import nltk nltk.download('stopwords') import pandas as pd #classify_abs is a dependency for extract_abs import classify_abs import extract_abs #pd.set_option('display.max_colwidth', None) import streamlit as st ########## Title for the Web App ########## st.title("Text Classification for Service Feedback") #st.header(body, anchor=None) #st.subheader(body, anchor=None) #Anchor is for the URL, can be custom str # https://docs.streamlit.io/library/api-reference/text/st.markdown ########## Create Input field ########## disease_or_gard_id = st.text_input('Input a rare disease term or a GARD ID.', 'Fellman syndrome') # st.code(body, language="python") #LSTM RNN Epi Classifier Model classify_model_vars = classify_abs.init_classify_model() #GARD Dictionary - For filtering and exact match disease/GARD ID identification GARD_dict, max_length = extract_abs.load_GARD_diseases() #BioBERT-based NER pipeline, open `entities` to see NER_pipeline, entity_classes = extract_abs.init_NER_pipeline() #max_results is Maximum number of PubMed ID's to retrieve BEFORE filtering max_results = st.sidebar.number_input(label, min_value=1, max_value=None, value=50) # https://docs.streamlit.io/library/api-reference/widgets/st.number_input # st.radio(label, options, index=0, format_func=special_internal_function, key=None, help=None, on_change=None, args=None, kwargs=None, *, disabled=False) # https://docs.streamlit.io/library/api-reference/widgets/st.radio filtering = st.sidebar.radio( "What type of filtering would you like?", ('Strict', 'Lenient', 'None')) extract_diseases = st.sidebar.checkbox("Extract Rare Diseases", value=False) # https://docs.streamlit.io/library/api-reference/widgets/st.checkbox #filtering options are 'strict','lenient'(default), 'none' if text: df = extract_abs.search_term_extraction(disease_or_gard_id, max_results, filtering, NER_pipeline, entity_classes, extract_diseases,GARD_dict, max_length, classify_model_vars) st.dataframe(df) #st.dataframe(data=None, width=None, height=None)