CovTransformer: A transformer model for SARS-CoV-2 lineage frequency forecasting.

IF 5.5 2区 医学 Q1 VIROLOGY
Virus Evolution Pub Date : 2024-11-14 eCollection Date: 2024-01-01 DOI:10.1093/ve/veae086
Yinan Feng, Emma E Goldberg, Michael Kupperman, Xitong Zhang, Youzuo Lin, Ruian Ke
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Abstract

With hundreds of SARS-CoV-2 lineages circulating in the global population, there is an ongoing need for predicting and forecasting lineage frequencies and thus identifying rapidly expanding lineages. Accurate prediction would allow for more focused experimental efforts to understand pathogenicity of future dominating lineages and characterize the extent of their immune escape. Here, we first show that the inherent noise and biases in lineage frequency data make a commonly-used regression-based approach unreliable. To address this weakness, we constructed a machine learning model for SARS-CoV-2 lineage frequency forecasting, called CovTransformer, based on the transformer architecture. We designed our model to navigate challenges such as a limited amount of data with high levels of noise and bias. We first trained and tested the model using data from the UK and the USA, and then tested the generalization ability of the model to many other countries and US states. Remarkably, the trained model makes accurate predictions two months into the future with high levels of accuracy both globally (in 31 countries with high levels of sequencing effort) and at the US-state level. Our model performed substantially better than a widely used forecasting tool, the multinomial regression model implemented in Nextstrain, demonstrating its utility in SARS-CoV-2 monitoring. Assuming a newly emerged lineage is identified and assigned, our test using retrospective data shows that our model is able to identify the dominating lineages 7 weeks in advance on average before they became dominant. Overall, our work demonstrates that transformer models represent a promising approach for SARS-CoV-2 forecasting and pandemic monitoring.

CovTransformer:用于SARS-CoV-2谱系频率预测的变压器模型。
随着数百种SARS-CoV-2谱系在全球人群中传播,持续需要预测和预测谱系频率,从而识别迅速扩大的谱系。准确的预测将允许更集中的实验努力,以了解未来的主要谱系的致病性和表征其免疫逃逸的程度。在这里,我们首先证明了谱系频率数据中固有的噪声和偏差使得常用的基于回归的方法不可靠。为了解决这一弱点,我们基于变压器架构构建了一个用于SARS-CoV-2谱系频率预测的机器学习模型,称为CovTransformer。我们设计的模型是为了应对一些挑战,比如数据量有限,噪音和偏差程度高。我们首先使用英国和美国的数据对模型进行训练和测试,然后测试模型在其他许多国家和美国各州的泛化能力。值得注意的是,经过训练的模型在全球(在31个国家进行了高水平的测序工作)和美国州一级都能准确预测未来两个月的情况。我们的模型比Nextstrain中实施的多项回归模型这一广泛使用的预测工具表现得更好,证明了其在SARS-CoV-2监测中的实用性。假设一个新出现的谱系被识别和分配,我们使用回顾性数据的测试表明,我们的模型能够在它们成为主导谱系之前平均提前7周识别主导谱系。总体而言,我们的工作表明,变压器模型代表了一种有希望的SARS-CoV-2预测和大流行监测方法。
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来源期刊
Virus Evolution
Virus Evolution Immunology and Microbiology-Microbiology
CiteScore
10.50
自引率
5.70%
发文量
108
审稿时长
14 weeks
期刊介绍: Virus Evolution is a new Open Access journal focusing on the long-term evolution of viruses, viruses as a model system for studying evolutionary processes, viral molecular epidemiology and environmental virology. The aim of the journal is to provide a forum for original research papers, reviews, commentaries and a venue for in-depth discussion on the topics relevant to virus evolution.
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