A prediction of mutations in infectious viruses using artificial intelligence.

Won Jong Choi, Jongkeun Park, Do Young Seong, Dae Sun Chung, Dongwan Hong
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Abstract

Many subtypes of SARS-CoV-2 have emerged since its early stages, with mutations showing regional and racial differences. These mutations significantly affected the infectivity and severity of the virus. This study aimed to predict the mutations that occur during the evolution of SARS-CoV-2 and identify the key characteristics for making these predictions. We collected and organized data on the lineage, date, clade, and mutations of SARS-CoV-2 from publicly available databases and processed them to predict the mutations. In addition, we utilized various artificial intelligence models to predict newly emerging mutations and created various training sets based on clade information. Using only mutation information resulted in low performance of the learning models, whereas incorporating clade differentiation resulted in high performance in machine learning models, including XGBoost (accuracy: 0.999). However, mutations fixed in the receptor-binding motif (RBM) region of Omicron resulted in decreased predictive performance. Using these models, we predicted potential mutation positions for 24C, following the recently emerged 24A and 24B clades. We identified a mutation at position Q493 in the RBM region. Our study developed effective artificial intelligence models and characteristics for predicting new mutations in continuously evolving infectious viruses.

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利用人工智能预测传染性病毒的突变。
自早期阶段以来,SARS-CoV-2 出现了许多亚型,其变异表现出地区和种族差异。这些变异极大地影响了病毒的传染性和严重程度。本研究旨在预测 SARS-CoV-2 演变过程中出现的变异,并找出预测变异的关键特征。我们从公开的数据库中收集并整理了有关 SARS-CoV-2 世系、日期、支系和变异的数据,并对这些数据进行了处理,以预测变异。此外,我们还利用各种人工智能模型来预测新出现的突变,并根据支系信息创建了各种训练集。只使用突变信息会导致学习模型的性能低下,而加入支系分化则会导致机器学习模型(包括 XGBoost)的性能提高(准确率:0.999)。然而,固定在 Omicron 的受体结合基序(RBM)区域的突变导致预测性能下降。利用这些模型,我们按照最近出现的 24A 和 24B 支系预测了 24C 的潜在突变位置。我们在 RBM 区域的 Q493 位置发现了一个突变。我们的研究为预测不断进化的传染性病毒的新突变开发了有效的人工智能模型和特征。
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