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Running
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Zero
| #From https://github.com/JoreyYan/zetadesign/blob/master/data/data.py | |
| import glob | |
| import json | |
| import numpy as np | |
| import gzip | |
| import re | |
| import multiprocessing | |
| import tqdm | |
| import shutil | |
| SENTINEL = 1 | |
| import biotite.structure as struc | |
| import biotite.application.dssp as dssp | |
| import biotite.structure.io.pdb.file as file | |
| import biotite.structure.io.pdb as pdb | |
| def parse_PDB_biounits(x, sse,ssedssp,atoms=['N', 'CA', 'C'], chain=None): | |
| ''' | |
| input: x = PDB filename | |
| atoms = atoms to extract (optional) | |
| output: (length, atoms, coords=(x,y,z)), sequence | |
| ''' | |
| alpha_1 = list("ARNDCQEGHILKMFPSTWYV-") | |
| states = len(alpha_1) | |
| alpha_3 = ['ALA', 'ARG', 'ASN', 'ASP', 'CYS', 'GLN', 'GLU', 'GLY', 'HIS', 'ILE', | |
| 'LEU', 'LYS', 'MET', 'PHE', 'PRO', 'SER', 'THR', 'TRP', 'TYR', 'VAL', 'GAP'] | |
| aa_1_N = {a: n for n, a in enumerate(alpha_1)} | |
| aa_3_N = {a: n for n, a in enumerate(alpha_3)} | |
| aa_N_1 = {n: a for n, a in enumerate(alpha_1)} | |
| aa_1_3 = {a: b for a, b in zip(alpha_1, alpha_3)} | |
| aa_3_1 = {b: a for a, b in zip(alpha_1, alpha_3)} | |
| def AA_to_N(x): | |
| # ["ARND"] -> [[0,1,2,3]] | |
| x = np.array(x); | |
| if x.ndim == 0: x = x[None] | |
| return [[aa_1_N.get(a, states - 1) for a in y] for y in x] | |
| def N_to_AA(x): | |
| # [[0,1,2,3]] -> ["ARND"] | |
| x = np.array(x); | |
| if x.ndim == 1: x = x[None] | |
| return ["".join([aa_N_1.get(a, "-") for a in y]) for y in x] | |
| xyz, seq, plddts, min_resn, max_resn = {}, {}, [], 1e6, -1e6 | |
| pdbcontents = x.split('\n')[0] | |
| with open(pdbcontents) as f: | |
| pdbcontents = f.readlines() | |
| for line in pdbcontents: | |
| #line = line.decode("utf-8", "ignore").rstrip() | |
| if line[:6] == "HETATM" and line[17:17 + 3] == "MSE": | |
| line = line.replace("HETATM", "ATOM ") | |
| line = line.replace("MSE", "MET") | |
| if line[:4] == "ATOM": | |
| ch = line[21:22] | |
| if ch == chain or chain is None or ch==' ': | |
| atom = line[12:12 + 4].strip() | |
| resi = line[17:17 + 3] | |
| resn = line[22:22 + 5].strip() | |
| plddt=line[60:60 + 6].strip() | |
| x, y, z = [float(line[i:(i + 8)]) for i in [30, 38, 46]] | |
| if resn[-1].isalpha(): | |
| resa, resn = resn[-1], int(resn[:-1]) - 1 # in same pos ,use last atoms | |
| else: | |
| resa, resn = "_", int(resn) - 1 | |
| # resn = int(resn) | |
| if resn < min_resn: | |
| min_resn = resn | |
| if resn > max_resn: | |
| max_resn = resn | |
| if resn not in xyz: | |
| xyz[resn] = {} | |
| if resa not in xyz[resn]: | |
| xyz[resn][resa] = {} | |
| if resn not in seq: | |
| seq[resn] = {} | |
| if resa not in seq[resn]: | |
| seq[resn][resa] = resi | |
| if atom not in xyz[resn][resa]: | |
| xyz[resn][resa][atom] = np.array([x, y, z]) | |
| # convert to numpy arrays, fill in missing values | |
| seq_, xyz_ ,sse_,ssedssp_= [], [], [], [] | |
| dsspidx=0 | |
| sseidx=0 | |
| for resn in range(int(min_resn), int(max_resn + 1)): | |
| if resn in seq: | |
| for k in sorted(seq[resn]): | |
| seq_.append(aa_3_N.get(seq[resn][k], 20)) | |
| # try: | |
| # if 'CA' in xyz[resn][k]: | |
| # sse_.append(sse[sseidx]) | |
| # sseidx = sseidx + 1 | |
| # else: | |
| # sse_.append('-') | |
| # except: | |
| # print('error sse') | |
| else: | |
| seq_.append(20) | |
| sse_.append('-') | |
| misschianatom = False | |
| if resn in xyz: | |
| for k in sorted(xyz[resn]): | |
| for atom in atoms: | |
| if atom in xyz[resn][k]: | |
| xyz_.append(xyz[resn][k][atom]) #some will miss C and O ,but sse is normal,because sse just depend on CA | |
| else: | |
| xyz_.append(np.full(3, np.nan)) | |
| misschianatom=True | |
| if misschianatom: | |
| ssedssp_.append('-') | |
| misschianatom = False | |
| else: | |
| try: | |
| ssedssp_.append(ssedssp[dsspidx]) # if miss chain atom,xyz ,seq think is ok , but dssp miss this | |
| dsspidx = dsspidx + 1 | |
| except: | |
| pass | |
| # print(dsspidx) | |
| else: | |
| for atom in atoms: | |
| xyz_.append(np.full(3, np.nan)) | |
| ssedssp_.append('-') | |
| return np.array(xyz_).reshape(-1, len(atoms), 3), N_to_AA(np.array(seq_)),np.array(sse_),np.array(ssedssp_) | |
| def parse_PDB(path_to_pdb,name, input_chain_list=None): | |
| """ | |
| make sure every time just input 1 line | |
| """ | |
| c = 0 | |
| pdb_dict_list = [] | |
| if input_chain_list: | |
| chain_alphabet = input_chain_list | |
| else: | |
| 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'] | |
| extra_alphabet = [str(item) for item in list(np.arange(300))] | |
| chain_alphabet = init_alphabet + extra_alphabet | |
| biounit_names = [path_to_pdb] | |
| for biounit in biounit_names: | |
| my_dict = {} | |
| s = 0 | |
| concat_seq = '' | |
| for letter in chain_alphabet: | |
| PDBFile = file.PDBFile.read(biounit) | |
| array_stack = PDBFile.get_structure(altloc="all") | |
| sse1 = struc.annotate_sse(array_stack[0]).tolist() | |
| if len(sse1)==0: | |
| sse1 = struc.annotate_sse(array_stack[0]).tolist() | |
| #ssedssp1 = dssp.DsspApp.annotate_sse(array_stack).tolist() | |
| ssedssp1 = [] #not annotating dssp for now | |
| xyz, seq, _, _= parse_PDB_biounits(biounit,sse1,ssedssp1,atoms=['N', 'CA', 'C','O'], chain=letter) #TODO: fix the float error | |
| #ssedssp = sse #faking it for now | |
| # if len(sse)!=len(seq[0]): | |
| # xxxx=len(seq[0]) | |
| # print(name) | |
| #assert len(sse)==len(seq[0]) | |
| #assert len(ssedssp) == len(seq[0]) | |
| if type(xyz) != str: | |
| concat_seq += seq[0] | |
| my_dict['seq_chain_' + letter] = seq[0] | |
| coords_dict_chain = {} | |
| coords_dict_chain['N'] = xyz[:, 0, :].tolist() | |
| coords_dict_chain['CA'] = xyz[:, 1, :].tolist() | |
| coords_dict_chain['C'] = xyz[:, 2, :].tolist() | |
| coords_dict_chain['O'] = xyz[:, 3, :].tolist() | |
| my_dict['coords_chain_' + letter] = coords_dict_chain | |
| #sse=''.join(sse) | |
| #ssedssp=''.join(ssedssp) | |
| #my_dict['sse3' ] = sse | |
| #my_dict['sse8'] = ssedssp | |
| s += 1 | |
| #fi = biounit.rfind("/") | |
| my_dict['name'] = name#biounit[(fi + 1):-4] | |
| my_dict['num_of_chains'] = s | |
| my_dict['seq'] = concat_seq | |
| if s <= len(chain_alphabet): | |
| pdb_dict_list.append(my_dict) | |
| c += 1 | |
| return pdb_dict_list | |
| def align_pdb_dict_formats(pdb_dict,chain): | |
| new_dict = {} | |
| new_dict['seq'] = pdb_dict[f'seq_chain_{chain}'] | |
| new_dict['coords'] = pdb_dict[f'coords_chain_{chain}'] | |
| new_dict['num_chains'] = pdb_dict['num_of_chains'] | |
| new_dict['name'] = pdb_dict['name'] +"_"+chain | |
| new_dict['CATH'] = ["1.10.150", "3.30.160", "1.10.443"] | |
| return new_dict | |
| def modify_bfactor_biotite(input_file, chain_id, output_file, flex_prediction): | |
| """ | |
| Reads a PDB file, modifies the B-factor column, and writes the updated file using Biotite. | |
| :param input_file: Path to the input PDB file | |
| :param output_file: Path to save the modified PDB file | |
| :param flex_prediction: New B-factor value to set (should be a 2D array (1,n_residues)) | |
| """ | |
| # Read the PDB file into an AtomArray | |
| import biotite.structure as struc | |
| import biotite.structure.io as strucio | |
| structure = strucio.load_structure(input_file) | |
| available_chains = np.unique(structure.chain_id) | |
| if chain_id in available_chains: | |
| structure = structure[structure.chain_id == chain_id] | |
| structure = structure[~structure.hetero] | |
| new_bfactor_column = [] | |
| last_res_id = -1000 | |
| pred_idx = -1 | |
| flex_prediction = flex_prediction.cpu().numpy() | |
| for res_id in structure.res_id: | |
| if res_id != last_res_id: | |
| new_bfactor_column.append(flex_prediction[0,pred_idx+1]) | |
| last_res_id = res_id | |
| pred_idx += 1 | |
| else: | |
| new_bfactor_column.append(flex_prediction[0,pred_idx]) | |
| new_bfactors = np.array(new_bfactor_column) | |
| if "b_factor" not in structure.get_annotation_categories(): | |
| structure.set_annotation("b_factor", new_bfactors) | |
| else: # Array of values | |
| structure.b_factor[:] = new_bfactors | |
| # Save the modified structure to a new PDB file | |
| strucio.save_structure(output_file, structure) |