition, picks, ax, color, linestyle, label): # MNE returns data in Volts, convert to microVolts for plotting data = epochs_condition.get_data(picks=picks)[:, :] * 1e3 mean_erp = np.mean(data, axis=0).flatten() # Calculate Standard Error of the Mean (SEM) sem = np.std(data, axis=0, ddof=1) #/ np.sqrt(data.shape[0]) sem = sem.flatten() times = epochs_condition.times # Plot the mean ERP line ax.plot(times, mean_erp, color=color, linestyle=linestyle, label=label, lw=2) # Plot the shaded SEM area ax.fill_between(times, mean_erp - sem, mean_erp + sem, color=color, alpha=0.2, linewidth=0) evokeds, epochs, info = process_eeg_data(X, Y, CHANNEL_NAMES, SAMPLING_FREQ) diff_wave = mne.combine_evoked([evokeds['Target'], evokeds['Non-Target']], weights=[1, -1]) print("Generating the figure...") fig = plt.figure(figsize=(12, 8)) n_times = len(TOPO_TIMES) # Make the colorbar column narrow compared to topoplot columns width_ratios = [20] * n_times + [1] gs = GridSpec(3, n_times + 1, height_ratios=[1, 2, 1], hspace=0.5, wspace=0.7, width_ratios=width_ratios) max_val_target = np.abs(evokeds['Target'].data).max() * 1e6 max_val_nontarget = np.abs(evokeds['Non-Target'].data).max() * 1e6 global_max_val = max(max_val_target, max_val_nontarget) * 0.5 vlim = (-global_max_val, global_max_val) print(f"Topoplot color limits set to: [{vlim[0]:.2f}, {vlim[1]:.2f}] µV") for i, t in enumerate(TOPO_TIMES): ax = fig.add_subplot(gs[0, i]) evokeds['Target'].plot_topomap(times=t, axes=ax, show=False, cmap='RdBu_r', vlim=vlim, colorbar=False) ax.set_title(f'{t:.3f} s') if i == 0: ax.set_ylabel('Target', fontsize=14, rotation=90, labelpad=20) erp_ax = fig.add_subplot(gs[1, :-1]) plot_erp_with_shade(epochs['target'], picks=ERP_CHANNEL, ax=erp_ax, color='blue', linestyle='-', label='Target') plot_erp_with_shade(epochs['non_target'], picks=ERP_CHANNEL, ax=erp_ax, color='red', linestyle='-', label='Non-Target') erp_ax.axhline(0, linestyle='-', color='black', linewidth=0.8) erp_ax.axvline(0, linestyle='-', color='black', linewidth=0.8) erp_ax.set_xlabel("Time (s)", fontsize=14) erp_ax.set_ylabel("Amplitude (µV)", fontsize=14) erp_ax.legend(loc='upper left', fontsize=12) erp_ax.set_xlim(epochs.times.min(), epochs.times.max()) for t in TOPO_TIMES: erp_ax.axvline(t, linestyle=':', color='gray', linewidth=0.5) cax = fig.add_subplot(gs[1, -1]) # Use the last column of the middle row norm = colors.Normalize(vmin=vlim[0], vmax=vlim[1]) sm = cm.ScalarMappable(cmap='RdBu_r', norm=norm) cbar = fig.colorbar(sm, cax=cax) cbar.set_label("Amplitude (µV)", fontsize=14) # --- Bottom Row: Non-Target Topoplots --- for i, t in enumerate(TOPO_TIMES): ax = fig.add_subplot(gs[2, i]) evokeds['Non-Target'].plot_topomap(times=t, axes=ax, show=False, cmap='RdBu_r', vlim=vlim, colorbar=False) ax.set_title(f'{t:.3f} s', y=-0.3) if i == 0: ax.set_ylabel('Non-Target', fontsize=14, rotation=90, labelpad=20) fig.tight_layout(rect=[0, 0, 1, 0.96]) pdf_path = os.path.join(OUTPUT_DIR, "erp_figure3.pdf") eps_path = os.path.join(OUTPUT_DIR, "erp_figure3.eps") png_path = os.path.join(OUTPUT_DIR, "erp_figure3.png") fig.savefig(pdf_path) fig.savefig(eps_path) fig.savefig(png_path) print(f"\nFigure saved to '{pdf_path}' and '{eps_path}'") # plt.show()