Ejemplo n.º 1
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    def test_get_signal_with_meta(self, setup_module_load):  #pylint: disable=redefined-outer-name
        """
        Testing get_signal_meta.
        """
        # Arrange
        ppln = (bf.Pipeline().init_variable(
            name="signal", init_on_each_run=list).load(
                fmt='wfdb',
                components=["signal", "meta"]).flip_signals().update_variable(
                    "signal", bf.B("signal"), mode='a').run(batch_size=2,
                                                            shuffle=False,
                                                            drop_last=False,
                                                            n_epochs=1,
                                                            lazy=True))

        dtst = EcgDataset(setup_module_load[0])

        # Act
        ppln_run = (dtst >> ppln).run()
        signal_var = ppln_run.get_variable("signal")

        # Assert
        assert len(signal_var) == 3
        assert len(signal_var[0]) == 2
        assert signal_var[0][0].shape == (1, 9000)
Ejemplo n.º 2
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def LSTM_train_pipeline(model_name="lstm"):
    model_config = {}

    return (bf.Pipeline().init_model(
        "dynamic", MyLSTM, name=model_name, config=model_config).load(
            fmt='wfdb',
            components=["signal", "annotation", "meta"],
            ann_ext='pu1').train_model(model_name,
                                       x=B('signal'),
                                       y_true=B('annot')))
Ejemplo n.º 3
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def HMM_predict_pipeline(model_path,
                         batch_size=20,
                         features="hmm_features",
                         channel_ix=0,
                         annot="hmm_annotation",
                         model_name='HMM'):
    """Prediction pipeline for Hidden Markov Model.

    This pipeline isolates QRS, PQ and QT segments.
    It works with dataset that generates batches of class ``EcgBatch``.

    Parameters
    ----------
    model_path : str
        Path to pretrained ``HMModel``.
    batch_size : int
        Number of samples in batch.
        Default value is 20.
    features : str
        Batch attribute to store calculated features.
    channel_ix : int
        Index of channel, which data should be used in training and predicting.
    annot: str
        Specifies attribute of batch in which annotation will be stored.

    Returns
    -------
    pipeline : Pipeline
        Output pipeline.
    """

    config_predict = {'build': False, 'load': {'path': model_path}}

    return (bf.Pipeline().init_model(
        "static", HMModel, model_name, config=config_predict).cwt(
            src="signal", dst=features, scales=[4, 8, 16],
            wavelet="mexh").standardize(
                axis=-1, src=features, dst=features).predict_model(
                    model_name,
                    make_data=partial(prepare_hmm_input,
                                      features=features,
                                      channel_ix=channel_ix),
                    save_to=bf.B(annot),
                    mode='w').calc_ecg_parameters(src=annot))
Ejemplo n.º 4
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def HMM_preprocessing_pipeline(batch_size=20):
    features = "hmm_features"
    return (
        bf.Pipeline().init_variable("annsamps", init_on_each_run=list).
        init_variable("anntypes", init_on_each_run=list).init_variable(
            features, init_on_each_run=list).cwt(
                src="signal", dst=features, scales=[4, 8, 16],
                wavelet="mexh")  #применяется непрерыное вейвлет. преобр.
        .standardize(
            axis=-1,
            src=features, dst=features
        )  #преобразуется в посл-ть с единичной дисперсией и c мат.ожиданием 0
        .update_variable("annsamps", bf.F(get_annsamples),
                         mode='e').update_variable("anntypes",
                                                   bf.F(get_anntypes),
                                                   mode='e').update_variable(
                                                       features,
                                                       bf.B(features),
                                                       mode='e'))
Ejemplo n.º 5
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def LoadEcgPipeline(batch_size=20, annot_ext="pu1"):
    """Preprocessing pipeline for Hidden Markov Model.

    This pipeline prepares data for ``hmm_train_pipeline``.
    It works with dataset that generates batches of class ``EcgBatch``.

    Parameters
    ----------
    batch_size : int
        Number of samples in batch.
        Default value is 20.
    features : str
        Batch attribute to store calculated features.

    Returns
    -------
    pipeline : Pipeline
        Output pipeline.
    """
    return (bf.Pipeline().load(fmt='wfdb',
                               components=["signal", "annotation", "meta"],
                               ann_ext=annot_ext))
Ejemplo n.º 6
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    bf.Pipeline()  # refer pipeline API for more information
                   # https://analysiscenter.github.io/batchflow/api/batchflow.pipeline.html
      .init_variable("annsamps", init_on_each_run=list) # create a variable if not exists, before each run, initiate it a list, a method in Pipeline class
      .init_variable("anntypes", init_on_each_run=list)
      
      .load(       # this is coming from ECGBatch
            fmt='wfdb',        # (optional), source format
            components=["signal",      # from ECGBatch class, store ECG signals in numpy array
                        "annotation",  # from ECGBatch class, array of dicts with different types of annotations, e.g. array of R-peaks
                        "meta"],       # from ECGBatch class, array of dicts with metadata about ECG records, e.g. signal frequency
                        # (str or array like) components to load
            ann_ext='pu1')     # (str, optional), extension of the annotation file
            
   
      .update_variable(                       # update a value of a given variable lazily during pipeline executuion
                      "annsamps",             # name of the variable
                       bf.F(get_annsamples),  # a callable which take a batch (could be a batch class method or an arbitrary function)
                                              # here 'get_annsamples' was defined as a callable before
                       mode='e')              # mode 'e' extend a variable with new value, if a variable is a list  
      
      .update_variable("anntypes", 
                       bf.F(get_anntypes),    # a callable which take a batch (could be a batch class method or an arbitrary function)
                       mode='e')              # mode 'e' extend a variable with new value, if a variable is a list    
      

      .run(  # coming from pipeline
           batch_size=20,    # number of items in the batch
           shuffle=False,    # no conduct random shuffle
           drop_last=False,  # if True, drop the last batch if it contains fewer than batch_size items
           n_epochs=1,       # number of epoches required
           lazy=True) # execute all lazy actions for each batch in the dataset
Ejemplo n.º 7
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def HMM_train_pipeline(hmm_preprocessed,
                       batch_size=20,
                       features="hmm_features",
                       channel_ix=0,
                       n_iter=25,
                       random_state=42,
                       model_name='HMM',
                       states=(3, 5, 8, 11, 14, 16)):
    """Train pipeline for Hidden Markov Model.

    This pipeline trains hmm model to isolate QRS, PQ and QT segments.
    It works with dataset that generates batches of class ``EcgBatch``.

    Parameters
    ----------
    hmm_preprocessed : Pipeline
        Pipeline with precomputed hmm features through ``hmm_preprocessing_pipeline``
    batch_size : int
        Number of samples in batch.
        Default value is 20.
    features : str
        Batch attribute to store calculated features.
    channel_ix : int
        Index of signal's channel, which should be used in training and predicting.
    n_iter : int
        Number of learning iterations for ``HMModel``.
    random_state: int
        Random state for ``HMModel``.
    states: list
        States of Markov model.
            0     to states[0] = QRS.
        states[0] to states[1] = ST.
        states[1] to states[2] = T.
        states[2] to states[3] = ISO.to
        states[3] to states[4] = P.
        states[4] to states[5] = PQ.
        Default value is (3, 5, 8, 11, 14, 16).

    Returns
    -------
    pipeline : Pipeline
        Output pipeline.
    """
    lengths = [
        features_iter.shape[2]
        for features_iter in hmm_preprocessed.get_variable(features)
    ]
    hmm_features = np.concatenate([
        features_iter[channel_ix, :, :].T
        for features_iter in hmm_preprocessed.get_variable(features)
    ])
    anntype = hmm_preprocessed.get_variable("anntypes")
    annsamp = hmm_preprocessed.get_variable("annsamps")
    expanded = np.concatenate([
        expand_annotation(samp, types, length)
        for samp, types, length in zip(annsamp, anntype, lengths)
    ])
    means, covariances = prepare_means_covars(hmm_features,
                                              expanded,
                                              states=states,
                                              num_states=states[5],
                                              num_features=3)
    transition_matrix, start_probabilities = prepare_transmat_startprob(
        states=states)

    config_train = {
        'build':
        True,
        'estimator':
        hmm.GaussianHMM(n_components=states[5],
                        n_iter=n_iter,
                        covariance_type="full",
                        random_state=random_state,
                        init_params='',
                        verbose=True),
        'init_params': {
            'means_': means,
            'covars_': covariances,
            'transmat_': transition_matrix,
            'startprob_': start_probabilities
        }
    }

    return (bf.Pipeline().init_model(
        "dynamic", HMModel, model_name, config=config_train).init_variable(
            "verbose", init_on_each_run=list).load(
                fmt='wfdb',
                components=["signal", "annotation", "meta"],
                ann_ext='pu1').cwt(
                    src="signal",
                    dst=features,
                    scales=[4, 8, 16],
                    wavelet="mexh").standardize(
                        axis=-1, src=features, dst=features).train_model(
                            model_name,
                            make_data=partial(prepare_hmm_input,
                                              features=features,
                                              channel_ix=channel_ix),
                            save_to=V("verbose")).call(
                                lambda _, v: print(v[-1]), v=V('verbose')))
Ejemplo n.º 8
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def dirichlet_train_pipeline(labels_path,
                             batch_size=256,
                             n_epochs=1000,
                             gpu_options=None,
                             loss_history='loss_history',
                             model_name='dirichlet'):
    """Train pipeline for Dirichlet model.

    This pipeline trains Dirichlet model to find propability of atrial fibrillation.
    It works with dataset that generates batches of class ``EcgBatch``.

    Parameters
    ----------
    labels_path : str
        Path to csv file with true labels.
    batch_size : int
        Number of samples per gradient update.
        Default value is 256.
    n_epochs : int
        Number of times to iterate over the training data arrays.
        Default value is 1000.
    gpu_options : GPUOptions
        An argument for tf.ConfigProto ``gpu_options`` proto field.
        Default value is ``None``.
    loss_history : str
        Name of pipeline variable to save loss values to.

    Returns
    -------
    pipeline : Pipeline
        Output pipeline.
    """

    model_config = {
        "session": {
            "config": tf.ConfigProto(gpu_options=gpu_options)
        },
        "input_shape": F(lambda batch: batch.signal[0].shape[1:]),
        "class_names": F(lambda batch: batch.label_binarizer.classes_),
        "loss": None,
    }

    return (bf.Pipeline().init_model(
        "dynamic", DirichletModel, name=model_name,
        config=model_config).init_variable(
            loss_history, init_on_each_run=list).load(
                components=["signal", "meta"], fmt="wfdb").load(
                    components="target", fmt="csv",
                    src=labels_path).drop_labels(["~"]).rename_labels({
                        "N": "NO",
                        "O": "NO"
                    }).flip_signals().random_resample_signals(
                        "normal", loc=300,
                        scale=10).random_split_signals(2048, {
                            "A": 9,
                            "NO": 3
                        }).binarize_labels().train_model(
                            model_name,
                            make_data=concatenate_ecg_batch,
                            fetches="loss",
                            save_to=V(loss_history),
                            mode="a").run(batch_size=batch_size,
                                          shuffle=True,
                                          drop_last=True,
                                          n_epochs=n_epochs,
                                          lazy=True))
Ejemplo n.º 9
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def PanTompkinsPipeline(batch_size=20, annot="pan_tomp_annotation"):
    return (bf.Pipeline().init_variable(
        annot,
        init_on_each_run=list).my_pan_tompkins(dst=annot).update_variable(
            annot, bf.B(annot), mode='e'))
Ejemplo n.º 10
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def HilbertTransformPipeline(batch_size=20, annot="hilbert_annotation"):
    return (bf.Pipeline().init_variable(annot, init_on_each_run=list).load(
        fmt='wfdb', components=["signal", "meta"]).band_pass_signals(
            8, 20).hilbert_transform(dst=annot).update_variable(annot,
                                                                bf.B(annot),
                                                                mode='e'))