Prognosis model

预后模型
  • 文章类型: Journal Article
    铁凋亡是一种铁依赖性细胞死亡,这与其他类型的调节细胞死亡不同。大量研究表明,铁死亡参与各种癌症的生物学过程。然而,铁凋亡在宫颈癌(CC)中的作用尚不清楚.本研究旨在探讨铁凋亡相关预后基因(FRPGs)的表达谱及其在CC中的预后价值。
    从癌症基因组图谱(TCGA)和FerrDb数据库获得铁凋亡相关基因(FRGs)。核心FRG由用于检索相互作用基因的搜索工具(STRING)网站确定。使用单变量和多变量Cox回归识别FRPG,并构建了铁凋亡相关的预后模型。在临床标本中验证FRPG。通过CIBERSORT算法和LM22特征矩阵评估FRPG与肿瘤浸润免疫细胞之间的关系。用注释数据库探索FRPG的生物信息学功能,可视化,和集成发现(DAVID)。
    从数据库中筛选出33个显著上调和28个下调的FRGs[P<0.05;错误发现率(FDR)<0.05;和|log2倍数变化(FC)|≥2]。发现24个基因彼此紧密相互作用,并被视为中心基因(程度≥3)。溶质载体家族2成员1(SLC2A1),碳酸酐酶IX(CA9),在Cox回归中,双氧化酶1(DUOX1)被鉴定为总生存期(OS)的独立预后特征。时间依赖的受试者工作特征(ROC)曲线显示了铁凋亡相关预后模型的预测能力,特别是对于1年OS[曲线下面积(AUC)=0.76]。与公共数据一致,我们的实验表明,肿瘤组织中SLC2A1和DUOX1的mRNA水平以及SLC2A1,DUOX1和CA9的蛋白水平显着升高。进一步的分析表明,根据我们的预后模型,低危组和高风险组之间的肿瘤浸润免疫细胞比例存在显着差异。通过应用基因本体论(GO)富集和京都基因和基因组百科全书(KEGG)途径分析来探索FRPG的功能富集。
    在这项研究中,描绘了CC中FRPG的特征。结果表明,靶向铁凋亡可能是一种新的可靠的生物标志物和CC的替代疗法。
    UNASSIGNED: Ferroptosis is an iron-dependent cell death, which is distinct from the other types of regulated cell death. Considerable studies have demonstrated that ferroptosis is involved in the biological process of various cancers. However, the role of ferroptosis in cervical cancer (CC) remains unclear. This study aims to explore the ferroptosis-related prognostic genes (FRPGs) expression profiles and their prognostic values in CC.
    UNASSIGNED: The ferroptosis-related genes (FRGs) were obtained from The Cancer Genome Atlas (TCGA) and FerrDb databases. Core FRGs were determined by the Search Tool for the Retrieval of Interacting Genes (STRING) website. FRPGs were identified using univariate and multivariate Cox regressions, and the ferroptosis-related prognostic model was constructed. FRPGs were verified in clinical specimens. The relationship between FRPGs and tumor infiltrating immune cells were assessed through the CIBERSORT algorithm and the LM22 signature matrix. Bioinformatics functions of FRPGs were explored with the Database for Annotation, Visualization, and Integrated Discovery (DAVID).
    UNASSIGNED: Thirty-three significantly up-regulated and 28 down-regulated FRGs were screened from databases [P<0.05; false discovery rate (FDR) <0.05; and |log2 fold change (FC)| ≥2]. Twenty-four genes were found closely interacting with each other and regarded as hub genes (degree ≥3). Solute carrier family 2 member 1 (SLC2A1), carbonic anhydrases IX (CA9), and dual oxidase 1 (DUOX1) were identified as independent prognostic signatures for overall survival (OS) in a Cox regression. Time-dependent receiver operating characteristic (ROC) curves showed the predictive ability of the ferroptosis-related prognostic model, especially for 1-year OS [area under the curve (AUC) =0.76]. Consistent with the public data, our experiments demonstrated that the mRNA levels of SLC2A1 and DUOX1, and the protein levels of SLC2A1, DUOX1, and CA9 were significantly higher in the tumor tissues. Further analysis showed that there was a significant difference in the proportion of tumor infiltrating immune cells between the low- and high-risk group based on our prognostic model. The function enrichment of FRPGs was explored by applying Gene Ontology (GO) enrichment and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway analyses.
    UNASSIGNED: In this study, the features of FRPGs in CC were pictured. The results implicated that targeting ferroptosis may be a new reliable biomarker and an alternative therapy for CC.
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  • 文章类型: Journal Article
    透明细胞肾细胞癌(ccRCC)在肾癌病例中占主导地位,并受到癌症驱动基因(CDG)突变的影响。然而,ccRCC的早期诊断和治疗仍然存在重大障碍。虽然各种遗传模型为改善ccRCC管理提供了新的希望,CDG相关的长链非编码RNA(CDG-RlncRNA)和ccRCC之间的关系仍然知之甚少.因此,本研究旨在构建基于CDG-RlncRNAs的预后分子特征来预测ccRCC患者的预后,旨在为加强ccRCC患者的临床管理提供新的策略。
    本研究采用Cox和最小绝对收缩和选择算子(LASSO)回归分析来全面调查ccRCC中lncRNAs和CDGs之间的关联。利用癌症基因组图谱(TCGA)数据集,我们鉴定了97个预后显著的CDG-RlncRNAs,并基于这些CDG-RlncRNAs建立了一个稳健的预后模型.使用用于训练的TCGA数据集和用于验证的国际癌症基因组联盟(ICGC)数据集严格验证模型的性能。功能富集分析阐明了模型中CDG-RlncRNA特征的生物学相关性,特别是在肿瘤免疫方面。实验验证进一步证实了代表性CDG-RlncRNASNHG3在ccRCC进展中的功能作用。
    我们的分析显示97个CDG-RlncRNAs与ccRCC预后显著相关,能够将患者分层为不同的风险组。结合关键lncRNAs如HOXA11-AS的预后模型的开发,AP002807.1,APCDD1L-DT,AC124067.2和SNHG3在训练和验证数据集中都显示出强大的预测准确性。重要的是,基于该模型的风险分层揭示了不同的免疫相关基因表达模式。值得注意的是,SNHG3成为ccRCC细胞周期的关键调节因子,强调其作为治疗靶点的潜力。
    我们的研究建立了一个简洁的CDG-RlncRNA签名,并强调了SNHG3在ccRCC进展中的关键作用。它强调了CDG-RlncRNAs在预后预测和靶向治疗中的临床相关性,为ccRCC的个性化干预提供了潜在的途径。
    UNASSIGNED: Clear cell renal cell carcinoma (ccRCC) predominates among kidney cancer cases and is influenced by mutations in cancer driver genes (CDGs). However, significant obstacles persist in the early diagnosis and treatment of ccRCC. While various genetic models offer new hopes for improving ccRCC management, the relationship between CDG-related long non-coding RNAs (CDG-RlncRNAs) and ccRCC remains poorly understood. Therefore, this study aims to construct prognostic molecular features based on CDG-RlncRNAs to predict the prognosis of ccRCC patients, and aims to provide a new strategy to enhance clinical management of ccRCC patients.
    UNASSIGNED: This study employed Cox and Least Absolute Shrinkage and Selection Operator (LASSO) regression analyses to comprehensively investigate the association between lncRNAs and CDGs in ccRCC. Leveraging The Cancer Genome Atlas (TCGA) dataset, we identified 97 prognostically significant CDG-RlncRNAs and developed a robust prognostic model based on these CDG-RlncRNAs. The performance of the model was rigorously validated using the TCGA dataset for training and the International Cancer Genome Consortium (ICGC) dataset for validation. Functional enrichment analysis elucidated the biological relevance of CDG-RlncRNA features in the model, particularly in tumor immunity. Experimental validation further confirmed the functional role of representative CDG-RlncRNA SNHG3 in ccRCC progression.
    UNASSIGNED: Our analysis revealed that 97 CDG-RlncRNAs are significantly associated with ccRCC prognosis, enabling patient stratification into different risk groups. Development of a prognostic model incorporating key lncRNAs such as HOXA11-AS, AP002807.1, APCDD1L-DT, AC124067.2, and SNHG3 demonstrated robust predictive accuracy in both training and validation datasets. Importantly, risk stratification based on the model revealed distinct immune-related gene expression patterns. Notably, SNHG3 emerged as a key regulator of the ccRCC cell cycle, highlighting its potential as a therapeutic target.
    UNASSIGNED: Our study established a concise CDG-RlncRNA signature and underscored the pivotal role of SNHG3 in ccRCC progression. It emphasizes the clinical relevance of CDG-RlncRNAs in prognostic prediction and targeted therapy, offering potential avenues for personalized intervention in ccRCC.
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  • 文章类型: Journal Article
    背景:肝细胞癌(HCC)是一种常见的恶性肿瘤,预后较差。焦亡,一种程序性细胞死亡,调节肿瘤细胞发育。然而,焦凋亡相关基因(PRGs)在HCC中的作用及其与预后的关系尚不清楚.
    方法:我们进行了生物信息学分析,以鉴定癌症基因组图谱-肝细胞癌(TCGA-LIHC)患者中的PRG。共识聚类将患者分为不同的亚型。我们使用LASSO回归建立与预后相关的焦亡亚型相关评分(PSRS)。OncoPredict基于PSRS确定了潜在的药物。
    结果:我们在335例TCGA-LIHC患者中发现20例HCC相关PRG。共识聚类将患者分为两种亚型。I亚型具有更好的总生存率和更高的抗PD1治疗反应。涉及20个基因的预后模型预测高PSRS组的预后较差。该模型在两个外部队列中进行了验证。OncoPredict根据PSRS确定了65种潜在药物。
    结论:我们的研究揭示了焦亡与HCC之间的相关性。我们将PSRS作为预测预后的独立危险因素。该研究为使用PRGs作为预后生物标志物和探索肝癌个性化治疗铺平了道路。
    BACKGROUND: Hepatocellular carcinoma (HCC) is a common malignant tumor with poor prognosis. Pyroptosis, a type of programmed cell death, regulates tumor cell development. However, the role of pyroptosis-related genes (PRGs) in HCC and their association with prognosis are unclear.
    METHODS: We conducted bioinformatics analysis to identify PRGs in The Cancer Genome Atlas-Liver Hepatocellular Carcinoma (TCGA-LIHC) patients. Consensus clustering classified patients into different subtypes. We used LASSO regression to established a pyroptosis subtype-related score (PSRS) related to prognosis. OncoPredict identified potential pharmaceuticals based on PSRS.
    RESULTS: We found 20 HCC-related PRGs in 335 TCGA-LIHC patients. Consensus clustering classified patients into two subtypes. Subtype I had better overall survival and higher response to anti-PD1 treatment. The prognostic model involving 20 genes predicted poorer prognosis for high-PSRS group. The model was validated in two external cohorts. OncoPredict identified 65 potential pharmaceuticals based on PSRS.
    CONCLUSIONS: Our investigation revealed a correlation between pyroptosis and HCC. We established PSRS as independent risk factors for predicting prognosis. The study paves the way for using PRGs as prognostic biomarkers and exploring personalized therapy for HCC.
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  • 文章类型: Journal Article
    免疫细胞相互作用和代谢变化对于确定肿瘤微环境和影响各种临床结果至关重要。然而,在结直肠癌(CRC)中,免疫细胞的代谢进化的临床意义仍有待探讨.
    单细胞RNA测序(scRNA-seq)和大量RNA测序数据从TCGA和GEO数据集获得。对于巨噬细胞分化轨迹的分析,我们使用了R包Seurat和Monocle。一致性聚类被进一步应用于识别分子分类。来自AOM和AOM/DSS模型的免疫组织化学结果用于验证巨噬细胞表达。随后,GSEA,估计分数,预后,临床特征,突变负担,免疫细胞浸润,并比较了不同簇之间基因表达的差异。我们基于通过MEGENA框架鉴定的代谢基因特征构建了预后模型和列线图。
    我们发现两组异质性的M2巨噬细胞通过进化过程具有不同的临床结果。第2组的预后较差。进一步的研究表明,簇2构成代谢活性组,而簇1则相对代谢惰性。肿瘤发展过程中M2巨噬细胞的代谢变化与肿瘤预后有关。此外,簇2显示出最明显的基因组不稳定性,并且具有高度升高的代谢途径,特别是与ECM相关的那些。我们确定了八个代谢基因(PRELP,NOTCH3、CNOT6、ASRGL1、SRSF1、PSMD4、RPL31和CNOT7)建立在CRC数据集中验证的预测模型。然后,基于M2风险评分的列线图改善了预测性能。此外,我们的研究表明,免疫检查点抑制剂治疗可能使低危患者受益.
    我们的研究揭示了代谢表型和免疫谱之间的潜在关系,并提出了一种针对CRC的独特M2分类技术。确定的基因特征可能是连接免疫和肿瘤代谢的关键因素,保证进一步调查。
    UNASSIGNED: Immune cell interactions and metabolic changes are crucial in determining the tumor microenvironment and affecting various clinical outcomes. However, the clinical significance of metabolism evolution of immune cell evolution in colorectal cancer (CRC) remains unexplored.
    UNASSIGNED: Single-cell RNA sequencing (scRNA-seq) and bulk RNA sequencing data were acquired from TCGA and GEO datasets. For the analysis of macrophage differentiation trajectories, we employed the R packages Seurat and Monocle. Consensus clustering was further applied to identify the molecular classification. Immunohistochemical results from AOM and AOM/DSS models were used to validate macrophage expression. Subsequently, GSEA, ESTIMATE scores, prognosis, clinical characteristics, mutational burden, immune cell infiltration, and the variance in gene expression among different clusters were compared. We constructed a prognostic model and nomograms based on metabolic gene signatures identified through the MEGENA framework.
    UNASSIGNED: We found two heterogeneous groups of M2 macrophages with various clinical outcomes through the evolutionary process. The prognosis of Cluster 2 was poorer. Further investigation showed that Cluster 2 constituted a metabolically active group while Cluster 1 was comparatively metabolically inert. Metabolic variations in M2 macrophages during tumor development are related to tumor prognosis. Additionally, Cluster 2 showed the most pronounced genomic instability and had highly elevated metabolic pathways, notably those associated with the ECM. We identified eight metabolic genes (PRELP, NOTCH3, CNOT6, ASRGL1, SRSF1, PSMD4, RPL31, and CNOT7) to build a predictive model validated in CRC datasets. Then, a nomogram based on the M2 risk score improved predictive performance. Furthermore, our study demonstrated that immune checkpoint inhibitor therapy may benefit patients with low-risk.
    UNASSIGNED: Our research reveals underlying relationships between metabolic phenotypes and immunological profiles and suggests a unique M2 classification technique for CRC. The identified gene signatures may be key factors linking immunity and tumor metabolism, warranting further investigations.
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  • 文章类型: Journal Article
    背景:支持急性呼吸窘迫综合征(ARDS)的多维生物学机制仍在阐明,预测ARDS预后的早期生物标志物尚未确定。
    方法:我们进行了一项多中心观察研究,分析从ARDS初始阶段患者收集的血清样本的4D-DIA蛋白质组学和全球代谢组学,来自疾病对照组和健康对照组的样本。我们使用LASSO方法在发现队列中鉴定了ARDS的28天预后生物标志物,倍数变化分析,和Boruta算法。在外部验证队列中通过平行反应监测(PRM)靶向质谱验证候选生物标志物。应用机器学习模型探索ARDS预后的生物标志物。
    结果:在发现队列中,包括130名成人ARDS患者(平均年龄72.5岁,男性74.6%),33个疾病对照,和33个健康对照,不同的蛋白质组和代谢特征被鉴定为区分ARDS和两个对照组.通路分析强调了鞘脂信号通路上调是ARDS潜在病理机制的关键贡献者。MAP2K1作为hub蛋白出现,促进与该途径内各种生物学功能的相互作用。此外,代谢产物鞘氨醇1-磷酸(S1P)与ARDS及其预后密切相关。我们的研究进一步强调了导致死亡ARDS的重要途径,如造血细胞谱系和钙信号通路的下调,与未折叠的蛋白质反应和糖酵解的上调相反。特别是,GAPDH和ENO1,糖酵解中的关键酶,在ARDS的蛋白质-蛋白质相互作用网络中,相互作用程度最高。在发现队列中,一组36种蛋白质被确定为候选生物标志物,具有8种蛋白质(VCAM1,LDHB,MSN,FLG2,TAGLN2,LMNA,MBL2和LBP)在183例患者的独立验证队列中证明了显着的一致性(平均年龄72.6岁,73.2%男性),通过PRM测定证实。在两个发现队列中,与临床模型相比,基于蛋白质的模型均表现出更高的预测准确性(AUC:0.893vs.0.784;德隆试验,P<0.001)和验证队列(AUC:0.802vs.0.738;德隆试验,P=0.008)。
    结论:我们的多组学研究证明了ARDS的潜在生物学机制和治疗靶点。这项研究揭示了几种新的预测生物标志物,并建立了一个有效的预测模型,用于ARDS的不良预后。为ARDS患者的预后提供有价值的见解。
    BACKGROUND: The multidimensional biological mechanisms underpinning acute respiratory distress syndrome (ARDS) continue to be elucidated, and early biomarkers for predicting ARDS prognosis are yet to be identified.
    METHODS: We conducted a multicenter observational study, profiling the 4D-DIA proteomics and global metabolomics of serum samples collected from patients at the initial stage of ARDS, alongside samples from both disease control and healthy control groups. We identified 28-day prognosis biomarkers of ARDS in the discovery cohort using the LASSO method, fold change analysis, and the Boruta algorithm. The candidate biomarkers were validated through parallel reaction monitoring (PRM) targeted mass spectrometry in an external validation cohort. Machine learning models were applied to explore the biomarkers of ARDS prognosis.
    RESULTS: In the discovery cohort, comprising 130 adult ARDS patients (mean age 72.5, 74.6% male), 33 disease controls, and 33 healthy controls, distinct proteomic and metabolic signatures were identified to differentiate ARDS from both control groups. Pathway analysis highlighted the upregulated sphingolipid signaling pathway as a key contributor to the pathological mechanisms underlying ARDS. MAP2K1 emerged as the hub protein, facilitating interactions with various biological functions within this pathway. Additionally, the metabolite sphingosine 1-phosphate (S1P) was closely associated with ARDS and its prognosis. Our research further highlights essential pathways contributing to the deceased ARDS, such as the downregulation of hematopoietic cell lineage and calcium signaling pathways, contrasted with the upregulation of the unfolded protein response and glycolysis. In particular, GAPDH and ENO1, critical enzymes in glycolysis, showed the highest interaction degree in the protein-protein interaction network of ARDS. In the discovery cohort, a panel of 36 proteins was identified as candidate biomarkers, with 8 proteins (VCAM1, LDHB, MSN, FLG2, TAGLN2, LMNA, MBL2, and LBP) demonstrating significant consistency in an independent validation cohort of 183 patients (mean age 72.6 years, 73.2% male), confirmed by PRM assay. The protein-based model exhibited superior predictive accuracy compared to the clinical model in both the discovery cohort (AUC: 0.893 vs. 0.784; Delong test, P < 0.001) and the validation cohort (AUC: 0.802 vs. 0.738; Delong test, P  = 0.008).
    CONCLUSIONS: Our multi-omics study demonstrated the potential biological mechanism and therapy targets in ARDS. This study unveiled several novel predictive biomarkers and established a validated prediction model for the poor prognosis of ARDS, offering valuable insights into the prognosis of individuals with ARDS.
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  • 文章类型: Journal Article
    最近的研究强调了角化在疾病发生和发展中的生物学意义。然而,目前尚不清楚角化凋亡信号是否也对胃癌(GC)的肿瘤发生和预后有潜在影响.在这项研究中,利用16个角化相关基因(CRGs)转录谱在GC中执行基于正则化潜在变量模型的聚类。一种角化特征风险评分(CSRS)方案,基于CRG主成分的加权和,用于评估GC个体肿瘤的预后和风险。四个不同的基于角化率特征的簇,以CRGs的差异表达模式为特征,在三个独立数据库的1136个GC样本中进行了鉴定。这四个集群也与不同的临床结果和肿瘤免疫背景相关。根据CSRS,GC患者可分为CSRS-高亚型和CSRS-低亚型。我们发现DBT,MTF1和ATP7A在CSRS-High亚型中显著升高,而SLC31A1,GCSH,LIAS,DLAT,FDX1,DLD,和PDHA1在CSRS-Low亚型中增加。CSRS-Low评分患者的特点是生存时间延长。进一步的分析表明,CSRS-Low评分还与更大的肿瘤突变负荷(TMB)和GC中显著突变基因(SMG)的更高突变率相关。此外,CSRS-High亚型具有与肿瘤发生相关的更显着放大的焦点区域(3q27.1、12p12.1、11q13.3等。)比CSRS低肿瘤。药物敏感性分析揭示了CSRS-High评分治疗胃癌的潜在化合物,使用GC细胞进行了实验验证。这项研究强调了基于角化特征的亚型与GC的不同临床特征和分子景观显着相关。对单个肿瘤的CSRS进行定量评估将加强我们对角化瘤的发生发展和GC的治疗进展的认识。
    Recent studies have highlighted the biological significance of cuproptosis in disease occurrence and development. However, it remains unclear whether cuproptosis signaling also has potential impacts on tumor initiation and prognosis of gastric cancer (GC). In this study, 16 cuproptosis-related genes (CRGs) transcriptional profiles were harnessed to perform the regularized latent variable model-based clustering in GC. A cuproptosis signature risk scoring (CSRS) scheme, based on a weighted sum of principle components of the CRGs, was used to evaluate the prognosis and risk of individual tumors of GC. Four distinct cuproptosis signature-based clusters, characterized by differential expression patterns of CRGs, were identified among 1136 GC samples across three independent databases. The four clusters were also associated with different clinical outcomes and tumor immune contexture. Based on the CSRS, GC patients can be divided into CSRS-High and CSRS-Low subtypes. We found that DBT, MTF1, and ATP7A were significantly elevated in the CSRS-High subtype, while SLC31A1, GCSH, LIAS, DLAT, FDX1, DLD, and PDHA1 were increased in the CSRS-Low subtype. Patients with CSRS-Low score were characterized by prolonged survival time. Further analysis indicated that CSRS-Low score also correlated with greater tumor mutation burden (TMB) and higher mutation rates of significantly mutated genes (SMG) in GC. In addition, the CSRS-High subtype harbored more significantly amplified focal regions related to tumorigenesis (3q27.1, 12p12.1, 11q13.3, etc.) than the CSRS-Low tumors. Drug sensitivity analyses revealed the potential compounds for the treatment of gastric cancer with CSRS-High score, which were experimentally validated using GC cells. This study highlights that cuproptosis signature-based subtyping is significantly associated with different clinical features and molecular landscape of GC. Quantitative evaluation of the CSRS of individual tumors will strengthen our understanding of the occurrence and development of cuproptosis and the treatment progress of GC.
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  • 文章类型: Journal Article
    目的:肺腺癌(LUAD)是世界范围内普遍存在的恶性肿瘤,发病率和死亡率高。然而,对其早期诊断和靶向治疗仍缺乏特异性和敏感性的生物标志物。二硫化物凋亡是一种新发现的细胞死亡模式,是二硫化物应激的特征。因此,探讨二硫键下垂相关长链非编码RNA(DRGs-lncRNAs)与患者预后的相关性,可以为LUAD患者提供新的分子靶点.
    方法:该研究分析了癌症基因组图谱(TCGA)数据库中LUAD患者的转录组数据和临床数据,基因共表达,和单变量Cox回归方法用于筛选与预后相关的DRGs-lncRNAs。通过单因素和多因素Cox回归模型建立lncRNA的风险评分模型。TIMER,CIBERSORT,CIBERSORT-ABS,等方法进行免疫浸润分析,进一步评价免疫功能,免疫检查点,和药物敏感性。进行实时聚合酶链反应(RT-PCR)以检测LUAD细胞系中DRGs-lncRNAs的表达。
    结果:共鉴定出108个与二硫键凋亡显著相关的lncRNAs。通过单因素Cox回归分析筛选10个具有独立预后意义的lncRNAs构建预后模型,LASSO回归分析,和多因素Cox回归分析。通过预后模型对患者进行生存分析,结果显示高危组和低危组之间存在明显的生存差异。预后模型的风险评分可以作为独立于其他临床特征的独立预后因素,风险分数随着阶段的增加而增加。进一步分析表明,预后模型也不同于肿瘤免疫细胞浸润,免疫功能,以及高危和低危人群的免疫检查点基因。化疗药物敏感性分析显示高危患者对紫杉醇较敏感,5-氟尿嘧啶,吉非替尼,多西他赛,阿糖胞苷,和顺铂。此外,RT-PCR分析证明了LUAD细胞系和人支气管上皮细胞系之间DRGs-lncRNAs的差异表达。
    结论:本研究构建的DRGs-lncRNAs预后模型在预测LUAD患者生存预后方面具有一定的准确性和可靠性。并为二硫键增多症与LUAD免疫治疗之间的相互作用提供线索。
    Lung adenocarcinoma (LUAD) is a prevalent malignant tumor worldwide, with high incidence and mortality rates. However, there is still a lack of specific and sensitive biomarkers for its early diagnosis and targeted treatment. Disulfidptosis is a newly identified mode of cell death that is characteristic of disulfide stress. Therefore, exploring the correlation between disulfidptosis-related long non-coding RNAs (DRGs-lncRNAs) and patient prognosis can provide new molecular targets for LUAD patients.
    The study analysed the transcriptome data and clinical data of LUAD patients in The Cancer Genome Atlas (TCGA) database, gene co-expression, and univariate Cox regression methods were used to screen for DRGs-lncRNAs related to prognosis. The risk score model of lncRNA was established by univariate and multivariate Cox regression models. TIMER, CIBERSORT, CIBERSORT-ABS, and other methods were used to analyze immune infiltration and further evaluate immune function analysis, immune checkpoints, and drug sensitivity. Real-time polymerase chain reaction (RT-PCR) was performed to detect the expression of DRGs-lncRNAs in LUAD cell lines.
    A total of 108 lncRNAs significantly associated with disulfidptosis were identified. A prognostic model was constructed by screening 10 lncRNAs with independent prognostic significance through single-factor Cox regression analysis, LASSO regression analysis, and multiple-factor Cox regression analysis. Survival analysis of patients through the prognostic model showed that there were obvious survival differences between the high- and low-risk groups. The risk score of the prognostic model can be used as an independent prognostic factor independent of other clinical traits, and the risk score increases with stage. Further analysis showed that the prognostic model was also different from tumor immune cell infiltration, immune function, and immune checkpoint genes in the high- and low-risk groups. Chemotherapy drug susceptibility analysis showed that high-risk patients were more sensitive to Paclitaxel, 5-Fluorouracil, Gefitinib, Docetaxel, Cytarabine, and Cisplatin. Additionally, RT-PCR analysis demonstrated differential expression of DRGs-lncRNAs between LUAD cell lines and the human bronchial epithelial cell line.
    The prognostic model of DRGs-lncRNAs constructed in this study has certain accuracy and reliability in predicting the survival prognosis of LUAD patients, and provides clues for the interaction between disulfidptosis and LUAD immunotherapy.
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  • 文章类型: Journal Article
    背景:肝癌是世界上最恶性的肝脏疾病之一,5年生存率低。镇痛药通常用于治疗肝癌中普遍存在的疼痛。镇痛目标(ATs)在肝癌中的表达变更及临床意义还未被深刻懂得。
    目的:本研究的目的是阐明ATs基因在肝癌中的表达模式及其临床意义。通过对转录组数据和临床参数的综合分析,建立与ATs基因相关的预后模型,并且对ATs敏感的药物信息被挖掘。
    方法:该研究主要利用来自癌症基因组图谱(TCGA)数据库的肝癌患者的转录组数据和临床信息。这些数据用于分析ATs的表达,进行生存分析,基因集变异分析(GSVA),免疫细胞浸润分析,建立预后模型,并进行其他生物信息学分析。此外,来自国际癌症基因组联盟(ICGC)的肝癌患者的数据被用来验证模型的准确性.此外,使用比较毒理基因组学数据库(CTD)的数据评估了止痛药对预后模型中关键基因的影响.
    结果:该研究调查了肝癌中58个ATs基因与正常组织的差异表达。根据ATs表达对患者进行分层,揭示不同的生存结果。功能富集分析突出了纺锤体组织的区别,中心体,和纺锤体微管功能。预后建模确定低TP53表达是保护性的,而升高的CCNA2、NEU1和HTR2C水平构成了风险。常用镇痛药,包括对乙酰氨基酚等,被发现影响这些基因的表达。这些发现为肝癌的潜在治疗策略提供了见解,并阐明了其进展的分子机制。
    结论:对与ATs相关的基因特征的综合分析提示其作为肝细胞癌患者预后预测因子的潜力。这些发现不仅为癌症治疗提供了见解,而且为开发镇痛药适应症提供了新的途径。
    BACKGROUND: Liver cancer is one of the most malignant liver diseases in the world, and the 5-year survival rate of such patients is low. Analgesics are often used to cure pain prevalent in liver cancer. The expression changes and clinical significance of the analgesic targets (ATs) in liver cancer have not been deeply understood.
    OBJECTIVE: The purpose of this study is to clarify the expression pattern of ATs gene in liver cancer and its clinical significance. Through the comprehensive analysis of transcriptome data and clinical parameters, the prognosis model related to ATs gene is established, and the drug information sensitive to ATs is mined.
    METHODS: The study primarily utilized transcriptomic data and clinical information from liver cancer patients sourced from The Cancer Genome Atlas (TCGA) database. These data were employed to analyze the expression of ATs, conduct survival analysis, gene set variation analysis (GSVA), immune cell infiltration analysis, establish a prognostic model, and perform other bioinformatic analyses. Additionally, data from liver cancer patients in the International Cancer Genome Consortium (ICGC) were utilized to validate the accuracy of the model. Furthermore, the impact of analgesics on key genes in the prognostic model was assessed using data from the Comparative Toxicogenomics Database (CTD).
    RESULTS: The study investigated the differential expression of 58 ATs genes in liver cancer compared to normal tissues. Patients were stratified based on ATs expression, revealing varied survival outcomes. Functional enrichment analysis highlighted distinctions in spindle organization, centrosome, and spindle microtubule functions. Prognostic modeling identified low TP53 expression as protective, while elevated CCNA2, NEU1, and HTR2C levels posed risks. Commonly used analgesics, including acetaminophen and others, were found to influence the expression of these genes. These findings provide insights into potential therapeutic strategies for liver cancer and shed light on the molecular mechanisms underlying its progression.
    CONCLUSIONS: The collective analysis of gene signatures associated with ATs suggests their potential as prognostic predictors in hepatocellular carcinoma patients. These findings not only offer insights into cancer therapy but also provide novel avenues for the development of indications for analgesics.
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  • 文章类型: Journal Article
    前列腺癌(PCa)是男性泌尿系统最常见的恶性肿瘤。线粒体自噬,作为一种自噬,可以去除细胞中受损的线粒体。线粒体自噬相关基因(MRGs)已被证明在PCa的发育中起关键作用。为此,基于对PCa样本及其对照的RNA-seq和scRNA-seq数据的综合分析,本文鉴定了PCa亚型并构建了预后模型.在本文中,我们从基因表达Omnibus(GEO)和TCGA数据库下载了scRNA-seq和RNA-seq数据。基于R包“Seurat”来处理scRNA-seq数据,总共鉴定了五种细胞类型。基于R包“AUCell”并使用MRG和每个细胞群体之间的交集基因对每个细胞群体进行评分。然后将B细胞群鉴定为高得分的细胞群。RNA-seq数据中的差异表达基因基于R包“limma”进行鉴定,并与先前相交的基因相交。然后,基于单变量Cox回归分析和Lasso-Cox回归分析,筛选预后基因,并构建了风险模型(由ADH5、CAT、BCAT2,DCXR,OGT,和FUS)。该模型在内部和外部测试集上进行了验证。独立预后分析确定年龄,N级,和风险评分作为独立的预后因素。本文的风险模型和预后基因可为开发PCa的新治疗靶点提供参考。
    Prostate cancer (PCa) is the most common malignancy of the male urinary system. Mitophagy, as a type of autophagy, can remove damaged mitochondria in cells. Mitophagy-related genes (MRGs) have been shown to play critical roles in the development of PCa. To this end, based on the comprehensive analysis of RNA-seq and scRNA-seq data of PCa samples and their controls, this paper identified PCa subtypes and constructed a prognostic model. In this paper, we downloaded scRNA-seq and RNA-seq data from Gene Expression Omnibus (GEO) and TCGA database. Based on the R package \"Seurat\" to process the scRNA-seq data, a total of five cell types were identified. Each cell population was scored based on the R package \"AUCell\" and using the intersection genes between MRGs and each cell population. The B cell population was then identified as a high-scoring cell population. Differentially expressed genes in RNA-seq data were identified based on the R package \"limma\" and intersected with previously intersected genes. Then, based on univariate Cox regression analysis and Lasso-Cox regression analysis, the prognostic genes were screened, and the risk model was constructed (composed of ADH5, CAT, BCAT2, DCXR, OGT, and FUS). The model is validated on internal and external test sets. Independent prognostic analysis identified age, N stage, and risk score as independent prognostic factors. This paper\'s risk models and prognostic genes can provide a reference for developing novel therapeutic targets for PCa.
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  • 文章类型: Journal Article
    目的:胃癌(GC)患者年龄调整后的Charlson合并症指数(ACCI)与肌肉减少症之间的关系仍然不明确。我们的研究旨在探讨ACCI与少肌症之间的关系以及根治性切除术后GC患者的预后价值。此外,我们试图基于这些因素开发一种新的预后评分系统.
    方法:使用单因素和多因素Cox回归分析来确定接受根治性GC切除术的患者的预后因素。根据ACCI和肌肉减少症,建立了新的预后评分(ACCIS),并评估其预后价值。
    结果:我们纳入了1068例GC患者。多因素分析显示ACCI和肌少症是影响GC预后的独立危险因素(p=0.001和p<0.001)。更高的ACCI评分独立地预测了肌肉减少症(p=0.014)。较高的ACCIS评分与更大的美国麻醉医师协会评分有关,病理肿瘤淋巴结转移(pTNM)分期较高,和较大的肿瘤大小(均p<0.05)。多变量分析表明,ACCIS独立预测了GC患者的预后(p<0.001)。通过将ACCIS评分纳入性别预测模型,pTNM阶段,肿瘤大小,和肿瘤分化,我们构建了一个列线图来准确预测预后(C指数0.741)。
    结论:GC患者ACCI评分与肌肉减少症显著相关。ACCI评分和肌肉减少症的整合显着提高了GC患者预后预测的准确性。
    OBJECTIVE: The association between the age-adjusted Charlson Comorbidity Index (ACCI) and sarcopenia in patients with gastric cancer (GC) remains ambiguous. This study aimed to investigate the association between the ACCI and sarcopenia and the prognostic value in patients with GC after radical resection. In addition, this study aimed to develop a novel prognostic scoring system based on these factors.
    METHODS: Univariate and multivariate Cox regression analyses were used to determine prognostic factors in patients undergoing radical GC resection. Based on the ACCI and sarcopenia, a new prognostic score (age-adjusted Charlson Comorbidity Index and Sarcopenia [ACCIS]) was established, and its prognostic value was assessed.
    RESULTS: This study included 1068 patients with GC. Multivariate analysis revealed that the ACCI and sarcopenia were independent risk factors during the prognosis of GC (P = 0.001 and P < 0.001, respectively). A higher ACCI score independently predicted sarcopenia (P = 0.014). A high ACCIS score was associated with a greater American Society of Anesthesiologists score, higher pathologic TNM (pTNM) stage, and larger tumor size (all P < 0.05). Multivariate analysis demonstrated that the ACCIS independently predicted the prognosis for patients with GC (P < 0.001). By incorporating the ACCIS score into a prognostic model with sex, pTNM stage, tumor size, and tumor differentiation, we constructed a nomogram to predict the prognosis accurately (concordance index of 0.741).
    CONCLUSIONS: The ACCI score and sarcopenia are significantly correlated in patients with GC. The integration of the ACCI score and sarcopenia markedly enhances the accuracy of prognostic predictions in patients with GC.
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