MarkTechPost@AI 2024年12月21日
Absci Bio Releases IgDesign: A Deep Learning Approach Transforming Antibody Design with Inverse Folding
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IgDesign是一种新型的抗体设计生成框架,它通过结合抗原和抗体框架序列等上下文信息,优化设计出高亲和力的CDR3和完整的重链CDR区域。该模型利用结构感知编码器和序列解码器,并通过体外实验验证了其在八种治疗性抗原上的有效性。IgDesign在抗体设计方面实现了更高的可扩展性和通用性,其卓越的实验成功率为治疗性抗体设计树立了新标准,为药物开发带来变革性进展。

🧬IgDesign采用逆向折叠的深度学习方法,通过整合抗原序列和抗体框架序列,生成优化的HCDR3和完整的HCDR123区域,解决了传统方法在设计抗体互补决定区(尤其是HCDR3)时遇到的挑战。

🧪该模型在体外实验中展现出卓越性能,对八种治疗性抗原的测试表明,IgDesign设计的HCDR3在七种抗原上表现出比基线更高的结合率,而HCDR123在四种抗原上优于基线,其亲和力接近或优于临床验证的参考抗体,如CD40和ACVR2B。

📊IgDesign通过精心策划的数据集,包括来自SAbDab和PDB的抗原特异性数据,避免了数据泄漏。模型先在通用蛋白数据集上预训练,然后在抗体-抗原复合物上微调,通过高通量SPR筛选验证结合动力学和亲和力,确保了设计抗体的性能。

🚀IgDesign的成功标志着抗体设计的一个重大进步,它将高计算精度与实验证据相结合,形成了一个统一的流程。这种方法不仅加速了先导化合物的优化,也为从头设计抗体铺平了道路,显著推动了药物发现领域的发展。

Designing antibodies with high specificity and binding affinity to diverse therapeutic antigens remains a significant challenge in drug development. Current methods struggle to effectively generate complementarity-determining regions (CDRs) responsible for antigen binding, especially the highly variable heavy chain CDR3 (HCDR3). These difficulties are mainly due to poor generalization of the already existing computational models to the experimental validation of their designs, inefficiency in optimizing leads, etc. Addressing these challenges will drive the advancement of therapeutic antibody engineering to advance and accelerate the formulation of effective treatments.

The current computational models, like ProteinMPNN and AntiFold, use generative approaches to predict sequences that fit particular antibody structures. Although these systems have excellent in silico performance, their practical application is limited by the absence of extensive experimental validation. Additionally, they suffer from designing several CDR regions as a coherent approach toward attaining antigen specificity. They greatly require curated datasets, which are real constraints on their ability to scale to new targets-antigens and prove inadequate in performance aspects compared to baselines set up.

Absci Bio Releases IgDesign: A Deep Learning Approach Transforming Antibody Design with Inverse Folding. IgDesign addresses the above limitations through a novel generative framework tailored to antibody design. It incorporates contextual inputs such as antigen sequences and antibody framework (FWR) sequences to create optimized CDR3 (HCDR3) and complete heavy-chain CDRs (HCDR123). Structure-aware encoder and sequence decoder, inspired by LM-design but specially adapted for antibody functions. It further distinguishes itself by the ability to design high-affinity binders validated through extensive in vitro testing across eight therapeutic antigens. The breakthrough enhances scalability, improves generalizability, and achieves experimental success rates that set a new standard for therapeutic antibody design.

The researchers curated datasets from SAbDab and PDB, ensuring the inclusion of strong antigen-specific holdouts to eliminate the possibility of data leakage. The model was pre-trained on a general protein dataset and then fine-tuned on antibody-antigen complexes. Antibody sequences were generated sequentially to maintain coherence between interdependencies of regions; for each antigen, 100 HCDR3 and 100 HCDR123 were generated and tested. The sequences were progressed through an extensive wet-laboratory protocol that included cloning of the sequences into E. coli, expression within these cells, and high throughput SPR screening designed to support the confirmation of binding kinetics and affinities. A robust set of HCDR3 sequences from the training dataset was used as controls to measure performance, a distinct reference point for proving the utility of IgDesign.

IgDesign showed consistent superior performance of designed antibodies across all different antigens. Experiments in vitro showed that designs of HCDR3 had significantly higher binding rates than baselines for seven out of eight tested antigens, and the design of HCDR123 outperformed the baseline for four of them. The produced antibodies are bound at affinities close to or better than those of clinically validated reference antibodies for targets such as CD40 and ACVR2B. Such findings underline the potential of IgDesign to generalize proficiently and design superior antibodies, which opens up transformative possibilities in therapeutic antibody development. 

This work represents a significant step for antibody design in that IgDesign marries high computational accuracy with empirical evidence to create a unified, streamlined process. As a result of success in antigen-specific binder construction exhibiting very high affinity, this advance challenges major bottlenecks in drug discovery. The framework not only facilitates lead optimization but also paves the way for de novo antibody design, significantly advancing the field of drug discovery.


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IgDesign 抗体设计 深度学习 药物开发 逆向折叠
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