DrugFlow / src /data /data_utils.py
mority's picture
Upload 53 files
6e7d4ba verified
Raw
History Blame Contribute Delete
32.8 kB
import io
from itertools import accumulate, chain
from copy import deepcopy
import random
import torch
import torch.nn.functional as F
import numpy as np
from rdkit import Chem
from torch_scatter import scatter_mean
from Bio.PDB import StructureBuilder, Chain, Model, Structure
from Bio.PDB.PICIO import read_PIC, write_PIC
from scipy.ndimage import gaussian_filter
from pdb import set_trace
from src.constants import FLOAT_TYPE, INT_TYPE
from src.constants import atom_encoder, bond_encoder, aa_encoder, residue_encoder, residue_bond_encoder, aa_atom_index
from src import utils
from src.data.misc import protein_letters_3to1, is_aa
from src.data.normal_modes import pdb_to_normal_modes
from src.data.nerf import get_nerf_params, ic_to_coords
import src.data.so3_utils as so3
class TensorDict(dict):
def __init__(self, **kwargs):
super(TensorDict, self).__init__(**kwargs)
def _apply(self, func: str, *args, **kwargs):
""" Apply function to all tensors. """
for k, v in self.items():
if torch.is_tensor(v):
self[k] = getattr(v, func)(*args, **kwargs)
return self
# def to(self, device):
# for k, v in self.items():
# if torch.is_tensor(v):
# self[k] = v.to(device)
# return self
def cuda(self):
return self.to('cuda')
def cpu(self):
return self.to('cpu')
def to(self, device):
return self._apply("to", device)
def detach(self):
return self._apply("detach")
def __repr__(self):
def val_to_str(val):
if isinstance(val, torch.Tensor):
# if val.isnan().any():
# return "(!nan)"
return "%r" % list(val.size())
if isinstance(val, list):
return "[%r,]" % len(val)
else:
return "?"
return f"{type(self).__name__}({', '.join(f'{k}={val_to_str(v)}' for k, v in self.items())})"
def collate_entity(batch):
out = {}
for prop in batch[0].keys():
if prop == 'name':
out[prop] = [x[prop] for x in batch]
elif prop == 'size' or prop == 'n_bonds':
out[prop] = torch.tensor([x[prop] for x in batch])
elif prop == 'bonds':
# index offset
offset = list(accumulate([x['size'] for x in batch], initial=0))
out[prop] = torch.cat([x[prop] + offset[i] for i, x in enumerate(batch)], dim=1)
elif prop == 'residues':
out[prop] = list(chain.from_iterable(x[prop] for x in batch))
elif prop in {'mask', 'bond_mask'}:
pass # batch masks will be written later
else:
out[prop] = torch.cat([x[prop] for x in batch], dim=0)
# Create batch masks
# make sure indices in batch start at zero (needed for torch_scatter)
if prop == 'x':
out['mask'] = torch.cat([i * torch.ones(len(x[prop]), dtype=torch.int64, device=x[prop].device)
for i, x in enumerate(batch)], dim=0)
if prop == 'bond_one_hot':
# TODO: this is not necessary as it can be computed on-the-fly as bond_mask = mask[bonds[0]] or bond_mask = mask[bonds[1]]
out['bond_mask'] = torch.cat([i * torch.ones(len(x[prop]), dtype=torch.int64, device=x[prop].device)
for i, x in enumerate(batch)], dim=0)
return out
def split_entity(
batch,
*,
index_types={'bonds'},
edge_types={'bond_one_hot', 'bond_mask'},
no_split={'name', 'size', 'n_bonds'},
skip={'fragments'},
batch_mask=None,
edge_mask=None
):
""" Splits a batch into items and returns a list. """
batch_mask = batch["mask"] if batch_mask is None else batch_mask
edge_mask = batch["bond_mask"] if edge_mask is None else edge_mask
sizes = batch['size'] if 'size' in batch else torch.unique(batch_mask, return_counts=True)[1].tolist()
batch_size = len(torch.unique(batch['mask']))
out = {}
for prop in batch.keys():
if prop in skip:
continue
if prop in no_split:
out[prop] = batch[prop] # already a list
elif prop in index_types:
offsets = list(accumulate(sizes[:-1], initial=0))
out[prop] = utils.batch_to_list_for_indices(batch[prop], edge_mask, offsets)
elif prop in edge_types:
out[prop] = utils.batch_to_list(batch[prop], edge_mask)
else:
out[prop] = utils.batch_to_list(batch[prop], batch_mask)
out = [{k: v[i] for k, v in out.items()} for i in range(batch_size)]
return out
def repeat_items(batch, repeats):
batch_list = split_entity(batch)
out = collate_entity([x for _ in range(repeats) for x in batch_list])
return type(batch)(**out)
def get_side_chain_bead_coord(biopython_residue):
"""
Places side chain bead at the location of the farthest side chain atom.
"""
if biopython_residue.get_resname() == 'GLY':
return None
if biopython_residue.get_resname() == 'ALA':
return biopython_residue['CB'].get_coord()
ca_coord = biopython_residue['CA'].get_coord()
side_chain_atoms = [a for a in biopython_residue.get_atoms() if
a.id not in {'N', 'CA', 'C', 'O'} and a.element != 'H']
side_chain_coords = np.stack([a.get_coord() for a in side_chain_atoms])
atom_idx = np.argmax(np.sum((side_chain_coords - ca_coord[None, :]) ** 2, axis=-1))
return side_chain_coords[atom_idx, :]
def get_side_chain_vectors(res, index_dict, size=None):
if size is None:
size = max([x for aa in index_dict.values() for x in aa.values()]) + 1
resname = protein_letters_3to1[res.get_resname()]
out = np.zeros((size, 3))
for atom in res.get_atoms():
if atom.get_name() in index_dict[resname]:
idx = index_dict[resname][atom.get_name()]
out[idx] = atom.get_coord() - res['CA'].get_coord()
# else:
# if atom.get_name() != 'CA' and not atom.get_name().startswith('H'):
# print(resname, atom.get_name())
return out
def get_normal_modes(res, normal_mode_dict):
nm = normal_mode_dict[(res.get_parent().id, res.id[1], 'CA')] # (n_modes, 3)
return nm
def get_torsion_angles(res, device=None):
"""
Return the five chi angles. Missing angles are filled with zeros.
"""
ANGLES = ['chi1', 'chi2', 'chi3', 'chi4', 'chi5']
ic_res = res.internal_coord
chi_angles = [ic_res.get_angle(chi) for chi in ANGLES]
chi_angles = [chi if chi is not None else float('nan') for chi in chi_angles]
return torch.tensor(chi_angles, device=device) * np.pi / 180
def apply_torsion_angles(res, chi_angles):
"""
Set side chain torsion angles of a biopython residue object with
internal coordinates.
"""
ANGLES = ['chi1', 'chi2', 'chi3', 'chi4', 'chi5']
chi_angles = chi_angles * 180 / np.pi
# res.parent.internal_coord.build_atomArray() # rebuild atom pointers
ic_res = res.internal_coord
for chi, angle in zip(ANGLES, chi_angles):
if ic_res.pick_angle(chi) is None:
continue
ic_res.bond_set(chi, angle)
res.parent.internal_to_atom_coordinates(verbose=False)
# res.parent.internal_coord.init_atom_coords()
# res.internal_coord.assemble()
return res
def prepare_internal_coord(res):
# Make new structure with a single residue
new_struct = Structure.Structure('X')
new_struct.header = {}
new_model = Model.Model(0)
new_struct.add(new_model)
new_chain = Chain.Chain('X')
new_model.add(new_chain)
new_chain.add(res)
res.set_parent(new_chain) # update pointer
# Compute internal coordinates
new_chain.atom_to_internal_coordinates()
pic_io = io.StringIO()
write_PIC(new_struct, pic_io)
return pic_io.getvalue()
def residue_from_internal_coord(ic_string):
pic_io = io.StringIO(ic_string)
struct = read_PIC(pic_io, quick=True)
res = struct.child_list[0].child_list[0].child_list[0]
res.parent.internal_to_atom_coordinates(verbose=False)
return res
def prepare_pocket(biopython_residues, amino_acid_encoder, residue_encoder,
residue_bond_encoder, pocket_representation='side_chain_bead',
compute_nerf_params=False, compute_bb_frames=False,
nma_input=None):
assert nma_input is None or pocket_representation == 'CA+', \
"vector features are only supported for CA+ pockets"
# sort residues
biopython_residues = sorted(biopython_residues, key=lambda x: (x.parent.id, x.id[1]))
if nma_input is not None:
# preprocessed normal mode eigenvectors
if isinstance(nma_input, dict):
nma_dict = nma_input
# PDB file
else:
nma_dict = pdb_to_normal_modes(str(nma_input))
if pocket_representation == 'side_chain_bead':
ca_coords = np.zeros((len(biopython_residues), 3))
ca_types = np.zeros(len(biopython_residues), dtype='int64')
side_chain_coords = []
side_chain_aa_types = []
edges = [] # CA-CA and CA-side_chain
edge_types = []
last_res_id = None
for i, res in enumerate(biopython_residues):
aa = amino_acid_encoder[protein_letters_3to1[res.get_resname()]]
ca_coords[i, :] = res['CA'].get_coord()
ca_types[i] = aa
side_chain_coord = get_side_chain_bead_coord(res)
if side_chain_coord is not None:
side_chain_coords.append(side_chain_coord)
side_chain_aa_types.append(aa)
edges.append((i, len(ca_coords) + len(side_chain_coords) - 1))
edge_types.append(residue_bond_encoder['CA-SS'])
# add edges between contiguous CA atoms
if i > 0 and res.id[1] == last_res_id + 1:
edges.append((i - 1, i))
edge_types.append(residue_bond_encoder['CA-CA'])
last_res_id = res.id[1]
# Coordinates
side_chain_coords = np.stack(side_chain_coords)
pocket_coords = np.concatenate([ca_coords, side_chain_coords], axis=0)
pocket_coords = torch.from_numpy(pocket_coords)
# Features
amino_acid_onehot = F.one_hot(
torch.cat([torch.from_numpy(ca_types), torch.tensor(side_chain_aa_types, dtype=torch.int64)], dim=0),
num_classes=len(amino_acid_encoder)
)
side_chain_onehot = np.concatenate([
np.tile(np.eye(1, len(residue_encoder), residue_encoder['CA']),
[len(ca_coords), 1]),
np.tile(np.eye(1, len(residue_encoder), residue_encoder['SS']),
[len(side_chain_coords), 1])
], axis=0)
side_chain_onehot = torch.from_numpy(side_chain_onehot)
pocket_onehot = torch.cat([amino_acid_onehot, side_chain_onehot], dim=1)
vector_features = None
nma_features = None
# Bonds
edges = torch.tensor(edges).T
edge_types = F.one_hot(torch.tensor(edge_types), num_classes=len(residue_bond_encoder))
elif pocket_representation == 'CA+':
ca_coords = np.zeros((len(biopython_residues), 3))
ca_types = np.zeros(len(biopython_residues), dtype='int64')
v_dim = max([x for aa in aa_atom_index.values() for x in aa.values()]) + 1
vec_feats = np.zeros((len(biopython_residues), v_dim, 3), dtype='float32')
nf_nma = 5
nma_feats = np.zeros((len(biopython_residues), nf_nma, 3), dtype='float32')
edges = [] # CA-CA and CA-side_chain
edge_types = []
last_res_id = None
for i, res in enumerate(biopython_residues):
aa = amino_acid_encoder[protein_letters_3to1[res.get_resname()]]
ca_coords[i, :] = res['CA'].get_coord()
ca_types[i] = aa
vec_feats[i] = get_side_chain_vectors(res, aa_atom_index, v_dim)
if nma_input is not None:
nma_feats[i] = get_normal_modes(res, nma_dict)
# add edges between contiguous CA atoms
if i > 0 and res.id[1] == last_res_id + 1:
edges.append((i - 1, i))
edge_types.append(residue_bond_encoder['CA-CA'])
last_res_id = res.id[1]
# Coordinates
pocket_coords = torch.from_numpy(ca_coords)
# Features
pocket_onehot = F.one_hot(torch.from_numpy(ca_types),
num_classes=len(amino_acid_encoder))
vector_features = torch.from_numpy(vec_feats)
nma_features = torch.from_numpy(nma_feats)
# Bonds
if len(edges) < 1:
edges = torch.empty(2, 0)
edge_types = torch.empty(0, len(residue_bond_encoder))
else:
edges = torch.tensor(edges).T
edge_types = F.one_hot(torch.tensor(edge_types),
num_classes=len(residue_bond_encoder))
else:
raise NotImplementedError(
f"Pocket representation '{pocket_representation}' not implemented")
# pocket_ids = [f'{res.parent.id}:{res.id[1]}' for res in biopython_residues]
pocket = {
'x': pocket_coords.to(dtype=FLOAT_TYPE),
'one_hot': pocket_onehot.to(dtype=FLOAT_TYPE),
# 'ids': pocket_ids,
'size': torch.tensor([len(pocket_coords)], dtype=INT_TYPE),
'mask': torch.zeros(len(pocket_coords), dtype=INT_TYPE),
'bonds': edges.to(INT_TYPE),
'bond_one_hot': edge_types.to(FLOAT_TYPE),
'bond_mask': torch.zeros(edges.size(1), dtype=INT_TYPE),
'n_bonds': torch.tensor([len(edge_types)], dtype=INT_TYPE),
}
if vector_features is not None:
pocket['v'] = vector_features.to(dtype=FLOAT_TYPE)
if nma_input is not None:
pocket['nma_vec'] = nma_features.to(dtype=FLOAT_TYPE)
if compute_nerf_params:
nerf_params = [get_nerf_params(r) for r in biopython_residues]
nerf_params = {k: torch.stack([x[k] for x in nerf_params], dim=0)
for k in nerf_params[0].keys()}
pocket.update(nerf_params)
if compute_bb_frames:
n_xyz = torch.from_numpy(np.stack([r['N'].get_coord() for r in biopython_residues]))
ca_xyz = torch.from_numpy(np.stack([r['CA'].get_coord() for r in biopython_residues]))
c_xyz = torch.from_numpy(np.stack([r['C'].get_coord() for r in biopython_residues]))
pocket['axis_angle'], _ = get_bb_transform(n_xyz, ca_xyz, c_xyz)
return pocket, biopython_residues
def encode_atom(rd_atom, atom_encoder):
element = rd_atom.GetSymbol().capitalize()
explicitHs = rd_atom.GetNumExplicitHs()
if explicitHs == 1 and f'{element}H' in atom_encoder:
return atom_encoder[f'{element}H']
charge = rd_atom.GetFormalCharge()
if charge == 1 and f'{element}+' in atom_encoder:
return atom_encoder[f'{element}+']
if charge == -1 and f'{element}-' in atom_encoder:
return atom_encoder[f'{element}-']
return atom_encoder[element]
def prepare_ligand(rdmol, atom_encoder, bond_encoder):
# remove H atoms if not in atom_encoder
if 'H' not in atom_encoder:
rdmol = Chem.RemoveAllHs(rdmol, sanitize=False)
# Coordinates
ligand_coord = rdmol.GetConformer().GetPositions()
ligand_coord = torch.from_numpy(ligand_coord)
# Features
ligand_onehot = F.one_hot(
torch.tensor([encode_atom(a, atom_encoder) for a in rdmol.GetAtoms()]),
num_classes=len(atom_encoder)
)
# Bonds
adj = np.ones((rdmol.GetNumAtoms(), rdmol.GetNumAtoms())) * bond_encoder['NOBOND']
for b in rdmol.GetBonds():
i = b.GetBeginAtomIdx()
j = b.GetEndAtomIdx()
adj[i, j] = bond_encoder[str(b.GetBondType())]
adj[j, i] = adj[i, j] # undirected graph
# molecular graph is undirected -> don't save redundant information
bonds = np.stack(np.triu_indices(len(ligand_coord), k=1), axis=0)
# bonds = np.stack(np.ones_like(adj).nonzero(), axis=0)
bond_types = adj[bonds[0], bonds[1]].astype('int64')
bonds = torch.from_numpy(bonds)
bond_types = F.one_hot(torch.from_numpy(bond_types), num_classes=len(bond_encoder))
ligand = {
'x': ligand_coord.to(dtype=FLOAT_TYPE),
'one_hot': ligand_onehot.to(dtype=FLOAT_TYPE),
'mask': torch.zeros(len(ligand_coord), dtype=INT_TYPE),
'bonds': bonds.to(INT_TYPE),
'bond_one_hot': bond_types.to(FLOAT_TYPE),
'bond_mask': torch.zeros(bonds.size(1), dtype=INT_TYPE),
'size': torch.tensor([len(ligand_coord)], dtype=INT_TYPE),
'n_bonds': torch.tensor([len(bond_types)], dtype=INT_TYPE),
}
return ligand
def process_raw_molecule_with_empty_pocket(rdmol):
ligand = prepare_ligand(rdmol, atom_encoder, bond_encoder)
pocket = {
'x': torch.tensor([], dtype=FLOAT_TYPE),
'one_hot': torch.tensor([], dtype=FLOAT_TYPE),
'size': torch.tensor([], dtype=INT_TYPE),
'mask': torch.tensor([], dtype=INT_TYPE),
'bonds': torch.tensor([], dtype=INT_TYPE),
'bond_one_hot': torch.tensor([], dtype=FLOAT_TYPE),
'bond_mask': torch.tensor([], dtype=INT_TYPE),
'n_bonds': torch.tensor([], dtype=INT_TYPE),
}
return ligand, pocket
def process_raw_pair(biopython_model, rdmol, dist_cutoff=None,
pocket_representation='side_chain_bead',
compute_nerf_params=False, compute_bb_frames=False,
nma_input=None, return_pocket_pdb=False):
# Process ligand
ligand = prepare_ligand(rdmol, atom_encoder, bond_encoder)
# Find interacting pocket residues based on distance cutoff
pocket_residues = []
for residue in biopython_model.get_residues():
# Remove non-standard amino acids and HETATMs
if not is_aa(residue.get_resname(), standard=True):
continue
res_coords = torch.from_numpy(np.array([a.get_coord() for a in residue.get_atoms()]))
if dist_cutoff is None or (((res_coords[:, None, :] - ligand['x'][None, :, :]) ** 2).sum(-1) ** 0.5).min() < dist_cutoff:
pocket_residues.append(residue)
pocket, pocket_residues = prepare_pocket(
pocket_residues, aa_encoder, residue_encoder, residue_bond_encoder,
pocket_representation, compute_nerf_params, compute_bb_frames, nma_input
)
if return_pocket_pdb:
builder = StructureBuilder.StructureBuilder()
builder.init_structure("")
builder.init_model(0)
pocket_struct = builder.get_structure()
for residue in pocket_residues:
chain = residue.get_parent().get_id()
# init chain if necessary
if not pocket_struct[0].has_id(chain):
builder.init_chain(chain)
# add residue
pocket_struct[0][chain].add(residue)
pocket['pocket_pdb'] = pocket_struct
# if return_pocket_pdb:
# pocket['residues'] = [prepare_internal_coord(res) for res in pocket_residues]
return ligand, pocket
class AppendVirtualNodes:
def __init__(self, atom_encoder, bond_encoder, max_ligand_size, scale=1.0):
self.max_size = max_ligand_size
self.atom_encoder = atom_encoder
self.bond_encoder = bond_encoder
self.vidx = atom_encoder['NOATOM']
self.bidx = bond_encoder['NOBOND']
self.scale = scale
def __call__(self, ligand, max_size=None, eps=1e-6):
if max_size is None:
max_size = self.max_size
n_virt = max_size - ligand['size']
C = torch.cov(ligand['x'].T)
L = torch.linalg.cholesky(C + torch.eye(3) * eps)
mu = ligand['x'].mean(0, keepdim=True)
virt_coords = mu + torch.randn(n_virt, 3) @ L.T * self.scale
# insert virtual atom column
virt_one_hot = F.one_hot(torch.ones(n_virt, dtype=torch.int64) * self.vidx, num_classes=len(self.atom_encoder))
virt_mask = torch.cat([torch.zeros(ligand['size'], dtype=bool), torch.ones(n_virt, dtype=bool)])
ligand['x'] = torch.cat([ligand['x'], virt_coords])
ligand['one_hot'] = torch.cat(([ligand['one_hot'], virt_one_hot]))
ligand['virtual_mask'] = virt_mask
ligand['size'] = max_size
# Bonds
new_bonds = torch.triu_indices(max_size, max_size, offset=1)
bond_types = torch.ones(max_size, max_size, dtype=INT_TYPE) * self.bidx
row, col = ligand['bonds']
bond_types[row, col] = ligand['bond_one_hot'].argmax(dim=1)
new_row, new_col = new_bonds
bond_types = bond_types[new_row, new_col]
ligand['bonds'] = new_bonds
ligand['bond_one_hot'] = F.one_hot(bond_types, num_classes=len(self.bond_encoder)).to(ligand['bond_one_hot'].dtype)
ligand['n_bonds'] = len(ligand['bond_one_hot'])
return ligand
class AppendVirtualNodesInCoM:
def __init__(self, atom_encoder, bond_encoder, add_min=0, add_max=10):
self.atom_encoder = atom_encoder
self.bond_encoder = bond_encoder
self.vidx = atom_encoder['NOATOM']
self.bidx = bond_encoder['NOBOND']
self.add_min = add_min
self.add_max = add_max
def __call__(self, ligand):
n_virt = random.randint(self.add_min, self.add_max)
# all virtual coordinates in the CoM
virt_coords = ligand['x'].mean(0, keepdim=True).repeat(n_virt, 1)
# insert virtual atom column
virt_one_hot = F.one_hot(torch.ones(n_virt, dtype=torch.int64) * self.vidx, num_classes=len(self.atom_encoder))
virt_mask = torch.cat([torch.zeros(ligand['size'], dtype=bool), torch.ones(n_virt, dtype=bool)])
ligand['x'] = torch.cat([ligand['x'], virt_coords])
ligand['one_hot'] = torch.cat(([ligand['one_hot'], virt_one_hot]))
ligand['virtual_mask'] = virt_mask
ligand['size'] = len(ligand['x'])
# Bonds
new_bonds = torch.triu_indices(ligand['size'], ligand['size'], offset=1)
bond_types = torch.ones(ligand['size'], ligand['size'], dtype=INT_TYPE) * self.bidx
row, col = ligand['bonds']
bond_types[row, col] = ligand['bond_one_hot'].argmax(dim=1)
new_row, new_col = new_bonds
bond_types = bond_types[new_row, new_col]
ligand['bonds'] = new_bonds
ligand['bond_one_hot'] = F.one_hot(bond_types, num_classes=len(self.bond_encoder)).to(ligand['bond_one_hot'].dtype)
ligand['n_bonds'] = len(ligand['bond_one_hot'])
return ligand
def rdmol_to_smiles(rdmol):
mol = Chem.Mol(rdmol)
Chem.RemoveStereochemistry(mol)
mol = Chem.RemoveHs(mol)
return Chem.MolToSmiles(mol)
def get_n_nodes(lig_positions, pocket_positions, smooth_sigma=None):
# Joint distribution of ligand's and pocket's number of nodes
n_nodes_lig = [len(x) for x in lig_positions]
n_nodes_pocket = [len(x) for x in pocket_positions]
joint_histogram = np.zeros((np.max(n_nodes_lig) + 1,
np.max(n_nodes_pocket) + 1))
for nlig, npocket in zip(n_nodes_lig, n_nodes_pocket):
joint_histogram[nlig, npocket] += 1
print(f'Original histogram: {np.count_nonzero(joint_histogram)}/'
f'{joint_histogram.shape[0] * joint_histogram.shape[1]} bins filled')
# Smooth the histogram
if smooth_sigma is not None:
filtered_histogram = gaussian_filter(
joint_histogram, sigma=smooth_sigma, order=0, mode='constant',
cval=0.0, truncate=4.0)
print(f'Smoothed histogram: {np.count_nonzero(filtered_histogram)}/'
f'{filtered_histogram.shape[0] * filtered_histogram.shape[1]} bins filled')
joint_histogram = filtered_histogram
return joint_histogram
# def get_type_histograms(lig_one_hot, pocket_one_hot, lig_encoder, pocket_encoder):
#
# lig_one_hot = np.concatenate(lig_one_hot, axis=0)
# pocket_one_hot = np.concatenate(pocket_one_hot, axis=0)
#
# atom_decoder = list(lig_encoder.keys())
# lig_counts = {k: 0 for k in lig_encoder.keys()}
# for a in [atom_decoder[x] for x in lig_one_hot.argmax(1)]:
# lig_counts[a] += 1
#
# aa_decoder = list(pocket_encoder.keys())
# pocket_counts = {k: 0 for k in pocket_encoder.keys()}
# for r in [aa_decoder[x] for x in pocket_one_hot.argmax(1)]:
# pocket_counts[r] += 1
#
# return lig_counts, pocket_counts
def get_type_histogram(one_hot, type_encoder):
one_hot = np.concatenate(one_hot, axis=0)
decoder = list(type_encoder.keys())
counts = {k: 0 for k in type_encoder.keys()}
for a in [decoder[x] for x in one_hot.argmax(1)]:
counts[a] += 1
return counts
def get_residue_with_resi(pdb_chain, resi):
res = [x for x in pdb_chain.get_residues() if x.id[1] == resi]
assert len(res) == 1
return res[0]
def get_pocket_from_ligand(pdb_model, ligand, dist_cutoff=8.0):
if ligand.endswith(".sdf"):
# ligand as sdf file
rdmol = Chem.SDMolSupplier(str(ligand))[0]
ligand_coords = torch.from_numpy(rdmol.GetConformer().GetPositions()).float()
resi = None
else:
# ligand contained in PDB; given in <chain>:<resi> format
chain, resi = ligand.split(':')
ligand = get_residue_with_resi(pdb_model[chain], int(resi))
ligand_coords = torch.from_numpy(
np.array([a.get_coord() for a in ligand.get_atoms()]))
pocket_residues = []
for residue in pdb_model.get_residues():
if residue.id[1] == resi:
continue # skip ligand itself
res_coords = torch.from_numpy(
np.array([a.get_coord() for a in residue.get_atoms()]))
if is_aa(residue.get_resname(), standard=True) \
and torch.cdist(res_coords, ligand_coords).min() < dist_cutoff:
pocket_residues.append(residue)
return pocket_residues
def encode_residues(biopython_residues, type_encoder, level='atom',
remove_H=True):
assert level in {'atom', 'residue'}
if level == 'atom':
entities = [a for res in biopython_residues for a in res.get_atoms()
if (a.element != 'H' or not remove_H)]
types = [a.element.capitalize() for a in entities]
else:
entities = [res['CA'] for res in biopython_residues]
types = [protein_letters_3to1[res.get_resname()] for res in biopython_residues]
coord = torch.tensor(np.stack([e.get_coord() for e in entities]))
one_hot = F.one_hot(torch.tensor([type_encoder[t] for t in types]),
num_classes=len(type_encoder))
return coord, one_hot
def center_data(ligand, pocket):
if pocket['x'].numel() > 0:
pocket_com = pocket.center()
else:
pocket_com = scatter_mean(ligand['x'], ligand['mask'], dim=0)
ligand['x'] = ligand['x'] - pocket_com[ligand['mask']]
return ligand, pocket
def get_bb_transform(n_xyz, ca_xyz, c_xyz):
"""
Compute translation and rotation of the canoncical backbone frame (triangle N-Ca-C) from a position with
Ca at the origin, N on the x-axis and C in the xy-plane to the global position of the backbone frame
Args:
n_xyz: (n, 3)
ca_xyz: (n, 3)
c_xyz: (n, 3)
Returns:
axis-angle representation of the rotation, shape (n, 3) # rotation matrix of shape (n, 3, 3)
translation vector of shape (n, 3)
"""
def rotation_matrix(angle, axis):
axis_mapping = {'x': 0, 'y': 1, 'z': 2}
axis = axis_mapping[axis]
vector = torch.zeros(len(angle), 3)
vector[:, axis] = 1
# return axis_angle_to_matrix(angle * vector)
return so3.matrix_from_rotation_vector(angle.view(-1, 1) * vector)
translation = ca_xyz
n_xyz = n_xyz - translation
c_xyz = c_xyz - translation
# Find rotation matrix that aligns the coordinate systems
# rotate around y-axis to move N into the xy-plane
theta_y = torch.arctan2(n_xyz[:, 2], -n_xyz[:, 0])
Ry = rotation_matrix(theta_y, 'y')
Ry = Ry.transpose(2, 1)
n_xyz = torch.einsum('noi,ni->no', Ry, n_xyz)
# rotate around z-axis to move N onto the x-axis
theta_z = torch.arctan2(n_xyz[:, 1], n_xyz[:, 0])
Rz = rotation_matrix(theta_z, 'z')
Rz = Rz.transpose(2, 1)
# print(torch.einsum('noi,ni->no', Rz, n_xyz))
# n_xyz = torch.einsum('noi,ni->no', Rz.transpose(0, 2, 1), n_xyz)
# rotate around x-axis to move C into the xy-plane
c_xyz = torch.einsum('noj,nji,ni->no', Rz, Ry, c_xyz)
theta_x = torch.arctan2(c_xyz[:, 2], c_xyz[:, 1])
Rx = rotation_matrix(theta_x, 'x')
Rx = Rx.transpose(2, 1)
# print(torch.einsum('noi,ni->no', Rx, c_xyz))
# Final rotation matrix
Ry = Ry.transpose(2, 1)
Rz = Rz.transpose(2, 1)
Rx = Rx.transpose(2, 1)
R = torch.einsum('nok,nkj,nji->noi', Ry, Rz, Rx)
# return R, translation
# return matrix_to_axis_angle(R), translation
return so3.rotation_vector_from_matrix(R), translation
class Residues(TensorDict):
"""
Dictionary-like container for residues that supports some basic transformations.
"""
# all keys
KEYS = {'x', 'one_hot', 'bonds', 'bond_one_hot', 'v', 'nma_vec', 'fixed_coord',
'atom_mask', 'nerf_indices', 'length', 'theta', 'chi', 'ddihedral',
'chi_indices', 'axis_angle', 'mask', 'bond_mask'}
# coordinate-type values, shape (..., 3)
COORD_KEYS = {'x', 'fixed_coord'}
# vector-type values, shape (n_residues, n_feat, 3)
VECTOR_KEYS = {'v', 'nma_vec'}
# properties that change if the side chains and/or backbones are updated
MUTABLE_PROPS_SS_AND_BB = {'v'}
# properties that only change if the side chains are updated
MUTABLE_PROPS_SS = {'chi'}
# properties that only change if the backbones are updated
MUTABLE_PROPS_BB = {'x', 'fixed_coord', 'axis_angle', 'nma_vec'}
# properties that remain fixed in all cases
IMMUTABLE_PROPS = {'mask', 'one_hot', 'bonds', 'bond_one_hot', 'bond_mask',
'atom_mask', 'nerf_indices', 'length', 'theta',
'ddihedral', 'chi_indices', 'name', 'size', 'n_bonds'}
def copy(self):
data = super().copy()
return Residues(**data)
def deepcopy(self):
data = {k: v.clone() if torch.is_tensor(v) else deepcopy(v)
for k, v in self.items()}
return Residues(**data)
def center(self):
com = scatter_mean(self['x'], self['mask'], dim=0)
self['x'] = self['x'] - com[self['mask']]
self['fixed_coord'] = self['fixed_coord'] - com[self['mask']].unsqueeze(1)
return com
def set_empty_v(self):
self['v'] = torch.tensor([], device=self['x'].device)
@torch.no_grad()
def set_chi(self, chi_angles):
self['chi'][:, :5] = chi_angles
nerf_params = {k: self[k] for k in ['fixed_coord', 'atom_mask',
'nerf_indices', 'length', 'theta',
'chi', 'ddihedral', 'chi_indices']}
self['v'] = ic_to_coords(**nerf_params) - self['x'].unsqueeze(1)
@torch.no_grad()
def set_frame(self, new_ca_coord, new_axis_angle):
bb_coord = self['fixed_coord']
bb_coord = bb_coord - self['x'].unsqueeze(1)
rotmat_before = so3.matrix_from_rotation_vector(self['axis_angle'])
rotmat_after = so3.matrix_from_rotation_vector(new_axis_angle)
rotmat_diff = rotmat_after @ rotmat_before.transpose(-1, -2)
bb_coord = torch.einsum('boi,bai->bao', rotmat_diff, bb_coord)
bb_coord = bb_coord + new_ca_coord.unsqueeze(1)
self['x'] = new_ca_coord
self['axis_angle'] = new_axis_angle
self['fixed_coord'] = bb_coord
self['v'] = torch.einsum('boi,bai->bao', rotmat_diff, self['v'])
@staticmethod
def empty(device):
return Residues(
x=torch.zeros(1, 3, device=device).float(),
mask=torch.zeros(1, 1, device=device).long(),
size=torch.zeros(1, device=device).long(),
)
def randomize_tensors(tensor_dict, exclude_keys=None):
"""Replace tensors with random tensors with the same shape."""
exclude_keys = set() if exclude_keys is None else set(exclude_keys)
for k, v in tensor_dict.items():
if isinstance(v, torch.Tensor) and k not in exclude_keys:
if torch.is_floating_point(v):
tensor_dict[k] = torch.randn_like(v)
else:
tensor_dict[k] = torch.randint_like(v, low=-42, high=42)
return tensor_dict