Computational Engineering Division, Lawrence Livermore National Laboratory, Livermore, CA, USA.
Biosciences and Biotechnology Division, Lawrence Livermore National Laboratory, Livermore, CA, USA.
Nature. 2024 May;629(8013):878-885. doi: 10.1038/s41586-024-07385-1. Epub 2024 May 8.
The COVID-19 pandemic underscored the promise of monoclonal antibody-based prophylactic and therapeutic drugs and revealed how quickly viral escape can curtail effective options. When the SARS-CoV-2 Omicron variant emerged in 2021, many antibody drug products lost potency, including Evusheld and its constituent, cilgavimab. Cilgavimab, like its progenitor COV2-2130, is a class 3 antibody that is compatible with other antibodies in combination and is challenging to replace with existing approaches. Rapidly modifying such high-value antibodies to restore efficacy against emerging variants is a compelling mitigation strategy. We sought to redesign and renew the efficacy of COV2-2130 against Omicron BA.1 and BA.1.1 strains while maintaining efficacy against the dominant Delta variant. Here we show that our computationally redesigned antibody, 2130-1-0114-112, achieves this objective, simultaneously increases neutralization potency against Delta and subsequent variants of concern, and provides protection in vivo against the strains tested: WA1/2020, BA.1.1 and BA.5. Deep mutational scanning of tens of thousands of pseudovirus variants reveals that 2130-1-0114-112 improves broad potency without increasing escape liabilities. Our results suggest that computational approaches can optimize an antibody to target multiple escape variants, while simultaneously enriching potency. Our computational approach does not require experimental iterations or pre-existing binding data, thus enabling rapid response strategies to address escape variants or lessen escape vulnerabilities.
COVID-19 大流行凸显了基于单克隆抗体的预防性和治疗性药物的前景,并揭示了病毒逃逸速度之快,如何迅速减少有效选择。当 2021 年 SARS-CoV-2 的奥密克戎变体出现时,许多抗体药物产品失去了效力,包括 Evusheld 及其成分 cilgavimab。Cilgavimab 与它的前身 COV2-2130 一样,是一种 3 类抗体,与其他抗体兼容并在组合中,并且难以用现有方法替代。快速修改此类高价值抗体以恢复对新出现变体的疗效是一种引人注目的缓解策略。我们试图重新设计和更新 COV2-2130 对奥密克戎 BA.1 和 BA.1.1 株的疗效,同时保持对占主导地位的 Delta 变体的疗效。在这里,我们展示了我们通过计算重新设计的抗体 2130-1-0114-112 实现了这一目标,同时提高了对 Delta 和随后的关注变体的中和效力,并在体内提供了对测试株的保护:WA1/2020、BA.1.1 和 BA.5。对数万种假病毒变体的深度突变扫描表明,2130-1-0114-112 在提高广谱效力的同时,不会增加逃逸的可能性。我们的结果表明,计算方法可以优化抗体以针对多个逃逸变体,同时增强效力。我们的计算方法不需要实验迭代或预先存在的结合数据,从而能够快速应对逃逸变体或降低逃逸脆弱性的策略。