Molecular dynamics simulation

分子动力学模拟
  • 文章类型: Journal Article
    通过降低不混溶相之间的界面张力,表面活性剂在三次采油中起着至关重要的作用。改变表面润湿性,提高泡沫膜的稳定性。油藏具有高温和高压,使进行实验室实验变得困难和危险。在这种情况下,分子动力学(MD)模拟是补充实验的有价值的工具。它可以有效地研究微观行为(如扩散,吸附,和聚集)孔流体中的表面活性剂分子,并高度准确地预测这些系统的热力学和动力学。MD模拟也克服了传统实验的局限性,通常缺乏必要的时空分辨率。将模拟结果与实验数据进行比较可以从微观角度提供全面的解释。本文回顾了在气/油-水界面处表面活性剂吸附和所得界面性质的最新MD模拟。最初,本文讨论了界面性质和评估表面活性剂形成的单层的方法,考虑到界面浓度的变化,表面活性剂的分子结构,和表面活性剂混合物的协同作用。然后,它涵盖了表征各种界面微观结构的方法,以及作为界面浓度和表面活性剂分子结构的函数的单层堆积状态的演化过程。接下来,它检查了表面活性剂和水相之间的相互作用,专注于头基团溶剂化和反离子缩合。最后,分析了疏水相分子组成对表面活性剂与疏水相相互作用的影响。这篇综述加深了我们对表面活性剂驱油微观机理的理解,有利于筛选和设计油田应用的表面活性剂。
    Surfactants play a crucial role in tertiary oil recovery by reducing the interfacial tension between immiscible phases, altering surface wettability, and improving foam film stability. Oil reservoirs have high temperatures and high pressures, making it difficult and hazardous to conduct lab experiments. In this context, molecular dynamics (MD) simulation is a valuable tool for complementing experiments. It can effectively study the microscopic behaviors (such as diffusion, adsorption, and aggregation) of the surfactant molecules in the pore fluids and predict the thermodynamics and kinetics of these systems with a high degree of accuracy. MD simulation also overcomes the limitations of traditional experiments, which often lack the necessary temporal-spatial resolution. Comparing simulated results with experimental data can provide a comprehensive explanation from a microscopic standpoint. This article reviews the state-of-the-art MD simulations of surfactant adsorption and resulting interfacial properties at gas/oil-water interfaces. Initially, the article discusses interfacial properties and methods for evaluating surfactant-formed monolayers, considering variations in interfacial concentration, molecular structure of the surfactants, and synergistic effect of surfactant mixtures. Then, it covers methods for characterizing microstructure at various interfaces and the evolution process of the monolayers\' packing state as a function of interfacial concentration and the surfactants\' molecular structure. Next, it examines the interactions between surfactants and the aqueous phase, focusing on headgroup solvation and counterion condensation. Finally, it analyzes the influence of hydrophobic phase molecular composition on interactions between surfactants and the hydrophobic phase. This review deepened our understanding of the micro-level mechanisms of oil displacement by surfactants and is beneficial for screening and designing surfactants for oil field applications.
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  • 文章类型: Journal Article
    肺部给药由于其靶向的局部肺部作用而引起了极大的关注,最小的毒副作用,和高药物利用率。然而,作为药物载体的吸入纳米颗粒(NPs)的物理化学性质可以影响它们与肺表面活性物质(PS)单层的相互作用,可能改变NP的命运并损害PS单层的生物物理功能。因此,这篇综述的目的是总结NPs的物理化学性质如何影响它们与PS单层的相互作用。最初,NP的定义和属性,以及PS单层的组成和特性,被介绍。随后,提出了用于研究NP与PS单层之间相互作用的粗粒分子动力学(CGMD)模拟方法。最后,疏水性的含义,尺寸,形状,表面电荷,表面改性,讨论了NPs与PS单层的相互作用以及生物分子电晕的组成。总之,深入了解NPs的物理化学性质对其与PS单层相互作用的影响将有助于开发更安全,更有效的肺部药物纳米药物。
    Pulmonary drug delivery has garnered significant attention due to its targeted local lung action, minimal toxic side effects, and high drug utilization. However, the physicochemical properties of inhaled nanoparticles (NPs) used as drug carriers can influence their interactions with the pulmonary surfactant (PS) monolayer, potentially altering the fate of the NPs and impairing the biophysical function of the PS monolayer. Thus, the objective of this review is to summarize how the physicochemical properties of NPs affect their interactions with the PS monolayer. Initially, the definition and properties of NPs, as well as the composition and characteristics of the PS monolayer, are introduced. Subsequently, the coarse-grained molecular dynamics (CGMD) simulation method for studying the interactions between NPs and the PS monolayer is presented. Finally, the implications of the hydrophobicity, size, shape, surface charge, surface modification, and aggregation of NPs on their interactions with the PS monolayer and on the composition of biomolecular corona are discussed. In conclusion, gaining a deeper understanding of the effects of the physicochemical properties of NPs on their interactions with the PS monolayer will contribute to the development of safer and more effective nanomedicines for pulmonary drug delivery.
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  • 文章类型: Journal Article
    在信息技术时代和可用的额外计算搜索工具和软件,本系统综述旨在确定肥胖的潜在治疗靶点,在计算机上进行评估,随后在体内进行验证。系统评价最初以研究问题“在肥胖的治疗中使用了哪些治疗目标?”为指导,并基于首字母缩写PECo(P,问题;E,曝光;公司,上下文)。根据系统审查和荟萃分析方案的首选报告项目清单(PRISMA-P),在PROSPERO(CRD42022353808)中制定并注册了系统审查方案。并遵循PRISMA进行系统审查。根据资格标准选择研究,与PECo结盟,在以下数据库中:PubMed,ScienceDirect,Scopus,WebofScience,BVS,和EMBASE。搜索策略产生了1142篇文章,从中,根据评估标准,系统评价中包括12个。只有七篇这些文章允许鉴定计算机和体内重新评估的治疗靶标。在这些目标中,五个完全是实验性的,一个完全是理论上的,其中一个目标呈现了实验部分和通过建模获得的部分。使用的主要方法是分子对接,研究最多的靶标是人胰脂肪酶(HPL)(n=4)。缺乏方法细节导致超过50%的论文在11个评估标准中有8个被归类为“不清楚的偏见风险”。从目前的系统评价来看,似乎很明显,将计算机方法整合到潜在药物靶标的研究中,以探索新的治疗剂提供了重要的工具,考虑到控制肥胖的持续挑战。
    In the age of information technology and the additional computational search tools and software available, this systematic review aimed to identify potential therapeutic targets for obesity, evaluated in silico and subsequently validated in vivo. The systematic review was initially guided by the research question \"What therapeutic targets have been used in in silico analysis for the treatment of obesity?\" and structured based on the acronym PECo (P, problem; E, exposure; Co, context). The systematic review protocol was formulated and registered in PROSPERO (CRD42022353808) in accordance with the Preferred Reporting Items Checklist for Systematic Review and Meta-Analysis Protocols (PRISMA-P), and the PRISMA was followed for the systematic review. The studies were selected according to the eligibility criteria, aligned with PECo, in the following databases: PubMed, ScienceDirect, Scopus, Web of Science, BVS, and EMBASE. The search strategy yielded 1142 articles, from which, based on the evaluation criteria, 12 were included in the systematic review. Only seven these articles allowed the identification of both in silico and in vivo reassessed therapeutic targets. Among these targets, five were exclusively experimental, one was exclusively theoretical, and one of the targets presented an experimental portion and a portion obtained by modeling. The predominant methodology used was molecular docking and the most studied target was Human Pancreatic Lipase (HPL) (n = 4). The lack of methodological details resulted in more than 50% of the papers being categorized with an \"unclear risk of bias\" across eight out of the eleven evaluated criteria. From the current systematic review, it seems evident that integrating in silico methodologies into studies of potential drug targets for the exploration of new therapeutic agents provides an important tool, given the ongoing challenges in controlling obesity.
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  • 文章类型: Journal Article
    粗粒度(CG)蛋白质模型已成为研究许多生物蛋白质细节不可或缺的工具。从构象动力学到蛋白质宏观复合物的组织,甚至蛋白质与其他分子的相互作用。Martini力场是生物分子模拟中使用最广泛的CG模型之一,部分原因是其蛋白质模型的巨大成功。随着最近发布的马提尼力场的新版本-马提尼3-其蛋白质模型的新迭代也可用。Martini3蛋白质力场是其Martini2对应物的进化,旨在改善以前发现的许多缺点。在这个小型审查中,我们首先提供模型的总体概述,然后重点介绍自发布以来在短时间内取得的成功进展,其中许多以前是不可能的。此外,我们讨论报告的局限性,模型改进的潜在方向,并评论未来可能的开发和应用途径。
    Coarse-grained (CG) protein models have become indispensable tools for studying many biological protein details, from conformational dynamics to the organization of protein macro-complexes, and even the interaction of proteins with other molecules. The Martini force field is one of the most widely used CG models for bio-molecular simulations, partly because of the enormous success of its protein model. With the recent release of a new and improved version of the Martini force field - Martini 3 - a new iteration of its protein model was also made available. The Martini 3 protein force field is an evolution of its Martini 2 counterpart, aimed at improving many of the shortcomings that had been previously identified. In this mini-review, we first provide a general overview of the model and then focus on the successful advances made in the short time since its release, many of which would not have been possible before. Furthermore, we discuss reported limitations, potential directions for model improvement and comment on what the likely future development and application avenues are.
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  • 文章类型: Journal Article
    酶是许多应用的流行催化剂,尤其是在工业中。生物催化剂的大规模使用面临着一些限制,如运行稳定性低,低可回收性,酶成本高。酶固定化是解决这些问题的有益策略。生物信息学工具通常可以正确预测固定结果,从而以最少的时间消耗成本有效的实验阶段。本研究通过对截至2022年12月11日的已发表文章的全面系统回顾,提供了预测固定化过程的计算机方法概述。它还提到了过程的优缺点,并解释了固定评估所需的每种方法的计算分析。在这方面,筛选了WebofScience和Scopus数据库以获得相关出版物。筛选收集的文件后(n=3873),选择了60篇文章进行审查。所选的论文已应用于计算机程序,包括仅分子动力学(MD)模拟(n=20),平行回火蒙特卡罗(PTMC)和MD模拟(n=3),MD和对接(n=1),密度泛函理论(DFT)和MD(n=1),仅对接(n=11),金属离子结合位点预测(MIB)服务器和对接(n=2),对接和DFT(n=1),酶表面的对接和分析(n=1),只有DFT(n=1),只有MIB服务器(n=2),酶结构和表面分析(n=12),固定衍生物的合理设计(RDID)软件(n=3),和耗散粒子动力学(DPD;n=2)。在大多数纳入研究(n=51)中,除计算机评估外,还对酶的固定化进行了实验研究。
    Enzymes are popular catalysts with many applications, especially in industry. Biocatalyst usage on a large scale is facing some limitations, such as low operational stability, low recyclability, and high enzyme cost. Enzyme immobilization is a beneficial strategy to solve these problems. Bioinformatics tools can often correctly predict immobilization outcomes, resulting in a cost-effective experimental phase with the least time consumed. This study provides an overview of in silico methods predicting immobilization processes via a comprehensive systematic review of published articles till 11 December 2022. It also mentions the strengths and weaknesses of the processes and explains the computational analyses in each method that are required for immobilization assessment. In this regard, Web of Science and Scopus databases were screened to gain relevant publications. After screening the gathered documents (n = 3873), 60 articles were selected for the review. The selected papers have applied in silico procedures including only molecular dynamics (MD) simulations (n = 20), parallel tempering Monte Carlo (PTMC) and MD simulations (n = 3), MD and docking (n = 1), density functional theory (DFT) and MD (n = 1), only docking (n = 11), metal ion binding site prediction (MIB) server and docking (n = 2), docking and DFT (n = 1), docking and analysis of enzyme surfaces (n = 1), only DFT (n = 1), only MIB server (n = 2), analysis of an enzyme structure and surface (n = 12), rational design of immobilized derivatives (RDID) software (n = 3), and dissipative particle dynamics (DPD; n = 2). In most included studies (n = 51), enzyme immobilization was investigated experimentally in addition to in silico evaluation.
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  • 文章类型: Review
    近年来,对食品蛋白质和配体之间的分子相互作用机制的研究引起了很多兴趣。相互作用机制可以为食品工业的许多领域提供许多有用的信息,包括营养输送,食品加工,辅助检测,和其他人。分子模拟为相互作用机制提供了非凡的见解。它可以反映结合构象,相互作用力,结合亲和力,关键残留物,以及物理化学实验无法快速详细揭示的其他信息。模拟结果已证明与物理化学实验结果一致。分子模拟在食品蛋白质-配体相互作用领域具有巨大的应用潜力。本文阐述了分子对接和分子动力学模拟的原理。此外,综述了它们在食品蛋白质-配体相互作用中的应用。此外,挑战,观点,并提出了食品蛋白质-配体相互作用的分子模拟趋势。根据分子模拟的结果,界面行为的机制,酶-底物结合,可以反映食品加工过程中的结构变化,并可以产生有害物质检测和食品风味调节的策略。此外,分子模拟可以加速食品的开发和减少动物实验。然而,将分子模拟应用于食品蛋白质-配体相互作用研究仍然存在一些挑战。未来趋势将是国际合作和数据共享相结合,量子力学/分子力学,先进的计算技术,和机器学习,这有助于促进食物蛋白质-配体相互作用的模拟。总的来说,利用分子模拟研究食品蛋白质-配体相互作用具有广阔的前景。
    In recent years, investigations on molecular interaction mechanisms between food proteins and ligands have attracted much interest. The interaction mechanisms can supply much useful information for many fields in the food industry, including nutrient delivery, food processing, auxiliary detection, and others. Molecular simulation has offered extraordinary insights into the interaction mechanisms. It can reflect binding conformation, interaction forces, binding affinity, key residues, and other information that physicochemical experiments cannot reveal in a fast and detailed manner. The simulation results have proven to be consistent with the results of physicochemical experiments. Molecular simulation holds great potential for future applications in the field of food protein-ligand interactions. This review elaborates on the principles of molecular docking and molecular dynamics simulation. Besides, their applications in food protein-ligand interactions are summarized. Furthermore, challenges, perspectives, and trends in molecular simulation of food protein-ligand interactions are proposed. Based on the results of molecular simulation, the mechanisms of interfacial behavior, enzyme-substrate binding, and structural changes during food processing can be reflected, and strategies for hazardous substance detection and food flavor adjustment can be generated. Moreover, molecular simulation can accelerate food development and reduce animal experiments. However, there are still several challenges to applying molecular simulation to food protein-ligand interaction research. The future trends will be a combination of international cooperation and data sharing, quantum mechanics/molecular mechanics, advanced computational techniques, and machine learning, which contribute to promoting food protein-ligand interaction simulation. Overall, the use of molecular simulation to study food protein-ligand interactions has a promising prospect.
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  • 文章类型: Journal Article
    赖氨酸特异性脱甲基酶1(LSD1/KDM1A)已成为治疗各种癌症(如乳腺癌,肝癌,等。)和其他疾病(血液病、心血管疾病,等。),由于其观察到的过度表达,从而为药物开发提供了重大机遇。自2004年发现以来,人们对LSD1抑制剂进行了广泛的研究,计算方法的显著贡献。这篇综述系统地总结了自2010年以来通过计算机辅助药物设计(CADD)技术研究的LSD1抑制剂,展示了各种化学支架,包括苯乙嗪衍生物,tranylcypromine(缩写为TCP或2-PCPA)衍生物,含氮杂环(吡啶,嘧啶,唑,噻吩并[3,2-b]吡咯,吲哚,喹啉和苯并恶唑)衍生物,天然产物(包括血根碱,酚类化合物和白藜芦醇衍生物,类黄酮和其他天然产物)和其他(包括硫脲化合物,非诺多泮和雷洛昔芬,(4-氰基苯基)甘氨酸衍生物,通过AI技术发现的炔丙胺和苯甲酰肼衍生物和抑制剂)。计算技术,比如虚拟筛选,分子对接和3D-QSAR模型,在阐明这些抑制剂与LSD1之间的相互作用方面发挥了关键作用。此外,人工智能等尖端技术的整合有望促进新型LSD1抑制剂的发现.这篇综述中提出的全面见解旨在为推进LSD1抑制剂的进一步研究提供有价值的信息。
    Lysine-specific demethylase 1 (LSD1/KDM1A) has emerged as a promising therapeutic target for treating various cancers (such as breast cancer, liver cancer, etc.) and other diseases (blood diseases, cardiovascular diseases, etc.), owing to its observed overexpression, thereby presenting significant opportunities in drug development. Since its discovery in 2004, extensive research has been conducted on LSD1 inhibitors, with notable contributions from computational approaches. This review systematically summarizes LSD1 inhibitors investigated through computer-aided drug design (CADD) technologies since 2010, showcasing a diverse range of chemical scaffolds, including phenelzine derivatives, tranylcypromine (abbreviated as TCP or 2-PCPA) derivatives, nitrogen-containing heterocyclic (pyridine, pyrimidine, azole, thieno[3,2-b]pyrrole, indole, quinoline and benzoxazole) derivatives, natural products (including sanguinarine, phenolic compounds and resveratrol derivatives, flavonoids and other natural products) and others (including thiourea compounds, Fenoldopam and Raloxifene, (4-cyanophenyl)glycine derivatives, propargylamine and benzohydrazide derivatives and inhibitors discovered through AI techniques). Computational techniques, such as virtual screening, molecular docking and 3D-QSAR models, have played a pivotal role in elucidating the interactions between these inhibitors and LSD1. Moreover, the integration of cutting-edge technologies such as artificial intelligence holds promise in facilitating the discovery of novel LSD1 inhibitors. The comprehensive insights presented in this review aim to provide valuable information for advancing further research on LSD1 inhibitors.
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  • 文章类型: Journal Article
    最常用的药物发现方法之一是分子对接。随着对接,人们可以通过靶向分子并预测靶-配体相互作用以及配体在不同位置的不同构象来发现新的治疗相关分子。该预测表示与靶标具有不同亲和力的分子或开发的分子的有效性。药物发现在开发与之连接的不同部分的新药物分子中起着重要作用,这导致了我们对几种疾病的管理。计算机模拟方法使我们能够识别出许多由病毒引起的疾病,真菌,细菌,原生动物,和其他影响人类健康的微生物。通过计算方法,我们可以对疾病症状进行分类,并使用可用于此类警告信号的药物。在对接过程之后,分子动力学计算技术有助于模拟原子和分子在固定时间内的物理运动,给出了系统动态评价的观点。本文旨在说明分子对接在药物开发中的作用。
    One of the most often utilized methods for drug discovery is molecular docking. With docking, one may discover new therapeutically relevant molecules by targeting the molecule and predicting the target-ligand interactions as well as different conformation of ligand at various positions. The prediction signifies the effectiveness of the molecule or the developed molecule having different affinity with target. Drug discovery plays an important role in the development of a new drug molecule of different moiety attached to it, which leads us in the management of several diseases. In silico approach led us to identification of numerous diseases caused by virus, fungi, bacteria, protozoa, and other microorganisms that affect human health. By means of computational approach, we can categorize disease symptoms and use the drugs available for such types of warning signs. After the docking process, molecular dynamics computational technique helps in the simulation of the physical movement of atoms and molecules for a fixed period of time, giving a view of the dynamic evaluation of the system. This review is an attempt to illustrate the role of molecular docking in drug development.
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  • 文章类型: Journal Article
    稳态技术在保持香气化合物(AC)的质量和延长使用寿命方面起着至关重要的作用。商业环糊精(CD)通常用于与AC形成包合物(IC)以增强其溶解度,稳定性,和形态学。在此过程中,选择合适的CD和AC至关重要。分子动力学(MD)模拟提供了对AC和CD之间相互作用的深入理解,帮助研究人员优化IC的性能和效果。这篇综述系统地讨论了MD模拟在AC/CDIC中的应用,涵盖了模拟过程的建立,参数选择,模型评估,和各种应用案例,以及它们的优点和缺点。此外,这篇综述总结了这种方法的主要成就和挑战,同时确定了需要进一步探索的领域。这些发现可能有助于全面了解AC/CDIC的形成和稳定机制,并为AC稳态下CD的选择和计算特性提供指导。
    Homeostatic technologies play a crucial role in maintaining the quality and extending the service life of aroma compounds (ACs). Commercial cyclodextrins (CDs) are commonly used to form inclusion complexes (ICs) with ACs to enhance their solubility, stability, and morphology. The selection of suitable CDs and ACs is of paramount importance in this process. Molecular dynamics (MD) simulations provide an in-depth understanding of the interactions between ACs and CDs, aiding researchers in optimising the properties and effects of ICs. This review offers a systematic discussion of the application of MD simulations in ACs/CDs ICs, covering the establishment of the simulation process, parameter selection, model evaluation, and various application cases, along with their advantages and disadvantages. Additionally, this review summarises the major achievements and challenges of this method while identifying areas that require further exploration. These findings may contribute to a comprehensive understanding of the formation and stabilization mechanisms of ACs/CDs ICs and offer guidance for the selection and computational characterisation of CDs in the AC steady state.
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  • 文章类型: Journal Article
    核苷类似物已被广泛用作抗病毒,抗肿瘤,和抗寄生虫剂,因为它们能够抑制核酸合成。腺苷,胞苷,鸟苷,胸苷和尿苷类似物如去羟肌苷,阿糖腺苷,remdesivir,吉西他滨,拉米夫定,阿昔洛韦,阿巴卡韦,齐多夫素,司他夫定,并显示出显著的抗癌和抗病毒活性。在我们之前发表的文章中,我们的主要目的是开发具有酰化诱导的羟基修饰的新一代核苷类似物,并展示其生物学功效。在开发核苷类似物的过程中,计算机模拟研究起着重要作用,并为生物学数据提供了科学背景。药物和受体之间的分子相互作用,然后评估它们在生理环境中的稳定性,有助于优化药物开发过程,最大限度地减少不必要的合成负担。计算方法,如DFT,FMO,MEP,ADMET预测,通过预测,POM分析,分子对接,和分子动力学模拟,是最流行的工具,以结束所有临床前研究数据,并提供具有最大生物活性和最小毒性的分子。尽管临床药物试验对于提供剂量建议至关重要,他们只能通过研究人员间接提供病理机制信息,生理,和药理学决定因素。因此,计算机模拟方法越来越多地用于药物发现和开发,以提供具有临床价值的机械信息。本文描述了这些方法的现状,并强调了对开发具有优化生物活性的核苷类似物的一些杰出贡献。
    Nucleoside analogs have been widely used as antiviral, antitumor, and antiparasitic agents due to their ability to inhibit nucleic acid synthesis. Adenosine, cytidine, guanosine, thymidine and uridine analogs such as didanosine, vidarabine, remdesivir, gemcitabine, lamivudine, acyclovir, abacavir, zidovusine, stavudine, and idoxuridine showed remarkable anticancer and antiviral activities. In our previously published articles, our main intention was to develop newer generation nucleoside analogs with acylation-induced modification of the hydroxyl group and showcase their biological potencies. In the process of developing nucleoside analogs, in silico studies play an important role and provide a scientific background for biological data. Molecular interactions between drugs and receptors followed by assessment of their stability in physiological environments, help to optimize the drug development process and minimize the burden of unwanted synthesis. Computational approaches, such as DFT, FMO, MEP, ADMET prediction, PASS prediction, POM analysis, molecular docking, and molecular dynamics simulation, are the most popular tools to culminate all preclinical study data and deliver a molecule with maximum bioactivity and minimum toxicity. Although clinical drug trials are crucial for providing dosage recommendations, they can only indirectly provide mechanistic information through researchers for pathological, physiological, and pharmacological determinants. As a result, in silico approaches are increasingly used in drug discovery and development to provide mechanistic information of clinical value. This article portrays the current status of these methods and highlights some remarkable contributions to the development of nucleoside analogs with optimized bioactivity.
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