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import re | |
from pathlib import Path | |
import gradio as gr | |
from evodiff.pretrained import OA_DM_38M, D3PM_UNIFORM_38M, MSA_OA_DM_MAXSUB | |
from evodiff.generate import generate_oaardm, generate_d3pm | |
from evodiff.generate_msa import generate_query_oadm_msa_simple | |
from evodiff.conditional_generation import inpaint_simple, generate_scaffold | |
import py3Dmol | |
from colabfold.download import download_alphafold_params | |
from colabfold.batch import run | |
def a3m_file(file): | |
return "tmp.a3m" | |
def predict_protein(sequence): | |
download_alphafold_params("alphafold2_ptm", Path(".")) | |
results = run( | |
queries=[('evodiff_protein', sequence, None)], | |
result_dir='evodiff_protein', | |
use_templates=False, | |
num_relax=0, | |
msa_mode="mmseqs2_uniref_env", | |
model_type="alphafold2_ptm", | |
num_models=1, | |
num_recycles=1, | |
model_order=[1], | |
is_complex=False, | |
data_dir=Path("."), | |
keep_existing_results=False, | |
rank_by="auto", | |
stop_at_score=float(100), | |
zip_results=False, | |
user_agent="colabfold/google-colab-main" | |
) | |
return f"evodiff_protein/evodiff_protein_unrelaxed_rank_001_alphafold2_ptm_model_1_seed_000.pdb" | |
def display_pdb(path_to_pdb): | |
''' | |
#function to display pdb in py3dmol | |
SOURCE: https://huggingface.co/spaces/merle/PROTEIN_GENERATOR/blob/main/app.py | |
''' | |
pdb = open(path_to_pdb, "r").read() | |
view = py3Dmol.view(width=500, height=500) | |
view.addModel(pdb, "pdb") | |
view.setStyle({'model': -1}, {"cartoon": {'colorscheme':{'prop':'b','gradient':'roygb','min':0,'max':1}}})#'linear', 'min': 0, 'max': 1, 'colors': ["#ff9ef0","#a903fc",]}}}) | |
view.zoomTo() | |
output = view._make_html().replace("'", '"') | |
print(view._make_html()) | |
x = f"""<!DOCTYPE html><html></center> {output} </center></html>""" # do not use ' in this input | |
return f"""<iframe height="500px" width="100%" name="result" allow="midi; geolocation; microphone; camera; | |
display-capture; encrypted-media;" sandbox="allow-modals allow-forms | |
allow-scripts allow-same-origin allow-popups | |
allow-top-navigation-by-user-activation allow-downloads" allowfullscreen="" | |
allowpaymentrequest="" frameborder="0" srcdoc='{x}'></iframe>""" | |
''' | |
return f"""<iframe style="width: 100%; height:700px" name="result" allow="midi; geolocation; microphone; camera; | |
display-capture; encrypted-media;" sandbox="allow-modals allow-forms | |
allow-scripts allow-same-origin allow-popups | |
allow-top-navigation-by-user-activation allow-downloads" allowfullscreen="" | |
allowpaymentrequest="" frameborder="0" srcdoc='{x}'></iframe>""" | |
''' | |
def make_uncond_seq(seq_len, model_type, pred_structure): | |
if model_type == "EvoDiff-Seq-OADM 38M": | |
checkpoint = OA_DM_38M() | |
model, collater, tokenizer, scheme = checkpoint | |
tokeinzed_sample, generated_sequence = generate_oaardm(model, tokenizer, int(seq_len), batch_size=1, device='cpu') | |
if model_type == "EvoDiff-D3PM-Uniform 38M": | |
checkpoint = D3PM_UNIFORM_38M(return_all=True) | |
model, collater, tokenizer, scheme, timestep, Q_bar, Q = checkpoint | |
tokeinzed_sample, generated_sequence = generate_d3pm(model, tokenizer, Q, Q_bar, timestep, int(seq_len), batch_size=1, device='cpu') | |
if pred_structure: | |
path_to_pdb = predict_protein(generated_sequence) | |
molhtml = display_pdb(path_to_pdb) | |
return generated_sequence, molhtml | |
else: | |
return generated_sequence, None | |
def make_cond_seq(seq_len, msa_file, n_sequences, model_type, pred_structure): | |
if model_type == "EvoDiff-MSA": | |
checkpoint = MSA_OA_DM_MAXSUB() | |
model, collater, tokenizer, scheme = checkpoint | |
tokeinzed_sample, generated_sequence = generate_query_oadm_msa_simple(msa_file.name, model, tokenizer, int(n_sequences), seq_length=int(seq_len), device='cpu', selection_type='random') | |
if pred_structure: | |
path_to_pdb = predict_protein(generated_sequence) | |
molhtml = display_pdb(path_to_pdb) | |
return generated_sequence, molhtml | |
else: | |
return generated_sequence, None | |
def make_inpainted_idrs(sequence, start_idx, end_idx, model_type, pred_structure): | |
if model_type == "EvoDiff-Seq": | |
checkpoint = OA_DM_38M() | |
model, collater, tokenizer, scheme = checkpoint | |
sample, entire_sequence, generated_idr = inpaint_simple(model, sequence, int(start_idx), int(end_idx), tokenizer=tokenizer, device='cpu') | |
generated_idr_output = { | |
"original_sequence": sequence, | |
"generated_sequence": entire_sequence, | |
"original_region": sequence[start_idx:end_idx], | |
"generated_region": generated_idr | |
} | |
if pred_structure: | |
path_to_pdb = predict_protein(entire_sequence) | |
molhtml = display_pdb(path_to_pdb) | |
return generated_idr_output, molhtml | |
else: | |
return generated_idr_output, None | |
def make_scaffold_motifs(pdb_code, start_idx, end_idx, scaffold_length, model_type, pred_structure): | |
if model_type == "EvoDiff-Seq": | |
checkpoint = OA_DM_38M() | |
model, collater, tokenizer, scheme = checkpoint | |
data_top_dir = './' | |
start_idx = list(map(int, start_idx.strip('][').split(', '))) | |
end_idx = list(map(int, end_idx.strip('][').split(', '))) | |
generated_sequence, new_start_idx, new_end_idx = generate_scaffold(model, pdb_code, start_idx, end_idx, scaffold_length, data_top_dir, tokenizer, device='cpu') | |
generated_scaffold_output = { | |
"generated_sequence": generated_sequence, | |
"new_start_index": new_start_idx, | |
"new_end_index": new_end_idx | |
} | |
if pred_structure: | |
# path_to_pdb = predict_protein(generated_sequence) | |
path_to_pdb = f"scaffolding-pdbs/{pdb_code}.pdb" | |
molhtml = display_pdb(path_to_pdb) | |
return generated_scaffold_output, molhtml | |
else: | |
return generated_scaffold_output, None | |
usg_app = gr.Interface( | |
fn=make_uncond_seq, | |
inputs=[ | |
gr.Slider(10, 100, step=1, label = "Sequence Length"), | |
gr.Dropdown(["EvoDiff-Seq-OADM 38M", "EvoDiff-D3PM-Uniform 38M"], value="EvoDiff-Seq-OADM 38M", type="value", label = "Model"), | |
gr.Checkbox(value=False, label = "Predict Structure?", visible=False) | |
], | |
outputs=[ | |
"text", | |
gr.HTML() | |
], | |
title = "Unconditional sequence generation", | |
description="Generate a sequence with `EvoDiff-Seq-OADM 38M` (smaller/faster) or `EvoDiff-D3PM-Uniform 38M` (larger/slower) models." | |
) | |
csg_app = gr.Interface( | |
fn=make_cond_seq, | |
inputs=[ | |
gr.Slider(10, 100, label = "Sequence Length"), | |
gr.File(file_types=["a3m"], label = "MSA File"), | |
gr.Number(value=1, placeholder=1, precision=0, label = "Number of Sequences") | |
gr.Dropdown(["EvoDiff-MSA"], value="EvoDiff-MSA", type="value", label = "Model"), | |
gr.Checkbox(value=False, label = "Predict Structure?", visible=False) | |
], | |
outputs=[ | |
"text", | |
gr.HTML() | |
], | |
# examples=[["https://github.com/microsoft/evodiff/raw/main/examples/example_files/bfd_uniclust_hits.a3m"]], | |
title = "Conditional sequence generation", | |
description="Evolutionary guided sequence generation with the `EvoDiff-MSA` model." | |
) | |
idr_app = gr.Interface( | |
fn=make_inpainted_idrs, | |
inputs=[ | |
gr.Textbox(placeholder="DQTERTVRSFEGRRTAPYLDSRNVLTIGYGHLLNRPGANKSWEGRLTSALPREFKQRLTELAASQLHETDVRLATARAQALYGSGAYFESVPVSLNDLWFDSVFNLGERKLLNWSGLRTKLESRDWGAAAKDLGRHTFGREPVSRRMAESMRMRRGIDLNHYNI", label = "Sequence"), | |
gr.Number(value=20, placeholder=20, precision=0, label = "Start Index"), | |
gr.Number(value=50, placeholder=50, precision=0, label = "End Index"), | |
gr.Dropdown(["EvoDiff-Seq"], value="EvoDiff-Seq", type="value", label = "Model"), | |
gr.Checkbox(value=False, label = "Predict Structure?", visible=False) | |
], | |
outputs=[ | |
"text", | |
gr.HTML() | |
], | |
title = "Inpainting IDRs", | |
description="Inpaining a new region inside a given sequence using the `EvoDiff-Seq` model." | |
) | |
scaffold_app = gr.Interface( | |
fn=make_scaffold_motifs, | |
inputs=[ | |
gr.Textbox(placeholder="1prw", label = "PDB Code"), | |
gr.Textbox(value="[15, 51]", placeholder="[15, 51]", label = "Start Index (as list)"), | |
gr.Textbox(value="[34, 70]", placeholder="[34, 70]", label = "End Index (as list)"), | |
gr.Number(value=75, placeholder=75, precision=0, label = "Scaffold Length"), | |
gr.Dropdown(["EvoDiff-Seq", "EvoDiff-MSA"], value="EvoDiff-Seq", type="value", label = "Model"), | |
gr.Checkbox(value=False, label = "Predict Structure?", visible=False) | |
], | |
outputs=[ | |
"text", | |
gr.HTML() | |
], | |
title = "Scaffolding functional motifs", | |
description="Scaffolding a new functional motif inside a given PDB structure using the `EvoDiff-Seq` model." | |
) | |
with gr.Blocks() as edapp: | |
with gr.Row(): | |
gr.Markdown( | |
""" | |
# EvoDiff | |
## Generation of protein sequences and evolutionary alignments via discrete diffusion models | |
Created By: Microsoft Research [Sarah Alamdari, Nitya Thakkar, Rianne van den Berg, Alex X. Lu, Nicolo Fusi, ProfileAva P. Amini, and Kevin K. Yang] | |
Spaces App By: Tuple, The Cloud Genomics Company [Colby T. Ford] | |
""" | |
) | |
with gr.Row(): | |
gr.TabbedInterface([usg_app, csg_app, idr_app, scaffold_app], | |
["Unconditional sequence generation", | |
"Conditional generation", | |
"Inpainting IDRs", | |
"Scaffolding functional motifs"]) | |
if __name__ == "__main__": | |
edapp.launch() |