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In Silico Design of Novel RGS2–Galpha-q Interaction Inhibitors with Anticancer Activity 具有抗癌活性的新型 RGS2-Galpha-q 相互作用抑制剂的硅学设计
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-14 DOI: 10.1021/acs.jcim.4c00932
Adam Bair, Natalie Printy, So Hee Choi, Joshua Wilkinson, Joseph O’Brien, Brian Myers, David Roman, Tarek M. Mahfouz
Regulators of G-protein signaling (RGS) are a family of approximately 30 proteins that bind to and deactivate the alpha subunits of G-proteins (Gα) by accelerating their GTP hydrolysis rates, which terminates G-protein coupled receptor (GPCR) signaling. Thus, RGS proteins are essential in regulating GPCR signaling, and most members are implicated as critical nodes in human diseases such as hypertension, depression, and others. Regulator of G-protein signaling 2 (RGS2), a member of the R4 family of RGS proteins, is overexpressed in many solid breast cancers, and its levels in prostate cancer significantly correlate with the metastatic stage and poor prognosis. We sought to develop RGS2 inhibitors as potential chemotherapeutic agents utilizing structure-based drug design approaches. Available structures of the RGS2-Gα complex were used to extract a pharmacophore model for searching chemical databases. Docking of identified hits to RGS2 as well as other RGS structures was used to screen the hits for potent and selective RGS2 inhibitors. Whole cell assays showed the top 10 ranking compounds, AJ-1–AJ-10, to inhibit RGS2–Gαq interactions. Differential scanning fluorimetry showed AJ-3 to bind RGS2 but not Gαq. All 10 compounds inhibited the growth of several RGS2 expressing cancers in cell culture assays. In addition, AJ-3 inhibited the migration of LNCaP prostate cancer cells in wound healing assays. This is the first group of RGS2 inhibitors identified by structure-based approaches and that show anticancer activity. These results highlight the potential RGS2 inhibitors have to be a new class of chemotherapeutic agents.
G 蛋白信号转导调节蛋白(RGS)是一个由大约 30 种蛋白组成的家族,它们通过加快 GTP 的水解速度与 G 蛋白(Gα)的α亚基结合并使其失活,从而终止 G 蛋白偶联受体(GPCR)的信号转导。因此,RGS 蛋白在调节 GPCR 信号转导方面至关重要,其大多数成员被认为是高血压、抑郁症等人类疾病的关键节点。G 蛋白信号转导调节器 2(RGS2)是 RGS 蛋白 R4 家族的一个成员,在许多实体乳腺癌中过表达,而在前列腺癌中其水平与转移期和不良预后显著相关。我们试图利用基于结构的药物设计方法开发 RGS2 抑制剂,作为潜在的化疗药物。我们利用 RGS2-Gα 复合物的现有结构提取了一个药理模型,用于搜索化学数据库。对已确定的 RGS2 和其他 RGS 结构进行对接,筛选出强效和选择性的 RGS2 抑制剂。全细胞测定显示,排名前 10 位的化合物 AJ-1-AJ-10 能够抑制 RGS2-Gαq 的相互作用。差示扫描荧光测定法显示,AJ-3 能与 RGS2 结合,但不能与 Gαq 结合。在细胞培养试验中,所有 10 种化合物都抑制了几种表达 RGS2 的癌症的生长。此外,在伤口愈合试验中,AJ-3 还能抑制 LNCaP 前列腺癌细胞的迁移。这是第一组通过基于结构的方法鉴定出的具有抗癌活性的 RGS2 抑制剂。这些结果凸显了 RGS2 抑制剂成为一类新型化疗药物的潜力。
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引用次数: 0
Behavior of Trapped Molecules in Lantern-Like Carcerand Superphanes. 灯笼状卡塞兰超相中被困分子的行为。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-11 DOI: 10.1021/acs.jcim.4c01040
Andrzej Eilmes, Mirosław Jabłoński

Superphanes are a group of organic molecules from the cyclophane family. They are characterized by the presence of two parallel benzene rings joined together by six bridges. If these bridges are sufficiently long, the superphane cavity can be large enough to trap small molecules or ions. Using ab initio (time scale of 80 ps) and classical (up to 200 ns) molecular dynamics (MD) methods, we study the behavior of five fundamental molecules (M = H2O, NH3, HF, HCN, MeOH) encapsulated inside the experimentally reported lantern-like superphane and its two derivatives featuring slightly modified side bridges. The main focus is studying the dynamics of hydrogen bonds between the trapped M molecule and the imino nitrogen atoms of the side chains of the host superphane. The length of the N···H hydrogen bond increases in the following order: HF < HCN < H2O < MeOH < NH3. The mobility of the trapped molecule and its preferred position inside the superphane cage depend not only on the type of this molecule but also largely on the in/out conformational arrangement of the imino nitrogens in the side chains of the superphane. Their inward-pointing positions allow the formation of strong N···H hydrogen bonds. For this reason, these nitrogens are the preferred sites of interaction. The mobility of the molecules and their residence times on each side of the superphane have been explained by referring to the symmetry and conformation of the given superphane cage. All force field MD simulations have shown that the encapsulated molecule remained inside the superphane cage for 200 ns without any escape event to the outside. Moreover, our simulations based on some endohedral complexes in the water box also showed no exchange event. Thus, the superphanes we study are true carcerand molecules. We attribute this property to the hydrophobic side chains and their pinwheel arrangement, which makes the side walls of the studied superphanes fairly impenetrable to small molecules.

超芳烃是环烷家族中的一类有机分子。它们的特点是由两个平行的苯环通过六座桥连接在一起。如果这些桥足够长,那么超烷空腔就可以大到足以捕获小分子或离子。利用 ab initio(时间尺度为 80 ps)和经典(高达 200 ns)分子动力学(MD)方法,我们研究了实验报告中的灯笼状超phane 及其两种侧桥略有改变的衍生物中封装的五种基本分子(M = H2O、NH3、HF、HCN、MeOH)的行为。研究的重点是被困的 M 分子与宿主超phane 侧链的亚氨基氮原子之间的氢键动力学。N-H 氢键的长度按以下顺序增加:HF < HCN < H2O < MeOH < NH3。被捕获分子的流动性及其在超烷笼中的优先位置不仅取决于该分子的类型,还在很大程度上取决于超烷侧链中的亚氨基硝基的进出构象排列。它们向内的位置可以形成强大的 N-H 氢键。因此,这些硝基是相互作用的首选位置。分子的流动性及其在超烷每一侧的停留时间可以通过给定超烷笼的对称性和构象来解释。所有力场 MD 模拟都表明,被包裹的分子在超薄膜笼内停留了 200 毫微秒,没有向外逃逸。此外,我们根据水盒中的一些内面复合物进行的模拟也表明没有发生任何交换事件。因此,我们研究的超相是真正的甘油分子。我们将这一特性归因于疏水性侧链及其针轮排列,这使得所研究的超phanes 的侧壁对小分子相当难以渗透。
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引用次数: 0
Improving Predictive Efficacy for Drug Resistance in Novel HIV-1 Protease Inhibitors through Transfer Learning Mechanisms. 通过迁移学习机制提高新型 HIV-1 蛋白酶抑制剂的抗药性预测功效
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-11 DOI: 10.1021/acs.jcim.4c01037
Huseyin Tunc, Sumeyye Yilmaz, Busra Nur Darendeli Kiraz, Murat Sari, Seyfullah Enes Kotil, Ozge Sensoy, Serdar Durdagi

The human immunodeficiency virus presents a significant global health challenge due to its rapid mutation and the development of resistance mechanisms against antiretroviral drugs. Recent studies demonstrate the impressive performance of machine learning (ML) and deep learning (DL) models in predicting the drug resistance profile of specific FDA-approved inhibitors. However, generalizing ML and DL models to learn not only from isolates but also from inhibitor representations remains challenging for HIV-1 infection. We propose a novel drug-isolate-fold change (DIF) model framework that aims to predict drug resistance score directly from the protein sequence and inhibitor representation. Various ML and DL models, inhibitor representations, and protein representations were analyzed through realistic validation mechanisms. To enhance the molecular learning capacity of DIF models, we employ a transfer learning approach by pretraining a graph neural network (GNN) model for activity prediction on a data set of 4855 HIV-1 protease inhibitors (PIs). By performing various realistic validation strategies on internal and external genotype-phenotype data sets, we statistically show that the learned representations of inhibitors improve the predictive ability of DIF-based ML and DL models. We achieved an accuracy of 0.802, AUROC of 0.874, and r of 0.727 for the unseen external PIs. By comparing the DIF-based models with a null model consisting of isolate-fold change (IF) architecture, it is observed that the DIF models significantly benefit from molecular representations. Combined results from various testing strategies and statistical tests confirm the effectiveness of DIF models in testing novel PIs for drug resistance in the presence of an isolate.

由于人类免疫缺陷病毒的快速变异和抗逆转录病毒药物耐药性机制的发展,人类免疫缺陷病毒给全球健康带来了重大挑战。最近的研究表明,机器学习(ML)和深度学习(DL)模型在预测美国食品及药物管理局(FDA)批准的特定抑制剂的耐药性特征方面表现出色。然而,将 ML 和 DL 模型推广到不仅从分离株而且从抑制剂表征中进行学习,对于 HIV-1 感染来说仍然具有挑战性。我们提出了一种新的药物-分离物-折变(DIF)模型框架,旨在直接从蛋白质序列和抑制剂表征预测耐药性得分。我们通过现实验证机制分析了各种 ML 和 DL 模型、抑制剂表征和蛋白质表征。为了提高 DIF 模型的分子学习能力,我们采用了迁移学习方法,在 4855 种 HIV-1 蛋白酶抑制剂(PIs)数据集上预训练了一个图神经网络(GNN)模型,用于活性预测。通过在内部和外部基因型-表型数据集上执行各种实际验证策略,我们从统计学角度证明,学习到的抑制剂表征提高了基于 DIF 的 ML 和 DL 模型的预测能力。对于未见过的外部 PI,我们的准确率达到了 0.802,AUROC 为 0.874,r 为 0.727。通过将基于 DIF 的模型与由隔离折半变化(IF)结构组成的无效模型进行比较,我们发现 DIF 模型明显受益于分子表征。各种测试策略和统计检验的综合结果证实了 DIF 模型在测试存在分离株的新型 PIs 耐药性方面的有效性。
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引用次数: 0
Understanding and Quantifying Molecular Flexibility: Torsion Angular Bin Strings. 理解和量化分子柔性:扭转角斌串。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-10 DOI: 10.1021/acs.jcim.4c01513
Jessica Braun, Paul Katzberger, Gregory A Landrum, Sereina Riniker

Molecular flexibility is a commonly used, but not easily quantified term. It is at the core of understanding composition and size of a conformational ensemble and contributes to many molecular properties. For many computational workflows, it is necessary to reduce a conformational ensemble to meaningful representatives, however defining them and guaranteeing the ensemble's completeness is difficult. We introduce the concepts of torsion angular bin strings (TABS) as a discrete vector representation of a conformer's dihedral angles and the number of possible TABS (nTABS) as an estimation for the ensemble size of a molecule, respectively. Here, we show that nTABS corresponds to an upper limit for the size of the conformational space of small molecules and compare the classification of conformer ensembles by TABS with classifications by RMSD. Overcoming known drawbacks like the molecular size dependency and threshold picking of the RMSD measure, TABS is shown to meaningfully discretize the conformational space and hence allows e.g. for fast checks of the coverage of the conformational space. The current proof-of-concept implementation is based on the ETKDGv3 conformer generator as implemented in the RDKit and known torsion preferences extracted from small-molecule crystallographic data.

分子柔性是一个常用但不易量化的术语。它是理解构象集合的组成和大小的核心,并对许多分子特性有贡献。对于许多计算工作流程来说,有必要将构象集合还原为有意义的代表,然而定义这些代表并保证集合的完整性却很困难。我们引入了扭转角 bin 字符串(TABS)的概念,作为构象二面角的离散矢量表示,以及可能的 TABS 数量(nTABS)的概念,分别作为分子构象集合大小的估算。在此,我们证明 nTABS 相当于小分子构象空间大小的上限,并比较了 TABS 与 RMSD 对构象集合的分类。研究表明,TABS 克服了 RMSD 测量的分子大小依赖性和阈值选择等已知缺点,对构象空间进行了有意义的离散化,因此可以快速检查构象空间的覆盖范围等。目前的概念验证实现基于 RDKit 中实现的 ETKDGv3 构象生成器和从小分子晶体学数据中提取的已知扭转偏好。
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引用次数: 0
GGAS2SN: Gated Graph and SmilesToSeq Network for Solubility Prediction GGAS2SN:用于溶解度预测的门控图和 SmilesToSeq 网络
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-10 DOI: 10.1021/acs.jcim.4c00792
Waqar Ahmad, Kil To Chong, Hilal Tayara
Aqueous solubility is a critical physicochemical property of drug discovery. Solubility is a key issue in pharmaceutical development because it can limit a drug’s absorption capacity. Accurate solubility prediction is crucial for pharmacological, environmental, and drug development studies. This research introduces a novel method for solubility prediction by combining gated graph neural networks (GGNNs) and graph attention neural networks (GATs) with Smiles2Seq encoding. Our methodology involves converting chemical compounds into graph structures with nodes representing atoms and edges indicating chemical bonds. These graphs are then processed by using a specialized graph neural network (GNN) architecture. Incorporating attention mechanisms into GNN allows for capturing subtle structural dependencies, fostering improved solubility predictions. Furthermore, we utilized the Smiles2Seq encoding technique to bridge the semantic gap between molecular structures and their textual representations. Smiles2Seq seamlessly converts chemical notations into numeric sequences, facilitating the efficient transfer of information into our model. We demonstrate the efficacy of our approach through comprehensive experiments on benchmark solubility data sets, showcasing superior predictive performance compared to traditional methods. Our model outperforms existing solubility prediction models and provides interpretable insights into the molecular features driving solubility behavior. This research signifies an important advancement in solubility prediction, offering potent tools for drug discovery, formulation development, and environmental assessments. The fusion of GGNN and Smiles2Seq encoding establishes a robust framework for accurately forecasting solubility across various chemical compounds, fostering innovation in various domains reliant on solubility data.
水溶性是药物研发中的一个关键理化特性。溶解度是药物开发中的一个关键问题,因为它可以限制药物的吸收能力。准确的溶解度预测对于药理学、环境和药物开发研究至关重要。本研究通过将门控图神经网络(GGNN)和图注意神经网络(GAT)与 Smiles2Seq 编码相结合,介绍了一种新的溶解度预测方法。我们的方法包括将化合物转换成图结构,其中节点代表原子,边表示化学键。然后使用专门的图神经网络(GNN)架构对这些图进行处理。将注意机制纳入 GNN 可以捕捉微妙的结构依赖关系,从而提高溶解度预测能力。此外,我们还利用 Smiles2Seq 编码技术弥合分子结构与其文本表述之间的语义差距。Smiles2Seq 能将化学符号无缝转换为数字序列,从而促进信息高效地传输到我们的模型中。我们通过对基准溶解度数据集的全面实验证明了我们方法的有效性,展示了与传统方法相比更优越的预测性能。我们的模型优于现有的溶解度预测模型,并对驱动溶解度行为的分子特征提供了可解释的见解。这项研究标志着溶解度预测领域的重要进步,为药物发现、制剂开发和环境评估提供了有力的工具。GGNN 和 Smiles2Seq 编码的融合为准确预测各种化合物的溶解度建立了一个强大的框架,促进了依赖溶解度数据的各个领域的创新。
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引用次数: 0
Molecular Mechanism-Driven Discovery of Novel Small Molecule Inhibitors against Drug-Resistant SARS-CoV-2 Mpro Variants. 分子机制驱动的新型小分子抑制剂对抗药性 SARS-CoV-2 Mpro 变体的发现。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-10 DOI: 10.1021/acs.jcim.4c01206
Jingyi Yang, Beibei Fu, Rongpei Gou, Xiaoyuan Lin, Haibo Wu, Weiwei Xue

Under the selective pressure of nirmatrelvir, a peptidomimetic covalent drug targeting SARS-CoV-2 Mpro, various drug-resistant mutations on Mpro have been acquired in vitro. Among the mutations, L50F and E166V, along with the combination of L50F and E166V, are particularly representative and pose considerable obstacles to the effective treatment of COVID-19. Our previous study identified NMI-001 and NMI-002 as novel nonpeptide inhibitors that target SARS-CoV-2 Mpro, possessing unique scaffolds and binding modes different from those of nirmatrelvir. In view of these findings, we proposed a drug design strategy aimed at rapidly identifying inhibitors that can combat mutation-induced drug resistance. Initially, molecular dynamics (MD) simulation was employed to investigate the binding mechanisms of NMI-001 and NMI-002 against the three drug-resistant mutants (Mpro_L50F, Mpro_E166V, and Mpro_L50F+E166V). Then, we conducted two phases of high-throughput virtual screening. In the first phase, NMI-001 served as a template to perform scaffold hopping-based similarity search in a library of 15,742,661 compounds. In the second phase, 968 compounds exhibiting similarity to NMI-001 were evaluated via molecular docking and MD simulations. Six compounds that may be effective against at least one mutant were identified, and five compounds were procured for conducting in vitro assays. Finally, the compound Z1557501297 (NMI-003) exhibiting inhibitory effects against the E166V (IC50 = 27.81 ± 2.65 μM) and L50F+E166V (IC50 = 8.78 ± 0.74 μM) mutants was discovered. The binding modes referring to NMI-003-Mpro_E166V and NMI-003-Mpro_L50F+E166V were further elucidated at the atomic level. In summary, NMI-003 reported herein is the first compound with activity against E166V and L50F+E166V, which provides a good starting point to design novel antiviral drugs for the treatment of drug-resistant SARS-CoV-2.

在针对 SARS-CoV-2 Mpro 的拟肽共价药物 nirmatrelvir 的选择性压力下,体外获得了 Mpro 上的各种耐药突变。在这些突变中,L50F 和 E166V 以及 L50F 和 E166V 的组合尤其具有代表性,它们对 COVID-19 的有效治疗构成了相当大的障碍。我们之前的研究发现,NMI-001 和 NMI-002 是针对 SARS-CoV-2 Mpro 的新型非肽抑制剂,具有与 nirmatrelvir 不同的独特支架和结合模式。有鉴于此,我们提出了一种药物设计策略,旨在快速找到能对抗突变引起的耐药性的抑制剂。首先,我们采用分子动力学(MD)模拟研究了 NMI-001 和 NMI-002 与三种耐药突变体(Mpro_L50F、Mpro_E166V 和 Mpro_L50F+E166V)的结合机制。然后,我们进行了两个阶段的高通量虚拟筛选。在第一阶段,以 NMI-001 为模板,在 15,742,661 个化合物库中进行基于支架跳跃的相似性搜索。在第二阶段,通过分子对接和 MD 模拟评估了与 NMI-001 相似的 968 种化合物。确定了 6 种可能对至少一种突变体有效的化合物,并采购了 5 种化合物进行体外试验。最后,发现了对 E166V(IC50 = 27.81 ± 2.65 μM)和 L50F+E166V (IC50 = 8.78 ± 0.74 μM)突变体具有抑制作用的化合物 Z1557501297(NMI-003)。在原子水平上进一步阐明了 NMI-003-Mpro_E166V 和 NMI-003-Mpro_L50F+E166V 的结合模式。总之,本文报道的 NMI-003 是第一个对 E166V 和 L50F+E166V 有活性的化合物,这为设计治疗耐药 SARS-CoV-2 的新型抗病毒药物提供了一个良好的起点。
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引用次数: 0
“Blade of Polarized Water Molecule” Is the Key to Hydrolase Catalysis Regulation "极化水分子之刃 "是水解酶催化调节的关键
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-09 DOI: 10.1021/acs.jcim.4c01123
Yinghui Feng, Yalong Cong, Yue Zhao, Chuanxi Zhang, Hucheng Song, Bohuan Fang, Furong Yang, Huitu Zhang, John Z. H. Zhang, Lujia Zhang
Hydrolysis catalyzed by aspartic proteases is a crucial reaction in many biological processes. However, anchoring water molecules and unifying multiple catalytic pathways remain significant challenges. Consequently, molecular design often compromises by focusing on enhancing substrate specificity. Using our self-developed polarizable point charge (PPC) force field, we determined the significant role of polarization in the hydrolase of pepsin for the first time. To be stably anchored in the active site, the water should be intensely polarized with a charge higher than −0.94e. Induced by this polarization, the pepsin was shown to support three general base/general acid pathways, with a preference for the gemdiol-intermediate-based pathway. Consequently, we proposed the “Blade of Polarized Water Molecule” model for rational enzyme design, highlighting that the polarization of both the attacking water and the attacked carbonyl is crucial for enhancing hydrolysis. Mutants D290Q and S172P showed activity enhancements of 191.23% and 324.70%, respectively. The improved polarization of water, carbonyl, and relevant nucleophilic attack distances in the mutants reaffirmed the crucial role of polarization in improving hydrolysis. This study provides a new perspective on hydrolase analysis and modification.
天冬氨酸蛋白酶催化的水解是许多生物过程中的关键反应。然而,锚定水分子和统一多种催化途径仍然是重大挑战。因此,分子设计通常会在提高底物特异性方面做出妥协。利用我们自主开发的可极化点电荷(PPC)力场,我们首次确定了极化在胃蛋白酶水解酶中的重要作用。为了稳定地锚定在活性位点上,水应该被强烈极化,电荷高于-0.94e。在这种极化作用的诱导下,胃蛋白酶被证明支持三种一般碱/一般酸途径,并偏向于以吉二醇-中间体为基础的途径。因此,我们提出了用于合理酶设计的 "极化水分子刀片 "模型,强调了攻击水和攻击羰基的极化对于增强水解作用至关重要。突变体 D290Q 和 S172P 的活性分别提高了 191.23% 和 324.70%。突变体中水、羰基和相关亲核攻击距离的极化得到了改善,这再次证实了极化在改善水解过程中的关键作用。这项研究为水解酶的分析和改造提供了一个新的视角。
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引用次数: 0
Deciphering the Morphological Difference of Amyloid-β Fibrils in Familial and Sporadic Alzheimer’s Diseases 解密家族性和散发性阿尔茨海默病中淀粉样β纤维的形态差异
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-09 DOI: 10.1021/acs.jcim.4c01471
Gangtong Huang, Zhiyuan Song, Yun Xu, Yunxiang Sun, Feng Ding
The aggregation of amyloid-β (Aβ) into amyloid fibrils is the major pathological hallmark of Alzheimer’s disease (AD). Aβ fibrils can adopt a variety of morphologies, the relative populations of which are recently found to be associated with different AD subtypes such as familial and sporadic AD (fAD and sAD, respectively). The two AD subtypes differ in their ages of onset, AD-related genetic predispositions, and dominant Aβ fibril morphologies. We postulate that these disease subtype-dependent fibril morphology differences can be attributed to the intrinsic fibril properties and interacting molecules in the environment. Using atomistic discrete molecular dynamics simulations, we demonstrated that the fAD-dominant morphology exhibited a lower free-energy barrier for fibril growth but also a lower stability compared with the sAD-dominant fibril morphology, resulting in the time-dependent population change consistent with experimental observations. Additionally, we studied the effect of the Bri2 BRICHOS domain, an endogenous protein that has been reported to inhibit Aβ aggregation by preferential binding to fibrils, as one of the possible environmental factors. The Bri2 BRICHOS domain showed stronger binding to the fAD-dominant fibril than the sAD-dominant fibril in silico, suggesting a more effective suppression of fAD-dominant fibril formation. This result explains the high population of the sAD-dominant fibril morphology in sporadic cases with normal Bri2 functions. Genetic predisposition in fAD, on the other hand, might impair or overwhelm Bri2 functions, leading to a high population of fAD-associated fibril morphology. Together, our computational findings provide a theoretical framework for elucidating the AD subtypes entailed by distinct dominant amyloid fibril morphologies.
淀粉样蛋白-β(Aβ)聚集成淀粉样纤维是阿尔茨海默病(AD)的主要病理特征。Aβ 纤维可呈现多种形态,最近发现其相对数量与不同的阿兹海默症亚型(如家族性阿兹海默症和散发性阿兹海默症,分别简称为 fAD 和 sAD)有关。这两种AD亚型在发病年龄、AD相关遗传倾向和显性Aβ纤维形态上都有所不同。我们推测,这些依赖于疾病亚型的纤维形态差异可归因于纤维的内在特性和环境中的相互作用分子。通过原子离散分子动力学模拟,我们证明了与 sAD 主导的纤维形态相比,fAD 主导的形态表现出更低的纤维生长自由能垒,但稳定性也更低,从而导致与实验观察结果一致的随时间变化的种群变化。此外,我们还研究了 Bri2 BRICHOS 结构域作为可能的环境因素之一的影响。Bri2 BRICHOS 结构域与 fAD 优势纤维的结合比与 sAD 优势纤维的结合更强,这表明它能更有效地抑制 fAD 优势纤维的形成。这一结果解释了Bri2功能正常的散发性病例中sAD显性纤维形态的高发人群。另一方面,fAD 的遗传易感性可能会损害或压制 Bri2 的功能,从而导致大量与 fAD 相关的纤维形态。总之,我们的计算发现为阐明不同优势淀粉样蛋白纤维形态所带来的AD亚型提供了一个理论框架。
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引用次数: 0
Conformational Selection of α-Synuclein Tetramers at Biological Interfaces 生物界面上 α-突触核蛋白四聚体的构象选择
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-08 DOI: 10.1021/acs.jcim.4c01459
Shayon Bhattacharya, Liang Xu, Lily Arrué, Tim Bartels, Damien Thompson
Controlling the polymorphic assemblies of α-synuclein (αS) oligomers is crucial to reroute toxic protein aggregation implicated in Parkinson’s disease (PD). One potential mediator is the interaction of αS tetramers with cell membranes, which may regulate the dynamic balance between aggregation-prone disordered monomers and aggregation-resistant helical tetramers. Here, we model diverse tetramer–cell interactions and compare the structure–function relations at the supramolecular–biological interface with available experimental data. The models predict preferential interaction of compact αS tetramers with highly charged membrane surfaces, which may further stabilize this aggregation-resistant conformer. On moderately charged membranes, extended structures are preferred. In addition to surface charge, curvature influences tetramer thermodynamic stability and aggregation, with potential for selective isolation of tetramers via regio-specific interactions with strongly negatively charged micelles that screen further aggregation. Our modeling data set highlights diverse beneficial nano–bio interactions to redirect biomolecule assembly, supporting new therapeutic approaches for PD based on lipid-mediated conformational selection and inhibition.
控制α-突触核蛋白(αS)寡聚体的多态组装对于改变帕金森病(PD)中涉及的毒性蛋白质聚集至关重要。αS四聚体与细胞膜的相互作用是一个潜在的中介,它可能调节易聚集的无序单体与抗聚集的螺旋四聚体之间的动态平衡。在这里,我们建立了四聚体-细胞相互作用的各种模型,并将超分子-生物界面的结构-功能关系与现有的实验数据进行了比较。模型预测紧凑型 αS 四聚体会优先与高电荷膜表面相互作用,这可能会进一步稳定这种抗聚集构象。在电荷适中的膜上,扩展结构更受青睐。除表面电荷外,曲率也会影响四聚体的热力学稳定性和聚集,通过与强负电荷胶束的区域特异性相互作用,有可能选择性地分离四聚体,从而阻止进一步聚集。我们的建模数据集凸显了多种有益的纳米生物相互作用,可重新定向生物分子的组装,支持基于脂质介导的构象选择和抑制作用的新治疗方法。
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引用次数: 0
Eliminating the Deadwood: A Machine Learning Model for CCS Knowledge-Based Conformational Focusing for Lipids 消除枯木:基于 CCS 知识的脂质构象聚焦机器学习模型
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2024-10-08 DOI: 10.1021/acs.jcim.4c01051
Mithony Keng, Kenneth M Merz, Jr.
Accurate elucidation of gas-phase chemical structures using collision cross section (CCS) values obtained from ion-mobility mass spectrometry benefits from a synergism between experimental and in silico results. We have shown in recent work that for a molecule of modest size with a proscribed conformational space we can successfully capture a conformation(s) that can match experimental CCS values. However, for flexible systems such as fatty acids that have many rotatable bonds and multiple intramolecular London dispersion interactions, it becomes necessary to sample a much greater conformational space. Sampling more conformers, however, accrues significant computational cost downstream in optimization steps involving quantum mechanics. To reduce this computational expense for lipids, we have developed a novel machine learning (ML) model to facilitate conformer filtering according to the estimated gas-phase CCS values. Herein we report that the implementation of our CCS knowledge-based approach for conformational sampling resulted in improved structure prediction agreement with experiment by achieving favorable average CCS prediction errors of ∼2% for lipid systems in both the validation set and the test set. Moreover, most of the gas-phase candidate conformations obtained by using CCS focusing achieved lower energy-minimum geometries than the candidate conformations without focusing. Altogether, the implementation of this ML model into our modeling workflow has proven to be beneficial for both the quality of the results and the turnaround time. Finally, while our approach is limited to lipids, it can be readily extended to other molecules of interest.
利用从离子迁移质谱中获得的碰撞截面(CCS)值来准确阐明气相化学结构,可以从实验结果和硅学结果之间的协同作用中获益。我们在最近的研究中表明,对于具有规定构象空间的中等大小分子,我们可以成功捕获与实验 CCS 值相匹配的构象。但是,对于像脂肪酸这样具有许多可旋转键和多种分子内伦敦分散相互作用的柔性体系,就需要对更大的构象空间进行采样。然而,在涉及量子力学的下游优化步骤中,采样更多的构象会增加大量的计算成本。为了降低脂质的计算成本,我们开发了一种新颖的机器学习(ML)模型,以便根据估计的气相 CCS 值筛选构象。在此,我们报告了基于 CCS 知识的构象采样方法的实施情况,该方法提高了结构预测与实验的一致性,在验证集和测试集中,脂质系统的平均 CCS 预测误差均为∼2%。此外,与未进行CCS聚焦的候选构象相比,通过CCS聚焦获得的大多数气相候选构象都获得了更低的能量最小几何形状。总之,事实证明,在我们的建模工作流程中实施这种 ML 模型对结果质量和周转时间都有好处。最后,虽然我们的方法仅限于脂质,但可以很容易地扩展到其他感兴趣的分子。
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引用次数: 0
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Journal of Chemical Information and Modeling
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