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| from __future__ import print_function, division |
| import os |
| import errno |
| from keras.layers.merge import _Merge |
| from keras.layers import Input, Dense, Reshape, Flatten, add, Activation |
| from keras.layers.convolutional import Conv1D |
| from keras.models import Sequential, Model |
| from keras.optimizers import Adam |
| from functools import partial |
| import keras.backend as K |
| import numpy as np |
|
|
|
|
| BATCH_SIZE = 128 |
| ITERS = 400001 |
| SEQ_LEN = 500 |
| SEQ_DIM = 4 |
| DIM = 128 |
| CRITIC_ITERS = 10 |
| LAMBDA = 1 |
| loginterval = 1000 |
| seqinterval = 10000 |
| modelinterval = 10000 |
| selectedmodel = 400000 |
| suffix = "generated" |
| ngenerate = 10 |
| outputdirc = "./output/" |
| fastafile = "./data/KC_regions.fa" |
|
|
|
|
| for file in [outputdirc, |
| os.path.join(outputdirc, 'models'), |
| os.path.join(outputdirc, 'samples_ACGT'), |
| os.path.join(outputdirc, 'samples_raw')]: |
| try: |
| os.makedirs(file) |
| except OSError as exc: |
| if exc.errno == errno.EEXIST: |
| pass |
|
|
|
|
| def readfile(filename): |
| ids = [] |
| seqs = [] |
| f = open(filename, 'r') |
| lines = f.readlines() |
| f.close() |
| seq = [] |
| for line in lines: |
| if line[0] == '>': |
| ids.append(line[1:].rstrip('\n')) |
| if seq != []: seqs.append("".join(seq)) |
| seq = [] |
| else: |
| seq.append(line.rstrip('\n').upper()) |
| if seq != []: |
| seqs.append("".join(seq)) |
|
|
| return ids, seqs |
|
|
|
|
| def one_hot_encode_along_row_axis(sequence): |
| to_return = np.zeros((1, len(sequence), 4), dtype=np.int8) |
| seq_to_one_hot_fill_in_array(zeros_array=to_return[0], |
| sequence=sequence, one_hot_axis=1) |
| return to_return |
|
|
|
|
| def seq_to_one_hot_fill_in_array(zeros_array, sequence, one_hot_axis): |
| assert one_hot_axis == 0 or one_hot_axis == 1 |
| if one_hot_axis == 0: |
| assert zeros_array.shape[1] == len(sequence) |
| elif one_hot_axis == 1: |
| assert zeros_array.shape[0] == len(sequence) |
| for (i, char) in enumerate(sequence): |
| if char == "A" or char == "a": |
| char_idx = 0 |
| elif char == "C" or char == "c": |
| char_idx = 1 |
| elif char == "G" or char == "g": |
| char_idx = 2 |
| elif char == "T" or char == "t": |
| char_idx = 3 |
| elif char == "N" or char == "n": |
| continue |
| else: |
| raise RuntimeError("Unsupported character: "+str(char)) |
| if one_hot_axis == 0: |
| zeros_array[char_idx, i] = 1 |
| elif one_hot_axis == 1: |
| zeros_array[i, char_idx] = 1 |
|
|
|
|
| class RandomWeightedAverage(_Merge): |
| """Provides a (random) weighted average between real and generated image samples""" |
| def _merge_function(self, inputs): |
| alpha = K.random_uniform((BATCH_SIZE, 1, 1)) |
| return (alpha * inputs[0]) + ((1 - alpha) * inputs[1]) |
|
|
|
|
| class WGANGP(): |
| def __init__(self): |
| self.img_rows = SEQ_LEN |
| self.img_cols = SEQ_DIM |
| self.img_shape = (self.img_rows, self.img_cols) |
| self.latent_dim = DIM |
|
|
| |
| self.n_critic = CRITIC_ITERS |
| optimizer = Adam(lr=1e-4, beta_1=0.5, beta_2=0.9) |
|
|
| |
| self.generator = self.build_generator() |
| self.critic = self.build_critic() |
|
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|
| |
| self.generator.trainable = False |
|
|
| |
| real_img = Input(shape=self.img_shape) |
|
|
| |
| z_disc = Input(shape=(DIM,)) |
| |
| fake_img = self.generator(z_disc) |
|
|
| |
| fake = self.critic(fake_img) |
| valid = self.critic(real_img) |
|
|
| |
| interpolated_img = RandomWeightedAverage()([real_img, fake_img]) |
| |
| validity_interpolated = self.critic(interpolated_img) |
|
|
| |
| |
| partial_gp_loss = partial(self.gradient_penalty_loss, averaged_samples=interpolated_img) |
| partial_gp_loss.__name__ = 'gradient_penalty' |
|
|
| self.critic_model = Model(inputs=[real_img, z_disc], |
| outputs=[valid, fake, validity_interpolated]) |
| self.critic_model.compile(loss=[self.wasserstein_loss, self.wasserstein_loss, partial_gp_loss], |
| optimizer=optimizer, |
| loss_weights=[1, 1, 10]) |
|
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|
| |
| self.critic.trainable = False |
| self.generator.trainable = True |
|
|
| |
| z_gen = Input(shape=(DIM,)) |
| |
| img = self.generator(z_gen) |
| |
| valid = self.critic(img) |
| |
| self.generator_model = Model(z_gen, valid) |
| self.generator_model.compile(loss=self.wasserstein_loss, optimizer=optimizer) |
|
|
| def gradient_penalty_loss(self, y_true, y_pred, averaged_samples): |
| """ |
| Computes gradient penalty based on prediction and weighted real / fake samples |
| """ |
| gradients = K.gradients(y_pred, averaged_samples)[0] |
| |
| gradients_sqr = K.square(gradients) |
| |
| gradients_sqr_sum = K.sum(gradients_sqr, |
| axis=np.arange(1, len(gradients_sqr.shape))) |
| |
| gradient_l2_norm = K.sqrt(gradients_sqr_sum) |
| |
| gradient_penalty = LAMBDA * K.square(1 - gradient_l2_norm) |
| |
| return K.mean(gradient_penalty) |
|
|
| def wasserstein_loss(self, y_true, y_pred): |
| return K.mean(y_true * y_pred) |
|
|
| def res_cnn(self): |
| input_tensor = Input(shape=(SEQ_LEN, DIM)) |
| x = Activation('relu')(input_tensor) |
| x = Conv1D(DIM, 5, padding='same')(x) |
| output = add([input_tensor, x]) |
| res_1d = Model(inputs=[input_tensor], outputs=[output]) |
| return res_1d |
|
|
| def build_generator(self): |
| model = Sequential() |
| model.add(Dense(SEQ_LEN * DIM, activation='elu', input_shape=(DIM,))) |
| model.add(Reshape((SEQ_LEN, DIM))) |
| model.add(self.res_cnn()) |
| model.add(self.res_cnn()) |
| model.add(self.res_cnn()) |
| model.add(self.res_cnn()) |
| model.add(self.res_cnn()) |
| model.add(Conv1D(SEQ_DIM, 1, padding='same')) |
| model.add(Activation('softmax')) |
| model.summary() |
| noise = Input(shape=(self.latent_dim,)) |
| img = model(noise) |
| return Model(noise, img) |
|
|
| def build_critic(self): |
| model = Sequential() |
| model.add(Conv1D(DIM, 1, padding='same', input_shape=(SEQ_LEN, SEQ_DIM))) |
| model.add(self.res_cnn()) |
| model.add(self.res_cnn()) |
| model.add(self.res_cnn()) |
| model.add(self.res_cnn()) |
| model.add(self.res_cnn()) |
| model.add(Flatten()) |
| model.add(Dense(1)) |
| model.summary() |
| img = Input(shape=self.img_shape) |
| validity = model(img) |
| return Model(img, validity) |
|
|
| def train(self, foldername, filename, epochs, batch_size, |
| log_interval=1000, seq_interval=10000, model_interval=10000): |
|
|
| ids, seqs = readfile(filename) |
| X_train = np.array([one_hot_encode_along_row_axis(seq) for seq in seqs]).squeeze(axis=1) |
|
|
| |
| valid = -np.ones((batch_size, 1)) |
| fake = np.ones((batch_size, 1)) |
| dummy = np.zeros((batch_size, 1)) |
|
|
| disc_json = self.critic_model.to_json() |
| with open(foldername + '/disc.json', "w") as disc_json_file: |
| disc_json_file.write(disc_json) |
|
|
| gen_json = self.generator_model.to_json() |
| with open(foldername + '/gen.json', "w") as gen_json_file: |
| gen_json_file.write(gen_json) |
| |
| d_loss_list = [] |
| g_loss_list = [] |
| for epoch in range(epochs): |
| for _ in range(self.n_critic): |
| |
| |
| |
| |
| idx = np.random.randint(0, X_train.shape[0], batch_size) |
| imgs = X_train[idx] |
| |
| noise = np.random.normal(0, 1, (batch_size, self.latent_dim)) |
| |
| d_loss = self.critic_model.train_on_batch([imgs, noise], |
| [valid, fake, dummy]) |
| |
| |
| |
| g_loss = self.generator_model.train_on_batch(noise, valid) |
|
|
| if epoch % log_interval == 0: |
| d_loss_list.append(d_loss) |
| g_loss_list.append(g_loss) |
|
|
| if epoch % seq_interval == 0: |
| samples = [] |
| for i in range(1): |
| samples.extend(self.generate_samples()) |
| with open(foldername + '/samples_ACGT/samples_ACGT_{}.fa'.format(epoch), 'w') as f: |
| for line_number, s in enumerate(samples[0]): |
| f.write(">" + str(line_number+1) + "\n") |
| s = "".join(s) |
| f.write(s + "\n") |
| with open((foldername + '/samples_raw/samples_{}.txt').format(epoch), 'w') as f2: |
| print(samples[1], file=f2) |
|
|
| if epoch % model_interval == 0: |
| self.critic_model.save_weights(foldername + '/models/disc_{}.hdf5'.format(epoch)) |
| self.critic_model.save(foldername + '/models/disc_{}.h5'.format(epoch)) |
| self.generator_model.save_weights(foldername + '/models/gen_{}.hdf5'.format(epoch)) |
| self.generator_model.save(foldername + '/models/gen_{}.h5'.format(epoch)) |
| |
| |
| import pickle |
| f = open(foldername + '/d_g_loss.pkl', "wb") |
| pickle.dump(d_loss_list,f) |
| pickle.dump(g_loss_list,f) |
| f.close() |
| |
|
|
| def generate_samples(self): |
| char_ACGT={0:'A' , 1:'C' , 2:'G' , 3:'T'} |
| noise = np.random.normal(0, 1, (BATCH_SIZE, self.latent_dim)) |
| gen_imgs = self.generator.predict(noise) |
| samples = np.argmax(gen_imgs, axis=2) |
| decoded_samples = [] |
| for i in range(len(samples)): |
| decoded = '' |
| for j in range(len(samples[i])): |
| decoded += char_ACGT[samples[i][j]] |
| decoded_samples.append(decoded) |
| return decoded_samples, gen_imgs |
|
|
| def generate(self, nb=1, model_number=0, result_number=0): |
| hdf5_filename = outputdirc + "/models/disc_" + str(model_number) + ".hdf5" |
| self.generator_model.load_weights(hdf5_filename) |
| samples = [] |
| for i in range(nb): |
| samples.extend(self.generate_samples()[0]) |
| with open(outputdirc + '/gen_seq/generated_{}_iter_{}.fa'.format(nb*BATCH_SIZE, model_number), 'w') as f: |
| counter = 0 |
| for s in samples: |
| counter += 1 |
| s = "".join(s) |
| f.write(">" + str(counter) + "_" + str(result_number) + "_" + str(model_number) + "\n" + s + "\n") |
|
|
|
|
| if __name__ == '__main__': |
| wgan = WGANGP() |
| |
| wgan.train(outputdirc, fastafile, epochs=ITERS, batch_size=BATCH_SIZE, |
| log_interval=loginterval, seq_interval=seqinterval, model_interval=modelinterval) |
| |
| |
| try: |
| os.makedirs(os.path.join(outputdirc, 'gen_seq')) |
| except OSError as exc: |
| if exc.errno == errno.EEXIST: |
| pass |
| for i in range(0, selectedmodel+1, modelinterval): |
| wgan.generate(nb=ngenerate, model_number=i, result_number=suffix) |
|
|