def FetchTile(obKey): """returns a list of image channel arrays cropped around the object coordinates """ imKey = obKey[:-1] pos = list(db.GetObjectCoords(obKey)) if None in pos: message = ( "Failed to load coordinates for object key %s. This may " "indicate a problem with your per-object table.\n" 'You can check your per-object table "%s" in TableViewer' % ( ", ".join(["%s:%s" % (col, val) for col, val in zip(dbconnect.object_key_columns(), obKey)]), p.object_table, ) ) wx.MessageBox(message, "Error") logging.error(message) return None size = (int(p.image_tile_size), int(p.image_tile_size)) # Could transform object coords here imgs = FetchImage(imKey) if p.rescale_object_coords: pos[0] *= p.image_rescale[0] / p.image_rescale_from[0] pos[1] *= p.image_rescale[1] / p.image_rescale_from[1] return [Crop(im, size, pos) for im in imgs]
def FetchTile(obKey): '''returns a list of image channel arrays cropped around the object coordinates ''' imKey = obKey[:-1] pos = list(db.GetObjectCoords(obKey)) if None in pos: message = ( 'Failed to load coordinates for object key %s. This may ' 'indicate a problem with your per-object table.\n' 'You can check your per-object table "%s" in TableViewer' % (', '.join([ '%s:%s' % (col, val) for col, val in zip(dbconnect.object_key_columns(), obKey) ]), p.object_table)) wx.MessageBox(message, 'Error') logging.error(message) return None size = (int(p.image_tile_size), int(p.image_tile_size)) # Could transform object coords here imgs = FetchImage(imKey) if p.rescale_object_coords: pos[0] *= p.image_rescale[0] / p.image_rescale_from[0] pos[1] *= p.image_rescale[1] / p.image_rescale_from[1] return [Crop(im, size, pos) for im in imgs]
def FetchTile(obKey, display_whole_image=False): '''returns a list of image channel arrays cropped around the object coordinates ''' imKey = obKey[:-1] # Could transform object coords here imgs = FetchImage(imKey) size = (int(p.image_size),int(p.image_size)) if display_whole_image: return imgs else: size = (int(p.image_tile_size), int(p.image_tile_size)) pos = list(db.GetObjectCoords(obKey)) if None in pos: message = ('Failed to load coordinates for object key %s. This may ' 'indicate a problem with your per-object table.\n' 'You can check your per-object table "%s" in TableViewer' %(', '.join(['%s:%s'%(col, val) for col, val in zip(dbconnect.object_key_columns(), obKey)]), p.object_table)) wx.MessageBox(message, 'Error') logging.error(message) return None if p.rescale_object_coords: pos[0] *= p.image_rescale[0] / p.image_rescale_from[0] pos[1] *= p.image_rescale[1] / p.image_rescale_from[1] return [Crop(im, size, pos) for im in imgs]
def show_selection_in_table(self, event = None): '''Callback for "Show selection in a table" popup item.''' containing_trajectory = [i for i in self.connected_nodes if self.selected_node in i][0] keys, ypoints, xpoints, data = zip(*[[self.directed_graph.node[i]["db_key"],i[0],i[1],self.directed_graph.node[i]["s"]] for i in containing_trajectory]) table_data = np.hstack((np.array(keys), np.array((xpoints,ypoints,data)).T)) column_labels = list(object_key_columns()) key_col_indices = list(xrange(len(column_labels))) column_labels += [props.object_tracking_label,props.timepoint_id,self.selected_feature] group = 'Object' grid = tableviewer.TableViewer(self, title='Trajectory data containing %s %d'%(props.object_name[0],self.selected_node[0])) grid.table_from_array(table_data, column_labels, group, key_col_indices) # TODO: Confirm that hiding the key columns is actually neccesary. Also, an error gets thrown when the user tries to scrool horizontally. grid.grid.Table.set_shown_columns(list(xrange(len(key_col_indices),len(column_labels)))) grid.set_fitted_col_widths() grid.Show()
def set_table(self, table_name): if table_name == p.image_table: self.grouping = 'Image' elif table_name == p.object_table: self.grouping = 'Object' else: self.grouping = None self.table_name = table_name self.cache = odict() self.col_labels = np.array(db.GetColumnNames(self.table_name)) self.shown_columns = np.arange(len(self.col_labels)) self.order_by = [self.col_labels[0]] self.order_direction = 'ASC' self.key_indices = None if self.table_name == p.image_table: self.key_indices = [self.col_labels.tolist().index(v) for v in dbconnect.image_key_columns()] if self.table_name == p.object_table: self.key_indices = [self.col_labels.tolist().index(v) for v in dbconnect.object_key_columns()]
def get_object_keys_at_row(self, row): # XXX: needs to be updated to work for per_well data if self.table_name == p.image_table: # return all objects in this image key = self.get_row_key(row) if key is None: return None dm = DataModel.getInstance() n_objects = dm.GetObjectCountFromImage(key) return [tuple(list(key) + [i]) for i in range(n_objects)] elif self.table_name == p.object_table: key = self.get_row_key(row) if key is None: return None return [key] else: key = [] for col in dbconnect.object_key_columns(): if col not in self.col_labels: return None else: col_index = self.col_labels.tolist().index(col) key += [self.GetValue(row, col_index)] return [tuple(key)]
def set_table(self, table_name): if table_name == p.image_table: self.grouping = 'Image' elif table_name == p.object_table: self.grouping = 'Object' else: self.grouping = None self.table_name = table_name self.cache = odict() self.col_labels = np.array(db.GetColumnNames(self.table_name)) self.shown_columns = np.arange(len(self.col_labels)) self.order_by = [self.col_labels[0]] self.order_direction = 'ASC' self.key_indices = None if self.table_name == p.image_table: self.key_indices = [ self.col_labels.tolist().index(v) for v in dbconnect.image_key_columns() ] if self.table_name == p.object_table: self.key_indices = [ self.col_labels.tolist().index(v) for v in dbconnect.object_key_columns() ]
def prompt_user_to_link_table(parent, table): '''Prompts the user for information about the given table so it may be linked into the tables that CPA already accesses. returns the given table name or None if the user cancels ''' dlg = wx.SingleChoiceDialog(parent, 'What kind of data is in this table (%s)?'%(table), 'Select table type', ['per-well', 'per-image', 'per-object', 'other'], wx.CHOICEDLG_STYLE) show_table_button = wx.Button(dlg, -1, 'Show table') dlg.Sizer.Children[2].GetSizer().Insert(0, show_table_button, 0, wx.ALL, 10) dlg.Sizer.Children[2].GetSizer().InsertStretchSpacer(1, 1) def on_show_table(evt): from tableviewer import TableViewer tableview = TableViewer(get_main_frame_or_none()) tableview.Show() tableview.load_db_table(table) show_table_button.Bind(wx.EVT_BUTTON, on_show_table) if dlg.ShowModal() != wx.ID_OK: dlg.Destroy() return None new_table_type = dlg.GetStringSelection() if new_table_type == 'per-well': link_table_to_try = p.image_table link_cols_to_try = dbconnect.well_key_columns() elif new_table_type == 'per-image': dlg = wx.MessageDialog(parent, 'Does this per-image table represent a ' 'new set of images in your experiment?', 'New per-image table', wx.YES_NO) if dlg.ShowModal() == wx.ID_YES: wx.MessageDialog('Sorry, CPA does not currently support multiple\n' 'per-image tables unless they are referring to the\n' 'same images.\n\n' 'Please see the manual for more information', 'Multiple per-image tables not supported') dlg.Destroy() return None link_table_to_try = p.image_table link_cols_to_try = dbconnect.image_key_columns() elif new_table_type == 'per-object': dlg = wx.MessageDialog(parent, 'Does this per-object table represent a ' 'new set of objects in your experiment?', 'New per-object table', wx.YES_NO) if dlg.ShowModal() == wx.ID_YES: wx.MessageDialog('Sorry, CPA does not currently support multiple\n' 'per-object tables unless they are referring to the\n' 'same objects.\n\n' 'Please see the manual for more information', 'Multiple per-object tables not supported') if p.object_table: if table == p.object_table: raise link_table_to_try = p.object_table link_cols_to_try = dbconnect.object_key_columns() else: # There should never be an object table without another object # table existing first. Connecting this table to the image_table is # asking for trouble. return None else: dlg = wx.SingleChoiceDialog(parent, 'Which of your tables is "%s" linked ' 'to?'%(table), 'Select linking table', db.get_linkable_tables(), wx.CHOICEDLG_STYLE) if dlg.ShowModal() != wx.ID_OK: dlg.Destroy() return None link_table_to_try = dlg.GetStringSelection() link_cols_to_try = [] dlg = LinkTablesDialog(parent, table, link_table_to_try, link_cols_to_try, link_cols_to_try) if dlg.ShowModal() != wx.ID_OK: dlg.Destroy() return None col_pairs = dlg.get_column_pairs() src_cols = [col_pair[0][1] for col_pair in col_pairs] dest_cols = [col_pair[1][1] for col_pair in col_pairs] db.do_link_tables(table, link_table_to_try, src_cols, dest_cols) # return the newly linked table return table
def prompt_user_to_link_table(parent, table): '''Prompts the user for information about the given table so it may be linked into the tables that CPA already accesses. returns the given table name or None if the user cancels ''' dlg = wx.SingleChoiceDialog(parent, 'What kind of data is in this table (%s)?'%(table), 'Select table type', ['per-well', 'per-image', 'per-object', 'other'], wx.CHOICEDLG_STYLE) show_table_button = wx.Button(dlg, -1, 'Show table') dlg.Sizer.Children[2].GetSizer().Insert(0, show_table_button, 0, wx.ALL, 10) dlg.Sizer.Children[2].GetSizer().InsertStretchSpacer(1, 1) def on_show_table(evt): from tableviewer import TableViewer tableview = TableViewer(get_main_frame_or_none()) tableview.Show() tableview.load_db_table(table) show_table_button.Bind(wx.EVT_BUTTON, on_show_table) if dlg.ShowModal() != wx.ID_OK: dlg.Destroy() return None new_table_type = dlg.GetStringSelection() if new_table_type == 'per-well': link_table_to_try = p.image_table link_cols_to_try = dbconnect.well_key_columns() elif new_table_type == 'per-image': dlg = wx.MessageDialog(parent, 'Does this per-image table represent a ' 'new set of images in your experiment?', 'New per-image table', wx.YES_NO) if dlg.ShowModal() == wx.ID_YES: wx.MessageDialog(parent,'Sorry, CPA does not currently support multiple\n' 'per-image tables unless they are referring to the\n' 'same images.\n\n' 'Please see the manual for more information', 'Multiple per-image tables not supported') dlg.Destroy() return None link_table_to_try = p.image_table link_cols_to_try = dbconnect.image_key_columns() elif new_table_type == 'per-object': dlg = wx.MessageDialog(parent, 'Does this per-object table represent a ' 'new set of objects in your experiment?', 'New per-object table', wx.YES_NO) if dlg.ShowModal() == wx.ID_YES: wx.MessageDialog(parent,'Sorry, CPA does not currently support multiple\n' 'per-object tables unless they are referring to the\n' 'same objects.\n\n' 'Please see the manual for more information', 'Multiple per-object tables not supported') if p.object_table: if table == p.object_table: raise link_table_to_try = p.object_table link_cols_to_try = dbconnect.object_key_columns() else: # There should never be an object table without another object # table existing first. Connecting this table to the image_table is # asking for trouble. return None else: dlg = wx.SingleChoiceDialog(parent, 'Which of your tables is "%s" linked ' 'to?'%(table), 'Select linking table', db.get_linkable_tables(), wx.CHOICEDLG_STYLE) if dlg.ShowModal() != wx.ID_OK: dlg.Destroy() return None link_table_to_try = dlg.GetStringSelection() link_cols_to_try = [] dlg = LinkTablesDialog(parent, table, link_table_to_try, link_cols_to_try, link_cols_to_try) if dlg.ShowModal() != wx.ID_OK: dlg.Destroy() return None col_pairs = dlg.get_column_pairs() src_cols = [col_pair[0][1] for col_pair in col_pairs] dest_cols = [col_pair[1][1] for col_pair in col_pairs] db.do_link_tables(table, link_table_to_try, src_cols, dest_cols) # return the newly linked table return table
def do_normalization(self): if not self.validate(): # Should be unreachable wx.MessageBox( 'Your normalization settings are invalid. Can\'t perform normalization.' ) long_cols = [ col for col in self.col_choices.GetCheckedStrings() if len(col) + 4 > 64 ] if long_cols: dlg = wx.MessageDialog( self, 'The following columns contain more ' 'than 64 characters when a normalization suffix (4 ' 'characters) is appended. This may cause a problem when ' 'writing to the database.\n %s' % ('\n'.join(long_cols)), 'Warning', wx.OK | wx.CANCEL | wx.ICON_EXCLAMATION) if dlg.ShowModal() == wx.ID_CANCEL: return dlg.Destroy() imkey_cols = dbconnect.image_key_columns() obkey_cols = dbconnect.object_key_columns() wellkey_cols = dbconnect.well_key_columns() im_clause = dbconnect.UniqueImageClause well_clause = dbconnect.UniqueWellClause input_table = self.table_choice.GetStringSelection() meas_cols = self.col_choices.GetCheckedStrings() wants_norm_meas = self.norm_meas_checkbox.IsChecked() wants_norm_factor = self.norm_factor_checkbox.IsChecked() output_table = self.output_table.Value FIRST_MEAS_INDEX = len(imkey_cols + (wellkey_cols or tuple())) if p.db_type == 'mysql': BATCH_SIZE = 100 else: BATCH_SIZE = 1 if input_table == p.object_table: FIRST_MEAS_INDEX += 1 # Original if wellkey_cols: if input_table == p.image_table: WELL_KEY_INDEX = len(imkey_cols) else: WELL_KEY_INDEX = len(imkey_cols) + 1 if db.table_exists(output_table): dlg = wx.MessageDialog( self, 'Are you sure you want to overwrite the table "%s"?' % (output_table), "Overwrite table?", wx.YES_NO | wx.NO_DEFAULT | wx.ICON_EXCLAMATION) if dlg.ShowModal() == wx.ID_NO: dlg.Destroy() return dlg.Destroy() # # First Get the data from the db. # if input_table == p.image_table: if wellkey_cols: # If there are well columns, fetch them. query = "SELECT %s, %s, %s FROM %s" % (im_clause( ), well_clause(), ', '.join(meas_cols), input_table) else: query = "SELECT %s, %s FROM %s" % ( im_clause(), ', '.join(meas_cols), input_table) elif input_table == p.object_table: if p.image_table and wellkey_cols: # If we have x and y from cells, we can use that for classifier if p.cell_x_loc and p.cell_y_loc: FIRST_MEAS_INDEX += 2 # Cell X and Y Location are fixed to for classifier # If there are well columns, fetch them from the per-image table. query = "SELECT %s, %s, %s, %s, %s FROM %s, %s WHERE %s" % ( dbconnect.UniqueObjectClause( p.object_table), well_clause(p.image_table), p.cell_x_loc, p.cell_y_loc, ', '.join([ '%s.%s' % (p.object_table, col) for col in meas_cols ]), p.image_table, p.object_table, ' AND '.join([ '%s.%s=%s.%s' % (p.image_table, c, p.object_table, c) for c in imkey_cols ])) else: # If there are well columns, fetch them from the per-image table. query = "SELECT %s, %s, %s FROM %s, %s WHERE %s" % ( dbconnect.UniqueObjectClause(p.object_table), well_clause(p.image_table), ', '.join([ '%s.%s' % (p.object_table, col) for col in meas_cols ]), p.image_table, p.object_table, ' AND '.join([ '%s.%s=%s.%s' % (p.image_table, c, p.object_table, c) for c in imkey_cols ])) else: if p.cell_x_loc and p.cell_y_loc: FIRST_MEAS_INDEX += 2 # Cell X and Y Location are fixed to for classifier query = "SELECT %s, %s, %s, %s FROM %s" % ( im_clause(), p.cell_x_loc, p.cell_y_loc, ', '.join(meas_cols), input_table) else: query = "SELECT %s, %s FROM %s" % ( im_clause(), ', '.join(meas_cols), input_table) if p.negative_control: # if the user defined negative control, we can use that to fetch the wellkeys neg_query = query + ' AND ' + p.negative_control # fetch all the negative control elements if wellkey_cols: query += " ORDER BY %s" % (well_clause(p.image_table)) dlg = wx.ProgressDialog('Computing normalized values', 'Querying database for raw data.', parent=self, style=wx.PD_CAN_ABORT | wx.PD_APP_MODAL) dlg.Pulse() # # MAKE THE QUERY # input_data = np.array(db.execute(query), dtype=object) if p.negative_control: import pandas as pd negative_control = pd.DataFrame(db.execute(neg_query), dtype=float) logging.info("# of objects in negative control: " + str(negative_control.shape[0])) logging.info("# of objects queried: " + str(input_data.shape[0])) neg_mean_plate = negative_control.groupby([WELL_KEY_INDEX]).mean() neg_std_plate = negative_control.groupby([WELL_KEY_INDEX]).std() output_columns = np.ones(input_data[:, FIRST_MEAS_INDEX:].shape) * np.nan output_factors = np.ones(input_data[:, FIRST_MEAS_INDEX:].shape) * np.nan for colnum, col in enumerate(input_data[:, FIRST_MEAS_INDEX:].T): keep_going, skip = dlg.Pulse("Normalizing column %d of %d" % (colnum + 1, len(meas_cols))) if not keep_going: dlg.Destroy() return norm_data = col.copy() for step_num, step_panel in enumerate(self.norm_steps): d = step_panel.get_configuration_dict() if d[norm.P_GROUPING] in (norm.G_QUADRANT, norm.G_WELL_NEIGHBORS): # Reshape data if normalization step is plate sensitive. assert p.plate_id and p.well_id well_keys = input_data[:, range(WELL_KEY_INDEX, FIRST_MEAS_INDEX - 2)] wellkeys_and_vals = np.hstack( (well_keys, np.array([norm_data]).T)) new_norm_data = [] for plate, plate_grp in groupby(wellkeys_and_vals, lambda row: row[0]): keys_and_vals = np.array(list(plate_grp)) plate_data, wks, ind = FormatPlateMapData( keys_and_vals) pnorm_data = norm.do_normalization_step( plate_data, **d) new_norm_data += pnorm_data.flatten()[ ind.flatten().tolist()].tolist() norm_data = new_norm_data elif d[norm.P_GROUPING] == norm.G_PLATE: assert p.plate_id and p.well_id if d[norm.P_AGG_TYPE] == norm.M_NEGCTRL: mean_plate_col = neg_mean_plate[colnum + FIRST_MEAS_INDEX] std_plate_col = neg_std_plate[colnum + FIRST_MEAS_INDEX] print(mean_plate_col) print(std_plate_col) well_keys = input_data[:, range(WELL_KEY_INDEX, FIRST_MEAS_INDEX - 2)] wellkeys_and_vals = np.hstack( (well_keys, np.array([norm_data]).T)) new_norm_data = [] # print wellkeys_and_vals for plate, plate_grp in groupby(wellkeys_and_vals, lambda row: row[0]): plate_data = np.array(list(plate_grp))[:, -1].flatten() pnorm_data = norm.do_normalization_step( plate_data, **d) if d[norm.P_AGG_TYPE] == norm.M_NEGCTRL: try: plate_mean = mean_plate_col[plate] plate_std = std_plate_col[plate] except: plate_mean = mean_plate_col[int(plate)] plate_std = std_plate_col[int(plate)] try: pnorm_data = (pnorm_data - plate_mean) / plate_std print(pnorm_data) except: logging.error( "Plate std is zero, division by zero!") new_norm_data += pnorm_data.tolist() norm_data = new_norm_data else: norm_data = norm.do_normalization_step(norm_data, **d) output_columns[:, colnum] = np.array(norm_data) output_factors[:, colnum] = col.astype(float) / np.array(norm_data, dtype=float) dlg.Destroy() return # Abort here for coding norm_table_cols = [] # Write new table db.execute('DROP TABLE IF EXISTS %s' % (output_table)) if input_table == p.image_table: norm_table_cols += dbconnect.image_key_columns() col_defs = ', '.join([ '%s %s' % (col, db.GetColumnTypeString(p.image_table, col)) for col in dbconnect.image_key_columns() ]) elif input_table == p.object_table: norm_table_cols += obkey_cols col_defs = ', '.join([ '%s %s' % (col, db.GetColumnTypeString(p.object_table, col)) for col in obkey_cols ]) if wellkey_cols: norm_table_cols += wellkey_cols col_defs += ', ' + ', '.join([ '%s %s' % (col, db.GetColumnTypeString(p.image_table, col)) for col in wellkey_cols ]) if input_table == p.object_table: if p.cell_x_loc and p.cell_y_loc: norm_table_cols += [p.cell_x_loc, p.cell_y_loc] col_defs += ', %s %s' % ( p.cell_x_loc, db.GetColumnTypeString(p.object_table, p.cell_x_loc) ) + ', ' + '%s %s' % (p.cell_y_loc, db.GetColumnTypeString( p.object_table, p.cell_y_loc)) if wants_norm_meas: col_defs += ', ' + ', '.join([ '%s_NmM %s' % (col, db.GetColumnTypeString(input_table, col)) for col in meas_cols ]) if wants_norm_factor: col_defs += ', ' + ', '.join([ '%s_NmF %s' % (col, db.GetColumnTypeString(input_table, col)) for col in meas_cols ]) for col in meas_cols: if wants_norm_meas: norm_table_cols += ['%s_NmM' % (col)] if wants_norm_factor: norm_table_cols += ['%s_NmF' % (col)] db.execute('CREATE TABLE %s (%s)' % (output_table, col_defs)) dlg = wx.ProgressDialog('Writing to "%s"' % (output_table), "Writing normalized values to database", maximum=output_columns.shape[0], parent=self, style=wx.PD_CAN_ABORT | wx.PD_APP_MODAL | wx.PD_ELAPSED_TIME | wx.PD_ESTIMATED_TIME | wx.PD_REMAINING_TIME) cmd = 'INSERT INTO %s VALUES ' % (output_table) cmdi = cmd for i, (val, factor) in enumerate(zip(output_columns, output_factors)): cmdi += '(' + ','.join(['"%s"'] * len(norm_table_cols)) + ')' if wants_norm_meas and wants_norm_factor: cmdi = cmdi % tuple( list(input_data[i, :FIRST_MEAS_INDEX]) + [ 'NULL' if (np.isnan(x) or np.isinf(x)) else x for x in val ] + [ 'NULL' if (np.isnan(x) or np.isinf(x)) else x for x in factor ]) elif wants_norm_meas: cmdi = cmdi % tuple( list(input_data[i, :FIRST_MEAS_INDEX]) + [ 'NULL' if (np.isnan(x) or np.isinf(x)) else x for x in val ]) elif wants_norm_factor: cmdi = cmdi % tuple( list(input_data[i, :FIRST_MEAS_INDEX]) + [ 'NULL' if (np.isnan(x) or np.isinf(x)) else x for x in factor ]) if (i + 1) % BATCH_SIZE == 0 or i == len(output_columns) - 1: db.execute(str(cmdi)) cmdi = cmd # update status dialog (keep_going, skip) = dlg.Update(i) if not keep_going: break else: cmdi += ',\n' dlg.Destroy() db.Commit() # # Update table linkage # if db.get_linking_tables(input_table, output_table) is not None: db.do_unlink_table(output_table) if input_table == p.image_table: db.do_link_tables(output_table, input_table, imkey_cols, imkey_cols) elif input_table == p.object_table: db.do_link_tables(output_table, input_table, obkey_cols, obkey_cols) # # Show the resultant table # import tableviewer tv = tableviewer.TableViewer(ui.get_main_frame_or_none()) tv.Show() tv.load_db_table(output_table)
def do_normalization(self): if not self.validate(): # Should be unreachable wx.MessageBox( 'Your normalization settings are invalid. Can\'t perform normalization.' ) long_cols = [ col for col in self.col_choices.GetCheckedStrings() if len(col) + 4 > 64 ] if long_cols: dlg = wx.MessageDialog( self, 'The following columns contain more ' 'than 64 characters when a normalization suffix (4 ' 'characters) is appended. This may cause a problem when ' 'writing to the database.\n %s' % ('\n'.join(long_cols)), 'Warning', wx.OK | wx.CANCEL | wx.ICON_EXCLAMATION) if dlg.ShowModal() == wx.ID_CANCEL: return dlg.Destroy() imkey_cols = dbconnect.image_key_columns() obkey_cols = dbconnect.object_key_columns() wellkey_cols = dbconnect.well_key_columns() im_clause = dbconnect.UniqueImageClause well_clause = dbconnect.UniqueWellClause input_table = self.table_choice.GetStringSelection() meas_cols = self.col_choices.GetCheckedStrings() wants_norm_meas = self.norm_meas_checkbox.IsChecked() wants_norm_factor = self.norm_factor_checkbox.IsChecked() output_table = self.output_table.Value FIRST_MEAS_INDEX = len(imkey_cols + (wellkey_cols or tuple())) if p.db_type == 'mysql': BATCH_SIZE = 100 else: BATCH_SIZE = 1 if input_table == p.object_table: FIRST_MEAS_INDEX += 1 # Original if wellkey_cols: if input_table == p.image_table: WELL_KEY_INDEX = len(imkey_cols) else: WELL_KEY_INDEX = len(imkey_cols) + 1 if db.table_exists(output_table): dlg = wx.MessageDialog( self, 'Are you sure you want to overwrite the table "%s"?' % (output_table), "Overwrite table?", wx.YES_NO | wx.NO_DEFAULT | wx.ICON_EXCLAMATION) if dlg.ShowModal() == wx.ID_NO: dlg.Destroy() return dlg.Destroy() # # First Get the data from the db. # if input_table == p.image_table: if wellkey_cols: # If there are well columns, fetch them. query = "SELECT %s, %s, %s FROM %s" % (im_clause( ), well_clause(), ', '.join(meas_cols), input_table) else: query = "SELECT %s, %s FROM %s" % ( im_clause(), ', '.join(meas_cols), input_table) elif input_table == p.object_table: if p.image_table and wellkey_cols: # If we have x and y from cells, we can use that for classifier if p.cell_x_loc and p.cell_y_loc: FIRST_MEAS_INDEX += 2 # Cell X and Y Location are fixed to for classifier # If there are well columns, fetch them from the per-image table. query = "SELECT %s, %s, %s, %s, %s FROM %s, %s WHERE %s" % ( dbconnect.UniqueObjectClause( p.object_table), well_clause(p.image_table), p.cell_x_loc, p.cell_y_loc, ', '.join([ '%s.%s' % (p.object_table, col) for col in meas_cols ]), p.image_table, p.object_table, ' AND '.join([ '%s.%s=%s.%s' % (p.image_table, c, p.object_table, c) for c in imkey_cols ])) else: # If there are well columns, fetch them from the per-image table. query = "SELECT %s, %s, %s FROM %s, %s WHERE %s" % ( dbconnect.UniqueObjectClause(p.object_table), well_clause(p.image_table), ', '.join([ '%s.%s' % (p.object_table, col) for col in meas_cols ]), p.image_table, p.object_table, ' AND '.join([ '%s.%s=%s.%s' % (p.image_table, c, p.object_table, c) for c in imkey_cols ])) else: if p.cell_x_loc and p.cell_y_loc: FIRST_MEAS_INDEX += 2 # Cell X and Y Location are fixed to for classifier query = "SELECT %s, %s, %s, %s FROM %s" % ( im_clause(), p.cell_x_loc, p.cell_y_loc, ', '.join(meas_cols), input_table) else: query = "SELECT %s, %s FROM %s" % ( im_clause(), ', '.join(meas_cols), input_table) if p.negative_control: # if the user defined negative control, we can use that to fetch the wellkeys neg_query = query + ' AND ' + p.negative_control # fetch all the negative control elements if wellkey_cols: query += " ORDER BY %s" % (well_clause(p.image_table)) dlg = wx.ProgressDialog('Computing normalized values', 'Querying database for raw data.', parent=self, style=wx.PD_CAN_ABORT | wx.PD_APP_MODAL) dlg.Pulse() # # MAKE THE QUERY # input_data = np.array(db.execute(query), dtype=object) if p.negative_control: import pandas as pd negative_control = pd.DataFrame(db.execute(neg_query), dtype=float) logging.info("# of objects in negative control: " + str(negative_control.shape[0])) logging.info("# of objects queried: " + str(input_data.shape[0])) neg_mean_plate = negative_control.groupby([WELL_KEY_INDEX]).mean() neg_std_plate = negative_control.groupby([WELL_KEY_INDEX]).std() output_columns = np.ones(input_data[:, FIRST_MEAS_INDEX:].shape) * np.nan output_factors = np.ones(input_data[:, FIRST_MEAS_INDEX:].shape) * np.nan for colnum, col in enumerate(input_data[:, FIRST_MEAS_INDEX:].T): keep_going, skip = dlg.Pulse("Normalizing column %d of %d" % (colnum + 1, len(meas_cols))) if not keep_going: dlg.Destroy() return norm_data = col.copy() for step_num, step_panel in enumerate(self.norm_steps): d = step_panel.get_configuration_dict() if d[norm.P_GROUPING] in (norm.G_QUADRANT, norm.G_WELL_NEIGHBORS): # Reshape data if normalization step is plate sensitive. assert p.plate_id and p.well_id well_keys = input_data[:, range(WELL_KEY_INDEX, FIRST_MEAS_INDEX - 2)] wellkeys_and_vals = np.hstack( (well_keys, np.array([norm_data]).T)) new_norm_data = [] for plate, plate_grp in groupby(wellkeys_and_vals, lambda (row): row[0]): keys_and_vals = np.array(list(plate_grp)) plate_data, wks, ind = FormatPlateMapData( keys_and_vals) pnorm_data = norm.do_normalization_step( plate_data, **d) new_norm_data += pnorm_data.flatten()[ ind.flatten().tolist()].tolist() norm_data = new_norm_data elif d[norm.P_GROUPING] == norm.G_PLATE: assert p.plate_id and p.well_id if d[norm.P_AGG_TYPE] == norm.M_NEGCTRL: mean_plate_col = neg_mean_plate[colnum + FIRST_MEAS_INDEX] std_plate_col = neg_std_plate[colnum + FIRST_MEAS_INDEX] print mean_plate_col print std_plate_col well_keys = input_data[:, range(WELL_KEY_INDEX, FIRST_MEAS_INDEX - 2)] wellkeys_and_vals = np.hstack( (well_keys, np.array([norm_data]).T)) new_norm_data = [] # print wellkeys_and_vals for plate, plate_grp in groupby(wellkeys_and_vals, lambda (row): row[0]): plate_data = np.array(list(plate_grp))[:, -1].flatten() pnorm_data = norm.do_normalization_step( plate_data, **d) if d[norm.P_AGG_TYPE] == norm.M_NEGCTRL: try: plate_mean = mean_plate_col[plate] plate_std = std_plate_col[plate] except: plate_mean = mean_plate_col[int(plate)] plate_std = std_plate_col[int(plate)] try: pnorm_data = (pnorm_data - plate_mean) / plate_std print pnorm_data except: logging.error( "Plate std is zero, division by zero!") new_norm_data += pnorm_data.tolist() norm_data = new_norm_data
def do_normalization(self): if not self.validate(): # Should be unreachable wx.MessageBox('Your normalization settings are invalid. Can\'t perform normalization.') long_cols = [col for col in self.col_choices.GetCheckedStrings() if len(col) + 4 > 64] if long_cols: dlg = wx.MessageDialog(self, 'The following columns contain more ' 'than 64 characters when a normalization suffix (4 ' 'characters) is appended. This may cause a problem when ' 'writing to the database.\n %s'%('\n'.join(long_cols)), 'Warning', wx.OK|wx.CANCEL|wx.ICON_EXCLAMATION) if dlg.ShowModal() == wx.ID_CANCEL: return dlg.Destroy() imkey_cols = dbconnect.image_key_columns() obkey_cols = dbconnect.object_key_columns() wellkey_cols = dbconnect.well_key_columns() im_clause = dbconnect.UniqueImageClause well_clause = dbconnect.UniqueWellClause input_table = self.table_choice.GetStringSelection() meas_cols = self.col_choices.GetCheckedStrings() wants_norm_meas = self.norm_meas_checkbox.IsChecked() wants_norm_factor = self.norm_factor_checkbox.IsChecked() output_table = self.output_table.Value FIRST_MEAS_INDEX = len(imkey_cols + (wellkey_cols or tuple())) if p.db_type == 'mysql': BATCH_SIZE = 100 else: BATCH_SIZE = 1 if input_table == p.object_table: FIRST_MEAS_INDEX += 1 # Original if wellkey_cols: if input_table == p.image_table: WELL_KEY_INDEX = len(imkey_cols) else: WELL_KEY_INDEX = len(imkey_cols) + 1 if db.table_exists(output_table): dlg = wx.MessageDialog(self, 'Are you sure you want to overwrite the table "%s"?'%(output_table), "Overwrite table?", wx.YES_NO|wx.NO_DEFAULT|wx.ICON_EXCLAMATION) if dlg.ShowModal() == wx.ID_NO: dlg.Destroy() return dlg.Destroy() # # First Get the data from the db. # if input_table == p.image_table: if wellkey_cols: # If there are well columns, fetch them. query = "SELECT %s, %s, %s FROM %s"%( im_clause(), well_clause(), ', '.join(meas_cols), input_table) else: query = "SELECT %s, %s FROM %s"%( im_clause(), ', '.join(meas_cols), input_table) elif input_table == p.object_table: if p.image_table and wellkey_cols: # If we have x and y from cells, we can use that for classifier if p.cell_x_loc and p.cell_y_loc: FIRST_MEAS_INDEX += 2 # Cell X and Y Location are fixed to for classifier # If there are well columns, fetch them from the per-image table. query = "SELECT %s, %s, %s, %s, %s FROM %s, %s WHERE %s"%( dbconnect.UniqueObjectClause(p.object_table), well_clause(p.image_table), p.cell_x_loc, p.cell_y_loc, ', '.join(['%s.%s'%(p.object_table, col) for col in meas_cols]), p.image_table, p.object_table, ' AND '.join(['%s.%s=%s.%s'%(p.image_table, c, p.object_table, c) for c in imkey_cols]) ) else: # If there are well columns, fetch them from the per-image table. query = "SELECT %s, %s, %s FROM %s, %s WHERE %s"%( dbconnect.UniqueObjectClause(p.object_table), well_clause(p.image_table), ', '.join(['%s.%s'%(p.object_table, col) for col in meas_cols]), p.image_table, p.object_table, ' AND '.join(['%s.%s=%s.%s'%(p.image_table, c, p.object_table, c) for c in imkey_cols]) ) else: if p.cell_x_loc and p.cell_y_loc: FIRST_MEAS_INDEX += 2 # Cell X and Y Location are fixed to for classifier query = "SELECT %s, %s, %s, %s FROM %s"%( im_clause(), p.cell_x_loc, p.cell_y_loc, ', '.join(meas_cols), input_table) else: query = "SELECT %s, %s FROM %s"%( im_clause(), ', '.join(meas_cols), input_table) if p.negative_control: # if the user defined negative control, we can use that to fetch the wellkeys neg_query = query + ' AND ' + p.negative_control # fetch all the negative control elements if wellkey_cols: query += " ORDER BY %s"%(well_clause(p.image_table)) dlg = wx.ProgressDialog('Computing normalized values', 'Querying database for raw data.', parent=self, style = wx.PD_CAN_ABORT|wx.PD_APP_MODAL) dlg.Pulse() # # MAKE THE QUERY # input_data = np.array(db.execute(query), dtype=object) if p.negative_control: import pandas as pd negative_control = pd.DataFrame(db.execute(neg_query), dtype=float) logging.info("# of objects in negative control: " + str(negative_control.shape[0])) logging.info("# of objects queried: " + str(input_data.shape[0])) neg_mean_plate = negative_control.groupby([WELL_KEY_INDEX]).mean() neg_std_plate = negative_control.groupby([WELL_KEY_INDEX]).std() output_columns = np.ones(input_data[:,FIRST_MEAS_INDEX:].shape) * np.nan output_factors = np.ones(input_data[:,FIRST_MEAS_INDEX:].shape) * np.nan for colnum, col in enumerate(input_data[:,FIRST_MEAS_INDEX:].T): keep_going, skip = dlg.Pulse("Normalizing column %d of %d"%(colnum+1, len(meas_cols))) if not keep_going: dlg.Destroy() return norm_data = col.copy() for step_num, step_panel in enumerate(self.norm_steps): d = step_panel.get_configuration_dict() if d[norm.P_GROUPING] in (norm.G_QUADRANT, norm.G_WELL_NEIGHBORS): # Reshape data if normalization step is plate sensitive. assert p.plate_id and p.well_id well_keys = input_data[:, range(WELL_KEY_INDEX, FIRST_MEAS_INDEX - 2) ] wellkeys_and_vals = np.hstack((well_keys, np.array([norm_data]).T)) new_norm_data = [] for plate, plate_grp in groupby(wellkeys_and_vals, lambda row: row[0]): keys_and_vals = np.array(list(plate_grp)) plate_data, wks, ind = FormatPlateMapData(keys_and_vals) pnorm_data = norm.do_normalization_step(plate_data, **d) new_norm_data += pnorm_data.flatten()[ind.flatten().tolist()].tolist() norm_data = new_norm_data elif d[norm.P_GROUPING] == norm.G_PLATE: assert p.plate_id and p.well_id if d[norm.P_AGG_TYPE] == norm.M_NEGCTRL: mean_plate_col = neg_mean_plate[colnum + FIRST_MEAS_INDEX] std_plate_col = neg_std_plate[colnum + FIRST_MEAS_INDEX] print(mean_plate_col) print(std_plate_col) well_keys = input_data[:, range(WELL_KEY_INDEX, FIRST_MEAS_INDEX - 2)] wellkeys_and_vals = np.hstack((well_keys, np.array([norm_data]).T)) new_norm_data = [] # print wellkeys_and_vals for plate, plate_grp in groupby(wellkeys_and_vals, lambda row: row[0]): plate_data = np.array(list(plate_grp))[:,-1].flatten() pnorm_data = norm.do_normalization_step(plate_data, **d) if d[norm.P_AGG_TYPE] == norm.M_NEGCTRL: try: plate_mean = mean_plate_col[plate] plate_std = std_plate_col[plate] except: plate_mean = mean_plate_col[int(plate)] plate_std = std_plate_col[int(plate)] try: pnorm_data = (pnorm_data - plate_mean) / plate_std print(pnorm_data) except: logging.error("Plate std is zero, division by zero!") new_norm_data += pnorm_data.tolist() norm_data = new_norm_data else: norm_data = norm.do_normalization_step(norm_data, **d) output_columns[:,colnum] = np.array(norm_data) output_factors[:,colnum] = col.astype(float) / np.array(norm_data,dtype=float) dlg.Destroy() return # Abort here for coding norm_table_cols = [] # Write new table db.execute('DROP TABLE IF EXISTS %s'%(output_table)) if input_table == p.image_table: norm_table_cols += dbconnect.image_key_columns() col_defs = ', '.join(['%s %s'%(col, db.GetColumnTypeString(p.image_table, col)) for col in dbconnect.image_key_columns()]) elif input_table == p.object_table: norm_table_cols += obkey_cols col_defs = ', '.join(['%s %s'%(col, db.GetColumnTypeString(p.object_table, col)) for col in obkey_cols]) if wellkey_cols: norm_table_cols += wellkey_cols col_defs += ', '+ ', '.join(['%s %s'%(col, db.GetColumnTypeString(p.image_table, col)) for col in wellkey_cols]) if input_table == p.object_table: if p.cell_x_loc and p.cell_y_loc: norm_table_cols += [p.cell_x_loc, p.cell_y_loc] col_defs += ', %s %s'%(p.cell_x_loc, db.GetColumnTypeString(p.object_table, p.cell_x_loc)) + ', ' + '%s %s'%(p.cell_y_loc, db.GetColumnTypeString(p.object_table, p.cell_y_loc)) if wants_norm_meas: col_defs += ', '+ ', '.join(['%s_NmM %s'%(col, db.GetColumnTypeString(input_table, col)) for col in meas_cols]) if wants_norm_factor: col_defs += ', '+ ', '.join(['%s_NmF %s'%(col, db.GetColumnTypeString(input_table, col)) for col in meas_cols]) for col in meas_cols: if wants_norm_meas: norm_table_cols += ['%s_NmM'%(col)] if wants_norm_factor: norm_table_cols += ['%s_NmF'%(col)] db.execute('CREATE TABLE %s (%s)'%(output_table, col_defs)) dlg = wx.ProgressDialog('Writing to "%s"'%(output_table), "Writing normalized values to database", maximum = output_columns.shape[0], parent=self, style = wx.PD_CAN_ABORT|wx.PD_APP_MODAL|wx.PD_ELAPSED_TIME|wx.PD_ESTIMATED_TIME|wx.PD_REMAINING_TIME) cmd = 'INSERT INTO %s VALUES '%(output_table) cmdi = cmd for i, (val, factor) in enumerate(zip(output_columns, output_factors)): cmdi += '(' + ','.join(['"%s"']*len(norm_table_cols)) + ')' if wants_norm_meas and wants_norm_factor: cmdi = cmdi%tuple(list(input_data[i, :FIRST_MEAS_INDEX]) + ['NULL' if (np.isnan(x) or np.isinf(x)) else x for x in val] + ['NULL' if (np.isnan(x) or np.isinf(x)) else x for x in factor]) elif wants_norm_meas: cmdi = cmdi%tuple(list(input_data[i, :FIRST_MEAS_INDEX]) + ['NULL' if (np.isnan(x) or np.isinf(x)) else x for x in val]) elif wants_norm_factor: cmdi = cmdi%tuple(list(input_data[i, :FIRST_MEAS_INDEX]) + ['NULL' if (np.isnan(x) or np.isinf(x)) else x for x in factor]) if (i+1) % BATCH_SIZE == 0 or i==len(output_columns)-1: db.execute(str(cmdi)) cmdi = cmd # update status dialog (keep_going, skip) = dlg.Update(i) if not keep_going: break else: cmdi += ',\n' dlg.Destroy() db.Commit() # # Update table linkage # if db.get_linking_tables(input_table, output_table) is not None: db.do_unlink_table(output_table) if input_table == p.image_table: db.do_link_tables(output_table, input_table, imkey_cols, imkey_cols) elif input_table == p.object_table: db.do_link_tables(output_table, input_table, obkey_cols, obkey_cols) # # Show the resultant table # import tableviewer tv = tableviewer.TableViewer(ui.get_main_frame_or_none()) tv.Show() tv.load_db_table(output_table)
def do_normalization(self): if not self.validate(): # Should be unreachable wx.MessageBox('Your normalization settings are invalid. Can\'t perform normalization.') long_cols = [col for col in self.col_choices.GetCheckedStrings() if len(col) + 4 > 64] if long_cols: dlg = wx.MessageDialog(self, 'The following columns contain more ' 'than 64 characters when a normalization suffix (4 ' 'characters) is appended. This may cause a problem when ' 'writing to the database.\n %s'%('\n'.join(long_cols)), 'Warning', wx.OK|wx.CANCEL|wx.ICON_EXCLAMATION) if dlg.ShowModal() == wx.ID_CANCEL: return dlg.Destroy() imkey_cols = dbconnect.image_key_columns() obkey_cols = dbconnect.object_key_columns() wellkey_cols = dbconnect.well_key_columns() im_clause = dbconnect.UniqueImageClause well_clause = dbconnect.UniqueWellClause input_table = self.table_choice.GetStringSelection() meas_cols = self.col_choices.GetCheckedStrings() wants_norm_meas = self.norm_meas_checkbox.IsChecked() wants_norm_factor = self.norm_factor_checkbox.IsChecked() output_table = self.output_table.Value FIRST_MEAS_INDEX = len(imkey_cols + (wellkey_cols or tuple())) if p.db_type == 'mysql': BATCH_SIZE = 100 else: BATCH_SIZE = 1 if input_table == p.object_table: FIRST_MEAS_INDEX += 1 # Original if wellkey_cols: if input_table == p.image_table: WELL_KEY_INDEX = len(imkey_cols) else: WELL_KEY_INDEX = len(imkey_cols) + 1 if db.table_exists(output_table): dlg = wx.MessageDialog(self, 'Are you sure you want to overwrite the table "%s"?'%(output_table), "Overwrite table?", wx.YES_NO|wx.NO_DEFAULT|wx.ICON_EXCLAMATION) if dlg.ShowModal() == wx.ID_NO: dlg.Destroy() return dlg.Destroy() # # First Get the data from the db. # if input_table == p.image_table: if wellkey_cols: # If there are well columns, fetch them. query = "SELECT %s, %s, %s FROM %s"%( im_clause(), well_clause(), ', '.join(meas_cols), input_table) else: query = "SELECT %s, %s FROM %s"%( im_clause(), ', '.join(meas_cols), input_table) elif input_table == p.object_table: if p.image_table and wellkey_cols: # If we have x and y from cells, we can use that for classifier if p.cell_x_loc and p.cell_y_loc: FIRST_MEAS_INDEX += 2 # Cell X and Y Location are fixed to for classifier # If there are well columns, fetch them from the per-image table. query = "SELECT %s, %s, %s, %s, %s FROM %s, %s WHERE %s"%( dbconnect.UniqueObjectClause(p.object_table), well_clause(p.image_table), p.cell_x_loc, p.cell_y_loc, ', '.join(['%s.%s'%(p.object_table, col) for col in meas_cols]), p.image_table, p.object_table, ' AND '.join(['%s.%s=%s.%s'%(p.image_table, c, p.object_table, c) for c in imkey_cols]) ) else: # If there are well columns, fetch them from the per-image table. query = "SELECT %s, %s, %s FROM %s, %s WHERE %s"%( dbconnect.UniqueObjectClause(p.object_table), well_clause(p.image_table), ', '.join(['%s.%s'%(p.object_table, col) for col in meas_cols]), p.image_table, p.object_table, ' AND '.join(['%s.%s=%s.%s'%(p.image_table, c, p.object_table, c) for c in imkey_cols]) ) else: if p.cell_x_loc and p.cell_y_loc: FIRST_MEAS_INDEX += 2 # Cell X and Y Location are fixed to for classifier query = "SELECT %s, %s, %s, %s FROM %s"%( im_clause(), p.cell_x_loc, p.cell_y_loc, ', '.join(meas_cols), input_table) else: query = "SELECT %s, %s FROM %s"%( im_clause(), ', '.join(meas_cols), input_table) if p.negative_control: # if the user defined negative control, we can use that to fetch the wellkeys neg_query = query + ' AND ' + p.negative_control # fetch all the negative control elements if wellkey_cols: query += " ORDER BY %s"%(well_clause(p.image_table)) dlg = wx.ProgressDialog('Computing normalized values', 'Querying database for raw data.', parent=self, style = wx.PD_CAN_ABORT|wx.PD_APP_MODAL) dlg.Pulse() # # MAKE THE QUERY # input_data = np.array(db.execute(query), dtype=object) if p.negative_control: import pandas as pd negative_control = pd.DataFrame(db.execute(neg_query), dtype=float) logging.info("# of objects in negative control: " + str(negative_control.shape[0])) logging.info("# of objects queried: " + str(input_data.shape[0])) neg_mean_plate = negative_control.groupby([WELL_KEY_INDEX]).mean() neg_std_plate = negative_control.groupby([WELL_KEY_INDEX]).std() output_columns = np.ones(input_data[:,FIRST_MEAS_INDEX:].shape) * np.nan output_factors = np.ones(input_data[:,FIRST_MEAS_INDEX:].shape) * np.nan for colnum, col in enumerate(input_data[:,FIRST_MEAS_INDEX:].T): keep_going, skip = dlg.Pulse("Normalizing column %d of %d"%(colnum+1, len(meas_cols))) if not keep_going: dlg.Destroy() return norm_data = col.copy() for step_num, step_panel in enumerate(self.norm_steps): d = step_panel.get_configuration_dict() if d[norm.P_GROUPING] in (norm.G_QUADRANT, norm.G_WELL_NEIGHBORS): # Reshape data if normalization step is plate sensitive. assert p.plate_id and p.well_id well_keys = input_data[:, range(WELL_KEY_INDEX, FIRST_MEAS_INDEX - 2) ] wellkeys_and_vals = np.hstack((well_keys, np.array([norm_data]).T)) new_norm_data = [] for plate, plate_grp in groupby(wellkeys_and_vals, lambda(row): row[0]): keys_and_vals = np.array(list(plate_grp)) plate_data, wks, ind = FormatPlateMapData(keys_and_vals) pnorm_data = norm.do_normalization_step(plate_data, **d) new_norm_data += pnorm_data.flatten()[ind.flatten().tolist()].tolist() norm_data = new_norm_data elif d[norm.P_GROUPING] == norm.G_PLATE: assert p.plate_id and p.well_id if d[norm.P_AGG_TYPE] == norm.M_NEGCTRL: mean_plate_col = neg_mean_plate[colnum + FIRST_MEAS_INDEX] std_plate_col = neg_std_plate[colnum + FIRST_MEAS_INDEX] print mean_plate_col print std_plate_col well_keys = input_data[:, range(WELL_KEY_INDEX, FIRST_MEAS_INDEX - 2)] wellkeys_and_vals = np.hstack((well_keys, np.array([norm_data]).T)) new_norm_data = [] # print wellkeys_and_vals for plate, plate_grp in groupby(wellkeys_and_vals, lambda(row): row[0]): plate_data = np.array(list(plate_grp))[:,-1].flatten() pnorm_data = norm.do_normalization_step(plate_data, **d) if d[norm.P_AGG_TYPE] == norm.M_NEGCTRL: try: plate_mean = mean_plate_col[plate] plate_std = std_plate_col[plate] except: plate_mean = mean_plate_col[int(plate)] plate_std = std_plate_col[int(plate)] try: pnorm_data = (pnorm_data - plate_mean) / plate_std print pnorm_data except: logging.error("Plate std is zero, division by zero!") new_norm_data += pnorm_data.tolist() norm_data = new_norm_data