risk score

风险评分
  • 文章类型: Journal Article
    背景:越来越多的证据表明游离脂肪酸(FFA)与妊娠期糖尿病(GDM)有关。然而,大多数研究集中在几种特定类型的FFA上,例如α-亚麻酸(C18:3n3)和花生四烯酸(C20:4n6)或总水平的FFA。
    目的:本研究旨在检验孕早期各种FFA与GDM风险之间的关系。
    方法:参与者来自舟山孕妇队列(ZWPC)。进行了1:2巢式病例对照研究:按年龄将50名GDM母亲与100名无GDM母亲相匹配,孕前体重指数(BMI),月口服葡萄糖耐量试验(OGTT)和奇偶校验。37个FFA(包括17个饱和脂肪酸(SFA),8单不饱和脂肪酸(MUFA),通过气相色谱-质谱(GC-MS)测试了孕早期母体血浆中的10种多不饱和脂肪酸(PUFA)和2种反式脂肪酸(TFA))。使用条件逻辑回归模型评估FFA与GDM风险的相关性。
    结果:9个FFA分别与GDM风险增加相关(P<0.05),4种FFA分别与GDM风险降低相关(P<0.05)。SFA风险评分与更高的GDM风险相关(OR=1.34,95%CI:1.12-1.60),以及UFA风险评分(OR=1.26,95%CI:1.11-1.44),MUFA风险评分(OR=1.70,95CI:1.27-2.26),PUFA风险评分(OR=1.32,95CI:1.09-1.59)和TFA风险评分(OR=2.51,95CI:1.23-5.13)。此外,检测了不同类型FFA风险评分对GDM的联合影响.例如,与SFA和UFA风险评分低的人群相比,SFA和UFA风险评分高的女性患GDM的风险最高(OR=8.53,95CI:2.41-30.24),而SFA风险评分低、UFA风险评分高、SFA风险评分高、UFA风险评分低的风险比分别为6.37(95CI:1.33-30.53)和4.25(95CI:0.97-18.70),分别。
    结论:孕早期孕妇FFA与GDM风险呈正相关。此外,FFA对GDM风险有共同作用。
    结论:孕早期FFA水平升高会增加GDM的风险。
    BACKGROUND: Accumulating evidence shows that free fatty acids (FFA) are associated with gestational diabetes mellitus (GDM). However, most of the studies focus on a few specific types of FFA, such as α-linolenic acid (C18:3n3) and Arachidonic acid (C20:4n6) or a total level of FFA.
    OBJECTIVE: This study aimed to test the association between a variety of FFAs during the first trimester and the risk of GDM.
    METHODS: The participants came from the Zhoushan Pregnant Women Cohort (ZWPC). A 1:2 nested case-control study was conducted: fifty mothers with GDM were matched with 100 mothers without GDM by age, pre-pregnancy body mass index (BMI), month of oral glucose tolerance test (OGTT) and parity. Thirty-seven FFAs (including 17 saturated fatty acids (SFA), 8 monounsaturated fatty acids (MUFA), 10 polyunsaturated fatty acids (PUFA) and 2 trans fatty acids (TFA)) in maternal plasma during the first trimester were tested by Gas Chromatography-Mass Spectrometry (GC-MS). Conditional logistic regression models were performed to assess the associations of FFA with the risk of GDM.
    RESULTS: Nine FFAs were respectively associated with an increased risk of GDM (P < 0.05), and four FFAs were respectively associated with a decreased risk of GDM (P < 0.05). SFA risk score was associated with a greater risk of GDM (OR = 1.34, 95% CI: 1.12-1.60), as well as UFA risk score (OR = 1.26, 95% CI: 1.11-1.44), MUFA risk score (OR = 1.70, 95%CI: 1.27-2.26), PUFA risk score (OR = 1.32, 95%CI: 1.09-1.59) and TFA risk score (OR = 2.51, 95%CI: 1.23-5.13). Moreover, joint effects between different types of FFA risk scores on GDM were detected. For instance, compared with those with low risk scores of SFA and UFA, women with high risk scores of SFA and UFA had the highest risk of GDM (OR = 8.53, 95%CI: 2.41-30.24), while the Odds ratio in those with a low risk score of SFA and high risk score of UFA and those with a high risk score of SFA and low risk score of UFA was 6.37 (95%CI:1.33- 30.53) and 4.25 (95%CI: 0.97-18.70), respectively.
    CONCLUSIONS: Maternal FFAs during the first trimester were positively associated with the risk of GDM. Additionally, there were joint effects between FFAs on GDM risk.
    CONCLUSIONS: Elevated FFA levels in the first trimester increased the risk of GDM.
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  • 文章类型: Journal Article
    胃癌(GC)是癌症相关死亡率的主要原因,其特征是显著的异质性。强调需要针对个性化治疗策略进行进一步研究。肿瘤血管生成是肿瘤发展和转移的关键,然而,其在分子分型和预后预测中的作用仍未得到充分研究。本研究旨在确定与血管生成相关的亚型,并建立GC患者的预后模型。使用来自癌症基因组图谱(TCGA)的数据,我们对差异表达的血管生成相关基因(ARGs)进行了共识聚类分析,确定具有不同生存结果的两种患者亚型。通过Cox和LASSO回归分析亚型之间的差异表达基因,导致使用机器学习算法建立基于亚型的预后模型。根据风险评分将患者分为高危组和低危组。使用独立的数据集(ICGC和GSE15459)进行验证。我们使用去卷积算法来研究不同风险组中的肿瘤免疫微环境,并对遗传谱分析进行分析。抗肿瘤药物的敏感性和联合作用。我们的研究确定了十个预后特征基因,能够计算风险评分以预测预后和总体生存率。这为患者入院时的分层诊断和治疗提供了关键数据,在整个过程中监测疾病进展,评估免疫治疗疗效,并为GC患者选择个性化药物。
    Gastric cancer (GC) is a leading cause of cancer-related mortality and is characterized by significant heterogeneity, highlighting the need for further studies aimed at personalized treatment strategies. Tumor angiogenesis is critical for tumor development and metastasis, yet its role in molecular subtyping and prognosis prediction remains underexplored. This study aims to identify angiogenesis-related subtypes and develop a prognostic model for GC patients. Using data from The Cancer Genome Atlas (TCGA), we performed consensus cluster analysis on differentially expressed angiogenesis-related genes (ARGs), identifying two patient subtypes with distinct survival outcomes. Differentially expressed genes between the subtypes were analyzed via Cox and LASSO regression, leading to the establishment of a subtype-based prognostic model using a machine learning algorithm. Patients were classified into high- and low-risk groups based on the risk score. Validation was performed using independent datasets (ICGC and GSE15459). We utilized a deconvolution algorithm to investigate the tumor immune microenvironment in different risk groups and conducted analyses on genetic profiling, sensitivity and combination of anti-tumor drug. Our study identified ten prognostic signature genes, enabling the calculation of a risk score to predict prognosis and overall survival. This provides critical data for stratified diagnosis and treatment upon patient admission, monitoring disease progression throughout the entire course, evaluating immunotherapy efficacy, and selecting personalized medications for GC patients.
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  • 文章类型: Journal Article
    巨噬细胞在头颈部鳞状细胞癌(HNSCC)的发展和治疗中起着重要作用。我们采用加权基因共表达网络分析(WGCNA)来鉴定巨噬细胞相关基因(MRGs),并将HNSCC患者分为两种不同的亚型。巨噬细胞相关风险特征(MRS)模型,包含9个基因:IGF2BP2,PPP1R14C,SLC7A5,KRT9,RAC2,NTN4,CTLA4,APOC1和CYP27A1是通过集成101种机器学习算法组合来制定的。我们观察到高风险组的总体生存率(OS)较低,高风险组显示大多数免疫检查点和人类白细胞抗原(HLA)基因的表达水平升高,表明有很强的免疫逃避能力.相应地,TIDE评分与风险评分呈正相关,这意味着高危肿瘤可能更有效地抵抗免疫疗法。在单细胞层面,我们注意到肿瘤微环境(TME)中的巨噬细胞主要停滞在G2/M期,可能阻碍上皮-间质转化,并在抑制肿瘤进展中发挥关键作用。最后,IGF2BP2和SLC7A5表达降低后,HNSCC细胞的增殖和迁移能力显著下降。它还降低了巨噬细胞的迁移能力,并促进了它们向M1方向的极化。我们的研究为HNSCC构建了一种新型的MRS,可以作为预测预后的指标,HNSCC患者的免疫浸润和免疫治疗。
    Macrophages played an important role in the progression and treatment of head and neck squamous cell carcinoma (HNSCC). We employed weighted gene co-expression network analysis (WGCNA) to identify macrophage-related genes (MRGs) and classify patients with HNSCC into two distinct subtypes. A macrophage-related risk signature (MRS) model, comprising nine genes: IGF2BP2, PPP1R14C, SLC7A5, KRT9, RAC2, NTN4, CTLA4, APOC1, and CYP27A1, was formulated by integrating 101 machine learning algorithm combinations. We observed lower overall survival (OS) in the high-risk group and the high-risk group showed elevated expression levels in most of the immune checkpoint and human leukocyte antigen (HLA) genes, suggesting a strong immune evasion capacity. Correspondingly, TIDE score positively correlated with risk score, implying that high-risk tumors may resist immunotherapy more effectively. At the single-cell level, we noted macrophages in the tumor microenvironment (TME) predominantly stalled in the G2/M phase, potentially hindering epithelial-mesenchymal transition and playing a crucial role in the inhibition of tumor progression. Finally, the proliferation and migration abilities of HNSCC cells significantly decreased after the expression of IGF2BP2 and SLC7A5 reduced. It also decreased migration ability of macrophages and facilitated their polarization towards the M1 direction. Our study constructed a novel MRS for HNSCC, which could serve as an indicator for predicting the prognosis, immune infiltration and immunotherapy for HNSCC patients.
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  • 文章类型: Journal Article
    乳腺癌(BC)是一种在世界许多地方发生的非常常见的癌症形式。然而,早期BC是可以治愈的。许多BC患者由于无效的诊断和治疗工具而具有较差的预后结果。发现泛素化系统和相关蛋白会影响癌症患者的预后。因此,开发与泛素化基因相关的生物标志物来预测BC患者的预后是可行的策略.
    这项工作的主要目标是开发一种新颖的风险评分标签,能够通过靶向泛素化基因来准确估计BC患者的未来结局。
    利用GSE20685数据集中的E1、E2和E3泛素化相关基因进行单变量Cox回归分析。使用非负矩阵分解(NMF)算法再次筛选p<0.01的基因,并且由此产生的hub基因由风险评分签名组成。患者被分为两个风险组,并使用Kaplan-Meier(KM)和受试者工作特征(ROC)曲线测试预测效果。此风险评分签名后来使用多个外部数据集进行验证,即TCGA-BRAC,GSE1456,GSE16446,GSE20711,GSE58812和GSE96058.免疫微环境,单细胞,和微生物分析也进行了。
    所选择的包含6个泛素化相关基因(ATG5、FBXL20、DTX4、BIRC3、TRIM45和WDR78)的基因标签在BC患者中显示出良好的预后能力。它使用多个外部验证的数据集进行了验证,KM曲线显示生存率差异显著(p<0.05)。与传统的临床指标相比,KM曲线也显示出优越的预测能力。单细胞分析显示,Vd2gdT细胞在低风险组中含量较低,而高危组患者缺乏髓样树突状细胞.肿瘤微生物学分析显示,高风险和低风险组之间的微生物多样性存在显着差异。
    这项研究建立了由六个泛素化基因组成的风险评分标志,可以使用多个数据集准确预测BC患者的预后。它可以提供个性化和有针对性的帮助,以提供对患有BC的个体的评估和治疗。
    UNASSIGNED: Breast cancer (BC) is a highly common form of cancer that occurs in many parts of the world. However, early -stage BC is curable. Many patients with BC have poor prognostic outcomes owing to ineffective diagnostic and therapeutic tools. The ubiquitination system and associated proteins were found influencing the outcome of individuals with cancer. Therefore, developing a biomarker associated with ubiquitination genes to forecast BC patient outcomes is a feasible strategy.
    UNASSIGNED: The primary goal of this work was to develop a novel risk score signature capable of accurately estimate the future outcome of patients with BC by targeting ubiquitinated genes.
    UNASSIGNED: Univariate Cox regression analysis was conducted utilizing the E1, E2, and E3 ubiquitination-related genes in the GSE20685 dataset. Genes with p < 0.01 were screened again using the Non-negative Matrix Factorization (NMF) algorithm, and the resulting hub genes were composed of a risk score signature. Patients were categorized into two risk groups, and the predictive effect was tested using Kaplan-Meier (KM) and Receiver Operating Characteristic (ROC) curves. This risk score signature was later validated using multiple external datasets, namely TCGA-BRAC, GSE1456, GSE16446, GSE20711, GSE58812 and GSE96058. Immuno-microenvironmental, single-cell, and microbial analyses were also performed.
    UNASSIGNED: The selected gene signature comprising six ubiquitination-related genes (ATG5, FBXL20, DTX4, BIRC3, TRIM45, and WDR78) showed good prognostic power in patients with BC. It was validated using multiple externally validated datasets, with KM curves showing significant differences in survival (p < 0.05). The KM curves also demonstrated superior predictive ability compared to traditional clinical indicators. Single-cell analysis revealed that Vd2 gd T cells were less abundantin the low-risk group, whereas patients in the high-risk group lacked myeloid dendritic cells. Tumor microbiological analysis revealed a notable variation in microorganism diversity between the high- and low-risk groups.
    UNASSIGNED: This study established an risk score signature consisting of six ubiquitination genes, that can accurately forecast the outcome of patients with BC using multiple datasets. It can provide personalized and targeted assistance to provide the evaluation and therapy of individuals having BC.
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  • 文章类型: Journal Article
    肺鳞状细胞癌(LUSC)是一种治疗选择有限的恶性肿瘤。免疫原性细胞死亡(ICD)具有通过触发免疫反应来增强癌症治疗功效的潜力。我们旨在探讨基于ICD的分类在预测LUSC的预后和免疫治疗反应中的潜力。从癌症基因组图谱(TCGA)数据集获得LUSC患者的RNA-seq信息和临床数据。通过一致性聚类分析LUSC样品中ICD相关基因表达。随后,分析了不同ICD相关亚群之间的差异表达基因(DEGs)。肿瘤突变负荷,免疫细胞浸润,在不同ICD亚群之间进行生存分析.最后,在LUSC患者中构建并评估了ICD相关的风险特征,并预测了基于基因表达的免疫治疗反应。定义了ICD高组和ICD低组,在两个亚型之间鉴定出1466个DEG。这些DEGs主要富集在含胶原的细胞外基质中,细胞因子-细胞因子受体相互作用,PI3K-Akt信号通路,和神经活性配体-受体相互作用。此外,ICD低组预后良好,增强TTN和MUC16突变频率,浸润的免疫细胞增加,和下调的免疫检查点表达。此外,我们证明了ICD相关模型(基于CD4,NLRP3,NT5E,和TLR4基因)可以预测LUSC的预后,应答者组的ICD风险评分较低.总之,ICD相关基因的预测值(CD4,NLRP3,NT5E,和TLR4)对LUSC的预后和免疫治疗反应的研究得到了验证,这有利于LUSC患者的基于免疫疗法的干预措施。
    Lung squamous cell carcinoma (LUSC) is a malignancy with limited therapeutic options. Immunogenic cell death (ICD) has the potential to enhance the efficacy of cancer therapy by triggering immune responses. We aimed to explore the potential of ICD-based classification in predicting prognosis and response to immunotherapy for LUSC. RNA-seq information and clinical data of LUSC patients were obtained from The Cancer Genome Atlas (TCGA) dataset. ICD-related gene expressions in LUSC samples were analyzed by consensus clustering. Subsequently, differentially expressed genes (DEGs) between different ICD-related subsets were analyzed. Tumor mutation burden, immune cell infiltration, and survival analyses were conducted between different ICD subsets. Finally, an ICD-related risk signature was constructed and evaluated in LUSC patients, and the immunotherapy responses based on the gene expressions were also forecasted. ICD-high and ICD-low groups were defined, and 1466 DEGs were identified between the two subtypes. These DEGs were mainly enriched in collagen-containing extracellular matrix, cytokine-cytokine receptor interaction, the PI3K-Akt signaling pathway, and neuroactive ligand-receptor interaction. Furthermore, the ICD-low group exhibited a favorable prognosis, enhanced TTN and MUC16 mutation frequencies, increased infiltrating immune cells, and downregulated immune checkpoint expressions. Furthermore, we demonstrated that an ICD-related model (based on CD4, NLRP3, NT5E, and TLR4 genes) could forecast the prognosis of LUSC, and ICD risk scores were lower in the responder group. In summary, the predicted values of ICD-related genes (CD4, NLRP3, NT5E, and TLR4) for the prognosis and response to immunotherapy in LUSC were verified in the study, which benefits immunotherapy-based interventions for LUSC patients.
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  • 文章类型: Journal Article
    结肠癌与多个水平的分子异质性有关。RNA加工将初级转录RNA转化为成熟RNA,推动肿瘤发生及其维护。迫切需要阐明结肠癌中RNA加工基因的特征。
    在这项研究中,我们从癌症基因组图谱(TCGA)和基因表达综合(GEO)数据库中获得了1033个相关样本,以探索结肠癌RNA加工表型的异质性.首先,通过对485个RNA加工基因的分析,无监督层次聚类分析检测到4种具有特定临床结果和生物学特征的亚型。接下来,我们采用最小绝对收缩和选择算子(LASSO)以及带惩罚的Cox回归模型来表征RNA加工相关的预后特征.
    最终确定了基于FXR1、MFAP1、RBM17、SAGE1、SNRPA1、SRRM4、ADAD1、DDX52、ERI1和EXOSC7等10个基因的RNA加工相关预后风险模型。通过将该特征与包括TNM在内的其余临床变量相结合,构建了复合预后列线图。年龄,性别,和舞台。遗传变异,通路激活,并通过生物信息学方法分析了具有风险特征的免疫异质性。结果表明,高风险亚组与更高的基因组不稳定性相关,增加的增殖和周期特征,与低危组相比,肿瘤杀伤CD8+T细胞减少,临床预后较差。
    这种基于RNA编辑基因的预后分类器有助于根据TNM和临床结果将结肠癌分为特定的亚组,遗传变异,通路激活,和免疫异质性。它可以用于诊断,分类和有针对性的治疗策略可与当前的精准医学标准相媲美。它为阐明RNA编辑基因的作用及其在结肠癌中作为预后标志物的临床意义提供了理论基础。
    UNASSIGNED: Colon cancer is associated with multiple levels of molecular heterogeneity. RNA processing converts primary transcriptional RNA to mature RNA, which drives tumourigenesis and its maintenance. The characterisation of RNA processing genes in colon cancer urgently needs to be elucidated.
    UNASSIGNED: In this study, we obtained 1033 relevant samples from The Cancer Genome Atlas (TCGA) and Gene Expression Omnibus (GEO) databases to explore the heterogeneity of RNA processing phenotypes in colon cancer. Firstly, Unsupervised hierarchical cluster analysis detected 4 subtypes with specific clinical outcomes and biological features via analysis of 485 RNA processing genes. Next, we adopted the least absolute shrinkage and selection operator (LASSO) as well as Cox regression model with penalty to characterise RNA processing-related prognostic features.
    UNASSIGNED: An RNA processing-related prognostic risk model based on 10 genes including FXR1, MFAP1, RBM17, SAGE1, SNRPA1, SRRM4, ADAD1, DDX52, ERI1, and EXOSC7 was identified finally. A composite prognostic nomogram was constructed by combining this feature with the remaining clinical variables including TNM, age, sex, and stage. Genetic variation, pathway activation, and immune heterogeneity with risk signatures were also analysed via bioinformatics methods. The outcomes indicated that the high-risk subgroup was associated with higher genomic instability, increased proliferative and cycle characteristics, decreased tumour killer CD8+ T cells and poorer clinical prognosis than the low-risk group.
    UNASSIGNED: This prognostic classifier based on RNA-edited genes facilitates stratification of colon cancer into specific subgroups according to TNM and clinical outcomes, genetic variation, pathway activation, and immune heterogeneity. It can be used for diagnosis, classification and targeted treatment strategies comparable to current standards in precision medicine. It provides a rationale for elucidation of the role of RNA editing genes and their clinical significance in colon cancer as prognostic markers.
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  • 文章类型: Journal Article
    背景:肝细胞癌(HCC)是消化系统最常见的恶性肿瘤之一。RNA甲基化在肿瘤发生和转移中起重要作用,它可以改变基因表达,甚至在多个水平上发挥作用,如RNA剪接,稳定性,易位,和翻译。在这项研究中,我们旨在对HCC中RNA甲基化相关基因(RMGs)及其与生存和临床特征的关系进行全面分析.
    方法:使用公开的HCC相关数据集进行回顾性分析。从TCGA-LlHC中鉴定出HCC和对照之间的差异表达基因(DEGs),并与RMGs相交以获得差异表达的RNA甲基化相关基因(DERMGs)。回归分析用于筛选预后基因并构建风险模型。同时,临床,进行了免疫浸润和治疗效果分析.最后,采用多因素cox回归确定独立危险因素,定量实时聚合酶链反应(qRT-PCR)用于验证模型核心基因的表达水平。
    结果:基于ROC曲线和生存分析,建立了21基因的HCC风险模型,具有出色的性能。风险评分与肿瘤分级相关,病理性T,TNM阶段。免疫浸润分析显示与免疫评分相关,11个免疫细胞,还有30个免疫检查点.低风险患者对免疫治疗的敏感性更高。风险评分和TNM分期是影响预后的独立因素。qRT-PCR证实PRDM9、ALPP、和GAD1在HCC中。
    结论:这项研究鉴定了肝癌中RNA甲基化相关的特征基因,并构建了预测患者预后并反映免疫微环境的风险模型。预后基因参与复杂的调控机制,这可能对癌症诊断有用,预后,和治疗。
    BACKGROUND: Hepatocellular carcinoma (HCC) is one of the most common malignant tumors of the digestive system. RNA methylation plays an important role in tumorigenesis and metastasis, which could alter gene expression and even function at multiple levels, such as RNA splicing, stability, translocation, and translation. In this study, we aimed to conduct a comprehensive analysis of RNA methylation-related genes (RMGs) in HCC and their relationship with survival and clinical features.
    METHODS: A retrospective analysis was performed using publicly available HCC-related datasets. The differentially expressed genes (DEGs) between HCC and controls were identified from TCGA-LlHC and intersected with RMGs to obtain differentially expressed RNA methylation-related genes (DERMGs). Regression analysis was used to screen for prognostic genes and construct risk models. Simultaneously, clinical, immune infiltration and therapeutic efficacy analyses were performed. Finally, multivariate cox regression was used to identify independent risk factors, and quantitative real-time polymerase chain reaction (qRT-PCR) was used to validate the expression levels of the core genes of the model.
    RESULTS: A 21-gene risk model for HCC was established with excellent performance based on ROC curves and survival analysis. Risk scores correlated with tumor grade, pathologic T, and TNM stage. Immune infiltration analysis showed correlations with immune scores, 11 immune cells, and 30 immune checkpoints. Low-risk patients showed a higher susceptibility to immunotherapy. The risk score and TNM stage were independent prognostic factors. qRT-PCR confirmed higher expression of PRDM9, ALPP, and GAD1 in HCC.
    CONCLUSIONS: This study identified RNA methylation-related signature genes in HCC and constructed a risk model that predicts patient outcomes and reflects the immune microenvironment. Prognostic genes are involved in complex regulatory mechanisms, which may be useful for cancer diagnosis, prognosis, and therapy.
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  • 文章类型: Journal Article
    背景:这项研究基于19个PANoptesis相关基因特征对胆道癌症患者进行了分子分型。
    方法:通过共识聚类,患者分为两种亚型,A和B.通过整合来自不同队列的多组数据和临床信息,我们阐明了胆道癌的不同亚型与患者预后之间的关系,与患者的免疫浸润特征有关。
    结果:对19个基因特征进行了LASSO回归分析,我们构建并验证了一个9基因风险评分预后模型,该模型可以准确预测不同胆道肿瘤患者的总体生存率。此外,我们开发了一个预测列线图,证明了我们模型的临床实用性和稳健性.基于风险评分的免疫景观的进一步分析突出了与免疫细胞浸润的潜在关联,化疗,和免疫治疗反应。
    结论:我们的研究为胆道癌的个性化治疗策略提供了有价值的见解,这对于改善患者预后和指导临床实践中的治疗决策至关重要。
    BACKGROUND: This study conducted molecular subtyping of biliary tract cancer patients based on 19 PANoptosis-related gene signatures.
    METHODS: Through consensus clustering, patients were categorized into two subtypes, A and B. By integrating multi-omics data and clinical information from different cohorts, we elucidated the association between different subtypes of biliary tract cancer and patient prognosis, which correlated with the immune infiltration characteristics of patients.
    RESULTS: LASSO regression analysis was performed on the 19 gene signatures, and we constructed and validated a 9-gene risk score prognostic model that accurately predicts the overall survival rate of different biliary tract cancer patients. Additionally, we developed a predictive nomogram demonstrating the clinical utility and robustness of our model. Further analysis of the risk score-based immune landscape highlighted potential associations with immune cell infiltration, chemotherapy, and immune therapy response.
    CONCLUSIONS: Our study provides valuable insights into personalized treatment strategies for biliary tract cancer, which are crucial for improving patient prognosis and guiding treatment decisions in clinical practice.
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  • 文章类型: Journal Article
    我们试图确定中性粒细胞胞外诱捕网(NET)相关基因在提高骨肉瘤诊断效果和确定新的治疗靶点方面的潜在价值。数据来自TARGET,GEO,和CCLE数据库。基于NET相关基因鉴定了亚型之间的差异表达基因。PPI网络是使用STRING构建的,接下来是ClueGO富集分析。通过ssGSEA计算免疫细胞的浸润。通过LASSOCox回归分析建立风险评分模型。Westernblot和qRT-PCR用于验证模型中使用的基因的表达。我们使用单变量Cox回归分析鉴定了19个NET相关基因在骨肉瘤中具有预后潜力。来自TARGET的患者聚集为具有不同预后和免疫特征的两种亚型。在两个NET亚型之间识别出381个DEG。基于BST1、SELPLG、FPR1和TNFRSF10C是预测骨肉瘤患者预后的可靠指标。这四个基因在骨肉瘤中的表达明显低于正常细胞。低风险评分个体仅存在于预后较好的C1亚型中。根据NET相关基因将骨肉瘤分为两个亚型。由4个NET相关基因构建的风险评分模型能够独立预测骨肉瘤的预后。
    We sought to determine neutrophil extracellular trap (NET)-related genes\' potential value in improving the efficacy of diagnosis and identifying novel therapeutic targets for osteosarcoma. Data were obtained from TARGET, GEO, and CCLE database. Differentially expressed genes were identified between the subtypes based on NET-related genes. PPI network was constructed using STRING, following by ClueGO enrichment analysis. Infiltration of immune cells was calculated by ssGSEA. Risk Score model was built by LASSO Cox regression analysis. Western blot and qRT-PCR were applied to validate the expression of genes used in the model. We identified 19 NET-related genes with prognostic potential in osteosarcoma using univariate Cox regression analysis. Patients from TARGET were clustered into two subtypes with distinct prognosis and immune features. 381 DEGs were identified between the two NET subtypes. Risk Score based on BST1, SELPLG, FPR1 and TNFRSF10C was reliable to predict the prognosis of osteosarcoma patients. The four genes expressed significantly lower in osteosarcoma than normal cells. Low Risk Score individuals only existed in C1 subtype with better prognosis. Osteosarcoma were clustered into two subtypes based on NET-related genes. Risk Score model constructed by four NET-related gene was able to independently predict the prognosis of osteosarcoma.
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  • 文章类型: Journal Article
    背景:溶质载体家族4成员4(SLC4A4)的表达和活性改变可能会影响生长,肿瘤细胞的存活和转移。目前,SLC4A4在肺腺癌(LUAD)免疫治疗和预后中的作用尚不完全清楚.
    方法:我们使用定量逆转录-聚合酶链反应分析了SLC4A4在LUAD组织和细胞系中的表达,西方印迹,和免疫组织化学。SLC4A4过表达对血管生成的影响,细胞迁移,入侵,并检查上皮-间质转化。公共数据库帮助构建了评估SLC4A4表达对LUAD预后和免疫治疗反应的风险模型。此外,异种移植模型,流式细胞术,酶联免疫吸附试验进一步探讨了SLC4A4在肿瘤免疫微环境浸润中的作用。
    结果:上调SLC4A4可促进LUAD细胞株的凋亡,并显著抑制癌细胞的迁移和侵袭能力(P<0.01)。共有10个关键基因(包括SIGLEC6、RHOV、PIR,MOB3B,MIR3135B,LPAR6,KRT8,ITGA2,CPS1和C6)根据SLC4A4表达进行筛选,免疫评分和基质评分,并构建了预后良好的预后模型(在1,3和5年的训练队列中AUC值分别达到0.73,0.73和0.72).重要的是,我们证明SLC4A4的高表达能够增加CD8+T细胞的增殖水平和细胞因子分泌,以促进免疫系统对LUAD的反应。
    结论:我们的研究表明,SLC4A4可以作为LUAD的预后指标,为LUAD的治疗和诊断提供新的见解。
    BACKGROUND: Altered expression and activity of solute carrier family 4 member 4 (SLC4A4) could affect the growth, survival and metastasis of tumor cells. Currently, the role of SLC4A4 in lung adenocarcinoma (LUAD) immunotherapy and prognosis was not entirely clear.
    METHODS: We analyzed SLC4A4 expression in LUAD tissues and cell lines using quantitative reverse transcription-polymerase chain reaction, Western blotting, and immunohistochemistry. The effects of SLC4A4 overexpression on angiogenesis, cell migration, invasion, and epithelial-mesenchymal transition were examined. Public databases helped construct a risk model evaluating SLC4A4\'s expression on LUAD prognosis and immunotherapy response. Additionally, a xenograft model, flow cytometry, and enzyme-linked immunosorbent assay further explored SLC4A4\'s role in tumor immune microenvironment infiltration.
    RESULTS: Upregulation of SLC4A4 promoted apoptosis in the LUAD cell line and significantly inhibited the migration and invasive ability of cancer cells (P<0.01). A total of 10 key genes (including SIGLEC6, RHOV, PIR, MOB3B, MIR3135B, LPAR6, KRT8, ITGA2, CPS1, and C6) were screened according to SLC4A4 expression, immune score and stromal score, and a prognostic model with good outcome was constructed (AUC values of which in the training cohort at 1,3, and 5 years reached 0.73, 0.73, and 0.72, respectively). Importantly, we demonstrated that high expression of SLC4A4 was able to increase the proliferation level and cytokine secretion of CD8+ T cells for the purpose of promoting the immune system response to LUAD.
    CONCLUSIONS: Our study revealed that SLC4A4 can serve as a prognostic indicator for LUAD, providing new insights into the treatment and diagnosis of LUAD.
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