面向抗体工程中抗原结合亲和力的精确计算机预测。

3区 生物学 Q1 Biochemistry, Genetics and Molecular Biology
Tuğçe Uluçay, Merve Arslan, Hatice Döşeme, Sibel Kalyoncu, Seyit Kale
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引用次数: 0

摘要

在临床应用和生命科学研究中,抗体由于其高靶点亲和力、特异性和广泛的可发展性而具有重要的诊断和治疗潜力。虽然抗原亲和力是抗体的主要成功评估指标之一,可以以相当高的精度和可靠性进行测量,但测量的可扩展性可能是繁琐和有限的。这是令人不安的,因为亲和力必须在整个开发方法的所有步骤中进行监测,例如亲和力成熟和抗体的人源化。在这种情况下,在硅的方法提供了一个有利可图的机会,在成本和时间通常投资在一个可比的湿实验室的一小部分。除了它们的高通量潜力,在硅方法可以提供一个宝贵的副产品,即,确定亲和力背后的分子驱动力。在这里,我们研究了六种不同的高通量服务器在抗体工程应用中常见的两种设置下的性能:(i)实验抗体-抗原结合常数的从头预测,以及(ii)由于单点突变而导致的结合自由能变化。我们发现,在与抗体开发相关的两种机制中,这些工具的准确性可能明显较低:(i)预测高亲和力结合,(ii)预测有利突变。这些问题与这些工具的基础模型中使用的训练集复杂相关,其中高亲和力复合物和有利的点突变通常未被充分代表。我们发现单点突变的生物物理特性,特别是体积和疏水性的变化,增加了预测误差。我们认为,虽然突变影响的预测可以使用现有硅工具的重新参数化版本在1千卡每摩尔内进行预测,但重新预测亲和力可能需要重新访问这些工具背后的基础物理模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward accurate in silico prediction of antigen binding affinities for antibody engineering.

In clinical applications and life sciences research, antibodies represent an important diagnostic and therapeutic potential thanks to their high target affinity, specificity, and broad developability. While the antigen affinity, one of the primary success assessors of an antibody, can be measured at reasonably high precision and reliability, the scalability of the measurements can be cumbersome and limited. This is troubling because the affinity must be monitored throughout all steps of the developability approaches such as affinity maturation and humanization of an antibody. In this context, in silico approaches present a lucrative opportunity at a fraction of the cost and time typically invested in a comparable wet lab undertaking. In addition to their high-throughput potential, in silico approaches can provide an invaluable side product, i.e., identifying the molecular driving forces behind affinity. Here, we investigated the performance of six different high-throughput servers in two settings common in antibody engineering applications: (i) de novo prediction of the experimental antibody-antigen binding constants, and (ii) the free energy change in binding due to single point mutations. We find that the accuracy of these tools can be significantly low in the two regimes relevant to antibody development: (i) prediction of high-affinity binding, and (ii) prediction of favorable mutations. These issues are intricately related to the training sets used in the underlying models of these tools where high-affinity complexes and favorable point mutations are typically underrepresented. We showed that biophysical characteristics of single point mutations, especially changes in bulkiness and hydrophobicity, increase the prediction error. We argue that while the prediction of mutational impact can be predicted within one kcal per mol using re-parameterized versions of the present in silico tools, the de novo prediction of the affinity likely requires revisiting the underlying physical models behind these tools.

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来源期刊
Advances in protein chemistry and structural biology
Advances in protein chemistry and structural biology BIOCHEMISTRY & MOLECULAR BIOLOGY-
CiteScore
7.40
自引率
0.00%
发文量
66
审稿时长
>12 weeks
期刊介绍: Published continuously since 1944, The Advances in Protein Chemistry and Structural Biology series has been the essential resource for protein chemists. Each volume brings forth new information about protocols and analysis of proteins. Each thematically organized volume is guest edited by leading experts in a broad range of protein-related topics.
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