Title: "Engineering Synthetic Phage Display Libraries with Machine Learning-Optimized Diversity for High-Affinity Antibody Discovery"  

Journal: Nature Biotechnology (2023)  

Authors: Chen et al.

Objective

This study aimed to improve phage display library construction by integrating machine learning (ML) to optimize combinatorial diversity in antibody variable regions, enhancing the likelihood of discovering high-affinity binders.

Methods

Library Design Framework:

Computational CDR Optimization: ML models (trained on structural and binding data from the SAbDab database) predicted favorable amino acid combinations in complementarity-determining regions (CDRs).

Synthetic Gene Synthesis: Oligonucleotides encoding diversified CDRs were synthesized using chip-based DNA synthesis, focusing on H3 and L3 loops for maximal antigen interaction.

Scaffold Stability: Framework regions were fixed to human germline sequences (IGHV3-23/IGKV1-39) to ensure proper folding and reduce immunogenicity.

Library Assembly:

Phagemid Vector: A modified pComb3X vector with a dual promoter system (T7/lacZ) improved scFv expression and phage packaging efficiency.

Electroporation Efficiency: High-efficiency E. coli SS320 cells achieved a library size of 1.2 × 10¹² unique clones, surpassing traditional methods (~10¹¹).

Validation:

NGS Analysis: Next-generation sequencing confirmed >90% library completeness and minimal redundancy.

Panning Against Diverse Targets: Tested against 8 antigens (e.g., IL-17A, PD-L1) to benchmark performance.

Key Results

Enhanced Affinity:

Isolated scFvs with picomolar affinity (KD ≤ 100 pM) for IL-17A and PD-L1, outperforming antibodies from conventional libraries.

70% of selected clones showed functional activity in cell-based assays (vs. 30–40% in traditional libraries).

IL-17A and PD-L1 related products

IL-17A

Cat# Product Name Species Host Applications Size Price
KMPH3461 Human IL17A Protein, His Tag Human Yeast 50ug, 100ug Inquiry
KMPH3462 Human IL17A Protein, His Tag Human E. coli 50ug, 100ug Inquiry
KMPH3463 Human IL17A Protein, His Tag Human CHO 50ug, 100ug Inquiry
PM327 Rhesus IL17A Protein, His Tag Rhesus Baculovirus-Insect Cells 50ug, 100ug Inquiry
PM127 Rhesus Monkey IL17A & IL17F Protein, His Tag Rhesus Monkey HEK293 Cells Inquiry
KMPH6365 Human IL17A Protein, His Tag Human Yeast 50ug, 100ug Inquiry
KMH129 Recombinant Human IL17/IL17A Protein, No Tag Human Mammalian cells 50ug, 100ug Inquiry
PA4481 Rabbit Anti-Human IL17A pAb Human Rabbit 50ul, 100ul Inquiry
PA6096 Rabbit Anti-Human IL17A pAb Human Rabbit 50ul, 100ul Inquiry
MA1228 Rabbit Anti-Human IL17A Receptor mAb Human Rabbit 50ul, 100ul Inquiry
KMP3543 Human IL17A & IL17F Heterodimer Protein, His Tag Human HEK293 Cells 50ug, 100ug, 200ug Inquiry
KMP3544 Human IL17A & IL17F Heterodimer Protein Human E. coli 50ug, 100ug, 200ug Inquiry
YR1008 Anti-Human IL17A Recombinant Antibody(Ixekizumab) WB, IP, IF, FuncS, FCM, Neut, ELISA 1mg, 5mg Inquiry
YR1220 Anti-Human IL17A Recombinant Antibody(Secukinumab) 1mg, 5mg Inquiry
YR1288 Anti-Human IL17A Recombinant Antibody(Perakizumab) Mouse WB, IF, IP, Neut, FuncS, ELISA, FCM 1mg, 5mg Inquiry
YR1328 Anti-Human IL17A Recombinant Antibody(Bimekizumab) ELISA, FCM, IP, FuncS, IF, Neut 1mg, 5mg Inquiry
YR1349 Anti-Human IL17A & TNFA Recombinant Antibody 1mg, 5mg Inquiry
YR1390 Anti-Human IL17A & IL17F Recombinant Antibody ELISA, IHC, IF, IP, FCM, Inhib 1mg, 5mg Inquiry
YR1435 Anti-Human IL17A Recombinant Antibody(Vunakizumab) ELISA, IHC, IF, IP, FCM, Inhib 1mg, 5mg Inquiry
YR1486 Anti-Human IL17A & CD257 Recombinant Antibody
YR1490 Anti-Human IL17A Recombinant Antibody(Netakimab) 1mg, 5mg Inquiry
YR1598 Anti-Human ALB & IL17A Recombinant Antibody 1mg, 5mg Inquiry

PD-L1

Cat# Product Name Species Host Applications Size Price
KMPH1193 Human PDL1/CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH1194 Human CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH1195 Human CD274/PDL1 Protein, His Tag Human HEK293 Cells 100ug, 200ug Inquiry
MOP1030 Mouse CD274/PDL1 Protein, His & Fc Tag Mouse HEK293 Cells 100ug, 200ug Inquiry
MOP1031 Mouse CD274/PDL1 Protein, His Tag Mouse HEK293 Cells 100ug, 200ug Inquiry
PM299 Cynomolgus CD274/PDL1 Protein, Fc Tag Cynomolgus HEK293 Cells 100ug, 200ug Inquiry
PM300 Cynomolgus CD274/PDL1 Protein, His Tag Cynomolgus HEK293 Cells 100ug, 200ug Inquiry
KMPH5881 Human CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5882 Human CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5883 Human CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5884 Human CD274/PDL1 Protein, Strep Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5885 Human CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5886 Human CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5887 Human CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5888 Human CD274/PDL1 Protein, His & Fc & Avi Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5889 Human CD274/PDL1 Protein, Fc & Avi Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5890 Human CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5891 Human CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5892 Human CD274/PDL1 Protein, Avi Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5929 Human CD274/PDL1 Protein, His & Fc & Avi Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5930 Human CD274/PDL1 Protein, Fc & Avi Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH5931 Human CD274/PDL1 Protein, Avi Tag Human HEK293 Cells 100ug, 200ug Inquiry
KMPH6573 Human CD274/PDL1 Protein, Fc Tag Human HEK293 Cells 100ug, 200ug Inquiry
PAV5590 Rabbit Anti-CCDC99/SPDL1 Polyclonal Antibody Human Rabbit WB, ELISA 100ul Inquiry
PAV5715 Rabbit Anti-CD274 Polyclonal Antibody Human Rabbit IHC-p, ELISA 100ul Inquiry
MOP2061 Recombinant Mouse Cd274/Pdl1/B7h1 Protein, His Tag Mouse Mammalian cells 50ug, 100ug Inquiry

Diversity Metrics:

ML-guided CDR diversification increased functional sequence space by 3-fold compared to random mutagenesis.

Identified rare paratopes (e.g., a β-hairpin motif in H3) not commonly seen in natural repertoires.

Speed and Scalability:

Library construction time reduced from 6 months (traditional) to 4 weeks via automated gene synthesis and cloning.

Strengths

  1. ML-Driven Design: Predictive algorithms minimized non-functional CDR combinations, reducing “junk” sequences.
  2. Unprecedented Size and Quality: The 1.2 × 10¹² library size with high diversity sets a new benchmark.
  3. Broad Applicability: Validated across multiple targets, including hard-to-bind epitopes (e.g., flat protein surfaces).

 Weaknesses

  1. Computational Bias: ML models trained on existing data may overlook novel, unconventional epitope-binding motifs.
  2. Cost and Complexity: High-throughput DNA synthesis and ML infrastructure limit accessibility for smaller labs.
  3. In Vivo Validation Pending: No animal data to confirm therapeutic efficacy of isolated antibodies.

Significance and Innovations

  1. Paradigm Shift in Library Design: Moves beyond random diversity to in silico-guided rational design, maximizing functional output.
  2. Implications for Drug Discovery: Accelerates development of antibodies for undruggable targets (e.g., GPCRs, ion channels).
  3. Synergy with Other Technologies: Compatible with ribosome display and yeast display for multi-platform screening.

Comparison to Prior Work

Traditional libraries (naïve/synthetic) rely on random diversity, often yielding low-affinity hits requiring extensive affinity maturation. Chen et al.’s ML approach pre-optimizes CDRs, mimicking natural antibody maturation in silico. This contrasts with earlier work like Sidhu et al. (2004), which emphasized randomization without predictive modeling.

Future Directions

Integration with Single-Cell Sequencing: Combine ML libraries with B-cell receptor sequencing from immunized donors.

Cell-Free Systems: Use in vitro transcription/translation for even faster library generation.

Clinical Translation: Test top hits (e.g., anti-PD-L1 scFvs) in oncology trials.

Conclusion

Chen et al. redefine phage display library construction by merging synthetic biology with machine learning, achieving unprecedented diversity and affinity. While computational and cost barriers exist, their work paves the way for next-generation antibody discovery pipelines, particularly for challenging therapeutic targets.