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import streamlit as st
import pandas as pd
import numpy as np
import re
from PIL import Image
import webbrowser
from rdkit import Chem
from rdkit.Chem import AllChem
from rdkit.Chem import Draw
from rdkit.Chem import rdChemReactions as Reactions
import tensorflow as tf
from tensorflow import keras
from keras.preprocessing import sequence
from keras.utils import pad_sequences
import keras
from keras import backend as K
from keras.models import load_model
import argparse
import h5py
import pdb
seq_rdic = ['A', 'I', 'L', 'V', 'F', 'W', 'Y', 'N', 'C', 'Q', 'M',
'S', 'T', 'D', 'E', 'R', 'H', 'K', 'G', 'P', 'O', 'U', 'X', 'B', 'Z']
seq_dic = {w: i+1 for i, w in enumerate(seq_rdic)}
@st.cache(allow_output_mutation=True)
def encodeSeq(seq, seq_dic):
if pd.isnull(seq):
return [0]
else:
return [seq_dic[aa] for aa in seq]
@st.cache(allow_output_mutation=True)
def load_modelfile(model_string):
loaded_model = tf.keras.models.load_model(model_string)
return loaded_model
@st.cache(allow_output_mutation=True)
def prot_feature_gen_from_str_input(prot_input_str, prot_len=2500):
Prot_ID = prot_input_str.split(':')[0]
Prot_seq = prot_input_str.split(':')[1]
prot_dataframe = pd.DataFrame(
{'Protein_ID': Prot_ID, 'Sequence': Prot_seq}, index=[0])
prot_dataframe.set_index('Protein_ID')
prot_dataframe["encoded_sequence"] = prot_dataframe.Sequence.map(
lambda a: encodeSeq(a, seq_dic))
prot_feature = pad_sequences(
prot_dataframe["encoded_sequence"].values, prot_len)
return prot_feature, Prot_ID
@st.cache(allow_output_mutation=True)
def mol_feature_gen_from_str_input(mol_str, kegg_id_flag, kegg_df):
if kegg_id_flag == 1:
KEGG_ID = mol_str
kegg_id_loc = kegg_df.index[kegg_df.Compound_ID == KEGG_ID][0]
KEGG_ID_info = kegg_df.loc[kegg_id_loc]
KEGG_ID_info_df = KEGG_ID_info.to_frame().T.set_index('Compound_ID')
final_return = KEGG_ID_info_df
final_id = KEGG_ID
else:
try:
mol_ID = mol_str.split(':')[0]
mol_smiles = mol_str.split(':')[1]
mol = Chem.MolFromSmiles(mol_smiles)
fp1 = AllChem.GetMorganFingerprintAsBitVect(
mol, useChirality=True, radius=2, nBits=2048)
fp_list = list(np.array(fp1).astype(float))
fp_str = list(map(str, fp_list))
mol_fp = '\t'.join(fp_str)
mol_dict = {}
mol_dict['Compound_ID'] = mol_ID
mol_dict['Smiles'] = mol_smiles
mol_dict['morgan_fp_r2'] = mol_fp
mol_info_df = pd.DataFrame(mol_dict, index=[0])
mol_info_df = mol_info_df.set_index('Compound_ID')
final_return = mol_info_df
final_id = mol_ID
except Exception as error:
print('Something wrong with molecule input string...' + repr(error))
return final_return, final_id
@st.cache(allow_output_mutation=True)
def act_df_gen_mol_feature(mol_id, prot_id):
act_df = pd.DataFrame(
{'Protein_ID': prot_id, 'Compound_ID': mol_id}, index=[0])
return act_df
@st.cache(allow_output_mutation=True)
def compound_feature_gen_df_input(act_df, comp_df, comp_len=2048, comp_vec='morgan_fp_r2'):
act_df = pd.merge(act_df, comp_df, left_on='Compound_ID', right_index=True)
comp_feature = np.stack(act_df[comp_vec].map(lambda fp: fp.split("\t")))
comp_feature = comp_feature.astype('float')
return comp_feature
@st.cache(allow_output_mutation=True)
def model_prediction(compound_feature, enz_feature, model):
prediction_vals = model.predict([compound_feature, enz_feature])
return prediction_vals[0][0]
def main():
graph = tf.compat.v1.get_default_graph()
ld_model = tf.keras.models.load_model('./CNN_results_split_final/Final_model.model')
KEGG_compound_read = pd.read_csv('./CNN_data/Final_test/kegg_compound.csv', index_col = 'Compound_ID')
kegg_df = KEGG_compound_read.reset_index()
st.image('./Streamlit/header.png', use_column_width=True)
st.subheader('Enzyme-Substrate Activity Predictor ')
st.subheader('Enzyme sequence')
st.caption('Please follow the input format show in the text box--> id:Sequence')
enz_str = st.text_input('', value="A0A4P8WFA8:MTKRVLVTGGAGFLGSHLCERLLSEGHEVICLDNFGSGRRKNIKEFEDHPSFKVNDRDVRISESLPSVDRIYHLASRASPADFTQFPVNIALANTQGTRRLLDQARACDARMVFASTSEVYGDPKVHPQPETYTGNVNIRGARGCYDESKRFGETLTVAYQRKYDVDARTVRIFNTYGPRMRPDDGRVVPTFVTQALRGDDLTIYGDGEQTRSFCYVDDLIEGLISLMRVDNPEHNVYNIGKENERTIKELAYEVLGLTDTESDIVYEPLPEDDPGQRRPDITRAKTELDWEPKISLREGLEDTITYFDN")
# url = 'https://www.genome.jp/dbget-bin/www_bget?rn:R00801'
# if st.button('KEformat example'):
# webbrowser.open_new_tab(url)
st.subheader('Substrate ')
st.caption('Please follow the input format show in the text box--> KEGG id or click the checkbox')
comp_str = st.text_input('', value="C00149")
if st.checkbox('If you are entering smiles string along with KEGG ID'):
add_info = st.text_area('Additional information (id: Smiles):', "C00149:O[C@@H](CC([O-])=O)C([O-])=O")
else:
add_info = ''
if st.button("Predict"):
# if session_state.button_search:
# st.subheader('Enzyme-Substrate activity score')
with st.spinner('Calculating...'):
try:
# st.write('I am inside')
prot_feature, prot_id = prot_feature_gen_from_str_input(enz_str)
if len(add_info) == 0:
kegg_id_flag = 1
comp_feature, comp_id = mol_feature_gen_from_str_input(comp_str, kegg_id_flag, kegg_df)
else:
kegg_id_flag = 0
comp_feature, comp_id = mol_feature_gen_from_str_input(add_info, kegg_id_flag, kegg_df)
act_dataframe = act_df_gen_mol_feature(comp_id, prot_id)
# st.write(act_dataframe)
compound_feature = compound_feature_gen_df_input(act_dataframe, comp_feature)
# st.write(compound_feature)
except Exception as e:
st.write('Error somewhere...' + repr(e))
# st.write(compound_feature)
# st.write(prot_feature)
# keras.backend.clear_session()
y = ld_model.predict([compound_feature, prot_feature])
subheaderstring = 'EnzRank Score for '+ prot_id + '-' + comp_id + ' pair:'
st.subheader(subheaderstring)
st.write(str(y[0][0]))
if __name__ == '__main__':
main()
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