Welcome to the protlib-designer
repository! This repository contains a lightweight python library for designing diverse protein libraries by seeding linear programming with deep mutational scanning data (or any other data that can be represented as a matrix of scores per single-point mutation). The software takes as input the score matrix, where each row corresponds to a mutation and each column corresponds to a different source of scores, and outputs a subset of mutations that maximize the diversity of the library while Pareto-optimizing the scores from the different sources.
The paper Antibody Library Design by Seeding Linear Programming with Inverse Folding and Protein Language Models uses this software to design diverse antibody libraries by seeding linear programming with scores computed by Protein Language Models (PLMs) and Inverse Folding models.
protlib-designer designs diverse protein libraries by seeding linear programming with deep mutational scanning data. (a) The input to the method is target protein sequence and, if available, a structure of the protein or protein complex (in this case, the antibody trastuzumab in complex with the HER2 receptor). (b) We generate in silico deep mutational scanning data using protein language and inverse folding models. (c) The result is fed into a multi-objective linear programming solver. (d) The solver generates a library of antibodies that are co-optimized for the in silico scores while satisfying diversity constraints.
In this section, we provide instructions on how to install the software and run the code.
Create an environment with Python >=3.7,<3.11 and install the dependencies:
python -m venv .venv
source .venv/bin/activate
pip install -e .
If you want a nice development environment, you can install the development dependencies:
pip install -e .[dev]
which will allow you to run the tests and the linter. You can run the linting with:
black -S -t py39 protlib_designer scripts && \
flake8 --ignore=E501,E203,W503 protlib_designer scripts
To run the code to create a diverse protein library of size 10 from the example data, run the following command:
protlib-designer ./example_data/trastuzumab_spm.csv 10
We provide a rich set of command-line arguments to customize the behavior of protlib-designer
. For example, the following command runs protlib-designer
with a range of 3 to 5 mutations per sequence, enforcing the interleaving of the mutant order and balancing the mutant order, allowing for each mutation to appear at most 1
time and a position to be mutated at most 4
times,
and using a weighted multi-objective optimization:
protlib-designer ./example_data/trastuzumab_spm.csv 10 \
--min-mut 3 \
--max-mut 5 \
--interleave-mutant-order True \
--force-mutant-order-balance True \
--schedule 2 \
--schedule-param '1,4' \
--weighted-multi-objective True
For more information on the command-line arguments, run:
protlib-designer --help
The input to the software is a matrix of per-mutation scores (the csv file trastuzumab_spm.csv
in the example above). Typically, the score matrix is defined by in silico deep mutational scanning data, where each row corresponds to a mutation and each column corresponds to the score computed by a deep learning model. See the example data in the example_data
directory for an example of the input data format. The structure of the input data is shown below:
Mutation | score-1 | score-2 | ... | score-N |
---|---|---|---|---|
AH106C | -0.1 | 0.2 | ... | 0.3 |
AH106D | 0.2 | -0.3 | ... | -0.4 |
... | ... | ... | ... | ... |
YH107A | -0.3 | 0.4 | ... | -0.5 |
... | ... | ... | ... | ... |
Important notes about the input data:
• The Mutation
column contains the mutation in the format : WT_residue
+ chain
+ position_index
+ mutant_residue
. For example, A+H+106+C = AH106C
represents the mutation of the residue at position 106 in chain H from alanine to cysteine.
• The score-1
, score-2
, ..., score-N
columns contain the scores computed by the deep learning models for each mutation. Typically, the scores are the negative log-likelihoods ratios of the mutant residue and the wild-type residue, computed by the deep learning model:
where
We provide a set of scoring functions that can be used to compute the scores for the input data. The scoring functions are defined in the protlib_designer/scorer
module. To use this functionality, you need to install additional dependencies:
pip install -e .[plm]
After installing the dependencies, you can use the scoring functions to compute the scores for the input data. For example, we can compute the scores using Rostlab/prot_bert
and facebook/esm2_t6_8M_UR50D
models, and then, call protlib-designer
to design a diverse protein library of size 10:
protlib-plm-scorer \
EVQLVESGGGLVQPGGSLRLSCAASGFNIKDTYIHWVRQAPGKGLEWVARIYPTNGYTRYADSVKGRFTISADTSKNTAYLQMNSLRAEDTAVYYCSRWGGDGFYAMDYWGQGTLVTVSS \
WH99 GH100 GH101 DH102 GH103 FH104 YH105 AH106 MH107 DH108 \
--models Rostlab/prot_bert \
--models facebook/esm2_t6_8M_UR50D \
--chain-type heavy \
--output-file plm_scores.csv \
&& protlib-designer plm_scores.csv 10 --weighted-multi-objective True
Please read CONTRIBUTING.md for details on our code of conduct, and the process for submitting pull requests to us.
If you use this software in your research, please cite the following paper:
@article{Hayes2024.11.03.621763,
author = {Hayes, Conor F. and Magana-Zook, Steven A. and Gon{\c{c}}alves, Andre and Solak, Ahmet Can and Faissol, Daniel and Landajuela, Mikel},
title = {Antibody Library Design by Seeding Linear Programming with Inverse Folding and Protein Language Models},
journal = {bioRxiv},
year = {2024},
elocation-id = {2024.11.03.621763},
doi = {10.1101/2024.11.03.621763},
publisher = {Cold Spring Harbor Laboratory},
url = {https://www.biorxiv.org/content/early/2024/11/03/2024.11.03.621763},
eprint = {https://www.biorxiv.org/content/early/2024/11/03/2024.11.03.621763.full.pdf}
}
protlib-designer
is released under an MIT license. For more details, please see the
LICENSE and RELEASE files. All new contributions must be made under the MIT license.
SPDX-License-Identifier: MIT
LLNL-CODE-2001645