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CosolvKit: a Versatile Tool for Cosolvent MD Preparation and Analysis. CosolvKit:用于共溶剂 MD 制备和分析的多功能工具。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-22 DOI: 10.1021/acs.jcim.4c01398
Niccolo' Bruciaferri, Jerome Eberhardt, Manuel A Llanos, Johannes R Loeffler, Matthew Holcomb, Monica L Fernandez-Quintero, Diogo Santos-Martins, Andrew B Ward, Stefano Forli

Cosolvent molecular dynamics (MDs) are an increasingly popular form of simulations where small molecule cosolvents are added to water-solvated protein systems. These simulations can perform diverse target characterization tasks, including cryptic and allosteric pocket identification and pharmacophore profiling and supplement suites of enhanced sampling methods to explore protein conformational landscapes. The behavior of these systems is tied to the cosolvents used, so the ability to define diverse and complex mixtures is critical in dictating the outcome of the simulations. However, existing methods for preparing cosolvent simulations only support a limited number of predefined cosolvents and concentrations. Here, we present CosolvKit, a tool for the preparation and analysis of systems composed of user-defined cosolvents and concentrations. This tool is modular, supporting the creation of files for multiple MD engines, as well as direct access to OpenMM simulations, and offering access to a variety of generalizable small-molecule force fields. To the best of our knowledge, CosolvKit represents the first generalized approach for the construction of these simulations.

共溶剂分子动力学(MD)是一种日益流行的模拟形式,它将小分子共溶剂添加到水溶性蛋白质系统中。这些模拟可以执行各种目标表征任务,包括隐性和异构口袋鉴定和药效谱分析,并对增强采样方法套件进行补充,以探索蛋白质构象景观。这些系统的行为与所使用的共溶剂息息相关,因此定义多样化和复杂混合物的能力对于决定模拟结果至关重要。然而,现有的共溶剂模拟方法只能支持有限数量的预定义共溶剂和浓度。在此,我们介绍 CosolvKit,这是一种用于准备和分析由用户定义的共溶剂和浓度组成的系统的工具。该工具采用模块化设计,支持为多个 MD 引擎创建文件,也可直接访问 OpenMM 模拟,并提供各种可通用的小分子力场。据我们所知,CosolvKit 是首个用于构建这些模拟的通用方法。
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引用次数: 0
Investigating the Effect of GLU283 Protonation State on the Conformational Heterogeneity of CCR5 by Molecular Dynamics Simulations. 通过分子动力学模拟研究 GLU283 质子态对 CCR5 构象异质性的影响
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-22 DOI: 10.1021/acs.jcim.4c00682
Berna Dogan, Serdar Durdağı

CCR5 is a class A GPCR and serves as one of the coreceptors facilitating HIV-1 entry into host cells. This receptor has vital roles in the immune system and is involved in the pathogenesis of different diseases. Various studies were conducted to understand its activation mechanism, including structural studies in which inactive and active states of the receptor were determined in complex with various binding partners. These determined structures provided opportunities to perform molecular dynamics (MD) simulations and to analyze conformational changes observed in the protein structures. The atomic-level dynamic studies allow us to explore the effects of ionizable residues on the receptor. Here, our aim was to investigate the conformational changes in CCR5 when it forms a complex with either the inhibitor maraviroc (MRV), an approved anti-HIV drug, or HIV-1 envelope protein GP120, and compare these changes to the receptor's apo form. In our simulations, we considered both ionized and protonated states of ionizable binding site residue GLU2837.39 in CCR5 as the protonation state of this residue was considered ambiguously in previous studies. Our molecular simulations results suggested that in fact, the change in the protonation state of GLU2837.39 caused interaction profiles to be different between CCR5 and its binding partners, GP120 or MRV. We observed that when the protonated state of GLU2837.39 was considered in complex with the envelope protein GP120, there were substantial structural changes in CCR5, indicating that it adopts a more active-like conformation. On the other hand, CCR5 in complex with MRV always adopted an inactive conformation regardless of the protonation state. Hence, the CCR5 coreceptor displays conformational heterogeneity not only depending on its binding partner but also influenced by the protonation state of the binding site binding site residue GLU2837.39. This outcome is also in accordance with some studies showing that GP120 binding could activate signaling pathways. This outcome could also have significant implications for discovering novel CCR5 inhibitors as anti-HIV drugs using in silico methods such as molecular docking, as it may be necessary to consider the protonated state of GLU2837.39.

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引用次数: 0
Multirelational Hypergraph Representation Learning for Predicting circRNA-miRNA Associations 预测 circRNA-miRNA 关联的多关系超图表示学习
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-21 DOI: 10.1021/acs.jcim.4c01436
Wenjing Yin, Shudong Wang, Yuanyuan Zhang, Sibo Qiao, Wenhao Wu, Hengxiao Li
One of the principal functions of circular RNA (circRNA) is to participate in gene regulation by sponging microRNAs (miRNAs). Using accumulated circRNA-miRNA associations (CMAs) to construct computational models for predicting potential associations provides a crucial tool for accelerating the validation of reliable associations through traditional experiments. Nevertheless, the current prediction models are constrained in their capacity to represent the higher-order relationships of CMAs and thus require further enhancement in terms of their predictive efficacy. In order to address this issue, we propose a new model based on multirelational hypergraph representation learning (MRHRL). This model employs hypergraphs to capture various higher-order relationships among RNAs and aggregates complementary information through a view attention mechanism. Furthermore, MRHRL introduces a hyperedge-level reconstruction task, jointly optimizing the prediction and reconstruction tasks within a unified framework to uncover potential information, thereby enhancing the model’s predictive and generalization capabilities. Experiments conducted on three real-world data sets demonstrate that MRHRL achieves satisfactory results in CMAs prediction, significantly outperforming existing prediction models.
环状 RNA(circRNA)的主要功能之一是通过吸附微 RNA(miRNA)参与基因调控。利用积累的环状 RNA-miRNA 关联(CMA)构建预测潜在关联的计算模型,为通过传统实验加速验证可靠关联提供了重要工具。然而,目前的预测模型在表示 CMAs 的高阶关系方面受到限制,因此需要进一步提高其预测功效。为了解决这个问题,我们提出了一种基于多关系超图表示学习(MRHRL)的新模型。该模型利用超图捕捉 RNA 之间的各种高阶关系,并通过视图注意机制聚合互补信息。此外,MRHRL 还引入了超边级重构任务,在统一框架内联合优化预测和重构任务,挖掘潜在信息,从而增强模型的预测和泛化能力。在三个真实世界数据集上进行的实验证明,MRHRL 在 CMAs 预测方面取得了令人满意的结果,明显优于现有的预测模型。
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引用次数: 0
Multimodal Representation Learning via Graph Isomorphism Network for Toxicity Multitask Learning 通过图同构网络进行多模态表征学习,实现毒性多任务学习
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-21 DOI: 10.1021/acs.jcim.4c01061
Guishen Wang, Hui Feng, Mengyan Du, Yuncong Feng, Chen Cao
Toxicity is paramount for comprehending compound properties, particularly in the early stages of drug design. Due to the diversity and complexity of toxic effects, it became a challenge to compute compound toxicity tasks. To address this issue, we propose a multimodal representation learning model, termed multimodal graph isomorphism network (MMGIN), to address this challenge for compound toxicity multitask learning. Based on fingerprints and molecular graphs of compounds, our MMGIN model incorporates a multimodal representation learning model to acquire a comprehensive compound representation. This model adopts a two-channel structure to independently learn fingerprint representation and molecular graph representation. Subsequently, two feedforward neural networks utilize the learned multimodal compound representation to perform multitask learning, encompassing compound toxicity classification and multiple compound category classification simultaneously. To test the effectiveness of our model, we constructed a novel data set, termed the compound toxicity multitask learning (CTMTL) data set, derived from the TOXRIC data set. We compare our MMGIN model with other representative machine learning and deep learning models on the CTMTL and Tox21 data sets. The experimental results demonstrate significant advancements achieved by our MMGIN model. Furthermore, the ablation study underscores the effectiveness of the introduced fingerprints, molecular graphs, the multimodal representation learning model, and the multitask learning model, showcasing the model’s superior predictive capability and robustness.
毒性对于理解化合物特性至关重要,尤其是在药物设计的早期阶段。由于毒性效应的多样性和复杂性,计算化合物毒性任务成为一项挑战。为了解决这个问题,我们提出了一种多模态表征学习模型,称为多模态图同构网络(MMGIN),以应对化合物毒性多任务学习的挑战。基于化合物的指纹和分子图谱,我们的 MMGIN 模型结合了多模态表征学习模型,以获得全面的化合物表征。该模型采用双通道结构,独立学习指纹表征和分子图表征。随后,两个前馈神经网络利用学习到的多模态化合物表征执行多任务学习,同时进行化合物毒性分类和多种化合物类别分类。为了测试模型的有效性,我们构建了一个新的数据集,称为化合物毒性多任务学习(CTMTL)数据集,该数据集来自 TOXRIC 数据集。在 CTMTL 和 Tox21 数据集上,我们将 MMGIN 模型与其他具有代表性的机器学习和深度学习模型进行了比较。实验结果表明,我们的 MMGIN 模型取得了重大进步。此外,消融研究强调了引入的指纹、分子图谱、多模态表征学习模型和多任务学习模型的有效性,展示了该模型卓越的预测能力和鲁棒性。
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引用次数: 0
Structure and Energetics of PET-Hydrolyzing Enzyme Complexes: A Systematic Comparison from Molecular Dynamics Simulations.
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-21 DOI: 10.1021/acs.jcim.4c01369
Alessandro Berselli, Maria Cristina Menziani, Francesco Muniz-Miranda

Discovered in 2016, the enzyme PETase, secreted by bacterial Ideonella Sakaiensis 201-F6, has an excellent hydrolytic activity toward poly(ethylene terephthalate) (PET) at room temperature, while it decreases at higher temperatures due to the low thermostability. Many variants have been engineered to overcome this limitation, which hinders industrial application. In this work, we systematically compare PETase wild-type (WT) and four mutants (DuraPETase, ThermoPETase, FastPETase, and HotPETase) using standard molecular dynamics (MD) simulations and unbinding free energy calculations. In particular, we analyze the enzymes' structural characteristics and binding to a tetrameric PET chain (PET4) under two temperature conditions: T1─300 K and T2─350 K. Our results indicate that (i) PET4 forms stable complexes with the five enzymes at room temperature (∼300 K) and (ii) most of the interactions are localized close to the active site of the protein, where the W185 and Y87 residues interact with the aromatic rings of the substrate. Specifically, (iii) the W185 side-chain explores different conformations in each variant (a phenomenon known in the literature as "W185 wobbling"). This suggests that the binding pocket retains structural plasticity and flexibility among the variants, facilitating substrate recognition and localization events at moderate temperatures. Moreover, (iv) PET4 establishes aromatic interactions with the catalytic H237 residue, stabilizing the catalytic triad composed of residues S160-H237-D206, and helping the system achieve an effective configuration for the hydrolysis reaction. Conversely, (v) the binding affinity decreases at a higher temperature (∼350 K), retaining moderate interactions only for HotPETase. Finally, (vi) MD simulations of complexes formed with poly(ethylene-2,5-furan dicarboxylate) (PEF) show no persistent interactions, suggesting that these enzymes are not yet optimized for binding this alternative semiaromatic plastic polymer. Our study offers valuable insights into the structural stability of these enzymes and the molecular determinants driving PET binding onto their surfaces, sheds light on the mechanistic steps that precede the onset of hydrolysis, and provides a foundation for future enzyme optimization.

2016年发现的由Ideonella Sakaiensis 201-F6细菌分泌的PET酶在室温下对聚对苯二甲酸乙二醇酯(PET)具有极佳的水解活性,但由于热稳定性较低,其活性在较高温度下会降低。为了克服这一阻碍工业应用的局限性,人们设计了许多变体。在这项工作中,我们利用标准分子动力学(MD)模拟和解结合自由能计算,系统地比较了 PET 酶野生型(WT)和四种突变体(DuraPETase、ThermoPETase、FastPETase 和 HotPETase)。我们特别分析了酶的结构特征以及在两种温度条件下与四聚 PET 链(PET4)的结合情况:我们的结果表明:(i) PET4 在室温(∼300 K)下与五种酶形成稳定的复合物;(ii) 大部分相互作用位于靠近蛋白质活性位点的位置,其中 W185 和 Y87 残基与底物的芳香环相互作用。具体地说,(iii) W185 侧链在每个变体中探索不同的构象(文献中称之为 "W185 晃动 "现象)。这表明结合口袋在不同变体中保持了结构可塑性和灵活性,有利于在适度温度下识别底物和定位。此外,(iv) PET4 与催化残基 H237 建立了芳香族相互作用,稳定了由残基 S160-H237-D206 组成的催化三元组,帮助系统实现水解反应的有效构型。相反,(v) 在较高温度(350 K)下,结合亲和力下降,只有 HotPETase 保留了中等程度的相互作用。最后,(vi) 与聚(乙烯-2,5-呋喃二甲酸酯)(PEF)形成的复合物的 MD 模拟显示没有持续的相互作用,这表明这些酶尚未对结合这种替代性半芳香塑料聚合物进行优化。我们的研究为了解这些酶的结构稳定性以及促使 PET 与其表面结合的分子决定因素提供了宝贵的见解,揭示了水解开始前的机理步骤,并为未来的酶优化奠定了基础。
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引用次数: 0
Ramachandran-like Conformational Space for DNA DNA 的拉马钱德兰式构象空间
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-18 DOI: 10.1021/acs.jcim.4c01294
Gabriela da Rosa, Leandro Grille, Pablo D. Dans
DNA’s ability to exist in a wide variety of structural forms, subforms, and secondary motifs is fundamental to numerous biological processes and has driven the development of biotechnological applications. Major determinants of DNA flexibility are the multiple torsional degrees of freedom around the phosphodiester backbone. This high complexity can be rationalized by using two pseudotorsional angles linking atoms P and C4′, from which Ramachandran-like plots can be built. In this contribution, we explore the distribution of η (eta: C4′i–1-Pi-C4′i-Pi+1) and θ (theta: Pi-C4′i-Pi+1-C4′i+1) angles in known experimental structures retrieved from the Protein Data Bank (PDB), subdividing the conformational space into different datasets. After the removal of the canonical/helical conformations typical of the B-form, we find the existence of a conformational map with clearly permitted and forbidden regions. Some of these regions are populated with specific DNA forms, like Z- or A-DNA, or by specific secondary motifs, like G-quadruplexes and junctions. We evaluated the sequence dependency and energy relationship among the high-density regions identified in the η–θ space. Furthermore, we analyzed the effect produced by proteins and cations when bound to DNA, finding that specific proteins produce some nonhelical conformations, while other regions appear to be stabilized by divalent cations.
DNA 能够以各种结构形式、亚形式和次级图案存在,这对许多生物过程至关重要,并推动了生物技术应用的发展。DNA 灵活性的主要决定因素是围绕磷酸二酯骨架的多个扭转自由度。利用连接原子 P 和 C4′ 的两个假扭角可以合理解释这种高度复杂性,并由此建立类似拉马钱德兰的图谱。在本文中,我们探讨了从蛋白质数据库(PDB)检索到的已知实验结构中的η角(eta:C4′i-1-Pi-C4′i-Pi+1)和θ角(θ:Pi-C4′i-Pi+1-C4′i+1)的分布,将构象空间细分为不同的数据集。在去除典型的 B 型典型/螺旋构象后,我们发现构象图中存在明显的允许区域和禁止区域。其中一些区域存在特定的 DNA 形式,如 Z 型或 A 型 DNA,或特定的次级图案,如 G 型四联体和连接。我们评估了在η-θ空间中发现的高密度区域之间的序列依赖性和能量关系。此外,我们还分析了蛋白质和阳离子与 DNA 结合时产生的影响,发现特定蛋白质会产生一些非螺旋构象,而其他区域似乎会被二价阳离子稳定。
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引用次数: 0
Exploration of Cryptic Pockets Using Enhanced Sampling Along Normal Modes: A Case Study of KRAS G12D 利用沿正常模式的增强采样探索隐匿口袋:KRAS G12D 案例研究
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-17 DOI: 10.1021/acs.jcim.4c01435
Neha Vithani, She Zhang, Jeffrey P. Thompson, Lara A. Patel, Alex Demidov, Junchao Xia, Alexander Balaeff, Ahmet Mentes, Yelena A. Arnautova, Anna Kohlmann, J. David Lawson, Anthony Nicholls, A. Geoffrey Skillman, David N. LeBard
Identification of cryptic pockets has the potential to open new therapeutic opportunities by discovering ligand binding sites that remain hidden in static apo structures of a target protein. Moreover, allosteric cryptic pockets can become valuable for designing target-selective ligands when the natural ligand binding sites are conserved in variants of a protein. For example, before an allosteric cryptic pocket was discovered, KRAS was considered undruggable due to its smooth surface and conservation of the GDP/GTP binding pocket across the wild type and oncogenic isoforms. Recent identification of the Switch-II cryptic pocket in the KRASG12C mutant and FDA approval of anticancer drugs targeting this site underscores the importance of cryptic pockets in solving pharmaceutical challenges. Here, we present a newly developed approach for the exploration of cryptic pockets using weighted ensemble molecular dynamics simulations with inherent normal modes as progress coordinates applied to the wild type KRAS and the G12D mutant. We performed extensive all-atomic simulations (>400 μs) with and without several cosolvents (xenon, ethanol, benzene), and analyzed trajectories using three distinct methods to search for potential binding pockets. These methods have been applied as a proof-of-concept to KRAS and have shown they can predict known cryptic binding sites. Furthermore, we performed ligand-binding simulations of a known inhibitor (MRTX1133) to shed light on the nature of cryptic pockets in KRASG12D and the role of conformational selection vs induced-fit mechanism in the formation of these cryptic pockets.
通过发现隐藏在目标蛋白质静态apo结构中的配体结合位点,隐口袋的鉴定有可能带来新的治疗机会。此外,当天然配体结合位点在蛋白质的变体中保持不变时,异位隐窝就有可能成为设计靶向选择性配体的重要依据。例如,在发现异位隐窝之前,KRAS 因其表面光滑以及野生型和致癌异构体中 GDP/GTP 结合隐窝的保留而被认为是不可药用的。最近在 KRASG12C 突变体中发现了 Switch-II 隐匿口袋,FDA 批准了针对该位点的抗癌药物,这凸显了隐匿口袋在解决制药难题方面的重要性。在这里,我们介绍了一种新开发的方法,即利用加权集合分子动力学模拟探索隐窝,并将固有的正态模式作为进展坐标,应用于野生型 KRAS 和 G12D 突变体。我们在使用和不使用多种共溶剂(氙、乙醇、苯)的情况下进行了大量的全原子模拟(400 μs),并使用三种不同的方法对轨迹进行了分析,以寻找潜在的结合口袋。这些方法已作为概念验证应用于 KRAS,结果表明它们可以预测已知的隐蔽结合位点。此外,我们还对已知抑制剂(MRTX1133)进行了配体结合模拟,以揭示 KRASG12D 中隐蔽口袋的性质,以及构象选择与诱导拟合机制在这些隐蔽口袋的形成中所起的作用。
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引用次数: 0
Navigating Ultralarge Virtual Chemical Spaces with Product-of-Experts Chemical Language Models 利用专家产品化学语言模型导航超大型虚拟化学空间
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-16 DOI: 10.1021/acs.jcim.4c01214
Shuya Nakata, Yoshiharu Mori, Shigenori Tanaka
Ultralarge virtual chemical spaces have emerged as a valuable resource for drug discovery, providing access to billions of make-on-demand compounds with high synthetic success rates. Chemical language models can potentially accelerate the exploration of these vast spaces through direct compound generation. However, existing models are not designed to navigate specific virtual chemical spaces and often overlook synthetic accessibility. To address this gap, we introduce product-of-experts (PoE) chemical language models, a modular and scalable approach to navigating ultralarge virtual chemical spaces. This method allows for controlled compound generation within a desired chemical space by combining a prior model pretrained on the target space with expert and anti-expert models fine-tuned using external property-specific data sets. We demonstrate that the PoE chemical language model can generate compounds with desirable properties, such as those that favorably dock to dopamine receptor D2 (DRD2) and are predicted to cross the blood–brain barrier (BBB), while ensuring that the majority of generated compounds are present within the target chemical space. Our results highlight the potential of chemical language models for navigating ultralarge virtual chemical spaces, and we anticipate that this study will motivate further research in this direction. The source code and data are freely available at https://github.com/shuyana/poeclm.
超大虚拟化学空间已成为药物发现的宝贵资源,可提供数十亿种按需制造的化合物,且合成成功率高。化学语言模型可以通过直接生成化合物来加速对这些巨大空间的探索。然而,现有的模型并不是为浏览特定的虚拟化学空间而设计的,往往忽略了合成的可及性。为了弥补这一不足,我们引入了专家产品(PoE)化学语言模型,这是一种导航超大虚拟化学空间的模块化可扩展方法。这种方法通过将在目标空间预训练的先验模型与利用外部特定属性数据集微调的专家和反专家模型相结合,在所需的化学空间内可控地生成化合物。我们证明,PoE 化学语言模型可以生成具有理想特性的化合物,如能与多巴胺受体 D2(DRD2)良好对接并预测能穿过血脑屏障(BBB)的化合物,同时确保生成的大多数化合物都在目标化学空间内。我们的研究结果凸显了化学语言模型在导航超大虚拟化学空间方面的潜力,我们预计这项研究将推动这方面的进一步研究。源代码和数据可在 https://github.com/shuyana/poeclm 免费获取。
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引用次数: 0
Analysis of Glycan Recognition by Concanavalin A Using Absolute Binding Free Energy Calculations 利用绝对结合自由能计算分析糖蛋白 A 的识别能力
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-16 DOI: 10.1021/acs.jcim.4c01088
Sondos Musleh, Irfan Alibay, Philip C. Biggin, Richard A. Bryce
Carbohydrates are key biological mediators of molecular recognition and signaling processes. In this case study, we explore the ability of absolute binding free energy (ABFE) calculations to predict the affinities of a set of five related carbohydrate ligands for the lectin protein, concanavalin A, ranging from 27-atom monosaccharides to a 120-atom complex-type N-linked glycan core pentasaccharide. ABFE calculations quantitatively rank and estimate the affinity of the ligands in relation to microcalorimetry, with a mean signed error in the binding free energy of −0.63 ± 0.04 kcal/mol. Consequently, the diminished binding efficiencies of the larger carbohydrate ligands are closely reproduced: the ligand efficiency values from isothermal titration calorimetry for the glycan core pentasaccharide and its constituent trisaccharide and monosaccharide compounds are respectively −0.14, −0.22, and −0.41 kcal/mol per heavy atom. ABFE calculations predict these ligand efficiencies to be −0.14 ± 0.02, −0.24 ± 0.03, and −0.46 ± 0.06 kcal/mol per heavy atom, respectively. Consequently, the ABFE method correctly identifies the high affinity of the key anchoring mannose residue and the negligible contribution to binding of both β-GlcNAc arms of the pentasaccharide. While challenges remain in sampling the conformation and interactions of these polar, flexible, and weakly bound ligands, we nevertheless find that the ABFE method performs well for this lectin system. The approach shows promise as a quantitative tool for predicting and deconvoluting carbohydrate–protein interactions, with potential application to design of therapeutics, vaccines, and diagnostics.
碳水化合物是分子识别和信号传递过程的关键生物媒介。在本案例研究中,我们探讨了绝对结合自由能(ABFE)计算预测一组五种相关碳水化合物配体对凝集素蛋白凝集素 A 的亲和力的能力,这些配体从 27 个原子的单糖到 120 个原子的复合型 N-连接聚糖核心五糖不等。ABFE 计算对配体的亲和力进行了定量排序和估算,与微量热测定法相比,结合自由能的平均符号误差为 -0.63 ± 0.04 kcal/mol。因此,较大碳水化合物配体的较低结合效率得到了很好的再现:等温滴定量热法得出的糖核五糖及其组成的三糖和单糖化合物的配体效率值分别为-0.14、-0.22 和 -0.41千卡/摩尔/重原子。ABFE 计算预测这些配体效率分别为-0.14 ± 0.02、-0.24 ± 0.03 和 -0.46 ± 0.06 kcal/mol/重原子。因此,ABFE 方法正确识别了关键锚定甘露糖残基的高亲和力,以及五糖两个 β-GlcNAc 臂对结合的微不足道的贡献。虽然对这些极性、柔性和弱结合配体的构象和相互作用进行取样仍存在挑战,但我们发现 ABFE 方法在该凝集素系统中表现良好。这种方法有望成为预测和分解碳水化合物-蛋白质相互作用的定量工具,并有可能应用于治疗、疫苗和诊断的设计。
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引用次数: 0
Validating Small-Molecule Force Fields for Macrocyclic Compounds Using NMR Data in Different Solvents 利用不同溶剂中的核磁共振数据验证大环化合物的小分子力场
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-15 DOI: 10.1021/acs.jcim.4c01120
Franz Waibl, Fabio Casagrande, Fabian Dey, Sereina Riniker
Macrocycles are a promising class of compounds as therapeutics for difficult drug targets due to a favorable combination of properties: They often exhibit improved binding affinity compared to their linear counterparts due to their reduced conformational flexibility, while still being able to adapt to environments of different polarity. To assist in the rational design of macrocyclic drugs, there is need for computational methods that can accurately predict conformational ensembles of macrocycles in different environments. Molecular dynamics (MD) simulations remain one of the most accurate methods to predict ensembles quantitatively, although the accuracy is governed by the underlying force field. In this work, we benchmark four different force fields for their application to macrocycles by performing replica exchange with solute tempering (REST2) simulations of 11 macrocyclic compounds and comparing the obtained conformational ensembles to nuclear Overhauser effect (NOE) upper distance bounds from NMR experiments. Especially, the modern force fields OpenFF 2.0 and XFF yield good results, outperforming force fields like GAFF2 and OPLS/AA. We conclude that REST2 in combination with modern force fields can often produce accurate ensembles of macrocyclic compounds. However, we also highlight examples for which all examined force fields fail to produce ensembles that fulfill the experimental constraints.
大环化合物具有多种有利特性,是一类很有前途的化合物,可用于治疗难治的药物靶点:与线性化合物相比,大环化合物的构象灵活性降低,因此通常具有更强的结合亲和力,同时还能适应不同极性的环境。为了帮助合理设计大环药物,需要能够准确预测不同环境中大环构象组合的计算方法。分子动力学(MD)模拟仍然是定量预测构象组合的最准确方法之一,不过其准确性受制于底层力场。在这项工作中,我们对 11 种大环化合物进行了溶质调温复制交换(REST2)模拟,并将得到的构象组合与核磁共振实验得出的核欧豪瑟效应(NOE)上限值进行了比较,从而对四种不同力场在大环化合物中的应用进行了基准测试。特别是现代力场 OpenFF 2.0 和 XFF 取得了良好的结果,优于 GAFF2 和 OPLS/AA 等力场。我们的结论是,REST2 与现代力场的结合通常可以产生精确的大环化合物集合。不过,我们也强调了一些例子,在这些例子中,所有考察过的力场都无法产生符合实验约束条件的集合。
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引用次数: 0
期刊
Journal of Chemical Information and Modeling
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