基于序列和结构一致性数据统计分析提高抗体热稳定性。

Q2 Medicine
Antibody Therapeutics Pub Date : 2022-07-22 eCollection Date: 2022-07-01 DOI:10.1093/abt/tbac017
Lei Jia, Mani Jain, Yaxiong Sun
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引用次数: 4

摘要

背景:单克隆抗体(mab)由于其高特异性和对靶点的强亲和力,在过去的30年里,作为治疗手段的使用越来越多。它们作为药物使用的主要挑战之一是它们的低热稳定性,这既影响了功效,也影响了制造和输送。方法:为了帮助设计更热稳定的突变体,基于共识序列的方法已被广泛使用。这些方法通常成功率约为50%,最大熔融温度增量范围为10至32°C。为了提高单克隆抗体的预测性能,我们开发了一种新的快速的单克隆抗体预测方法,在共识序列方法的基础上增加了三维结构层。这是通过分析800个单克隆抗体三维结构中保守的邻近残基对来实现的。结果:结合共识序列和结构残基对协方差方法,我们开发了一个预测人单抗热稳定性的内部应用程序,以指导蛋白质工程师设计稳定的分子。这种结构水平评估的主要优点是,与共识序列方法相比,其误报率几乎减少了一半。该应用程序在多个生物制剂项目的单抗工程面板设计中取得了成功。结论:我们基于数据科学的方法显示了对Mab工程的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Improving antibody thermostability based on statistical analysis of sequence and structural consensus data.

Improving antibody thermostability based on statistical analysis of sequence and structural consensus data.

Improving antibody thermostability based on statistical analysis of sequence and structural consensus data.

Improving antibody thermostability based on statistical analysis of sequence and structural consensus data.

Background: The use of Monoclonal Antibodies (MAbs) as therapeutics has been increasing over the past 30 years due to their high specificity and strong affinity toward the target. One of the major challenges toward their use as drugs is their low thermostability, which impacts both efficacy as well as manufacturing and delivery.

Methods: To aid the design of thermally more stable mutants, consensus sequence-based method has been widely used. These methods typically have a success rate of about 50% with maximum melting temperature increment ranging from 10 to 32°C. To improve the prediction performance, we have developed a new and fast MAbs specific method by adding a 3D structural layer to the consensus sequence method. This is done by analyzing the close-by residue pairs which are conserved in >800 MAbs' 3D structures.

Results: Combining consensus sequence and structural residue pair covariance methods, we developed an in-house application for predicting human MAb thermostability to guide protein engineers to design stable molecules. Major advantage of this structural level assessment is in significantly reducing the false positives by almost half from the consensus sequence method alone. This application has shown success in designing MAb engineering panels in multiple biologics programs.

Conclusions: Our data science-based method shows impacts in Mab engineering.

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来源期刊
Antibody Therapeutics
Antibody Therapeutics Medicine-Immunology and Allergy
CiteScore
8.70
自引率
0.00%
发文量
30
审稿时长
8 weeks
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