EpiPipeline4RD / app.py
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import nltk
nltk.download('stopwords')
nltk.download('punkt')
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
import spacy
import tensorflow as tf
import pickle
########## Title for the Web App ##########
st.title("Epidemiology Extraction Pipeline for Rare Diseases")
st.subheader("National Center for Advancing Translational Sciences (NIH/NCATS)")
#### CHANGE SIDEBAR WIDTH ###
st.markdown(
"""
<style>
[data-testid="stSidebar"][aria-expanded="true"] > div:first-child {
width: 275px;
}
[data-testid="stSidebar"][aria-expanded="false"] > div:first-child {
width: 275px;
margin-left: -400px;
}
</style>
""",
unsafe_allow_html=True,
)
#max_results is Maximum number of PubMed ID's to retrieve BEFORE filtering
max_results = st.sidebar.number_input("Maximum number of articles to find in PubMed", min_value=1, max_value=None, value=50)
filtering = st.sidebar.radio("What type of filtering would you like?",('Strict', 'Lenient', 'None'))
extract_diseases = st.sidebar.checkbox("Extract Rare Diseases", value=False)
@st.experimental_singleton
def load_models_experimental():
classify_model_vars = classify_abs.init_classify_model()
NER_pipeline, entity_classes = extract_abs.init_NER_pipeline()
GARD_dict, max_length = extract_abs.load_GARD_diseases()
return classify_model_vars, NER_pipeline, entity_classes, GARD_dict, max_length
@st.cache(allow_output_mutation=True)
def load_models():
# load the tokenizer
with open('tokenizer.pickle', 'rb') as handle:
classify_tokenizer = pickle.load(handle)
# load the model
classify_model = tf.keras.models.load_model("LSTM_RNN_Model")
#classify_model_vars = classify_abs.init_classify_model()
NER_pipeline, entity_classes = extract_abs.init_NER_pipeline()
GARD_dict, max_length = extract_abs.load_GARD_diseases()
return classify_tokenizer, classify_model, NER_pipeline, entity_classes, GARD_dict, max_length
with st.spinner('Loading Epidemiology Models and Dependencies...'):
classify_model_vars, NER_pipeline, entity_classes, GARD_dict, max_length = load_models_experimental()
#classify_tokenizer, classify_model, NER_pipeline, entity_classes, GARD_dict, max_length = load_models()
#Load spaCy models which cannot be cached due to hash function error
#nlp = spacy.load('en_core_web_lg')
#nlpSci = spacy.load("en_ner_bc5cdr_md")
#nlpSci2 = spacy.load('en_ner_bionlp13cg_md')
#classify_model_vars = (nlp, nlpSci, nlpSci2, classify_model, classify_tokenizer)
st.success('All Models and Dependencies Loaded!')
disease_or_gard_id = st.text_input("Input a rare disease term or GARD ID.")
if disease_or_gard_id:
df = extract_abs.streamlit_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.balloons()
#st.dataframe(data=None, width=None, height=None)
# st.code(body, language="python")