Kim Min Chan, Jung Hye Ji, Jang Seong Sik, Thi Lo Van, Kim Hye Kwon
Department of Biological Sciences and Biotechnology, College of Natural Science, Chungbuk National University, Cheongju, Republic of Korea.
Comput Struct Biotechnol J. 2025 Aug 14;27:3663-3672. doi: 10.1016/j.csbj.2025.08.012. eCollection 2025.
Viruses exhibit rapid evolutionary dynamics through random mutations and selection, driving their adaptation and cross-species transmission. To investigate these mechanisms, we designed a simulation framework with a graphical user interface (GUI), implementing random mutation and similarity-based selection. This system models the evolution of a user-supplied viral sequence toward a designated target by recursively selecting the top-N amino acid sequences with the greatest similarity in each replication cycle. Simulations tracking the evolution of SARS-CoV-2 Wuhan-Hu-1 toward the Omicron variant (BA.1) displayed plateau-like similarity trajectories, where increased substitution rates resulted in a more rapid attainment of the plateau stage. The model-generated intermediate spike sequences exhibited similarities to real-world evolutionary patterns, including B, B.1.2, B.1.160, B.1.398, B.1.1.529, and BA.1 lineages. Additionally, the approach replicated the divergent evolutionary outcomes of PEDV subjected to distinct selection regimes (with and without trypsin treatment). While the model is simplified, it provides a means to explore plausible viral evolutionary paths and may contribute to identifying potential intermediates relevant to zoonotic spillover. Integrating features such as recombination, population-level effects, and further biological constraints could substantially enhance its predictive power in future iterations.
病毒通过随机突变和选择展现出快速的进化动态,推动其适应性和跨物种传播。为了研究这些机制,我们设计了一个带有图形用户界面(GUI)的模拟框架,实现随机突变和基于相似度的选择。该系统通过在每个复制周期递归选择相似度最高的前N个氨基酸序列,模拟用户提供的病毒序列向指定目标的进化。追踪严重急性呼吸综合征冠状病毒2(SARS-CoV-2)武汉-胡-1株向奥密克戎变种(BA.1)进化的模拟显示出类似平台的相似度轨迹,其中替换率增加导致更快达到平台期。模型生成的中间刺突序列与现实世界的进化模式相似,包括B、B.1.2、B.1.160、B.1.398、B.1.1.529和BA.1谱系。此外,该方法重现了猪流行性腹泻病毒(PEDV)在不同选择条件(有和没有胰蛋白酶处理)下的不同进化结果。虽然该模型较为简化,但它提供了一种探索合理病毒进化路径的方法,可能有助于识别与动物源性溢出相关的潜在中间毒株。整合重组、群体水平效应和进一步的生物学限制等特征,可能会在未来的迭代中大幅提高其预测能力。