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Growth vs Diversity: A Time-Evolution Analysis of the Chemical Space. 生长vs多样性:化学空间的时间演化分析。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2025-06-13 DOI: 10.1021/acs.jcim.5c00347
Kenneth Lopez Perez, Edgar López-López, Flavie Soulage, Eloy Felix, José L Medina-Franco, Ramon Alain Miranda-Quintana

It is well-known that the number of compounds (both synthesized and theoretical ones) is rapidly increasing. Hence, it would be obvious to affirm that the chemical space is expanding. However, is the chemical diversity of compound libraries growing? In this study, we approach this question by quantitatively assessing the time evolution of chemical libraries in terms of chemical diversity as measured with molecular fingerprints. To tackle this task, we employed innovative cheminformatics methods to assess the progress over time of the chemical diversity of compound libraries available in the public domain. Using the iSIM and the BitBIRCH clustering algorithm, we conclude that, based on the fingerprints used to represent the chemical structures, only an increasing number of molecules cannot be directly translated to diversity for the analyzed libraries. With these tools, we have identified what releases contributed to the diversity of the library and the zones they did. More importantly, the proposed pipeline can be applied to study the evolution of any chemical library and to assess how they are covering the chemical space.

众所周知,化合物的数量(包括合成的和理论的)正在迅速增加。因此,很明显可以肯定,化学空间正在扩大。然而,化合物文库的化学多样性是否在增长?在这项研究中,我们通过定量评估化学文库在化学多样性方面的时间演变,通过分子指纹测量来解决这个问题。为了解决这个问题,我们采用了创新的化学信息学方法来评估公共领域中可用化合物文库的化学多样性随时间的进展。使用iSIM和BitBIRCH聚类算法,我们得出结论,基于用于代表化学结构的指纹,只有越来越多的分子不能直接转化为分析文库的多样性。通过这些工具,我们已经确定了哪些版本对库的多样性做出了贡献,以及它们所做的工作。更重要的是,拟议的管道可以应用于研究任何化学库的演变,并评估它们如何覆盖化学空间。
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引用次数: 0
MMSol: Predicting Protein Solubility with an Antinoise Multimodal Deep Model. MMSol:用抗噪多模态深度模型预测蛋白质溶解度。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2025-06-13 DOI: 10.1021/acs.jcim.5c00748
Jia Xu, Tingfang Wu, Yelu Jiang, Liangpeng Nie, Geng Li, Yi Zhang, Zhenglong Zhou, Yiwei Chen, Lijun Quan, Qiang Lyu

Protein solubility plays a critical role in determining its biological function, such as enabling proper protein delivery and ensuring that proteins remain soluble during cellular processes or therapeutic applications. Accurate prediction of protein solubility with computational methods accelerates the development of therapeutically relevant proteins and industrial enzymes. However, existing models do not fully account for the interaction of multimodal information and are limited by label noise in protein solubility experimental data. To address this, we propose a new protein solubility prediction model MMSol that considers three modalities of information: sequence, structure, and function, which enrich the protein representation. Additionally, we incorporates an antinoise algorithm during training to mitigate the impact of label noise. In the empirical study, we evaluate our model on both noise-free and noisy data sets. The result demonstrates that due to our model's capability to integrate proteins' multimodality, and the incorporation of the antinoise algorithm, the model achieves superior performance in both noisy and noise-free scenarios.

蛋白质的溶解度在决定其生物学功能方面起着至关重要的作用,例如,在细胞过程或治疗应用中,使蛋白质能够适当地传递并确保蛋白质保持可溶性。用计算方法对蛋白质溶解度的准确预测加速了治疗相关蛋白质和工业酶的发展。然而,现有的模型并没有充分考虑到多模态信息的相互作用,并且受到蛋白质溶解度实验数据中的标签噪声的限制。为了解决这个问题,我们提出了一个新的蛋白质溶解度预测模型MMSol,该模型考虑了三种信息模式:序列、结构和功能,从而丰富了蛋白质的表示。此外,我们在训练过程中引入了一种抗噪算法来减轻标签噪声的影响。在实证研究中,我们在无噪声和有噪声数据集上对我们的模型进行了评估。结果表明,由于我们的模型能够整合蛋白质的多模态,并结合抗噪算法,该模型在有噪声和无噪声情况下都具有优异的性能。
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引用次数: 0
The Glycine-Rich Region as a Flexible Molecular Glue Promoting hPrP106-145 Aggregation into β-Sheet Structures. 富甘氨酸区作为柔性分子胶促进hPrP106-145聚集成β-片结构。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2025-06-13 DOI: 10.1021/acs.jcim.5c00785
Xiaohan Zhang, Huan Xu, Huayuan Tang, Zhongyue Lv, Yu Zou, Fengjuan Huang, Feng Ding, Yunxiang Sun

The abnormal aggregation of human prion protein (hPrP) into cross-β fibrillar amyloid deposits is associated with prion diseases such as Creutzfeldt-Jakob disease and fatal familial insomnia. However, the molecular mechanisms underlying the early stages of prion aggregation remain poorly understood. In this study, we employed multiple long-time scale atomistic discrete molecular dynamics (DMD) simulations to investigate the conformational dynamics of hPrP106-145, a critical fragment with intrinsic aggregation propensity and key involvement in infectivity. Our results revealed that the hPrP106-145 monomer primarily adopted a helical conformation in the alanine-rich region (residues 109-118), while the remaining sequence was largely unstructured, exhibiting dynamic β-sheet formation around residues 120AVV122, 128YVL130, and 138IIH140. Upon dimerization, β-sheet formation was significantly enhanced, particularly around 138IIH140, which displayed the highest β-sheet propensity and interpeptide contact frequency, underscoring its pivotal role in aggregate stabilization. The glycine-rich region (residues 119-131) was found to facilitate aggregation by conferring structural flexibility due to glycine's minimal steric hindrance. This flexibility allowed hydrophobic and aromatic residues to collapse dynamically, forming transient intra- and interpeptide β-sheets. These interactions acted as a molecular glue, promoting aggregation while maintaining structural adaptability. Although β-sheet formation lowered potential energy, excessive β-sheet content resulted in significant entropic loss, highlighting a trade-off between stability and conformational entropy. Overall, this study provides molecular insights into the early nucleation events of hPrP106-145 aggregation, emphasizing the critical role of glycine-mediated flexibility. Our findings deepen the understanding of prion misfolding and offer a computational framework for exploring glycine-rich peptide phase separation in amyloid-related disorders.

人类朊蛋白(hPrP)异常聚集成交叉β纤维淀粉样蛋白沉积与朊蛋白疾病如克雅氏病和致死性家族性失眠有关。然而,朊病毒聚集的早期阶段的分子机制仍然知之甚少。在这项研究中,我们采用多个长时间尺度的原子离散分子动力学(DMD)模拟来研究hPrP106-145的构象动力学,hPrP106-145是一个具有内在聚集倾向和关键参与感染的关键片段。结果表明,hPrP106-145单体在富含丙氨酸的区域(109-118位残基)主要采用螺旋构象,而其余的序列大部分是非结构化的,在残基120AVV122、128YVL130和138IIH140周围呈现动态的β-片结构。二聚化后,β-薄片形成显著增强,特别是在138IIH140附近,β-薄片倾向和肽间接触频率最高,强调了其在聚集体稳定中的关键作用。发现富含甘氨酸的区域(残基119-131)由于甘氨酸的最小位阻而赋予结构灵活性,从而促进聚集。这种灵活性允许疏水性和芳香残基动态坍塌,形成短暂的肽内和肽间β片。这些相互作用就像分子胶一样,在保持结构适应性的同时促进聚集。虽然β片的形成降低了势能,但过量的β片含量导致了显著的熵损失,突出了稳定性和构象熵之间的权衡。总的来说,这项研究提供了hPrP106-145聚集的早期成核事件的分子见解,强调了甘氨酸介导的灵活性的关键作用。我们的发现加深了对朊病毒错误折叠的理解,并为探索淀粉样蛋白相关疾病中富含甘氨酸的肽相分离提供了一个计算框架。
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引用次数: 0
Data-Driven Optimization of Industrial Impact Polypropylene Characterization: Machine Learning Insights. 工业冲击聚丙烯表征的数据驱动优化:机器学习见解。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2025-06-13 DOI: 10.1021/acs.jcim.5c00667
Randy D Cunningham, Veronica Patterson, Ebert Cawood, Gideon Botes, Evangelia Marantos

The experimental determination of impact polypropylene (ICP) physical properties, such as tensile modulus, flexural modulus, and impact strength, is a time-sensitive process that can delay real-time decision making during industrial production. This study explores the use of machine learning (ML) models that facilitate real-time determination of these key parameters. An industrially relevant data set containing ICP structural properties, including melt flow rate (MFR), ethylene content (C2), ethylene content in the rubber component (RCC2), and the amorphous phase indicator (R21), was leveraged to train and evaluate three ML models; linear regression, Random Forest, and a neural network. Random Forest emerged as the best-performing model, achieving R2 values of 0.78 (tensile modulus), 0.75 (flexural modulus), and 0.88 (impact strength). Feature importance analysis via Random Forest and SHapley Additive exPlanations (SHAP) revealed that MFR and R21 captured the most critical structural variation across all physical properties and were sufficient for accurate model prediction. Retraining the model with only these two features significantly reduced model complexity and experimental overhead. These models offer a generalizable, scalable, and interpretable solution for real-world deployment across different ICP production sites, utilizing only two input parameters determined via ISO-certified methods. This ML-based approach significantly enhances process efficiency, reduces reliance on multiple characterization experiments, and supports digital product development in industrial ICP manufacturing.

冲击聚丙烯(ICP)物理性能的实验测定,如拉伸模量、弯曲模量和冲击强度,是一个时间敏感的过程,可能会延迟工业生产过程中的实时决策。本研究探索了机器学习(ML)模型的使用,以促进这些关键参数的实时确定。利用包含ICP结构特性的工业相关数据集,包括熔体流动速率(MFR)、乙烯含量(C2)、橡胶组分中的乙烯含量(RCC2)和非晶相指示器(R21),来训练和评估三种ML模型;线性回归,随机森林和神经网络。随机森林是表现最好的模型,R2值分别为0.78(拉伸模量)、0.75(弯曲模量)和0.88(冲击强度)。通过随机森林和SHapley加性解释(SHAP)进行的特征重要性分析显示,MFR和R21捕获了所有物理性质中最关键的结构变化,足以进行准确的模型预测。仅用这两个特征重新训练模型可以显著降低模型复杂性和实验开销。这些模型为跨不同ICP生产站点的实际部署提供了一种通用的、可扩展的和可解释的解决方案,仅使用通过iso认证方法确定的两个输入参数。这种基于ml的方法显著提高了工艺效率,减少了对多个表征实验的依赖,并支持工业ICP制造中的数字产品开发。
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引用次数: 0
Comparative Analysis of TCR and TCR-pMHC Complex Structure Prediction Tools. TCR与TCR- pmhc复合结构预测工具的比较分析。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2025-06-13 DOI: 10.1021/acs.jcim.5c00298
Yudan Shi, Jerry M Parks, Jeremy C Smith

The rapid development of computational approaches for predicting the structures of T cell receptors (TCRs) and TCR-peptide-major histocompatibility (TCR-pMHC) complexes, accelerated by AI breakthroughs such as AlphaFold, has made it feasible to calculate these structures with increasing accuracy. Although these tools show great potential, their relative accuracy and limitations remain unclear due to the lack of standardized benchmarks. Here, we systematically evaluate seven tools for predicting isolated TCR structures together with six tools for predicting TCR-pMHC complex structures. The methods include homology-based approaches, general prediction tools using AlphaFold, TCR-specific tools derived from AlphaFold2, and the newly developed tFold-TCR model. The evaluation uses a post-training data set comprising 40 αβ TCRs and 27 TCR-pMHC complexes (21 Class I and 6 Class II). Model accuracy is assessed at global, local, and interface levels using a variety of metrics. We find that each tool offers distinct advantages in various aspects of its predictions. AlphaFold2, AlphaFold3, and tFold-TCR excel in overall accuracy of TCR structure prediction, and TCRmodel2 and AlphaFold2 perform well in overall accuracy of TCR-pMHC structure prediction. However, TCR-specific tools derived from AlphaFold2 show lower accuracy in the framework region than both homology-based methods and general-purpose tools such as AlphaFold, and challenges remain for all in modeling CDR3 loops, docking orientations, TCR-peptide interfaces, and Class II MHC-peptide interfaces. These findings will guide researchers in selecting appropriate tools, emphasize the importance of using multiple evaluation metrics to assess model performance, and offer suggestions for improving TCR and TCR-pMHC structure prediction tools.

预测T细胞受体(tcr)和tcr -肽-主要组织相容性(TCR-pMHC)复合物结构的计算方法的快速发展,加速了人工智能的突破,如AlphaFold,使得计算这些结构越来越准确成为可能。尽管这些工具显示出巨大的潜力,但由于缺乏标准化的基准,它们的相对准确性和局限性仍然不清楚。在这里,我们系统地评估了7种预测分离TCR结构的工具以及6种预测TCR- pmhc复合物结构的工具。这些方法包括基于同源性的方法、使用AlphaFold的通用预测工具、从AlphaFold2衍生的tcr特定工具以及新开发的tFold-TCR模型。评估使用了一个训练后数据集,包括40个αβ tcr和27个TCR-pMHC复合物(21个I类和6个II类)。使用各种度量标准在全局、局部和接口级别评估模型准确性。我们发现每个工具在其预测的各个方面都提供了独特的优势。AlphaFold2、AlphaFold3和tFold-TCR在TCR结构预测的总体精度上表现较好,TCRmodel2和AlphaFold2在TCR- pmhc结构预测的总体精度上表现较好。然而,来自AlphaFold2的tcr特异性工具在框架区域的准确性低于基于同源性的方法和通用工具(如AlphaFold),并且在CDR3环、对接方向、tcr -肽接口和II类mhc -肽接口的建模方面仍然存在挑战。这些发现将指导研究人员选择合适的工具,强调使用多种评估指标来评估模型性能的重要性,并为改进TCR和TCR- pmhc结构预测工具提供建议。
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引用次数: 0
Enhancing Monte Carlo Tree Search for Retrosynthesis. 用于反合成的蒙特卡罗树搜索增强。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2025-06-13 DOI: 10.1021/acs.jcim.5c00417
Ton M Blackshaw, Joseph C Davies, Kristian T Spoerer, Jonathan D Hirst

Computer-Assisted Synthesis Programs are increasingly employed by organic chemists. Often, these tools combine neural networks for policy prediction with heuristic search algorithms. We propose two novel enhancements, which we call eUCT and dUCT, to the Monte Carlo tree search (MCTS) algorithm. The enhancements were deployed in AiZynthFinder and have been integrated into the open-source electronic lab notebook, AI4Green, available at https://ai4green.app. A memory-efficient stock file was used to reduce the computational carbon footprint. Both enhancements significantly reduced, by up to 50%, the computational clock-time to solve 1500 heavy (500-800 Da) molecules. The dUCT enhancement increased the number of routes found per molecule for the 1500 heavy molecules and a 50,000-molecule set from ChEMBL. eUCT and dUCT-v2 solved between 600 and 900 more molecules than the unenhanced MCTS algorithm across the 50,000 molecules. When limited to a 150 s time constraint, dUCT-v1 solved ∼5 million more routes to the 50,000 targets than the unenhanced algorithm.

有机化学家越来越多地使用计算机辅助合成程序。通常,这些工具将用于策略预测的神经网络与启发式搜索算法相结合。我们对蒙特卡罗树搜索(MCTS)算法提出了两种新的增强,我们称之为eUCT和dUCT。这些增强功能已部署在AiZynthFinder中,并已集成到开源电子实验室笔记本AI4Green中,可在https://ai4green.app上获得。使用内存高效的库存文件来减少计算碳足迹。这两项增强都显著减少了计算1500个重分子(500-800 Da)的时钟时间,最多可减少50%。对于来自ChEMBL的1500个重分子和5万个分子,管道增强增加了每个分子发现的路线数量。在50,000个分子中,eUCT和dUCT-v2比未增强的MCTS算法多求解了600到900个分子。当限于150秒的时间约束时,dUCT-v1比未增强的算法多解决了到50,000个目标的约500万条路由。
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引用次数: 0
Mathematical Framework to Identify Optimal Molecule Based on Virtual Ligand Strategy. 基于虚拟配体策略的最优分子识别数学框架。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2025-06-13 DOI: 10.1021/acs.jcim.5c00815
Wataru Matsuoka, Ken Hirose, Ren Yamada, Taihei Oki, Satoru Iwata, Satoshi Maeda

Identifying molecular entities with desired properties from a vast pool of potential candidates is a fundamental challenge in organic chemistry. In particular, ligand engineering─designing optimal ligands for transition metal catalysis─has been extensively studied over the past few decades. To address this challenge, we previously proposed the virtual ligand (VL) approach, a computational method that introduces a mathematical model to approximate ligand molecules within quantum chemical calculations. This model is then optimized to identify the electronic and steric properties most suited for a given reaction. However, the interpretability of the resulting VL parameters remained elusive, limiting predictions to a qualitative level. In this study, we establish a mathematical framework that links real molecules to the VL parameters, thereby enabling rapid and quantitative prediction of optimal ligands. The prediction algorithm was validated across four different reactions, and its accuracy, limitations and potential improvements are discussed.

从大量潜在的候选分子中识别具有所需性质的分子实体是有机化学的一个基本挑战。特别是配体工程──为过渡金属催化设计最佳配体──在过去的几十年里得到了广泛的研究。为了解决这一挑战,我们之前提出了虚拟配体(VL)方法,这是一种在量子化学计算中引入数学模型来近似配体分子的计算方法。然后对该模型进行优化,以确定最适合给定反应的电子和空间性质。然而,由此产生的VL参数的可解释性仍然难以捉摸,限制了定性水平的预测。在这项研究中,我们建立了一个数学框架,将真实分子与VL参数联系起来,从而能够快速定量地预测最佳配体。在四种不同的反应中对该预测算法进行了验证,并讨论了其准确性、局限性和改进潜力。
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引用次数: 0
Noise-Consistent Hypergraph Autoencoder Based on Contrastive Learning for Cancer ceRNA Association Prediction in Complex Biological Regulatory Networks. 基于对比学习的噪声一致超图自编码器在复杂生物调控网络中预测癌症ceRNA关联。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2025-06-12 DOI: 10.1021/acs.jcim.5c01164
Xin-Fei Wang, Lan Huang, Yan Wang, Ren-Chu Guan, Zhu-Hong You, Feng-Feng Zhou, Yu-Qing Li, Zi-Qi Zhao

Competitive endogenous RNA (ceRNA) regulatory networks (CENA) have advanced our understanding of noncoding RNAs' roles in complex diseases, providing a theoretical basis for disease mechanisms. Existing ceRNA-disease association prediction methods are limited by traditional graph structures' inability to model long-range dependencies in biological networks. While hypergraph models partially address this, they often fail to effectively handle graph-level and node-level noise, hindering improvements in predictive performance. To address these challenges, we propose a Noise-Consistent hypeRgraph AutoEncoder framework with denoising strategies, termed NCRAE, aimed at achieving robust node embeddings in ceRNA regulatory networks and enabling the precise prediction of cancer-related ceRNA biomarkers. NCRAE employs a multiview contrastive learning strategy, integrating graph-level and node-level corruption with clean feature references to significantly enhance the robustness of hypergraph feature learning. Furthermore, to mitigate potential biases introduced by contrastive learning, NCRAE incorporates a noise consistency loss constraint, dynamically adjusting the weights of each component to further optimize the model's noise resistance and generalization ability. Combined with hypergraph convolution and Fourier KAN techniques, NCRAE achieves effective node embedding learning. Experiments on cancer-related ceRNA data sets show that NCRAE outperforms existing methods, especially in noisy conditions, demonstrating its robustness and predictive capability. Case studies further illustrate its practical value in cancer biomarker prediction, providing a powerful tool for cancer biomarker discovery.

竞争性内源性RNA (ceRNA)调控网络(CENA)促进了我们对非编码RNA在复杂疾病中的作用的理解,为疾病机制提供了理论基础。现有的cerna -疾病关联预测方法受到传统图结构无法模拟生物网络中远程依赖关系的限制。虽然超图模型部分地解决了这个问题,但它们通常无法有效地处理图级和节点级噪声,从而阻碍了预测性能的改进。为了解决这些挑战,我们提出了一个带有去噪策略的噪声一致超图自动编码器框架,称为NCRAE,旨在实现ceRNA调节网络中的鲁棒节点嵌入,并能够精确预测癌症相关的ceRNA生物标志物。NCRAE采用多视图对比学习策略,将图级和节点级的损坏与干净的特征引用相结合,显著增强了超图特征学习的鲁棒性。此外,为了减轻对比学习带来的潜在偏差,NCRAE引入了噪声一致性损失约束,动态调整各分量的权重,进一步优化模型的抗噪声能力和泛化能力。结合超图卷积和傅里叶KAN技术,NCRAE实现了有效的节点嵌入学习。在癌症相关ceRNA数据集上的实验表明,NCRAE优于现有方法,特别是在噪声条件下,证明了其鲁棒性和预测能力。案例研究进一步说明了其在癌症生物标志物预测中的实用价值,为癌症生物标志物的发现提供了有力的工具。
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引用次数: 0
Exploring the Myostatin Activation Pathway: A Promising Target for Treating Muscle Atrophy. 肌生长抑制素激活途径的探索:治疗肌肉萎缩的一个有希望的靶点。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2025-06-12 DOI: 10.1021/acs.jcim.5c00639
Daniel B Quintanilha, Hélio F Dos Santos

Myostatin is a myokine found in skeletal muscle that acts as a negative regulator of muscle growth. Elevated levels of this protein are linked to muscle atrophy, making it a promising target for therapies aimed at muscle regeneration, particularly in muscular dystrophies. In this study, we investigate the molecular interactions involved in myostatin activation to develop a model for peptide-based inhibitors. Our simulations align with experimental data, identifying the forearm domain of the myostatin precursor as being essential for maintaining its inactive state. Key residues, such as Ile and Leu, play a primary role in stabilizing this interaction. Based on these findings, we propose a peptide-based drug model identifying essential residues and mutable sites to enhance inhibition. Additionally, we identified a previously unreported target site emerging during the final step of myostatin activation. Targeting this site with small molecules could offer a new strategy for preventing myostatin activity and promoting muscle growth.

肌生长抑制素是骨骼肌中发现的一种肌肉生长因子,对肌肉生长起负调节作用。这种蛋白水平升高与肌肉萎缩有关,使其成为肌肉再生治疗的一个有希望的靶点,特别是在肌肉萎缩症中。在这项研究中,我们研究了参与肌肉生长抑制素激活的分子相互作用,以建立一个基于肽的抑制剂模型。我们的模拟与实验数据一致,确定肌肉生长抑制素前体的前臂区域对于维持其非活性状态至关重要。关键残基,如Ile和Leu,在稳定这种相互作用中起主要作用。基于这些发现,我们提出了一个基于肽的药物模型,识别必要的残基和可变位点,以增强抑制。此外,我们确定了一个以前未报道的目标位点出现在肌生长抑制素激活的最后一步。用小分子靶向这一位点可以提供防止肌肉生长抑制素活性和促进肌肉生长的新策略。
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引用次数: 0
A Hyperbolic Discrete Diffusion 3D RNA Inverse Folding Model for Functional RNA Design. 用于功能性RNA设计的双曲离散扩散三维RNA逆折叠模型。
IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Pub Date : 2025-06-12 DOI: 10.1021/acs.jcim.5c00527
Dongyue Hou, Shuai Zhang, Mengyao Ma, Hanbo Lin, Zheng Wan, Hui Zhao, Ruian Zhou, Xiao He, Xian Wei, Dianwen Ju, Xian Zeng

Generative design of functional RNAs presents revolutionary opportunities for diverse RNA-based biotechnologies and biomedical applications. To this end, RNA inverse folding is a promising strategy for generatively designing new RNA sequences that can fold into desired topological structures. However, three-dimensional (3D) RNA inverse folding remains highly challenging due to limited availability of experimentally derived 3D structural data and unique characteristics of RNA 3D structures. In this study, we propose RIdiffusion, a hyperbolic denoising diffusion generative RNA inverse folding model, for 3D RNA design tasks. By embedding geometric features of RNA 3D structures and topological properties into hyperbolic space, RIdiffusion efficiently recovers the distribution of nucleotides for targeted RNA 3D structures based on limited training samples using a discrete diffusion model. We perform extensive evaluations on RIdiffusion using different data sets and strict data-splitting strategies and the results demonstrate that RIdiffusion consistently outperforms baseline generative models for RNA inverse folding. This study introduces RIdiffusion as a powerful tool for the generative design of functional RNAs, even in structure-data-scarce scenarios. By leveraging geometric deep learning, RIdiffusion enhances performance and holds promise for diverse downstream applications.

功能rna的生成设计为各种基于rna的生物技术和生物医学应用提供了革命性的机会。为此,RNA逆折叠是一种有前途的策略,用于生成设计新的RNA序列,这些序列可以折叠成所需的拓扑结构。然而,由于实验导出的3D结构数据的可用性有限以及RNA 3D结构的独特特征,三维(3D) RNA逆折叠仍然具有很高的挑战性。在这项研究中,我们提出了一个双曲去噪扩散生成RNA逆折叠模型RIdiffusion,用于3D RNA设计任务。通过将RNA三维结构的几何特征和拓扑性质嵌入到双曲空间中,RIdiffusion利用离散扩散模型有效地恢复了基于有限训练样本的目标RNA三维结构的核苷酸分布。我们使用不同的数据集和严格的数据分割策略对RIdiffusion进行了广泛的评估,结果表明,RIdiffusion始终优于RNA逆折叠的基线生成模型。本研究介绍了RIdiffusion作为功能rna生成设计的强大工具,即使在结构数据稀缺的情况下也是如此。通过利用几何深度学习,RIdiffusion提高了性能,并为各种下游应用带来了希望。
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引用次数: 0
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Journal of Chemical Information and Modeling
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