Skip to main content

Set of functions to predict the structure of immune receptor proteins

Project description


ImmuneBuilder: Deep-Learning models for predicting the structures of immune proteins


Update 1.1.1

The weights of TCRBuilder2 have been updated to TCRBuilder2+. See the pre-print for more information.

Abstract

Immune receptor proteins play a key role in the immune system and have shown great promise as biotherapeutics. The structure of these proteins is critical for understanding what antigen they bind. Here, we present ImmuneBuilder, a set of deep learning models trained to accurately predict the structure of antibodies (ABodyBuilder2), nanobodies (NanoBodyBuilder2) and T-Cell receptors (TCRBuilder2). We show that ImmuneBuilder generates structures with state of the art accuracy while being much faster than AlphaFold2. For example, on a benchmark of 34 recently solved antibodies, ABodyBuilder2 predicts CDR-H3 loops with an RMSD of 2.81Å, a 0.09Å improvement over AlphaFold-Multimer, while being over a hundred times faster. Similar results are also achieved for nanobodies (NanoBodyBuilder2 predicts CDR-H3 loops with an average RMSD of 2.89Å, a 0.55Å improvement over AlphaFold2) and TCRs. By predicting an ensemble of structures, ImmuneBuilder also gives an error estimate for every residue in its final prediction.

Colab

To test the method out without installing it you can try this Google Colab

Install

Requirements

This package requires PyTorch. If you do not already have PyTorch installed, you can do so following these instructions.

It also requires OpenMM and pdbfixer for the refinement step. For details on how to install OpenMM please follow these instructions.
Alternatively, OpenMM and pdbfixer can be installed via conda using:

$ conda install -c conda-forge openmm pdbfixer

It also uses anarci for trimming and numbering sequences. We recommend installing ANARCI from here, but it can also be installed using (maintained by a third party):

$ conda install -c bioconda anarci

Install ImmuneBuilder

Once you have all dependencies installed within one enviroment, you can install ImmuneBuilder via PyPI by doing:

$ pip install ImmuneBuilder

Usage

Antibody structure prediction

To predict an antibody structure using the python API you can do the following.

from ImmuneBuilder import ABodyBuilder2
predictor = ABodyBuilder2()

output_file = "my_antibody.pdb"
sequences = {
  'H': 'EVQLVESGGGVVQPGGSLRLSCAASGFTFNSYGMHWVRQAPGKGLEWVAFIRYDGGNKYYADSVKGRFTISRDNSKNTLYLQMKSLRAEDTAVYYCANLKDSRYSGSYYDYWGQGTLVTVS',
  'L': 'VIWMTQSPSSLSASVGDRVTITCQASQDIRFYLNWYQQKPGKAPKLLISDASNMETGVPSRFSGSGSGTDFTFTISSLQPEDIATYYCQQYDNLPFTFGPGTKVDFK'}

antibody = predictor.predict(sequences)
antibody.save(output_file)

ABodyBuilder2 can also be used via de command line. To do this you can use:

ABodyBuilder2 --fasta_file my_antibody.fasta -v

You can get information about different options by using:

ABodyBuilder2 --help

I would recommend using the python API if you intend to predict many structures as you only have to load the models once.

Happy antibodies!!

Nanobody structure prediction

The python API for nanobodies is quite similar than for antibodies.

from ImmuneBuilder import NanoBodyBuilder2
predictor = NanoBodyBuilder2()

output_file = "my_nanobody.pdb"
sequence = {'H': 'QVQLVESGGGLVQPGESLRLSCAASGSIFGIYAVHWFRMAPGKEREFTAGFGSHGSTNYAASVKGRFTMSRDNAKNTTYLQMNSLKPADTAVYYCHALIKNELGFLDYWGPGTQVTVSS'}

nanobody = predictor.predict(sequence)
nanobody.save(output_file)

And it can also be used from the command line:

NanoBodyBuilder2 --fasta_file my_nanobody.fasta -v

TCR structure prediction

UPDATE - By default TCRBuilder2 now uses the TCRBuilder2+ weights. If you would like to use the original weights please specify use_TCRBuilder2_PLUS_weights=False or set the flag --original_weights from the command line.

from ImmuneBuilder import TCRBuilder2
predictor = TCRBuilder2()

output_file = "my_tcr.pdb"
sequences = {
"A": "AQSVTQLGSHVSVSEGALVLLRCNYSSSVPPYLFWYVQYPNQGLQLLLKYTSAATLVKGINGFEAEFKKSETSFHLTKPSAHMSDAAEYFCAVSEQDDKIIFGKGTRLHILP",
"B": "ADVTQTPRNRITKTGKRIMLECSQTKGHDRMYWYRQDPGLGLRLIYYSFDVKDINKGEISDGYSVSRQAQAKFSLSLESAIPNQTALYFCATSDESYGYTFGSGTRLTVV"}

tcr = predictor.predict(sequences)
tcr.save(output_file)

And it can also be used from the command line:

TCRBuilder2 --fasta_file my_tcr.fasta -v

Fasta formatting

If you wish to run the model on a sequence from a fasta file it must be formatted as follows:

>H
YOURHEAVYCHAINSEQUENCE
>L
YOURLIGHCHAINSEQUENCE

If you are running it on TCRs the chain labels should be A for the alpha chain and B for the beta chain. On nanobodies the fasta file should only contain a heavy chain labelled H.

Issues and Pull requests

Please submit issues and pull requests on this repo.

Known issues

  • Installing OpenMM from conda will automatically download the latest version of cudatoolkit which may not be compatible with your device. For more information on this please checkout the following issue.
  • After following install instructions I get an Import Error: `GLIBCXX_3.4.30' not found. This is an issue with OpenMM, and can be solved by doing conda install -c conda-forge libstdcxx-ng. See issue here.

Citing this work

The code and data in this package is based on the following paper ImmuneBuilder. If you use it, please cite:

@article{Abanades2023,
	author = {Abanades, Brennan and Wong, Wing Ki and Boyles, Fergus and Georges, Guy and Bujotzek, Alexander and Deane, Charlotte M.},
	doi = {10.1038/s42003-023-04927-7},
	issn = {2399-3642},
	journal = {Communications Biology},
	number = {1},
	pages = {575},
	title = {ImmuneBuilder: Deep-Learning models for predicting the structures of immune proteins},
	volume = {6},
	year = {2023}
}

TCRBuilder2+ is described in our pre-print: T-cell receptor structures and predictive models reveal comparable alpha and beta chain structural diversity despite differing genetic complexity. If you use it, please cite:

@article {Quast2024,
	author = {Quast, Nele P. and Abanades, Brennan and Guloglu, Bora and Karuppiah, Vijaykumar and Harper, Stephen and Raybould, Matthew I. J. and Deane, Charlotte M.},
	title = {T-cell receptor structures and predictive models reveal comparable alpha and beta chain structural diversity despite differing genetic complexity},
	year = {2024},
	doi = {10.1101/2024.05.20.594940},
	journal = {bioRxiv},
}

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

immunebuilder-1.2.tar.gz (23.8 kB view details)

Uploaded Source

Built Distribution

ImmuneBuilder-1.2-py3-none-any.whl (32.6 kB view details)

Uploaded Python 3

File details

Details for the file immunebuilder-1.2.tar.gz.

File metadata

  • Download URL: immunebuilder-1.2.tar.gz
  • Upload date:
  • Size: 23.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.0 CPython/3.12.4

File hashes

Hashes for immunebuilder-1.2.tar.gz
Algorithm Hash digest
SHA256 18562dcabc3733e0ce47a9782e73cc0a7f1a876f266e73b5d59872c64374586d
MD5 3420b5891156f2f6edd1d111b7d32924
BLAKE2b-256 2b436747ce9f4a9f6e5db328a68eaad1993f2d3d4770e4d424057b46c6934054

See more details on using hashes here.

File details

Details for the file ImmuneBuilder-1.2-py3-none-any.whl.

File metadata

  • Download URL: ImmuneBuilder-1.2-py3-none-any.whl
  • Upload date:
  • Size: 32.6 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.0 CPython/3.12.4

File hashes

Hashes for ImmuneBuilder-1.2-py3-none-any.whl
Algorithm Hash digest
SHA256 fe6eeb70ab5331eeeefe5562fb7fb5aa3413d8802b573485ed81e64588da4ac1
MD5 7a88e2dfb60b5831a888f1cea54dee2a
BLAKE2b-256 53a4cf8c53a5cf38c2ee303c020d1769e7bb98ecf4d154636062e2f940a1af13

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page