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import os,sys,glob,torch,random |
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import numpy as np |
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import argparse |
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try: |
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import pyrosetta |
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pyrosetta.init() |
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APPROX = False |
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except: |
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print("WARNING: pyRosetta not found, will use an approximate SSE calculation") |
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APPROX = True |
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def main(): |
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args=get_args() |
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assert args.input_pdb or args.pdb_dir is not None, 'Need to provide either an input pdb (--input_pdb) or a path to pdbs (--pdb_dir)' |
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assert not (args.input_pdb is not None and args.pdb_dir is not None), 'Need to provide either --input_pdb or --pdb_dir, not both' |
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os.makedirs(args.out_dir, exist_ok=True) |
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if args.pdb_dir is not None: |
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pdbs=glob.glob(f'{args.pdb_dir}/*pdb') |
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else: |
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pdbs=[args.input_pdb] |
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for pdb in pdbs: |
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name=os.path.split(pdb)[1][:-4] |
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secstruc_dict=extract_secstruc(pdb) |
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xyz,_,_ = parse_pdb_torch(pdb) |
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ss, idx = ss_to_tensor(secstruc_dict) |
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block_adj = construct_block_adj_matrix(torch.FloatTensor(ss), torch.tensor(xyz)).float() |
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ss_tens, mask = mask_ss(ss, idx, max_mask=0) |
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ss_argmax = torch.argmax(ss_tens[:,:4], dim=1).float() |
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torch.save(ss_argmax, os.path.join(args.out_dir, f'{name}_ss.pt')) |
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torch.save(block_adj, os.path.join(args.out_dir, f'{name}_adj.pt')) |
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def get_args(): |
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parser = argparse.ArgumentParser(formatter_class=argparse.ArgumentDefaultsHelpFormatter) |
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parser.add_argument("--pdb_dir",required=False, help="path to directory of pdbs. Either pass this or the path to a specific pdb (--input_pdb)", default=None) |
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parser.add_argument("--input_pdb", required=False, help="path to input pdb. Either provide this of path to directory of pdbs (--pdb_dir)", default=None) |
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parser.add_argument("--out_dir",dest="out_dir", required=True, help='need to specify an output path') |
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args = parser.parse_args() |
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return args |
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def extract_secstruc(fn): |
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pdb=parse_pdb(fn) |
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idx = pdb['idx'] |
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if APPROX: |
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aa_sequence = pdb["seq"] |
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secstruct = get_sse(pdb["xyz"][:,1]) |
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else: |
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dssp = pyrosetta.rosetta.core.scoring.dssp |
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pose = pyrosetta.io.pose_from_pdb(fn) |
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dssp.Dssp(pose).insert_ss_into_pose(pose, True) |
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aa_sequence = pose.sequence() |
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secstruct = pose.secstruct() |
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secstruc_dict = {'sequence':[i for i in aa_sequence], |
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'idx':[int(i) for i in idx], |
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'ss':[i for i in secstruct]} |
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return secstruc_dict |
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def ss_to_tensor(ss): |
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""" |
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Function to convert ss files to indexed tensors |
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0 = Helix |
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1 = Strand |
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2 = Loop |
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3 = Mask/unknown |
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4 = idx for pdb |
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""" |
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ss_conv = {'H':0,'E':1,'L':2} |
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idx = np.array(ss['idx']) |
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ss_int = np.array([int(ss_conv[i]) for i in ss['ss']]) |
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return ss_int, idx |
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def mask_ss(ss, idx, min_mask = 0, max_mask = 1.0): |
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mask_prop = random.uniform(min_mask, max_mask) |
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transitions = np.where(ss[:-1] - ss[1:] != 0)[0] |
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stuck_counter = 0 |
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while len(ss[ss == 3])/len(ss) < mask_prop or stuck_counter > 100: |
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width = random.randint(1,9) |
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start = random.choice(transitions) |
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offset = random.randint(-8,1) |
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try: |
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ss[start+offset:start+offset+width] = 3 |
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except: |
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stuck_counter += 1 |
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pass |
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ss = torch.tensor(ss) |
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ss = torch.nn.functional.one_hot(ss, num_classes=4) |
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ss = torch.cat((ss, torch.tensor(idx)[...,None]), dim=-1) |
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mask=torch.tensor(np.where(np.argmax(ss[:,:-1].numpy(), axis=-1) == 3)) |
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return ss, mask |
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def generate_Cbeta(N,Ca,C): |
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b = Ca - N |
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c = C - Ca |
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a = torch.cross(b, c, dim=-1) |
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Cb = -0.57910144*a + 0.5689693*b - 0.5441217*c + Ca |
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return Cb |
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def get_pair_dist(a, b): |
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"""calculate pair distances between two sets of points |
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Parameters |
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---------- |
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a,b : pytorch tensors of shape [batch,nres,3] |
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store Cartesian coordinates of two sets of atoms |
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Returns |
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------- |
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dist : pytorch tensor of shape [batch,nres,nres] |
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stores paitwise distances between atoms in a and b |
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""" |
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dist = torch.cdist(a, b, p=2) |
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return dist |
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def construct_block_adj_matrix( sstruct, xyz, cutoff=6, include_loops=False ): |
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''' |
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Given a sstruct specification and backbone coordinates, build a block adjacency matrix. |
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Input: |
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sstruct (torch.FloatTensor): (L) length tensor with numeric encoding of sstruct at each position |
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xyz (torch.FloatTensor): (L,3,3) tensor of Cartesian coordinates of backbone N,Ca,C atoms |
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cutoff (float): The Cb distance cutoff under which residue pairs are considered adjacent |
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By eye, Nate thinks 6A is a good Cb distance cutoff |
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Output: |
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block_adj (torch.FloatTensor): (L,L) boolean matrix where adjacent secondary structure contacts are 1 |
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''' |
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L = xyz.shape[0] |
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N = xyz[:,0] |
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Ca = xyz[:,1] |
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C = xyz[:,2] |
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Cb = generate_Cbeta(N,Ca,C) |
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dist = get_pair_dist(Cb,Cb) |
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dist[torch.isnan(dist)] = 999.9 |
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dist += 999.9*torch.eye(L,device=xyz.device) |
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in_segment = True |
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segments = [] |
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begin = -1 |
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end = -1 |
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for i in range(sstruct.shape[0]): |
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if i == 0: |
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begin = 0 |
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continue |
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if not sstruct[i] == sstruct[i-1]: |
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end = i |
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segments.append( (sstruct[i-1], begin, end) ) |
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begin = i |
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if not end == sstruct.shape[0]: |
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segments.append( (sstruct[-1], begin, sstruct.shape[0]) ) |
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block_adj = torch.zeros_like(dist) |
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for i in range(len(segments)): |
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curr_segment = segments[i] |
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if curr_segment[0] == 2 and not include_loops: continue |
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begin_i = curr_segment[1] |
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end_i = curr_segment[2] |
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for j in range(i+1, len(segments)): |
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j_segment = segments[j] |
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if j_segment[0] == 2 and not include_loops: continue |
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begin_j = j_segment[1] |
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end_j = j_segment[2] |
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if torch.any( dist[begin_i:end_i, begin_j:end_j] < cutoff ): |
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block_adj[begin_i:end_i, begin_j:end_j] = torch.ones(end_i - begin_i, end_j - begin_j) |
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block_adj[begin_j:end_j, begin_i:end_i] = torch.ones(end_j - begin_j, end_i - begin_i) |
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return block_adj |
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def parse_pdb_torch(filename): |
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lines = open(filename,'r').readlines() |
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return parse_pdb_lines_torch(lines) |
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def parse_pdb_lines_torch(lines): |
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pdb_idx = [] |
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for l in lines: |
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if l[:4]=="ATOM" and l[12:16].strip()=="CA": |
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idx = ( l[21:22].strip(), int(l[22:26].strip()) ) |
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if idx not in pdb_idx: |
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pdb_idx.append(idx) |
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xyz = np.full((len(pdb_idx), 27, 3), np.nan, dtype=np.float32) |
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for l in lines: |
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if l[:4] != "ATOM": |
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continue |
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chain, resNo, atom, aa = l[21:22], int(l[22:26]), ' '+l[12:16].strip().ljust(3), l[17:20] |
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idx = pdb_idx.index((chain,resNo)) |
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for i_atm, tgtatm in enumerate(aa2long[aa2num[aa]]): |
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if tgtatm == atom: |
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xyz[idx,i_atm,:] = [float(l[30:38]), float(l[38:46]), float(l[46:54])] |
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break |
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mask = np.logical_not(np.isnan(xyz[...,0])) |
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xyz[np.isnan(xyz[...,0])] = 0.0 |
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return xyz,mask,np.array(pdb_idx) |
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def parse_pdb(filename, **kwargs): |
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'''extract xyz coords for all heavy atoms''' |
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lines = open(filename,'r').readlines() |
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return parse_pdb_lines(lines, **kwargs) |
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def parse_pdb_lines(lines, parse_hetatom=False, ignore_het_h=True): |
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res = [(l[22:26],l[17:20]) for l in lines if l[:4]=="ATOM" and l[12:16].strip()=="CA"] |
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seq = [aa2num[r[1]] if r[1] in aa2num.keys() else 20 for r in res] |
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pdb_idx = [( l[21:22].strip(), int(l[22:26].strip()) ) for l in lines if l[:4]=="ATOM" and l[12:16].strip()=="CA"] |
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xyz = np.full((len(res), 27, 3), np.nan, dtype=np.float32) |
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for l in lines: |
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if l[:4] != "ATOM": |
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continue |
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chain, resNo, atom, aa = l[21:22], int(l[22:26]), ' '+l[12:16].strip().ljust(3), l[17:20] |
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idx = pdb_idx.index((chain,resNo)) |
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for i_atm, tgtatm in enumerate(aa2long[aa2num[aa]]): |
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if tgtatm is not None and tgtatm.strip() == atom.strip(): |
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xyz[idx,i_atm,:] = [float(l[30:38]), float(l[38:46]), float(l[46:54])] |
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break |
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mask = np.logical_not(np.isnan(xyz[...,0])) |
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xyz[np.isnan(xyz[...,0])] = 0.0 |
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new_idx = [] |
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i_unique = [] |
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for i,idx in enumerate(pdb_idx): |
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if idx not in new_idx: |
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new_idx.append(idx) |
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i_unique.append(i) |
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pdb_idx = new_idx |
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xyz = xyz[i_unique] |
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mask = mask[i_unique] |
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seq = np.array(seq)[i_unique] |
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out = {'xyz':xyz, |
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'mask':mask, |
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'idx':np.array([i[1] for i in pdb_idx]), |
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'seq':np.array(seq), |
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'pdb_idx': pdb_idx, |
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} |
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if parse_hetatom: |
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xyz_het, info_het = [], [] |
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for l in lines: |
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if l[:6]=='HETATM' and not (ignore_het_h and l[77]=='H'): |
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info_het.append(dict( |
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idx=int(l[7:11]), |
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atom_id=l[12:16], |
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atom_type=l[77], |
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name=l[16:20] |
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)) |
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xyz_het.append([float(l[30:38]), float(l[38:46]), float(l[46:54])]) |
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out['xyz_het'] = np.array(xyz_het) |
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out['info_het'] = info_het |
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return out |
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|
num2aa=[ |
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'ALA','ARG','ASN','ASP','CYS', |
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'GLN','GLU','GLY','HIS','ILE', |
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'LEU','LYS','MET','PHE','PRO', |
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'SER','THR','TRP','TYR','VAL', |
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'UNK','MAS', |
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] |
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aa2num= {x:i for i,x in enumerate(num2aa)} |
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aa2long=[ |
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(" N "," CA "," C "," O "," CB ", None, None, None, None, None, None, None, None, None," H "," HA ","1HB ","2HB ","3HB ", None, None, None, None, None, None, None, None), |
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(" N "," CA "," C "," O "," CB "," CG "," CD "," NE "," CZ "," NH1"," NH2", None, None, None," H "," HA ","1HB ","2HB ","1HG ","2HG ","1HD ","2HD "," HE ","1HH1","2HH1","1HH2","2HH2"), |
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(" N "," CA "," C "," O "," CB "," CG "," OD1"," ND2", None, None, None, None, None, None," H "," HA ","1HB ","2HB ","1HD2","2HD2", None, None, None, None, None, None, None), |
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(" N "," CA "," C "," O "," CB "," CG "," OD1"," OD2", None, None, None, None, None, None," H "," HA ","1HB ","2HB ", None, None, None, None, None, None, None, None, None), |
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(" N "," CA "," C "," O "," CB "," SG ", None, None, None, None, None, None, None, None," H "," HA ","1HB ","2HB "," HG ", None, None, None, None, None, None, None, None), |
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(" N "," CA "," C "," O "," CB "," CG "," CD "," OE1"," NE2", None, None, None, None, None," H "," HA ","1HB ","2HB ","1HG ","2HG ","1HE2","2HE2", None, None, None, None, None), |
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(" N "," CA "," C "," O "," CB "," CG "," CD "," OE1"," OE2", None, None, None, None, None," H "," HA ","1HB ","2HB ","1HG ","2HG ", None, None, None, None, None, None, None), |
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(" N "," CA "," C "," O ", None, None, None, None, None, None, None, None, None, None," H ","1HA ","2HA ", None, None, None, None, None, None, None, None, None, None), |
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(" N "," CA "," C "," O "," CB "," CG "," ND1"," CD2"," CE1"," NE2", None, None, None, None," H "," HA ","1HB ","2HB "," HD2"," HE1"," HE2", None, None, None, None, None, None), |
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(" N "," CA "," C "," O "," CB "," CG1"," CG2"," CD1", None, None, None, None, None, None," H "," HA "," HB ","1HG2","2HG2","3HG2","1HG1","2HG1","1HD1","2HD1","3HD1", None, None), |
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(" N "," CA "," C "," O "," CB "," CG "," CD1"," CD2", None, None, None, None, None, None," H "," HA ","1HB ","2HB "," HG ","1HD1","2HD1","3HD1","1HD2","2HD2","3HD2", None, None), |
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(" N "," CA "," C "," O "," CB "," CG "," CD "," CE "," NZ ", None, None, None, None, None," H "," HA ","1HB ","2HB ","1HG ","2HG ","1HD ","2HD ","1HE ","2HE ","1HZ ","2HZ ","3HZ "), |
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|
(" N "," CA "," C "," O "," CB "," CG "," SD "," CE ", None, None, None, None, None, None," H "," HA ","1HB ","2HB ","1HG ","2HG ","1HE ","2HE ","3HE ", None, None, None, None), |
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(" N "," CA "," C "," O "," CB "," CG "," CD1"," CD2"," CE1"," CE2"," CZ ", None, None, None," H "," HA ","1HB ","2HB "," HD1"," HD2"," HE1"," HE2"," HZ ", None, None, None, None), |
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|
(" N "," CA "," C "," O "," CB "," CG "," CD ", None, None, None, None, None, None, None," HA ","1HB ","2HB ","1HG ","2HG ","1HD ","2HD ", None, None, None, None, None, None), |
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|
(" N "," CA "," C "," O "," CB "," OG ", None, None, None, None, None, None, None, None," H "," HG "," HA ","1HB ","2HB ", None, None, None, None, None, None, None, None), |
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|
(" N "," CA "," C "," O "," CB "," OG1"," CG2", None, None, None, None, None, None, None," H "," HG1"," HA "," HB ","1HG2","2HG2","3HG2", None, None, None, None, None, None), |
|
|
(" N "," CA "," C "," O "," CB "," CG "," CD1"," CD2"," NE1"," CE2"," CE3"," CZ2"," CZ3"," CH2"," H "," HA ","1HB ","2HB "," HD1"," HE1"," HZ2"," HH2"," HZ3"," HE3", None, None, None), |
|
|
(" N "," CA "," C "," O "," CB "," CG "," CD1"," CD2"," CE1"," CE2"," CZ "," OH ", None, None," H "," HA ","1HB ","2HB "," HD1"," HE1"," HE2"," HD2"," HH ", None, None, None, None), |
|
|
(" N "," CA "," C "," O "," CB "," CG1"," CG2", None, None, None, None, None, None, None," H "," HA "," HB ","1HG1","2HG1","3HG1","1HG2","2HG2","3HG2", None, None, None, None), |
|
|
(" N "," CA "," C "," O "," CB ", None, None, None, None, None, None, None, None, None," H "," HA ","1HB ","2HB ","3HB ", None, None, None, None, None, None, None, None), |
|
|
(" N "," CA "," C "," O "," CB ", None, None, None, None, None, None, None, None, None," H "," HA ","1HB ","2HB ","3HB ", None, None, None, None, None, None, None, None), |
|
|
] |
|
|
|
|
|
def get_sse(ca_coord): |
|
|
''' |
|
|
calculates the SSE of a peptide chain based on the P-SEA algorithm (Labesse 1997) |
|
|
code borrowed from biokite: https://github.com/biokit/biokit |
|
|
''' |
|
|
def vector_dot(v1,v2): return (v1*v2).sum(-1) |
|
|
def norm_vector(v): return v / np.linalg.norm(v, axis=-1, keepdims=True) |
|
|
def displacement(atoms1, atoms2): |
|
|
v1 = np.asarray(atoms1) |
|
|
v2 = np.asarray(atoms2) |
|
|
if len(v1.shape) <= len(v2.shape): |
|
|
diff = v2 - v1 |
|
|
else: |
|
|
diff = -(v1 - v2) |
|
|
return diff |
|
|
def distance(atoms1, atoms2): |
|
|
diff = displacement(atoms1, atoms2) |
|
|
return np.sqrt(vector_dot(diff, diff)) |
|
|
|
|
|
def angle(atoms1, atoms2, atoms3): |
|
|
v1 = norm_vector(displacement(atoms1, atoms2)) |
|
|
v2 = norm_vector(displacement(atoms3, atoms2)) |
|
|
return np.arccos(vector_dot(v1,v2)) |
|
|
|
|
|
def dihedral(atoms1, atoms2, atoms3, atoms4): |
|
|
v1 = norm_vector(displacement(atoms1, atoms2)) |
|
|
v2 = norm_vector(displacement(atoms2, atoms3)) |
|
|
v3 = norm_vector(displacement(atoms3, atoms4)) |
|
|
|
|
|
n1 = np.cross(v1, v2) |
|
|
n2 = np.cross(v2, v3) |
|
|
|
|
|
|
|
|
x = vector_dot(n1,n2) |
|
|
y = vector_dot(np.cross(n1,n2), v2) |
|
|
return np.arctan2(y,x) |
|
|
|
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_radians_to_angle = 2*np.pi/360 |
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_r_helix = ((89-12)*_radians_to_angle, (89+12)*_radians_to_angle) |
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_a_helix = ((50-20)*_radians_to_angle, (50+20)*_radians_to_angle) |
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_d2_helix = ((5.5-0.5), (5.5+0.5)) |
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_d3_helix = ((5.3-0.5), (5.3+0.5)) |
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_d4_helix = ((6.4-0.6), (6.4+0.6)) |
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_r_strand = ((124-14)*_radians_to_angle, (124+14)*_radians_to_angle) |
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_a_strand = ((-180)*_radians_to_angle, (-125)*_radians_to_angle, |
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(145)*_radians_to_angle, (180)*_radians_to_angle) |
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_d2_strand = ((6.7-0.6), (6.7+0.6)) |
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_d3_strand = ((9.9-0.9), (9.9+0.9)) |
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_d4_strand = ((12.4-1.1), (12.4+1.1)) |
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d2i_coord = np.full(( len(ca_coord), 2, 3 ), np.nan) |
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d3i_coord = np.full(( len(ca_coord), 2, 3 ), np.nan) |
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d4i_coord = np.full(( len(ca_coord), 2, 3 ), np.nan) |
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ri_coord = np.full(( len(ca_coord), 3, 3 ), np.nan) |
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ai_coord = np.full(( len(ca_coord), 4, 3 ), np.nan) |
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for i in range(1, len(ca_coord)-1): d2i_coord[i] = (ca_coord[i-1], ca_coord[i+1]) |
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for i in range(1, len(ca_coord)-2): d3i_coord[i] = (ca_coord[i-1], ca_coord[i+2]) |
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for i in range(1, len(ca_coord)-3): d4i_coord[i] = (ca_coord[i-1], ca_coord[i+3]) |
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for i in range(1, len(ca_coord)-1): ri_coord[i] = (ca_coord[i-1], ca_coord[i], ca_coord[i+1]) |
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for i in range(1, len(ca_coord)-2): ai_coord[i] = (ca_coord[i-1], ca_coord[i], ca_coord[i+1], ca_coord[i+2]) |
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d2i = distance(d2i_coord[:,0], d2i_coord[:,1]) |
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d3i = distance(d3i_coord[:,0], d3i_coord[:,1]) |
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d4i = distance(d4i_coord[:,0], d4i_coord[:,1]) |
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ri = angle(ri_coord[:,0], ri_coord[:,1], ri_coord[:,2]) |
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ai = dihedral(ai_coord[:,0], ai_coord[:,1], ai_coord[:,2], ai_coord[:,3]) |
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sse = ["L"] * len(ca_coord) |
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is_pot_helix = np.zeros(len(sse), dtype=bool) |
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for i in range(len(sse)): |
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if ( |
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d3i[i] >= _d3_helix[0] and d3i[i] <= _d3_helix[1] |
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and d4i[i] >= _d4_helix[0] and d4i[i] <= _d4_helix[1] |
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) or ( |
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ri[i] >= _r_helix[0] and ri[i] <= _r_helix[1] |
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and ai[i] >= _a_helix[0] and ai[i] <= _a_helix[1] |
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): |
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is_pot_helix[i] = True |
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is_helix = np.zeros(len(sse), dtype=bool) |
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counter = 0 |
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for i in range(len(sse)): |
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if is_pot_helix[i]: |
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counter += 1 |
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else: |
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if counter >= 5: |
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is_helix[i-counter : i] = True |
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counter = 0 |
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i = 0 |
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while i < len(sse): |
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if is_helix[i]: |
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sse[i] = "H" |
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if ( |
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d3i[i-1] >= _d3_helix[0] and d3i[i-1] <= _d3_helix[1] |
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) or ( |
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ri[i-1] >= _r_helix[0] and ri[i-1] <= _r_helix[1] |
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): |
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sse[i-1] = "H" |
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sse[i] = "H" |
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if ( |
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d3i[i+1] >= _d3_helix[0] and d3i[i+1] <= _d3_helix[1] |
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) or ( |
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ri[i+1] >= _r_helix[0] and ri[i+1] <= _r_helix[1] |
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): |
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sse[i+1] = "H" |
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i += 1 |
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is_pot_strand = np.zeros(len(sse), dtype=bool) |
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for i in range(len(sse)): |
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if ( d2i[i] >= _d2_strand[0] and d2i[i] <= _d2_strand[1] |
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and d3i[i] >= _d3_strand[0] and d3i[i] <= _d3_strand[1] |
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and d4i[i] >= _d4_strand[0] and d4i[i] <= _d4_strand[1] |
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) or ( |
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ri[i] >= _r_strand[0] and ri[i] <= _r_strand[1] |
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and ( (ai[i] >= _a_strand[0] and ai[i] <= _a_strand[1]) |
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or (ai[i] >= _a_strand[2] and ai[i] <= _a_strand[3])) |
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): |
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is_pot_strand[i] = True |
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pot_strand_coord = ca_coord[is_pot_strand] |
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is_strand = np.zeros(len(sse), dtype=bool) |
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counter = 0 |
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contacts = 0 |
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for i in range(len(sse)): |
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if is_pot_strand[i]: |
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counter += 1 |
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coord = ca_coord[i] |
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for strand_coord in ca_coord: |
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dist = distance(coord, strand_coord) |
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if dist >= 4.2 and dist <= 5.2: |
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contacts += 1 |
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else: |
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if counter >= 4: |
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is_strand[i-counter : i] = True |
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elif counter == 3 and contacts >= 5: |
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is_strand[i-counter : i] = True |
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counter = 0 |
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contacts = 0 |
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i = 0 |
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while i < len(sse): |
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if is_strand[i]: |
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sse[i] = "E" |
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if d3i[i-1] >= _d3_strand[0] and d3i[i-1] <= _d3_strand[1]: |
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sse[i-1] = "E" |
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sse[i] = "E" |
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if d3i[i+1] >= _d3_strand[0] and d3i[i+1] <= _d3_strand[1]: |
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sse[i+1] = "E" |
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i += 1 |
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return sse |
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if __name__ == "__main__": |
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main() |
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