network diffusion

  • 文章类型: Journal Article
    高通量基因组和蛋白质组扫描方法使研究人员能够测量某些疾病的全基因组基因(或基因产物)的定量。这在促进疾病机制的发现中起着至关重要的作用。高通量方法通常会产生大量感兴趣的基因列表(GOI),如差异表达的基因/蛋白质。然而,研究人员必须进行手动分类和验证,以探索最有前途的,已知疾病基因与GOI(疾病信号)之间的生物学上合理的联系,以供进一步研究。这里,为了应对这一挑战,我们提出了一种基于网络的策略DDK-Linker,通过将GOI与疾病已知基因联系起来,促进对隐藏在组学数据中的疾病信号的探索.具体来说,它通过六种网络方法(重启随机游走,Deepwalk,Node2Vec,LINE,希望,Laplacian),以发现与疾病基因距离较短的组学数据中的疾病信号。此外,受益于我们建立的知识库的建立,为每个候选疾病信号提供了丰富的生物信息学注释。为了帮助解释组学数据并方便使用,我们已将此策略开发为用户可以通过网站访问或下载R包的应用程序。我们相信DDK-Linker将加速探索各种组学数据中的疾病基因和药物靶标,比如基因组学,转录组学和蛋白质组学数据,为复杂的疾病机制和药理研究提供线索。DDK-Linker可以在http://ddklinker上免费访问。ncpsb.org.cn/.
    The high-throughput genomic and proteomic scanning approaches allow investigators to measure the quantification of genome-wide genes (or gene products) for certain disease conditions, which plays an essential role in promoting the discovery of disease mechanisms. The high-throughput approaches often generate a large gene list of interest (GOIs), such as differentially expressed genes/proteins. However, researchers have to perform manual triage and validation to explore the most promising, biologically plausible linkages between the known disease genes and GOIs (disease signals) for further study. Here, to address this challenge, we proposed a network-based strategy DDK-Linker to facilitate the exploration of disease signals hidden in omics data by linking GOIs to disease knowns genes. Specifically, it reconstructed gene distances in the protein-protein interaction (PPI) network through six network methods (random walk with restart, Deepwalk, Node2Vec, LINE, HOPE, Laplacian) to discover disease signals in omics data that have shorter distances to disease genes. Furthermore, benefiting from the establishment of knowledge base we established, the abundant bioinformatics annotations were provided for each candidate disease signal. To assist in omics data interpretation and facilitate the usage, we have developed this strategy into an application that users can access through a website or download the R package. We believe DDK-Linker will accelerate the exploring of disease genes and drug targets in a variety of omics data, such as genomics, transcriptomics and proteomics data, and provide clues for complex disease mechanism and pharmacological research. DDK-Linker is freely accessible at http://ddklinker.ncpsb.org.cn/.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    肺癌是世界上最常见的恶性肿瘤之一,在所有癌症中死亡率最高。中医药在肺癌治疗领域受到越来越多的关注。然而,中药成分的丰富对确定有希望的候选成分和探索其治疗肺癌的机制提出了挑战。在这项工作中,将两种基于网络的算法结合起来,计算人体相互作用组中成分靶点和肺癌靶点之间的网络关系.在对构建的疾病模块进行富集分析的基础上,确定了肺癌的关键靶标。此外,进行了肺癌与成分之间重叠靶标的分子对接和富集分析,以研究候选成分抗肺癌的潜在机制.确定了10种潜在的抗肺癌成分,它们可能对肺癌的发展具有相似的作用。从这项研究中获得的结果提供了有价值的见解,并为开发旨在治疗肺癌的新药提供了潜在的途径。
    Lung cancer is one of the most common malignant tumors around the world, which has the highest mortality rate among all cancers. Traditional Chinese medicine (TCM) has attracted increased attention in the field of lung cancer treatment. However, the abundance of ingredients in Chinese medicines presents a challenge in identifying promising ingredient candidates and exploring their mechanisms for lung cancer treatment. In this work, two network-based algorithms were combined to calculate the network relationships between ingredient targets and lung cancer targets in the human interactome. Based on the enrichment analysis of the constructed disease module, key targets of lung cancer were identified. In addition, molecular docking and enrichment analysis of the overlapping targets between lung cancer and ingredients were performed to investigate the potential mechanisms of ingredient candidates against lung cancer. Ten potential ingredients against lung cancer were identified and they may have similar effect on the development of lung cancer. The results obtained from this study offered valuable insights and provided potential avenues for the development of novel drugs aimed at treating lung cancer.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    使用测序(scATAC-seq)数据的转座酶可访问染色质的单细胞测定为理解表观遗传异质性和转录调控提供了新的见解。随着数据集资源的日益丰富,迫切需要通过专门为scATAC-seq设计的高质量数据分析方法来提取更多有用的信息。然而,分析scATAC-seq数据带来了挑战,因为它接近二值化,高稀疏性和超高维数特性。这里,我们提出了一种新的基于网络扩散的计算方法来全面分析scATAC-seq数据,通过具有峰值位置信息的网络细化(SCARP)进行命名为单细胞ATAC-seq分析。SCARP在图论框架下制定了网络细化扩散方法,以聚合来自不同网络订单的信息,有效地补偿scATAC-seq数据中的缺失信号。通过整合基因组上相邻峰之间的距离信息,SCARP还有助于描绘峰的共同可达性。这两项创新使SCARP能够更有效地获得单元和峰值的低维表示。我们已经通过充分的实验证明,SCARP促进了对scATAC-seq数据的出色分析。具体来说,SCARP表现出出色的小区聚类性能,能够更好地阐明细胞异质性和发现新的具有生物学意义的细胞亚群。此外,SCARP还有助于描绘可访问区域的共同可及性关系,并提供对转录调控的新见解。因此,SCARP鉴定了与疾病相关的关键京都基因和基因组百科全书(KEGG)途径有关的基因,并预测了可靠的顺式调节相互作用。总而言之,我们的研究表明,SCARP是全面分析scATAC-seq数据的有前景的工具.
    Single-cell assay for transposase-accessible chromatin using sequencing (scATAC-seq) data provided new insights into the understanding of epigenetic heterogeneity and transcriptional regulation. With the increasing abundance of dataset resources, there is an urgent need to extract more useful information through high-quality data analysis methods specifically designed for scATAC-seq. However, analyzing scATAC-seq data poses challenges due to its near binarization, high sparsity and ultra-high dimensionality properties. Here, we proposed a novel network diffusion-based computational method to comprehensively analyze scATAC-seq data, named Single-Cell ATAC-seq Analysis via Network Refinement with Peaks Location Information (SCARP). SCARP formulates the Network Refinement diffusion method under the graph theory framework to aggregate information from different network orders, effectively compensating for missing signals in the scATAC-seq data. By incorporating distance information between adjacent peaks on the genome, SCARP also contributes to depicting the co-accessibility of peaks. These two innovations empower SCARP to obtain lower-dimensional representations for both cells and peaks more effectively. We have demonstrated through sufficient experiments that SCARP facilitated superior analyses of scATAC-seq data. Specifically, SCARP exhibited outstanding cell clustering performance, enabling better elucidation of cell heterogeneity and the discovery of new biologically significant cell subpopulations. Additionally, SCARP was also instrumental in portraying co-accessibility relationships of accessible regions and providing new insight into transcriptional regulation. Consequently, SCARP identified genes that were involved in key Kyoto Encyclopedia of Genes and Genomes (KEGG) pathways related to diseases and predicted reliable cis-regulatory interactions. To sum up, our studies suggested that SCARP is a promising tool to comprehensively analyze the scATAC-seq data.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    药物相互作用在药物研究中起着至关重要的作用。然而,它们也可能导致患者的不良反应,有严重的后果。手动检测药物-药物相互作用耗时且昂贵,所以迫切需要用计算机的方法来解决这个问题。计算机识别药物相互作用有两种方法:一种是识别已知的药物相互作用,另一个是预测未知的药物相互作用。在本文中,本文综述了机器学习预测未知药物相互作用的研究进展。在这些方法中,基于文献的方法是特殊的,因为它结合了DDI的提取方法和DDI的预测方法。我们首先介绍常见的数据库,然后简要描述每种方法,并总结了一些预测模型的优缺点。最后,我们讨论了机器学习方法在预测药物相互作用方面的挑战和前景。这篇综述旨在为感兴趣的研究人员进一步推广生物信息学算法预测DDI提供有用的指导。
    Drug-drug interactions play a vital role in drug research. However, they may also cause adverse reactions in patients, with serious consequences. Manual detection of drug-drug interactions is time-consuming and expensive, so it is urgent to use computer methods to solve the problem. There are two ways for computers to identify drug interactions: one is to identify known drug interactions, and the other is to predict unknown drug interactions. In this paper, we review the research progress of machine learning in predicting unknown drug interactions. Among these methods, the literature-based method is special because it combines the extraction method of DDI and the prediction method of DDI. We first introduce the common databases, then briefly describe each method, and summarize the advantages and disadvantages of some prediction models. Finally, we discuss the challenges and prospects of machine learning methods in predicting drug interactions. This review aims to provide useful guidance for interested researchers to further promote bioinformatics algorithms to predict DDI.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    Recently, with the rapid progress of high-throughput sequencing technology, diverse genomic data are easy to be obtained. To effectively exploit the value of those data, integrative methods are urgently needed. In this paper, based on SNF (Similarity Network Diffusion) [1], we proposed a new integrative method named ndmaSNF (network diffusion model assisted SNF), which can be used for cancer subtype discovery with the advantage of making use of somatic mutation data and other discrete data. Firstly, we incorporate network diffusion model on mutation data to make it smoothed and adaptive. Then, the mutation data along with other data types are utilized in the SNF framework by constructing patient-by-patient similarity networks for each data type. Finally, a fused patient network containing all the information from different input data types is obtained by using a nonlinear iterative method. The fused network can be used for cancer subtype discovery through the clustering algorithm. Experimental results on four cancer datasets showed that our ndmaSNF method can find subtypes with significant differences in the survival profile and other clinical features.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    Pinpointing the sources of dementia is crucial to the effective treatment of neurodegenerative diseases. In this paper, we propose a diffusion model with impulsive sources over the brain connectivity network to model the progression of brain atrophy. To reliably estimate the atrophy sources, we impose sparse regularization on the source distribution and solve the inverse problem with an efficient gradient descent method. We localize the possible origins of Alzheimer\'s disease (AD) based on a large set of repeated magnetic resonance imaging (MRI) scans in Alzheimer\'s Disease Neuroimaging Initiative (ADNI) database. The distribution of the sources averaged over the sample population is evaluated. We find that the dementia sources have different concentrations in the brain lobes for AD patients and mild cognitive impairment (MCI) subjects, indicating possible switch of the dementia driving mechanism. Moreover, we demonstrate that we can effectively predict changes of brain atrophy patterns with the proposed model. Our work could help understand the dynamics and origin of dementia, as well as monitor the progression of the diseases in an early stage.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Sci-hub)

公众号