Ullah Farhan, Xiao Aobo, Ullah Shahid, Yang Na, Lei Min, Chen Liang, Wang Sheng
Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan 430030, China.
Key Laboratory of Molecular Biophysics of the Ministry of Education, Huazhong University of Science and Technology, Wuhan 430030, China.
Viruses. 2025 Jun 7;17(6):828. doi: 10.3390/v17060828.
The COVID-19 infection, caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), has evoked a worldwide pandemic. Even though vaccines have been developed on an enormous scale, but due to regular mutations in the viral gene and the emergence of new strains could pose a more significant problem for the population. Therefore, new treatments are always necessary to combat future pandemics. Utilizing an antiviral peptide as a model biomolecule, we trained a generative deep learning algorithm on a database of known antiviral peptides to design novel peptide sequences with antiviral activity. Using artificial intelligence (AI), specifically variational autoencoders (VAE) and Wasserstein autoencoders (WAE), we were able to generate a latent space plot that can be surveyed for peptides with known properties and interpolated across a predictive vector between two defined points to identify novel peptides that exhibit dose-responsive antiviral activity. Two hundred peptide sequences were generated from the trained latent space and the top peptides were subjected to a molecular docking study. The docking analysis revealed that the top four peptides (MSK-1, MSK-2, MSK-3, and MSK-4) exhibited the strongest binding affinity, with docking scores of -106.4, -126.2, -125.7, and -127.8, respectively. Molecular dynamics simulations lasting 500 ns were performed to assess their stability and binding interactions. Further analyses, including MMGBSA, RMSD, RMSF, and hydrogen bond analysis, confirmed the stability and strong binding interactions of the peptide-protein complexes, suggesting that MSK-4 is a promising therapeutic agent for further development. We believe that the peptides generated through AI and MD simulations in the current study could be potential inhibitors in natural systems that can be utilized in designing therapeutic strategies against SARS-CoV-2.
由严重急性呼吸综合征冠状病毒2(SARS-CoV-2)引起的新型冠状病毒肺炎(COVID-19)感染已引发全球大流行。尽管已经大规模研发了疫苗,但由于病毒基因的定期突变以及新毒株的出现,可能会给人群带来更严重的问题。因此,始终需要新的治疗方法来应对未来的大流行。我们以一种抗病毒肽作为模型生物分子,在已知抗病毒肽的数据库上训练了一种生成式深度学习算法,以设计具有抗病毒活性的新型肽序列。利用人工智能(AI),特别是变分自编码器(VAE)和瓦瑟斯坦自编码器(WAE),我们能够生成一个潜在空间图,可以对具有已知特性的肽进行检测,并在两个定义点之间的预测向量上进行插值,以识别具有剂量响应抗病毒活性的新型肽。从训练后的潜在空间中生成了200个肽序列,并对排名靠前的肽进行了分子对接研究。对接分析表明,排名前四位的肽(MSK-1、MSK-2、MSK-3和MSK-4)表现出最强的结合亲和力,对接分数分别为-106.4、-126.2、-125.7和-127.8。进行了持续500纳秒的分子动力学模拟,以评估它们的稳定性和结合相互作用。包括MMGBSA、RMSD、RMSF和氢键分析在内的进一步分析证实了肽-蛋白质复合物的稳定性和强结合相互作用,表明MSK-4是一种有前景的待进一步开发的治疗剂。我们相信,在本研究中通过人工智能和分子动力学模拟生成的肽可能是天然系统中的潜在抑制剂,可用于设计针对SARS-CoV-2的治疗策略。