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基于人工智能的结构预测助力人类核孔的综合结构分析。

AI-based structure prediction empowers integrative structural analysis of human nuclear pores.

作者信息

Mosalaganti Shyamal, Obarska-Kosinska Agnieszka, Siggel Marc, Taniguchi Reiya, Turoňová Beata, Zimmerli Christian E, Buczak Katarzyna, Schmidt Florian H, Margiotta Erica, Mackmull Marie-Therese, Hagen Wim J H, Hummer Gerhard, Kosinski Jan, Beck Martin

机构信息

Department of Molecular Sociology, Max Planck Institute of Biophysics, 60438 Frankfurt am Main, Germany.

Structural and Computational Biology Unit, European Molecular Biology Laboratory, 69117 Heidelberg, Germany.

出版信息

Science. 2022 Jun 10;376(6598):eabm9506. doi: 10.1126/science.abm9506.

Abstract

INTRODUCTION The eukaryotic nucleus pro-tects the genome and is enclosed by the two membranes of the nuclear envelope. Nuclear pore complexes (NPCs) perforate the nuclear envelope to facilitate nucleocytoplasmic transport. With a molecular weight of ∼120 MDa, the human NPC is one of the larg-est protein complexes. Its ~1000 proteins are taken in multiple copies from a set of about 30 distinct nucleoporins (NUPs). They can be roughly categorized into two classes. Scaf-fold NUPs contain folded domains and form a cylindrical scaffold architecture around a central channel. Intrinsically disordered NUPs line the scaffold and extend into the central channel, where they interact with cargo complexes. The NPC architecture is highly dynamic. It responds to changes in nuclear envelope tension with conforma-tional breathing that manifests in dilation and constriction movements. Elucidating the scaffold architecture, ultimately at atomic resolution, will be important for gaining a more precise understanding of NPC function and dynamics but imposes a substantial chal-lenge for structural biologists. RATIONALE Considerable progress has been made toward this goal by a joint effort in the field. A synergistic combination of complementary approaches has turned out to be critical. In situ structural biology techniques were used to reveal the overall layout of the NPC scaffold that defines the spatial reference for molecular modeling. High-resolution structures of many NUPs were determined in vitro. Proteomic analysis and extensive biochemical work unraveled the interaction network of NUPs. Integra-tive modeling has been used to combine the different types of data, resulting in a rough outline of the NPC scaffold. Previous struc-tural models of the human NPC, however, were patchy and limited in accuracy owing to several challenges: (i) Many of the high-resolution structures of individual NUPs have been solved from distantly related species and, consequently, do not comprehensively cover their human counterparts. (ii) The scaf-fold is interconnected by a set of intrinsically disordered linker NUPs that are not straight-forwardly accessible to common structural biology techniques. (iii) The NPC scaffold intimately embraces the fused inner and outer nuclear membranes in a distinctive topol-ogy and cannot be studied in isolation. (iv) The conformational dynamics of scaffold NUPs limits the resolution achievable in structure determination. RESULTS In this study, we used artificial intelligence (AI)-based prediction to generate an exten-sive repertoire of structural models of human NUPs and their subcomplexes. The resulting models cover various domains and interfaces that so far remained structurally uncharac-terized. Benchmarking against previous and unpublished x-ray and cryo-electron micros-copy structures revealed unprecedented accu-racy. We obtained well-resolved cryo-electron tomographic maps of both the constricted and dilated conformational states of the hu-man NPC. Using integrative modeling, we fit-ted the structural models of individual NUPs into the cryo-electron microscopy maps. We explicitly included several linker NUPs and traced their trajectory through the NPC scaf-fold. We elucidated in great detail how mem-brane-associated and transmembrane NUPs are distributed across the fusion topology of both nuclear membranes. The resulting architectural model increases the structural coverage of the human NPC scaffold by about twofold. We extensively validated our model against both earlier and new experimental data. The completeness of our model has enabled microsecond-long coarse-grained molecular dynamics simulations of the NPC scaffold within an explicit membrane en-vironment and solvent. These simulations reveal that the NPC scaffold prevents the constriction of the otherwise stable double-membrane fusion pore to small diameters in the absence of membrane tension. CONCLUSION Our 70-MDa atomically re-solved model covers >90% of the human NPC scaffold. It captures conforma-tional changes that occur during dilation and constriction. It also reveals the precise anchoring sites for intrinsically disordered NUPs, the identification of which is a prerequisite for a complete and dy-namic model of the NPC. Our study exempli-fies how AI-based structure prediction may accelerate the elucidation of subcellular ar-chitecture at atomic resolution. [Figure: see text].

摘要

引言 真核细胞核保护基因组,被核膜的两层膜所包围。核孔复合体(NPC)贯穿核膜以促进核质运输。人类NPC分子量约为120 MDa,是最大的蛋白质复合体之一。其约1000种蛋白质由一组约30种不同的核孔蛋白(NUP)以多个拷贝形式组成。它们大致可分为两类。支架NUP包含折叠结构域,围绕中央通道形成圆柱形支架结构。内在无序的NUP排列在支架周围并延伸到中央通道,在那里它们与货物复合体相互作用。NPC结构高度动态。它通过表现为扩张和收缩运动的构象呼吸来响应核膜张力的变化。最终以原子分辨率阐明支架结构,对于更精确地理解NPC功能和动态至关重要,但对结构生物学家来说是一项重大挑战。原理 通过该领域的共同努力,在这一目标上已经取得了相当大的进展。互补方法的协同组合已被证明至关重要。原位结构生物学技术用于揭示NPC支架的整体布局,为分子建模定义空间参考。许多NUP的高分辨率结构在体外被确定。蛋白质组学分析和广泛的生化工作揭示了NUP的相互作用网络。整合建模已被用于结合不同类型的数据,从而得到NPC支架的大致轮廓。然而,由于几个挑战,以前人类NPC的结构模型是不完整的且准确性有限:(i)许多单个NUP的高分辨率结构是从远缘物种中解析出来的,因此不能全面涵盖其人类对应物。(ii)支架由一组内在无序的连接NUP相互连接,这些连接NUP对于常见的结构生物学技术来说不容易接近。(iii)NPC支架以独特的拓扑结构紧密包围融合的内核膜和外核膜,无法单独研究。(iv)支架NUP的构象动力学限制了结构测定中可达到的分辨率。结果 在本研究中,我们使用基于人工智能(AI)的预测来生成人类NUP及其亚复合体的大量结构模型。所得模型涵盖了迄今为止在结构上尚未表征的各种结构域和界面。与以前和未发表的X射线和冷冻电子显微镜结构进行基准测试,显示出前所未有的准确性。我们获得了人类NPC收缩和扩张构象状态的高分辨率冷冻电子断层扫描图。使用整合建模,我们将单个NUP的结构模型拟合到冷冻电子显微镜图中。我们明确纳入了几个连接NUP,并追踪它们在NPC支架中的轨迹。我们详细阐明了与膜相关和跨膜的NUP如何分布在两个核膜的融合拓扑结构上。所得的结构模型使人类NPC支架的结构覆盖率提高了约两倍。我们根据早期和新的实验数据广泛验证了我们的模型。我们模型的完整性使得能够在明确的膜环境和溶剂中对NPC支架进行微秒级的粗粒度分子动力学模拟。这些模拟表明,在没有膜张力的情况下,NPC支架可防止原本稳定的双膜融合孔收缩到小直径。结论 我们70 MDa的原子分辨率模型涵盖了人类NPC支架的90%以上。它捕捉了扩张和收缩过程中发生的构象变化。它还揭示了内在无序NUP的精确锚定位点,其识别是完整和动态的NPC模型的先决条件。我们的研究例证了基于AI的结构预测如何可能加速原子分辨率下亚细胞结构的阐明。[图:见正文]

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