Update pages/keratinocytes_scVI_integration.py
Browse files
pages/keratinocytes_scVI_integration.py
CHANGED
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@@ -9,7 +9,8 @@ import dash_callback_chain
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import yaml
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import polars as pl
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import os
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dash.register_page(__name__, location="sidebar")
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@@ -48,171 +49,27 @@ col_mt = config.get("col_mt")
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#filepath = f"az://{path_parquet}"
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storage_options={'account_name': AZURE_STORAGE_ACCOUNT, 'account_key': AZURE_STORAGE_ACCESS_KEY}
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#azfs = AzureBlobFileSystem(**storage_options )
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# Load in multiple dataframes
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df = pl.scan_parquet(f"az://{dataset}.parquet", storage_options=storage_options).collect()
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# Setup the app
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#external_stylesheets = ['https://codepen.io/chriddyp/pen/bWLwgP.css']
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#app = dash.Dash(__name__, use_pages=True) #, requests_pathname_prefix='/dashboard1/'
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#df = pl.read_parquet(filepath,storage_options=storage_options)
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#df = pl.DataFrame()
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#abfs = AzureBlobFileSystem(account_name=accountname,account_key=accountkey)
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#df = df.rename({"__index_level_0__": "Unnamed: 0"})
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#df1 = pl.read_parquet(filepath, storage_options=storage_options)
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#df2 = pl.read_parquet(f"az://data10xflex/{dataset_chosen}.parquet", storage_options=storage_options)
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#tab0_content = html.Div([
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# html.Label("Dataset chosen"),
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# dcc.Dropdown(id='dpdn1', value="corg/10xflexcorg_umap_clusres", multi=False,
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# options=["corg/10xflexcorg_umap_clusres","d1011/10xflexd1011_umap_clusres"])
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#])
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#@app.callback(
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# Input(component_id='dpdn1', component_property='value')
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#)
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#def update_filepath(dpdn1):
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# global df
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# if str(f"az://data10xflex/{dpdn1}.parquet") != str(filepath):
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# print("not identical filepath, chosing other")
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# df2 = pl.read_parquet(f"az://data10xflex/{dpdn1}.parquet", storage_options=storage_options)
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# df = df2
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# return
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#df = pl.read_parquet(filepath, storage_options=storage_options)
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min_value = df[col_features].min()
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max_value = df[col_features].max()
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min_value_2 = df[col_counts].min()
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min_value_2 = round(min_value_2)
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max_value_2 = df[col_counts].max()
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max_value_2 = round(max_value_2)
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min_value_3 = df[col_mt].min()
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min_value_3 = round(min_value_3, 1)
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max_value_3 = df[col_mt].max()
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max_value_3 = round(max_value_3, 1)
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# Loads in the conditions specified in the yaml file
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# Note: Future version perhaps all values from a column in the dataframe of the parquet file
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# Note 2: This could also be a tsv of the categories and own specified colors
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#conditions = df[col_batch].unique().to_list()
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# Create the first tab content
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# Add Sliders for three QC params: N genes by counts, total amount of reads and pct MT reads
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tab1_content = html.Div([
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html.Label("Column chosen"),
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dcc.Dropdown(id='dpdn2', value="batch", multi=False,
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options=df.columns),
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html.Label("N Genes by Counts"),
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dcc.RangeSlider(
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id='range-slider_db2-1',
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step=250,
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value=[min_value, max_value],
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marks={i: str(i) for i in range(min_value, max_value + 1, 250)},
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),
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dcc.Input(id='min-slider_db2-1', type='number', value=min_value, debounce=True),
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dcc.Input(id='max-slider_db2-1', type='number', value=max_value, debounce=True),
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html.Label("Total Counts"),
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dcc.RangeSlider(
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id='range-slider_db2-2',
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step=7500,
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value=[min_value_2, max_value_2],
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marks={i: str(i) for i in range(min_value_2, max_value_2 + 1, 7500)},
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),
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dcc.Input(id='min-slider_db2-2', type='number', value=min_value_2, debounce=True),
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dcc.Input(id='max-slider_db2-2', type='number', value=max_value_2, debounce=True),
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html.Label("Percent Mitochondrial Genes"),
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dcc.RangeSlider(
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id='range-slider_db2-3',
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step=5,
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min=0,
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max=100,
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value=[min_value_3, max_value_3],
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),
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dcc.Input(id='min-slider_db2-3', type='number', value=min_value_3, debounce=True),
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dcc.Input(id='max-slider_db2-3', type='number', value=max_value_3, debounce=True),
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html.Div([
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dcc.Graph(id='pie-graph_db2', figure={}, className='four columns',config=config_fig),
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dcc.Graph(id='my-graph_db2', figure={}, clickData=None, hoverData=None,
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className='four columns',config=config_fig
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),
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dcc.Graph(id='scatter-plot_db2', figure={}, className='four columns',config=config_fig)
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]),
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html.Div([
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dcc.Graph(id='scatter-plot_db2-2', figure={}, className='four columns',config=config_fig)
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]),
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html.Div([
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dcc.Graph(id='scatter-plot_db2-3', figure={}, className='four columns',config=config_fig)
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]),
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html.Div([
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dcc.Graph(id='scatter-plot_db2-4', figure={}, className='four columns',config=config_fig)
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]),
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])
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# Create the second tab content with scatter-plot_db2-5 and scatter-plot_db2-6
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tab2_content = html.Div([
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html.Div([
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html.Label("S-cycle genes"),
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dcc.Dropdown(id='dpdn3', value="MCM5", multi=False,
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options=[
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"FEN1",
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"MCM2",
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"MCM4",
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"RRM1",
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"UNG",
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"GINS2",
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"MCM6",
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"CDCA7",
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"DTL",
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"PRIM1",
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"UHRF1",
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"MLF1IP",
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"HELLS",
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"RFC2",
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"RPA2",
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"NASP",
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"RAD51AP1",
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"GMNN",
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"WDR76",
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"SLBP",
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"CCNE2",
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"UBR7",
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"POLD3",
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"MSH2",
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"ATAD2",
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"RAD51",
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"RRM2",
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"CDC45",
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"CDC6",
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"EXO1",
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"TIPIN",
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"DSCC1",
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"BLM",
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"CASP8AP2",
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"USP1",
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"CLSPN",
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"POLA1",
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"CHAF1B",
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"BRIP1",
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"E2F8"
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]),
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html.Label("G2M-cycle genes"),
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dcc.Dropdown(id='dpdn4', value="TOP2A", multi=False,
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options=[
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]),
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html.Div([
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dcc.Graph(id='scatter-plot_db2-5', figure={}, className='three columns',config=config_fig)
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@@ -235,13 +92,13 @@ tab3_content = html.Div([
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dcc.Dropdown(id='dpdn5', value="batch", multi=False,
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options=df.columns),
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html.Label("UMAP condition 2"),
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dcc.Dropdown(id='dpdn6', value="
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options=df.columns),
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html.Div([
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dcc.Graph(id='scatter-plot_db2-9', figure={}, className='four columns',config=config_fig)
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]),
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html.Div([
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dcc.Graph(id='scatter-plot_db2-10', figure={}, className='four columns',config=config_fig)
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]),
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html.Div([
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dcc.Graph(id='scatter-plot_db2-11', figure={}, className='four columns',config=config_fig)
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@@ -253,12 +110,11 @@ tab3_content = html.Div([
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]),
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]),
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])
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# html.Div([
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# dcc.Graph(id='scatter-plot_db2-12', figure={}, className='four columns',config=config_fig)
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# ]),
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tab4_content = html.Div([
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html.Div([
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html.Label("Multi gene"),
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dcc.Dropdown(id='dpdn7', value=["PAX6","TP63","S100A9","KRT5","KRT14","KRT10"], multi=True,
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@@ -276,54 +132,14 @@ layout = html.Div([
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'font-size': '100%',
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'height': 50}, value='tab1',children=[
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#dcc.Tab(label='Dataset', value='tab0', children=tab0_content),
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dcc.Tab(label='QC', value='tab1', children=tab1_content),
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dcc.Tab(label='
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dcc.Tab(label='Custom', value='tab3', children=tab3_content),
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dcc.Tab(label='Multi dot', value='tab4', children=tab4_content),
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]),
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])
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# Define the circular callback
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@callback(
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Output("min-slider_db2-1", "value"),
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Output("max-slider_db2-1", "value"),
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Output("min-slider_db2-2", "value"),
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Output("max-slider_db2-2", "value"),
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Output("min-slider_db2-3", "value"),
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Output("max-slider_db2-3", "value"),
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Input("min-slider_db2-1", "value"),
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Input("max-slider_db2-1", "value"),
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Input("min-slider_db2-2", "value"),
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Input("max-slider_db2-2", "value"),
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Input("min-slider_db2-3", "value"),
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Input("max-slider_db2-3", "value"),
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)
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def circular_callback(min_1, max_1, min_2, max_2, min_3, max_3):
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return min_1, max_1, min_2, max_2, min_3, max_3
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@callback(
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Output('range-slider_db2-1', 'value'),
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Output('range-slider_db2-2', 'value'),
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Output('range-slider_db2-3', 'value'),
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Input('min-slider_db2-1', 'value'),
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Input('max-slider_db2-1', 'value'),
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Input('min-slider_db2-2', 'value'),
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Input('max-slider_db2-2', 'value'),
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Input('min-slider_db2-3', 'value'),
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Input('max-slider_db2-3', 'value'),
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)
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def update_slider_values(min_1, max_1, min_2, max_2, min_3, max_3):
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return [min_1, max_1], [min_2, max_2], [min_3, max_3]
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@callback(
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Output(component_id='my-graph_db2', component_property='figure'),
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Output(component_id='pie-graph_db2', component_property='figure'),
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Output(component_id='scatter-plot_db2', component_property='figure'),
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Output(component_id='scatter-plot_db2-2', component_property='figure'),
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Output(component_id='scatter-plot_db2-3', component_property='figure'),
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Output(component_id='scatter-plot_db2-4', component_property='figure'), # Add this new scatter plot
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Output(component_id='scatter-plot_db2-5', component_property='figure'),
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Output(component_id='scatter-plot_db2-6', component_property='figure'),
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Output(component_id='scatter-plot_db2-7', component_property='figure'),
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@@ -339,44 +155,19 @@ def update_slider_values(min_1, max_1, min_2, max_2, min_3, max_3):
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Input(component_id='dpdn5', component_property='value'),
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Input(component_id='dpdn6', component_property='value'),
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Input(component_id='dpdn7', component_property='value'),
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Input(component_id='range-slider_db2-1', component_property='value'),
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Input(component_id='range-slider_db2-2', component_property='value'),
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Input(component_id='range-slider_db2-3', component_property='value'),
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)
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def update_graph_and_pie_chart(col_chosen, s_chosen, g2m_chosen, condition1_chosen, condition2_chosen, condition3_chosen
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batch_chosen = df[col_chosen].unique().to_list()
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dff = df.filter(
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(pl.col(col_chosen).cast(str).is_in(batch_chosen))
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(pl.col(col_features) >= range_value_1[0]) &
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(pl.col(col_features) <= range_value_1[1]) &
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(pl.col(col_counts) >= range_value_2[0]) &
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(pl.col(col_counts) <= range_value_2[1]) &
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(pl.col(col_mt) >= range_value_3[0]) &
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(pl.col(col_mt) <= range_value_3[1])
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)
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# Plot figures
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fig_violin_db2 = px.violin(data_frame=dff, x=col_chosen, y=col_features, box=True, points="all",
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color=col_chosen, hover_name=col_chosen,template="plotly_white")
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# Cache commonly used subexpressions
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total_count = pl.lit(len(dff))
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category_counts = dff.group_by(col_chosen).agg(pl.col(col_chosen).count().alias("count"))
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category_counts = category_counts.with_columns(((pl.col("count") / total_count * 100).round(decimals=2)).alias("normalized_count"))
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# Sort the dataframe
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#category_counts = category_counts.sort(col_chosen) does not work check if the names are different ...
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# Display the result
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total_cells = total_count # Calculate total number of cells
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pie_title = f'Percentage of Total Cells: {total_cells}' # Include total cells in the title
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# Calculate the mean expression
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@@ -388,9 +179,9 @@ def update_graph_and_pie_chart(col_chosen, s_chosen, g2m_chosen, condition1_chos
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# Melt wide format DataFrame into long format
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dff_long = dff_pre.melt(id_vars=col_chosen, variable_name="Gene", value_name="Mean expression")
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# Calculate the mean expression levels for each gene in each region
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expression_means = dff_long.lazy().group_by([col_chosen, "Gene"]).agg(pl.mean("Mean expression")).collect()
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# Calculate the percentage total expressed
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dff_long1 = dff_pre.melt(id_vars=col_chosen, variable_name="Gene")#.group_by(pl.all()).agg(pl.len())
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@@ -409,79 +200,58 @@ def update_graph_and_pie_chart(col_chosen, s_chosen, g2m_chosen, condition1_chos
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dff_5 = dff_5.select(pl.col(col_chosen,"Gene","percentage"))
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# Final part to join the percentage expressed and mean expression levels
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# TO DO
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expression_means = expression_means.join(dff_5, on=[col_chosen,"Gene"], how="inner")
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# Order the dataframe on ascending categories
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expression_means = expression_means.sort(col_chosen, descending=True)
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#expression_means = expression_means.select(["batch", "Gene", "Expression"] + condition3_chosen)
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category_counts = category_counts.sort(col_chosen)
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fig_pie_db2 = px.pie(category_counts, values="normalized_count", names=col_chosen, labels=col_chosen, hole=.3, title=pie_title, template="plotly_white")
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#labels = category_counts[col_chosen].to_list()
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#values = category_counts["normalized_count"].to_list()
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# Create the scatter plots
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fig_scatter_db2 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=col_chosen,
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labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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hover_name='batch',template="plotly_white")
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fig_scatter_db2_2 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=col_mt,
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| 432 |
-
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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| 433 |
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hover_name='batch',template="plotly_white")
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| 434 |
-
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| 435 |
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fig_scatter_db2_3 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=col_features,
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| 436 |
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labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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| 437 |
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hover_name='batch',template="plotly_white")
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| 438 |
-
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| 439 |
-
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| 440 |
-
fig_scatter_db2_4 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=col_counts,
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| 441 |
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labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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| 442 |
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hover_name='batch',template="plotly_white")
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| 443 |
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| 444 |
fig_scatter_db2_5 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=s_chosen,
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| 445 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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| 446 |
-
hover_name=
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| 447 |
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| 448 |
fig_scatter_db2_6 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=g2m_chosen,
|
| 449 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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| 450 |
-
hover_name='batch', title="G2M-cycle gene:",template="
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| 451 |
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| 452 |
fig_scatter_db2_7 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color="S_score",
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| 453 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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| 454 |
-
hover_name='batch', title="S score:",template="
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| 455 |
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| 456 |
fig_scatter_db2_8 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color="G2M_score",
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| 457 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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| 458 |
-
hover_name='batch', title="G2M score:",template="
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| 459 |
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| 460 |
# Sort values of custom in-between
|
| 461 |
dff = dff.sort(condition1_chosen)
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| 462 |
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| 463 |
fig_scatter_db2_9 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=condition1_chosen,
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| 464 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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hover_name=
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| 467 |
fig_scatter_db2_10 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=condition2_chosen,
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| 468 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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| 469 |
-
hover_name='batch',template="
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| 470 |
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| 471 |
fig_scatter_db2_11 = px.scatter(data_frame=dff, x=condition1_chosen, y=condition2_chosen, color=condition1_chosen,
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| 472 |
#labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
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| 473 |
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hover_name='batch',template="
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| 480 |
fig_violin_db22 = px.violin(data_frame=dff, x=condition1_chosen, y=condition2_chosen, box=True, points="all",
|
| 481 |
-
color=condition1_chosen, hover_name=condition1_chosen,template="
|
| 482 |
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| 483 |
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| 484 |
-
return
|
| 485 |
|
| 486 |
# Set http://localhost:5000/ in web browser
|
| 487 |
# Now create your regular FASTAPI application
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| 9 |
import yaml
|
| 10 |
import polars as pl
|
| 11 |
import os
|
| 12 |
+
from natsort import natsorted
|
| 13 |
+
#pl.enable_string_cache(False)
|
| 14 |
|
| 15 |
dash.register_page(__name__, location="sidebar")
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| 16 |
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| 49 |
|
| 50 |
#filepath = f"az://{path_parquet}"
|
| 51 |
|
| 52 |
+
storage_options={'account_name': AZURE_STORAGE_ACCOUNT, 'account_key': AZURE_STORAGE_ACCESS_KEY} #,'anon': False
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| 53 |
|
| 54 |
# Load in multiple dataframes
|
| 55 |
df = pl.scan_parquet(f"az://{dataset}.parquet", storage_options=storage_options).collect()
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| 56 |
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| 57 |
# Create the second tab content with scatter-plot_db2-5 and scatter-plot_db2-6
|
| 58 |
tab2_content = html.Div([
|
| 59 |
html.Div([
|
| 60 |
html.Label("S-cycle genes"),
|
| 61 |
dcc.Dropdown(id='dpdn3', value="MCM5", multi=False,
|
| 62 |
+
options=["MCM5","PCNA","TYMS","FEN1","MCM2","MCM4","RRM1","UNG","GINS2","MCM6","CDCA7","DTL",
|
| 63 |
+
"PRIM1","UHRF1","HELLS","RFC2","RPA2","NASP","RAD51AP1","GMNN","WDR76","SLBP","CCNE2","UBR7",
|
| 64 |
+
"POLD3","MSH2","ATAD2","RAD51","RRM2","CDC45","CDC6","EXO1","TIPIN","DSCC1","BLM","CASP8AP2",
|
| 65 |
+
"USP1","CLSPN","POLA1","CHAF1B","BRIP1","E2F8"]),
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|
| 66 |
html.Label("G2M-cycle genes"),
|
| 67 |
dcc.Dropdown(id='dpdn4', value="TOP2A", multi=False,
|
| 68 |
+
options=["HMGB2","CDK1","NUSAP1","UBE2C","BIRC5","TPX2","TOP2A","NDC80","CKS2","NUF2","CKS1B","MKI67",
|
| 69 |
+
"TMPO","CENPF","TACC3","SMC4","CCNB2","CKAP2L","CKAP2","AURKB","BUB1","KIF11","ANP32E","TUBB4B",
|
| 70 |
+
"GTSE1","KIF20B","HJURP","CDCA3","CDC20","TTK","CDC25C","KIF2C","RANGAP1","NCAPD2","DLGAP5","CDCA2",
|
| 71 |
+
"CDCA8","ECT2","KIF23","HMMR","AURKA","PSRC1","ANLN","LBR","CKAP5","CENPE","CTCF","NEK2","G2E3",
|
| 72 |
+
"GAS2L3","CBX5","CENPA"]),
|
| 73 |
]),
|
| 74 |
html.Div([
|
| 75 |
dcc.Graph(id='scatter-plot_db2-5', figure={}, className='three columns',config=config_fig)
|
|
|
|
| 92 |
dcc.Dropdown(id='dpdn5', value="batch", multi=False,
|
| 93 |
options=df.columns),
|
| 94 |
html.Label("UMAP condition 2"),
|
| 95 |
+
dcc.Dropdown(id='dpdn6', value="PAX6", multi=False,
|
| 96 |
options=df.columns),
|
| 97 |
html.Div([
|
| 98 |
+
dcc.Graph(id='scatter-plot_db2-9', figure={}, className='four columns', hoverData=None ,config=config_fig)
|
| 99 |
]),
|
| 100 |
html.Div([
|
| 101 |
+
dcc.Graph(id='scatter-plot_db2-10', figure={}, className='four columns', hoverData=None, config=config_fig)
|
| 102 |
]),
|
| 103 |
html.Div([
|
| 104 |
dcc.Graph(id='scatter-plot_db2-11', figure={}, className='four columns',config=config_fig)
|
|
|
|
| 110 |
]),
|
| 111 |
]),
|
| 112 |
])
|
|
|
|
|
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|
|
|
|
|
|
|
| 113 |
|
| 114 |
tab4_content = html.Div([
|
| 115 |
+
html.Label("Column chosen"),
|
| 116 |
+
dcc.Dropdown(id='dpdn2', value="integrated_clusters", multi=False,
|
| 117 |
+
options=df.columns),
|
| 118 |
html.Div([
|
| 119 |
html.Label("Multi gene"),
|
| 120 |
dcc.Dropdown(id='dpdn7', value=["PAX6","TP63","S100A9","KRT5","KRT14","KRT10"], multi=True,
|
|
|
|
| 132 |
'font-size': '100%',
|
| 133 |
'height': 50}, value='tab1',children=[
|
| 134 |
#dcc.Tab(label='Dataset', value='tab0', children=tab0_content),
|
| 135 |
+
#dcc.Tab(label='QC', value='tab1', children=tab1_content),
|
| 136 |
+
dcc.Tab(label='UMAP visualisation', value='tab3', children=tab3_content),
|
|
|
|
| 137 |
dcc.Tab(label='Multi dot', value='tab4', children=tab4_content),
|
| 138 |
+
dcc.Tab(label='Cell cycle', value='tab2', children=tab2_content),
|
| 139 |
]),
|
| 140 |
])
|
| 141 |
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|
| 142 |
@callback(
|
|
|
|
|
|
|
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|
|
|
|
|
|
|
|
|
|
|
| 143 |
Output(component_id='scatter-plot_db2-5', component_property='figure'),
|
| 144 |
Output(component_id='scatter-plot_db2-6', component_property='figure'),
|
| 145 |
Output(component_id='scatter-plot_db2-7', component_property='figure'),
|
|
|
|
| 155 |
Input(component_id='dpdn5', component_property='value'),
|
| 156 |
Input(component_id='dpdn6', component_property='value'),
|
| 157 |
Input(component_id='dpdn7', component_property='value'),
|
|
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|
| 158 |
|
| 159 |
)
|
| 160 |
|
| 161 |
+
def update_graph_and_pie_chart(col_chosen, s_chosen, g2m_chosen, condition1_chosen, condition2_chosen, condition3_chosen): #, range_value_1, range_value_2, range_value_3 batch_chosen,
|
| 162 |
batch_chosen = df[col_chosen].unique().to_list()
|
| 163 |
dff = df.filter(
|
| 164 |
+
(pl.col(col_chosen).cast(str).is_in(batch_chosen)) #&
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
| 165 |
)
|
| 166 |
+
# Select ordering of plots
|
| 167 |
+
if condition1_chosen == "leiden_0.45":
|
| 168 |
+
cat_ord= {condition1_chosen: ["1","2","3","4"]}
|
| 169 |
+
else:
|
| 170 |
+
cat_ord= {condition1_chosen: natsorted(dff[condition1_chosen].unique())}
|
|
|
|
|
|
|
|
|
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|
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|
|
|
|
|
|
| 171 |
|
| 172 |
# Calculate the mean expression
|
| 173 |
|
|
|
|
| 179 |
|
| 180 |
# Melt wide format DataFrame into long format
|
| 181 |
dff_long = dff_pre.melt(id_vars=col_chosen, variable_name="Gene", value_name="Mean expression")
|
| 182 |
+
|
| 183 |
# Calculate the mean expression levels for each gene in each region
|
| 184 |
+
expression_means = dff_long.lazy().group_by([col_chosen, "Gene"]).agg(pl.mean("Mean expression")).collect() #
|
| 185 |
|
| 186 |
# Calculate the percentage total expressed
|
| 187 |
dff_long1 = dff_pre.melt(id_vars=col_chosen, variable_name="Gene")#.group_by(pl.all()).agg(pl.len())
|
|
|
|
| 200 |
dff_5 = dff_5.select(pl.col(col_chosen,"Gene","percentage"))
|
| 201 |
|
| 202 |
# Final part to join the percentage expressed and mean expression levels
|
|
|
|
| 203 |
expression_means = expression_means.join(dff_5, on=[col_chosen,"Gene"], how="inner")
|
|
|
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|
| 204 |
|
| 205 |
fig_scatter_db2_5 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=s_chosen,
|
| 206 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
|
| 207 |
+
hover_name=None, title="S-cycle gene:",template="seaborn")
|
| 208 |
|
| 209 |
fig_scatter_db2_6 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=g2m_chosen,
|
| 210 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
|
| 211 |
+
hover_name='batch', title="G2M-cycle gene:",template="seaborn")
|
| 212 |
|
| 213 |
fig_scatter_db2_7 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color="S_score",
|
| 214 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
|
| 215 |
+
hover_name='batch', title="S score:",template="seaborn")
|
| 216 |
|
| 217 |
fig_scatter_db2_8 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color="G2M_score",
|
| 218 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
|
| 219 |
+
hover_name='batch', title="G2M score:",template="seaborn")
|
| 220 |
|
| 221 |
# Sort values of custom in-between
|
| 222 |
dff = dff.sort(condition1_chosen)
|
| 223 |
|
| 224 |
fig_scatter_db2_9 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=condition1_chosen,
|
| 225 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
|
| 226 |
+
hover_name=None,hover_data = None, template="seaborn",category_orders=cat_ord)
|
| 227 |
+
fig_scatter_db2_9.update_traces(hoverinfo='none', hovertemplate=None)
|
| 228 |
+
fig_scatter_db2_9.update_layout(hovermode=False)
|
| 229 |
|
| 230 |
fig_scatter_db2_10 = px.scatter(data_frame=dff, x='X_umap-0', y='X_umap-1', color=condition2_chosen,
|
| 231 |
labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
|
| 232 |
+
hover_name='batch',template="seaborn")
|
| 233 |
|
| 234 |
fig_scatter_db2_11 = px.scatter(data_frame=dff, x=condition1_chosen, y=condition2_chosen, color=condition1_chosen,
|
| 235 |
#labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
|
| 236 |
+
hover_name='batch',template="seaborn",category_orders=cat_ord)
|
| 237 |
+
|
| 238 |
+
# Reorder categories on natural sorting or on the integrated cell state order of the paper
|
| 239 |
+
if col_chosen == "leiden_0.45":
|
| 240 |
+
fig_scatter_db2_12 = px.scatter(data_frame=expression_means, x="Gene", y=col_chosen, color="Mean expression",
|
| 241 |
+
size="percentage", size_max = 20,
|
| 242 |
+
#labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
|
| 243 |
+
hover_name=col_chosen,template="seaborn",category_orders={col_chosen: ["1","2","3","4"],"Gene": condition3_chosen})
|
| 244 |
+
else:
|
| 245 |
+
fig_scatter_db2_12 = px.scatter(data_frame=expression_means, x="Gene", y=col_chosen, color="Mean expression",
|
| 246 |
+
size="percentage", size_max = 20,
|
| 247 |
+
#labels={'X_umap-0': 'umap1' , 'X_umap-1': 'umap2'},
|
| 248 |
+
hover_name=col_chosen,template="seaborn",category_orders={col_chosen: natsorted(expression_means[col_chosen].unique()),"Gene": condition3_chosen})
|
| 249 |
|
| 250 |
fig_violin_db22 = px.violin(data_frame=dff, x=condition1_chosen, y=condition2_chosen, box=True, points="all",
|
| 251 |
+
color=condition1_chosen, hover_name=condition1_chosen,template="seaborn",category_orders=cat_ord)
|
| 252 |
|
| 253 |
|
| 254 |
+
return fig_scatter_db2_5, fig_scatter_db2_6, fig_scatter_db2_7, fig_scatter_db2_8, fig_scatter_db2_9, fig_scatter_db2_10, fig_scatter_db2_11, fig_scatter_db2_12, fig_violin_db22 #fig_violin_db2, fig_pie_db2, fig_scatter_db2, fig_scatter_db2_2, fig_scatter_db2_3, fig_scatter_db2_4,
|
| 255 |
|
| 256 |
# Set http://localhost:5000/ in web browser
|
| 257 |
# Now create your regular FASTAPI application
|