AI-integrated network for RNA complex structure and dynamic prediction.

IF 2.9 Q2 BIOPHYSICS Biophysics reviews Pub Date : 2024-11-05 eCollection Date: 2024-12-01 DOI:10.1063/5.0237319
Haoquan Liu, Chen Zhuo, Jiaming Gao, Chengwei Zeng, Yunjie Zhao
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Abstract

RNA complexes are essential components in many cellular processes. The functions of these complexes are linked to their tertiary structures, which are shaped by detailed interface information, such as binding sites, interface contact, and dynamic conformational changes. Network-based approaches have been widely used to analyze RNA complex structures. With their roots in the graph theory, these methods have a long history of providing insight into the static and dynamic properties of RNA molecules. These approaches have been effective in identifying functional binding sites and analyzing the dynamic behavior of RNA complexes. Recently, the advent of artificial intelligence (AI) has brought transformative changes to the field. These technologies have been increasingly applied to studying RNA complex structures, providing new avenues for understanding the complex interactions within RNA complexes. By integrating AI with traditional network analysis methods, researchers can build more accurate models of RNA complex structures, predict their dynamic behaviors, and even design RNA-based inhibitors. In this review, we introduce the integration of network-based methodologies with AI techniques to enhance the understanding of RNA complex structures. We examine how these advanced computational tools can be used to model and analyze the detailed interface information and dynamic behaviors of RNA molecules. Additionally, we explore the potential future directions of how AI-integrated networks can aid in the modeling and analyzing RNA complex structures.

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用于 RNA 复杂结构和动态预测的人工智能集成网络。
RNA 复合物是许多细胞过程的重要组成部分。这些复合体的功能与其三级结构有关,而三级结构是由详细的界面信息(如结合位点、界面接触和动态构象变化)形成的。基于网络的方法已被广泛用于分析 RNA 复合物结构。这些方法源于图论,在深入了解 RNA 分子的静态和动态特性方面有着悠久的历史。这些方法在识别功能结合位点和分析 RNA 复合物的动态行为方面非常有效。最近,人工智能(AI)的出现给这一领域带来了变革。这些技术越来越多地被应用于研究 RNA 复合物结构,为了解 RNA 复合物内部复杂的相互作用提供了新的途径。通过将人工智能与传统的网络分析方法相结合,研究人员可以建立更精确的 RNA 复合物结构模型,预测其动态行为,甚至设计基于 RNA 的抑制剂。在这篇综述中,我们将介绍如何将基于网络的方法与人工智能技术相结合,以加深对 RNA 复合物结构的理解。我们将探讨如何利用这些先进的计算工具来建模和分析 RNA 分子的详细界面信息和动态行为。此外,我们还探讨了人工智能集成网络如何帮助 RNA 复杂结构建模和分析的潜在未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
3.60
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