DiffLinker / app.py
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import gradio as gr
import numpy as np
import os
import torch
import subprocess
import output
from rdkit import Chem
from src import const
from src.visualizer import save_xyz_file
from src.datasets import get_dataloader, collate_with_fragment_edges, parse_molecule
from src.lightning import DDPM
from src.linker_size_lightning import SizeClassifier
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
os.makedirs("results", exist_ok=True)
os.makedirs("models", exist_ok=True)
size_gnn_path = 'models/geom_size_gnn.ckpt'
if not os.path.exists(size_gnn_path):
print('Downloading SizeGNN model...')
link = 'https://zenodo.org/record/7121300/files/geom_size_gnn.ckpt?download=1'
subprocess.run(f'wget {link} -O {size_gnn_path}', shell=True)
size_nn = SizeClassifier.load_from_checkpoint('models/geom_size_gnn.ckpt', map_location=device).eval().to(device)
print('Loaded SizeGNN model')
diffusion_path = 'models/geom_difflinker.ckpt'
if not os.path.exists(diffusion_path):
print('Downloading Diffusion model...')
link = 'https://zenodo.org/record/7121300/files/geom_difflinker.ckpt?download=1'
subprocess.run(f'wget {link} -O {diffusion_path}', shell=True)
ddpm = DDPM.load_from_checkpoint('models/geom_difflinker.ckpt', map_location=device).eval().to(device)
print('Loaded diffusion model')
def sample_fn(_data):
output, _ = size_nn.forward(_data, return_loss=False)
probabilities = torch.softmax(output, dim=1)
distribution = torch.distributions.Categorical(probs=probabilities)
samples = distribution.sample()
sizes = []
for label in samples.detach().cpu().numpy():
sizes.append(size_nn.linker_id2size[label])
sizes = torch.tensor(sizes, device=samples.device, dtype=torch.long)
return sizes
def read_molecule_content(path):
with open(path, "r") as f:
return "".join(f.readlines())
def read_molecule(path):
if path.endswith('.pdb'):
return Chem.MolFromPDBFile(path, sanitize=False, removeHs=True)
elif path.endswith('.mol'):
return Chem.MolFromMolFile(path, sanitize=False, removeHs=True)
elif path.endswith('.mol2'):
return Chem.MolFromMol2File(path, sanitize=False, removeHs=True)
elif path.endswith('.sdf'):
return Chem.SDMolSupplier(path, sanitize=False, removeHs=True)[0]
raise Exception('Unknown file extension')
def show_input(input_file):
if input_file is None:
return ''
path = input_file.name
extension = path.split('.')[-1]
if extension not in ['sdf', 'pdb', 'mol', 'mol2']:
msg = output.INVALID_FORMAT_MSG.format(extension=extension)
return output.IFRAME_TEMPLATE.format(html=msg)
try:
molecule = read_molecule_content(path)
except Exception as e:
return f'Could not read the molecule: {e}'
html = output.HTML_TEMPLATE.format(molecule=molecule, fmt=extension)
return output.IFRAME_TEMPLATE.format(html=html)
def generate(input_file):
if input_file is None:
return ''
path = input_file.name
extension = path.split('.')[-1]
if extension not in ['sdf', 'pdb', 'mol', 'mol2']:
msg = output.INVALID_FORMAT_MSG.format(extension=extension)
return output.IFRAME_TEMPLATE.format(html=msg)
try:
molecule = read_molecule(path)
name = '.'.join(path.split('/')[-1].split('.')[:-1])
inp_sdf = f'results/{name}_input.sdf'
inp_xyz = f'results/{name}_input.xyz'
out_sdf = f'results/{name}_output.sdf'
out_xyz = f'results/{name}_output.xyz'
except Exception as e:
return f'Could not read the molecule: {e}'
if molecule.GetNumAtoms() > 50:
return f'Too large molecule: upper limit is 50 heavy atoms'
with Chem.SDWriter(inp_sdf) as w:
w.write(molecule)
Chem.MolToXYZFile(molecule, inp_xyz)
positions, one_hot, charges = parse_molecule(molecule, is_geom=True)
anchors = np.zeros_like(charges)
fragment_mask = np.ones_like(charges)
linker_mask = np.zeros_like(charges)
print('Read and parsed molecule')
dataset = [{
'uuid': '0',
'name': '0',
'positions': torch.tensor(positions, dtype=const.TORCH_FLOAT, device=device),
'one_hot': torch.tensor(one_hot, dtype=const.TORCH_FLOAT, device=device),
'charges': torch.tensor(charges, dtype=const.TORCH_FLOAT, device=device),
'anchors': torch.tensor(anchors, dtype=const.TORCH_FLOAT, device=device),
'fragment_mask': torch.tensor(fragment_mask, dtype=const.TORCH_FLOAT, device=device),
'linker_mask': torch.tensor(linker_mask, dtype=const.TORCH_FLOAT, device=device),
'num_atoms': len(positions),
}]
dataloader = get_dataloader(dataset, batch_size=1, collate_fn=collate_with_fragment_edges)
print('Created dataloader')
for data in dataloader:
chain, node_mask = ddpm.sample_chain(data, sample_fn=sample_fn, keep_frames=1)
print('Generated linker')
x = chain[0][:, :, :ddpm.n_dims]
h = chain[0][:, :, ddpm.n_dims:]
save_xyz_file('results', h, x, node_mask, names=[name], is_geom=True, suffix='output')
print('Saved XYZ file')
subprocess.run(f'obabel {out_xyz} -O {out_sdf}', shell=True)
print('Converted to SDF')
break
generated_molecule = read_molecule_content(out_sdf)
html = output.HTML_TEMPLATE.format(molecule=generated_molecule, fmt='sdf')
return [
output.IFRAME_TEMPLATE.format(html=html),
[inp_sdf, inp_xyz, out_sdf, out_xyz],
]
demo = gr.Blocks()
with demo:
gr.Markdown('# DiffLinker: Equivariant 3D-Conditional Diffusion Model for Molecular Linker Design')
with gr.Box():
with gr.Row():
with gr.Column():
gr.Markdown('## Input Fragments')
gr.Markdown('Upload the file with 3D-coordinates of the input fragments in .pdb, .mol2 or .sdf format:')
input_file = gr.File(file_count='single', label='Input fragments')
button = gr.Button('Generate Linker!')
gr.Markdown('')
gr.Markdown('## Output Files')
gr.Markdown('Download files with the generated molecules here:')
output_files = gr.File(file_count='multiple', label='Output Files')
with gr.Column():
visualization = gr.HTML()
input_file.change(
fn=show_input,
inputs=[input_file],
outputs=[visualization],
)
button.click(
fn=generate,
inputs=[input_file],
outputs=[visualization, output_files],
)
demo.launch(share=True)