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An Integrative Data Mining and Omics-Based Translational Model for the Identification and Validation of Oncogenic Biomarkers of Pancreatic Cancer

机译:集成数据挖掘和基于组学的转换模型用于胰腺癌致癌生物标志物的鉴定和验证

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摘要

Substantial alterations at the multi-omics level of pancreatic cancer (PC) impede the possibility to diagnose and treat patients in early stages. Herein, we conducted an integrative omics-based translational analysis, utilizing next-generation sequencing, transcriptome meta-analysis, and immunohistochemistry, combined with statistical learning, to validate multiplex biomarker candidates for the diagnosis, prognosis, and management of PC. Experiment-based validation was conducted and supportive evidence for the essentiality of the candidates in PC were found at gene expression or protein level by practical biochemical methods. Remarkably, the random forests (RF) model exhibited an excellent diagnostic performance and LAMC2, ANXA2, ADAM9, and APLP2 greatly influenced its decisions. An explanation approach for the RF model was successfully constructed. Moreover, protein expression of LAMC2, ANXA2, ADAM9, and APLP2 was found correlated and significantly higher in PC patients in independent cohorts. Survival analysis revealed that patients with high expression of ADAM9 (Hazard ratio (HR)OS = 2.2, p-value < 0.001), ANXA2 (HROS = 2.1, p-value < 0.001), and LAMC2 (HRDFS = 1.8, p-value = 0.012) exhibited poorer survival rates. In conclusion, we successfully explore hidden biological insights from large-scale omics data and suggest that LAMC2, ANXA2, ADAM9, and APLP2 are robust biomarkers for early diagnosis, prognosis, and management for PC.
机译:胰腺癌(PC)的多组学水平的实质性改变阻碍了早期诊断和治疗患者的可能性。在这里,我们进行了基于组学的翻译分析,利用下一代测序,转录组荟萃分析和免疫组化,结合统计学习,以验证用于PC的诊断,预后和管理的多种生物标志物候选物。进行了基于实验的验证,并通过实用的生化方法在基因表达或蛋白质水平上发现了PC候选物的必要性的支持性证据。值得注意的是,随机森林(RF)模型表现出出色的诊断性能,并且LAMC2,ANXA2,ADAM9和APLP2对其决策产生了很大影响。射频模型的解释方法已成功构建。此外,在独立队列的PC患者中,发现LAMC2,ANXA2,ADAM9和APLP2的蛋白表达相关且显着更高。生存分析显示,ADAM9(危险比(HR)OS = 2.2,p值<0.001),ANXA2(HROS = 2.1,p值<0.001)和LAMC2(HRDFS = 1.8,p值)高表达的患者= 0.012)的生存率较差。总之,我们成功地从大规模组学数据中探索了隐藏的生物学见解,并建议LAMC2,ANXA2,ADAM9和APLP2是用于PC的早期诊断,预后和管理的强大生物标记。

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