databases, genetic

数据库,遗传
  • 文章类型: Journal Article
    子宫内膜癌(UCEC)是女性三大恶性肿瘤之一。HOX基因调节肿瘤的发展。然而,HOX在多种细胞类型的表达机制中以及在UCEC中肿瘤微环境(TME)细胞浸润的发展和进展中的潜在作用仍然未知。在这项研究中,我们利用癌症基因组图谱(TCGA)数据库和国际癌症基因组联盟(ICGC)数据库分析了基于39个HOX基因的529例UCEC患者的转录组数据,梳理临床信息,我们发现HOX基因是UCEC发生发展和TME多样性和复杂性形成的关键因素。这里,开发了一种新的评分系统来量化UCEC中的个体HOX模式.我们的研究发现,低HOX评分组患者有丰富的抗肿瘤免疫细胞浸润,良好的肿瘤分化,更好的预测。相比之下,高HOX评分与免疫检查点的封锁有关,增强了对免疫疗法的反应。实时定量PCR(RT-qPCR)和免疫组织化学(IHC)显示HOX基因在肿瘤患者中的较高表达。我们发现,上皮细胞中HOX基因的显著上调可以通过单细胞RNA测序(scRNA-seq)激活与肿瘤侵袭和转移相关的信号通路,如核苷酸代谢过程等。最后,通过HOX评分与癌症相关成纤维细胞(CAFs)之间的正相关关系建立的风险预后模型可以通过scRNA-seq和转录组数据集预测个体患者的预后.总之,HOX基因可作为诊断和预测UCEC的潜在生物标志物,并开发更有效的治疗策略。
    Endometrial cancer (UCEC) is one of three major malignant tumors in women. The HOX gene regulates tumor development. However, the potential roles of HOX in the expression mechanism of multiple cell types and in the development and progression of tumor microenvironment (TME) cell infiltration in UCEC remain unknown. In this study, we utilized both the The Cancer Genome Atlas (TCGA) database and International Cancer Genome Consortium (ICGC) database to analyze transcriptome data of 529 patients with UCEC based on 39 HOX genes, combing clinical information, we discovered HOX gene were a pivotal factor in the development and progression of UCEC and in the formation of TME diversity and complexity. Here, a new scoring system was developed to quantify individual HOX patterns in UCEC. Our study found that patients in the low HOX score group had abundant anti-tumor immune cell infiltration, good tumor differentiation, and better prognoses. In contrast, a high HOX score was associated with blockade of immune checkpoints, which enhances the response to immunotherapy. The Real-Time quantitative PCR (RT-qPCR) and Immunohistochemistry (IHC) exhibited a higher expression of the HOX gene in the tumor patients. We revealed that the significant upregulation of the HOX gene in the epithelial cells can activate signaling pathway associated with tumour invasion and metastasis through single-cell RNA sequencing (scRNA-seq), such as nucleotide metabolic proce and so on. Finally, a risk prognostic model established by the positive relationship between HOX scores and cancer-associated fibroblasts (CAFs) can predict the prognosis of individual patients by scRNA-seq and transcriptome data sets. In sum, HOX gene may serve as a potential biomarker for the diagnosis and prediction of UCEC and to develop more effective therapeutic strategies.
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  • 文章类型: Journal Article
    癌症的干性在癌症的发生和发展中起着重要的作用。是肿瘤侵袭的主要原因,转移,复发,预后不良。非编码RNA(ncRNA)是一类RNA转录本,通常不能编码蛋白质,并已被证明在调节癌症干细胞性中起关键作用。这里,我们开发了ncStem数据库来记录与癌症干性相关的人工筛选和预测的ncRNAs.总的来说,ncStem包含645个经过实验验证的条目,包括159个长链非编码RNA(lncRNAs),254microRNAs(miRNAs),39个环状RNA(circRNAs),和5个其他ncRNAs。每个条目的详细信息包括ncRNA名称,ncRNA标识符,疾病,参考,表达方向,组织,物种,等等。此外,ncStem还为33种TCGA癌症提供了计算预测的癌症干性相关ncRNAs,使用基于监管和共表达网络的重启随机游走(RWR)算法对其进行优先级排序。总的预测癌症干性相关ncRNA包括11132个lncRNA和972个miRNA。此外,ncStem提供了功能富集分析工具,生存分析,以及癌症干性相关ncRNAs的细胞定位询问。总之,ncStem提供了一个平台来检索癌症干性相关的ncRNAs,这可能有助于对癌症干性的研究,并为癌症治疗提供潜在的靶标。数据库URL:http://www。nidmarker-db。cn/ncStem/index。html.
    Cancer stemness plays an important role in cancer initiation and progression, and is the major cause of tumor invasion, metastasis, recurrence, and poor prognosis. Non-coding RNAs (ncRNAs) are a class of RNA transcripts that generally cannot encode proteins and have been demonstrated to play a critical role in regulating cancer stemness. Here, we developed the ncStem database to record manually curated and predicted ncRNAs associated with cancer stemness. In total, ncStem contains 645 experimentally verified entries, including 159 long non-coding RNAs (lncRNAs), 254 microRNAs (miRNAs), 39 circular RNAs (circRNAs), and 5 other ncRNAs. The detailed information of each entry includes the ncRNA name, ncRNA identifier, disease, reference, expression direction, tissue, species, and so on. In addition, ncStem also provides computationally predicted cancer stemness-associated ncRNAs for 33 TCGA cancers, which were prioritized using the random walk with restart (RWR) algorithm based on regulatory and co-expression networks. The total predicted cancer stemness-associated ncRNAs included 11 132 lncRNAs and 972 miRNAs. Moreover, ncStem provides tools for functional enrichment analysis, survival analysis, and cell location interrogation for cancer stemness-associated ncRNAs. In summary, ncStem provides a platform to retrieve cancer stemness-associated ncRNAs, which may facilitate research on cancer stemness and offer potential targets for cancer treatment. Database URL: http://www.nidmarker-db.cn/ncStem/index.html.
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  • 文章类型: Journal Article
    铜/锌超氧化物歧化酶(SOD1)的结构改变是由肌萎缩侧索硬化症(ALS)相关突变引起的常见特征之一。尽管在ALS患者中已经报道了大量的SOD1变体,每个变体的详细结构特性没有得到很好的总结。我们介绍Sodcod,超氧化物歧化酶构象多样性的数据库,收集我们对ALS连锁基因突变和其他扰动引起的SOD1结构变化的综合生化分析。SoDCoD版本1.0包含有关188种SOD1突变体的特性的信息,包括结构变化及其与Derlin-1的结合,以及一组有助于突变体样野生型SOD1蛋白稳定的基因。该数据库为ALS的诊断和治疗提供了宝贵的见解,特别是通过靶向SOD1中的构象改变。数据库URL:https://fujisawagroup。github.io/SoDCoDweb/.
    A structural alteration in copper/zinc superoxide dismutase (SOD1) is one of the common features caused by amyotrophic lateral sclerosis (ALS)-linked mutations. Although a large number of SOD1 variants have been reported in ALS patients, the detailed structural properties of each variant are not well summarized. We present SoDCoD, a database of superoxide dismutase conformational diversity, collecting our comprehensive biochemical analyses of the structural changes in SOD1 caused by ALS-linked gene mutations and other perturbations. SoDCoD version 1.0 contains information about the properties of 188 types of SOD1 mutants, including structural changes and their binding to Derlin-1, as well as a set of genes contributing to the proteostasis of mutant-like wild-type SOD1. This database provides valuable insights into the diagnosis and treatment of ALS, particularly by targeting conformational alterations in SOD1. Database URL: https://fujisawagroup.github.io/SoDCoDweb/.
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  • 文章类型: Journal Article
    青光眼是导致永久性失明的主要原因,影响全球8000万人。最近的研究强调了神经炎症在青光眼早期阶段的重要性,涉及免疫和神经胶质细胞。为了进一步调查,我们使用来自GEO(基因表达Omnibus)数据库的GSE27276数据集和来自GeneCards数据库的神经炎症基因来鉴定与原发性开角型青光眼(POAG)相关的差异表达的神经炎症相关基因.随后,这些基因被提交给基因本体论和京都百科全书的基因和基因组的途径富集分析。通过蛋白质-蛋白质相互作用网络挑选出Hub基因,并使用外部数据集(GSE13534和GSE9944)和实时PCR分析进一步验证。基因-miRNA调控网络,接收机工作特性(ROC)曲线,全基因组关联研究(GWAS),并进行区域表达分析以进一步验证hub基因在青光眼中的参与。共鉴定出179个差异表达基因,包括60个上调和119个下调的基因。其中,发现18个差异表达的神经炎症相关基因与神经炎症相关基因重叠,具有六个基因(SERPINA3,LCN2,MMP3,S100A9,IL1RN,和HP)被确定为潜在的集线器基因。这些基因与IL-17信号通路和酪氨酸代谢有关。基因-miRNA调控网络显示,这些hub基因受到118个miRNAs的调控。值得注意的是,GWAS数据分析成功地鉴定了对应于这六个hub基因的显著单核苷酸多态性(SNP)。ROC曲线分析表明,我们的基因在POAG中显示出显著的准确性。这些基因在小胶质细胞中的表达被进一步证实,穆勒细胞,星形胶质细胞,和眼镜数据库中的视网膜神经节细胞。此外,三个枢纽基因,SERPINA3,IL1R1和LCN2被验证为高危青光眼患者的潜在诊断生物标志物。在OGD/R诱导的青光眼模型中显示表达增加。这项研究表明,确定的hub基因可能通过调节神经炎症影响POAG的发育,它可能为POAG的管理提供新的见解。
    Glaucoma is a leading cause of permanent blindness, affecting 80 million people worldwide. Recent studies have emphasized the importance of neuroinflammation in the early stages of glaucoma, involving immune and glial cells. To investigate this further, we used the GSE27276 dataset from the GEO (Gene Expression Omnibus) database and neuroinflammation genes from the GeneCards database to identify differentially expressed neuroinflammation-related genes associated with primary open-angle glaucoma (POAG). Subsequently, these genes were submitted to Gene Ontology and the Kyoto Encyclopedia of Genes and Genomes for pathway enrichment analyses. Hub genes were picked out through protein-protein interaction networks and further validated using the external datasets (GSE13534 and GSE9944) and real-time PCR analysis. The gene-miRNA regulatory network, receiver operating characteristic (ROC) curve, genome-wide association study (GWAS), and regional expression analysis were performed to further validate the involvement of hub genes in glaucoma. A total of 179 differentially expressed genes were identified, comprising 60 upregulated and 119 downregulated genes. Among them, 18 differentially expressed neuroinflammation-related genes were found to overlap between the differentially expressed genes and neuroinflammation-related genes, with six genes (SERPINA3, LCN2, MMP3, S100A9, IL1RN, and HP) identified as potential hub genes. These genes were related to the IL-17 signaling pathway and tyrosine metabolism. The gene-miRNA regulatory network showed that these hub genes were regulated by 118 miRNAs. Notably, GWAS data analysis successfully identified significant single nucleotide polymorphisms (SNPs) corresponding to these six hub genes. ROC curve analysis indicated that our genes showed significant accuracy in POAG. The expression of these genes was further confirmed in microglia, Müller cells, astrocytes, and retinal ganglion cells in the Spectacle database. Moreover, three hub genes, SERPINA3, IL1R1, and LCN2, were validated as potential diagnostic biomarkers for high-risk glaucoma patients, showing increased expression in the OGD/R-induced glaucoma model. This study suggests that the identified hub genes may influence the development of POAG by regulation of neuroinflammation, and it may offer novel insights into the management of POAG.
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  • 文章类型: Journal Article
    癌变与表达密切相关,维护,DNA的稳定性。这些过程由单碳代谢(1CM)调节,其中涉及复合维生素B(叶酸,B2、B6和B12),而酒精由于叶酸活性的抑制而破坏了循环。综述了与1CM(所有上述维生素和酒精)相关的营养素在乳腺癌中的关系。还分析了与1CM相关的基因的相互作用。通过考虑高加索人群中的次要等位基因频率和连锁不平衡来选择位于这些基因中的单核苷酸多态性。使用各种工具(FUMA,ShinyGO,和REVIGO)以及诸如京都基因和基因组百科全书(KEGG)和GeneOntology(GO)之类的数据库。这项研究的结果表明,摄入1CM相关的复合维生素B是预防乳腺癌发展和生存的关键。此外,参与1CM的基因在乳腺组织中过度表达,参与多种与癌症相关的生物学现象。此外,这些基因参与导致几种类型肿瘤的改变,包括乳腺癌.因此,这项研究支持单碳代谢B族复合维生素和基因在乳腺癌中的作用;两者的相互作用应在未来的研究中得到解决.
    Carcinogenesis is closely related to the expression, maintenance, and stability of DNA. These processes are regulated by one-carbon metabolism (1CM), which involves several vitamins of the complex B (folate, B2, B6, and B12), whereas alcohol disrupts the cycle due to the inhibition of folate activity. The relationship between nutrients related to 1CM (all aforementioned vitamins and alcohol) in breast cancer has been reviewed. The interplay of genes related to 1CM was also analyzed. Single nucleotide polymorphisms located in those genes were selected by considering the minor allele frequency in the Caucasian population and the linkage disequilibrium. These genes were used to perform several in silico functional analyses (considering corrected p-values < 0.05 as statistically significant) using various tools (FUMA, ShinyGO, and REVIGO) and databases such as the Kyoto Encyclopedia of Genes and Genomes (KEGG) and GeneOntology (GO). The results of this study showed that intake of 1CM-related B-complex vitamins is key to preventing breast cancer development and survival. Also, the genes involved in 1CM are overexpressed in mammary breast tissue and participate in a wide variety of biological phenomena related to cancer. Moreover, these genes are involved in alterations that give rise to several types of neoplasms, including breast cancer. Thus, this study supports the role of one-carbon metabolism B-complex vitamins and genes in breast cancer; the interaction between both should be addressed in future studies.
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  • 文章类型: Journal Article
    自闭症谱系障碍(ASD)是一种以社交和沟通困难为特征的神经发育状况,重复的行为。虽然遗传因素在ASD中起着重要作用,精确的遗传景观仍然很复杂,没有完全理解,特别是在非综合征病例中。该研究对三个遗传数据库进行了计算机模拟比较。ClinVar,SFARI基因,和AutDB用于鉴定与非综合征性ASD相关的相关基因子集和遗传变异。进行了基因集富集分析(GSEA)和蛋白质-蛋白质相互作用(PPI)网络分析,以阐明已鉴定基因的生物学意义。统计评估了ASD相关基因子集的完整性及其变异的分布。鉴定了可能对非综合征性ASD具有特异性的二十个重叠基因的子集。GSEA揭示了与神经元发育和分化相关的生物过程的富集,突触功能,和社交技能,强调它们在ASD发病机制中的重要性。PPI网络分析证明了鉴定基因之间的功能关系。遗传变异分析显示,罕见变异和数据库特定的分布模式占主导地位。这些结果为ASD的遗传景观提供了有价值的见解,并概述了该条件中涉及的基因和生物过程,同时考虑到这项研究完全依赖于计算机模拟分析,这可能会受到数据库方法固有的偏见。进一步的研究纳入多组学数据和实验验证是必要的,以加强我们对非综合征性ASD遗传学的理解,并促进有针对性的研究的发展。干预和治疗。
    Autism spectrum disorder (ASD) is a neurodevelopmental condition characterized by social and communication difficulties, along with repetitive behaviors. While genetic factors play a significant role in ASD, the precise genetic landscape remains complex and not fully understood, particularly in non-syndromic cases. The study performed an in silico comparison of three genetic databases. ClinVar, SFARI Gene, and AutDB were utilized to identify relevant gene subset and genetic variations associated with non-syndromic ASD. Gene set enrichment analysis (GSEA) and protein-protein interaction (PPI) network analysis were conducted to elucidate the biological significance of the identified genes. The integrity of ASD-related gene subset and the distribution of their variations were statistically assessed. A subset of twenty overlapping genes potentially specific for non-syndromic ASD was identified. GSEA revealed enrichment of biological processes related to neuronal development and differentiation, synaptic function, and social skills, highlighting their importance in ASD pathogenesis. PPI network analysis demonstrated functional relationships among the identified genes. Analysis of genetic variations showed predominance of rare variants and database-specific distribution patterns. The results provide valuable insights into the genetic landscape of ASD and outline the genes and biological processes involved in the condition, while taking into account that the study relied exclusively on in silico analyses, which may be subject to biases inherent to database methodologies. Further research incorporating multi-omics data and experimental validation is warranted to enhance our understanding of non-syndromic ASD genetics and facilitate the development of targeted research, interventions and therapies.
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  • 文章类型: Journal Article
    背景:大规模测序在揭示ccRCC的基因组图谱以及预测预后和对靶向药物的治疗反应方面发挥着重要作用。然而,中国人群的相关临床数据仍然很少。
    方法:收集66例中国ccRCC患者的新鲜肿瘤标本,然后对基因组RNA进行全转录组测序(WTS)。我们综合分析了来自我院队列和TCGA-KIRC队列的频繁突变基因。
    结果:VHL基因是ccRCC中最常见的突变基因。在我们的队列中,BAP1和PTEN与较高的肿瘤等级显著相关,DNM2与较低的肿瘤等级显著相关。BAP1或PTEN的突变型(MT)组,BAP1或SETD2,BAP1或TP53,BAP1或MTOR,在我们的队列中,BAP1或FAT1和BAP1或AR与较高的肿瘤分级显着相关。此外,我们发现HMCN1是一个hub突变基因,与不良预后密切相关,并可能增强抗肿瘤免疫应答.
    结论:在这项初步研究中,我们全面分析了中国人群和TCGA数据库中频繁突变的基因,这可能为ccRCC的诊断和医学治疗带来新的见解。
    BACKGROUND: Large-scale sequencing plays important roles in revealing the genomic map of ccRCC and predicting prognosis and therapeutic response to targeted drugs. However, the relevant clinical data is still sparse in Chinese population.
    METHODS: Fresh tumor specimens were collected from 66 Chinese ccRCC patients, then the genomic RNAs were subjected to whole transcriptome sequencing (WTS). We comprehensively analyzed the frequently mutated genes from our hospital\'s cohort as well as TCGA-KIRC cohort.
    RESULTS: VHL gene is the most frequently mutated gene in ccRCC. In our cohort, BAP1 and PTEN are significantly associated with a higher tumor grade and DNM2 is significantly associated with a lower tumor grade. The mutant type (MT) groups of BAP1 or PTEN, BAP1 or SETD2, BAP1 or TP53, BAP1 or MTOR, BAP1 or FAT1 and BAP1 or AR had a significantly correlation with higher tumor grade in our cohort. Moreover, we identified HMCN1 was a hub mutant gene which was closely related to worse prognosis and may enhance anti-tumor immune responses.
    CONCLUSIONS: In this preliminary research, we comprehensively analyzed the frequently mutated genes in the Chinese population and TCGA database, which may bring new insights to the diagnosis and medical treatment of ccRCC.
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  • 文章类型: Journal Article
    背景:银屑病是一种免疫介导的皮肤病,与免疫调节密切相关。目的是进一步了解银屑病的发病机制,揭示潜在的治疗靶点,并为其诊断提供新的线索,治疗,和预防。
    方法:从来自健康人群和银屑病患者的皮肤组织的基因表达综合(GEO)数据库获得表达谱数据。选择差异表达基因(DEGs)用于基因本体论(GO),京都基因和基因组百科全书(KEGG),和基因集富集分析(GSEA)分别分析。使用机器学习算法来获得与银屑病密切相关的特征基因。采用受试者工作特征(ROC)曲线评价特征基因对银屑病的诊断价值。使用通过估计RNA转录物的相对子集的细胞类型鉴定(CIBERSORT)算法来计算免疫细胞浸润的比例。相关分析用于表征基因表达与免疫细胞之间的联系,牛皮癣面积和严重程度指数(PASI)。
    结果:在银屑病组中确定了254个DEG,包括185个上调基因和69个下调基因。GO主要富集在细胞因子介导的信号通路,对病毒的反应,和细胞因子活性。KEGG主要关注细胞因子-细胞因子受体相互作用和IL-17信号通路。GSEA主要参与趋化因子信号通路和细胞因子-细胞因子受体相互作用。机器学习算法筛选了9个特征基因C10orf99、GDA、FCHSD1,C12orf56,S100A7,INA,CHRNA9、IFI44和CXCL9。在验证集中,这九个基因的表达在银屑病组中增加,AUC值均>0.9,与训练集一致。免疫浸润结果显示巨噬细胞比例增加,T细胞,牛皮癣组的中性粒细胞。特征基因与T细胞和巨噬细胞呈不同程度的正相关或负相关。9个特征基因在中重度银屑病组中高表达,并与PASI评分呈正相关。
    结论:9个特征基因C10orf99,GDA,FCHSD1,C12orf56,S100A7,INA,CHRNA9、IFI44和CXCL9是银屑病的危险因素,差异表达与免疫系统活性的调节和PASI评分有关,影响不同免疫细胞的比例,促进银屑病的发生发展。
    BACKGROUND: Psoriasis is an immune-mediated skin disease, closely related to immune regulation. The aim was to understand the pathogenesis of psoriasis further, reveal potential therapeutic targets, and provide new clues for its diagnosis, treatment, and prevention.
    METHODS: Expression profiling data were obtained from the Gene Expression Omnibus (GEO) database for skin tissues from healthy population and psoriasis patients. Differentially expressed genes (DEGs) were selected for Gene Ontology (GO), Kyoto Encyclopedia of Genes and Genomes (KEGG), and Gene Set Enrichment Analysis (GSEA) analysis separately. Machine learning algorithms were used to obtain characteristic genes closely associated with psoriasis. Receiver operating characteristic (ROC) curve was used to assess the diagnostic value of the characteristic genes for psoriasis. The Cell-type Identification by Estimating Relative Subsets of RNA Transcripts (CIBERSORT) algorithm was used to calculate the proportion of immune cell infiltration. Correlation analysis was used to characterize the connection between gene expression and immune cell, Psoriasis Area and Severity Index (PASI).
    RESULTS: A total of 254 DEGs were identified in the psoriasis group, including 185 upregulated and 69 downregulated genes. GO was mainly enriched in cytokine-mediated signaling pathway, response to virus, and cytokine activity. KEGG was mainly focused on cytokine-cytokine receptor interaction and IL-17 signaling pathway. GSEA was mainly in chemokine signaling pathway and cytokine-cytokine receptor interaction. The machine learning algorithm screened nine characteristic genes C10orf99, GDA, FCHSD1, C12orf56, S100A7, INA, CHRNA9, IFI44, and CXCL9. In the validation set, the expressions of these nine genes increased in the psoriasis group, and the AUC values were all > 0.9, consistent with those of the training set. The immune infiltration results showed increased proportions of macrophages, T cells, and neutrophils in the psoriasis group. The characteristic genes were positively or negatively correlated to varying degrees with T cells and macrophages. Nine characteristic genes were highly expressed in the moderate to severe psoriasis group and positively correlated with PASI scores.
    CONCLUSIONS: High levels of nine characteristic genes C10orf99, GDA, FCHSD1, C12orf56, S100A7, INA, CHRNA9, IFI44, and CXCL9 were risk factors for psoriasis, the differential expression of which was related to the regulation of immune system activity and PASI scores, affecting the proportions of different immune cells and promoting the occurrence and development of psoriasis.
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  • 文章类型: Journal Article
    背景:肝细胞癌(HCC)代表原发性肝肿瘤,其特征是预后暗淡和死亡率升高,然而,其精确的分子机制尚未完全阐明。这项研究使用先进的生物信息学技术来辨别与HCC发病机理有关的差异表达基因(DEGs)。主要目标是发现新的生物标志物和潜在的治疗靶标,可以促进HCC研究的发展。
    方法:本研究中的生物信息学分析主要利用基因表达综合(GEO)数据库作为数据源。最初,转录组分析控制台(TAC)筛选DEG。随后,我们利用STRING数据库构建了与已鉴定的DEG相关的蛋白质-蛋白质相互作用(PPI)网络.我们使用Cytoscape获得了hub基因,并通过GEPIA数据库确认了结果。此外,我们使用GEPIA数据库评估了已鉴定的hub基因的预后意义.为了探索调控相互作用,还构建了一个miRNA-基因相互作用网络,合并来自miRDB数据库的信息。为了预测基因过表达对药物作用的影响,我们使用了癌症DP。
    结果:对HCC基因表达谱的综合分析显示,总共有4716个DEGs,与健康对照组相比,HCC样品中的2430个上调基因和2313个下调基因。这些DEGs在PI3K-Akt信号通路等关键通路中表现出显著的富集,核受体meta通路,和各种代谢相关的途径。对PPI网络的进一步探索揭示了P53信号通路和嘧啶代谢是最突出的通路。我们确定了10个hub基因(ASPM,RRM2,CCNB1,KIF14,MKI67,SHCBP1,CENPF,ANLN,HMMR,和EZH2),与健康对照组相比,HCC样本中显示出显着的上调。生存分析表明,这些基因的表达水平升高与HCC患者的总体生存率变化密切相关。最后,我们确定了特定的miRNA,这些miRNA被发现影响这些基因的表达,为HCC进展的潜在调节机制提供有价值的见解。
    结论:这项研究的发现已经成功地确定了与HCC发病机制有关的关键基因和途径。这些新发现有可能在分子水平上显著增强我们对HCC的理解。为开发靶向治疗和改善预后评估开辟了新的途径。
    BACKGROUND: Hepatocellular carcinoma (HCC) represents a primary liver tumor characterized by a bleak prognosis and elevated mortality rates, yet its precise molecular mechanisms have not been fully elucidated. This study uses advanced bioinformatics techniques to discern differentially expressed genes (DEGs) implicated in the pathogenesis of HCC. The primary objective is to discover novel biomarkers and potential therapeutic targets that can contribute to the advancement of HCC research.
    METHODS: The bioinformatics analysis in this study primarily utilized the Gene Expression Omnibus (GEO) database as data source. Initially, the Transcriptome analysis console (TAC) screened for DEGs. Subsequently, we constructed a protein-protein interaction (PPI) network of the proteins associated to the identified DEGs with the STRING database. We obtained our hub genes using Cytoscape and confirmed the results through the GEPIA database. Furthermore, we assessed the prognostic significance of the identified hub genes using the GEPIA database. To explore the regulatory interactions, a miRNA-gene interaction network was also constructed, incorporating information from the miRDB database. For predicting the impact of gene overexpression on drug effects, we utilized CANCER DP.
    RESULTS: A comprehensive analysis of HCC gene expression profiles revealed a total of 4716 DEGs, consisting of 2430 upregulated genes and 2313 downregulated genes in HCC sample compared to healthy control group. These DEGs exhibited significant enrichment in key pathways such as the PI3K-Akt signaling pathway, nuclear receptors meta-pathway, and various metabolism-related pathways. Further exploration of the PPI network unveiled the P53 signaling pathway and pyrimidine metabolism as the most prominent pathways. We identified 10 hub genes (ASPM, RRM2, CCNB1, KIF14, MKI67, SHCBP1, CENPF, ANLN, HMMR, and EZH2) that exhibited significant upregulation in HCC samples compared to healthy control group. Survival analysis indicated that elevated expression levels of these genes were strongly associated with changes in overall survival in HCC patients. Lastly, we identified specific miRNAs that were found to influence the expression of these genes, providing valuable insights into potential regulatory mechanisms underlying HCC progression.
    CONCLUSIONS: The findings of this study have successfully identified pivotal genes and pathways implicated in the pathogenesis of HCC. These novel discoveries have the potential to significantly enhance our understanding of HCC at the molecular level, opening new ways for the development of targeted therapies and improved prognosis evaluation.
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  • 文章类型: Journal Article
    背景:系统发育在生物学研究中起着至关重要的作用。不幸的是,寻找最优的系统发育树带来了巨大的计算成本,大多数现有的最先进的工具无法在合理的时间内处理非常大的数据集。
    结果:在这项工作中,我们介绍了新的VeryFastTree代码(版本4.0),它能够在一台服务器上使用单精度算法在36小时内从一个庞大的100万个对齐数据集中构建一棵树,分别比以前的版本和FastTree-2快3倍和3.2倍。这个新版本通过在树构建过程中并行化所有树遍历操作,进一步提高了性能。包括子树修剪和回归动作。此外,它引入了重要的新功能,例如支持新的和压缩的文件格式,在更广泛的操作系统中增强兼容性,以及磁盘计算功能的集成。后一个特征对于没有访问高端服务器的用户特别有利,因为它允许他们管理非常大的数据集,尽管计算时间增加了。
    结论:实验结果证明VeryFastTree是最先进的最大似然系统发育估计工具中最快的工具。它可以在https://github.com/citiususec/veryfasttree上公开获得。此外,VeryFastTree作为包包含在Bioconda中,MacPorts,和所有基于Debian的Linux发行版。
    BACKGROUND: Phylogenies play a crucial role in biological research. Unfortunately, the search for the optimal phylogenetic tree incurs significant computational costs, and most of the existing state-of-the-art tools cannot deal with extremely large datasets in reasonable times.
    RESULTS: In this work, we introduce the new VeryFastTree code (version 4.0), which is able to construct a tree on 1 server using single-precision arithmetic from a massive 1 million alignment dataset in only 36 hours, which is 3 times and 3.2 times faster than its previous version and FastTree-2, respectively. This new version further boosts performance by parallelizing all tree traversal operations during the tree construction process, including subtree pruning and regrafting moves. Additionally, it introduces significant new features such as support for new and compressed file formats, enhanced compatibility across a broader range of operating systems, and the integration of disk computing functionality. The latter feature is particularly advantageous for users without access to high-end servers, as it allows them to manage very large datasets, albeit with an increase in computing time.
    CONCLUSIONS: Experimental results establish VeryFastTree as the fastest tool in the state-of-the-art for maximum likelihood phylogeny estimation. It is publicly available at https://github.com/citiususc/veryfasttree. In addition, VeryFastTree is included as a package in Bioconda, MacPorts, and all Debian-based Linux distributions.
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