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基于生物信息学构建胰腺癌患者预后相关甲基化预测模型及其应用价值。

Bioinformatics-based construction of prognosis-related methylation prediction model for pancreatic cancer patients and its application value.

作者信息

Cao Tiansheng, Wu Hongsheng, Ji Tengfei

机构信息

Department of Hepatobiliary Surgery, Affiliated Huadu Hospital, Southern Medical University (People's Hospital of Huadu District), Guangzhou, China.

出版信息

Front Pharmacol. 2023 Mar 9;14:1086309. doi: 10.3389/fphar.2023.1086309. eCollection 2023.

Abstract

Pancreatic adenocarcinoma (PAAD) is a highly malignant gastrointestinal tumor with almost similar morbidity and mortality. In this study, based on bioinformatics, we investigated the role of gene methylation in PAAD, evaluated relevant factors affecting patient prognosis, screened potential anti-cancer small molecule drugs, and constructed a prediction model to assess the prognosis of PAAD. Clinical and genomic data of PAAD were collected from the Tumor Genome Atlas Project (TCGA) database and gene expression profiles were obtained from the GTEX database. Analysis of differentially methylated genes (DMGs) and significantly differentially expressed genes (DEGs) was performed on tumorous samples with KRAS wild-type and normal samples using the "limma" package and combined analysis. We selected factors significantly associated with survival from the significantly differentially methylated and expressed genes (DMEGs), and their fitting into a relatively streamlined prognostic model was validated separately from the internal training and test sets and the external ICGC database to show the robustness of the model. In the TCGA database, 2,630 DMGs were identified, with the largest gap between DMGs in the gene body and TSS200 region. 318 DEGs were screened, and the enrichment analysis of DMGs and DEGs was taken to intersect DMEGs, showing that the DMEGs were mainly related to Olfactory transduction, natural killer cell mediated cytotoxicity pathway, and Cytokine -cytokine receptor interaction. DMEGs were able to distinguish well between PAAD and paraneoplastic tissues. Through techniques such as drug database and molecular docking, we screened a total of 10 potential oncogenic small molecule compounds, among which felbamate was the most likely target drug for PAAD. We constructed a risk model through combining three DMEGs (S100P, LY6D, and WFDC13) with clinical factors significantly associated with prognosis, and confirmed the model robustness using external and internal validation. The classification model based on DMEGs was able to accurately separate normal samples from tumor samples and find potential anti-PAAD drugs by performing gene-drug interactions on DrugBank.

摘要

胰腺腺癌(PAAD)是一种高度恶性的胃肠道肿瘤,其发病率和死亡率几乎相近。在本研究中,我们基于生物信息学研究了基因甲基化在PAAD中的作用,评估了影响患者预后的相关因素,筛选了潜在的抗癌小分子药物,并构建了一个预测模型来评估PAAD的预后。从肿瘤基因组图谱(TCGA)数据库收集了PAAD的临床和基因组数据,并从GTEX数据库获得了基因表达谱。使用“limma”软件包并进行联合分析,对KRAS野生型肿瘤样本和正常样本进行了差异甲基化基因(DMG)和显著差异表达基因(DEG)分析。我们从显著差异甲基化和表达的基因(DMEG)中选择与生存显著相关的因素,并分别从内部训练集和测试集以及外部ICGC数据库验证它们拟合到一个相对简化的预后模型中,以显示该模型的稳健性。在TCGA数据库中,鉴定出2630个DMG,基因体和TSS200区域的DMG之间差距最大。筛选出318个DEG,并对DMG和DEG进行富集分析以交叉得到DMEG,结果表明DMEG主要与嗅觉转导、自然杀伤细胞介导的细胞毒性途径以及细胞因子-细胞因子受体相互作用有关。DMEG能够很好地区分PAAD和瘤旁组织。通过药物数据库和分子对接等技术,我们总共筛选出10种潜在的致癌小分子化合物,其中非氨酯是PAAD最可能的靶向药物。我们通过将三个DMEG(S100P、LY6D和WFDC13)与与预后显著相关的临床因素相结合构建了一个风险模型,并使用外部和内部验证确认了该模型的稳健性。基于DMEG的分类模型能够准确地将正常样本与肿瘤样本分开,并通过在DrugBank上进行基因-药物相互作用找到潜在的抗PAAD药物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/77f3/10034005/1c60343ef6ba/fphar-14-1086309-g001.jpg

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