mirror of
https://github.com/gcorso/DiffDock.git
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793 lines
52 KiB
Python
793 lines
52 KiB
Python
import copy
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import os
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import torch
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from datasets.moad import MOAD
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from utils.gnina_utils import get_gnina_poses
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from utils.molecules_utils import get_symmetry_rmsd
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torch.multiprocessing.set_sharing_strategy('file_system')
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import resource
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rlimit = resource.getrlimit(resource.RLIMIT_NOFILE)
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resource.setrlimit(resource.RLIMIT_NOFILE, (64000, rlimit[1]))
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import time
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from argparse import ArgumentParser, Namespace, FileType
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from datetime import datetime
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from functools import partial
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import numpy as np
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import wandb
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from rdkit import RDLogger
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from torch_geometric.loader import DataLoader
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from rdkit.Chem import RemoveAllHs
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from datasets.pdbbind import PDBBind
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from utils.diffusion_utils import t_to_sigma as t_to_sigma_compl, get_t_schedule
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from utils.sampling import randomize_position, sampling
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from utils.utils import get_model, ExponentialMovingAverage
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from utils.visualise import PDBFile
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from tqdm import tqdm
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RDLogger.DisableLog('rdApp.*')
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import yaml
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import pickle
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def get_dataset(args, model_args, confidence=False):
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if args.dataset != 'moad':
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dataset = PDBBind(transform=None, root=args.data_dir, limit_complexes=args.limit_complexes, dataset=args.dataset,
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chain_cutoff=args.chain_cutoff,
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receptor_radius=model_args.receptor_radius,
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cache_path=args.cache_path, split_path=args.split_path,
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remove_hs=model_args.remove_hs, max_lig_size=None,
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c_alpha_max_neighbors=model_args.c_alpha_max_neighbors,
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matching=not model_args.no_torsion, keep_original=True,
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popsize=args.matching_popsize,
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maxiter=args.matching_maxiter,
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all_atoms=model_args.all_atoms if 'all_atoms' in model_args else False,
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atom_radius=model_args.atom_radius if 'all_atoms' in model_args else None,
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atom_max_neighbors=model_args.atom_max_neighbors if 'all_atoms' in model_args else None,
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esm_embeddings_path=args.esm_embeddings_path,
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require_ligand=True,
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num_workers=args.num_workers,
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protein_file=args.protein_file,
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ligand_file=args.ligand_file,
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knn_only_graph=True if not hasattr(args, 'not_knn_only_graph') else not args.not_knn_only_graph,
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include_miscellaneous_atoms=False if not hasattr(args,
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'include_miscellaneous_atoms') else args.include_miscellaneous_atoms,
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num_conformers=args.samples_per_complex if args.resample_rdkit and not confidence else 1)
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else:
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dataset = MOAD(transform=None, root=args.data_dir, limit_complexes=args.limit_complexes,
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chain_cutoff=args.chain_cutoff,
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receptor_radius=model_args.receptor_radius,
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cache_path=args.cache_path, split=args.split,
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remove_hs=model_args.remove_hs, max_lig_size=None,
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c_alpha_max_neighbors=model_args.c_alpha_max_neighbors,
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matching=not model_args.no_torsion, keep_original=True,
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popsize=args.matching_popsize,
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maxiter=args.matching_maxiter,
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all_atoms=model_args.all_atoms if 'all_atoms' in model_args else False,
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atom_radius=model_args.atom_radius if 'all_atoms' in model_args else None,
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atom_max_neighbors=model_args.atom_max_neighbors if 'all_atoms' in model_args else None,
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esm_embeddings_path=args.esm_embeddings_path,
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esm_embeddings_sequences_path=args.moad_esm_embeddings_sequences_path,
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require_ligand=True,
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num_workers=args.num_workers,
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knn_only_graph=True if not hasattr(args, 'not_knn_only_graph') else not args.not_knn_only_graph,
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include_miscellaneous_atoms=False if not hasattr(args,
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'include_miscellaneous_atoms') else args.include_miscellaneous_atoms,
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num_conformers=args.samples_per_complex if args.resample_rdkit and not confidence else 1,
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unroll_clusters=args.unroll_clusters, remove_pdbbind=args.remove_pdbbind,
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min_ligand_size=args.min_ligand_size,
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max_receptor_size=args.max_receptor_size,
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remove_promiscuous_targets=args.remove_promiscuous_targets,
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no_randomness=True,
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skip_matching=args.skip_matching)
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return dataset
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if __name__ == '__main__':
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cache_name = datetime.now().strftime('date%d-%m_time%H-%M-%S.%f')
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parser = ArgumentParser()
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parser.add_argument('--config', type=FileType(mode='r'), default=None)
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parser.add_argument('--model_dir', type=str, default='workdir/test_score', help='Path to folder with trained score model and hyperparameters')
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parser.add_argument('--ckpt', type=str, default='best_ema_inference_epoch_model.pt', help='Checkpoint to use inside the folder')
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parser.add_argument('--confidence_model_dir', type=str, default=None, help='Path to folder with trained confidence model and hyperparameters')
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parser.add_argument('--confidence_ckpt', type=str, default='best_model_epoch75.pt', help='Checkpoint to use inside the folder')
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parser.add_argument('--num_cpu', type=int, default=None, help='if this is a number instead of none, the max number of cpus used by torch will be set to this.')
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parser.add_argument('--run_name', type=str, default='test', help='')
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parser.add_argument('--project', type=str, default='ligbind_inf', help='')
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parser.add_argument('--out_dir', type=str, default=None, help='Where to save results to')
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parser.add_argument('--batch_size', type=int, default=40, help='Number of poses to sample in parallel')
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parser.add_argument('--old_score_model', action='store_true', default=False, help='')
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parser.add_argument('--old_confidence_model', action='store_true', default=True, help='')
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parser.add_argument('--matching_popsize', type=int, default=40, help='Differential evolution popsize parameter in matching')
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parser.add_argument('--matching_maxiter', type=int, default=40, help='Differential evolution maxiter parameter in matching')
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parser.add_argument('--esm_embeddings_path', type=str, default=None, help='If this is set then the LM embeddings at that path will be used for the receptor features')
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parser.add_argument('--moad_esm_embeddings_sequences_path', type=str, default=None, help='')
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parser.add_argument('--chain_cutoff', type=float, default=None, help='Cutoff of the chains from the ligand') # TODO remove
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parser.add_argument('--save_complexes', action='store_true', default=False, help='Save generated complex graphs')
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parser.add_argument('--complexes_save_path', type=str, default=None, help='')
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parser.add_argument('--dataset', type=str, default='moad', help='')
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parser.add_argument('--cache_path', type=str, default='data/cache', help='Folder from where to load/restore cached dataset')
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parser.add_argument('--data_dir', type=str, default='../../ligbind/data/BindingMOAD_2020_ab_processed_biounit/', help='Folder containing original structures')
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parser.add_argument('--split_path', type=str, default='data/BindingMOAD_2020_ab_processed/splits/val.txt', help='Path of file defining the split')
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parser.add_argument('--no_model', action='store_true', default=False, help='Whether to return seed conformer without running model')
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parser.add_argument('--no_random', action='store_true', default=False, help='Whether to add randomness in diffusion steps')
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parser.add_argument('--no_final_step_noise', action='store_true', default=False, help='Whether to add noise after the final step')
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parser.add_argument('--ode', action='store_true', default=False, help='Whether to run the probability flow ODE')
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parser.add_argument('--wandb', action='store_true', default=False, help='') # TODO remove
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parser.add_argument('--inference_steps', type=int, default=40, help='Number of denoising steps')
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parser.add_argument('--limit_complexes', type=int, default=0, help='Limit to the number of complexes')
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parser.add_argument('--num_workers', type=int, default=1, help='Number of workers for dataset creation')
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parser.add_argument('--tqdm', action='store_true', default=False, help='Whether to show progress bar')
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parser.add_argument('--save_visualisation', action='store_true', default=True, help='Whether to save visualizations')
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parser.add_argument('--samples_per_complex', type=int, default=4, help='Number of poses to sample for each complex')
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parser.add_argument('--resample_rdkit', action='store_true', default=False, help='')
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parser.add_argument('--skip_matching', action='store_true', default=False, help='')
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parser.add_argument('--sigma_schedule', type=str, default='expbeta', help='Schedule type, no other options')
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parser.add_argument('--inf_sched_alpha', type=float, default=1, help='Alpha parameter of beta distribution for t sched')
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parser.add_argument('--inf_sched_beta', type=float, default=1, help='Beta parameter of beta distribution for t sched')
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parser.add_argument('--pocket_knowledge', action='store_true', default=False, help='')
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parser.add_argument('--no_random_pocket', action='store_true', default=False, help='')
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parser.add_argument('--pocket_tr_max', type=float, default=3, help='')
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parser.add_argument('--pocket_cutoff', type=float, default=5, help='')
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parser.add_argument('--actual_steps', type=int, default=None, help='')
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parser.add_argument('--restrict_cpu', action='store_true', default=False, help='')
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parser.add_argument('--force_fixed_center_conv', action='store_true', default=False, help='')
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parser.add_argument('--protein_file', type=str, default='protein_processed', help='')
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parser.add_argument('--unroll_clusters', action='store_true', default=True, help='')
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parser.add_argument('--ligand_file', type=str, default='ligand', help='')
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parser.add_argument('--remove_pdbbind', action='store_true', default=False, help='')
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parser.add_argument('--split', type=str, default='val', help='')
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parser.add_argument('--limit_failures', type=float, default=5, help='')
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parser.add_argument('--min_ligand_size', type=float, default=0, help='')
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parser.add_argument('--max_receptor_size', type=float, default=None, help='')
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parser.add_argument('--remove_promiscuous_targets', type=float, default=None, help='')
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parser.add_argument('--initial_noise_std_proportion', type=float, default=-1.0, help='Initial noise std proportion')
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parser.add_argument('--choose_residue', action='store_true', default=False, help='')
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parser.add_argument('--temp_sampling_tr', type=float, default=1.0)
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parser.add_argument('--temp_psi_tr', type=float, default=0.0)
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parser.add_argument('--temp_sigma_data_tr', type=float, default=0.5)
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parser.add_argument('--temp_sampling_rot', type=float, default=1.0)
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parser.add_argument('--temp_psi_rot', type=float, default=0.0)
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parser.add_argument('--temp_sigma_data_rot', type=float, default=0.5)
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parser.add_argument('--temp_sampling_tor', type=float, default=1.0)
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parser.add_argument('--temp_psi_tor', type=float, default=0.0)
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parser.add_argument('--temp_sigma_data_tor', type=float, default=0.5)
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parser.add_argument('--gnina_minimize', action='store_true', default=False, help='')
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parser.add_argument('--gnina_path', type=str, default='gnina', help='')
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parser.add_argument('--gnina_log_file', type=str, default='gnina_log.txt', help='') # To redirect gnina subprocesses stdouts from the terminal window
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parser.add_argument('--gnina_full_dock', action='store_true', default=False, help='')
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parser.add_argument('--save_gnina_metrics', action='store_true', default=False, help='')
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parser.add_argument('--gnina_autobox_add', type=float, default=4.0)
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parser.add_argument('--gnina_poses_to_optimize', type=int, default=1)
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args = parser.parse_args()
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if args.config:
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config_dict = yaml.load(args.config, Loader=yaml.FullLoader)
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arg_dict = args.__dict__
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for key, value in config_dict.items():
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if isinstance(value, list):
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for v in value:
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arg_dict[key].append(v)
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else:
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arg_dict[key] = value
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if args.restrict_cpu:
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threads = 16
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os.environ["OMP_NUM_THREADS"] = str(threads) # export OMP_NUM_THREADS=4
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os.environ["OPENBLAS_NUM_THREADS"] = str(threads) # export OPENBLAS_NUM_THREADS=4
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os.environ["MKL_NUM_THREADS"] = str(threads) # export MKL_NUM_THREADS=6
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os.environ["VECLIB_MAXIMUM_THREADS"] = str(threads) # export VECLIB_MAXIMUM_THREADS=4
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os.environ["NUMEXPR_NUM_THREADS"] = str(threads) # export NUMEXPR_NUM_THREADS=6
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os.environ["CUDA_VISIBLE_DEVICES"] = ""
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torch.set_num_threads(threads)
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if args.out_dir is None: args.out_dir = f'inference_out_dir_not_specified/{args.run_name}'
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os.makedirs(args.out_dir, exist_ok=True)
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with open(f'{args.model_dir}/model_parameters.yml') as f:
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score_model_args = Namespace(**yaml.full_load(f))
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if not hasattr(score_model_args, 'separate_noise_schedule'): # exists for compatibility with old runs that did not have the attribute
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score_model_args.separate_noise_schedule = False
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if not hasattr(score_model_args, 'lm_embeddings_path'):
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score_model_args.lm_embeddings_path = None
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if not hasattr(score_model_args, 'tr_only_confidence'):
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score_model_args.tr_only_confidence = True
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if not hasattr(score_model_args, 'high_confidence_threshold'):
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score_model_args.high_confidence_threshold = 0.0
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if not hasattr(score_model_args, 'include_confidence_prediction'):
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score_model_args.include_confidence_prediction = False
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if not hasattr(score_model_args, 'confidence_weight'):
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score_model_args.confidence_weight = 1
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if not hasattr(score_model_args, 'asyncronous_noise_schedule'):
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score_model_args.asyncronous_noise_schedule = False
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if not hasattr(score_model_args, 'correct_torsion_sigmas'):
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score_model_args.correct_torsion_sigmas = False
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if not hasattr(score_model_args, 'esm_embeddings_path'):
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score_model_args.esm_embeddings_path = None
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if args.force_fixed_center_conv:
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score_model_args.not_fixed_center_conv = False
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if args.confidence_model_dir is not None:
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with open(f'{args.confidence_model_dir}/model_parameters.yml') as f:
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confidence_args = Namespace(**yaml.full_load(f))
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if not os.path.exists(confidence_args.original_model_dir):
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print("Path does not exist: ", confidence_args.original_model_dir)
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confidence_args.original_model_dir = os.path.join(*confidence_args.original_model_dir.split('/')[-2:])
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print('instead trying path: ', confidence_args.original_model_dir)
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if not hasattr(confidence_args, 'use_original_model_cache'):
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confidence_args.use_original_model_cache = True
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if not hasattr(confidence_args, 'esm_embeddings_path'):
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confidence_args.esm_embeddings_path = None
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if not hasattr(confidence_args, 'num_classification_bins'):
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confidence_args.num_classification_bins = 2
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if args.num_cpu is not None:
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torch.set_num_threads(args.num_cpu)
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device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
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test_dataset = get_dataset(args, score_model_args)
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test_loader = DataLoader(dataset=test_dataset, batch_size=1, shuffle=False)
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if args.confidence_model_dir is not None:
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if not (confidence_args.use_original_model_cache or confidence_args.transfer_weights):
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# if the confidence model uses the same type of data as the original model then we do not need this dataset and can just use the complexes
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print('HAPPENING | confidence model uses different type of graphs than the score model. Loading (or creating if not existing) the data for the confidence model now.')
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confidence_test_dataset = get_dataset(args, confidence_args, confidence=True)
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confidence_complex_dict = {d.name: d for d in confidence_test_dataset}
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t_to_sigma = partial(t_to_sigma_compl, args=score_model_args)
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if not args.no_model:
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model = get_model(score_model_args, device, t_to_sigma=t_to_sigma, no_parallel=True, old=args.old_score_model)
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state_dict = torch.load(f'{args.model_dir}/{args.ckpt}', map_location=torch.device('cpu'))
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if args.ckpt == 'last_model.pt':
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model_state_dict = state_dict['model']
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ema_weights_state = state_dict['ema_weights']
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model.load_state_dict(model_state_dict, strict=True)
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ema_weights = ExponentialMovingAverage(model.parameters(), decay=score_model_args.ema_rate)
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ema_weights.load_state_dict(ema_weights_state, device=device)
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ema_weights.copy_to(model.parameters())
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else:
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model.load_state_dict(state_dict, strict=True)
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model = model.to(device)
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model.eval()
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if args.confidence_model_dir is not None:
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if confidence_args.transfer_weights:
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with open(f'{confidence_args.original_model_dir}/model_parameters.yml') as f:
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confidence_model_args = Namespace(**yaml.full_load(f))
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if not hasattr(confidence_model_args, 'separate_noise_schedule'): # exists for compatibility with old runs that did not have the
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# attribute
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confidence_model_args.separate_noise_schedule = False
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if not hasattr(confidence_model_args, 'lm_embeddings_path'):
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confidence_model_args.lm_embeddings_path = None
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if not hasattr(confidence_model_args, 'tr_only_confidence'):
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confidence_model_args.tr_only_confidence = True
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if not hasattr(confidence_model_args, 'high_confidence_threshold'):
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confidence_model_args.high_confidence_threshold = 0.0
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if not hasattr(confidence_model_args, 'include_confidence_prediction'):
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confidence_model_args.include_confidence_prediction = False
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if not hasattr(confidence_model_args, 'confidence_dropout'):
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confidence_model_args.confidence_dropout = confidence_model_args.dropout
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if not hasattr(confidence_model_args, 'confidence_no_batchnorm'):
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confidence_model_args.confidence_no_batchnorm = False
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if not hasattr(confidence_model_args, 'confidence_weight'):
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confidence_model_args.confidence_weight = 1
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if not hasattr(confidence_model_args, 'asyncronous_noise_schedule'):
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confidence_model_args.asyncronous_noise_schedule = False
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if not hasattr(confidence_model_args, 'correct_torsion_sigmas'):
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confidence_model_args.correct_torsion_sigmas = False
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if not hasattr(confidence_model_args, 'esm_embeddings_path'):
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confidence_model_args.esm_embeddings_path = None
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if not hasattr(confidence_model_args, 'not_fixed_knn_radius_graph'):
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confidence_model_args.not_fixed_knn_radius_graph = True
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if not hasattr(confidence_model_args, 'not_knn_only_graph'):
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confidence_model_args.not_knn_only_graph = True
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else:
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confidence_model_args = confidence_args
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confidence_model = get_model(confidence_model_args, device, t_to_sigma=t_to_sigma, no_parallel=True,
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confidence_mode=True, old=args.old_confidence_model)
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state_dict = torch.load(f'{args.confidence_model_dir}/{args.confidence_ckpt}', map_location=torch.device('cpu'))
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confidence_model.load_state_dict(state_dict, strict=True)
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confidence_model = confidence_model.to(device)
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confidence_model.eval()
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else:
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confidence_model = None
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confidence_args = None
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confidence_model_args = None
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if args.wandb:
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run = wandb.init(
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entity='',
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settings=wandb.Settings(start_method="fork"),
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project=args.project,
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name=args.run_name,
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config=args
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)
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if args.pocket_knowledge and args.different_schedules:
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t_max = (np.log(args.pocket_tr_max) - np.log(score_model_args.tr_sigma_min)) / (
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np.log(score_model_args.tr_sigma_max) - np.log(score_model_args.tr_sigma_min))
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else:
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t_max = 1
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tr_schedule = get_t_schedule(sigma_schedule=args.sigma_schedule, inference_steps=args.inference_steps,
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inf_sched_alpha=args.inf_sched_alpha, inf_sched_beta=args.inf_sched_beta,
|
|
t_max=t_max)
|
|
t_schedule = None
|
|
rot_schedule = tr_schedule
|
|
tor_schedule = tr_schedule
|
|
print('common t schedule', tr_schedule)
|
|
|
|
rmsds_list, obrmsds, centroid_distances_list, failures, skipped, min_cross_distances_list, base_min_cross_distances_list, confidences_list, names_list = [], [], [], 0, 0, [], [], [], []
|
|
run_times, min_self_distances_list, without_rec_overlap_list = [], [], []
|
|
gnina_rmsds_list, gnina_score_list = [], []
|
|
N = args.samples_per_complex
|
|
#names_no_rec_overlap = read_strings_from_txt(f'data/splits/timesplit_test_no_rec_overlap')
|
|
#names_no_rec_overlap = np.load("data/BindingMOAD_2020_processed/test_names_bootstrapping.npy")
|
|
names_no_rec_overlap = []
|
|
print('Size of test dataset: ', len(test_dataset))
|
|
|
|
if args.save_complexes:
|
|
sampled_complexes = {}
|
|
|
|
if args.save_gnina_metrics:
|
|
# key is complex_name, value is the gnina metrics for all samples
|
|
gnina_metrics = {}
|
|
|
|
for idx, orig_complex_graph in tqdm(enumerate(test_loader)):
|
|
torch.cuda.empty_cache()
|
|
|
|
if confidence_model is not None and not (confidence_args.use_original_model_cache or confidence_args.transfer_weights) \
|
|
and orig_complex_graph.name[0] not in confidence_complex_dict.keys():
|
|
skipped += 1
|
|
print(f"HAPPENING | The confidence dataset did not contain {orig_complex_graph.name[0]}. We are skipping this complex.")
|
|
continue
|
|
success = 0
|
|
bs = args.batch_size
|
|
while 0 >= success > -args.limit_failures:
|
|
try:
|
|
data_list = [copy.deepcopy(orig_complex_graph) for _ in range(N)]
|
|
if args.resample_rdkit:
|
|
for i, g in enumerate(data_list):
|
|
g['ligand'].pos = g['ligand'].pos[i]
|
|
|
|
randomize_position(data_list, score_model_args.no_torsion, args.no_random or args.no_random_pocket,
|
|
score_model_args.tr_sigma_max if not args.pocket_knowledge else args.pocket_tr_max,
|
|
args.pocket_knowledge, args.pocket_cutoff,
|
|
initial_noise_std_proportion=args.initial_noise_std_proportion,
|
|
choose_residue=args.choose_residue)
|
|
|
|
|
|
pdb = None
|
|
if args.save_visualisation:
|
|
visualization_list = []
|
|
for idx, graph in enumerate(data_list):
|
|
lig = orig_complex_graph.mol[0]
|
|
pdb = PDBFile(lig)
|
|
pdb.add(lig, 0, 0)
|
|
pdb.add(((orig_complex_graph['ligand'].pos if not args.resample_rdkit else orig_complex_graph['ligand'].pos[idx]) + orig_complex_graph.original_center).detach().cpu(), 1, 0)
|
|
pdb.add((graph['ligand'].pos + graph.original_center).detach().cpu(), part=1, order=1)
|
|
visualization_list.append(pdb)
|
|
else:
|
|
visualization_list = None
|
|
|
|
start_time = time.time()
|
|
if not args.no_model:
|
|
if confidence_model is not None and not (
|
|
confidence_args.use_original_model_cache or confidence_args.transfer_weights):
|
|
confidence_data_list = [copy.deepcopy(confidence_complex_dict[orig_complex_graph.name[0]]) for _ in
|
|
range(N)]
|
|
else:
|
|
confidence_data_list = None
|
|
|
|
data_list, confidence = sampling(data_list=data_list, model=model,
|
|
inference_steps=args.actual_steps if args.actual_steps is not None else args.inference_steps,
|
|
tr_schedule=tr_schedule, rot_schedule=rot_schedule,
|
|
tor_schedule=tor_schedule,
|
|
device=device, t_to_sigma=t_to_sigma, model_args=score_model_args,
|
|
no_random=args.no_random,
|
|
ode=args.ode, visualization_list=visualization_list,
|
|
confidence_model=confidence_model,
|
|
confidence_data_list=confidence_data_list,
|
|
confidence_model_args=confidence_model_args,
|
|
t_schedule=t_schedule,
|
|
batch_size=bs,
|
|
no_final_step_noise=args.no_final_step_noise, pivot=None,
|
|
temp_sampling=[args.temp_sampling_tr, args.temp_sampling_rot, args.temp_sampling_tor],
|
|
temp_psi=[args.temp_psi_tr, args.temp_psi_rot, args.temp_psi_tor],
|
|
temp_sigma_data=[args.temp_sigma_data_tr, args.temp_sigma_data_rot, args.temp_sigma_data_tor])
|
|
|
|
run_times.append(time.time() - start_time)
|
|
if score_model_args.no_torsion:
|
|
orig_complex_graph['ligand'].orig_pos = (orig_complex_graph['ligand'].pos.cpu().numpy() + orig_complex_graph.original_center.cpu().numpy())
|
|
|
|
filterHs = torch.not_equal(data_list[0]['ligand'].x[:, 0], 0).cpu().numpy()
|
|
|
|
if isinstance(orig_complex_graph['ligand'].orig_pos, list):
|
|
# Same pair with multiple binding positions
|
|
# print(f'Number of ground truth poses: {len(orig_complex_graph['ligand'].orig_pos)}')
|
|
if args.dataset == 'moad' or args.dataset == 'posebusters':
|
|
orig_ligand_pos = np.array([pos[filterHs] - orig_complex_graph.original_center.cpu().numpy() for pos in orig_complex_graph['ligand'].orig_pos[0]])
|
|
else:
|
|
orig_ligand_pos = np.array([pos[filterHs] - orig_complex_graph.original_center.cpu().numpy() for pos in [orig_complex_graph['ligand'].orig_pos[0]]])
|
|
print('Found ', len(orig_ligand_pos), ' ground truth poses')
|
|
else:
|
|
print('default path')
|
|
orig_ligand_pos = np.expand_dims(
|
|
orig_complex_graph['ligand'].orig_pos[filterHs] - orig_complex_graph.original_center.cpu().numpy(),
|
|
axis=0)
|
|
|
|
ligand_pos = np.asarray(
|
|
[complex_graph['ligand'].pos.cpu().numpy()[filterHs] for complex_graph in data_list])
|
|
|
|
# Use gnina to minimize energy for predicted ligands.
|
|
if args.gnina_minimize:
|
|
print('Running gnina on all predicted ligand positions for energy minimization.')
|
|
gnina_rmsds, gnina_scores = [], []
|
|
lig = copy.deepcopy(orig_complex_graph.mol[0])
|
|
positions = np.asarray([complex_graph['ligand'].pos.cpu().numpy() for complex_graph in data_list])
|
|
|
|
conf = confidence
|
|
if conf is not None and isinstance(confidence_args.rmsd_classification_cutoff, list):
|
|
conf = conf[:, 0]
|
|
if conf is not None:
|
|
conf = conf.cpu().numpy()
|
|
conf = np.nan_to_num(conf, nan=-1e-6)
|
|
re_order = np.argsort(conf)[::-1]
|
|
positions = positions[re_order]
|
|
|
|
for pos in positions[:args.gnina_poses_to_optimize]:
|
|
center = orig_complex_graph.original_center.cpu().numpy()
|
|
gnina_ligand_pos, gnina_mol, gnina_score = get_gnina_poses(args, lig, pos, center, name=orig_complex_graph.name[0],
|
|
folder=args.folder, gnina_path=args.gnina_path) # TODO set the right folder
|
|
|
|
mol = RemoveAllHs(orig_complex_graph.mol[0])
|
|
rmsds = []
|
|
for i in range(len(orig_ligand_pos)):
|
|
try:
|
|
rmsd = get_symmetry_rmsd(mol, orig_ligand_pos[i], gnina_ligand_pos, gnina_mol)
|
|
except Exception as e:
|
|
print("Using non corrected RMSD because of the error:", e)
|
|
rmsd = np.sqrt(((gnina_ligand_pos - orig_ligand_pos[i]) ** 2).sum(axis=1).mean(axis=0))
|
|
rmsds.append(rmsd)
|
|
rmsds = np.asarray(rmsds)
|
|
rmsd = np.min(rmsds, axis=0)
|
|
gnina_rmsds.append(rmsd)
|
|
gnina_scores.append(gnina_score)
|
|
|
|
gnina_rmsds = np.asarray(gnina_rmsds)
|
|
assert gnina_rmsds.shape == (args.gnina_poses_to_optimize,), str(gnina_rmsds.shape) + " " + str(args.gnina_poses_to_optimize)
|
|
gnina_rmsds_list.append(gnina_rmsds)
|
|
gnina_scores = np.asarray(gnina_scores)
|
|
gnina_score_list.append(gnina_scores)
|
|
|
|
mol = RemoveAllHs(orig_complex_graph.mol[0])
|
|
rmsds = []
|
|
for i in range(len(orig_ligand_pos)):
|
|
try:
|
|
rmsd = get_symmetry_rmsd(mol, orig_ligand_pos[i], [l for l in ligand_pos])
|
|
except Exception as e:
|
|
print("Using non corrected RMSD because of the error:", e)
|
|
rmsd = np.sqrt(((ligand_pos - orig_ligand_pos[i]) ** 2).sum(axis=2).mean(axis=1))
|
|
rmsds.append(rmsd)
|
|
rmsds = np.asarray(rmsds)
|
|
rmsd = np.min(rmsds, axis=0)
|
|
|
|
centroid_distance = np.min(np.linalg.norm(ligand_pos.mean(axis=1)[None, :] - orig_ligand_pos.mean(axis=1)[:, None], axis=2), axis=0)
|
|
|
|
if confidence is not None and isinstance(confidence_args.rmsd_classification_cutoff, list):
|
|
confidence = confidence[:, 0]
|
|
if confidence is not None:
|
|
confidence = confidence.cpu().numpy()
|
|
confidence = np.nan_to_num(confidence, nan=-1e-6)
|
|
re_order = np.argsort(confidence)[::-1]
|
|
print(orig_complex_graph['name'], ' rmsd', np.around(rmsd, 1)[re_order], ' centroid distance',
|
|
np.around(centroid_distance, 1)[re_order], ' confidences ', np.around(confidence, 4)[re_order],
|
|
(' gnina rmsd ' + str(np.around(gnina_rmsds, 1))) if args.gnina_minimize else '')
|
|
confidences_list.append(confidence)
|
|
else:
|
|
print(orig_complex_graph['name'], ' rmsd', np.around(rmsd, 1), ' centroid distance',
|
|
np.around(centroid_distance, 1))
|
|
centroid_distances_list.append(centroid_distance)
|
|
|
|
self_distances = np.linalg.norm(ligand_pos[:, :, None, :] - ligand_pos[:, None, :, :], axis=-1)
|
|
self_distances = np.where(np.eye(self_distances.shape[2]), np.inf, self_distances)
|
|
min_self_distances_list.append(np.min(self_distances, axis=(1, 2)))
|
|
|
|
if args.save_complexes:
|
|
sampled_complexes[orig_complex_graph.name[0]] = data_list
|
|
|
|
if args.save_visualisation:
|
|
if confidence is not None:
|
|
for rank, batch_idx in enumerate(re_order):
|
|
visualization_list[batch_idx].write(
|
|
f'{args.out_dir}/{data_list[batch_idx]["name"][0]}_{rank + 1}_{rmsd[batch_idx]:.1f}_{(confidence)[batch_idx]:.1f}.pdb')
|
|
else:
|
|
for rank, batch_idx in enumerate(np.argsort(rmsd)):
|
|
visualization_list[batch_idx].write(
|
|
f'{args.out_dir}/{data_list[batch_idx]["name"][0]}_{rank + 1}_{rmsd[batch_idx]:.1f}.pdb')
|
|
without_rec_overlap_list.append(1 if orig_complex_graph.name[0] in names_no_rec_overlap else 0)
|
|
names_list.append(orig_complex_graph.name[0])
|
|
rmsds_list.append(rmsd)
|
|
success = 1
|
|
except Exception as e:
|
|
print("Failed on", orig_complex_graph["name"], e)
|
|
success -= 1
|
|
if bs > 1:
|
|
bs = bs // 2
|
|
|
|
if success != 1:
|
|
rmsds_list.append(np.zeros(args.samples_per_complex) + 10000)
|
|
if confidence_model_args is not None:
|
|
confidences_list.append(np.zeros(args.samples_per_complex) - 10000)
|
|
centroid_distances_list.append(np.zeros(args.samples_per_complex) + 10000)
|
|
min_self_distances_list.append(np.zeros(args.samples_per_complex) + 10000)
|
|
without_rec_overlap_list.append(1 if orig_complex_graph.name[0] in names_no_rec_overlap else 0)
|
|
names_list.append(orig_complex_graph.name[0])
|
|
failures += 1
|
|
|
|
print('Performance without hydrogens included in the loss')
|
|
print(failures, "failures due to exceptions")
|
|
print(skipped, ' skipped because complex was not in confidence dataset')
|
|
|
|
if args.save_complexes:
|
|
print("Saving complexes.")
|
|
if args.complexes_save_path is not None:
|
|
with open(os.path.join(args.complexes_save_path, "ligands.pkl"), 'wb') as f:
|
|
pickle.dump(sampled_complexes, f)
|
|
|
|
if args.save_gnina_metrics:
|
|
with open(f'{args.out_dir}/gnina_metrics.pkl', 'wb') as f:
|
|
pickle.dump(gnina_metrics, f)
|
|
print("Saved gnina metrics")
|
|
|
|
performance_metrics = {}
|
|
for overlap in ['', 'no_overlap_']:
|
|
if 'no_overlap_' == overlap:
|
|
without_rec_overlap = np.array(without_rec_overlap_list, dtype=bool)
|
|
if without_rec_overlap.sum() == 0: continue
|
|
rmsds = np.array(rmsds_list)[without_rec_overlap]
|
|
min_self_distances = np.array(min_self_distances_list)[without_rec_overlap]
|
|
centroid_distances = np.array(centroid_distances_list)[without_rec_overlap]
|
|
if args.confidence_model_dir is not None:
|
|
confidences = np.array(confidences_list)[without_rec_overlap]
|
|
else:
|
|
confidences = np.array(confidences_list)
|
|
names = np.array(names_list)[without_rec_overlap]
|
|
gnina_rmsds = np.array(gnina_rmsds_list)[without_rec_overlap] if args.gnina_minimize else None
|
|
gnina_score = np.array(gnina_score_list)[without_rec_overlap] if args.gnina_minimize else None
|
|
|
|
else:
|
|
rmsds = np.array(rmsds_list)
|
|
gnina_rmsds = np.array(gnina_rmsds_list) if args.gnina_minimize else None
|
|
gnina_score = np.array(gnina_score_list) if args.gnina_minimize else None
|
|
min_self_distances = np.array(min_self_distances_list)
|
|
centroid_distances = np.array(centroid_distances_list)
|
|
confidences = np.array(confidences_list)
|
|
names = np.array(names_list)
|
|
|
|
run_times = np.array(run_times)
|
|
np.save(f'{args.out_dir}/{overlap}min_self_distances.npy', min_self_distances)
|
|
np.save(f'{args.out_dir}/{overlap}rmsds.npy', rmsds)
|
|
np.save(f'{args.out_dir}/{overlap}centroid_distances.npy', centroid_distances)
|
|
np.save(f'{args.out_dir}/{overlap}confidences.npy', confidences)
|
|
np.save(f'{args.out_dir}/{overlap}run_times.npy', run_times)
|
|
np.save(f'{args.out_dir}/{overlap}complex_names.npy', np.array(names))
|
|
np.save(f'{args.out_dir}/{overlap}gnina_rmsds.npy', gnina_rmsds)
|
|
np.save(f'{args.out_dir}/{overlap}gnina_score.npy', gnina_score)
|
|
|
|
performance_metrics.update({
|
|
f'{overlap}run_times_std': run_times.std().__round__(2),
|
|
f'{overlap}run_times_mean': run_times.mean().__round__(2),
|
|
f'{overlap}mean_rmsd': rmsds.mean(),
|
|
f'{overlap}rmsds_below_2': (100 * (rmsds < 2).sum() / len(rmsds) / N),
|
|
f'{overlap}rmsds_below_5': (100 * (rmsds < 5).sum() / len(rmsds) / N),
|
|
f'{overlap}rmsds_percentile_25': np.percentile(rmsds, 25).round(2),
|
|
f'{overlap}rmsds_percentile_50': np.percentile(rmsds, 50).round(2),
|
|
f'{overlap}rmsds_percentile_75': np.percentile(rmsds, 75).round(2),
|
|
f'{overlap}min_rmsds_below_2': (100 * (np.min(rmsds, axis=1) < 2).sum() / len(rmsds)),
|
|
f'{overlap}min_rmsds_below_5': (100 * (np.min(rmsds, axis=1) < 5).sum() / len(rmsds)),
|
|
|
|
f'{overlap}mean_centroid': centroid_distances.mean().__round__(2),
|
|
f'{overlap}centroid_below_2': (100 * (centroid_distances < 2).sum() / len(centroid_distances) / N).__round__(2),
|
|
f'{overlap}centroid_below_5': (100 * (centroid_distances < 5).sum() / len(centroid_distances) / N).__round__(2),
|
|
f'{overlap}centroid_percentile_25': np.percentile(centroid_distances, 25).round(2),
|
|
f'{overlap}centroid_percentile_50': np.percentile(centroid_distances, 50).round(2),
|
|
f'{overlap}centroid_percentile_75': np.percentile(centroid_distances, 75).round(2),
|
|
})
|
|
|
|
if args.gnina_minimize:
|
|
score_ordering = np.argsort(gnina_score, axis=1)[:, ::-1]
|
|
filtered_rmsds_gnina = gnina_rmsds[np.arange(gnina_rmsds.shape[0])[:, None], score_ordering][:, 0]
|
|
|
|
performance_metrics.update({
|
|
f'{overlap}gnina_rmsds_below_2': (100 * (gnina_rmsds < 2).sum() / len(gnina_rmsds) / args.gnina_poses_to_optimize) if args.gnina_minimize else None,
|
|
f'{overlap}gnina_rmsds_below_5': (100 * (gnina_rmsds < 5).sum() / len(gnina_rmsds) / args.gnina_poses_to_optimize) if args.gnina_minimize else None,
|
|
f'{overlap}gnina_min_rmsds_below_2': (100 * (np.min(gnina_rmsds, axis=1) < 2).sum() / len(gnina_rmsds)) if args.gnina_minimize else None,
|
|
f'{overlap}gnina_min_rmsds_below_5': (100 * (np.min(gnina_rmsds, axis=1) < 5).sum() / len(gnina_rmsds)) if args.gnina_minimize else None,
|
|
f'{overlap}gnina_filtered_rmsds_below_2': (100 * (filtered_rmsds_gnina < 2).sum() / len(filtered_rmsds_gnina)).__round__(2),
|
|
f'{overlap}gnina_filtered_rmsds_below_5': (100 * (filtered_rmsds_gnina < 5).sum() / len(filtered_rmsds_gnina)).__round__(2),
|
|
f'{overlap}gnina_rmsds_percentile_25': np.percentile(gnina_rmsds, 25).round(2),
|
|
f'{overlap}gnina_rmsds_percentile_50': np.percentile(gnina_rmsds, 50).round(2),
|
|
f'{overlap}gnina_rmsds_percentile_75': np.percentile(gnina_rmsds, 75).round(2),
|
|
|
|
})
|
|
|
|
if N >= 5:
|
|
top5_rmsds = np.min(rmsds[:, :5], axis=1)
|
|
top5_centroid_distances = centroid_distances[
|
|
np.arange(rmsds.shape[0])[:, None], np.argsort(rmsds[:, :5], axis=1)][:, 0]
|
|
top5_min_self_distances = min_self_distances[
|
|
np.arange(rmsds.shape[0])[:, None], np.argsort(rmsds[:, :5], axis=1)][:, 0]
|
|
performance_metrics.update({
|
|
f'{overlap}top5_self_intersect_fraction': (
|
|
100 * (top5_min_self_distances < 0.4).sum() / len(top5_min_self_distances)).__round__(2),
|
|
f'{overlap}top5_rmsds_below_2': (100 * (top5_rmsds < 2).sum() / len(top5_rmsds)).__round__(2),
|
|
f'{overlap}top5_rmsds_below_5': (100 * (top5_rmsds < 5).sum() / len(top5_rmsds)).__round__(2),
|
|
f'{overlap}top5_rmsds_percentile_25': np.percentile(top5_rmsds, 25).round(2),
|
|
f'{overlap}top5_rmsds_percentile_50': np.percentile(top5_rmsds, 50).round(2),
|
|
f'{overlap}top5_rmsds_percentile_75': np.percentile(top5_rmsds, 75).round(2),
|
|
|
|
f'{overlap}top5_centroid_below_2': (
|
|
100 * (top5_centroid_distances < 2).sum() / len(top5_centroid_distances)).__round__(2),
|
|
f'{overlap}top5_centroid_below_5': (
|
|
100 * (top5_centroid_distances < 5).sum() / len(top5_centroid_distances)).__round__(2),
|
|
f'{overlap}top5_centroid_percentile_25': np.percentile(top5_centroid_distances, 25).round(2),
|
|
f'{overlap}top5_centroid_percentile_50': np.percentile(top5_centroid_distances, 50).round(2),
|
|
f'{overlap}top5_centroid_percentile_75': np.percentile(top5_centroid_distances, 75).round(2),
|
|
})
|
|
|
|
if N >= 10:
|
|
top10_rmsds = np.min(rmsds[:, :10], axis=1)
|
|
top10_centroid_distances = centroid_distances[
|
|
np.arange(rmsds.shape[0])[:, None], np.argsort(rmsds[:, :10], axis=1)][:, 0]
|
|
top10_min_self_distances = min_self_distances[
|
|
np.arange(rmsds.shape[0])[:, None], np.argsort(rmsds[:, :10], axis=1)][:, 0]
|
|
performance_metrics.update({
|
|
f'{overlap}top10_self_intersect_fraction': (
|
|
100 * (top10_min_self_distances < 0.4).sum() / len(top10_min_self_distances)).__round__(2),
|
|
f'{overlap}top10_rmsds_below_2': (100 * (top10_rmsds < 2).sum() / len(top10_rmsds)).__round__(2),
|
|
f'{overlap}top10_rmsds_below_5': (100 * (top10_rmsds < 5).sum() / len(top10_rmsds)).__round__(2),
|
|
f'{overlap}top10_rmsds_percentile_25': np.percentile(top10_rmsds, 25).round(2),
|
|
f'{overlap}top10_rmsds_percentile_50': np.percentile(top10_rmsds, 50).round(2),
|
|
f'{overlap}top10_rmsds_percentile_75': np.percentile(top10_rmsds, 75).round(2),
|
|
|
|
f'{overlap}top10_centroid_below_2': (
|
|
100 * (top10_centroid_distances < 2).sum() / len(top10_centroid_distances)).__round__(2),
|
|
f'{overlap}top10_centroid_below_5': (
|
|
100 * (top10_centroid_distances < 5).sum() / len(top10_centroid_distances)).__round__(2),
|
|
f'{overlap}top10_centroid_percentile_25': np.percentile(top10_centroid_distances, 25).round(2),
|
|
f'{overlap}top10_centroid_percentile_50': np.percentile(top10_centroid_distances, 50).round(2),
|
|
f'{overlap}top10_centroid_percentile_75': np.percentile(top10_centroid_distances, 75).round(2),
|
|
})
|
|
|
|
if confidence_model is not None:
|
|
confidence_ordering = np.argsort(confidences, axis=1)[:, ::-1]
|
|
|
|
filtered_rmsds = rmsds[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, 0]
|
|
filtered_centroid_distances = centroid_distances[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, 0]
|
|
filtered_min_self_distances = min_self_distances[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, 0]
|
|
performance_metrics.update({
|
|
f'{overlap}filtered_self_intersect_fraction': (
|
|
100 * (filtered_min_self_distances < 0.4).sum() / len(filtered_min_self_distances)).__round__(
|
|
2),
|
|
f'{overlap}filtered_rmsds_below_2': (100 * (filtered_rmsds < 2).sum() / len(filtered_rmsds)).__round__(2),
|
|
f'{overlap}filtered_rmsds_below_5': (100 * (filtered_rmsds < 5).sum() / len(filtered_rmsds)).__round__(2),
|
|
f'{overlap}filtered_rmsds_percentile_25': np.percentile(filtered_rmsds, 25).round(2),
|
|
f'{overlap}filtered_rmsds_percentile_50': np.percentile(filtered_rmsds, 50).round(2),
|
|
f'{overlap}filtered_rmsds_percentile_75': np.percentile(filtered_rmsds, 75).round(2),
|
|
|
|
f'{overlap}filtered_centroid_below_2': (
|
|
100 * (filtered_centroid_distances < 2).sum() / len(filtered_centroid_distances)).__round__(2),
|
|
f'{overlap}filtered_centroid_below_5': (
|
|
100 * (filtered_centroid_distances < 5).sum() / len(filtered_centroid_distances)).__round__(2),
|
|
f'{overlap}filtered_centroid_percentile_25': np.percentile(filtered_centroid_distances, 25).round(2),
|
|
f'{overlap}filtered_centroid_percentile_50': np.percentile(filtered_centroid_distances, 50).round(2),
|
|
f'{overlap}filtered_centroid_percentile_75': np.percentile(filtered_centroid_distances, 75).round(2),
|
|
})
|
|
|
|
if N >= 5:
|
|
top5_filtered_rmsds = np.min(rmsds[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, :5], axis=1)
|
|
top5_filtered_centroid_distances = \
|
|
centroid_distances[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, :5][
|
|
np.arange(rmsds.shape[0])[:, None], np.argsort(
|
|
rmsds[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, :5], axis=1)][:, 0]
|
|
top5_filtered_min_self_distances = \
|
|
min_self_distances[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, :5][
|
|
np.arange(rmsds.shape[0])[:, None], np.argsort(
|
|
rmsds[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, :5], axis=1)][:, 0]
|
|
performance_metrics.update({
|
|
f'{overlap}top5_filtered_rmsds_below_2': (
|
|
100 * (top5_filtered_rmsds < 2).sum() / len(top5_filtered_rmsds)).__round__(2),
|
|
f'{overlap}top5_filtered_rmsds_below_5': (
|
|
100 * (top5_filtered_rmsds < 5).sum() / len(top5_filtered_rmsds)).__round__(2),
|
|
f'{overlap}top5_filtered_rmsds_percentile_25': np.percentile(top5_filtered_rmsds, 25).round(2),
|
|
f'{overlap}top5_filtered_rmsds_percentile_50': np.percentile(top5_filtered_rmsds, 50).round(2),
|
|
f'{overlap}top5_filtered_rmsds_percentile_75': np.percentile(top5_filtered_rmsds, 75).round(2),
|
|
|
|
f'{overlap}top5_filtered_centroid_below_2': (100 * (top5_filtered_centroid_distances < 2).sum() / len(
|
|
top5_filtered_centroid_distances)).__round__(2),
|
|
f'{overlap}top5_filtered_centroid_below_5': (100 * (top5_filtered_centroid_distances < 5).sum() / len(
|
|
top5_filtered_centroid_distances)).__round__(2),
|
|
f'{overlap}top5_filtered_centroid_percentile_25': np.percentile(top5_filtered_centroid_distances,
|
|
25).round(2),
|
|
f'{overlap}top5_filtered_centroid_percentile_50': np.percentile(top5_filtered_centroid_distances,
|
|
50).round(2),
|
|
f'{overlap}top5_filtered_centroid_percentile_75': np.percentile(top5_filtered_centroid_distances,
|
|
75).round(2),
|
|
})
|
|
if N >= 10:
|
|
top10_filtered_rmsds = np.min(rmsds[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, :10],
|
|
axis=1)
|
|
top10_filtered_centroid_distances = \
|
|
centroid_distances[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, :10][
|
|
np.arange(rmsds.shape[0])[:, None], np.argsort(
|
|
rmsds[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, :10], axis=1)][:, 0]
|
|
top10_filtered_min_self_distances = \
|
|
min_self_distances[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, :10][
|
|
np.arange(rmsds.shape[0])[:, None], np.argsort(
|
|
rmsds[np.arange(rmsds.shape[0])[:, None], confidence_ordering][:, :10], axis=1)][:, 0]
|
|
performance_metrics.update({
|
|
f'{overlap}top10_filtered_rmsds_below_2': (
|
|
100 * (top10_filtered_rmsds < 2).sum() / len(top10_filtered_rmsds)).__round__(2),
|
|
f'{overlap}top10_filtered_rmsds_below_5': (
|
|
100 * (top10_filtered_rmsds < 5).sum() / len(top10_filtered_rmsds)).__round__(2),
|
|
f'{overlap}top10_filtered_rmsds_percentile_25': np.percentile(top10_filtered_rmsds, 25).round(2),
|
|
f'{overlap}top10_filtered_rmsds_percentile_50': np.percentile(top10_filtered_rmsds, 50).round(2),
|
|
f'{overlap}top10_filtered_rmsds_percentile_75': np.percentile(top10_filtered_rmsds, 75).round(2),
|
|
|
|
f'{overlap}top10_filtered_centroid_below_2': (100 * (top10_filtered_centroid_distances < 2).sum() / len(
|
|
top10_filtered_centroid_distances)).__round__(2),
|
|
f'{overlap}top10_filtered_centroid_below_5': (100 * (top10_filtered_centroid_distances < 5).sum() / len(
|
|
top10_filtered_centroid_distances)).__round__(2),
|
|
f'{overlap}top10_filtered_centroid_percentile_25': np.percentile(top10_filtered_centroid_distances,
|
|
25).round(2),
|
|
f'{overlap}top10_filtered_centroid_percentile_50': np.percentile(top10_filtered_centroid_distances,
|
|
50).round(2),
|
|
f'{overlap}top10_filtered_centroid_percentile_75': np.percentile(top10_filtered_centroid_distances,
|
|
75).round(2),
|
|
})
|
|
|
|
for k in performance_metrics:
|
|
print(k, performance_metrics[k])
|
|
|
|
if args.wandb:
|
|
wandb.log(performance_metrics)
|
|
histogram_metrics_list = [('rmsd', rmsds[:, 0]),
|
|
('centroid_distance', centroid_distances[:, 0]),
|
|
('mean_rmsd', rmsds.mean(axis=1)),
|
|
('mean_centroid_distance', centroid_distances.mean(axis=1))]
|
|
if N >= 5:
|
|
histogram_metrics_list.append(('top5_rmsds', top5_rmsds))
|
|
histogram_metrics_list.append(('top5_centroid_distances', top5_centroid_distances))
|
|
if N >= 10:
|
|
histogram_metrics_list.append(('top10_rmsds', top10_rmsds))
|
|
histogram_metrics_list.append(('top10_centroid_distances', top10_centroid_distances))
|
|
if confidence_model is not None:
|
|
histogram_metrics_list.append(('reverse_filtered_rmsds', reverse_filtered_rmsds))
|
|
histogram_metrics_list.append(('reverse_filtered_centroid_distances', reverse_filtered_centroid_distances))
|
|
histogram_metrics_list.append(('filtered_rmsd', filtered_rmsds))
|
|
histogram_metrics_list.append(('filtered_centroid_distance', filtered_centroid_distances))
|
|
if N >= 5:
|
|
histogram_metrics_list.append(('top5_filtered_rmsds', top5_filtered_rmsds))
|
|
histogram_metrics_list.append(('top5_filtered_centroid_distances', top5_filtered_centroid_distances))
|
|
histogram_metrics_list.append(('top5_reverse_filtered_rmsds', top5_reverse_filtered_rmsds))
|
|
histogram_metrics_list.append(
|
|
('top5_reverse_filtered_centroid_distances', top5_reverse_filtered_centroid_distances))
|
|
if N >= 10:
|
|
histogram_metrics_list.append(('top10_filtered_rmsds', top10_filtered_rmsds))
|
|
histogram_metrics_list.append(('top10_filtered_centroid_distances', top10_filtered_centroid_distances))
|
|
histogram_metrics_list.append(('top10_reverse_filtered_rmsds', top10_reverse_filtered_rmsds))
|
|
histogram_metrics_list.append(
|
|
('top10_reverse_filtered_centroid_distances', top10_reverse_filtered_centroid_distances))
|