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A Python based virtual screening software!

Project description

Installation (Requires Python 3.9 and above)

Use the following command:

pip install nrgrank

Using NRGRank in a python script:

from nrgrank import process_target, process_ligands, nrgrank_main

Preparatory steps

1. Preprocessing the target

Required Arguments

Argument Description Possible value(s)
target_mol2_path Path to target mol2 file Absolute path
binding_site_file_path Path to binding site file generated by GetCleft Absolute path

Optional Arguments

Flag Description Possible value(s)
create_new_dir A new folder will be created to store generated files True,False
overwrite Allows overwriting existing files True,False

Example command

target_save_dir = process_target(target_mol2_path='foo/bar/target.mol2', binding_site_file_path='foo/bar/bd_site_sph_1.pdb')

2. Preparing the ligands

All ligands for one screen must be in the same mol2 file

Required Arguments

For running on a single mol2 file:

Flag Description Possible value(s)
ligand_path Path to ligand mol2 file Absolute path
conformers_per_molecule Number of conformers per molecule Int

Optional Arguments

Flag Description Possible value(s)
overwrite Allows overwriting existing files True,False
ligand_type Assign a specific ligand type recognised by NRGRank. Can be useful for benchmarking. (str)
output_dir Folder where generated files will be stored Absolute path

Example commands:

ligand_save_dir = process_ligands(ligand_path='foo/bar/ligands.mol2', conformers_per_molecule=1)

NRGRank

Required Flags

Flag Description Possible value(s)
target_name Target name that is used to name the output file (str)
preprocessed_target_path Path to preprocessed_target folder (can be path returned from process_target) Absolute path
preprocessed_ligand_path Path to preprocessed_ligands folder (can be path returned from process_ligands) Absolute path
result_folder_path Path to folder where result file will be written Absolute path

Optional Flags

Flag Description Possible value(s)
ligand_type Type of ligand. Useful when benchmarking with DUD-E active,decoy,ligand
ligand_slice List of 2 numbers containing the index of the first and last ligand to be screened (list)
write_info Write a .txt file containing information about the run True,False
write_csv Write a the result csv True,False
unique_run_id Adds a unique id to the output (str,int)
result_csv_and_pose_name changes the name of written result csv and folder for ligand poses (str)

Example commands:

result_file_path, result_csv_lines = nrgrank_main(target_name='target', 
                   preprocessed_target_path='foo/bar/preprocessed_target', 
                   preprocessed_ligand_path='foo/bar/preprocessed_ligands_1_conf',
                   result_folder_path='foo/bar/results')

Returns the path to the result file and the lines contained in the result csv

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