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import gradio as gr
import pandas as pd
from transformers import pipeline
from sentence_transformers import CrossEncoder

passage_retreival_model = CrossEncoder('cross-encoder/ms-marco-MiniLM-L-6-v2')
qa_model = pipeline("question-answering",'a-ware/bart-squadv2')

def fetch_answers(question, clincal_note ):
    clincal_note_paragraphs = clincal_note.splitlines()
    query_paragraph_list = [(question, para) for para in clincal_note_paragraphs if len(para.strip()) > 0 ]
    
    scores = passage_retreival_model.predict(query_paragraph_list)
    top_5_indices = scores.argsort()[-5:]
    top_5_query_paragraph_list = [query_paragraph_list[i] for i in top_5_indices ]
    top_5_query_paragraph_list.reverse()
    
    top_5_query_paragraph_answer_list = []
    for query, passage in top_5_query_paragraph_list:
     answer = qa_model(question = query, context = passage)['answer']
     top_5_query_paragraph_answer_list.append([passage, answer])
     
    return pd.DataFrame(data = top_5_query_paragraph_answer_list, columns=['Relevant Paragraph', 'Extracted Answer'])

demo = gr.Interface(
    fn=fetch_answers,
    #take input as real time audio and use OPENAPI whisper for S2T
    #clinical note upload as file (.This is an example of simple text. or doc/docx file)
    inputs=[gr.Textbox(lines=2, label='Question', show_label=True, placeholder="What is age of patient ?"),
            gr.Textbox(lines=10, label='Clinical Note', show_label=True, placeholder="The patient is a 71 year old male...")],
    outputs="dataframe",
    examples='.',
    title='Question Answering System from Clinical Notes for Physicians',
    description="""Physicians frequently seek answers to questions from a patient’s EHR to support clinical decision-making.​ It is not too hard to imagine a future where a physician interacts with an EHR system and asks it complex questions and expects precise answers with adequate context from a patient’s past clinical notes. ​Central to such a world is a medical question answering system that processes natural language questions asked by physicians and finds answers to the questions from all sources in a patient’s record."""
)
demo.launch()