用深度学习和溶液散射预测RNA结构和动力学。

IF 3.2 3区 生物学 Q2 BIOPHYSICS Biophysical journal Pub Date : 2024-12-25 DOI:10.1016/j.bpj.2024.12.024
Edan Patt, Scott Classen, Michal Hammel, Dina Schneidman-Duhovny
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引用次数: 0

摘要

先进的深度学习和统计方法可以预测RNA分子的结构模型。然而,rna是灵活的,在不同条件可以诱导构象变化的溶液中,描述它们的大分子构象仍然是困难的。溶液中的小角x射线散射(SAXS)是一种有效的验证结构预测的技术,通过将实验SAXS剖面与预测结构的计算结果进行比较。将SAXS图谱与RNA结构进行比较有两个主要挑战:在预测结构中缺乏稳定性和电荷中和所必需的阳离子,以及单个结构不足以代表RNA的构象可塑性。我们引入RNA的溶液构象预测器(SCOPER)来解决这些挑战。该管道将基于运动学的构象采样与创新的深度学习模型IonNet相结合,该模型旨在预测Mg2+离子结合位点。通过对14个实验数据集的基准测试验证,SCOPER通过包含Mg2+离子和构象塑性采样显着提高了SAXS剖面拟合的质量。我们观察到,单价和二价离子含量的增加导致RNA可塑性的降低。因此,仔细调整塑性和离子密度是避免过拟合实验SAXS数据的关键。SCOPER是一种有效的工具,可以准确地验证给定初始的、足够精确的结构的rna的溶液状态,并提供正确的原子模型,包括离子。
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Predicting RNA structure and dynamics with deep learning and solution scattering.

Advanced deep learning and statistical methods can predict structural models for RNA molecules. However, RNAs are flexible, and it remains difficult to describe their macromolecular conformations in solutions where varying conditions can induce conformational changes. Small-angle x-ray scattering (SAXS) in solution is an efficient technique to validate structural predictions by comparing the experimental SAXS profile with those calculated from predicted structures. There are two main challenges in comparing SAXS profiles to RNA structures: the absence of cations essential for stability and charge neutralization in predicted structures and the inadequacy of a single structure to represent RNA's conformational plasticity. We introduce a solution conformation predictor for RNA (SCOPER) to address these challenges. This pipeline integrates kinematics-based conformational sampling with the innovative deep learning model, IonNet, designed for predicting Mg2+ ion binding sites. Validated through benchmarking against 14 experimental data sets, SCOPER significantly improved the quality of SAXS profile fits by including Mg2+ ions and sampling of conformational plasticity. We observe that an increased content of monovalent and bivalent ions leads to decreased RNA plasticity. Therefore, carefully adjusting the plasticity and ion density is crucial to avoid overfitting experimental SAXS data. SCOPER is an efficient tool for accurately validating the solution state of RNAs given an initial, sufficiently accurate structure and provides the corrected atomistic model, including ions.

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来源期刊
Biophysical journal
Biophysical journal 生物-生物物理
CiteScore
6.10
自引率
5.90%
发文量
3090
审稿时长
2 months
期刊介绍: BJ publishes original articles, letters, and perspectives on important problems in modern biophysics. The papers should be written so as to be of interest to a broad community of biophysicists. BJ welcomes experimental studies that employ quantitative physical approaches for the study of biological systems, including or spanning scales from molecule to whole organism. Experimental studies of a purely descriptive or phenomenological nature, with no theoretical or mechanistic underpinning, are not appropriate for publication in BJ. Theoretical studies should offer new insights into the understanding ofexperimental results or suggest new experimentally testable hypotheses. Articles reporting significant methodological or technological advances, which have potential to open new areas of biophysical investigation, are also suitable for publication in BJ. Papers describing improvements in accuracy or speed of existing methods or extra detail within methods described previously are not suitable for BJ.
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