AI-Driven Transaminase Engineering for Chiral Amine Synthesis and Industrial Biocatalysis

AI-Driven Transaminase Engineering for Industrial Biocatalysis

Transaminases (aminotransferases) are among the most important industrial biocatalysts for producing chiral amines, essential building blocks in pharmaceutical manufacturing, agrochemicals, and specialty chemicals.

Modern industrial processes require enzymes that combine excellent catalytic performance with broad substrate acceptance, high stereoselectivity, and robust operation under manufacturing conditions.

Neoncorte Bio applies AI-driven protein engineering to optimize transaminases for improved catalytic efficiency, selectivity, stability, and industrial scalability.

Why Engineer Transaminases?

Naturally occurring transaminases rarely possess the complete set of properties required for commercial manufacturing.
Protein engineering enables targeted optimization to improve reaction efficiency while supporting scalable industrial production.
Engineering strategies are customized according to substrate chemistry, reaction conditions, and manufacturing objectives.

Common Engineering Challenges

Organizations developing transaminases frequently seek improvements in:
  • Catalytic efficiency
  • Enantioselectivity
  • Diastereoselectivity
  • Substrate specificity
  • Expanded substrate scope
  • Thermostability
  • Solvent tolerance
  • pH stability
  • Product inhibition resistance
  • Cofactor utilization
  • Recombinant expression
  • Manufacturing scalability
Commercial projects often require balancing multiple properties simultaneously.

Application Areas

AI-Guided Transaminase Engineering
  • Pharmaceutical Manufacturing

    Engineer transaminases for asymmetric synthesis of chiral amines used in active pharmaceutical ingredients.
    Benefit: More efficient and selective biocatalytic manufacturing processes.
  • Fine Chemical Synthesis

    Optimize transaminases for production of high-value chiral intermediates.
    Benefit: Improved catalytic productivity and reaction selectivity.
  • Agrochemical Manufacturing

    Develop enzymes with broader substrate compatibility for specialty agrochemical synthesis.
    Benefit: Greater process flexibility and sustainable manufacturing.
  • Green Chemistry

    Engineer transaminases that replace traditional chemical synthesis routes.
    Benefit: Reduced process complexity and milder reaction conditions.
  • Biocatalyst Platform Development

    Optimize transaminases for diverse industrial substrates and reaction conditions.
    Benefit: Expanded applicability across multiple commercial processes.
AI-Guided Transaminase Engineering

AI-Guided Transaminase Engineering

Neoncorte Bio combines computational protein engineering, structural biology, and machine learning to accelerate transaminase optimization.
Our engineering workflow may incorporate:
  • Protein sequence analysis
  • Structure-informed enzyme modeling
  • Active-site analysis
  • Cofactor-binding analysis
  • Protein language models
  • Machine learning
  • Computational mutagenesis
  • Virtual mutational scanning
  • Fitness landscape prediction
  • Multi-objective optimization
  • Design-Build-Test-Learn (DBTL) methodologies
AI-guided workflows help prioritize promising variants for experimental validation based on project goals.

Engineering Objectives

Depending on the intended application, transaminases may be optimized for:
  • Higher catalytic activity
  • Improved catalytic efficiency
  • Enhanced enantioselectivity
  • Improved diastereoselectivity
  • Expanded substrate scope
  • Better activity toward bulky substrates
  • Increased thermostability
  • Improved solvent tolerance
  • Greater pH stability
  • Higher recombinant expression
  • Reduced aggregation
  • Improved manufacturability
Multi-parameter optimization enables balanced improvements across catalytic performance and production characteristics.
AI-Driven Transaminase Engineering for Industrial Biocatalysis

Design-Build-Test-Learn (DBTL) Integration

Transaminase engineering benefits from iterative computational prediction and laboratory validation.
Neoncorte Bio supports:
  1. Protein sequence and structural analysis
  2. AI-guided mutation prioritization
  3. Variant design
  4. Experimental characterization
  5. Machine learning model refinement
  6. Successive Design-Build-Test-Learn (DBTL) cycles
This iterative workflow enables continuous optimization while reducing unnecessary laboratory screening.

What Neoncorte Bio Delivers

  • AI-guided transaminase engineering
  • Computational enzyme optimization
  • Structure-informed protein design
  • Multi-parameter optimization
  • Mutation prioritization
  • Computational mutagenesis
  • Design-Build-Test-Learn (DBTL) workflows
  • Confidential B2B enzyme engineering partnerships

Who We Work With

  • Pharmaceutical companies
  • CDMOs
  • Fine chemical manufacturers
  • Agrochemical companies
  • Industrial enzyme manufacturers
  • Biotechnology startups
  • Synthetic biology companies
  • Academic research institutions

Frequently Asked Questions (FAQs)

Neoncorte Bio

Where AI Meets Biotechnology
Neoncorte Bio is at the forefront of the convergence between artificial intelligence and enzyme engineering. Our team comprises experts in computational biology, bioinformatics, and machine learning, all driven by a mission to accelerate innovation in enzyme design. By leveraging our advanced AI models, we provide unparalleled solutions that enhance efficiency, reduce costs, and push the boundaries of what's possible in enzyme engineering
Proud Member of Leading Global AI Programs
Neoncorte Bio is part of the NVIDIA Inception and Nebius for Startups programs — two of the world’s leading ecosystems for high-performance AI innovation. These partnerships strengthen our ability to deliver next-generation AI-driven protein, enzyme, and aptamer engineering.
  • NVIDIA Inception Neoncorte Bio AI life sciences company
    As a member of NVIDIA Inception, Neoncorte Bio gains access to cutting-edge GPU technologies, expert guidance, and a global AI ecosystem that supports companies from prototype to production. The program empowers us to explore new AI opportunities and build high-performance biological design pipelines powered by NVIDIA’s world-class platform.
  • Nebius AI life sciences Neoncorte Bio
    Through Nebius for Startups, we gain access to high-performance compute infrastructure optimized for large-scale AI workloads, along with hands-on technical guidance and a strong community of innovative AI companies. Nebius enables us to train and deploy complex biological models more efficiently — accelerating enzyme, protein, and aptamer design while supporting rapid scaling of our R&D pipelines.
Publications
Scientific Publication of Neoncorte Bio Team
  • Modification of natural enzymes to introduce new properties and enhance existing ones is a central challenge in bioengineering. This study is focused on the development of Taq polymerase mutants that show enhanced reverse transcriptase (RTase) activity while retaining other desirable properties such as fidelity, 5′-3′ exonuclease activity, effective deoxyuracil incorporation, and tolerance to locked nucleic acid (LNA)-containing substrates.
  • The transcriptomic data are being frequently used in the research of biomarker genes of different diseases and biological states. The most common tasks there are the data harmonization and treatment outcome prediction. Both of them can be addressed via the style transfer approach. Either technical factors or any biological details about the samples which we would like to control (gender, biological state, treatment, etc.) can be used as style components.
  • List of all Neoncorte Bio publications dedicated to Molecular Biology, Biotechnology, Artificial Intelligence and Artificial Neural Networks, published mostly by Nikolay Russkikh, CEO of Neoncorte Bio

Our Expertise in Action
With extensive experience in AI applications and software engineering tailored to the life sciences, we specialize in solving complex challenges and delivering innovative solutions for our customers. Our work demonstrates a deep understanding of cutting-edge technologies and their application in the real world.
Here are examples of the types of projects we have successfully delivered:
  • Automated NGS Data Analysis:
    Designed a production-grade solution for the automated processing, annotation, and analysis of Next-Generation Sequencing (NGS) data.
  • Single-Cell Data Integration:
    Built state-of-the-art tools for integrating multimodal single-cell data, achieving recognition for technical excellence.
  • Metagenomic Classification Algorithms:
    Developed advanced methods for classifying sequencing reads in metagenomics research.
  • High-Throughput Image Processing Pipelines:
    Engineered an efficient pipeline to process millions of sequencing images with exceptional accuracy.
  • Cell Counting via AI:
    Created a computer vision solution for precise cell counting in microphotography images, streamlining data analysis.
Get in touch with our team
Phone: +1-503-754-3958
Email: contact@neoncorte.com