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SGLEPocket: A Spatial Gating and Local Feature Enhancement Network for Protein–Ligand Binding Pocket Prediction 基于空间门控和局部特征增强网络的蛋白质-配体结合口袋预测
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2026-03-25 DOI: 10.1021/acs.jcim.5c03009
Xiyun Yang,Wei Zhang,Chenxi Luo,Zhaohong Deng,Dongxing Gu,Dong-jun Yu,Shudong Hu,Yanqi Zhong
Predicting protein ligand-binding pockets is crucial for understanding various biological processes, drug discovery, and design. Existing methods predominantly convert proteins into 3D voxels and process them using extensive convolutions, which struggle to effectively capture long-range semantic information within proteins. Furthermore, they lack global modeling and adaptive filtering of cross-layer features, limiting the precise characterization of pocket detail features. To tackle these issues, we propose a novel U-shaped network architecture that integrates spatial gating mechanisms and local feature enhancement for accurate protein–ligand binding pocket prediction. Specifically, we improve the traditional U-shaped network encoder by integrating the Mamba module and a Local Feature Enhancement (LFE) module to achieve efficient global modeling and adaptive enhancement of local features. Additionally, we introduce a novel Spatial Enhanced Mamba Gate (SEMG) module at skip connections to filter redundant information and enhance multiscale feature fusion. Experiments across extensive protein–ligand data sets demonstrate that our approach outperforms existing methods in both performance and interpretability.
预测蛋白质配体结合袋对于理解各种生物过程、药物发现和设计至关重要。现有的方法主要是将蛋白质转换为3D体素,并使用广泛的卷积来处理它们,这很难有效地捕获蛋白质中的远程语义信息。此外,它们缺乏跨层特征的全局建模和自适应滤波,限制了口袋细节特征的精确表征。为了解决这些问题,我们提出了一种新的u型网络结构,该结构集成了空间门控机制和局部特征增强,用于准确预测蛋白质配体结合口袋。具体来说,我们通过集成Mamba模块和局部特征增强(LFE)模块来改进传统的u型网络编码器,实现高效的全局建模和局部特征的自适应增强。此外,我们在跳跃连接处引入了一种新的空间增强曼巴门(SEMG)模块来过滤冗余信息,增强多尺度特征融合。在广泛的蛋白质配体数据集上进行的实验表明,我们的方法在性能和可解释性方面都优于现有方法。
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引用次数: 0
DeepMIF: A Multiview Interactive Fusion-Based Deep Learning Method for RNA–Small Molecule Binding Affinity Prediction 基于多视图交互融合的rna -小分子结合亲和力预测的深度学习方法
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2026-03-25 DOI: 10.1021/acs.jcim.5c02946
Jinmiao Song,Annan Gao,Shengwei Tian,Qimeng Yang,Lei Deng,Qilin Feng,Meitong Hou
Accurately predicting the binding affinity between ribonucleic acid (RNA) and small molecules (RSMA) is crucial for RNA-targeted drug discovery, yet existing computational methods face challenges in fully leveraging multisource feature information and modeling complex interactions. To address these challenges, this paper presents DeepMIF, an innovative deep learning framework based on a novel multiview interactive fusion paradigm. Initially, the framework employs a hybrid RNA representation combining a Localized Enhanced Scalable k-mer (L-ESKmer) strategy with pretrained embeddings to capture multiscale sequence patterns, while simultaneously extracting small molecule features from both sequence and graph views, yielding four distinct feature channels. At its core is an advanced multiview interactive fusion module wherein fine-grained interactions among multiple molecular modalities are modeled. Information is subsequently exchanged through a multihead cross-attention network equipped with a fused value vector. This mechanism transforms the attention process from simple information retrieval into an intelligent information synthesis, dynamically building a shared value vector from the context of all modalities. In a rigorous 5-fold cross-validation (CV) on a benchmark data set of 1439 RNA–small molecule pairs, DeepMIF demonstrates state-of-the-art performance, achieving a Pearson correlation coefficient (PCC) of 0.796 and a root-mean-square error (RMSE) of 0.874. More importantly, the model exhibits a strong generalization ability and robustness in challenging cold-start scenarios. The capability of DeepMIF to capture biologically meaningful, critical binding sites is further confirmed through interpretability analysis and case studies, highlighting its potential to guide structure-based RNA-targeted drug design.
准确预测核糖核酸(RNA)与小分子(RSMA)之间的结合亲和力对于RNA靶向药物的发现至关重要,但现有的计算方法在充分利用多源特征信息和模拟复杂相互作用方面面临挑战。为了应对这些挑战,本文提出了DeepMIF,这是一种基于新型多视图交互融合范式的创新深度学习框架。最初,该框架采用混合RNA表示,结合本地化增强可扩展k-mer (L-ESKmer)策略和预训练嵌入来捕获多尺度序列模式,同时从序列和图视图中提取小分子特征,产生四个不同的特征通道。其核心是一个先进的多视图交互融合模块,其中多个分子模态之间的细粒度相互作用被建模。信息随后通过配备融合价值向量的多头交叉关注网络交换。该机制将注意力过程从简单的信息检索转变为智能的信息综合,从所有模态的上下文中动态构建共享的价值向量。在对1439对rna -小分子对的基准数据集进行严格的5倍交叉验证(CV)后,DeepMIF表现出了最先进的性能,Pearson相关系数(PCC)为0.796,均方根误差(RMSE)为0.874。更重要的是,该模型在具有挑战性的冷启动场景中表现出较强的泛化能力和鲁棒性。通过可解释性分析和案例研究,DeepMIF捕获具有生物学意义的关键结合位点的能力得到了进一步证实,突出了其指导基于结构的rna靶向药物设计的潜力。
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引用次数: 0
Exploring Secondary Structure Predictions for RNA-Targeted Drug Discovery: Power and Challenges 探索rna靶向药物发现的二级结构预测:力量和挑战
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2026-03-25 DOI: 10.1021/acs.jcim.6c00108
Zhengyue Zhang,Gaia Dolcetti,Christian Tyrchan,Leonardo De Maria,Giovanni Bussi,Werngard Czechtizky
RNAs are increasingly recognized as promising drug targets, as both coding and noncoding RNAs act as key regulators in disease-related biological processes. However, a significant gap persists between the number of known RNA sequences and the solved RNA structures, posing a major bottleneck for RNA-targeted drug discovery. RNA secondary structure prediction offers the potential to facilitate the identification of druggable sites in novel RNA sequences by rapidly predicting base pairing patterns. In this study, we benchmarked widely used RNA secondary structure prediction tools against a newly curated dataset of ligand-bound RNA structures. We found that most tools achieve reasonable accuracy for RNAs with short sequences and simple motifs, but their performance declines for longer RNAs and those containing pseudoknots. Notably, prediction accuracy is reduced within ligand binding sites, where noncanonical base pairs and complex secondary structure elements are prevalent yet consistently unrecognized by the tools. Consequently, RNA ligand binding sites are poorly reconstructed by secondary structure predictions. This work provides the first comprehensive assessment of RNA secondary structure prediction for ligand-bound RNAs and demonstrates the challenges for integrating these methods into RNA-targeted drug discovery pipelines.
由于编码rna和非编码rna在疾病相关的生物学过程中起着关键的调节作用,rna越来越被认为是有希望的药物靶点。然而,已知RNA序列的数量与已解决的RNA结构之间仍然存在显著差距,这对RNA靶向药物的发现构成了主要瓶颈。RNA二级结构预测提供了通过快速预测碱基配对模式来促进新RNA序列中可药物位点鉴定的潜力。在这项研究中,我们将广泛使用的RNA二级结构预测工具与新整理的配体结合RNA结构数据集进行了基准测试。我们发现大多数工具对于短序列和简单基序的rna都能达到合理的准确性,但对于较长的rna和含有假结的rna,它们的性能下降。值得注意的是,在配体结合位点,预测精度降低,其中非规范碱基对和复杂的二级结构元件普遍存在,但始终无法被工具识别。因此,RNA配体结合位点很难通过二级结构预测重建。这项工作首次全面评估了配体结合RNA的RNA二级结构预测,并展示了将这些方法整合到RNA靶向药物发现管道中的挑战。
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引用次数: 0
Unveiling the Activation Mechanism of Glucagon-Like Peptide-1 Receptor by an Ago-Allosteric Modulator via Molecular Dynamics Simulations 通过分子动力学模拟揭示ago变构调节剂对胰高血糖素样肽-1受体的激活机制
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2026-03-25 DOI: 10.1021/acs.jcim.6c00224
Yue Chen,Junhao Li,Lucie Delemotte,Yuguang Mu
The glucagon-like peptide-1 receptor (GLP-1R) is a key therapeutic target for metabolic disorders, particularly type 2 diabetes and obesity. Although current treatments are effective, their unavoidable side effects continue to drive the search for novel therapeutic strategies. Ago-allosteric modulators (ago-PAMs), which act as agonists on their own while enhancing the affinity and efficacy of orthosteric agonists, represent a promising avenue to overcome limitations associated with traditional peptide-based therapies. However, the molecular mechanisms by which ago-PAMs modulate GLP-1R activation remain poorly understood. In this work, we selected compound 2, a validated ago-PAM of GLP-1R, as a probe to explore these mechanisms at the atomic level. Using molecular dynamics (MD) simulations, we elucidate how compound 2 stabilizes the active conformation of GLP-1R through allosteric binding and reveal distinct pathways by which it enhances the binding of both peptide and non-peptide orthosteric agonists. Enhanced sampling simulations further provided a comprehensive conformational landscape of GLP-1R activation, identifying two intermediate states that bridge inactive and active conformations. Compound 2 was found to bias the receptor toward active-like ensembles, consistent with its intrinsic agonist activity. Together, our findings provide mechanistic insights into ago-allosteric modulation of GLP-1R, offering useful information for the rational design of small-molecule modulators with improved therapeutic profiles.
胰高血糖素样肽-1受体(GLP-1R)是代谢性疾病,特别是2型糖尿病和肥胖症的关键治疗靶点。虽然目前的治疗方法是有效的,但其不可避免的副作用继续推动寻找新的治疗策略。Ago-allosteric modulators (ago- pam),在增强正位受体激动剂的亲和力和功效的同时,作为激动剂,代表了克服传统肽类疗法局限性的有希望的途径。然而,ago- pam调节GLP-1R活化的分子机制仍然知之甚少。在这项工作中,我们选择了化合物2,一个经过验证的GLP-1R的ago-PAM,作为探针,在原子水平上探索这些机制。利用分子动力学(MD)模拟,我们阐明了化合物2如何通过变构结合稳定GLP-1R的活性构象,并揭示了它增强肽和非肽正构激动剂结合的不同途径。增强的采样模拟进一步提供了GLP-1R激活的综合构象景观,确定了介于非活性构象和活性构象之间的两种中间状态。发现化合物2使受体偏向于活性样集合,与其固有的激动剂活性一致。总之,我们的研究结果为GLP-1R的ago-变构调节提供了机制见解,为合理设计具有改善治疗效果的小分子调节剂提供了有用的信息。
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引用次数: 0
CrossLinker: Aligning Relational and Sequential Contexts for Drug-Target Interaction Prediction in Cold-Start and Few-Shot Scenarios 交联剂:在冷启动和少量射击场景中对齐药物-靶标相互作用预测的关系和顺序上下文
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2026-03-24 DOI: 10.1021/acs.jcim.5c03216
Zhenxiang Xu,Jiayi Que,Yue Hong,Lantian Yao,Juan Liu,Xiangrong Liu
Accurate prediction of drug-target interactions (DTIs) is foundational to drug development. Over the years, representation learning methods based on sequences and relational knowledge have shown considerable promise in this field. However, DTI prediction remains a challenging task, particularly in cold-start settings and few-shot scenarios involving novel drugs or proteins. Therefore, we propose a novel DTI prediction framework. To enhance the model’s generalization in settings with scarce labels and unseen entities, we introduce a link-based contrastive learning strategy. Instead of aligning entity-level global features, this strategy aligns fine-grained local features derived from both the sequence and relational modalities. Complementing this, we introduce a link-based cross-attention mechanism. This mechanism captures contextual features specific to individual drug–protein pairs conditioned on different links, providing necessary local features for contrastive learning strategies. Our model was evaluated on both cold-start and few-shot datasets involving unseen drugs or proteins, and significantly outperformed state-of-the-art (SOTA) methods. Furthermore, when evaluated in conventional data-rich settings, our model still demonstrates superior performance over current approaches.
准确预测药物-靶标相互作用(DTIs)是药物开发的基础。多年来,基于序列和关系知识的表示学习方法在该领域显示出相当大的前景。然而,DTI预测仍然是一项具有挑战性的任务,特别是在冷启动环境和涉及新药或蛋白质的少量场景中。因此,我们提出了一种新的DTI预测框架。为了提高模型在标签稀缺和实体不可见环境下的泛化能力,我们引入了一种基于链接的对比学习策略。而不是调整实体级的全球特性这一战略同盟细粒度的地方特色源自序列和关系模式。作为补充,我们引入了基于链接的交叉注意机制。该机制捕获了特定于不同链接条件下的单个药物-蛋白质对的上下文特征,为对比学习策略提供了必要的局部特征。我们的模型在冷启动和涉及未见药物或蛋白质的少量数据集上进行了评估,并且明显优于最先进的(SOTA)方法。此外,当在传统的数据丰富设置中进行评估时,我们的模型仍然表现出优于当前方法的性能。
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引用次数: 0
Physics-Guided Machine Learning for Ionic-Liquid Volumetric Properties. 离子液体体积特性的物理引导机器学习。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2026-03-24 DOI: 10.1021/acs.jcim.5c02962
Kingsley Omeoga,Tausif Altamash,Mouad Dahbi,Johan Jacquemin
Accurate modeling of the volumetric behavior of ionic liquids (ILs) is crucial for guiding the design of electrolytes for energy storage and other chemical systems. While classical group contribution methods (GCMs) are grounded in thermodynamic theory, traditional machine learning (ML) models often lack physically consistent predictions and generalizability. To improve this, a hybrid modeling strategy is introduced that couples a reoptimized Classical-GCM with a physics-informed neural network (PINN-GCM), where thermodynamically optimized parameters from the Tait equation are directly incorporated into the hybrid loss function of the network. Building on the previous efforts of Jacquemin et al. (Ind. Eng. Chem. Res., 2017, 56, 6827-6840), the data set was extracted from the National Institute of Standards and Technology (NIST) database. The PINN-GCM framework was evaluated across 92 ILs, comprising 8,467 experimental data points spanning 217-473 K and 0.1-207 MPa. The aggregate performance yielded average RAAD values of 0.067 and 0.065% for the training and test sets, respectively, at the IL level. The ion-level models were trained on 6,049 points from 59 ILs (32 cations and 28 anions), with extrapolation evaluated on 2,958 points from 21 unseen IL combinations, demonstrating strong combinatorial generalization to new pairings of known ions, although structural generalization to entirely novel ion chemistries remains beyond the scope of the current model. The framework shows promise for integration into process simulation tools and extension to related IL properties (viscosity and conductivity), although its applicability is validated within the experimental temperature-pressure range and requires ions present in the established library. This strategy highlights the potential of merging physics-based modeling and ML to develop foundational models for multiproperty prediction, thereby promoting the improved design of safer electrolytes and other chemical systems in the future.
离子液体体积行为的精确建模对于指导储能和其他化学系统电解质的设计至关重要。虽然经典的群体贡献方法(GCMs)以热力学理论为基础,但传统的机器学习(ML)模型往往缺乏物理上一致的预测和通用性。为了改善这一点,引入了一种混合建模策略,将重新优化的classic - gcm与物理信息神经网络(PINN-GCM)耦合在一起,其中来自Tait方程的热力学优化参数直接纳入网络的混合损失函数。在Jacquemin等人之前的努力的基础上。化学。Res., 2017, 56, 6827-6840),数据集取自美国国家标准与技术研究院(NIST)数据库。PINN-GCM框架在92个il中进行了评估,包括8,467个实验数据点,跨度为217-473 K, 0.1-207 MPa。在IL水平上,训练集和测试集的总性能产生的平均RAAD值分别为0.067和0.065%。离子水平模型在59个离子离子(32个阳离子和28个阴离子)的6,049个点上进行了训练,并在21个未见的离子离子组合的2,958个点上进行了外推评估,显示出对已知离子新配对的强大组合泛化,尽管对全新离子化学的结构泛化仍然超出了当前模型的范围。该框架有望集成到过程模拟工具中,并扩展到相关的IL特性(粘度和电导率),尽管其适用性在实验温度-压力范围内得到验证,并且需要在已建立的库中存在离子。该策略强调了将基于物理的建模和机器学习相结合的潜力,以开发多属性预测的基础模型,从而促进未来更安全的电解质和其他化学系统的改进设计。
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引用次数: 0
ProtCross: Bridging the PDB-AlphaFold Gap for Binding Site Prediction with Protein Point Clouds. ProtCross:桥接PDB-AlphaFold的结合位点预测与蛋白质点云的差距。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2026-03-24 DOI: 10.1021/acs.jcim.5c03224
Shuyu Zhong,Yuying Jiang
AlphaFold2 (AF2) has greatly increased the availability of predicted protein structures, but many binding-site prediction methods trained on experimentally determined Protein Data Bank (PDB) complexes perform less well when applied to AF2 models. This loss of accuracy reflects differences between ligand-bound experimental structures and predominantly apo-like predicted models, as well as nonuniform local structural reliability indicated by pLDDT scores. To address this, we introduce ProtCross, a confidence-aware domain adaptation framework for residue-level binding-site prediction on predicted protein structures. Proteins are represented as residue point clouds and encoded using a hierarchical PointNet++ architecture, with ESM-C protein language model embeddings providing physicochemical and evolutionary information. To transfer models trained on labeled PDB structures to unlabeled AF2 models, ProtCross employs adversarial domain adaptation with a gradient reversal layer, while weighting the domain-adversarial loss by pLDDT to reduce the influence of low-confidence regions. On an AF2 test set derived from the PDBbind v2020 Refined Set, ProtCross shows improved performance relative to existing binding-site predictors and an architecture-matched geometric baseline, as measured by area under the ROC curve and segmentation accuracy. Ablation analyses indicate that pLDDT-guided weighting mitigates negative transfer observed with standard domain-adversarial training.
AlphaFold2 (AF2)极大地提高了预测蛋白质结构的可用性,但许多基于实验确定的蛋白质数据库(PDB)复合物训练的结合位点预测方法在应用于AF2模型时表现不佳。这种准确性的损失反映了配体结合的实验结构与主要的载脂蛋白样预测模型之间的差异,以及pLDDT分数表明的不均匀的局部结构可靠性。为了解决这个问题,我们引入了ProtCross,这是一个置信度感知的结构域自适应框架,用于预测蛋白质结构的残基水平结合位点预测。蛋白质被表示为残馀点云,并使用分层的PointNet++架构进行编码,并使用ESM-C蛋白质语言模型嵌入提供物理化学和进化信息。为了将标记PDB结构训练的模型转移到未标记的AF2模型,ProtCross采用了带有梯度反转层的对抗域自适应,同时通过pLDDT对域对抗损失进行加权,以减少低置信度区域的影响。在pdbind v2020精细化集衍生的AF2测试集上,ProtCross相对于现有的结合位点预测器和结构匹配的几何基线显示出更高的性能,通过ROC曲线下的面积和分割精度来衡量。消融分析表明,plddt引导的加权减轻了标准领域对抗训练中观察到的负迁移。
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引用次数: 0
MXtalTools: A Toolkit for Machine Learning on Molecular Crystals MXtalTools:用于分子晶体机器学习的工具包
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2026-03-24 DOI: 10.1021/acs.jcim.5c02868
Michael Kilgour,Mark E. Tuckerman,Jutta Rogal
We present MXtalTools, a flexible Python package for the data-driven modeling of molecular crystals, facilitating machine learning studies of the molecular solid state. MXtalTools comprises several classes of utilities: (1) synthesis, collation, and curation of molecule and crystal data sets, (2) integrated workflows for model training and inference, (3) crystal parametrization and representation, (4) crystal structure sampling and optimization, (5) end-to-end differentiable crystal sampling, construction, and analysis. Our modular functions can be integrated into existing workflows or combined and used to build novel modeling pipelines. MXtalTools leverages CUDA acceleration to enable high-throughput crystal modeling. The Python code is available open-source on our GitHub page, with detailed documentation on ReadTheDocs.
我们提出了MXtalTools,一个灵活的Python包,用于分子晶体的数据驱动建模,促进了分子固态的机器学习研究。MXtalTools包括几类实用程序:(1)分子和晶体数据集的合成、整理和管理,(2)模型训练和推理的集成工作流程,(3)晶体参数化和表示,(4)晶体结构采样和优化,(5)端到端可微晶体采样、构建和分析。我们的模块化功能可以集成到现有的工作流中,或者组合起来用于构建新的建模管道。MXtalTools利用CUDA加速实现高通量晶体建模。Python代码在我们的GitHub页面上是开源的,在ReadTheDocs上有详细的文档。
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引用次数: 0
AutoPocket2CREST: Automating Binding Pocket Extraction for the CREST Conformer Generation Pipeline. AutoPocket2CREST:自动绑定口袋提取为CREST共形生成管道。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2026-03-23 DOI: 10.1021/acs.jcim.6c00569
Christian Fellinger,Marion Sappl,András Szabadi,Benjamin Merget,Klaus-Juergen Schleifer,Thierry Langer
AutoPocket2CREST is an automated workflow for preparing protein-ligand binding pockets for CREST conformational sampling. Starting from protein and ligand structures, the method identifies the ligand, constructs a chemically consistent pocket around it, applies optional backbone constraints, and postprocesses CREST conformers to restore structural annotations. AutoPocket2CREST integrates common open-source tools and enables reproducible semiempirical conformational sampling of protein-bound ligands.
AutoPocket2CREST是为CREST构象采样准备蛋白质配体结合口袋的自动化工作流程。该方法从蛋白质和配体结构出发,识别配体,在其周围构建化学上一致的口袋,应用可选的骨干约束,并对CREST构象进行后处理以恢复结构注释。AutoPocket2CREST集成了常见的开源工具,可以对蛋白质结合配体进行可重复的半经验构象采样。
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引用次数: 0
Best Practices in Mixed-Solvent Molecular Dynamics and Solvent-Site-Biased Docking. 混合溶剂分子动力学和溶剂位置偏置对接的最佳实践。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2026-03-23 DOI: 10.1021/acs.jcim.6c00082
Juan Manuel Prieto,Jose A D Cuellar Estrada,Camila Mara Clemente,Marcelo A Martí
In this work, we present practical recommendations for the setup, analysis, and integration of mixed-solvent molecular dynamics (MixMD), solvent-biased docking (SSBD) workflows and pharmacophore analysis, drawing on more than a decade of accumulated experience in the field from multiple implementations and applications. Rather than providing a comprehensive review of all applications of MixMD, this Perspective focuses specifically on its use as a methodological foundation for deriving solvent sites that inform docking and pharmacophore-based strategies in structure-based drug design. Currently, mixed-solvent simulations and solvent-biased docking constitute a coherent, experimentally validated strategy for identifying and exploiting binding hot spots in proteins, and for translating solvent occupancy patterns into structurally interpretable pharmacophoric features and docking constraints. By standardizing best practices, and synthesizing previously published computational studies into a unified methodological framework, we aim to facilitate broader adoption of these methods within the structure-based drug design community, enabling more reliable identification of functional sites and accelerating rational ligand discovery.
在这项工作中,我们提出了建立、分析和整合混合溶剂分子动力学(MixMD)、溶剂偏向对接(SSBD)工作流程和药效团分析的实用建议,借鉴了十多年来在多个实施和应用领域积累的经验。本文并没有对MixMD的所有应用进行全面的回顾,而是将重点放在了它作为一种方法基础的使用上,用于衍生溶剂位点,从而为基于结构的药物设计中的对接和基于药物载体的策略提供信息。目前,混合溶剂模拟和溶剂偏向对接构成了一种连贯的、经过实验验证的策略,用于识别和利用蛋白质中的结合热点,并将溶剂占用模式转化为结构上可解释的药效特征和对接约束。通过标准化最佳实践,并将先前发表的计算研究综合到统一的方法框架中,我们的目标是促进这些方法在基于结构的药物设计界的广泛采用,从而实现更可靠的功能位点鉴定和加速合理配体的发现。
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引用次数: 0
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