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Insights into the Kinetic Partitioning Folding Dynamics of the Human Telomeric G-Quadruplex from Molecular Simulations and Machine Learning

机译:从分子模拟和机器学习中洞察人体端粒型G-Quadruple的动力学分区折叠动态

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摘要

The human telomeric DNA G-quadruplex follows a kinetic partitioning folding mechanism. The underlying folding landscape potentially has many minima separated by high free-energy barriers. However, using current theoretical models to characterize this complex folding landscape has remained a challenging problem. In this study, by developing a hybrid atomistic structure-based model that merges structural information on the hybrid-1, hybrid-2, and chair-type G-quadruplex topologies, we investigated a kinetic partitioning folding process of human telomeric DNA involving three native folds. The model was validated as it reproduced the experimental observation that the hybrid-1 conformation is the major fold and the hybrid-2 conformation is kinetically more accessible. A three-step mechanism was revealed for the formation of the hybrid-1 conformation, while a two-step mechanism was demonstrated for the formation of hybrid-2 and chair-type conformations. Likewise, a class of state in which structures adopted inappropriate combinations of syn/anti guanine nucleotides was found to greatly slow down the folding process. In addition, by employing the XGBoost machine learning algorithm, three interatom distances and six dihedral angles were identified as essential internal coordinates to represent the low-dimensional folding landscape. The strategy of coupling the multibasin model and the machine learning algorithm may be useful to investigate the conformational dynamics of other multistate biomolecules.
机译:人端粒体DNA G-Quadruplex遵循动力学分配折叠机构。潜在的折叠景观可能有许多以高自由能屏障分开的最小值。然而,使用当前的理论模型来表征这种复杂的折叠景观仍然是一个具有挑战性的问题。在这项研究中,通过开发一种基于混合原子结构的模型,该模型合并了杂交-1,杂交-2和椅子型G-Quadruplex拓扑结构的结构信息,我们研究了涉及三个原生物的人端粒体DNA的动力学分配折叠过程折叠。该模型被验证,因为它再现了混合-1构象是主要折叠的实验观察,并且杂交-2构象是动力学上的动力学。揭示了一种三步机制,用于形成杂化-1构象,而对形成杂种-2和椅子型构象的形成证明了两步机制。同样地,发现了一类结构所采用的不当组合的SYN /抗鸟嘌呤核苷酸的组合,大大减慢了折叠过程。另外,通过采用XGBoost机器学习算法,将三个射线距离和六个二面角被识别为必要的内部坐标以表示低维折叠景观。耦合多碳模型和机器学习算法的策略对于研究其他多态生物分子的构象动态可能是有用的。

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    Dezhou Univ Shandong Prov Key Lab Biophys Inst Biophys Dezhou 253023 Peoples R China;

    Dezhou Univ Shandong Prov Key Lab Biophys Inst Biophys Dezhou 253023 Peoples R China;

    Nanjing Univ Natl Lab Solid State Microstruct Dept Phys Nanjing 210093 Peoples R China;

    Dezhou Univ Shandong Prov Key Lab Biophys Inst Biophys Dezhou 253023 Peoples R China;

    Dezhou Univ Shandong Prov Key Lab Biophys Inst Biophys Dezhou 253023 Peoples R China;

    Nanjing Univ Natl Lab Solid State Microstruct Dept Phys Nanjing 210093 Peoples R China;

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  • 正文语种 eng
  • 中图分类 化学键的量子力学理论;化学;
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