软体分子机器和装置的理论建模展望:数据驱动方法与传统计算化学算法的融合。

IF 2.5 4区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Costantino Zazza, Nico Sanna, Stefano Borocci, Felice Grandinetti
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引用次数: 0

摘要

复杂分子机器和设备的设计代表了纳米技术、合成化学和分子工程领域最雄心勃勃的前沿之一。这些复杂的系统,受到生物机器的启发,需要精确控制原子和电子的相互作用,以实现所需的功能。理论建模在这一过程中起着至关重要的作用,为分子行为提供预测性见解,指导实验设计和优化性能。密度泛函数理论、分子中原子的量子理论与广泛采用的独特可视化方法、分子动力学模拟和量子力学/分子力学混合方法等方法为纳米技术应用中的柔性超分子聚集体的相互化学作用和构象形成的稳定性提供了分析信息。理论方法也促进了跨学科的整合,将化学、物理和材料科学联系起来,创造出具有增强性能的概念混合设备。机器学习和人工智能现在被纳入理论建模,加速了新的分子结构的发现和完善。这种数据驱动方法与传统计算化学算法的融合有望彻底改变软分子机器和设备的设计范式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Perspective on Theoretical Modeling of Soft Molecular Machines and Devices: A Fusion of Data-Driven Approaches with Traditional Computational Chemistry Algorithms.

The design of complex molecular machines and devices represents one of the most ambitious frontiers in nanotechnology, synthetic chemistry, and molecular engineering. These intricate systems, inspired by biological machines, require precise control over atomic and electronic interactions to achieve desired functionalities. Theoretical modeling plays a crucial role in this process, offering predictive insights into molecular behavior, guiding experimental design, and optimizing performance. Methods such as density functional theory, quantum theory of atoms in molecules coupled with widely adopted and distinctive visualization methods, molecular dynamics simulations, and quantum mechanical/molecular mechanical hybrid approaches provide analytical information into the stability in terms of mutual chemical interactions and conformational shaping of flexible supramolecular aggregates for nanotechnological applications. Theoretical approaches also facilitate interdisciplinary integration, bridging chemistry, physics, and materials science to create conceptually hybrid devices with enhanced performance. Machine learning and artificial intelligence are now being incorporated into theoretical modeling, accelerating the discovery and refinement of novel molecular architectures. This fusion of data-driven approaches with traditional computational chemistry algorithms is expected to revolutionize the design paradigm of soft molecular machines and devices.

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来源期刊
ChemistryOpen
ChemistryOpen CHEMISTRY, MULTIDISCIPLINARY-
CiteScore
4.80
自引率
4.30%
发文量
143
审稿时长
1 months
期刊介绍: ChemistryOpen is a multidisciplinary, gold-road open-access, international forum for the publication of outstanding Reviews, Full Papers, and Communications from all areas of chemistry and related fields. It is co-owned by 16 continental European Chemical Societies, who have banded together in the alliance called ChemPubSoc Europe for the purpose of publishing high-quality journals in the field of chemistry and its border disciplines. As some of the governments of the countries represented in ChemPubSoc Europe have strongly recommended that the research conducted with their funding is freely accessible for all readers (Open Access), ChemPubSoc Europe was concerned that no journal for which the ethical standards were monitored by a chemical society was available for such papers. ChemistryOpen fills this gap.
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