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Done data loading in decagon_run.

master
Stanislaw Adaszewski 3 years ago
parent
commit
a34a0f5f2a
1 changed files with 36 additions and 1 deletions
  1. +36
    -1
      experiments/decagon_run/decagon_run.py

+ 36
- 1
experiments/decagon_run/decagon_run.py View File

@@ -5,6 +5,7 @@ import os
import pandas as pd
from bisect import bisect_left
import torch
import sys
def index(a, x):
@@ -14,7 +15,7 @@ def index(a, x):
raise ValueError
def main():
def load_data():
path = '/pstore/data/data_science/ref/decagon'
df_combo = pd.read_csv(os.path.join(path, 'bio-decagon-combo.csv'))
df_effcat = pd.read_csv(os.path.join(path, 'bio-decagon-effectcategories.csv'))
@@ -43,6 +44,7 @@ def main():
data.add_node_type('Gene', len(genes))
data.add_node_type('Drug', len(drugs))
print('Preparing PPI...')
print('Indexing rows...')
rows = [index(genes, g) for g in df_ppi['Gene 1']]
print('Indexing cols...')
@@ -56,6 +58,39 @@ def main():
print('adj_mat created')
fam = data.add_relation_family('PPI', 0, 0, True)
rel = fam.add_relation_type('PPI', adj_mat)
print('OK')
print('Preparing Drug-Gene (Target) edges...')
rows = [index(drugs, d) for d in df_tgtall['STITCH']]
cols = [index(genes, g) for g in df_tgtall['Gene']]
indices = list(zip(rows, cols))
indices = torch.tensor(indices).transpose(0, 1)
values = torch.ones(len(rows))
adj_mat = torch.sparse_coo_tensor(indices, values, size=(len(drugs), len(genes)))
fam = data.add_relation_family('Drug-Gene (Target)', 1, 0, True)
rel = fam.add_relation_type('Drug-Gene (Target)', adj_mat)
print('OK')
print('Preparing Drug-Drug (Side Effect) edges...')
fam = data.add_relation_family('Drug-Drug (Side Effect)', 1, 1, True)
print('# of side effects:', len(df_combo), 'unique:', len(df_combo['Polypharmacy Side Effect'].unique()))
for eff, df in df_combo.groupby('Polypharmacy Side Effect'):
sys.stdout.write('.') # print(eff, '...')
sys.stdout.flush()
rows = [index(drugs, d) for d in df['STITCH 1']]
cols = [index(drugs, d) for d in df['STITCH 2']]
indices = list(zip(rows, cols))
indices = torch.tensor(indices).transpose(0, 1)
values = torch.ones(len(rows))
adj_mat = torch.sparse_coo_tensor(indices, values, size=(len(drugs), len(drugs)))
adj_mat = (adj_mat + adj_mat.transpose(0, 1)) / 2
rel = fam.add_relation_type(df['Polypharmacy Side Effect'], adj_mat)
print()
print('OK')
def main():
data = load_data()
if __name__ == '__main__':


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