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Machine learning for enzyme catalytic activity: current progress and future horizons. 酶催化活性的机器学习:当前进展和未来前景。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-07 DOI: 10.1093/bib/bbag002
Sizhe Qiu, Haris Saeed, Will Leonard, Feiran Li, Aidong Yang

Enzyme catalysis, with its advantages in environmental sustainability and efficiency, is gaining traction across diverse industrial applications, such as waste utilization and pharmaceutical biomanufacturing. However, optimizing enzyme catalytic activity remains a significant challenge. To facilitate enzyme mining and engineering, machine learning (ML) models have emerged to predict enzyme substrate specificity, enzyme turnover number, and enzyme catalytic optimum. This review endeavored to assist researchers in effectively utilizing predictive models for enzyme catalytic activity through presenting recent advancements and analyzing different approaches. We also pointed out existing limitations (e.g. dataset imbalance) and offered suggestions on potential enhancements to address them. We identified that the attention mechanism, inclusion of new features such as product information and temperature, and using transfer learning to leverage different datasets were three main useful modeling strategies. Furthermore, we envisaged that accurate predictors of enzyme catalytic activity would potentially transform enzyme and metabolic engineering, and the optimization of biocatalysis.

酶催化以其在环境可持续性和效率方面的优势,在废物利用和制药生物制造等各种工业应用中越来越受到关注。然而,优化酶的催化活性仍然是一个重大的挑战。为了促进酶的挖掘和工程,机器学习(ML)模型已经出现,以预测酶的底物特异性,酶周转数和酶的催化优化。本文通过介绍酶催化活性的最新进展和分析不同的预测方法,以帮助研究人员有效地利用酶催化活性的预测模型。我们还指出了现有的限制(例如数据集不平衡),并提出了潜在的改进建议来解决这些问题。我们发现,注意力机制、产品信息和温度等新特性的包含以及使用迁移学习来利用不同的数据集是三个主要有用的建模策略。此外,我们设想酶催化活性的准确预测可能会改变酶和代谢工程,以及生物催化的优化。
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引用次数: 0
Learning to explore tree neighbourhoods for phylogenetic inference. 学习探索树邻域进行系统发育推断。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-07 DOI: 10.1093/bib/bbaf732
Federico Julian Camerota Verdù, Andrea Gasparin, Luca Bortolussi, Lorenzo Castelli

Phylogenetic inference is a key challenge in computational biology, with applications ranging from evolutionary analysis to comparative genomics. The balanced minimum evolution problem (BMEP) offers a well-established formulation of this problem, but remains computationally intractable for large instances. In this work, we propose a reinforcement learning (RL) framework to tackle the BMEP through local search in the space of phylogenetic trees. Our contributions are three-fold: (i) we introduce an improved RL formulation tailored to the structure of phylogenetic inference in the context of the BMEP; (ii) we train an RL agent capable of solving instances with up to 100 taxa; and (iii) we investigate the generalization capabilities of the learned policy across different substitution models, instance sizes, and datasets. To address the limitations of relying solely on the learned policy at inference time, we integrate it into a novel search-based framework that enables effective adaptation during evaluation. Experimental results show that our method outperforms greedy heuristics and matches the performance of state-of-the-art algorithms for the BMEP. When tested under significant distributional shifts, we greatly reduce the gap with state-of-the-art algorithms. This demonstrates the potential of RL applications to phylogenetic inference.

系统发育推断是计算生物学中的一个关键挑战,其应用范围从进化分析到比较基因组学。平衡最小进化问题(BMEP)为该问题提供了一个完善的表述,但对于大型实例来说仍然难以计算。在这项工作中,我们提出了一个强化学习(RL)框架,通过在系统发育树空间中的局部搜索来解决BMEP问题。我们的贡献有三个方面:(i)我们引入了一种改进的RL公式,该公式适合BMEP背景下的系统发育推断结构;(ii)我们训练一个能够解决多达100个分类群实例的RL代理;(iii)我们研究了学习策略在不同替代模型、实例大小和数据集上的泛化能力。为了解决在推理时仅依赖学习策略的局限性,我们将其集成到一个新的基于搜索的框架中,该框架能够在评估期间进行有效的适应。实验结果表明,我们的方法优于贪婪启发式算法,并与最先进的BMEP算法的性能相匹配。当在显著的分布变化下进行测试时,我们大大减少了与最先进算法的差距。这证明了强化学习在系统发育推理中的应用潜力。
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引用次数: 0
From biogenesis to deep modeling: a holistic review of miRNA-disease prediction computational methods with experimental comparison. 从生物发生到深度建模:mirna疾病预测计算方法的整体综述与实验比较。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-07 DOI: 10.1093/bib/bbaf736
Siya Xie, K L Eddie Law

Abnormal dysregulation of microRNAs (miRNAs) expression may lead to a wide spectrum of diseases, and as miRNAs play pivotal roles in disease pathogenesis, diagnosis, and therapy, identifying potential miRNA-disease associations (MDAs) is essential for discovering new diagnostic biomarkers, developing targeted therapeutic strategies, and advancing personalized medicine. Traditional wet-lab experiments are time-consuming, expensive, and consume a lot of resources. Hence, various computational approaches should be developed as auxiliary a priori tools. In the following text, we compile different methods proposed for MDA prediction over the past decade. First, we analyze the data resources supporting MDA studies and introduce approaches for quantifying similarities among MDAs. Second, we comprehensively review 66 computational methods, classify them into five categories, and present comparative experimental analyses on selected methods to identify future research directions. To enhance accessibility, we upload a summary of discussed methods to a GitHub repository (https://github.com/xiesiya/miRNA-disease-association-methods). This review provides comprehensive background knowledge on computational methods for future MDA prediction research.

microRNAs (miRNAs)表达异常失调可能导致广泛的疾病,并且由于miRNAs在疾病发病、诊断和治疗中起着关键作用,鉴定潜在的mirna -疾病关联(mda)对于发现新的诊断生物标志物、制定靶向治疗策略和推进个性化医疗至关重要。传统的湿实验室实验耗时长,成本高,消耗大量资源。因此,应该开发各种计算方法作为辅助的先验工具。在接下来的文章中,我们整理了过去十年中提出的预测MDA的不同方法。首先,我们分析了支持MDA研究的数据资源,并介绍了量化MDA之间相似性的方法。其次,综合评述66种计算方法,将其分为5类,并对所选方法进行对比实验分析,确定未来的研究方向。为了增强可访问性,我们将讨论的方法的摘要上传到GitHub存储库(https://github.com/xiesiya/miRNA-disease-association-methods)。这篇综述为未来MDA预测研究的计算方法提供了全面的背景知识。
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引用次数: 0
BiGvCL: bipartite graph-based cross-domain contrastive learning model for the predicting drug-gene interactions. BiGvCL:基于二部图的药物-基因相互作用预测跨域对比学习模型。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-07 DOI: 10.1093/bib/bbaf710
Shida He, Zixu Wang, Jing Li, Quan Zou, Feng Zhang

Drug-gene interactions (DGIs) influence the toxicity or ineffectiveness of the drug therapy and play an important role in elucidating drug mechanisms, predicting potential adverse effects, and facilitating precision medicine. Existing computational methods typically rely on chemical or genetic sequence features of drugs and genes, limiting their effectiveness for novel entities lacking explicit annotations. To address this, we propose BiGvCL, a framework that predicts DGIs exclusively based on network topology, requiring no explicit feature information for drugs or genes. BiGvCL introduces a lightweight graph attention mechanism (GATLite) to efficiently aggregate local neighborhood information. Additionally, we develop a gated graph convolutional network (GatedGCN) to explicitly learn high-order interactions between drugs and genes, further integrating contrastive learning to enhance the model's generalizability. Comprehensive experiments on DrugBank and DGIdb datasets show that BiGvCL achieves competitive performance across all metrics compared with representative baselines. Cross-domain evaluations on OGB datasets further confirm its adaptability to heterogeneous biomedical networks. Ablation and hyperparameter analyses highlight the key contributions of contrastive and gated mechanisms, while case studies and molecular docking provide supporting evidence for the biological relevance of predictions. Collectively, while BiGvCL is constrained by its reliance on network topology and transductive learning paradigm, it demonstrates the potential of topology-based approaches for discovering novel drug-gene interactions, which may inform drug repurposing and precision medicine efforts.

药物-基因相互作用(dgi)影响药物治疗的毒性或无效,在阐明药物机制、预测潜在不良反应和促进精准医学方面发挥着重要作用。现有的计算方法通常依赖于药物和基因的化学或基因序列特征,限制了它们对缺乏明确注释的新实体的有效性。为了解决这个问题,我们提出了BiGvCL,这是一个完全基于网络拓扑预测dgi的框架,不需要药物或基因的明确特征信息。BiGvCL引入了一种轻量级的图关注机制(GATLite)来有效地聚合局部邻域信息。此外,我们开发了一个门控图卷积网络(GatedGCN)来明确学习药物和基因之间的高阶相互作用,进一步整合对比学习以增强模型的可泛化性。在DrugBank和DGIdb数据集上的综合实验表明,与代表性基线相比,BiGvCL在所有指标上都实现了具有竞争力的性能。对OGB数据集的跨域评价进一步证实了其对异构生物医学网络的适应性。消融和超参数分析强调了对比和门控机制的关键贡献,而案例研究和分子对接为预测的生物学相关性提供了支持证据。总的来说,虽然BiGvCL受限于其对网络拓扑和转导学习范式的依赖,但它证明了基于拓扑的方法在发现新的药物-基因相互作用方面的潜力,这可能为药物再利用和精准医学工作提供信息。
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引用次数: 0
S2potAE: multimodal spatial spot autoencoder integrating image and transcriptomic features for deconvolution. S2potAE:融合图像和转录组特征的多模态空间点自编码器,用于反卷积。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-07 DOI: 10.1093/bib/bbag020
Tianyi Chen, Wen Xue, Yunfei Zhang, Yongcan Luo, Cheng Liu, Wenjun Shen, Si Wu, Hau-San Wong

Spatial transcriptomics (ST) technologies have significantly advanced our ability to discern gene expression patterns within intact tissue structures, enabling unprecedented insights into cellular heterogeneity and tissue architecture. However, accurately determining cell-type proportions within spatially aggregated transcriptomic spots remains challenging due to inherent granularity discrepancies, batch effects, and spatial heterogeneity. To address these challenges, we introduce S$^{2}$potAE, a novel spatial spot autoencoder framework that integrates gene expression data, spatial coordinates, and morphological features from histology images for precise spot-level deconvolution. S$^{2}$potAE employs a multilevel feature aggregation strategy, systematically extracting and fusing spatially-aware features through a graph-based spatial encoder and perceptual image embeddings from histological patches. Furthermore, an auxiliary pathological classification task enhances biological relevance and model interpretability. Comprehensive benchmarking across multiple simulated and real datasets-including human breast cancer, mouse brain anterior, and human dorsolateral prefrontal cortex-demonstrates that S$^{2}$potAE consistently surpasses state-of-the-art methods in accuracy, robustness, and biological interpretability. Our approach effectively resolves complex cellular compositions, accurately identifies tumor boundaries, and captures nuanced cell-type distributions, significantly enhancing the utility of ST in biological research and clinical applications.

空间转录组学(ST)技术极大地提高了我们在完整组织结构中识别基因表达模式的能力,使我们能够前所未有地了解细胞异质性和组织结构。然而,由于固有的粒度差异、批效应和空间异质性,准确确定空间聚集的转录组点内的细胞类型比例仍然具有挑战性。为了解决这些挑战,我们引入了S$^{2}$potAE,这是一种新型的空间点自编码器框架,它集成了基因表达数据、空间坐标和来自组织学图像的形态学特征,以实现精确的点级反卷积。该算法采用多层次特征聚合策略,通过基于图的空间编码器和组织斑块的感知图像嵌入,系统地提取和融合空间感知特征。此外,辅助病理分类任务增强了生物学相关性和模型可解释性。对多个模拟和真实数据集(包括人类乳腺癌、小鼠大脑前部和人类背外侧前额叶皮层)的综合基准测试表明,S$^{2}$potAE在准确性、稳健性和生物学可解释性方面始终优于最先进的方法。我们的方法有效地解决了复杂的细胞组成,准确地识别肿瘤边界,并捕获细微的细胞类型分布,显著提高了ST在生物学研究和临床应用中的效用。
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引用次数: 0
PathCLAST: pathway-augmented contrastive learning with attention for interpretable spatial transcriptomics. PathCLAST:可解释空间转录组学的通路增强对比学习。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-07 DOI: 10.1093/bib/bbag029
Minho Noh, Sungkyung Lee, Sunghyun Kim, Sangsoo Lim

Deciphering how molecular programs are spatially organized within tissues is pivotal for understanding tumor evolution and microenvironmental interactions. Existing spatial transcriptomics tools either rely on gene-level features, ignoring the rich topology of biological pathways, or deliver black-box clusters with little mechanistic insight; thus, they limit their translational impact. A method that simultaneously leverages pathway structures and spatially matched histopathology could produce domain delineations that are both accurate and biologically interpretable. We introduce PathCLAST (Pathway-augmented Contrastive Learning with Attention for interpretable Spatial Transcriptomics), which is a framework that integrates gene expression, histopathological images, and curated pathway graphs via bi-modal contrastive learning. By embedding expression profiles into biologically structured graphs, and aligning them with local image features, PathCLAST achieves state-of-the-art spatial domain identification on multiple public datasets, while offering pathway-level attention scores for mechanistic interpretation. The pathway embedding also serves as an explicit, biology-informed dimensionality reduction scheme. PathCLAST not only uncovers domain-specific pathways and spatially organized signaling activities, but also quantifies intra-domain heterogeneity, spatial autocorrelation, and inter-domain crosstalk, providing fine-grained insights into tumor progression and tissue architecture. PathCLAST is available at https://github.com/sslim-aidrug/PathCLAST.

破译分子程序如何在组织内的空间组织是理解肿瘤进化和微环境相互作用的关键。现有的空间转录组学工具要么依赖于基因水平的特征,忽视了生物途径的丰富拓扑结构,要么提供缺乏机制洞察力的黑盒集群;因此,它们限制了它们的翻译影响。一种同时利用通路结构和空间匹配的组织病理学的方法可以产生既准确又具有生物学可解释性的区域描绘。我们介绍了PathCLAST (pathway -augmented contrast Learning with Attention for interpretable Spatial Transcriptomics),这是一个整合了基因表达、组织病理图像和通过双模对比学习的路径图的框架。通过将表达谱嵌入到生物结构图中,并将其与局部图像特征对齐,PathCLAST在多个公共数据集上实现了最先进的空间域识别,同时为机制解释提供路径级注意力评分。路径嵌入也可以作为一个明确的,生物学知情的降维方案。PathCLAST不仅揭示了区域特异性通路和空间组织的信号活动,还量化了区域内异质性、空间自相关性和区域间串扰,为肿瘤进展和组织结构提供了细粒度的见解。PathCLAST可从https://github.com/sslim-aidrug/PathCLAST获得。
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引用次数: 0
Harnessing AI to fuse phenotypic signatures for drug target identification: progress in computational modeling. 利用人工智能融合药物靶标识别的表型特征:计算建模的进展。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-07 DOI: 10.1093/bib/bbag045
Fengming Chen, Ranran Zhao, Xingxing Han, Huan Li, Zhishu Tang

Computational models integrating large-scale gene expression profiles provide a powerful approach for predicting multi-target drug interactions (DTIs). Unlike traditional experimental and computational methods that often require detailed structural or target-specific information, gene expression-based models leverage reference transcriptional signatures. This enables functional inference of interactions without explicit structural data, offering a valuable strategy in data-limited scenarios. By incorporating phenotypic information, these models bridge phenotype screening and target prediction, establishing a novel paradigm for target identification. This review introduces and compares current target identification methods, emphasizing the unique advantages of gene expression profiling in DTI prediction. We also outline major public databases and their applications. As an effective hypothesis-generation tools, computational DTI models reduce experimental costs, enhance understanding of multi-target mechanisms, and accelerate drug discovery. We categorize and analyze three primary model types utilizing large-scale gene expression data: biological network-based, association-based, and multimodal integration approaches, discussing their respective strengths and limitations. Key challenges and future directions are also addressed, including data integration, algorithm optimization, and multi-omics fusion, to fully realize the potential of gene expression data in multi-target drug prediction. This review offers comprehensive guidance on advanced tools, databases, and methodologies, enabling novel research paths for unbiased multi-target exploration. By linking phenotype screening with computational analysis, this integrative approach is expected to advance precision medicine, especially in uncovering drug mechanisms in complex diseases, offering promising prospects.

整合大规模基因表达谱的计算模型为预测多靶点药物相互作用(DTIs)提供了一种强大的方法。与传统的实验和计算方法不同,这些方法通常需要详细的结构或目标特异性信息,基于基因表达的模型利用参考转录特征。这允许在没有显式结构数据的情况下对交互进行功能推断,在数据有限的场景中提供了有价值的策略。通过结合表型信息,这些模型将表型筛选和靶标预测联系起来,建立了一种新的靶标识别范式。本文对目前的靶点鉴定方法进行了介绍和比较,强调了基因表达谱在DTI预测中的独特优势。我们还概述了主要的公共数据库及其应用。计算DTI模型作为一种有效的假设生成工具,降低了实验成本,增强了对多靶点机制的理解,加速了药物的发现。我们利用大规模基因表达数据对三种主要的模型类型进行了分类和分析:基于生物网络的、基于关联的和多模态集成的方法,并讨论了它们各自的优势和局限性。提出了数据整合、算法优化、多组学融合等关键挑战和未来发展方向,以充分发挥基因表达数据在多靶点药物预测中的潜力。这篇综述为先进的工具、数据库和方法提供了全面的指导,为公正的多目标探索提供了新的研究途径。通过将表型筛选与计算分析相结合,这种综合方法有望推进精准医学,特别是在揭示复杂疾病的药物机制方面,具有广阔的前景。
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引用次数: 0
MACFIV: a novel framework for nonlinear causal inference in the body mass index-hypertension relationship with many weak and pleiotropic genetic instruments. MACFIV:一个新的框架非线性因果推理的身体质量指数与高血压的关系与许多弱和多效遗传仪器。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-07 DOI: 10.1093/bib/bbaf714
Dong Chen, Yuquan Wang, Dapeng Shi, Yunlong Cao, Yue-Qing Hu

Causal inference is an essential approach for understanding biological processes. Traditional causal inference methods assume a linear relationship between different biological traits, whereas their true causal relationship may be nonlinear, such as U-shaped. Moreover, when the instrument set includes weak and pleiotropic genetic instruments, accurately capturing the shape of these relationships becomes challenging. To address these issues, we propose model-averaged control function-based instrumental variable regression, a two-stage framework based on a model-averaged control function approach to estimate the marginal effect function, which represents the derivative of the causal relationship. In the first stage, a model averaging technique is employed to estimate the control function, thereby reducing weak genetic instrument bias. In the second stage, B-spline approximation is applied to estimate the marginal effect function, while SCAD penalization is used to minimize pleiotropic instrument bias. We establish the asymptotic properties of the proposed estimator and demonstrate its robust performance through simulations. Application to the Atherosclerosis Risk in Communities dataset highlights a nonlinear causal relationship between body mass index and hypertension, with the proposed method effectively estimating the specific shape and trend of the relationship.

因果推理是理解生物过程的重要方法。传统的因果推理方法假设不同生物性状之间存在线性关系,而其真正的因果关系可能是非线性的,如u型关系。此外,当仪器集包括弱和多效遗传仪器时,准确捕捉这些关系的形状变得具有挑战性。为了解决这些问题,我们提出了基于模型平均控制函数的工具变量回归,这是一个基于模型平均控制函数方法的两阶段框架,用于估计代表因果关系导数的边际效应函数。在第一阶段,采用模型平均技术估计控制函数,从而减少弱遗传仪器偏差。在第二阶段,采用b样条近似来估计边际效应函数,同时使用SCAD惩罚来最小化多效仪器偏差。我们建立了该估计器的渐近性质,并通过仿真验证了其鲁棒性。在社区动脉粥样硬化风险数据集中的应用突出了身体质量指数与高血压之间的非线性因果关系,所提出的方法有效地估计了这种关系的具体形状和趋势。
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引用次数: 0
Revealing hidden regulatory dependencies: multi-perspective graph learning for single-cell gene regulatory network inference. 揭示隐藏的调控依赖:单细胞基因调控网络推理的多视角图学习。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-07 DOI: 10.1093/bib/bbaf733
Wenying He, Rentao Zhang, Yaowei Zhu, Haolu Zhou, Yun Zuo, Yude Bai, Liang Yang, Fei Guo

Gene regulatory networks (GRNs) inform analyses of cellular state transitions, regulatory mechanisms, and disease processes. With the rapid development of single-cell sequencing technologies, accurate inference of GRNs from complex and high-dimensional single-cell transcriptomic data remains a core challenge. However, the effective use of multi-level structural and expression features among genes remains a major obstacle to improving inference accuracy. This study presents ATFGRN, an adaptive topology-feature fusion graph neural framework that integrates features from three complementary perspectives for accurate prediction of gene regulatory relationships. The subgraph structure encoding module focuses on local subgraphs of regulatory relationships and identifies structural patterns and topological dependencies. The expression-guided module integrates the gene expression matrix with the original regulatory network and employs a graph convolutional network with a self-attention mechanism to examine interactions between expression dynamics and network topology. The similarity structure module derives similarity information between genes through a KNN graph combined with a graph attention mechanism, which helps detect regulatory pairs with similar expression patterns that lack explicit structural links. Features from these three branches are fused through an attention-based weighting mechanism. This fusion achieves complementary integration of structural, expression, and similarity perspectives and produces more informative regulatory features for prediction. Evaluations on single-cell transcriptomic datasets across four types of networks show that ATFGRN improves AUROC performance by 5.09% over existing approaches, which confirms the effectiveness and applicability of its multi-perspective fusion strategy in GRN inference tasks.

基因调控网络(grn)为细胞状态转变、调控机制和疾病过程的分析提供信息。随着单细胞测序技术的快速发展,从复杂的高维单细胞转录组数据中准确推断grn仍然是一个核心挑战。然而,有效利用基因之间的多层次结构和表达特征仍然是提高推理精度的主要障碍。本研究提出了一种自适应拓扑-特征融合图神经框架ATFGRN,该框架集成了三个互补视角的特征,用于准确预测基因调控关系。子图结构编码模块侧重于调节关系的局部子图,并识别结构模式和拓扑依赖关系。表达引导模块将基因表达矩阵与原始调控网络相结合,采用具有自关注机制的图卷积网络来检测表达动态与网络拓扑之间的相互作用。相似结构模块通过KNN图结合图注意机制提取基因间的相似信息,有助于检测表达模式相似但缺乏明确结构联系的调控对。这三个分支的特征通过基于注意力的权重机制融合在一起。这种融合实现了结构、表达和相似性视角的互补整合,并为预测提供了更多信息调控特征。对四种网络类型的单细胞转录组数据集的评估表明,与现有方法相比,ATFGRN的AUROC性能提高了5.09%,这证实了其多视角融合策略在GRN推理任务中的有效性和适用性。
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引用次数: 0
MPHGNN: metapath-guided heterogeneous graph neural network for miRNA-drug resistance association prediction. MPHGNN:用于mirna -耐药关联预测的元路径引导异构图神经网络。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-07 DOI: 10.1093/bib/bbag013
Guangsheng Huang, Yali Peng, Shuai Wu, Hang Wei, Shigang Liu

Aberrant expression of microRNAs (miRNAs) is closely associated with the pathogenesis and progression of various diseases, particularly cancer, as well as therapeutic responses. Identification of miRNA-drug resistance associations is critical for drug screening and precision medicine. However, conventional experimental approaches remain time-consuming and labor-intensive, while existing computational methods often face challenge in capturing higher-order semantic inference from sparse prior bipartite association network. To address this, we propose MPHGNN, a heterogeneous graph convolutional network (GCN) architecture for predicting miRNA-drug resistance associations. MPHGNN constructs a miRNA-gene-drug heterogeneous network with multimodal biological features, including miRNA expression profiles, drug structural descriptors, and gene functional similarities, and leverages dual learning modules at both metapath and global levels to capture localized patterns and global representations simultaneously. Experimental results demonstrate that MPHGNN outperforms state-of-the-art methods and enhances the discriminative ability of association representations. Interpretability analyses further reveal that metapaths effectively capture underlying biological mechanisms, while the constructed heterogeneous biological network makes important contributions to prediction.

microRNAs (miRNAs)的异常表达与各种疾病,特别是癌症的发病和进展以及治疗反应密切相关。鉴定mirna -耐药关联对药物筛选和精准医学至关重要。然而,传统的实验方法仍然费时费力,而现有的计算方法在从稀疏先验二部关联网络中获取高阶语义推理时往往面临挑战。为了解决这个问题,我们提出了MPHGNN,一种用于预测mirna -耐药性关联的异构图卷积网络(GCN)架构。MPHGNN构建了一个具有多模态生物学特征的miRNA-基因-药物异质网络,包括miRNA表达谱、药物结构描述符和基因功能相似性,并利用元路径和全局水平的双重学习模块,同时捕获局部模式和全局表征。实验结果表明,该方法优于现有的关联表征方法,提高了关联表征的判别能力。可解释性分析进一步表明,元路径可以有效地捕捉潜在的生物机制,而构建的异质生物网络对预测有重要贡献。
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