| | |
| | import torch |
| | import torch.nn.functional as F |
| | import math |
| | import random |
| | import sys |
| | import pandas as pd |
| | from utils.generate_utils import mask_for_de_novo, calculate_cosine_sim, calculate_hamming_dist |
| | from diffusion import Diffusion |
| | from pareto_mcts import Node, MCTS |
| | import hydra |
| | from tqdm import tqdm |
| | from transformers import AutoTokenizer, AutoModel, pipeline |
| | from tokenizer.my_tokenizers import SMILES_SPE_Tokenizer |
| | from helm_tokenizer.helm_tokenizer import HelmTokenizer |
| | from utils.helm_utils import create_helm_from_aa_seq |
| | from utils.app import PeptideAnalyzer |
| | from new_tokenizer.ape_tokenizer import APETokenizer |
| | import matplotlib.pyplot as plt |
| | import os |
| | import seaborn as sns |
| | import pandas as pd |
| | import numpy as np |
| |
|
| | def save_logs_to_file(config, valid_fraction_log, affinity1_log, affinity2_log, sol_log, hemo_log, nf_log, permeability_log, output_path): |
| | """ |
| | Saves the logs (valid_fraction_log, affinity1_log, and permeability_log) to a CSV file. |
| | |
| | Parameters: |
| | valid_fraction_log (list): Log of valid fractions over iterations. |
| | affinity1_log (list): Log of binding affinity over iterations. |
| | permeability_log (list): Log of membrane permeability over iterations. |
| | output_path (str): Path to save the log CSV file. |
| | """ |
| | os.makedirs(os.path.dirname(output_path), exist_ok=True) |
| | |
| | if config.mcts.perm: |
| | |
| | log_data = { |
| | "Iteration": list(range(1, len(valid_fraction_log) + 1)), |
| | "Valid Fraction": valid_fraction_log, |
| | "Binding Affinity": affinity1_log, |
| | "Solubility": sol_log, |
| | "Hemolysis": hemo_log, |
| | "Nonfouling": nf_log, |
| | "Permeability": permeability_log |
| | } |
| | elif config.mcts.dual: |
| | log_data = { |
| | "Iteration": list(range(1, len(valid_fraction_log) + 1)), |
| | "Valid Fraction": valid_fraction_log, |
| | "Binding Affinity 1": affinity1_log, |
| | "Binding Affinity 2": affinity2_log, |
| | "Solubility": sol_log, |
| | "Hemolysis": hemo_log, |
| | "Nonfouling": nf_log, |
| | "Permeability": permeability_log |
| | } |
| | elif config.mcts.single: |
| | log_data = { |
| | "Iteration": list(range(1, len(valid_fraction_log) + 1)), |
| | "Valid Fraction": valid_fraction_log, |
| | "Permeability": permeability_log |
| | } |
| | else: |
| | log_data = { |
| | "Iteration": list(range(1, len(valid_fraction_log) + 1)), |
| | "Valid Fraction": valid_fraction_log, |
| | "Binding Affinity": affinity1_log, |
| | "Solubility": sol_log, |
| | "Hemolysis": hemo_log, |
| | "Nonfouling": nf_log |
| | } |
| | |
| | df = pd.DataFrame(log_data) |
| | |
| | |
| | df.to_csv(output_path, index=False) |
| |
|
| | def plot_data(log1, log2=None, |
| | save_path=None, |
| | label1="Log 1", |
| | label2=None, |
| | title="Fraction of Valid Peptides Over Iterations", |
| | palette=None): |
| | """ |
| | Plots one or two datasets with their mean values over iterations. |
| | |
| | Parameters: |
| | log1 (list): The first list of mean values for each iteration. |
| | log2 (list, optional): The second list of mean values for each iteration. Defaults to None. |
| | save_path (str): Path to save the plot. Defaults to None. |
| | label1 (str): Label for the first dataset. Defaults to "Log 1". |
| | label2 (str, optional): Label for the second dataset. Defaults to None. |
| | title (str): Title of the plot. Defaults to "Mean Values Over Iterations". |
| | palette (dict, optional): A dictionary defining custom colors for datasets. Defaults to None. |
| | """ |
| | |
| | data1 = pd.DataFrame({ |
| | "Iteration": range(1, len(log1) + 1), |
| | "Fraction of Valid Peptides": log1, |
| | "Dataset": label1 |
| | }) |
| |
|
| | |
| | if log2 is not None: |
| | data2 = pd.DataFrame({ |
| | "Iteration": range(1, len(log2) + 1), |
| | "Fraction of Valid Peptides": log2, |
| | "Dataset": label2 |
| | }) |
| | data = pd.concat([data1, data2], ignore_index=True) |
| | else: |
| | data = data1 |
| |
|
| | palette = { |
| | label1: "#8181ED", |
| | label2: "#D577FF" |
| | } |
| |
|
| | |
| | sns.set_theme() |
| | sns.set_context("paper") |
| |
|
| | |
| | sns.lineplot( |
| | data=data, |
| | x="Iteration", |
| | y="Fraction of Valid Peptides", |
| | hue="Dataset", |
| | style="Dataset", |
| | markers=True, |
| | dashes=False, |
| | palette=palette |
| | ) |
| |
|
| | |
| | plt.title(title) |
| | plt.xlabel("Iteration") |
| | plt.ylabel("Fraction of Valid Peptides") |
| |
|
| | if save_path: |
| | plt.savefig(save_path, dpi=300, bbox_inches='tight') |
| | print(f"Plot saved to {save_path}") |
| | plt.show() |
| |
|
| | def plot_data_with_distribution_seaborn(log1, log2=None, |
| | save_path=None, |
| | label1=None, |
| | label2=None, |
| | title=None): |
| | """ |
| | Plots one or two datasets with the average values and distributions over iterations using Seaborn. |
| | |
| | Parameters: |
| | log1 (list of lists): The first list of scores (each element is a list of scores for an iteration). |
| | log2 (list of lists, optional): The second list of scores (each element is a list of scores for an iteration). Defaults to None. |
| | save_path (str): Path to save the plot. Defaults to None. |
| | label1 (str): Label for the first dataset. Defaults to "Fraction of Valid Peptide SMILES". |
| | label2 (str, optional): Label for the second dataset. Defaults to None. |
| | title (str): Title of the plot. Defaults to "Fraction of Valid Peptides Over Iterations". |
| | """ |
| | |
| | data1 = pd.DataFrame({ |
| | "Iteration": np.repeat(range(1, len(log1) + 1), [len(scores) for scores in log1]), |
| | "Fraction of Valid Peptides": [score for scores in log1 for score in scores], |
| | "Dataset": label1, |
| | "Style": "Log1" |
| | }) |
| |
|
| | |
| | if log2 is not None: |
| | data2 = pd.DataFrame({ |
| | "Iteration": np.repeat(range(1, len(log2) + 1), [len(scores) for scores in log2]), |
| | "Fraction of Valid Peptides": [score for scores in log2 for score in scores], |
| | "Dataset": label2, |
| | "Style": "Log2" |
| | }) |
| | data = pd.concat([data1, data2], ignore_index=True) |
| | else: |
| | data = data1 |
| | |
| | palette = { |
| | label1: "#8181ED", |
| | label2: "#D577FF" |
| | } |
| |
|
| | |
| | sns.set_theme() |
| | sns.set_context("paper") |
| |
|
| | |
| | sns.relplot( |
| | data=data, |
| | kind="line", |
| | x="Iteration", |
| | y="Fraction of Valid Peptides", |
| | hue="Dataset", |
| | style="Style", |
| | markers=True, |
| | dashes=True, |
| | ci="sd", |
| | height=5, |
| | aspect=1.5, |
| | palette=palette |
| | ) |
| |
|
| | |
| | plt.title(title) |
| | plt.xlabel("Iteration") |
| | plt.ylabel("Fraction of Valid Peptides") |
| |
|
| | if save_path: |
| | plt.savefig(save_path, dpi=300, bbox_inches='tight') |
| | print(f"Plot saved to {save_path}") |
| | plt.show() |
| |
|
| | @torch.no_grad() |
| | def generate_valid_mcts(config, mdlm, prot1=None, prot2=None, filename=None, prot_name1=None, prot_name2 = None): |
| | tokenizer = mdlm.tokenizer |
| | max_sequence_length = config.sampling.seq_length |
| | |
| | |
| | masked_array = mask_for_de_novo(config, max_sequence_length) |
| | |
| | if config.vocab == 'old_smiles': |
| | |
| | inputs = tokenizer.encode(masked_array) |
| | elif config.vocab == 'new_smiles' or config.vocab == 'selfies': |
| | inputs = tokenizer.encode_for_generation(masked_array) |
| | else: |
| | |
| | inputs = tokenizer(masked_array, return_tensors="pt") |
| | |
| | inputs = {key: value.to(mdlm.device) for key, value in inputs.items()} |
| | |
| | |
| | rootNode = Node(config=config, tokens=inputs, timestep=0) |
| | |
| | |
| | if config.mcts.perm: |
| | score_func_names = ['permeability', 'binding_affinity1', 'solubility', 'hemolysis', 'nonfouling'] |
| | num_func = [0, 50, 50, 50, 50] |
| | elif config.mcts.dual: |
| | score_func_names = ['binding_affinity1', 'solubility', 'hemolysis', 'nonfouling', 'binding_affinity2'] |
| | elif config.mcts.single: |
| | score_func_names = ['permeability'] |
| | else: |
| | score_func_names = ['binding_affinity1', 'solubility', 'hemolysis', 'nonfouling'] |
| | |
| | if not config.mcts.time_dependent: |
| | num_func = [0] * len(score_func_names) |
| | |
| | if prot1 and prot2 is not None: |
| | mcts = MCTS(config=config, max_sequence_length=max_sequence_length, mdlm=mdlm, score_func_names=score_func_names, prot_seqs=[prot1, prot2], num_func=num_func) |
| | elif prot1 is not None: |
| | mcts = MCTS(config=config, max_sequence_length=max_sequence_length, mdlm=mdlm, score_func_names=score_func_names, prot_seqs=[prot1], num_func=num_func) |
| | elif config.mcts.single: |
| | mcts = MCTS(config=config, max_sequence_length=max_sequence_length, mdlm=mdlm, score_func_names=score_func_names, num_func=num_func) |
| | else: |
| | mcts = MCTS(config=config, max_sequence_length=max_sequence_length, mdlm=mdlm, score_func_names=score_func_names, num_func=num_func) |
| | |
| | paretoFront = mcts.forward(rootNode) |
| | |
| | output_log_path = f'/home/st512/peptune/scripts/peptide-mdlm-mcts/benchmarks/{prot_name1}/log_{filename}.csv' |
| | save_logs_to_file(config, mcts.valid_fraction_log, mcts.affinity1_log, mcts.affinity2_log, mcts.sol_log, mcts.hemo_log, mcts.nf_log, mcts.permeability_log, output_log_path) |
| |
|
| | if config.mcts.single: |
| | plot_data_with_distribution_seaborn(log1=mcts.permeability_log, |
| | save_path=f'/home/st512/peptune/scripts/peptide-mdlm-mcts/benchmarks/{prot_name1}/perm_{filename}.png', |
| | label1="Average Permeability Score", |
| | title="Average Permeability Score Over Iterations") |
| | else: |
| | plot_data(mcts.valid_fraction_log, |
| | save_path=f'/home/st512/peptune/scripts/peptide-mdlm-mcts/benchmarks/{prot_name1}/valid_{filename}.png') |
| | plot_data_with_distribution_seaborn(log1=mcts.affinity1_log, |
| | save_path=f'/home/st512/peptune/scripts/peptide-mdlm-mcts/benchmarks/{prot_name1}/binding1_{filename}.png', |
| | label1="Average Binding Affinity to TfR", |
| | title="Average Binding Affinity to TfR Over Iterations") |
| | if config.mcts.dual: |
| | plot_data_with_distribution_seaborn(log1=mcts.affinity2_log, |
| | save_path=f'/home/st512/peptune/scripts/peptide-mdlm-mcts/benchmarks/{prot_name1}/binding2_{filename}.png', |
| | label1="Average Binding Affinity to SKP2", |
| | title="Average Binding Affinity to SKP2 Over Iterations") |
| | plot_data_with_distribution_seaborn(log1=mcts.sol_log, |
| | save_path=f'/home/st512/peptune/scripts/peptide-mdlm-mcts/benchmarks/{prot_name1}/sol_{filename}.png', |
| | label1="Average Solubility Score", |
| | title="Average Solubility Score Over Iterations") |
| | plot_data_with_distribution_seaborn(log1=mcts.hemo_log, |
| | save_path=f'/home/st512/peptune/scripts/peptide-mdlm-mcts/benchmarks/{prot_name1}/hemo_{filename}.png', |
| | label1="Average Hemolysis Score", |
| | title="Average Hemolysis Score Over Iterations") |
| | plot_data_with_distribution_seaborn(log1=mcts.nf_log, |
| | save_path=f'/home/st512/peptune/scripts/peptide-mdlm-mcts/benchmarks/{prot_name1}/nf_{filename}.png', |
| | label1="Average Nonfouling Score", |
| | title="Average Nonfouling Score Over Iterations") |
| | if config.mcts.perm: |
| | plot_data_with_distribution_seaborn(log1=mcts.permeability_log, |
| | save_path=f'/home/st512/peptune/scripts/peptide-mdlm-mcts/benchmarks/{prot_name1}/perm_{filename}.png', |
| | label1="Average Permeability Score", |
| | title="Average Permeability Score Over Iterations") |
| | |
| | return paretoFront, inputs |
| |
|
| |
|
| | @hydra.main(version_base=None, config_path='/home/st512/peptune/scripts/peptide-mdlm-mcts', config_name='config') |
| | def main(config): |
| | prot_name1 = "time_dependent" |
| | prot_name2 = "skp2" |
| | mode = "2" |
| | model = "mcts" |
| | length = "100" |
| | epoch = "7" |
| | |
| | filename = f'{mode}_{model}_length_{length}_epoch_{epoch}' |
| |
|
| | if config.vocab == 'new_smiles': |
| | tokenizer = APETokenizer() |
| | tokenizer.load_vocabulary('/home/st512/peptune/scripts/peptide-mdlm-mcts/new_tokenizer/peptide_smiles_600_vocab.json') |
| | elif config.vocab == 'old_smiles': |
| | tokenizer = SMILES_SPE_Tokenizer('/home/st512/peptune/scripts/peptide-mdlm-mcts/tokenizer/new_vocab.txt', |
| | '/home/st512/peptune/scripts/peptide-mdlm-mcts/tokenizer/new_splits.txt') |
| | elif config.vocab == 'selfies': |
| | tokenizer = APETokenizer() |
| | tokenizer.load_vocabulary('/home/st512/peptune/scripts/peptide-mdlm-mcts/new_tokenizer/peptide_selfies_600_vocab.json') |
| | elif config.vocab == 'helm': |
| | tokenizer = HelmTokenizer('/home/st512/peptune/scripts/peptide-mdlm-mcts/helm_tokenizer/monomer_vocab.txt') |
| | |
| | mdlm = Diffusion.load_from_checkpoint(config.eval.checkpoint_path, config=config, tokenizer=tokenizer, strict=False) |
| | |
| | mdlm.eval() |
| | device = torch.device('cuda' if torch.cuda.is_available() else "cpu") |
| | mdlm.to(device) |
| | |
| |
|
| | print("loaded models...") |
| | analyzer = PeptideAnalyzer() |
| | |
| | |
| | amhr = 'MLGSLGLWALLPTAVEAPPNRRTCVFFEAPGVRGSTKTLGELLDTGTELPRAIRCLYSRCCFGIWNLTQDRAQVEMQGCRDSDEPGCESLHCDPSPRAHPSPGSTLFTCSCGTDFCNANYSHLPPPGSPGTPGSQGPQAAPGESIWMALVLLGLFLLLLLLLGSIILALLQRKNYRVRGEPVPEPRPDSGRDWSVELQELPELCFSQVIREGGHAVVWAGQLQGKLVAIKAFPPRSVAQFQAERALYELPGLQHDHIVRFITASRGGPGRLLSGPLLVLELHPKGSLCHYLTQYTSDWGSSLRMALSLAQGLAFLHEERWQNGQYKPGIAHRDLSSQNVLIREDGSCAIGDLGLALVLPGLTQPPAWTPTQPQGPAAIMEAGTQRYMAPELLDKTLDLQDWGMALRRADIYSLALLLWEILSRCPDLRPDSSPPPFQLAYEAELGNTPTSDELWALAVQERRRPYIPSTWRCFATDPDGLRELLEDCWDADPEARLTAECVQQRLAALAHPQESHPFPESCPRGCPPLCPEDCTSIPAPTILPCRPQRSACHFSVQQGPCSRNPQPACTLSPV' |
| | tfr = 'MMDQARSAFSNLFGGEPLSYTRFSLARQVDGDNSHVEMKLAVDEEENADNNTKANVTKPKRCSGSICYGTIAVIVFFLIGFMIGYLGYCKGVEPKTECERLAGTESPVREEPGEDFPAARRLYWDDLKRKLSEKLDSTDFTGTIKLLNENSYVPREAGSQKDENLALYVENQFREFKLSKVWRDQHFVKIQVKDSAQNSVIIVDKNGRLVYLVENPGGYVAYSKAATVTGKLVHANFGTKKDFEDLYTPVNGSIVIVRAGKITFAEKVANAESLNAIGVLIYMDQTKFPIVNAELSFFGHAHLGTGDPYTPGFPSFNHTQFPPSRSSGLPNIPVQTISRAAAEKLFGNMEGDCPSDWKTDSTCRMVTSESKNVKLTVSNVLKEIKILNIFGVIKGFVEPDHYVVVGAQRDAWGPGAAKSGVGTALLLKLAQMFSDMVLKDGFQPSRSIIFASWSAGDFGSVGATEWLEGYLSSLHLKAFTYINLDKAVLGTSNFKVSASPLLYTLIEKTMQNVKHPVTGQFLYQDSNWASKVEKLTLDNAAFPFLAYSGIPAVSFCFCEDTDYPYLGTTMDTYKELIERIPELNKVARAAAEVAGQFVIKLTHDVELNLDYERYNSQLLSFVRDLNQYRADIKEMGLSLQWLYSARGDFFRATSRLTTDFGNAEKTDRFVMKKLNDRVMRVEYHFLSPYVSPKESPFRHVFWGSGSHTLPALLENLKLRKQNNGAFNETLFRNQLALATWTIQGAANALSGDVWDIDNEF' |
| | gfap = 'MERRRITSAARRSYVSSGEMMVGGLAPGRRLGPGTRLSLARMPPPLPTRVDFSLAGALNAGFKETRASERAEMMELNDRFASYIEKVRFLEQQNKALAAELNQLRAKEPTKLADVYQAELRELRLRLDQLTANSARLEVERDNLAQDLATVRQKLQDETNLRLEAENNLAAYRQEADEATLARLDLERKIESLEEEIRFLRKIHEEEVRELQEQLARQQVHVELDVAKPDLTAALKEIRTQYEAMASSNMHEAEEWYRSKFADLTDAAARNAELLRQAKHEANDYRRQLQSLTCDLESLRGTNESLERQMREQEERHVREAASYQEALARLEEEGQSLKDEMARHLQEYQDLLNVKLALDIEIATYRKLLEGEENRITIPVQTFSNLQIRETSLDTKSVSEGHLKRNIVVKTVEMRDGEVIKESKQEHKDVM' |
| | glp1 = 'MAGAPGPLRLALLLLGMVGRAGPRPQGATVSLWETVQKWREYRRQCQRSLTEDPPPATDLFCNRTFDEYACWPDGEPGSFVNVSCPWYLPWASSVPQGHVYRFCTAEGLWLQKDNSSLPWRDLSECEESKRGERSSPEEQLLFLYIIYTVGYALSFSALVIASAILLGFRHLHCTRNYIHLNLFASFILRALSVFIKDAALKWMYSTAAQQHQWDGLLSYQDSLSCRLVFLLMQYCVAANYYWLLVEGVYLYTLLAFSVLSEQWIFRLYVSIGWGVPLLFVVPWGIVKYLYEDEGCWTRNSNMNYWLIIRLPILFAIGVNFLIFVRVICIVVSKLKANLMCKTDIKCRLAKSTLTLIPLLGTHEVIFAFVMDEHARGTLRFIKLFTELSFTSFQGLMVAILYCFVNNEVQLEFRKSWERWRLEHLHIQRDSSMKPLKCPTSSLSSGATAGSSMYTATCQASCS' |
| | glast = 'MTKSNGEEPKMGGRMERFQQGVRKRTLLAKKKVQNITKEDVKSYLFRNAFVLLTVTAVIVGTILGFTLRPYRMSYREVKYFSFPGELLMRMLQMLVLPLIISSLVTGMAALDSKASGKMGMRAVVYYMTTTIIAVVIGIIIVIIIHPGKGTKENMHREGKIVRVTAADAFLDLIRNMFPPNLVEACFKQFKTNYEKRSFKVPIQANETLVGAVINNVSEAMETLTRITEELVPVPGSVNGVNALGLVVFSMCFGFVIGNMKEQGQALREFFDSLNEAIMRLVAVIMWYAPVGILFLIAGKIVEMEDMGVIGGQLAMYTVTVIVGLLIHAVIVLPLLYFLVTRKNPWVFIGGLLQALITALGTSSSSATLPITFKCLEENNGVDKRVTRFVLPVGATINMDGTALYEALAAIFIAQVNNFELNFGQIITISITATAASIGAAGIPQAGLVTMVIVLTSVGLPTDDITLIIAVDWFLDRLRTTTNVLGDSLGAGIVEHLSRHELKNRDVEMGNSVIEENEMKKPYQLIAQDNETEKPIDSETKM' |
| | ncam = 'LQTKDLIWTLFFLGTAVSLQVDIVPSQGEISVGESKFFLCQVAGDAKDKDISWFSPNGEKLTPNQQRISVVWNDDSSSTLTIYNANIDDAGIYKCVVTGEDGSESEATVNVKIFQKLMFKNAPTPQEFREGEDAVIVCDVVSSLPPTIIWKHKGRDVILKKDVRFIVLSNNYLQIRGIKKTDEGTYRCEGRILARGEINFKDIQVIVNVPPTIQARQNIVNATANLGQSVTLVCDAEGFPEPTMSWTKDGEQIEQEEDDEKYIFSDDSSQLTIKKVDKNDEAEYICIAENKAGEQDATIHLKVFAKPKITYVENQTAMELEEQVTLTCEASGDPIPSITWRTSTRNISSEEKASWTRPEKQETLDGHMVVRSHARVSSLTLKSIQYTDAGEYICTASNTIGQDSQSMYLEVQYAPKLQGPVAVYTWEGNQVNITCEVFAYPSATISWFRDGQLLPSSNYSNIKIYNTPSASYLEVTPDSENDFGNYNCTAVNRIGQESLEFILVQADTPSSPSIDQVEPYSSTAQVQFDEPEATGGVPILKYKAEWRAVGEEVWHSKWYDAKEASMEGIVTIVGLKPETTYAVRLAALNGKGLGEISAASEF' |
| | cereblon = 'MAGEGDQQDAAHNMGNHLPLLPAESEEEDEMEVEDQDSKEAKKPNIINFDTSLPTSHTYLGADMEEFHGRTLHDDDSCQVIPVLPQVMMILIPGQTLPLQLFHPQEVSMVRNLIQKDRTFAVLAYSNVQEREAQFGTTAEIYAYREEQDFGIEIVKVKAIGRQRFKVLELRTQSDGIQQAKVQILPECVLPSTMSAVQLESLNKCQIFPSKPVSREDQCSYKWWQKYQKRKFHCANLTSWPRWLYSLYDAETLMDRIKKQLREWDENLKDDSLPSNPIDFSYRVAACLPIDDVLRIQLLKIGSAIQRLRCELDIMNKCTSLCCKQCQETEITTKNEIFSLSLCGPMAAYVNPHGYVHETLTVYKACNLNLIGRPSTEHSWFPGYAWTVAQCKICASHIGWKFTATKKDMSPQKFWGLTRSALLPTIPDTEDEISPDKVILCL' |
| | ligase = 'MASQPPEDTAESQASDELECKICYNRYNLKQRKPKVLECCHRVCAKCLYKIIDFGDSPQGVIVCPFCRFETCLPDDEVSSLPDDNNILVNLTCGGKGKKCLPENPTELLLTPKRLASLVSPSHTSSNCLVITIMEVQRESSPSLSSTPVVEFYRPASFDSVTTVSHNWTVWNCTSLLFQTSIRVLVWLLGLLYFSSLPLGIYLLVSKKVTLGVVFVSLVPSSLVILMVYGFCQCVCHEFLDCMAPPS' |
| | skp2 = 'MHRKHLQEIPDLSSNVATSFTWGWDSSKTSELLSGMGVSALEKEEPDSENIPQELLSNLGHPESPPRKRLKSKGSDKDFVIVRRPKLNRENFPGVSWDSLPDELLLGIFSCLCLPELLKVSGVCKRWYRLASDESLWQTLDLTGKNLHPDVTGRLLSQGVIAFRCPRSFMDQPLAEHFSPFRVQHMDLSNSVIEVSTLHGILSQCSKLQNLSLEGLRLSDPIVNTLAKNSNLVRLNLSGCSGFSEFALQTLLSSCSRLDELNLSWCFDFTEKHVQVAVAHVSETITQLNLSGYRKNLQKSDLSTLVRRCPNLVHLDLSDSVMLKNDCFQEFFQLNYLQHLSLSRCYDIIPETLLELGEIPTLKTLQVFGIVPDGTLQLLKEALPHLQINCSHFTTIARPTIGNKKNQEIWGIKCRLTLQKPSCL' |
| | |
| | paretoFront, input_array = generate_valid_mcts(config, mdlm, gfap, None, filename, prot_name1, None) |
| | generation_results = [] |
| | |
| | for sequence, v in paretoFront.items(): |
| | generated_array = v['token_ids'].to(mdlm.device) |
| | |
| | |
| | perplexity = mdlm.compute_masked_perplexity(generated_array, input_array['input_ids']) |
| | perplexity = round(perplexity, 4) |
| | |
| | aa_seq, seq_length = analyzer.analyze_structure(sequence) |
| | scores = v['scores'] |
| | |
| | if config.mcts.single == False: |
| | binding1 = scores[0] |
| | solubility = scores[1] |
| | hemo = scores[2] |
| | nonfouling = scores[3] |
| | |
| | if config.mcts.perm: |
| | permeability = scores[4] |
| | generation_results.append([sequence, perplexity, aa_seq, binding1, solubility, hemo, nonfouling, permeability]) |
| | print(f"perplexity: {perplexity} | length: {seq_length} | smiles sequence: {sequence} | amino acid sequence: {aa_seq} | Binding Affinity: {binding1} | Solubility: {solubility} | Hemolysis: {hemo} | Nonfouling: {nonfouling} | Permeability: {permeability}") |
| | elif config.mcts.dual: |
| | binding2 = scores[4] |
| | generation_results.append([sequence, perplexity, aa_seq, binding1, binding2, solubility, hemo, nonfouling]) |
| | print(f"perplexity: {perplexity} | length: {seq_length} | smiles sequence: {sequence} | amino acid sequence: {aa_seq} | Binding Affinity 1: {binding1} | Binding Affinity 2: {binding2} | Solubility: {solubility} | Hemolysis: {hemo} | Nonfouling: {nonfouling}") |
| | elif config.mcts.single: |
| | permeability = scores[0] |
| | else: |
| | generation_results.append([sequence, perplexity, aa_seq, binding1, solubility, hemo, nonfouling]) |
| | print(f"perplexity: {perplexity} | length: {seq_length} | smiles sequence: {sequence} | amino acid sequence: {aa_seq} | Binding Affinity: {binding1} | Solubility: {solubility} | Hemolysis: {hemo} | Nonfouling: {nonfouling}") |
| |
|
| | sys.stdout.flush() |
| |
|
| | if config.mcts.perm: |
| | df = pd.DataFrame(generation_results, columns=['Generated SMILES', 'Perplexity', 'Peptide Sequence', 'Binding Affinity', 'Solubility', 'Hemolysis', 'Nonfouling', 'Permeability']) |
| | elif config.mcts.dual: |
| | df = pd.DataFrame(generation_results, columns=['Generated SMILES', 'Perplexity', 'Peptide Sequence', 'Binding Affinity 1', 'Binding Affinity 2', 'Solubility', 'Hemolysis', 'Nonfouling']) |
| | elif config.mcts.single: |
| | df = pd.DataFrame(generation_results, columns=['Generated SMILES', 'Perplexity', 'Peptide Sequence', 'Permeability']) |
| | else: |
| | df = pd.DataFrame(generation_results, columns=['Generated SMILES', 'Perplexity', 'Peptide Sequence', 'Binding Affinity', 'Solubility', 'Hemolysis', 'Nonfouling']) |
| |
|
| | df.to_csv(f'/home/st512/peptune/scripts/peptide-mdlm-mcts/benchmarks/{prot_name1}/{filename}.csv', index=False) |
| | |
| | |
| | if __name__ == "__main__": |
| | main() |