Submitted:
12 November 2025
Posted:
13 November 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. The Generative Turn in Immunoengineering
3. Foundations of Generative Biology for Immune Systems
4. Learning Immune Specificity from Repertoires and Structures
5. AI-Driven Design of Immune Receptors and Constructs
5.1. Designing Antigen-Specific Receptors
5.2. Modular Optimization of Chimeric Antigen Receptors
5.3. Engineering Logic-Gated and Multiplexed Architectures
5.4. Integrating Computational Design with Experimental Validation
6. Programming Cell Phenotypes with Generative Models
6.1. Modeling the Cellular State Space
6.2. Generative Reprogramming and Perturbation Modeling
6.3. Linking Generative Models to Synthetic Circuits
6.4. Toward Closed-Loop Phenotype Design
7. The Design–Build–Test–Learn Loop at Scale
7.1. The Design Phase: Generative Hypothesis Formation
7.2. The Build Phase: Automated Synthesis and Cellular Integration
7.3. The Test Phase: High-Dimensional and Multiscale Evaluation
7.4. The Learn Phase: Model Updating and Active Reinforcement
7.5. Automation, Data Infrastructure, and Self-Optimizing Biofoundries
7.6. Integrative and Translational Implications
8. Translational Opportunities and Clinical Outlook
9. Ethical, Regulatory, and Societal Implications of Generative Immunoengineering
10. Conclusion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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| Dimension | Conventional Immunotherapy Paradigm | Generative Immunoengineering Paradigm |
|---|---|---|
| Design Logic | Empirical discovery based on trial-and-error antigen selection and screening. | Computational generation guided by probabilistic models of receptor–antigen interaction and cellular behavior. |
| Data Utilization | Limited to experimental assays and patient-level outcomes. | Integrates multi-omic, structural, and clinical data into unified embeddings for design and prediction. |
| Optimization Process | Manual iterative testing; low throughput; human-driven decision cycles. | Automated optimization via active learning, reinforcement signals, and adaptive design–build–test–learn (DBTL) loops. |
| Scope of Design | Focused on single-target molecules or cell products. | System-level generation of receptors, circuits, and cellular phenotypes across multiple design objectives. |
| Experimental Feedback | Linear workflow: hypothesis → test → validation. | Closed feedback loop: generative output → experimental validation → model retraining → improved design. |
| Time Scale | Months to years from concept to candidate validation. | Days to weeks with parallel computational synthesis and in-silico pre-screening. |
| Interpretability | Dependent on mechanistic intuition; limited transparency in design rationale. | Explainable AI and mechanistic priors enable causal insight alongside prediction. |
| Manufacturing Integration | Separated from design; manual scale-up. | Digitally linked to automated biofoundries with algorithmic quality control and digital-twin monitoring. |
| Regulatory Context | Static approval for fixed molecular entities. | Continuous validation and lifecycle oversight for adaptive, learning-based therapeutics. |
| Ethical Dimension | Reactive regulation; limited data transparency. | Embedded ethical governance: consent tracking, data provenance, and algorithmic accountability. |
| Therapeutic Domain | Generative Design Strategy | Example Construct / Approach | Translational Stage | Clinical or Strategic Goal | References |
|---|---|---|---|---|---|
| Oncology | AI-driven receptor optimization for high-affinity, tumor-specific binding. | Multispecific or logic-gated CAR-T cells integrating affinity tuning and cytokine-controlled feedback. | Preclinical → Early-phase clinical trials. | Increase tumor selectivity, persistence, and safety; mitigate off-tumor toxicity. | [96,187] |
| Autoimmune Disorders | Generative modeling of regulatory-cell circuits to restore immune tolerance. | Synthetic regulatory T (Treg) or tolerogenic dendritic-cell designs with cytokine-balanced circuits. | Preclinical / proof-of-concept. | Suppress autoimmunity without broad immunosuppression. | [188,189] |
| Regenerative Medicine | AI-guided macrophage or APC reprogramming for tissue repair and graft tolerance. | Engineered macrophages producing pro-resolving mediators and metabolic-stability signatures. | Early preclinical studies. | Enhance regeneration, reduce fibrosis, and improve graft acceptance. | [190] |
| Infectious Disease & Vaccinology | Rapid generative design of receptor and antigen pairs using diffusion or language models. | Model-driven epitope design for next-generation vaccine candidates. | Preclinical / candidate identification. | Accelerate immune-response optimization to emerging pathogens. | [187,191] |
| Transplant Immunology | Generative modeling for donor–recipient immune matching and synthetic tolerance induction. | Predictive receptor generation minimizing alloreactivity; tolerance-inducing T-cell circuits. | Conceptual / exploratory. | Prevent graft rejection and chronic inflammation. | [192,193] |
| Immuno-Oncology Combinations | System-level optimization of multi-agent intervention. | Co-designed CAR-T + checkpoint-modulator constructs governed by reinforcement learning. | Translational modeling / phase I design. | Harmonize multi-modal immunotherapy dynamics. | [194,195] |
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