import time import re import pandas as pd import numpy as np import torch import torch.nn.functional as F import graphviz as graphviz import pydeck as pdk import streamlit as st from transformers import AutoTokenizer, AutoModel from tokenizers import Tokenizer, AddedToken from st_click_detector import click_detector st.set_page_config(page_title="OMS Omaha System and LOCUS MH Ontology Models",layout='wide') st.write("Circulation Categorization") st.graphviz_chart('''digraph { 29CIRCULATION -> AbnormalBloodPressureReading 29CIRCULATION -> AbnormalCardiacLaboratoryResults 29CIRCULATION -> AbnormalClotting 29CIRCULATION -> AbnormalHeartSoundsMurmurs 29CIRCULATION -> AnginalPain 29CIRCULATION -> CrampingPainofExtremities 29CIRCULATION -> DecreasedPulses 29CIRCULATION -> DiscolorationofSkinCyanosis 29CIRCULATION -> EdemaSwellinginlegsarmsfeet 29CIRCULATION -> ExcessivelyRapidHeartRate 29CIRCULATION -> IrregularHeartRate 29CIRCULATION -> SyncopalEpisodesFaintingDizziness 29CIRCULATION -> TemperatureChangeinAffectedArea 29CIRCULATION -> Varicosities }''')