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Importance of gene expression signatures in pancreatic cancer prognosis and the establishment of a prediction model

机译:基因表达特征在胰腺癌预后中的重要性及预测模型的建立

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Background and aim: Pancreatic cancer (PC) is one of the most common tumors with a poor prognosis. The current American Joint Committee on Cancer (AJCC) staging system, based on the anatomical features of tumors, is insufficient to predict PC outcomes. The current study is endeavored to identify important prognosis-related genes and build an effective predictive model. Methods: Multiple public datasets were used to identify differentially expressed genes (DEGs) and survival-related genes (SRGs). Bioinformatics analysis of DEGs was used to identify the main biological processes and pathways involved in PC. A risk score based on SRGs was computed through a univariate Cox regression analysis. The performance of the risk score in predicting PC prognosis was evaluated with survival analysis, Harrell’s concordance index (C-index), area under the curve (AUC), and calibration plots. A predictive nomogram was built through integrating the risk score with clinicopathological information. Results: A total of 945 DEGs were identified in five Gene Expression Omnibus datasets, and four SRGs ( LYRM1 , KNTC1 , IGF2BP2 , and CDC6 ) were significantly associated with PC progression and prognosis in four datasets. The risk score showed relatively good performance in predicting prognosis in multiple datasets. The predictive nomogram had greater C-index and AUC values, compared with those of the AJCC stage and risk score. Conclusion: This study identified four new biomarkers that are significantly associated with the carcinogenesis, progression, and prognosis of PC, which may be helpful in studying the underlying mechanism of PC carcinogenesis. The predictive nomogram showed robust performance in predicting PC prognosis. Therefore, the current model may provide an effective and reliable guide for prognosis assessment and treatment decision-making in the clinic.
机译:背景与目的:胰腺癌(PC)是最常见的预后不良的肿瘤之一。当前的美国癌症联合委员会(AJCC)分期系统基于肿瘤的解剖特征,不足以预测PC结局。当前的研究致力于鉴定重要的预后相关基因并建立有效的预测模型。方法:使用多个公共数据集来鉴定差异表达基因(DEG)和存活相关基因(SRG)。 DEGs的生物信息学分析用于确定PC涉及的主要生物学过程和途径。通过单变量Cox回归分析计算出基于SRG的风险评分。通过生存分析,Harrell一致性指数(C-index),曲线下面积(AUC)和校正图评估了风险评分在预测PC预后中的表现。通过将风险评分与临床病理信息相结合来建立预测列线图。结果:在五个Gene Expression Omnibus数据集中共鉴定出945个DEG,在四个数据集中,四个SRG(LYRM1,KNTC1,IGF2BP2和CDC6)与PC的进展和预后显着相关。风险评分在预测多个数据集的预后方面表现出相对较好的表现。与AJCC阶段和风险评分相比,预测列线图的C指数和AUC值更高。结论:本研究确定了四种与PC癌的发生,发展和预后密切相关的新生物标志物,这可能有助于研究PC癌发生的潜在机制。预测列线图显示了预测PC预后的强大性能。因此,当前模型可以为临床预后评估和治疗决策提供有效而可靠的指导。

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