Back

Automated Protein Affinity Optimization using a 1D-CNN Deep Learning Model

McWhirter, J. L.; Mukhopadhyay, A.; Farber, P.; Lakatos, G.; Dixit, S.

2023-04-13 bioengineering
10.1101/2023.04.12.536512 bioRxiv
Show abstract

Functional biologics design is a multi-objective optimization problem often with competing design objectives. We report on a novel deep learning based protein sequence prediction framework, ZymeSwapNet, that can be customized to handle a wide range of quantifiable design objectives, a current limitation of traditional protein design methods. We train a simple convolutional neural network (1D-CNN) on nonredundant curated protein crystal structures, using a set of geometric and topological features that describes a local protein environment, to predict the likelihood of each amino acid type for residue sites in the design region. While the model can be directly used to rank templates derived from mutagenesis campaigns, we extend the scope by developing a sequence/mutation generator that optimizes the desired multivariate distribution using a Monte-Carlo sampling. Using a case study - the design of a stable heterodimeric Fc (HetFc) antibody domain - we show that we can further include a Metropolis criterion to bias the sampling to enhance features such as the heterodimeric binding specificity, in addition to original sampling objective of enhancing stability. We demonstrate that ZymeSwapNet can generate stable HetFc designs, within minutes that had taken several rounds of rational structure and physical force-field based modeling attempts.

Matching journals

The top 6 journals account for 50% of the predicted probability mass.

1
Cell Systems
167 papers in training set
Top 0.3%
19.4%
2
Nature Communications
4913 papers in training set
Top 16%
10.4%
3
Protein Engineering, Design and Selection
14 papers in training set
Top 0.1%
10.1%
4
PLOS Computational Biology
1633 papers in training set
Top 6%
6.3%
5
Nature Machine Intelligence
61 papers in training set
Top 0.9%
3.6%
6
Computational and Structural Biotechnology Journal
216 papers in training set
Top 2%
3.6%
50% of probability mass above
7
Scientific Reports
3102 papers in training set
Top 40%
3.2%
8
PLOS ONE
4510 papers in training set
Top 42%
3.1%
9
mAbs
28 papers in training set
Top 0.1%
2.9%
10
Proteins: Structure, Function, and Bioinformatics
82 papers in training set
Top 0.2%
2.9%
11
Journal of Chemical Information and Modeling
207 papers in training set
Top 2%
2.6%
12
Bioinformatics
1061 papers in training set
Top 6%
2.1%
13
Proceedings of the National Academy of Sciences
2130 papers in training set
Top 28%
2.1%
14
Journal of Cheminformatics
25 papers in training set
Top 0.3%
1.9%
15
ACS Synthetic Biology
256 papers in training set
Top 1%
1.8%
16
Protein Science
221 papers in training set
Top 0.9%
1.7%
17
Communications Biology
886 papers in training set
Top 9%
1.7%
18
Structure
175 papers in training set
Top 2%
1.3%
19
Nature Methods
336 papers in training set
Top 5%
1.3%
20
Antibody Therapeutics
16 papers in training set
Top 0.4%
1.1%
21
Science Advances
1098 papers in training set
Top 26%
0.9%
22
eLife
5422 papers in training set
Top 58%
0.7%
23
Chemical Science
71 papers in training set
Top 2%
0.7%
24
International Journal of Molecular Sciences
453 papers in training set
Top 17%
0.7%
25
Frontiers in Bioengineering and Biotechnology
88 papers in training set
Top 3%
0.7%
26
Cell Reports Methods
141 papers in training set
Top 6%
0.7%
27
Frontiers in Molecular Biosciences
100 papers in training set
Top 5%
0.7%
28
Advanced Science
249 papers in training set
Top 22%
0.6%