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from __future__ import print_function |
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import json, time, os, sys, glob |
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import shutil |
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import numpy as np |
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import torch |
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from torch import optim |
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from torch.utils.data import DataLoader |
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from torch.utils.data.dataset import random_split, Subset |
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import copy |
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import torch.nn as nn |
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import torch.nn.functional as F |
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import random |
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import itertools |
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def _scores(S, log_probs, mask): |
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""" Negative log probabilities """ |
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criterion = torch.nn.NLLLoss(reduction='none') |
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loss = criterion( |
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log_probs.contiguous().view(-1,log_probs.size(-1)), |
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S.contiguous().view(-1) |
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).view(S.size()) |
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scores = torch.sum(loss * mask, dim=-1) / torch.sum(mask, dim=-1) |
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return scores |
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def _S_to_seq(S, mask): |
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alphabet = 'ACDEFGHIKLMNPQRSTVWYX' |
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seq = ''.join([alphabet[c] for c, m in zip(S.tolist(), mask.tolist()) if m > 0]) |
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return seq |
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def parse_PDB_biounits(x, atoms=['N','CA','C'], chain=None): |
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''' |
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input: x = PDB filename |
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atoms = atoms to extract (optional) |
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output: (length, atoms, coords=(x,y,z)), sequence |
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''' |
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alpha_1 = list("ARNDCQEGHILKMFPSTWYV-") |
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states = len(alpha_1) |
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alpha_3 = ['ALA','ARG','ASN','ASP','CYS','GLN','GLU','GLY','HIS','ILE', |
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'LEU','LYS','MET','PHE','PRO','SER','THR','TRP','TYR','VAL','GAP'] |
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aa_1_N = {a:n for n,a in enumerate(alpha_1)} |
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aa_3_N = {a:n for n,a in enumerate(alpha_3)} |
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aa_N_1 = {n:a for n,a in enumerate(alpha_1)} |
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aa_1_3 = {a:b for a,b in zip(alpha_1,alpha_3)} |
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aa_3_1 = {b:a for a,b in zip(alpha_1,alpha_3)} |
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def AA_to_N(x): |
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x = np.array(x); |
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if x.ndim == 0: x = x[None] |
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return [[aa_1_N.get(a, states-1) for a in y] for y in x] |
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def N_to_AA(x): |
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x = np.array(x); |
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if x.ndim == 1: x = x[None] |
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return ["".join([aa_N_1.get(a,"-") for a in y]) for y in x] |
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xyz,seq,min_resn,max_resn = {},{},1e6,-1e6 |
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for line in open(x,"rb"): |
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line = line.decode("utf-8","ignore").rstrip() |
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if line[:6] == "HETATM" and line[17:17+3] == "MSE": |
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line = line.replace("HETATM","ATOM ") |
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line = line.replace("MSE","MET") |
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if line[:4] == "ATOM": |
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ch = line[21:22] |
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if ch == chain or chain is None: |
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atom = line[12:12+4].strip() |
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resi = line[17:17+3] |
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resn = line[22:22+5].strip() |
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x,y,z = [float(line[i:(i+8)]) for i in [30,38,46]] |
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if resn[-1].isalpha(): |
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resa,resn = resn[-1],int(resn[:-1])-1 |
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else: |
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resa,resn = "",int(resn)-1 |
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if resn < min_resn: |
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min_resn = resn |
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if resn > max_resn: |
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max_resn = resn |
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if resn not in xyz: |
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xyz[resn] = {} |
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if resa not in xyz[resn]: |
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xyz[resn][resa] = {} |
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if resn not in seq: |
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seq[resn] = {} |
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if resa not in seq[resn]: |
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seq[resn][resa] = resi |
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if atom not in xyz[resn][resa]: |
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xyz[resn][resa][atom] = np.array([x,y,z]) |
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seq_,xyz_ = [],[] |
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try: |
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for resn in range(min_resn,max_resn+1): |
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if resn in seq: |
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for k in sorted(seq[resn]): seq_.append(aa_3_N.get(seq[resn][k],20)) |
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else: seq_.append(20) |
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if resn in xyz: |
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for k in sorted(xyz[resn]): |
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for atom in atoms: |
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if atom in xyz[resn][k]: xyz_.append(xyz[resn][k][atom]) |
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else: xyz_.append(np.full(3,np.nan)) |
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else: |
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for atom in atoms: xyz_.append(np.full(3,np.nan)) |
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return np.array(xyz_).reshape(-1,len(atoms),3), N_to_AA(np.array(seq_)) |
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except TypeError: |
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return 'no_chain', 'no_chain' |
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def parse_PDB(path_to_pdb, input_chain_list=None, ca_only=False): |
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c=0 |
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pdb_dict_list = [] |
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init_alphabet = ['A', 'B', 'C', 'D', 'E', 'F', 'G','H', 'I', 'J','K', 'L', 'M', 'N', 'O', 'P', 'Q', 'R', 'S', 'T','U', 'V','W','X', 'Y', 'Z', 'a', 'b', 'c', 'd', 'e', 'f', 'g','h', 'i', 'j','k', 'l', 'm', 'n', 'o', 'p', 'q', 'r', 's', 't','u', 'v','w','x', 'y', 'z'] |
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extra_alphabet = [str(item) for item in list(np.arange(300))] |
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chain_alphabet = init_alphabet + extra_alphabet |
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if input_chain_list: |
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chain_alphabet = input_chain_list |
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biounit_names = [path_to_pdb] |
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for biounit in biounit_names: |
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my_dict = {} |
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s = 0 |
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concat_seq = '' |
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concat_N = [] |
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concat_CA = [] |
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concat_C = [] |
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concat_O = [] |
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concat_mask = [] |
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coords_dict = {} |
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for letter in chain_alphabet: |
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if ca_only: |
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sidechain_atoms = ['CA'] |
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else: |
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sidechain_atoms = ['N', 'CA', 'C', 'O'] |
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xyz, seq = parse_PDB_biounits(biounit, atoms=sidechain_atoms, chain=letter) |
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if type(xyz) != str: |
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concat_seq += seq[0] |
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my_dict['seq_chain_'+letter]=seq[0] |
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coords_dict_chain = {} |
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if ca_only: |
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coords_dict_chain['CA_chain_'+letter]=xyz.tolist() |
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else: |
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coords_dict_chain['N_chain_' + letter] = xyz[:, 0, :].tolist() |
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coords_dict_chain['CA_chain_' + letter] = xyz[:, 1, :].tolist() |
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coords_dict_chain['C_chain_' + letter] = xyz[:, 2, :].tolist() |
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coords_dict_chain['O_chain_' + letter] = xyz[:, 3, :].tolist() |
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my_dict['coords_chain_'+letter]=coords_dict_chain |
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s += 1 |
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fi = biounit.rfind("/") |
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my_dict['name']=biounit[(fi+1):(fi+5)] |
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my_dict['num_of_chains'] = s |
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my_dict['seq'] = concat_seq |
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if s <= len(chain_alphabet): |
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pdb_dict_list.append(my_dict) |
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c+=1 |
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return pdb_dict_list |
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def tied_featurize(batch, device, chain_dict, fixed_position_dict=None, omit_AA_dict=None, tied_positions_dict=None, pssm_dict=None, bias_by_res_dict=None, ca_only=False): |
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""" Pack and pad batch into torch tensors """ |
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alphabet = 'ACDEFGHIKLMNPQRSTVWYX' |
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B = len(batch) |
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lengths = np.array([len(b['seq']) for b in batch], dtype=np.int32) |
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L_max = max([len(b['seq']) for b in batch]) |
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if ca_only: |
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X = np.zeros([B, L_max, 1, 3]) |
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else: |
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X = np.zeros([B, L_max, 4, 3]) |
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residue_idx = -100*np.ones([B, L_max], dtype=np.int32) |
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chain_M = np.zeros([B, L_max], dtype=np.int32) |
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pssm_coef_all = np.zeros([B, L_max], dtype=np.float32) |
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pssm_bias_all = np.zeros([B, L_max, 21], dtype=np.float32) |
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pssm_log_odds_all = 10000.0*np.ones([B, L_max, 21], dtype=np.float32) |
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chain_M_pos = np.zeros([B, L_max], dtype=np.int32) |
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bias_by_res_all = np.zeros([B, L_max, 21], dtype=np.float32) |
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chain_encoding_all = np.zeros([B, L_max], dtype=np.int32) |
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S = np.zeros([B, L_max], dtype=np.int32) |
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omit_AA_mask = np.zeros([B, L_max, len(alphabet)], dtype=np.int32) |
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letter_list_list = [] |
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visible_list_list = [] |
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masked_list_list = [] |
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masked_chain_length_list_list = [] |
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tied_pos_list_of_lists_list = [] |
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for i, b in enumerate(batch): |
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if chain_dict != None: |
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masked_chains, visible_chains = chain_dict[b['name']] |
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else: |
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masked_chains = [item[-1:] for item in list(b) if item[:10]=='seq_chain_'] |
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visible_chains = [] |
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num_chains = b['num_of_chains'] |
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all_chains = masked_chains + visible_chains |
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for i, b in enumerate(batch): |
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mask_dict = {} |
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a = 0 |
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x_chain_list = [] |
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chain_mask_list = [] |
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chain_seq_list = [] |
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chain_encoding_list = [] |
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c = 1 |
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letter_list = [] |
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global_idx_start_list = [0] |
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visible_list = [] |
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masked_list = [] |
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masked_chain_length_list = [] |
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fixed_position_mask_list = [] |
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omit_AA_mask_list = [] |
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pssm_coef_list = [] |
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pssm_bias_list = [] |
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pssm_log_odds_list = [] |
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bias_by_res_list = [] |
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l0 = 0 |
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l1 = 0 |
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for step, letter in enumerate(all_chains): |
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if letter in visible_chains: |
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letter_list.append(letter) |
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visible_list.append(letter) |
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chain_seq = b[f'seq_chain_{letter}'] |
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chain_seq = ''.join([a if a!='-' else 'X' for a in chain_seq]) |
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chain_length = len(chain_seq) |
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global_idx_start_list.append(global_idx_start_list[-1]+chain_length) |
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chain_coords = b[f'coords_chain_{letter}'] |
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chain_mask = np.zeros(chain_length) |
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if ca_only: |
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x_chain = np.array(chain_coords[f'CA_chain_{letter}']) |
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if len(x_chain.shape) == 2: |
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x_chain = x_chain[:,None,:] |
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else: |
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x_chain = np.stack([chain_coords[c] for c in [f'N_chain_{letter}', f'CA_chain_{letter}', f'C_chain_{letter}', f'O_chain_{letter}']], 1) |
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x_chain_list.append(x_chain) |
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chain_mask_list.append(chain_mask) |
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chain_seq_list.append(chain_seq) |
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chain_encoding_list.append(c*np.ones(np.array(chain_mask).shape[0])) |
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l1 += chain_length |
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residue_idx[i, l0:l1] = 100*(c-1)+np.arange(l0, l1) |
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l0 += chain_length |
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c+=1 |
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fixed_position_mask = np.ones(chain_length) |
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fixed_position_mask_list.append(fixed_position_mask) |
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omit_AA_mask_temp = np.zeros([chain_length, len(alphabet)], np.int32) |
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omit_AA_mask_list.append(omit_AA_mask_temp) |
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pssm_coef = np.zeros(chain_length) |
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pssm_bias = np.zeros([chain_length, 21]) |
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pssm_log_odds = 10000.0*np.ones([chain_length, 21]) |
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pssm_coef_list.append(pssm_coef) |
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pssm_bias_list.append(pssm_bias) |
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pssm_log_odds_list.append(pssm_log_odds) |
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bias_by_res_list.append(np.zeros([chain_length, 21])) |
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if letter in masked_chains: |
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masked_list.append(letter) |
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letter_list.append(letter) |
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chain_seq = b[f'seq_chain_{letter}'] |
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chain_seq = ''.join([a if a!='-' else 'X' for a in chain_seq]) |
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chain_length = len(chain_seq) |
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global_idx_start_list.append(global_idx_start_list[-1]+chain_length) |
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masked_chain_length_list.append(chain_length) |
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chain_coords = b[f'coords_chain_{letter}'] |
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chain_mask = np.ones(chain_length) |
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if ca_only: |
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x_chain = np.array(chain_coords[f'CA_chain_{letter}']) |
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if len(x_chain.shape) == 2: |
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x_chain = x_chain[:,None,:] |
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else: |
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x_chain = np.stack([chain_coords[c] for c in [f'N_chain_{letter}', f'CA_chain_{letter}', f'C_chain_{letter}', f'O_chain_{letter}']], 1) |
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x_chain_list.append(x_chain) |
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chain_mask_list.append(chain_mask) |
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chain_seq_list.append(chain_seq) |
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chain_encoding_list.append(c*np.ones(np.array(chain_mask).shape[0])) |
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l1 += chain_length |
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residue_idx[i, l0:l1] = 100*(c-1)+np.arange(l0, l1) |
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l0 += chain_length |
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c+=1 |
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fixed_position_mask = np.ones(chain_length) |
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if fixed_position_dict!=None: |
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fixed_pos_list = fixed_position_dict[b['name']][letter] |
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if fixed_pos_list: |
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fixed_position_mask[np.array(fixed_pos_list)-1] = 0.0 |
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fixed_position_mask_list.append(fixed_position_mask) |
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omit_AA_mask_temp = np.zeros([chain_length, len(alphabet)], np.int32) |
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if omit_AA_dict!=None: |
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for item in omit_AA_dict[b['name']][letter]: |
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idx_AA = np.array(item[0])-1 |
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AA_idx = np.array([np.argwhere(np.array(list(alphabet))== AA)[0][0] for AA in item[1]]).repeat(idx_AA.shape[0]) |
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idx_ = np.array([[a, b] for a in idx_AA for b in AA_idx]) |
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omit_AA_mask_temp[idx_[:,0], idx_[:,1]] = 1 |
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omit_AA_mask_list.append(omit_AA_mask_temp) |
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pssm_coef = np.zeros(chain_length) |
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pssm_bias = np.zeros([chain_length, 21]) |
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pssm_log_odds = 10000.0*np.ones([chain_length, 21]) |
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if pssm_dict: |
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if pssm_dict[b['name']][letter]: |
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pssm_coef = pssm_dict[b['name']][letter]['pssm_coef'] |
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pssm_bias = pssm_dict[b['name']][letter]['pssm_bias'] |
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pssm_log_odds = pssm_dict[b['name']][letter]['pssm_log_odds'] |
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pssm_coef_list.append(pssm_coef) |
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pssm_bias_list.append(pssm_bias) |
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pssm_log_odds_list.append(pssm_log_odds) |
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if bias_by_res_dict: |
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bias_by_res_list.append(bias_by_res_dict[b['name']][letter]) |
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else: |
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bias_by_res_list.append(np.zeros([chain_length, 21])) |
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letter_list_np = np.array(letter_list) |
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tied_pos_list_of_lists = [] |
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tied_beta = np.ones(L_max) |
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if tied_positions_dict!=None: |
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tied_pos_list = tied_positions_dict[b['name']] |
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if tied_pos_list: |
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set_chains_tied = set(list(itertools.chain(*[list(item) for item in tied_pos_list]))) |
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for tied_item in tied_pos_list: |
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one_list = [] |
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for k, v in tied_item.items(): |
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start_idx = global_idx_start_list[np.argwhere(letter_list_np == k)[0][0]] |
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if isinstance(v[0], list): |
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for v_count in range(len(v[0])): |
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one_list.append(start_idx+v[0][v_count]-1) |
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tied_beta[start_idx+v[0][v_count]-1] = v[1][v_count] |
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else: |
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for v_ in v: |
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one_list.append(start_idx+v_-1) |
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tied_pos_list_of_lists.append(one_list) |
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tied_pos_list_of_lists_list.append(tied_pos_list_of_lists) |
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x = np.concatenate(x_chain_list,0) |
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all_sequence = "".join(chain_seq_list) |
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m = np.concatenate(chain_mask_list,0) |
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chain_encoding = np.concatenate(chain_encoding_list,0) |
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m_pos = np.concatenate(fixed_position_mask_list,0) |
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pssm_coef_ = np.concatenate(pssm_coef_list,0) |
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pssm_bias_ = np.concatenate(pssm_bias_list,0) |
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pssm_log_odds_ = np.concatenate(pssm_log_odds_list,0) |
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bias_by_res_ = np.concatenate(bias_by_res_list, 0) |
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l = len(all_sequence) |
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x_pad = np.pad(x, [[0,L_max-l], [0,0], [0,0]], 'constant', constant_values=(np.nan, )) |
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X[i,:,:,:] = x_pad |
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m_pad = np.pad(m, [[0,L_max-l]], 'constant', constant_values=(0.0, )) |
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m_pos_pad = np.pad(m_pos, [[0,L_max-l]], 'constant', constant_values=(0.0, )) |
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omit_AA_mask_pad = np.pad(np.concatenate(omit_AA_mask_list,0), [[0,L_max-l]], 'constant', constant_values=(0.0, )) |
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chain_M[i,:] = m_pad |
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chain_M_pos[i,:] = m_pos_pad |
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omit_AA_mask[i,] = omit_AA_mask_pad |
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chain_encoding_pad = np.pad(chain_encoding, [[0,L_max-l]], 'constant', constant_values=(0.0, )) |
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chain_encoding_all[i,:] = chain_encoding_pad |
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pssm_coef_pad = np.pad(pssm_coef_, [[0,L_max-l]], 'constant', constant_values=(0.0, )) |
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pssm_bias_pad = np.pad(pssm_bias_, [[0,L_max-l], [0,0]], 'constant', constant_values=(0.0, )) |
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pssm_log_odds_pad = np.pad(pssm_log_odds_, [[0,L_max-l], [0,0]], 'constant', constant_values=(0.0, )) |
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pssm_coef_all[i,:] = pssm_coef_pad |
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pssm_bias_all[i,:] = pssm_bias_pad |
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pssm_log_odds_all[i,:] = pssm_log_odds_pad |
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bias_by_res_pad = np.pad(bias_by_res_, [[0,L_max-l], [0,0]], 'constant', constant_values=(0.0, )) |
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bias_by_res_all[i,:] = bias_by_res_pad |
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indices = np.asarray([alphabet.index(a) for a in all_sequence], dtype=np.int32) |
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S[i, :l] = indices |
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letter_list_list.append(letter_list) |
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visible_list_list.append(visible_list) |
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masked_list_list.append(masked_list) |
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masked_chain_length_list_list.append(masked_chain_length_list) |
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isnan = np.isnan(X) |
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mask = np.isfinite(np.sum(X,(2,3))).astype(np.float32) |
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X[isnan] = 0. |
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pssm_coef_all = torch.from_numpy(pssm_coef_all).to(dtype=torch.float32, device=device) |
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pssm_bias_all = torch.from_numpy(pssm_bias_all).to(dtype=torch.float32, device=device) |
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pssm_log_odds_all = torch.from_numpy(pssm_log_odds_all).to(dtype=torch.float32, device=device) |
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tied_beta = torch.from_numpy(tied_beta).to(dtype=torch.float32, device=device) |
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jumps = ((residue_idx[:,1:]-residue_idx[:,:-1])==1).astype(np.float32) |
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bias_by_res_all = torch.from_numpy(bias_by_res_all).to(dtype=torch.float32, device=device) |
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phi_mask = np.pad(jumps, [[0,0],[1,0]]) |
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psi_mask = np.pad(jumps, [[0,0],[0,1]]) |
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omega_mask = np.pad(jumps, [[0,0],[0,1]]) |
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dihedral_mask = np.concatenate([phi_mask[:,:,None], psi_mask[:,:,None], omega_mask[:,:,None]], -1) |
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dihedral_mask = torch.from_numpy(dihedral_mask).to(dtype=torch.float32, device=device) |
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residue_idx = torch.from_numpy(residue_idx).to(dtype=torch.long,device=device) |
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S = torch.from_numpy(S).to(dtype=torch.long,device=device) |
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X = torch.from_numpy(X).to(dtype=torch.float32, device=device) |
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mask = torch.from_numpy(mask).to(dtype=torch.float32, device=device) |
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chain_M = torch.from_numpy(chain_M).to(dtype=torch.float32, device=device) |
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chain_M_pos = torch.from_numpy(chain_M_pos).to(dtype=torch.float32, device=device) |
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omit_AA_mask = torch.from_numpy(omit_AA_mask).to(dtype=torch.float32, device=device) |
|
chain_encoding_all = torch.from_numpy(chain_encoding_all).to(dtype=torch.long, device=device) |
|
if ca_only: |
|
X_out = X[:,:,0] |
|
else: |
|
X_out = X |
|
return X_out, S, mask, lengths, chain_M, chain_encoding_all, letter_list_list, visible_list_list, masked_list_list, masked_chain_length_list_list, chain_M_pos, omit_AA_mask, residue_idx, dihedral_mask, tied_pos_list_of_lists_list, pssm_coef_all, pssm_bias_all, pssm_log_odds_all, bias_by_res_all, tied_beta |
|
|
|
|
|
|
|
def loss_nll(S, log_probs, mask): |
|
""" Negative log probabilities """ |
|
criterion = torch.nn.NLLLoss(reduction='none') |
|
loss = criterion( |
|
log_probs.contiguous().view(-1, log_probs.size(-1)), S.contiguous().view(-1) |
|
).view(S.size()) |
|
loss_av = torch.sum(loss * mask) / torch.sum(mask) |
|
return loss, loss_av |
|
|
|
|
|
def loss_smoothed(S, log_probs, mask, weight=0.1): |
|
""" Negative log probabilities """ |
|
S_onehot = torch.nn.functional.one_hot(S, 21).float() |
|
|
|
|
|
S_onehot = S_onehot + weight / float(S_onehot.size(-1)) |
|
S_onehot = S_onehot / S_onehot.sum(-1, keepdim=True) |
|
|
|
loss = -(S_onehot * log_probs).sum(-1) |
|
loss_av = torch.sum(loss * mask) / torch.sum(mask) |
|
return loss, loss_av |
|
|
|
class StructureDataset(): |
|
def __init__(self, jsonl_file, verbose=True, truncate=None, max_length=100, |
|
alphabet='ACDEFGHIKLMNPQRSTVWYX-'): |
|
alphabet_set = set([a for a in alphabet]) |
|
discard_count = { |
|
'bad_chars': 0, |
|
'too_long': 0, |
|
'bad_seq_length': 0 |
|
} |
|
|
|
with open(jsonl_file) as f: |
|
self.data = [] |
|
|
|
lines = f.readlines() |
|
start = time.time() |
|
for i, line in enumerate(lines): |
|
entry = json.loads(line) |
|
seq = entry['seq'] |
|
name = entry['name'] |
|
|
|
|
|
|
|
|
|
|
|
|
|
bad_chars = set([s for s in seq]).difference(alphabet_set) |
|
if len(bad_chars) == 0: |
|
if len(entry['seq']) <= max_length: |
|
if True: |
|
self.data.append(entry) |
|
else: |
|
discard_count['bad_seq_length'] += 1 |
|
else: |
|
discard_count['too_long'] += 1 |
|
else: |
|
print(name, bad_chars, entry['seq']) |
|
discard_count['bad_chars'] += 1 |
|
|
|
|
|
if truncate is not None and len(self.data) == truncate: |
|
return |
|
|
|
if verbose and (i + 1) % 1000 == 0: |
|
elapsed = time.time() - start |
|
print('{} entries ({} loaded) in {:.1f} s'.format(len(self.data), i+1, elapsed)) |
|
|
|
print('discarded', discard_count) |
|
def __len__(self): |
|
return len(self.data) |
|
|
|
def __getitem__(self, idx): |
|
return self.data[idx] |
|
|
|
|
|
class StructureDatasetPDB(): |
|
def __init__(self, pdb_dict_list, verbose=True, truncate=None, max_length=100, |
|
alphabet='ACDEFGHIKLMNPQRSTVWYX-'): |
|
alphabet_set = set([a for a in alphabet]) |
|
discard_count = { |
|
'bad_chars': 0, |
|
'too_long': 0, |
|
'bad_seq_length': 0 |
|
} |
|
|
|
self.data = [] |
|
|
|
start = time.time() |
|
for i, entry in enumerate(pdb_dict_list): |
|
seq = entry['seq'] |
|
name = entry['name'] |
|
|
|
bad_chars = set([s for s in seq]).difference(alphabet_set) |
|
if len(bad_chars) == 0: |
|
if len(entry['seq']) <= max_length: |
|
self.data.append(entry) |
|
else: |
|
discard_count['too_long'] += 1 |
|
else: |
|
discard_count['bad_chars'] += 1 |
|
|
|
|
|
if truncate is not None and len(self.data) == truncate: |
|
return |
|
|
|
if verbose and (i + 1) % 1000 == 0: |
|
elapsed = time.time() - start |
|
|
|
|
|
def __len__(self): |
|
return len(self.data) |
|
|
|
def __getitem__(self, idx): |
|
return self.data[idx] |
|
|
|
|
|
|
|
class StructureLoader(): |
|
def __init__(self, dataset, batch_size=100, shuffle=True, |
|
collate_fn=lambda x:x, drop_last=False): |
|
self.dataset = dataset |
|
self.size = len(dataset) |
|
self.lengths = [len(dataset[i]['seq']) for i in range(self.size)] |
|
self.batch_size = batch_size |
|
sorted_ix = np.argsort(self.lengths) |
|
|
|
|
|
clusters, batch = [], [] |
|
batch_max = 0 |
|
for ix in sorted_ix: |
|
size = self.lengths[ix] |
|
if size * (len(batch) + 1) <= self.batch_size: |
|
batch.append(ix) |
|
batch_max = size |
|
else: |
|
clusters.append(batch) |
|
batch, batch_max = [], 0 |
|
if len(batch) > 0: |
|
clusters.append(batch) |
|
self.clusters = clusters |
|
|
|
def __len__(self): |
|
return len(self.clusters) |
|
|
|
def __iter__(self): |
|
np.random.shuffle(self.clusters) |
|
for b_idx in self.clusters: |
|
batch = [self.dataset[i] for i in b_idx] |
|
yield batch |
|
|
|
|
|
|
|
|
|
def gather_edges(edges, neighbor_idx): |
|
|
|
neighbors = neighbor_idx.unsqueeze(-1).expand(-1, -1, -1, edges.size(-1)) |
|
edge_features = torch.gather(edges, 2, neighbors) |
|
return edge_features |
|
|
|
def gather_nodes(nodes, neighbor_idx): |
|
|
|
|
|
neighbors_flat = neighbor_idx.view((neighbor_idx.shape[0], -1)) |
|
neighbors_flat = neighbors_flat.unsqueeze(-1).expand(-1, -1, nodes.size(2)) |
|
|
|
neighbor_features = torch.gather(nodes, 1, neighbors_flat) |
|
neighbor_features = neighbor_features.view(list(neighbor_idx.shape)[:3] + [-1]) |
|
return neighbor_features |
|
|
|
def gather_nodes_t(nodes, neighbor_idx): |
|
|
|
idx_flat = neighbor_idx.unsqueeze(-1).expand(-1, -1, nodes.size(2)) |
|
neighbor_features = torch.gather(nodes, 1, idx_flat) |
|
return neighbor_features |
|
|
|
def cat_neighbors_nodes(h_nodes, h_neighbors, E_idx): |
|
h_nodes = gather_nodes(h_nodes, E_idx) |
|
h_nn = torch.cat([h_neighbors, h_nodes], -1) |
|
return h_nn |
|
|
|
|
|
class EncLayer(nn.Module): |
|
def __init__(self, num_hidden, num_in, dropout=0.1, num_heads=None, scale=30): |
|
super(EncLayer, self).__init__() |
|
self.num_hidden = num_hidden |
|
self.num_in = num_in |
|
self.scale = scale |
|
self.dropout1 = nn.Dropout(dropout) |
|
self.dropout2 = nn.Dropout(dropout) |
|
self.dropout3 = nn.Dropout(dropout) |
|
self.norm1 = nn.LayerNorm(num_hidden) |
|
self.norm2 = nn.LayerNorm(num_hidden) |
|
self.norm3 = nn.LayerNorm(num_hidden) |
|
|
|
self.W1 = nn.Linear(num_hidden + num_in, num_hidden, bias=True) |
|
self.W2 = nn.Linear(num_hidden, num_hidden, bias=True) |
|
self.W3 = nn.Linear(num_hidden, num_hidden, bias=True) |
|
self.W11 = nn.Linear(num_hidden + num_in, num_hidden, bias=True) |
|
self.W12 = nn.Linear(num_hidden, num_hidden, bias=True) |
|
self.W13 = nn.Linear(num_hidden, num_hidden, bias=True) |
|
self.act = torch.nn.GELU() |
|
self.dense = PositionWiseFeedForward(num_hidden, num_hidden * 4) |
|
|
|
def forward(self, h_V, h_E, E_idx, mask_V=None, mask_attend=None): |
|
""" Parallel computation of full transformer layer """ |
|
|
|
h_EV = cat_neighbors_nodes(h_V, h_E, E_idx) |
|
h_V_expand = h_V.unsqueeze(-2).expand(-1,-1,h_EV.size(-2),-1) |
|
h_EV = torch.cat([h_V_expand, h_EV], -1) |
|
h_message = self.W3(self.act(self.W2(self.act(self.W1(h_EV))))) |
|
if mask_attend is not None: |
|
h_message = mask_attend.unsqueeze(-1) * h_message |
|
dh = torch.sum(h_message, -2) / self.scale |
|
h_V = self.norm1(h_V + self.dropout1(dh)) |
|
|
|
dh = self.dense(h_V) |
|
h_V = self.norm2(h_V + self.dropout2(dh)) |
|
if mask_V is not None: |
|
mask_V = mask_V.unsqueeze(-1) |
|
h_V = mask_V * h_V |
|
|
|
h_EV = cat_neighbors_nodes(h_V, h_E, E_idx) |
|
h_V_expand = h_V.unsqueeze(-2).expand(-1,-1,h_EV.size(-2),-1) |
|
h_EV = torch.cat([h_V_expand, h_EV], -1) |
|
h_message = self.W13(self.act(self.W12(self.act(self.W11(h_EV))))) |
|
h_E = self.norm3(h_E + self.dropout3(h_message)) |
|
return h_V, h_E |
|
|
|
|
|
class DecLayer(nn.Module): |
|
def __init__(self, num_hidden, num_in, dropout=0.1, num_heads=None, scale=30): |
|
super(DecLayer, self).__init__() |
|
self.num_hidden = num_hidden |
|
self.num_in = num_in |
|
self.scale = scale |
|
self.dropout1 = nn.Dropout(dropout) |
|
self.dropout2 = nn.Dropout(dropout) |
|
self.norm1 = nn.LayerNorm(num_hidden) |
|
self.norm2 = nn.LayerNorm(num_hidden) |
|
|
|
self.W1 = nn.Linear(num_hidden + num_in, num_hidden, bias=True) |
|
self.W2 = nn.Linear(num_hidden, num_hidden, bias=True) |
|
self.W3 = nn.Linear(num_hidden, num_hidden, bias=True) |
|
self.act = torch.nn.GELU() |
|
self.dense = PositionWiseFeedForward(num_hidden, num_hidden * 4) |
|
|
|
def forward(self, h_V, h_E, mask_V=None, mask_attend=None): |
|
""" Parallel computation of full transformer layer """ |
|
|
|
|
|
h_V_expand = h_V.unsqueeze(-2).expand(-1,-1,h_E.size(-2),-1) |
|
h_EV = torch.cat([h_V_expand, h_E], -1) |
|
|
|
h_message = self.W3(self.act(self.W2(self.act(self.W1(h_EV))))) |
|
if mask_attend is not None: |
|
h_message = mask_attend.unsqueeze(-1) * h_message |
|
dh = torch.sum(h_message, -2) / self.scale |
|
|
|
h_V = self.norm1(h_V + self.dropout1(dh)) |
|
|
|
|
|
dh = self.dense(h_V) |
|
h_V = self.norm2(h_V + self.dropout2(dh)) |
|
|
|
if mask_V is not None: |
|
mask_V = mask_V.unsqueeze(-1) |
|
h_V = mask_V * h_V |
|
return h_V |
|
|
|
|
|
|
|
class PositionWiseFeedForward(nn.Module): |
|
def __init__(self, num_hidden, num_ff): |
|
super(PositionWiseFeedForward, self).__init__() |
|
self.W_in = nn.Linear(num_hidden, num_ff, bias=True) |
|
self.W_out = nn.Linear(num_ff, num_hidden, bias=True) |
|
self.act = torch.nn.GELU() |
|
def forward(self, h_V): |
|
h = self.act(self.W_in(h_V)) |
|
h = self.W_out(h) |
|
return h |
|
|
|
class PositionalEncodings(nn.Module): |
|
def __init__(self, num_embeddings, max_relative_feature=32): |
|
super(PositionalEncodings, self).__init__() |
|
self.num_embeddings = num_embeddings |
|
self.max_relative_feature = max_relative_feature |
|
self.linear = nn.Linear(2*max_relative_feature+1+1, num_embeddings) |
|
|
|
def forward(self, offset, mask): |
|
d = torch.clip(offset + self.max_relative_feature, 0, 2*self.max_relative_feature)*mask + (1-mask)*(2*self.max_relative_feature+1) |
|
d_onehot = torch.nn.functional.one_hot(d, 2*self.max_relative_feature+1+1) |
|
E = self.linear(d_onehot.float()) |
|
return E |
|
|
|
|
|
|
|
class CA_ProteinFeatures(nn.Module): |
|
def __init__(self, edge_features, node_features, num_positional_embeddings=16, |
|
num_rbf=16, top_k=30, augment_eps=0., num_chain_embeddings=16): |
|
""" Extract protein features """ |
|
super(CA_ProteinFeatures, self).__init__() |
|
self.edge_features = edge_features |
|
self.node_features = node_features |
|
self.top_k = top_k |
|
self.augment_eps = augment_eps |
|
self.num_rbf = num_rbf |
|
self.num_positional_embeddings = num_positional_embeddings |
|
|
|
|
|
self.embeddings = PositionalEncodings(num_positional_embeddings) |
|
|
|
node_in, edge_in = 3, num_positional_embeddings + num_rbf*9 + 7 |
|
self.node_embedding = nn.Linear(node_in, node_features, bias=False) |
|
self.edge_embedding = nn.Linear(edge_in, edge_features, bias=False) |
|
self.norm_nodes = nn.LayerNorm(node_features) |
|
self.norm_edges = nn.LayerNorm(edge_features) |
|
|
|
|
|
def _quaternions(self, R): |
|
""" Convert a batch of 3D rotations [R] to quaternions [Q] |
|
R [...,3,3] |
|
Q [...,4] |
|
""" |
|
|
|
|
|
|
|
diag = torch.diagonal(R, dim1=-2, dim2=-1) |
|
Rxx, Ryy, Rzz = diag.unbind(-1) |
|
magnitudes = 0.5 * torch.sqrt(torch.abs(1 + torch.stack([ |
|
Rxx - Ryy - Rzz, |
|
- Rxx + Ryy - Rzz, |
|
- Rxx - Ryy + Rzz |
|
], -1))) |
|
_R = lambda i,j: R[:,:,:,i,j] |
|
signs = torch.sign(torch.stack([ |
|
_R(2,1) - _R(1,2), |
|
_R(0,2) - _R(2,0), |
|
_R(1,0) - _R(0,1) |
|
], -1)) |
|
xyz = signs * magnitudes |
|
|
|
w = torch.sqrt(F.relu(1 + diag.sum(-1, keepdim=True))) / 2. |
|
Q = torch.cat((xyz, w), -1) |
|
Q = F.normalize(Q, dim=-1) |
|
return Q |
|
|
|
def _orientations_coarse(self, X, E_idx, eps=1e-6): |
|
dX = X[:,1:,:] - X[:,:-1,:] |
|
dX_norm = torch.norm(dX,dim=-1) |
|
dX_mask = (3.6<dX_norm) & (dX_norm<4.0) |
|
dX = dX*dX_mask[:,:,None] |
|
U = F.normalize(dX, dim=-1) |
|
u_2 = U[:,:-2,:] |
|
u_1 = U[:,1:-1,:] |
|
u_0 = U[:,2:,:] |
|
|
|
n_2 = F.normalize(torch.cross(u_2, u_1), dim=-1) |
|
n_1 = F.normalize(torch.cross(u_1, u_0), dim=-1) |
|
|
|
|
|
cosA = -(u_1 * u_0).sum(-1) |
|
cosA = torch.clamp(cosA, -1+eps, 1-eps) |
|
A = torch.acos(cosA) |
|
|
|
cosD = (n_2 * n_1).sum(-1) |
|
cosD = torch.clamp(cosD, -1+eps, 1-eps) |
|
D = torch.sign((u_2 * n_1).sum(-1)) * torch.acos(cosD) |
|
|
|
AD_features = torch.stack((torch.cos(A), torch.sin(A) * torch.cos(D), torch.sin(A) * torch.sin(D)), 2) |
|
AD_features = F.pad(AD_features, (0,0,1,2), 'constant', 0) |
|
|
|
|
|
o_1 = F.normalize(u_2 - u_1, dim=-1) |
|
O = torch.stack((o_1, n_2, torch.cross(o_1, n_2)), 2) |
|
O = O.view(list(O.shape[:2]) + [9]) |
|
O = F.pad(O, (0,0,1,2), 'constant', 0) |
|
O_neighbors = gather_nodes(O, E_idx) |
|
X_neighbors = gather_nodes(X, E_idx) |
|
|
|
|
|
O = O.view(list(O.shape[:2]) + [3,3]) |
|
O_neighbors = O_neighbors.view(list(O_neighbors.shape[:3]) + [3,3]) |
|
|
|
|
|
dX = X_neighbors - X.unsqueeze(-2) |
|
dU = torch.matmul(O.unsqueeze(2), dX.unsqueeze(-1)).squeeze(-1) |
|
dU = F.normalize(dU, dim=-1) |
|
R = torch.matmul(O.unsqueeze(2).transpose(-1,-2), O_neighbors) |
|
Q = self._quaternions(R) |
|
|
|
|
|
O_features = torch.cat((dU,Q), dim=-1) |
|
return AD_features, O_features |
|
|
|
|
|
|
|
def _dist(self, X, mask, eps=1E-6): |
|
""" Pairwise euclidean distances """ |
|
|
|
mask_2D = torch.unsqueeze(mask,1) * torch.unsqueeze(mask,2) |
|
dX = torch.unsqueeze(X,1) - torch.unsqueeze(X,2) |
|
D = mask_2D * torch.sqrt(torch.sum(dX**2, 3) + eps) |
|
|
|
|
|
D_max, _ = torch.max(D, -1, keepdim=True) |
|
D_adjust = D + (1. - mask_2D) * D_max |
|
D_neighbors, E_idx = torch.topk(D_adjust, np.minimum(self.top_k, X.shape[1]), dim=-1, largest=False) |
|
mask_neighbors = gather_edges(mask_2D.unsqueeze(-1), E_idx) |
|
return D_neighbors, E_idx, mask_neighbors |
|
|
|
def _rbf(self, D): |
|
|
|
device = D.device |
|
D_min, D_max, D_count = 2., 22., self.num_rbf |
|
D_mu = torch.linspace(D_min, D_max, D_count).to(device) |
|
D_mu = D_mu.view([1,1,1,-1]) |
|
D_sigma = (D_max - D_min) / D_count |
|
D_expand = torch.unsqueeze(D, -1) |
|
RBF = torch.exp(-((D_expand - D_mu) / D_sigma)**2) |
|
return RBF |
|
|
|
def _get_rbf(self, A, B, E_idx): |
|
D_A_B = torch.sqrt(torch.sum((A[:,:,None,:] - B[:,None,:,:])**2,-1) + 1e-6) |
|
D_A_B_neighbors = gather_edges(D_A_B[:,:,:,None], E_idx)[:,:,:,0] |
|
RBF_A_B = self._rbf(D_A_B_neighbors) |
|
return RBF_A_B |
|
|
|
def forward(self, Ca, mask, residue_idx, chain_labels): |
|
""" Featurize coordinates as an attributed graph """ |
|
if self.augment_eps > 0: |
|
Ca = Ca + self.augment_eps * torch.randn_like(Ca) |
|
|
|
D_neighbors, E_idx, mask_neighbors = self._dist(Ca, mask) |
|
|
|
Ca_0 = torch.zeros(Ca.shape, device=Ca.device) |
|
Ca_2 = torch.zeros(Ca.shape, device=Ca.device) |
|
Ca_0[:,1:,:] = Ca[:,:-1,:] |
|
Ca_1 = Ca |
|
Ca_2[:,:-1,:] = Ca[:,1:,:] |
|
|
|
V, O_features = self._orientations_coarse(Ca, E_idx) |
|
|
|
RBF_all = [] |
|
RBF_all.append(self._rbf(D_neighbors)) |
|
RBF_all.append(self._get_rbf(Ca_0, Ca_0, E_idx)) |
|
RBF_all.append(self._get_rbf(Ca_2, Ca_2, E_idx)) |
|
|
|
RBF_all.append(self._get_rbf(Ca_0, Ca_1, E_idx)) |
|
RBF_all.append(self._get_rbf(Ca_0, Ca_2, E_idx)) |
|
|
|
RBF_all.append(self._get_rbf(Ca_1, Ca_0, E_idx)) |
|
RBF_all.append(self._get_rbf(Ca_1, Ca_2, E_idx)) |
|
|
|
RBF_all.append(self._get_rbf(Ca_2, Ca_0, E_idx)) |
|
RBF_all.append(self._get_rbf(Ca_2, Ca_1, E_idx)) |
|
|
|
|
|
RBF_all = torch.cat(tuple(RBF_all), dim=-1) |
|
|
|
|
|
offset = residue_idx[:,:,None]-residue_idx[:,None,:] |
|
offset = gather_edges(offset[:,:,:,None], E_idx)[:,:,:,0] |
|
|
|
d_chains = ((chain_labels[:, :, None] - chain_labels[:,None,:])==0).long() |
|
E_chains = gather_edges(d_chains[:,:,:,None], E_idx)[:,:,:,0] |
|
E_positional = self.embeddings(offset.long(), E_chains) |
|
E = torch.cat((E_positional, RBF_all, O_features), -1) |
|
|
|
|
|
E = self.edge_embedding(E) |
|
E = self.norm_edges(E) |
|
|
|
return E, E_idx |
|
|
|
|
|
|
|
|
|
class ProteinFeatures(nn.Module): |
|
def __init__(self, edge_features, node_features, num_positional_embeddings=16, |
|
num_rbf=16, top_k=30, augment_eps=0., num_chain_embeddings=16): |
|
""" Extract protein features """ |
|
super(ProteinFeatures, self).__init__() |
|
self.edge_features = edge_features |
|
self.node_features = node_features |
|
self.top_k = top_k |
|
self.augment_eps = augment_eps |
|
self.num_rbf = num_rbf |
|
self.num_positional_embeddings = num_positional_embeddings |
|
|
|
self.embeddings = PositionalEncodings(num_positional_embeddings) |
|
node_in, edge_in = 6, num_positional_embeddings + num_rbf*25 |
|
self.edge_embedding = nn.Linear(edge_in, edge_features, bias=False) |
|
self.norm_edges = nn.LayerNorm(edge_features) |
|
|
|
def _dist(self, X, mask, eps=1E-6): |
|
mask_2D = torch.unsqueeze(mask,1) * torch.unsqueeze(mask,2) |
|
dX = torch.unsqueeze(X,1) - torch.unsqueeze(X,2) |
|
D = mask_2D * torch.sqrt(torch.sum(dX**2, 3) + eps) |
|
D_max, _ = torch.max(D, -1, keepdim=True) |
|
D_adjust = D + (1. - mask_2D) * D_max |
|
sampled_top_k = self.top_k |
|
D_neighbors, E_idx = torch.topk(D_adjust, np.minimum(self.top_k, X.shape[1]), dim=-1, largest=False) |
|
return D_neighbors, E_idx |
|
|
|
def _rbf(self, D): |
|
device = D.device |
|
D_min, D_max, D_count = 2., 22., self.num_rbf |
|
D_mu = torch.linspace(D_min, D_max, D_count, device=device) |
|
D_mu = D_mu.view([1,1,1,-1]) |
|
D_sigma = (D_max - D_min) / D_count |
|
D_expand = torch.unsqueeze(D, -1) |
|
RBF = torch.exp(-((D_expand - D_mu) / D_sigma)**2) |
|
return RBF |
|
|
|
def _get_rbf(self, A, B, E_idx): |
|
D_A_B = torch.sqrt(torch.sum((A[:,:,None,:] - B[:,None,:,:])**2,-1) + 1e-6) |
|
D_A_B_neighbors = gather_edges(D_A_B[:,:,:,None], E_idx)[:,:,:,0] |
|
RBF_A_B = self._rbf(D_A_B_neighbors) |
|
return RBF_A_B |
|
|
|
def forward(self, X, mask, residue_idx, chain_labels): |
|
if self.augment_eps > 0: |
|
X = X + self.augment_eps * torch.randn_like(X) |
|
|
|
b = X[:,:,1,:] - X[:,:,0,:] |
|
c = X[:,:,2,:] - X[:,:,1,:] |
|
a = torch.cross(b, c, dim=-1) |
|
Cb = -0.58273431*a + 0.56802827*b - 0.54067466*c + X[:,:,1,:] |
|
Ca = X[:,:,1,:] |
|
N = X[:,:,0,:] |
|
C = X[:,:,2,:] |
|
O = X[:,:,3,:] |
|
|
|
D_neighbors, E_idx = self._dist(Ca, mask) |
|
|
|
RBF_all = [] |
|
RBF_all.append(self._rbf(D_neighbors)) |
|
RBF_all.append(self._get_rbf(N, N, E_idx)) |
|
RBF_all.append(self._get_rbf(C, C, E_idx)) |
|
RBF_all.append(self._get_rbf(O, O, E_idx)) |
|
RBF_all.append(self._get_rbf(Cb, Cb, E_idx)) |
|
RBF_all.append(self._get_rbf(Ca, N, E_idx)) |
|
RBF_all.append(self._get_rbf(Ca, C, E_idx)) |
|
RBF_all.append(self._get_rbf(Ca, O, E_idx)) |
|
RBF_all.append(self._get_rbf(Ca, Cb, E_idx)) |
|
RBF_all.append(self._get_rbf(N, C, E_idx)) |
|
RBF_all.append(self._get_rbf(N, O, E_idx)) |
|
RBF_all.append(self._get_rbf(N, Cb, E_idx)) |
|
RBF_all.append(self._get_rbf(Cb, C, E_idx)) |
|
RBF_all.append(self._get_rbf(Cb, O, E_idx)) |
|
RBF_all.append(self._get_rbf(O, C, E_idx)) |
|
RBF_all.append(self._get_rbf(N, Ca, E_idx)) |
|
RBF_all.append(self._get_rbf(C, Ca, E_idx)) |
|
RBF_all.append(self._get_rbf(O, Ca, E_idx)) |
|
RBF_all.append(self._get_rbf(Cb, Ca, E_idx)) |
|
RBF_all.append(self._get_rbf(C, N, E_idx)) |
|
RBF_all.append(self._get_rbf(O, N, E_idx)) |
|
RBF_all.append(self._get_rbf(Cb, N, E_idx)) |
|
RBF_all.append(self._get_rbf(C, Cb, E_idx)) |
|
RBF_all.append(self._get_rbf(O, Cb, E_idx)) |
|
RBF_all.append(self._get_rbf(C, O, E_idx)) |
|
RBF_all = torch.cat(tuple(RBF_all), dim=-1) |
|
|
|
offset = residue_idx[:,:,None]-residue_idx[:,None,:] |
|
offset = gather_edges(offset[:,:,:,None], E_idx)[:,:,:,0] |
|
|
|
d_chains = ((chain_labels[:, :, None] - chain_labels[:,None,:])==0).long() |
|
E_chains = gather_edges(d_chains[:,:,:,None], E_idx)[:,:,:,0] |
|
E_positional = self.embeddings(offset.long(), E_chains) |
|
E = torch.cat((E_positional, RBF_all), -1) |
|
E = self.edge_embedding(E) |
|
E = self.norm_edges(E) |
|
return E, E_idx |
|
|
|
|
|
|
|
class ProteinMPNN(nn.Module): |
|
def __init__(self, num_letters, node_features, edge_features, |
|
hidden_dim, num_encoder_layers=3, num_decoder_layers=3, |
|
vocab=21, k_neighbors=64, augment_eps=0.05, dropout=0.1, ca_only=False): |
|
super(ProteinMPNN, self).__init__() |
|
|
|
|
|
self.node_features = node_features |
|
self.edge_features = edge_features |
|
self.hidden_dim = hidden_dim |
|
|
|
|
|
if ca_only: |
|
self.features = CA_ProteinFeatures(node_features, edge_features, top_k=k_neighbors, augment_eps=augment_eps) |
|
self.W_v = nn.Linear(node_features, hidden_dim, bias=True) |
|
else: |
|
self.features = ProteinFeatures(node_features, edge_features, top_k=k_neighbors, augment_eps=augment_eps) |
|
|
|
self.W_e = nn.Linear(edge_features, hidden_dim, bias=True) |
|
self.W_s = nn.Embedding(vocab, hidden_dim) |
|
|
|
|
|
self.encoder_layers = nn.ModuleList([ |
|
EncLayer(hidden_dim, hidden_dim*2, dropout=dropout) |
|
for _ in range(num_encoder_layers) |
|
]) |
|
|
|
|
|
self.decoder_layers = nn.ModuleList([ |
|
DecLayer(hidden_dim, hidden_dim*3, dropout=dropout) |
|
for _ in range(num_decoder_layers) |
|
]) |
|
self.W_out = nn.Linear(hidden_dim, num_letters, bias=True) |
|
|
|
for p in self.parameters(): |
|
if p.dim() > 1: |
|
nn.init.xavier_uniform_(p) |
|
|
|
def forward(self, X, S, mask, chain_M, residue_idx, chain_encoding_all, randn, use_input_decoding_order=False, decoding_order=None): |
|
""" Graph-conditioned sequence model """ |
|
device=X.device |
|
|
|
E, E_idx = self.features(X, mask, residue_idx, chain_encoding_all) |
|
h_V = torch.zeros((E.shape[0], E.shape[1], E.shape[-1]), device=E.device) |
|
h_E = self.W_e(E) |
|
|
|
|
|
mask_attend = gather_nodes(mask.unsqueeze(-1), E_idx).squeeze(-1) |
|
mask_attend = mask.unsqueeze(-1) * mask_attend |
|
for layer in self.encoder_layers: |
|
h_V, h_E = layer(h_V, h_E, E_idx, mask, mask_attend) |
|
|
|
|
|
h_S = self.W_s(S) |
|
h_ES = cat_neighbors_nodes(h_S, h_E, E_idx) |
|
|
|
|
|
h_EX_encoder = cat_neighbors_nodes(torch.zeros_like(h_S), h_E, E_idx) |
|
h_EXV_encoder = cat_neighbors_nodes(h_V, h_EX_encoder, E_idx) |
|
|
|
|
|
chain_M = chain_M*mask |
|
if not use_input_decoding_order: |
|
decoding_order = torch.argsort((chain_M+0.0001)*(torch.abs(randn))) |
|
mask_size = E_idx.shape[1] |
|
permutation_matrix_reverse = torch.nn.functional.one_hot(decoding_order, num_classes=mask_size).float() |
|
order_mask_backward = torch.einsum('ij, biq, bjp->bqp',(1-torch.triu(torch.ones(mask_size,mask_size, device=device))), permutation_matrix_reverse, permutation_matrix_reverse) |
|
mask_attend = torch.gather(order_mask_backward, 2, E_idx).unsqueeze(-1) |
|
mask_1D = mask.view([mask.size(0), mask.size(1), 1, 1]) |
|
mask_bw = mask_1D * mask_attend |
|
mask_fw = mask_1D * (1. - mask_attend) |
|
|
|
h_EXV_encoder_fw = mask_fw * h_EXV_encoder |
|
for layer in self.decoder_layers: |
|
|
|
h_ESV = cat_neighbors_nodes(h_V, h_ES, E_idx) |
|
h_ESV = mask_bw * h_ESV + h_EXV_encoder_fw |
|
h_V = layer(h_V, h_ESV, mask) |
|
|
|
logits = self.W_out(h_V) |
|
log_probs = F.log_softmax(logits, dim=-1) |
|
return log_probs |
|
|
|
|
|
|
|
def sample(self, X, randn, S_true, chain_mask, chain_encoding_all, residue_idx, mask=None, temperature=1.0, omit_AAs_np=None, bias_AAs_np=None, chain_M_pos=None, omit_AA_mask=None, pssm_coef=None, pssm_bias=None, pssm_multi=None, pssm_log_odds_flag=None, pssm_log_odds_mask=None, pssm_bias_flag=None, bias_by_res=None): |
|
device = X.device |
|
|
|
E, E_idx = self.features(X, mask, residue_idx, chain_encoding_all) |
|
h_V = torch.zeros((E.shape[0], E.shape[1], E.shape[-1]), device=device) |
|
h_E = self.W_e(E) |
|
|
|
|
|
mask_attend = gather_nodes(mask.unsqueeze(-1), E_idx).squeeze(-1) |
|
mask_attend = mask.unsqueeze(-1) * mask_attend |
|
for layer in self.encoder_layers: |
|
h_V, h_E = layer(h_V, h_E, E_idx, mask, mask_attend) |
|
|
|
|
|
chain_mask = chain_mask*chain_M_pos*mask |
|
decoding_order = torch.argsort((chain_mask+0.0001)*(torch.abs(randn))) |
|
mask_size = E_idx.shape[1] |
|
permutation_matrix_reverse = torch.nn.functional.one_hot(decoding_order, num_classes=mask_size).float() |
|
order_mask_backward = torch.einsum('ij, biq, bjp->bqp',(1-torch.triu(torch.ones(mask_size,mask_size, device=device))), permutation_matrix_reverse, permutation_matrix_reverse) |
|
mask_attend = torch.gather(order_mask_backward, 2, E_idx).unsqueeze(-1) |
|
mask_1D = mask.view([mask.size(0), mask.size(1), 1, 1]) |
|
mask_bw = mask_1D * mask_attend |
|
mask_fw = mask_1D * (1. - mask_attend) |
|
|
|
N_batch, N_nodes = X.size(0), X.size(1) |
|
log_probs = torch.zeros((N_batch, N_nodes, 21), device=device) |
|
all_probs = torch.zeros((N_batch, N_nodes, 21), device=device, dtype=torch.float32) |
|
h_S = torch.zeros_like(h_V, device=device) |
|
S = torch.zeros((N_batch, N_nodes), dtype=torch.int64, device=device) |
|
h_V_stack = [h_V] + [torch.zeros_like(h_V, device=device) for _ in range(len(self.decoder_layers))] |
|
constant = torch.tensor(omit_AAs_np, device=device) |
|
constant_bias = torch.tensor(bias_AAs_np, device=device) |
|
|
|
omit_AA_mask_flag = omit_AA_mask != None |
|
|
|
|
|
h_EX_encoder = cat_neighbors_nodes(torch.zeros_like(h_S), h_E, E_idx) |
|
h_EXV_encoder = cat_neighbors_nodes(h_V, h_EX_encoder, E_idx) |
|
h_EXV_encoder_fw = mask_fw * h_EXV_encoder |
|
for t_ in range(N_nodes): |
|
t = decoding_order[:,t_] |
|
chain_mask_gathered = torch.gather(chain_mask, 1, t[:,None]) |
|
mask_gathered = torch.gather(mask, 1, t[:,None]) |
|
bias_by_res_gathered = torch.gather(bias_by_res, 1, t[:,None,None].repeat(1,1,21))[:,0,:] |
|
if (mask_gathered==0).all(): |
|
S_t = torch.gather(S_true, 1, t[:,None]) |
|
else: |
|
|
|
E_idx_t = torch.gather(E_idx, 1, t[:,None,None].repeat(1,1,E_idx.shape[-1])) |
|
h_E_t = torch.gather(h_E, 1, t[:,None,None,None].repeat(1,1,h_E.shape[-2], h_E.shape[-1])) |
|
h_ES_t = cat_neighbors_nodes(h_S, h_E_t, E_idx_t) |
|
h_EXV_encoder_t = torch.gather(h_EXV_encoder_fw, 1, t[:,None,None,None].repeat(1,1,h_EXV_encoder_fw.shape[-2], h_EXV_encoder_fw.shape[-1])) |
|
mask_t = torch.gather(mask, 1, t[:,None]) |
|
for l, layer in enumerate(self.decoder_layers): |
|
|
|
h_ESV_decoder_t = cat_neighbors_nodes(h_V_stack[l], h_ES_t, E_idx_t) |
|
h_V_t = torch.gather(h_V_stack[l], 1, t[:,None,None].repeat(1,1,h_V_stack[l].shape[-1])) |
|
h_ESV_t = torch.gather(mask_bw, 1, t[:,None,None,None].repeat(1,1,mask_bw.shape[-2], mask_bw.shape[-1])) * h_ESV_decoder_t + h_EXV_encoder_t |
|
h_V_stack[l+1].scatter_(1, t[:,None,None].repeat(1,1,h_V.shape[-1]), layer(h_V_t, h_ESV_t, mask_V=mask_t)) |
|
|
|
h_V_t = torch.gather(h_V_stack[-1], 1, t[:,None,None].repeat(1,1,h_V_stack[-1].shape[-1]))[:,0] |
|
logits = self.W_out(h_V_t) / temperature |
|
probs = F.softmax(logits-constant[None,:]*1e8+constant_bias[None,:]/temperature+bias_by_res_gathered/temperature, dim=-1) |
|
if pssm_bias_flag: |
|
pssm_coef_gathered = torch.gather(pssm_coef, 1, t[:,None])[:,0] |
|
pssm_bias_gathered = torch.gather(pssm_bias, 1, t[:,None,None].repeat(1,1,pssm_bias.shape[-1]))[:,0] |
|
probs = (1-pssm_multi*pssm_coef_gathered[:,None])*probs + pssm_multi*pssm_coef_gathered[:,None]*pssm_bias_gathered |
|
if pssm_log_odds_flag: |
|
pssm_log_odds_mask_gathered = torch.gather(pssm_log_odds_mask, 1, t[:,None, None].repeat(1,1,pssm_log_odds_mask.shape[-1]))[:,0] |
|
probs_masked = probs*pssm_log_odds_mask_gathered |
|
probs_masked += probs * 0.001 |
|
probs = probs_masked/torch.sum(probs_masked, dim=-1, keepdim=True) |
|
if omit_AA_mask_flag: |
|
omit_AA_mask_gathered = torch.gather(omit_AA_mask, 1, t[:,None, None].repeat(1,1,omit_AA_mask.shape[-1]))[:,0] |
|
probs_masked = probs*(1.0-omit_AA_mask_gathered) |
|
probs = probs_masked/torch.sum(probs_masked, dim=-1, keepdim=True) |
|
S_t = torch.multinomial(probs, 1) |
|
all_probs.scatter_(1, t[:,None,None].repeat(1,1,21), (chain_mask_gathered[:,:,None,]*probs[:,None,:]).float()) |
|
S_true_gathered = torch.gather(S_true, 1, t[:,None]) |
|
S_t = (S_t*chain_mask_gathered+S_true_gathered*(1.0-chain_mask_gathered)).long() |
|
temp1 = self.W_s(S_t) |
|
h_S.scatter_(1, t[:,None,None].repeat(1,1,temp1.shape[-1]), temp1) |
|
S.scatter_(1, t[:,None], S_t) |
|
output_dict = {"S": S, "probs": all_probs, "decoding_order": decoding_order} |
|
return output_dict |
|
|
|
|
|
def tied_sample(self, X, randn, S_true, chain_mask, chain_encoding_all, residue_idx, mask=None, temperature=1.0, omit_AAs_np=None, bias_AAs_np=None, chain_M_pos=None, omit_AA_mask=None, pssm_coef=None, pssm_bias=None, pssm_multi=None, pssm_log_odds_flag=None, pssm_log_odds_mask=None, pssm_bias_flag=None, tied_pos=None, tied_beta=None, bias_by_res=None): |
|
device = X.device |
|
|
|
E, E_idx = self.features(X, mask, residue_idx, chain_encoding_all) |
|
h_V = torch.zeros((E.shape[0], E.shape[1], E.shape[-1]), device=device) |
|
h_E = self.W_e(E) |
|
|
|
mask_attend = gather_nodes(mask.unsqueeze(-1), E_idx).squeeze(-1) |
|
mask_attend = mask.unsqueeze(-1) * mask_attend |
|
for layer in self.encoder_layers: |
|
h_V, h_E = layer(h_V, h_E, E_idx, mask, mask_attend) |
|
|
|
|
|
chain_mask = chain_mask*chain_M_pos*mask |
|
decoding_order = torch.argsort((chain_mask+0.0001)*(torch.abs(randn))) |
|
|
|
new_decoding_order = [] |
|
for t_dec in list(decoding_order[0,].cpu().data.numpy()): |
|
if t_dec not in list(itertools.chain(*new_decoding_order)): |
|
list_a = [item for item in tied_pos if t_dec in item] |
|
if list_a: |
|
new_decoding_order.append(list_a[0]) |
|
else: |
|
new_decoding_order.append([t_dec]) |
|
decoding_order = torch.tensor(list(itertools.chain(*new_decoding_order)), device=device)[None,].repeat(X.shape[0],1) |
|
|
|
mask_size = E_idx.shape[1] |
|
permutation_matrix_reverse = torch.nn.functional.one_hot(decoding_order, num_classes=mask_size).float() |
|
order_mask_backward = torch.einsum('ij, biq, bjp->bqp',(1-torch.triu(torch.ones(mask_size,mask_size, device=device))), permutation_matrix_reverse, permutation_matrix_reverse) |
|
mask_attend = torch.gather(order_mask_backward, 2, E_idx).unsqueeze(-1) |
|
mask_1D = mask.view([mask.size(0), mask.size(1), 1, 1]) |
|
mask_bw = mask_1D * mask_attend |
|
mask_fw = mask_1D * (1. - mask_attend) |
|
|
|
N_batch, N_nodes = X.size(0), X.size(1) |
|
log_probs = torch.zeros((N_batch, N_nodes, 21), device=device) |
|
all_probs = torch.zeros((N_batch, N_nodes, 21), device=device, dtype=torch.float32) |
|
h_S = torch.zeros_like(h_V, device=device) |
|
S = torch.zeros((N_batch, N_nodes), dtype=torch.int64, device=device) |
|
h_V_stack = [h_V] + [torch.zeros_like(h_V, device=device) for _ in range(len(self.decoder_layers))] |
|
constant = torch.tensor(omit_AAs_np, device=device) |
|
constant_bias = torch.tensor(bias_AAs_np, device=device) |
|
omit_AA_mask_flag = omit_AA_mask != None |
|
|
|
h_EX_encoder = cat_neighbors_nodes(torch.zeros_like(h_S), h_E, E_idx) |
|
h_EXV_encoder = cat_neighbors_nodes(h_V, h_EX_encoder, E_idx) |
|
h_EXV_encoder_fw = mask_fw * h_EXV_encoder |
|
for t_list in new_decoding_order: |
|
logits = 0.0 |
|
logit_list = [] |
|
done_flag = False |
|
for t in t_list: |
|
if (mask[:,t]==0).all(): |
|
S_t = S_true[:,t] |
|
for t in t_list: |
|
h_S[:,t,:] = self.W_s(S_t) |
|
S[:,t] = S_t |
|
done_flag = True |
|
break |
|
else: |
|
E_idx_t = E_idx[:,t:t+1,:] |
|
h_E_t = h_E[:,t:t+1,:,:] |
|
h_ES_t = cat_neighbors_nodes(h_S, h_E_t, E_idx_t) |
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h_EXV_encoder_t = h_EXV_encoder_fw[:,t:t+1,:,:] |
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mask_t = mask[:,t:t+1] |
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for l, layer in enumerate(self.decoder_layers): |
|
h_ESV_decoder_t = cat_neighbors_nodes(h_V_stack[l], h_ES_t, E_idx_t) |
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h_V_t = h_V_stack[l][:,t:t+1,:] |
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h_ESV_t = mask_bw[:,t:t+1,:,:] * h_ESV_decoder_t + h_EXV_encoder_t |
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h_V_stack[l+1][:,t,:] = layer(h_V_t, h_ESV_t, mask_V=mask_t).squeeze(1) |
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h_V_t = h_V_stack[-1][:,t,:] |
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logit_list.append((self.W_out(h_V_t) / temperature)/len(t_list)) |
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logits += tied_beta[t]*(self.W_out(h_V_t) / temperature)/len(t_list) |
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if done_flag: |
|
pass |
|
else: |
|
bias_by_res_gathered = bias_by_res[:,t,:] |
|
probs = F.softmax(logits-constant[None,:]*1e8+constant_bias[None,:]/temperature+bias_by_res_gathered/temperature, dim=-1) |
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if pssm_bias_flag: |
|
pssm_coef_gathered = pssm_coef[:,t] |
|
pssm_bias_gathered = pssm_bias[:,t] |
|
probs = (1-pssm_multi*pssm_coef_gathered[:,None])*probs + pssm_multi*pssm_coef_gathered[:,None]*pssm_bias_gathered |
|
if pssm_log_odds_flag: |
|
pssm_log_odds_mask_gathered = pssm_log_odds_mask[:,t] |
|
probs_masked = probs*pssm_log_odds_mask_gathered |
|
probs_masked += probs * 0.001 |
|
probs = probs_masked/torch.sum(probs_masked, dim=-1, keepdim=True) |
|
if omit_AA_mask_flag: |
|
omit_AA_mask_gathered = omit_AA_mask[:,t] |
|
probs_masked = probs*(1.0-omit_AA_mask_gathered) |
|
probs = probs_masked/torch.sum(probs_masked, dim=-1, keepdim=True) |
|
S_t_repeat = torch.multinomial(probs, 1).squeeze(-1) |
|
S_t_repeat = (chain_mask[:,t]*S_t_repeat + (1-chain_mask[:,t])*S_true[:,t]).long() |
|
for t in t_list: |
|
h_S[:,t,:] = self.W_s(S_t_repeat) |
|
S[:,t] = S_t_repeat |
|
all_probs[:,t,:] = probs.float() |
|
output_dict = {"S": S, "probs": all_probs, "decoding_order": decoding_order} |
|
return output_dict |
|
|
|
|
|
def conditional_probs(self, X, S, mask, chain_M, residue_idx, chain_encoding_all, randn, backbone_only=False): |
|
""" Graph-conditioned sequence model """ |
|
device=X.device |
|
|
|
E, E_idx = self.features(X, mask, residue_idx, chain_encoding_all) |
|
h_V_enc = torch.zeros((E.shape[0], E.shape[1], E.shape[-1]), device=E.device) |
|
h_E = self.W_e(E) |
|
|
|
|
|
mask_attend = gather_nodes(mask.unsqueeze(-1), E_idx).squeeze(-1) |
|
mask_attend = mask.unsqueeze(-1) * mask_attend |
|
for layer in self.encoder_layers: |
|
h_V_enc, h_E = layer(h_V_enc, h_E, E_idx, mask, mask_attend) |
|
|
|
|
|
h_S = self.W_s(S) |
|
h_ES = cat_neighbors_nodes(h_S, h_E, E_idx) |
|
|
|
|
|
h_EX_encoder = cat_neighbors_nodes(torch.zeros_like(h_S), h_E, E_idx) |
|
h_EXV_encoder = cat_neighbors_nodes(h_V_enc, h_EX_encoder, E_idx) |
|
|
|
|
|
chain_M = chain_M*mask |
|
|
|
chain_M_np = chain_M.cpu().numpy() |
|
idx_to_loop = np.argwhere(chain_M_np[0,:]==1)[:,0] |
|
log_conditional_probs = torch.zeros([X.shape[0], chain_M.shape[1], 21], device=device).float() |
|
|
|
for idx in idx_to_loop: |
|
h_V = torch.clone(h_V_enc) |
|
order_mask = torch.zeros(chain_M.shape[1], device=device).float() |
|
if backbone_only: |
|
order_mask = torch.ones(chain_M.shape[1], device=device).float() |
|
order_mask[idx] = 0. |
|
else: |
|
order_mask = torch.zeros(chain_M.shape[1], device=device).float() |
|
order_mask[idx] = 1. |
|
decoding_order = torch.argsort((order_mask[None,]+0.0001)*(torch.abs(randn))) |
|
mask_size = E_idx.shape[1] |
|
permutation_matrix_reverse = torch.nn.functional.one_hot(decoding_order, num_classes=mask_size).float() |
|
order_mask_backward = torch.einsum('ij, biq, bjp->bqp',(1-torch.triu(torch.ones(mask_size,mask_size, device=device))), permutation_matrix_reverse, permutation_matrix_reverse) |
|
mask_attend = torch.gather(order_mask_backward, 2, E_idx).unsqueeze(-1) |
|
mask_1D = mask.view([mask.size(0), mask.size(1), 1, 1]) |
|
mask_bw = mask_1D * mask_attend |
|
mask_fw = mask_1D * (1. - mask_attend) |
|
|
|
h_EXV_encoder_fw = mask_fw * h_EXV_encoder |
|
for layer in self.decoder_layers: |
|
|
|
h_ESV = cat_neighbors_nodes(h_V, h_ES, E_idx) |
|
h_ESV = mask_bw * h_ESV + h_EXV_encoder_fw |
|
h_V = layer(h_V, h_ESV, mask) |
|
|
|
logits = self.W_out(h_V) |
|
log_probs = F.log_softmax(logits, dim=-1) |
|
log_conditional_probs[:,idx,:] = log_probs[:,idx,:] |
|
return log_conditional_probs |
|
|
|
|
|
def unconditional_probs(self, X, mask, residue_idx, chain_encoding_all): |
|
""" Graph-conditioned sequence model """ |
|
device=X.device |
|
|
|
E, E_idx = self.features(X, mask, residue_idx, chain_encoding_all) |
|
h_V = torch.zeros((E.shape[0], E.shape[1], E.shape[-1]), device=E.device) |
|
h_E = self.W_e(E) |
|
|
|
|
|
mask_attend = gather_nodes(mask.unsqueeze(-1), E_idx).squeeze(-1) |
|
mask_attend = mask.unsqueeze(-1) * mask_attend |
|
for layer in self.encoder_layers: |
|
h_V, h_E = layer(h_V, h_E, E_idx, mask, mask_attend) |
|
|
|
|
|
h_EX_encoder = cat_neighbors_nodes(torch.zeros_like(h_V), h_E, E_idx) |
|
h_EXV_encoder = cat_neighbors_nodes(h_V, h_EX_encoder, E_idx) |
|
|
|
order_mask_backward = torch.zeros([X.shape[0], X.shape[1], X.shape[1]], device=device) |
|
mask_attend = torch.gather(order_mask_backward, 2, E_idx).unsqueeze(-1) |
|
mask_1D = mask.view([mask.size(0), mask.size(1), 1, 1]) |
|
mask_bw = mask_1D * mask_attend |
|
mask_fw = mask_1D * (1. - mask_attend) |
|
|
|
h_EXV_encoder_fw = mask_fw * h_EXV_encoder |
|
for layer in self.decoder_layers: |
|
h_V = layer(h_V, h_EXV_encoder_fw, mask) |
|
|
|
logits = self.W_out(h_V) |
|
log_probs = F.log_softmax(logits, dim=-1) |
|
return log_probs |
|
|
|
|