Comparing receptor binding properties of SARS-CoV-2 and of SARS-CoV virus by using unsupervised machine learning models

T. T. Nguyen, D. Nguyen-Manh, Ly Nguyen Hai, Cao Cong Phuong, Hien Lai Thi Thu, Anh Phan Duc, Cuong Nguyen Tien, Agata Kranjc
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Abstract

This work continues our recent molecular dynamics investigation of the three systems of the human ACE2 receptor interacting with the viral RBDs of SARS-CoV virus and two variants of SARS-CoV-2 viruses. The simulations are extended and analyzed using  unsupervised machine learning models to give complementary descriptions of hidden features of the viral binding mechanism. Specifically, the principal component analysis (PCA) and the variational autoencoder (VAE) models are employed, both are classified as dimensionality reduction approaches with different focuses. The results support the molecular dynamics results that the two variants of SARS-CoV-2 bind stronger and more stable to the human ACE2 receptor than SARS-CoV virus does. Moreover, stronger bindings also affect the structure of the human receptor, making it fluctuate more, a sensitive feature which is hard to detect using standard analyses. Unexpectedly, it is found that the VAE model can learn and arrange randomly shuffled protein structures obtained from molecular dynamics in time order in the latent space representation.  This result potentially has promising application in computational biomolecules. One could use this VAE model to jump forward in time during a molecular dynamics simulation, and to enhance the sampling of protein configuration space.
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利用无监督机器学习模型比较 SARS-CoV-2 和 SARS-CoV 病毒的受体结合特性
这项研究延续了我们最近对人类 ACE2 受体与 SARS-CoV 病毒和两种 SARS-CoV-2 变种的病毒 RBD 相互作用的三个系统进行的分子动力学研究。模拟结果利用无监督机器学习模型进行了扩展和分析,对病毒结合机制的隐藏特征进行了补充描述。具体来说,我们采用了主成分分析(PCA)和变异自动编码器(VAE)模型,这两种模型都属于降维方法,但侧重点不同。研究结果支持分子动力学结果,即与 SARS-CoV 病毒相比,SARS-CoV-2 的两个变种与人类 ACE2 受体的结合更强、更稳定。此外,更强的结合也会影响人类受体的结构,使其波动更大,而这是标准分析难以发现的敏感特征。意想不到的是,VAE 模型可以学习并在潜空间表示中按时间顺序排列从分子动力学中获得的随机洗牌蛋白质结构。 这一结果有望应用于计算生物分子。人们可以利用这个 VAE 模型在分子动力学模拟过程中向前跳跃时间,并加强对蛋白质构型空间的采样。
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