mirror of
https://github.com/gcorso/DiffDock.git
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86 lines
3.0 KiB
Python
86 lines
3.0 KiB
Python
import copy, time
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import numpy as np
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from collections import defaultdict
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from rdkit import Chem, RDLogger
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from rdkit.Chem import AllChem, rdMolTransforms
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from rdkit import Geometry
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import networkx as nx
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from scipy.optimize import differential_evolution
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RDLogger.DisableLog('rdApp.*')
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"""
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Conformer matching routines from Torsional Diffusion
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"""
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def GetDihedral(conf, atom_idx):
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return rdMolTransforms.GetDihedralRad(conf, atom_idx[0], atom_idx[1], atom_idx[2], atom_idx[3])
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def SetDihedral(conf, atom_idx, new_vale):
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rdMolTransforms.SetDihedralRad(conf, atom_idx[0], atom_idx[1], atom_idx[2], atom_idx[3], new_vale)
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def apply_changes(mol, values, rotable_bonds, conf_id):
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opt_mol = copy.copy(mol)
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[SetDihedral(opt_mol.GetConformer(conf_id), rotable_bonds[r], values[r]) for r in range(len(rotable_bonds))]
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return opt_mol
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def optimize_rotatable_bonds(mol, true_mol, rotable_bonds, probe_id=-1, ref_id=-1, seed=0, popsize=15, maxiter=500,
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mutation=(0.5, 1), recombination=0.8):
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opt = OptimizeConformer(mol, true_mol, rotable_bonds, seed=seed, probe_id=probe_id, ref_id=ref_id)
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max_bound = [np.pi] * len(opt.rotable_bonds)
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min_bound = [-np.pi] * len(opt.rotable_bonds)
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bounds = (min_bound, max_bound)
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bounds = list(zip(bounds[0], bounds[1]))
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# Optimize conformations
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result = differential_evolution(opt.score_conformation, bounds,
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maxiter=maxiter, popsize=popsize,
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mutation=mutation, recombination=recombination, disp=False, seed=seed)
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opt_mol = apply_changes(opt.mol, result['x'], opt.rotable_bonds, conf_id=probe_id)
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return opt_mol
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class OptimizeConformer:
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def __init__(self, mol, true_mol, rotable_bonds, probe_id=-1, ref_id=-1, seed=None):
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super(OptimizeConformer, self).__init__()
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if seed:
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np.random.seed(seed)
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self.rotable_bonds = rotable_bonds
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self.mol = mol
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self.true_mol = true_mol
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self.probe_id = probe_id
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self.ref_id = ref_id
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def score_conformation(self, values):
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for i, r in enumerate(self.rotable_bonds):
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SetDihedral(self.mol.GetConformer(self.probe_id), r, values[i])
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return AllChem.AlignMol(self.mol, self.true_mol, self.probe_id, self.ref_id)
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def get_torsion_angles(mol):
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torsions_list = []
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G = nx.Graph()
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for i, atom in enumerate(mol.GetAtoms()):
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G.add_node(i)
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nodes = set(G.nodes())
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for bond in mol.GetBonds():
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start, end = bond.GetBeginAtomIdx(), bond.GetEndAtomIdx()
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G.add_edge(start, end)
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for e in G.edges():
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G2 = copy.deepcopy(G)
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G2.remove_edge(*e)
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if nx.is_connected(G2): continue
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l = list(sorted(nx.connected_components(G2), key=len)[0])
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if len(l) < 2: continue
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n0 = list(G2.neighbors(e[0]))
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n1 = list(G2.neighbors(e[1]))
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torsions_list.append(
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(n0[0], e[0], e[1], n1[0])
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)
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return torsions_list
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