调查可推广抗体-抗原ΔΔG预测所需数据的数量和多样性。

IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Alissa M Hummer, Constantin Schneider, Lewis Chinery, Charlotte M Deane
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引用次数: 0

摘要

抗体-抗原结合亲和力是治疗性抗体开发的核心:效果是由特异性结合和亲和力控制来指导的。在这里,我们提出了Graphinity,这是一个直接由抗体-抗原结构构建的等变图神经网络架构,在结合亲和力的实验变化预测上实现了高达0.87的测试Pearson相关性(ΔΔG)。然而,与以前的方法一样,我们的模型似乎在几百个可用的实验数据点上过度训练,并且性能对训练-测试截止点不具有鲁棒性。为了研究广义预测ΔΔG所需的数据量和类型,我们构建了近100万个foldx生成的和100万个Rosetta Flex ddg生成的ΔΔG值的合成数据集。我们的结果表明,目前没有足够的实验数据来准确和稳健地预测ΔΔG,更可能需要数量级。数据集大小不是唯一的考虑因素;多样性也是影响模型预测能力的重要因素。这些发现为未来的方法开发和数据收集工作提供了数据需求的下限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating the volume and diversity of data needed for generalizable antibody-antigen ΔΔG prediction.

Antibody-antigen binding affinity lies at the heart of therapeutic antibody development: efficacy is guided by specific binding and control of affinity. Here we present Graphinity, an equivariant graph neural network architecture built directly from antibody-antigen structures that achieves test Pearson's correlations of up to 0.87 on experimental change in binding affinity (ΔΔG) prediction. However, our model, like previous methods, appears to be overtraining on the few hundred experimental data points available and performance is not robust to train-test cut-offs. To investigate the amount and type of data required to generalizably predict ΔΔG, we built synthetic datasets of nearly 1 million FoldX-generated and >20,000 Rosetta Flex ddG-generated ΔΔG values. Our results indicate that there are currently insufficient experimental data to accurately and robustly predict ΔΔG, with orders of magnitude more likely needed. Dataset size is not the only consideration; diversity is also an important factor for model predictiveness. These findings provide a lower bound on data requirements to inform future method development and data collection efforts.

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CiteScore
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