Metadata-Version: 2.4
Name: deeprank-gnn-esm
Version: 1.0.0
Summary: Graph Network for protein-protein interface including language model features
Author: Xiaotong Xu
Author-email: x.xu1@uu.nl
Maintainer: BonvinLab
Maintainer-email: bonvinlab.support@uu.nl
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Keywords: protein-protein interaction,graph neural network,esm-2,machine learning,computational biology
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Dynamic: license-file

# deeprank-gnn-esm

Graph Network for protein-protein interface including language model features.

![GitHub License](https://img.shields.io/github/license/haddocking/deeprank-gnn-esm)

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For details refer to our publication at <https://academic.oup.com/bioinformaticsadvances/article/4/1/vbad191/7511844>

For detailed protocol to use our `deeprank-gnn-esm` software, refer to our publication
at <https://arxiv.org/abs/2407.16375>

## Installation

```bash
pip install deeprank-gnn-esm
```

### CPU only

To avoid downloading the heavy CUDA libraries (~3GB), install the CPU-only `torch` first:

```bash
pip install torch --extra-index-url https://download.pytorch.org/whl/cpu
pip install deeprank-gnn-esm
```

### GPU support

GPU support is included automatically — the default PyPI `torch` wheel bundles CUDA.
If your system requires a specific CUDA version, install `torch` first:

```bash
# example for CUDA 12.1
pip install torch --extra-index-url https://download.pytorch.org/whl/cu121
pip install deeprank-gnn-esm
```

Check [pytorch.org](https://pytorch.org/get-started/locally/) for the right CUDA version for your system.

## Usage

### As a scoring function

We provide a command-line interface for `deeprank-gnn-esm` that can easily be
used to score protein-protein complexes. The command-line interface can be used
as follows:

```bash
$ deeprank-gnn-esm-predict -h
usage: deeprank-gnn-esm-predict [-h] pdb_file chain_id_1 chain_id_2 num_cores

positional arguments:
  pdb_file    Path to the PDB file.
  chain_id_1  First chain ID.
  chain_id_2  Second chain ID.
  num_cores   Number of cores 

optional arguments:
  -h, --help  show this help message and exit
```

Example, score the `1B6C` complex

```bash
# download it
$ wget https://files.rcsb.org/view/1B6C.pdb -q

$ deeprank-gnn-esm-predict 1B6C.pdb A B 1
 2023-06-28 06:08:21,889 predict:64 INFO - Setting up workspace - /home/deeprank-gnn-esm/1B6C-gnn_esm_pred_A_B
 2023-06-28 06:08:21,945 predict:72 INFO - Renumbering PDB file.
 2023-06-28 06:08:22,294 predict:104 INFO - Reading sequence of PDB 1B6C.pdb
 2023-06-28 06:08:22,423 predict:131 INFO - Generating embedding for protein sequence.
 2023-06-28 06:08:22,423 predict:132 INFO - ################################################################################
 2023-06-28 06:08:32,447 predict:138 INFO - Transferred model to GPU
 2023-06-28 06:08:32,450 predict:147 INFO - Read /home/1B6C-gnn_esm_pred_A_B/all.fasta with 2 sequences
 2023-06-28 06:08:32,459 predict:157 INFO - Processing 1 of 1 batches (2 sequences)
 2023-06-28 06:08:36,462 predict:200 INFO - ################################################################################
 2023-06-28 06:08:36,470 predict:205 INFO - Generating graph, using 79 processors
 Graphs added to the HDF5 file
 Embedding added to the /home/1B6C-gnn_esm_pred_A_B/graph.hdf5 file file
 2023-06-28 06:09:03,345 predict:220 INFO - Graph file generated: /home/deeprank-gnn-esm/1B6C-gnn_esm_pred_A_B/graph.hdf5
 2023-06-28 06:09:03,345 predict:226 INFO - Predicting fnat of protein complex.
 2023-06-28 06:09:03,345 predict:234 INFO - Using device: cuda:0
 # ...
 2023-06-28 06:09:07,794 predict:280 INFO - Predicted fnat for 1B6C between chainA and chainB: 0.359
 2023-06-28 06:09:07,803 predict:290 INFO - Output written to /home/deeprank-gnn-esm/1B6C-gnn_esm_pred/GNN_esm_prediction.csv
```

From the output above you can see that the predicted fnat for the 1B6C
complex is **0.359**, this information is also written to the
`GNN_esm_prediction.csv` file.

The command above will generate a folder in the current working directory,
containing the following:

```text
1B6C-gnn_esm_pred_A_B
├── 1B6C.pdb                   #input pdb file
├── all.fasta                  #fasta sequence for the pdb input
├── 1B6C.A.pt                  #esm-2 embedding for chainA in protein 1B6C
├── 1B6C.B.pt                  #esm-2 embedding for chainB in protein 1B6C
├── graph.hdf5                 #input protein graph in hdf5 format
├── GNN_esm_prediction.hdf5    #prediction output in hdf5 format
└── GNN_esm_prediction.csv     #prediction output in csv format
```

### As a framework

### Note about input pdb files

To ensure the mapping between interface residue and esm-2 embeddings is correct,
make sure that for all the chains, residue numbering in the PDB file is
continuous and starts with residue '1'.

We provide a script (`scripts/pdb_renumber.py`) to do the numbering.

#### Generate esm-2 embeddings for your protein

- To generate fasta sequences from PDBs, use script `get_fasta.py`

  ```bash
  usage: get_fasta.py [-h] pdb_file_path chain_id1 chain_id2

  positional arguments:
    pdb_file_path  Path to the directory containing PDB files
    chain_id1      Chain ID for the first sequence
    chain_id2      Chain ID for the second sequence

  options:
    -h, --help         show this help message and exit


  python scripts/get_fasta.py tests/data/pdb/1ATN/ A B

  ```

- Generate embeddings in bulk from combined fasta files, use the script
  provided inside esm-2 package,

  ```bash
  $ python esm_2_installation_location/scripts/extract.py \
      esm2_t33_650M_UR50D \
      all.fasta \
      tests/data/embedding/1ATN/ \
      --repr_layers 0 32 33 \
      --include mean per_tok
  ```

  Replace 'esm_2_installation_location' with your installation location,
  'all.fasta' with fasta sequence generated above,
  'tests/data/embedding/1ATN/' with the output folder name for esm embeddings

#### Generate graph

- Example code to generate residue graphs in hdf5 format:

  ```python
  from deeprank_gnn.GraphGenMP import GraphHDF5

  pdb_path = "tests/data/pdb/1ATN/"
  pssm_path = "tests/data/pssm/1ATN/"
  embedding_path = "tests/data/embedding/1ATN/"
  nproc = 20
  outfile = "1ATN_residue.hdf5"

  GraphHDF5(
      pdb_path = pdb_path,
      pssm_path = pssm_path,
      embedding_path = embedding_path,
      graph_type = "residue",
      outfile = outfile,
      nproc = nproc,    #number of cores to use
      tmpdir="./tmpdir")
  ```

- Example code to add continuous or binary targets to the hdf5 file

  ```python
  import h5py
  import random

  hdf5_file = h5py.File('1ATN_residue.hdf5', "r+")
  for mol in hdf5_file.keys():
      fnat = random.random()
      bin_class = [1 if fnat > 0.3 else 0]
      hdf5_file.create_dataset(f"/{mol}/score/binclass", data=bin_class)
      hdf5_file.create_dataset(f"/{mol}/score/fnat", data=fnat)
  hdf5_file.close()
  ```

#### Use pre-trained models to predict

- Example code to use pre-trained deeprank-gnn-esm model

  ```python
  from deeprank_gnn.ginet import GINet
  from deeprank_gnn.NeuralNet import NeuralNet

  database_test = "1ATN_residue.hdf5"
  gnn = GINet
  target = "fnat"
  edge_attr = ["dist"]
  threshold = 0.3
  pretrained_model = 'deeprank-GNN-esm/paper_pretrained_models/scoring_of_docking_models/gnn_esm/treg_yfnat_b64_e20_lr0.001_foldall_esm.pth.tar'
  node_feature = ["type", "polarity", "bsa", "charge", "embedding"]
  device_name = "cuda:0"
  num_workers = 10

  model = NeuralNet(
      database_test,
      gnn,
      device_name = device_name,
      edge_feature = edge_attr,
      node_feature = node_feature,
      target = target,
      num_workers = num_workers,
      pretrained_model = pretrained_model,
      threshold = threshold)

  model.test(hdf5 = "tmpdir/GNN_esm_prediction.hdf5")
  ```
