def get_predictions_full_CCLE_dataset_threshold(self,expression_file,ic50_file,threshold,drug):
        training_frame,training_series = dfm.get_expression_frame_and_ic50_series_for_drug(expression_file,ic50_file,drug,normalized=True,trimmed=True,threshold=threshold)
        training_data,training_target = dfm.get_scikit_data_and_target(training_frame,training_series)

        cell_lines, testing_data = dfm.get_normalized_full_expression_identifiers_and_data(expression_file,training_frame.index)

        self.model.fit(training_data,training_target)
        predictions = self.model.predict(testing_data)

        return cell_lines, predictions
    def get_predictions_full_CCLE_dataset_top_features(self,expression_file,ic50_file,num_features,drug):
        expression_frame,ic50_series = dfm.get_expression_frame_and_ic50_series_for_drug(expression_file,ic50_file,drug,normalized=True,trimmed=True)
        top_features = dfm.get_pval_top_n_features(expression_frame,ic50_series,num_features)
        expression_frame = expression_frame.ix[top_features]
        scikit_data,scikit_target = dfm.get_scikit_data_and_target(expression_frame,ic50_series)

        cell_lines, testing_data = dfm.get_normalized_full_expression_identifiers_and_data(expression_file,expression_frame.index)
        self.model.fit(scikit_data,scikit_target)
        predictions = self.model.predict(testing_data)

        return cell_lines,predictions,list(top_features)